# # Test that we can store JSON arrays in histogram field mysql.column_stats when histogram_type=JSON # set @SINGLE_PREC_TYPE='single_prec_hb'; set @DOUBLE_PREC_TYPE='double_prec_hb'; set @DEFAULT_HIST_TYPE='double_prec_hb'; set @SINGLE_PREC_TYPE='JSON_HB'; set @DOUBLE_PREC_TYPE='JSON_HB'; set @DEFAULT_HIST_TYPE='JSON_HB'; set @save_use_stat_tables=@@use_stat_tables; set @save_histogram_size=@@global.histogram_size; set @@global.histogram_size=0,@@local.histogram_size=0; set @save_hist_type=@DEFAULT_HIST_TYPE; set histogram_type=@SINGLE_PREC_TYPE; DELETE FROM mysql.table_stats; DELETE FROM mysql.column_stats; DELETE FROM mysql.index_stats; set use_stat_tables='preferably'; CREATE TABLE t1 ( a int NOT NULL PRIMARY KEY, b varchar(32), c char(16), d date, e double, f bit(3), INDEX idx1 (b, e), INDEX idx2 (c, d), INDEX idx3 (d), INDEX idx4 (e, b, d) ) ENGINE= MYISAM; INSERT INTO t1 VALUES (0, NULL, NULL, NULL, NULL, NULL), (7, 'xxxxxxxxxxxxxxxxxxxxxxxxxx', 'dddddddd', '1990-05-15', 0.1, b'100'), (17, 'vvvvvvvvvvvvv', 'aaaa', '1989-03-12', 0.01, b'101'), (1, 'vvvvvvvvvvvvv', NULL, '1989-03-12', 0.01, b'100'), (12, 'wwwwwwwwwwwwwwwwwwwwwwwwwwww', 'dddddddd', '1999-07-23', 0.112, b'001'), (23, 'vvvvvvvvvvvvv', 'dddddddd', '1999-07-23', 0.1, b'100'), (8, 'vvvvvvvvvvvvv', 'aaaa', '1999-07-23', 0.1, b'100'), (22, 'xxxxxxxxxxxxxxxxxxxxxxxxxx', 'aaaa', '1989-03-12', 0.112, b'001'), (31, 'wwwwwwwwwwwwwwwwwwwwwwwwwwww', 'aaaa', '1999-07-23', 0.01, b'001'), (10, NULL, 'aaaa', NULL, 0.01, b'010'), (5, 'wwwwwwwwwwwwwwwwwwwwwwwwwwww', 'dddddddd', '1999-07-23', 0.1, b'100'), (15, 'vvvvvvvvvvvvv', 'ccccccccc', '1990-05-15', 0.1, b'010'), (30, NULL, 'bbbbbb', NULL, NULL, b'100'), (38, 'zzzzzzzzzzzzzzzzzz', 'bbbbbb', NULL, NULL, NULL), (18, 'zzzzzzzzzzzzzzzzzz', 'ccccccccc', '1990-05-15', 0.01, b'010'), (9, 'yyy', 'bbbbbb', '1998-08-28', 0.01, NULL), (29, 'vvvvvvvvvvvvv', 'dddddddd', '1999-07-23', 0.012, b'010'), (3, 'yyy', 'dddddddd', '1990-05-15', 0.112, b'010'), (39, 'zzzzzzzzzzzzzzzzzz', 'bbbbbb', NULL, 0.01, b'100'), (14, 'xxxxxxxxxxxxxxxxxxxxxxxxxx', 'ccccccccc', '1990-05-15', 0.1, b'100'), (40, 'zzzzzzzzzzzzzzzzzz', 'bbbbbb', '1989-03-12', NULL, NULL), (44, NULL, 'aaaa', '1989-03-12', NULL, b'010'), (19, 'vvvvvvvvvvvvv', 'ccccccccc', '1990-05-15', 0.012, b'011'), (21, 'zzzzzzzzzzzzzzzzzz', 'dddddddd', '1989-03-12', 0.112, b'100'), (45, NULL, NULL, '1989-03-12', NULL, b'011'), (2, 'wwwwwwwwwwwwwwwwwwwwwwwwwwww', 'ccccccccc', '1990-05-15', 0.1, b'001'), (35, 'yyy', 'aaaa', '1990-05-15', 0.05, b'011'), (4, 'vvvvvvvvvvvvv', 'dddddddd', '1999-07-23', 0.01, b'101'), (47, NULL, 'aaaa', '1990-05-15', 0.05, b'010'), (42, NULL, 'ccccccccc', '1989-03-12', 0.01, b'010'), (32, NULL, 'bbbbbb', '1990-05-15', 0.01, b'011'), (49, 'wwwwwwwwwwwwwwwwwwwwwwwwwwww' , 'aaaa', '1990-05-15', NULL, NULL), (43, 'wwwwwwwwwwwwwwwwwwwwwwwwwwww' , 'bbbbbb', '1990-05-15', NULL, b'100'), (37, 'yyy', NULL, '1989-03-12', 0.05, b'011'), (41, 'xxxxxxxxxxxxxxxxxxxxxxxxxx', 'ccccccccc', '1990-05-15', 0.05, NULL), (34, 'yyy', NULL, NULL, NULL, NULL), (33, 'zzzzzzzzzzzzzzzzzz', 'dddddddd', '1989-03-12', 0.05, b'011'), (24, 'wwwwwwwwwwwwwwwwwwwwwwwwwwww', 'dddddddd', '1990-05-15', 0.01, b'101'), (11, 'yyy', 'ccccccccc', '1999-07-23', 0.1, NULL), (25, 'zzzzzzzzzzzzzzzzzz', 'bbb', '1989-03-12', 0.01, b'101'); ANALYZE TABLE t1; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK SELECT * FROM mysql.table_stats; db_name table_name cardinality test t1 40 SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 6.4000 test t1 idx1 2 1.6875 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 SELECT COUNT(*) FROM t1; COUNT(*) 40 SELECT * FROM mysql.column_stats WHERE db_name='test' AND table_name='t1' AND column_name='a'; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL SELECT MIN(t1.a), MAX(t1.a), (SELECT COUNT(*) FROM t1 WHERE t1.b IS NULL) / (SELECT COUNT(*) FROM t1) AS "NULLS_RATIO(t1.a)", (SELECT COUNT(t1.a) FROM t1) / (SELECT COUNT(DISTINCT t1.a) FROM t1) AS "AVG_FREQUENCY(t1.a)" FROM t1; MIN(t1.a) MAX(t1.a) NULLS_RATIO(t1.a) AVG_FREQUENCY(t1.a) 0 49 0.2000 1.0000 SELECT * FROM mysql.column_stats WHERE db_name='test' AND table_name='t1' AND column_name='b'; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL SELECT MIN(t1.b), MAX(t1.b), (SELECT COUNT(*) FROM t1 WHERE t1.b IS NULL) / (SELECT COUNT(*) FROM t1) AS "NULLS_RATIO(t1.b)", (SELECT COUNT(t1.b) FROM t1) / (SELECT COUNT(DISTINCT t1.b) FROM t1) AS "AVG_FREQUENCY(t1.b)" FROM t1; MIN(t1.b) MAX(t1.b) NULLS_RATIO(t1.b) AVG_FREQUENCY(t1.b) vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 6.4000 SELECT * FROM mysql.column_stats WHERE db_name='test' AND table_name='t1' AND column_name='c'; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL SELECT MIN(t1.c), MAX(t1.c), (SELECT COUNT(*) FROM t1 WHERE t1.c IS NULL) / (SELECT COUNT(*) FROM t1) AS "NULLS_RATIO(t1.c)", (SELECT COUNT(t1.c) FROM t1) / (SELECT COUNT(DISTINCT t1.c) FROM t1) AS "AVG_FREQUENCY(t1.c)" FROM t1; MIN(t1.c) MAX(t1.c) NULLS_RATIO(t1.c) AVG_FREQUENCY(t1.c) aaaa dddddddd 0.1250 7.0000 SELECT * FROM mysql.column_stats WHERE db_name='test' AND table_name='t1' AND column_name='d'; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL SELECT MIN(t1.d), MAX(t1.d), (SELECT COUNT(*) FROM t1 WHERE t1.d IS NULL) / (SELECT COUNT(*) FROM t1) AS "NULLS_RATIO(t1.d)", (SELECT COUNT(t1.d) FROM t1) / (SELECT COUNT(DISTINCT t1.d) FROM t1) AS "AVG_FREQUENCY(t1.d)" FROM t1; MIN(t1.d) MAX(t1.d) NULLS_RATIO(t1.d) AVG_FREQUENCY(t1.d) 1989-03-12 1999-07-23 0.1500 8.5000 SELECT * FROM mysql.column_stats WHERE db_name='test' AND table_name='t1' AND column_name='e'; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL SELECT MIN(t1.e), MAX(t1.e), (SELECT COUNT(*) FROM t1 WHERE t1.e IS NULL) / (SELECT COUNT(*) FROM t1) AS "NULLS_RATIO(t1.e)", (SELECT COUNT(t1.e) FROM t1) / (SELECT COUNT(DISTINCT t1.e) FROM t1) AS "AVG_FREQUENCY(t1.e)" FROM t1; MIN(t1.e) MAX(t1.e) NULLS_RATIO(t1.e) AVG_FREQUENCY(t1.e) 0.01 0.112 0.2250 6.2000 SELECT * FROM mysql.index_stats WHERE db_name='test' AND table_name='t1' AND index_name='idx1'; db_name table_name index_name prefix_arity avg_frequency test t1 idx1 1 6.4000 test t1 idx1 2 1.6875 SELECT (SELECT COUNT(*) FROM t1 WHERE t1.b IS NOT NULL) / (SELECT COUNT(DISTINCT t1.b) FROM t1 WHERE t1.b IS NOT NULL) AS 'ARITY 1', (SELECT COUNT(*) FROM t1 WHERE t1.b IS NOT NULL AND t1.e IS NOT NULL) / (SELECT COUNT(DISTINCT t1.b, t1.e) FROM t1 WHERE t1.b IS NOT NULL AND t1.e IS NOT NULL) AS 'ARITY 2'; ARITY 1 ARITY 2 6.4000 1.6875 SELECT * FROM mysql.index_stats WHERE db_name='test' AND table_name='t1' AND index_name='idx2'; db_name table_name index_name prefix_arity avg_frequency test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 SELECT (SELECT COUNT(*) FROM t1 WHERE t1.c IS NOT NULL) / (SELECT COUNT(DISTINCT t1.c) FROM t1 WHERE t1.c IS NOT NULL) AS 'ARITY 1', (SELECT COUNT(*) FROM t1 WHERE t1.c IS NOT NULL AND t1.d IS NOT NULL) / (SELECT COUNT(DISTINCT t1.c, t1.d) FROM t1 WHERE t1.c IS NOT NULL AND t1.d IS NOT NULL) AS 'ARITY 2'; ARITY 1 ARITY 2 7.0000 2.3846 SELECT * FROM mysql.index_stats WHERE db_name='test' AND table_name='t1' AND index_name='idx3'; db_name table_name index_name prefix_arity avg_frequency test t1 idx3 1 8.5000 SELECT (SELECT COUNT(*) FROM t1 WHERE t1.d IS NOT NULL) / (SELECT COUNT(DISTINCT t1.d) FROM t1 WHERE t1.d IS NOT NULL) AS 'ARITY 1'; ARITY 1 8.5000 SELECT * FROM mysql.index_stats WHERE db_name='test' AND table_name='t1' AND index_name='idx4'; db_name table_name index_name prefix_arity avg_frequency test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 SELECT (SELECT COUNT(*) FROM t1 WHERE t1.e IS NOT NULL) / (SELECT COUNT(DISTINCT t1.e) FROM t1 WHERE t1.e IS NOT NULL) AS 'ARITY 1', (SELECT COUNT(*) FROM t1 WHERE t1.e IS NOT NULL AND t1.b IS NOT NULL) / (SELECT COUNT(DISTINCT t1.e, t1.b) FROM t1 WHERE t1.e IS NOT NULL AND t1.b IS NOT NULL) AS 'ARITY 2', (SELECT COUNT(*) FROM t1 WHERE t1.e IS NOT NULL AND t1.b IS NOT NULL AND t1.d IS NOT NULL) / (SELECT COUNT(DISTINCT t1.e, t1.b, t1.d) FROM t1 WHERE t1.e IS NOT NULL AND t1.b IS NOT NULL AND t1.d IS NOT NULL) AS 'ARITY 3'; ARITY 1 ARITY 2 ARITY 3 6.2000 1.6875 1.1304 DELETE FROM mysql.column_stats; set histogram_size=4; ANALYZE TABLE t1; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date SELECT db_name, table_name, column_name, min_value, max_value, nulls_ratio, avg_frequency, hist_size, hist_type, decode_histogram(hist_type,histogram) FROM mysql.column_stats ORDER BY db_name, table_name, column_name; db_name table_name column_name min_value max_value nulls_ratio avg_frequency hist_size hist_type decode_histogram(hist_type,histogram) test t1 a 0 49 0.0000 1.0000 4 JSON_HB { "target_histogram_size": 4, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "0", "size": 0.275, "ndv": 11 }, { "start": "12", "size": 0.275, "ndv": 11 }, { "start": "29", "size": 0.275, "ndv": 11 }, { "start": "41", "end": "49", "size": 0.175, "ndv": 7 } ] } test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 6.4000 4 JSON_HB { "target_histogram_size": 4, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "vvvvvvvvvvvvv", "size": 0.28125, "ndv": 2 }, { "start": "wwwwwwwwwwwwwwwwwwwwwwwwwwww", "size": 0.28125, "ndv": 2 }, { "start": "xxxxxxxxxxxxxxxxxxxxxxxxxx", "size": 0.28125, "ndv": 3 }, { "start": "zzzzzzzzzzzzzzzzzz", "end": "zzzzzzzzzzzzzzzzzz", "size": 0.15625, "ndv": 1 } ] } test t1 c aaaa dddddddd 0.1250 7.0000 4 JSON_HB { "target_histogram_size": 4, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "aaaa", "size": 0.257142857, "ndv": 1 }, { "start": "bbb", "size": 0.257142857, "ndv": 3 }, { "start": "ccccccccc", "size": 0.257142857, "ndv": 2 }, { "start": "dddddddd", "end": "dddddddd", "size": 0.228571429, "ndv": 1 } ] } test t1 d 1989-03-12 1999-07-23 0.1500 8.5000 3 JSON_HB { "target_histogram_size": 4, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "1989-03-12", "size": 0.323529412, "ndv": 1 }, { "start": "1990-05-15", "size": 0.411764706, "ndv": 1 }, { "start": "1998-08-28", "end": "1999-07-23", "size": 0.264705882, "ndv": 2 } ] } test t1 e 0.01 0.112 0.2250 6.2000 4 JSON_HB { "target_histogram_size": 4, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "0.01", "size": 0.387096774, "ndv": 1 }, { "start": "0.012", "size": 0.258064516, "ndv": 3 }, { "start": "0.1", "size": 0.258064516, "ndv": 2 }, { "start": "0.112", "end": "0.112", "size": 0.096774194, "ndv": 1 } ] } test t1 f 1 5 0.2000 6.4000 4 JSON_HB { "target_histogram_size": 4, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start_hex": "01", "size": 0.28125, "ndv": 2 }, { "start_hex": "02", "size": 0.28125, "ndv": 2 }, { "start_hex": "04", "size": 0.3125, "ndv": 1 }, { "start_hex": "05", "end_hex": "05", "size": 0.125, "ndv": 1 } ] } DELETE FROM mysql.column_stats; set histogram_size=8; set histogram_type=@DOUBLE_PREC_TYPE; ANALYZE TABLE t1; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date SELECT db_name, table_name, column_name, min_value, max_value, nulls_ratio, avg_frequency, hist_size, hist_type, decode_histogram(hist_type,histogram) FROM mysql.column_stats ORDER BY db_name, table_name, column_name; db_name table_name column_name min_value max_value nulls_ratio avg_frequency hist_size hist_type decode_histogram(hist_type,histogram) test t1 a 0 49 0.0000 1.0000 7 JSON_HB { "target_histogram_size": 8, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "0", "size": 0.15, "ndv": 6 }, { "start": "7", "size": 0.15, "ndv": 6 }, { "start": "14", "size": 0.15, "ndv": 6 }, { "start": "22", "size": 0.15, "ndv": 6 }, { "start": "31", "size": 0.15, "ndv": 6 }, { "start": "38", "size": 0.15, "ndv": 6 }, { "start": "44", "end": "49", "size": 0.1, "ndv": 4 } ] } test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 6.4000 5 JSON_HB { "target_histogram_size": 8, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "vvvvvvvvvvvvv", "size": 0.25, "ndv": 1 }, { "start": "wwwwwwwwwwwwwwwwwwwwwwwwwwww", "size": 0.21875, "ndv": 1 }, { "start": "xxxxxxxxxxxxxxxxxxxxxxxxxx", "size": 0.125, "ndv": 1 }, { "start": "yyy", "size": 0.1875, "ndv": 1 }, { "start": "zzzzzzzzzzzzzzzzzz", "end": "zzzzzzzzzzzzzzzzzz", "size": 0.21875, "ndv": 1 } ] } test t1 c aaaa dddddddd 0.1250 7.0000 5 JSON_HB { "target_histogram_size": 8, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "aaaa", "size": 0.257142857, "ndv": 1 }, { "start": "bbb", "size": 0.142857143, "ndv": 2 }, { "start": "bbbbbb", "size": 0.085714286, "ndv": 1 }, { "start": "ccccccccc", "size": 0.228571429, "ndv": 1 }, { "start": "dddddddd", "end": "dddddddd", "size": 0.285714286, "ndv": 1 } ] } test t1 d 1989-03-12 1999-07-23 0.1500 8.5000 4 JSON_HB { "target_histogram_size": 8, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "1989-03-12", "size": 0.323529412, "ndv": 1 }, { "start": "1990-05-15", "size": 0.411764706, "ndv": 1 }, { "start": "1998-08-28", "size": 0.147058824, "ndv": 2 }, { "start": "1999-07-23", "end": "1999-07-23", "size": 0.117647059, "ndv": 1 } ] } test t1 e 0.01 0.112 0.2250 6.2000 5 JSON_HB { "target_histogram_size": 8, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "0.01", "size": 0.387096774, "ndv": 1 }, { "start": "0.012", "size": 0.129032258, "ndv": 2 }, { "start": "0.05", "size": 0.096774194, "ndv": 1 }, { "start": "0.1", "size": 0.258064516, "ndv": 1 }, { "start": "0.112", "end": "0.112", "size": 0.129032258, "ndv": 1 } ] } test t1 f 1 5 0.2000 6.4000 5 JSON_HB { "target_histogram_size": 8, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start_hex": "01", "size": 0.125, "ndv": 1 }, { "start_hex": "02", "size": 0.25, "ndv": 1 }, { "start_hex": "03", "size": 0.1875, "ndv": 1 }, { "start_hex": "04", "size": 0.3125, "ndv": 1 }, { "start_hex": "05", "end_hex": "05", "size": 0.125, "ndv": 1 } ] } DELETE FROM mysql.column_stats; set histogram_size= 0; set histogram_type=@SINGLE_PREC_TYPE; ANALYZE TABLE t1; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date CREATE TABLE t3 ( a int NOT NULL PRIMARY KEY, b varchar(32), c char(16), INDEX idx (c) ) ENGINE=MYISAM; INSERT INTO t3 VALUES (0, NULL, NULL), (7, 'xxxxxxxxxxxxxxxxxxxxxxxxxx', 'dddddddd'), (17, 'vvvvvvvvvvvvv', 'aaaa'), (1, 'vvvvvvvvvvvvv', NULL), (12, 'wwwwwwwwwwwwwwwwwwwwwwwwwwww', 'dddddddd'), (23, 'vvvvvvvvvvvvv', 'dddddddd'), (8, 'vvvvvvvvvvvvv', 'aaaa'), (22, 'xxxxxxxxxxxxxxxxxxxxxxxxxx', 'aaaa'), (31, 'wwwwwwwwwwwwwwwwwwwwwwwwwwww', 'aaaa'), (10, NULL, 'aaaa'), (5, 'wwwwwwwwwwwwwwwwwwwwwwwwwwww', 'dddddddd'), (15, 'vvvvvvvvvvvvv', 'ccccccccc'), (30, NULL, 'bbbbbb'), (38, 'zzzzzzzzzzzzzzzzzz', 'bbbbbb'), (18, 'zzzzzzzzzzzzzzzzzz', 'ccccccccc'), (9, 'yyy', 'bbbbbb'), (29, 'vvvvvvvvvvvvv', 'dddddddd'); ANALYZE TABLE t3; Table Op Msg_type Msg_text test.t3 analyze status Engine-independent statistics collected test.t3 analyze status OK SELECT * FROM mysql.table_stats; db_name table_name cardinality test t1 40 test t3 17 SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL test t3 a 0 38 0.0000 4.0000 1.0000 0 NULL NULL test t3 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.1765 18.0714 2.8000 0 NULL NULL test t3 c aaaa dddddddd 0.1176 6.4000 3.7500 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 6.4000 test t1 idx1 2 1.6875 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 test t3 PRIMARY 1 1.0000 test t3 idx 1 3.7500 ALTER TABLE t1 RENAME TO s1; SELECT * FROM mysql.table_stats; db_name table_name cardinality test s1 40 test t3 17 SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test s1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test s1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test s1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test s1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test s1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test s1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL test t3 a 0 38 0.0000 4.0000 1.0000 0 NULL NULL test t3 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.1765 18.0714 2.8000 0 NULL NULL test t3 c aaaa dddddddd 0.1176 6.4000 3.7500 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test s1 PRIMARY 1 1.0000 test s1 idx1 1 6.4000 test s1 idx1 2 1.6875 test s1 idx2 1 7.0000 test s1 idx2 2 2.3846 test s1 idx3 1 8.5000 test s1 idx4 1 6.2000 test s1 idx4 2 1.6875 test s1 idx4 3 1.1304 test t3 PRIMARY 1 1.0000 test t3 idx 1 3.7500 RENAME TABLE s1 TO t1; SELECT * FROM mysql.table_stats; db_name table_name cardinality test t1 40 test t3 17 SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL test t3 a 0 38 0.0000 4.0000 1.0000 0 NULL NULL test t3 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.1765 18.0714 2.8000 0 NULL NULL test t3 c aaaa dddddddd 0.1176 6.4000 3.7500 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 6.4000 test t1 idx1 2 1.6875 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 test t3 PRIMARY 1 1.0000 test t3 idx 1 3.7500 DROP TABLE t3; SELECT * FROM mysql.table_stats; db_name table_name cardinality test t1 40 SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 6.4000 test t1 idx1 2 1.6875 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 CREATE TEMPORARY TABLE t0 ( a int NOT NULL PRIMARY KEY, b varchar(32) ); INSERT INTO t0 SELECT a,b FROM t1; ALTER TABLE t1 CHANGE COLUMN b x varchar(32), CHANGE COLUMN e y double; SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `x` varchar(32) DEFAULT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `y` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx1` (`x`,`y`), KEY `idx2` (`c`,`d`), KEY `idx3` (`d`), KEY `idx4` (`y`,`x`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL test t1 x vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 y 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL ALTER TABLE t1 CHANGE COLUMN x b varchar(32), CHANGE COLUMN y e double; SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `b` varchar(32) DEFAULT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx1` (`b`,`e`), KEY `idx2` (`c`,`d`), KEY `idx3` (`d`), KEY `idx4` (`e`,`b`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL ALTER TABLE t1 RENAME TO s1, CHANGE COLUMN b x varchar(32); SHOW CREATE TABLE s1; Table Create Table s1 CREATE TABLE `s1` ( `a` int(11) NOT NULL, `x` varchar(32) DEFAULT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx1` (`x`,`e`), KEY `idx2` (`c`,`d`), KEY `idx3` (`d`), KEY `idx4` (`e`,`x`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.table_stats; db_name table_name cardinality test s1 40 SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test s1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test s1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test s1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test s1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test s1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL test s1 x vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test s1 PRIMARY 1 1.0000 test s1 idx1 1 6.4000 test s1 idx1 2 1.6875 test s1 idx2 1 7.0000 test s1 idx2 2 2.3846 test s1 idx3 1 8.5000 test s1 idx4 1 6.2000 test s1 idx4 2 1.6875 test s1 idx4 3 1.1304 ALTER TABLE s1 RENAME TO t1, CHANGE COLUMN x b varchar(32); SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `b` varchar(32) DEFAULT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx1` (`b`,`e`), KEY `idx2` (`c`,`d`), KEY `idx3` (`d`), KEY `idx4` (`e`,`b`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.table_stats; db_name table_name cardinality test t1 40 SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 6.4000 test t1 idx1 2 1.6875 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 ALTER TABLE t1 CHANGE COLUMN b x varchar(30); SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `x` varchar(30) DEFAULT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx1` (`x`,`e`), KEY `idx2` (`c`,`d`), KEY `idx3` (`d`), KEY `idx4` (`e`,`x`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 ALTER TABLE t1 CHANGE COLUMN x b varchar(32); SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `b` varchar(32) DEFAULT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx1` (`b`,`e`), KEY `idx2` (`c`,`d`), KEY `idx3` (`d`), KEY `idx4` (`e`,`b`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 ANALYZE TABLE t1 PERSISTENT FOR COLUMNS(b) INDEXES(idx1, idx4); Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 6.4000 test t1 idx1 2 1.6875 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 SELECT * INTO OUTFILE 'MYSQLTEST_VARDIR/tmp/save_column_stats' FIELDS TERMINATED BY ',' OPTIONALLY ENCLOSED BY '"' LINES TERMINATED BY '\n' FROM mysql.column_stats WHERE column_name='b'; SELECT * INTO OUTFILE 'MYSQLTEST_VARDIR/tmp/save_index_stats' FIELDS TERMINATED BY ',' OPTIONALLY ENCLOSED BY '"' LINES TERMINATED BY '\n' FROM mysql.index_stats WHERE index_name IN ('idx1', 'idx4'); ALTER TABLE t1 CHANGE COLUMN b x varchar(30); SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `x` varchar(30) DEFAULT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx1` (`x`,`e`), KEY `idx2` (`c`,`d`), KEY `idx3` (`d`), KEY `idx4` (`e`,`x`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 ALTER TABLE t1 CHANGE COLUMN x b varchar(32); SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `b` varchar(32) DEFAULT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx1` (`b`,`e`), KEY `idx2` (`c`,`d`), KEY `idx3` (`d`), KEY `idx4` (`e`,`b`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 LOAD DATA INFILE 'MYSQLTEST_VARDIR/tmp/save_column_stats' INTO TABLE mysql.column_stats FIELDS TERMINATED BY ',' OPTIONALLY ENCLOSED BY '"' LINES TERMINATED BY '\n'; LOAD DATA INFILE 'MYSQLTEST_VARDIR/tmp/save_index_stats' INTO TABLE mysql.index_stats FIELDS TERMINATED BY ',' OPTIONALLY ENCLOSED BY '"' LINES TERMINATED BY '\n'; SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 6.4000 test t1 idx1 2 1.6875 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 ALTER TABLE t1 DROP COLUMN b; SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx1` (`e`), KEY `idx2` (`c`,`d`), KEY `idx3` (`d`), KEY `idx4` (`e`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 DROP INDEX idx2 ON t1; SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx1` (`e`), KEY `idx3` (`d`), KEY `idx4` (`e`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx3 1 8.5000 DROP INDEX idx1 ON t1; DROP INDEX idx4 ON t1; SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx3` (`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci ALTER TABLE t1 ADD COLUMN b varchar(32); CREATE INDEX idx1 ON t1(b, e); CREATE INDEX idx2 ON t1(c, d); CREATE INDEX idx4 ON t1(e, b, d); SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, `b` varchar(32) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx3` (`d`), KEY `idx1` (`b`,`e`), KEY `idx2` (`c`,`d`), KEY `idx4` (`e`,`b`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx3 1 8.5000 ANALYZE TABLE t1 PERSISTENT FOR COLUMNS(b) INDEXES(idx1, idx2, idx4); Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b NULL NULL 1.0000 NULL NULL 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 NULL test t1 idx1 2 NULL test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 NULL test t1 idx4 3 NULL UPDATE t1 SET b=(SELECT b FROM t0 WHERE t0.a= t1.a); ANALYZE TABLE t1 PERSISTENT FOR COLUMNS(b) INDEXES(idx1, idx2, idx4); Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 6.4000 test t1 idx1 2 1.6875 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 ALTER TABLE t1 DROP COLUMN b, DROP INDEX idx1, DROP INDEX idx2, DROP INDEX idx4; SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx3` (`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx3 1 8.5000 ALTER TABLE t1 ADD COLUMN b varchar(32); ALTER TABLE t1 ADD INDEX idx1 (b, e), ADD INDEX idx2 (c, d), ADD INDEX idx4 (e, b, d); UPDATE t1 SET b=(SELECT b FROM t0 WHERE t0.a= t1.a); SHOW CREATE TABLE t1; Table Create Table t1 CREATE TABLE `t1` ( `a` int(11) NOT NULL, `c` char(16) DEFAULT NULL, `d` date DEFAULT NULL, `e` double DEFAULT NULL, `f` bit(3) DEFAULT NULL, `b` varchar(32) DEFAULT NULL, PRIMARY KEY (`a`), KEY `idx3` (`d`), KEY `idx1` (`b`,`e`), KEY `idx2` (`c`,`d`), KEY `idx4` (`e`,`b`,`d`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1 COLLATE=latin1_swedish_ci SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx3 1 8.5000 ANALYZE TABLE t1 PERSISTENT FOR COLUMNS(b) INDEXES(idx1, idx2, idx4); Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 6.4000 test t1 idx1 2 1.6875 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 DELETE FROM mysql.table_stats; DELETE FROM mysql.column_stats; DELETE FROM mysql.index_stats; ANALYZE TABLE t1 PERSISTENT FOR COLUMNS() INDEXES(); Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date SELECT * FROM mysql.table_stats; db_name table_name cardinality test t1 40 SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency ANALYZE TABLE t1 PERSISTENT FOR COLUMNS(c,e,b) INDEXES(idx2,idx4); Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date SELECT * FROM mysql.table_stats; db_name table_name cardinality test t1 40 SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 DELETE FROM mysql.index_stats WHERE table_name='t1' AND index_name='primary'; SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 ANALYZE TABLE t1 PERSISTENT FOR COLUMNS() INDEXES(primary); Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 DELETE FROM mysql.table_stats; DELETE FROM mysql.column_stats; DELETE FROM mysql.index_stats; ANALYZE TABLE t1 PERSISTENT FOR COLUMNS ALL INDEXES ALL; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date SELECT * FROM mysql.table_stats; db_name table_name cardinality test t1 40 SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 6.4000 test t1 idx1 2 1.6875 test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 1.6875 test t1 idx4 3 1.1304 CREATE TABLE t2 LIKE t1; ALTER TABLE t2 ENGINE=InnoDB; INSERT INTO t2 SELECT * FROM t1; set optimizer_switch='extended_keys=off'; ANALYZE TABLE t2; Table Op Msg_type Msg_text test.t2 analyze status Engine-independent statistics collected test.t2 analyze status OK SELECT * FROM mysql.table_stats; db_name table_name cardinality test t1 40 test t2 40 SELECT * FROM mysql.column_stats ORDER BY column_name, table_name; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t2 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t2 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t2 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t2 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t2 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL test t2 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats ORDER BY index_name, prefix_arity, table_name; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t2 PRIMARY 1 1.0000 test t1 idx1 1 6.4000 test t2 idx1 1 6.4000 test t1 idx1 2 1.6875 test t2 idx1 2 1.6875 test t1 idx2 1 7.0000 test t2 idx2 1 7.0000 test t1 idx2 2 2.3846 test t2 idx2 2 2.3846 test t1 idx3 1 8.5000 test t2 idx3 1 8.5000 test t1 idx4 1 6.2000 test t2 idx4 1 6.2000 test t1 idx4 2 1.6875 test t2 idx4 2 1.6875 test t1 idx4 3 1.1304 test t2 idx4 3 1.1304 DELETE FROM mysql.table_stats; DELETE FROM mysql.column_stats; DELETE FROM mysql.index_stats; set optimizer_switch='extended_keys=on'; ANALYZE TABLE t2; Table Op Msg_type Msg_text test.t2 analyze status Engine-independent statistics collected test.t2 analyze status OK SELECT * FROM mysql.table_stats; db_name table_name cardinality test t2 40 SELECT * FROM mysql.column_stats ORDER BY column_name; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t2 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t2 b vvvvvvvvvvvvv zzzzzzzzzzzzzzzzzz 0.2000 17.1250 6.4000 0 NULL NULL test t2 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t2 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t2 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t2 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats ORDER BY index_name, prefix_arity, table_name; db_name table_name index_name prefix_arity avg_frequency test t2 PRIMARY 1 1.0000 test t2 idx1 1 6.4000 test t2 idx1 2 1.6875 test t2 idx1 3 1.0000 test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx2 3 1.0000 test t2 idx3 1 8.5000 test t2 idx3 2 1.0000 test t2 idx4 1 6.2000 test t2 idx4 2 1.6875 test t2 idx4 3 1.1304 test t2 idx4 4 1.0000 ALTER TABLE t2 DROP PRIMARY KEY, DROP INDEX idx1; SELECT * FROM mysql.index_stats ORDER BY index_name, prefix_arity, table_name; db_name table_name index_name prefix_arity avg_frequency test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx3 1 8.5000 test t2 idx4 1 6.2000 test t2 idx4 2 1.6875 test t2 idx4 3 1.1304 UPDATE t2 SET b=0 WHERE b IS NULL; ALTER TABLE t2 ADD PRIMARY KEY (a,b); SELECT * FROM mysql.index_stats ORDER BY index_name, prefix_arity, table_name; db_name table_name index_name prefix_arity avg_frequency test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx3 1 8.5000 test t2 idx4 1 6.2000 test t2 idx4 2 1.6875 test t2 idx4 3 1.1304 ANALYZE TABLE t2 PERSISTENT FOR COLUMNS() INDEXES ALL; Table Op Msg_type Msg_text test.t2 analyze status Engine-independent statistics collected test.t2 analyze status OK SELECT * FROM mysql.index_stats ORDER BY index_name, prefix_arity, table_name; db_name table_name index_name prefix_arity avg_frequency test t2 PRIMARY 1 1.0000 test t2 PRIMARY 2 1.0000 test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx2 3 1.0000 test t2 idx2 4 1.0000 test t2 idx3 1 8.5000 test t2 idx3 2 1.0000 test t2 idx3 3 1.0000 test t2 idx4 1 6.2000 test t2 idx4 2 1.7222 test t2 idx4 3 1.1154 test t2 idx4 4 1.0000 ALTER TABLE t2 CHANGE COLUMN b b varchar(30); SELECT * FROM mysql.index_stats ORDER BY index_name, prefix_arity, table_name; db_name table_name index_name prefix_arity avg_frequency test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx3 1 8.5000 ANALYZE TABLE t2 PERSISTENT FOR COLUMNS ALL INDEXES ALL; Table Op Msg_type Msg_text test.t2 analyze status Engine-independent statistics collected test.t2 analyze status OK SELECT * FROM mysql.index_stats ORDER BY index_name, prefix_arity, table_name; db_name table_name index_name prefix_arity avg_frequency test t2 PRIMARY 1 1.0000 test t2 PRIMARY 2 1.0000 test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx2 3 1.0000 test t2 idx2 4 1.0000 test t2 idx3 1 8.5000 test t2 idx3 2 1.0000 test t2 idx3 3 1.0000 test t2 idx4 1 6.2000 test t2 idx4 2 1.7222 test t2 idx4 3 1.1154 test t2 idx4 4 1.0000 ALTER TABLE t2 CHANGE COLUMN b b varchar(32); SELECT * FROM mysql.index_stats ORDER BY index_name, prefix_arity, table_name; db_name table_name index_name prefix_arity avg_frequency test t2 PRIMARY 1 1.0000 test t2 PRIMARY 2 1.0000 test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx2 3 1.0000 test t2 idx2 4 1.0000 test t2 idx3 1 8.5000 test t2 idx3 2 1.0000 test t2 idx3 3 1.0000 test t2 idx4 1 6.2000 test t2 idx4 2 1.7222 test t2 idx4 3 1.1154 test t2 idx4 4 1.0000 ANALYZE TABLE t2 PERSISTENT FOR COLUMNS ALL INDEXES ALL; Table Op Msg_type Msg_text test.t2 analyze status Engine-independent statistics collected test.t2 analyze status OK SELECT * FROM mysql.index_stats ORDER BY index_name, prefix_arity, table_name; db_name table_name index_name prefix_arity avg_frequency test t2 PRIMARY 1 1.0000 test t2 PRIMARY 2 1.0000 test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx2 3 1.0000 test t2 idx2 4 1.0000 test t2 idx3 1 8.5000 test t2 idx3 2 1.0000 test t2 idx3 3 1.0000 test t2 idx4 1 6.2000 test t2 idx4 2 1.7222 test t2 idx4 3 1.1154 test t2 idx4 4 1.0000 ALTER TABLE t2 DROP COLUMN b, DROP PRIMARY KEY, ADD PRIMARY KEY(a); SELECT * FROM mysql.index_stats ORDER BY index_name, prefix_arity, table_name; db_name table_name index_name prefix_arity avg_frequency test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx3 1 8.5000 ANALYZE TABLE t2 PERSISTENT FOR COLUMNS() INDEXES ALL; Table Op Msg_type Msg_text test.t2 analyze status Engine-independent statistics collected test.t2 analyze status OK SELECT * FROM mysql.index_stats ORDER BY index_name, prefix_arity, table_name; db_name table_name index_name prefix_arity avg_frequency test t2 PRIMARY 1 1.0000 test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx2 3 1.0000 test t2 idx3 1 8.5000 test t2 idx3 2 1.0000 test t2 idx4 1 6.2000 test t2 idx4 2 2.2308 test t2 idx4 3 1.0000 set optimizer_switch='extended_keys=off'; ALTER TABLE t1 DROP INDEX idx1, DROP INDEX idx4; ALTER TABLE t1 MODIFY COLUMN b text, ADD INDEX idx1 (b(4), e), ADD INDEX idx4 (e, b(4), d); SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t2 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t2 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t2 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t2 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t2 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t2 PRIMARY 1 1.0000 test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx2 3 1.0000 test t2 idx3 1 8.5000 test t2 idx3 2 1.0000 test t2 idx4 1 6.2000 test t2 idx4 2 2.2308 test t2 idx4 3 1.0000 ANALYZE TABLE t1; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze Warning Engine-independent statistics are not collected for column 'b' test.t1 analyze status OK SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL test t2 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t2 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t2 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t2 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t2 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 NULL test t1 idx1 2 NULL test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 NULL test t1 idx4 3 NULL test t2 PRIMARY 1 1.0000 test t2 idx2 1 7.0000 test t2 idx2 2 2.3846 test t2 idx2 3 1.0000 test t2 idx3 1 8.5000 test t2 idx3 2 1.0000 test t2 idx4 1 6.2000 test t2 idx4 2 2.2308 test t2 idx4 3 1.0000 DELETE FROM mysql.table_stats; DELETE FROM mysql.column_stats; DELETE FROM mysql.index_stats; ANALYZE TABLE mysql.column_stats PERSISTENT FOR ALL; Table Op Msg_type Msg_text mysql.column_stats analyze error Invalid argument ANALYZE TABLE mysql.column_stats; Table Op Msg_type Msg_text mysql.column_stats analyze status OK SELECT * FROM mysql.table_stats; db_name table_name cardinality SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency set use_stat_tables='never'; ANALYZE TABLE t1 PERSISTENT FOR ALL; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze Warning Engine-independent statistics are not collected for column 'b' test.t1 analyze status Table is already up to date SELECT * FROM mysql.table_stats; db_name table_name cardinality test t1 40 SELECT * FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 49 0.0000 4.0000 1.0000 0 NULL NULL test t1 c aaaa dddddddd 0.1250 6.6571 7.0000 0 NULL NULL test t1 d 1989-03-12 1999-07-23 0.1500 3.0000 8.5000 0 NULL NULL test t1 e 0.01 0.112 0.2250 8.0000 6.2000 0 NULL NULL test t1 f 1 5 0.2000 1.0000 6.4000 0 NULL NULL SELECT * FROM mysql.index_stats; db_name table_name index_name prefix_arity avg_frequency test t1 PRIMARY 1 1.0000 test t1 idx1 1 NULL test t1 idx1 2 NULL test t1 idx2 1 7.0000 test t1 idx2 2 2.3846 test t1 idx3 1 8.5000 test t1 idx4 1 6.2000 test t1 idx4 2 NULL test t1 idx4 3 NULL DELETE FROM mysql.table_stats; DELETE FROM mysql.column_stats; DELETE FROM mysql.index_stats; ANALYZE TABLE t1 PERSISTENT FOR COLUMNS(b) INDEXES(); Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze Warning Engine-independent statistics are not collected for column 'b' test.t1 analyze status Table is already up to date ANALYZE TABLE t1 PERSISTENT FOR columns(a,b) INDEXES(); Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze Warning Engine-independent statistics are not collected for column 'b' test.t1 analyze status Table is already up to date ANALYZE TABLE t1 PERSISTENT FOR columns(b) indexes(idx2); Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze Warning Engine-independent statistics are not collected for column 'b' test.t1 analyze status Table is already up to date ANALYZE TABLE t1 PERSISTENT FOR columns() indexes(idx2); Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date DELETE FROM mysql.table_stats; DELETE FROM mysql.column_stats; DELETE FROM mysql.index_stats; DROP TABLE t1,t2; set names utf8; CREATE DATABASE world; use world; CREATE TABLE Country ( Code char(3) NOT NULL default '', Name char(52) NOT NULL default '', SurfaceArea float(10,2) NOT NULL default '0.00', Population int(11) NOT NULL default '0', Capital int(11) default NULL, PRIMARY KEY (Code), UNIQUE INDEX (Name) ) CHARACTER SET utf8 COLLATE utf8_bin; CREATE TABLE City ( ID int(11) NOT NULL auto_increment, Name char(35) NOT NULL default '', Country char(3) NOT NULL default '', Population int(11) NOT NULL default '0', PRIMARY KEY (ID), INDEX (Population), INDEX (Country) ) CHARACTER SET utf8 COLLATE utf8_bin; CREATE TABLE CountryLanguage ( Country char(3) NOT NULL default '', Language char(30) NOT NULL default '', Percentage float(3,1) NOT NULL default '0.0', PRIMARY KEY (Country, Language), INDEX (Percentage) ) CHARACTER SET utf8 COLLATE utf8_bin; set use_stat_tables='preferably'; ANALYZE TABLE Country, City, CountryLanguage; SELECT UPPER(db_name), UPPER(table_name), cardinality FROM mysql.table_stats; UPPER(db_name) UPPER(table_name) cardinality WORLD CITY 4079 WORLD COUNTRY 239 WORLD COUNTRYLANGUAGE 984 SELECT UPPER(db_name), UPPER(table_name), column_name, min_value, max_value, nulls_ratio, avg_length, avg_frequency FROM mysql.column_stats; UPPER(db_name) UPPER(table_name) column_name min_value max_value nulls_ratio avg_length avg_frequency WORLD CITY Country ABW ZWE 0.0000 3.0000 17.5819 WORLD CITY ID 1 4079 0.0000 4.0000 1.0000 WORLD CITY Name A Coruña (La Coruña) Ürgenc 0.0000 8.6416 1.0195 WORLD CITY Population 42 10500000 0.0000 4.0000 1.0467 WORLD COUNTRY Capital 1 4074 0.0293 4.0000 1.0000 WORLD COUNTRY Code ABW ZWE 0.0000 3.0000 1.0000 WORLD COUNTRY Name Afghanistan Zimbabwe 0.0000 10.1172 1.0000 WORLD COUNTRY Population 0 1277558000 0.0000 4.0000 1.0575 WORLD COUNTRY SurfaceArea 0.40 17075400.00 0.0000 4.0000 1.0042 WORLD COUNTRYLANGUAGE Country ABW ZWE 0.0000 3.0000 4.2232 WORLD COUNTRYLANGUAGE Language Abhyasi [South]Mande 0.0000 7.1778 2.1532 WORLD COUNTRYLANGUAGE Percentage 0.0 99.9 0.0000 4.0000 2.7640 SELECT UPPER(db_name), UPPER(table_name), index_name, prefix_arity, avg_frequency FROM mysql.index_stats; UPPER(db_name) UPPER(table_name) index_name prefix_arity avg_frequency WORLD CITY Country 1 17.5819 WORLD CITY PRIMARY 1 1.0000 WORLD CITY Population 1 1.0467 WORLD COUNTRY Name 1 1.0000 WORLD COUNTRY PRIMARY 1 1.0000 WORLD COUNTRYLANGUAGE PRIMARY 1 4.2232 WORLD COUNTRYLANGUAGE PRIMARY 2 1.0000 WORLD COUNTRYLANGUAGE Percentage 1 2.7640 use test; set use_stat_tables='never'; CREATE DATABASE world_innodb; use world_innodb; CREATE TABLE Country ( Code char(3) NOT NULL default '', Name char(52) NOT NULL default '', SurfaceArea float(10,2) NOT NULL default '0.00', Population int(11) NOT NULL default '0', Capital int(11) default NULL, PRIMARY KEY (Code), UNIQUE INDEX (Name) ) CHARACTER SET utf8 COLLATE utf8_bin; CREATE TABLE City ( ID int(11) NOT NULL auto_increment, Name char(35) NOT NULL default '', Country char(3) NOT NULL default '', Population int(11) NOT NULL default '0', PRIMARY KEY (ID), INDEX (Population), INDEX (Country) ) CHARACTER SET utf8 COLLATE utf8_bin; CREATE TABLE CountryLanguage ( Country char(3) NOT NULL default '', Language char(30) NOT NULL default '', Percentage float(3,1) NOT NULL default '0.0', PRIMARY KEY (Country, Language), INDEX (Percentage) ) CHARACTER SET utf8 COLLATE utf8_bin; ALTER TABLE Country ENGINE=InnoDB; ALTER TABLE City ENGINE=InnoDB; ALTER TABLE CountryLanguage ENGINE=InnoDB; set use_stat_tables='preferably'; ANALYZE TABLE Country, City, CountryLanguage; SELECT UPPER(db_name), UPPER(table_name), cardinality FROM mysql.table_stats; UPPER(db_name) UPPER(table_name) cardinality WORLD CITY 4079 WORLD COUNTRY 239 WORLD COUNTRYLANGUAGE 984 WORLD_INNODB CITY 4079 WORLD_INNODB COUNTRY 239 WORLD_INNODB COUNTRYLANGUAGE 984 SELECT UPPER(db_name), UPPER(table_name), column_name, min_value, max_value, nulls_ratio, avg_length, avg_frequency FROM mysql.column_stats; UPPER(db_name) UPPER(table_name) column_name min_value max_value nulls_ratio avg_length avg_frequency WORLD CITY Country ABW ZWE 0.0000 3.0000 17.5819 WORLD CITY ID 1 4079 0.0000 4.0000 1.0000 WORLD CITY Name A Coruña (La Coruña) Ürgenc 0.0000 8.6416 1.0195 WORLD CITY Population 42 10500000 0.0000 4.0000 1.0467 WORLD COUNTRY Capital 1 4074 0.0293 4.0000 1.0000 WORLD COUNTRY Code ABW ZWE 0.0000 3.0000 1.0000 WORLD COUNTRY Name Afghanistan Zimbabwe 0.0000 10.1172 1.0000 WORLD COUNTRY Population 0 1277558000 0.0000 4.0000 1.0575 WORLD COUNTRY SurfaceArea 0.40 17075400.00 0.0000 4.0000 1.0042 WORLD COUNTRYLANGUAGE Country ABW ZWE 0.0000 3.0000 4.2232 WORLD COUNTRYLANGUAGE Language Abhyasi [South]Mande 0.0000 7.1778 2.1532 WORLD COUNTRYLANGUAGE Percentage 0.0 99.9 0.0000 4.0000 2.7640 WORLD_INNODB CITY Country ABW ZWE 0.0000 3.0000 17.5819 WORLD_INNODB CITY ID 1 4079 0.0000 4.0000 1.0000 WORLD_INNODB CITY Name A Coruña (La Coruña) Ürgenc 0.0000 8.6416 1.0195 WORLD_INNODB CITY Population 42 10500000 0.0000 4.0000 1.0467 WORLD_INNODB COUNTRY Capital 1 4074 0.0293 4.0000 1.0000 WORLD_INNODB COUNTRY Code ABW ZWE 0.0000 3.0000 1.0000 WORLD_INNODB COUNTRY Name Afghanistan Zimbabwe 0.0000 10.1172 1.0000 WORLD_INNODB COUNTRY Population 0 1277558000 0.0000 4.0000 1.0575 WORLD_INNODB COUNTRY SurfaceArea 0.40 17075400.00 0.0000 4.0000 1.0042 WORLD_INNODB COUNTRYLANGUAGE Country ABW ZWE 0.0000 3.0000 4.2232 WORLD_INNODB COUNTRYLANGUAGE Language Abhyasi [South]Mande 0.0000 7.1778 2.1532 WORLD_INNODB COUNTRYLANGUAGE Percentage 0.0 99.9 0.0000 4.0000 2.7640 SELECT UPPER(db_name), UPPER(table_name), index_name, prefix_arity, avg_frequency FROM mysql.index_stats; UPPER(db_name) UPPER(table_name) index_name prefix_arity avg_frequency WORLD CITY Country 1 17.5819 WORLD CITY PRIMARY 1 1.0000 WORLD CITY Population 1 1.0467 WORLD COUNTRY Name 1 1.0000 WORLD COUNTRY PRIMARY 1 1.0000 WORLD COUNTRYLANGUAGE PRIMARY 1 4.2232 WORLD COUNTRYLANGUAGE PRIMARY 2 1.0000 WORLD COUNTRYLANGUAGE Percentage 1 2.7640 WORLD_INNODB CITY Country 1 17.5819 WORLD_INNODB CITY PRIMARY 1 1.0000 WORLD_INNODB CITY Population 1 1.0467 WORLD_INNODB COUNTRY Name 1 1.0000 WORLD_INNODB COUNTRY PRIMARY 1 1.0000 WORLD_INNODB COUNTRYLANGUAGE PRIMARY 1 4.2232 WORLD_INNODB COUNTRYLANGUAGE PRIMARY 2 1.0000 WORLD_INNODB COUNTRYLANGUAGE Percentage 1 2.7640 use world; set use_stat_tables='preferably'; set histogram_size=100; set histogram_type=@SINGLE_PREC_TYPE; ANALYZE TABLE CountryLanguage; set histogram_size=254; set histogram_type=@DOUBLE_PREC_TYPE; ANALYZE TABLE City; FLUSH TABLES; select UPPER(db_name),UPPER(table_name),UPPER(column_name),min_value,max_value,nulls_ratio,avg_length,avg_frequency,hist_size,hist_type,decode_histogram(hist_type,histogram) from mysql.column_stats where UPPER(db_name)='WORLD' and UPPER(table_name)='COUNTRYLANGUAGE' and UPPER(column_name) = 'PERCENTAGE';; UPPER(db_name) WORLD UPPER(table_name) COUNTRYLANGUAGE UPPER(column_name) PERCENTAGE min_value 0.0 max_value 99.9 nulls_ratio 0.0000 avg_length 4.0000 avg_frequency 2.7640 hist_size 85 hist_type JSON_HB decode_histogram(hist_type,histogram) { "target_histogram_size": 100, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "0.0", "size": 0.066056911, "ndv": 1 }, { "start": "0.1", "size": 0.020325203, "ndv": 1 }, { "start": "0.2", "size": 0.022357724, "ndv": 1 }, { "start": "0.3", "size": 0.017276423, "ndv": 1 }, { "start": "0.4", "size": 0.025406504, "ndv": 1 }, { "start": "0.5", "size": 0.020325203, "ndv": 1 }, { "start": "0.6", "size": 0.020325203, "ndv": 1 }, { "start": "0.7", "size": 0.017276423, "ndv": 1 }, { "start": "0.8", "size": 0.010162602, "ndv": 1 }, { "start": "0.9", "size": 0.010162602, "ndv": 1 }, { "start": "1.0", "size": 0.010162602, "ndv": 2 }, { "start": "1.1", "size": 0.010162602, "ndv": 2 }, { "start": "1.3", "size": 0.012195122, "ndv": 1 }, { "start": "1.4", "size": 0.015243902, "ndv": 1 }, { "start": "1.5", "size": 0.005081301, "ndv": 1 }, { "start": "1.6", "size": 0.015243902, "ndv": 1 }, { "start": "1.7", "size": 0.010162602, "ndv": 1 }, { "start": "1.8", "size": 0.010162602, "ndv": 2 }, { "start": "1.9", "size": 0.010162602, "ndv": 2 }, { "start": "2.0", "size": 0.010162602, "ndv": 3 }, { "start": "2.2", "size": 0.010162602, "ndv": 2 }, { "start": "2.3", "size": 0.010162602, "ndv": 2 }, { "start": "2.4", "size": 0.010162602, "ndv": 2 }, { "start": "2.5", "size": 0.010162602, "ndv": 2 }, { "start": "2.7", "size": 0.010162602, "ndv": 2 }, { "start": "2.8", "size": 0.010162602, "ndv": 3 }, { "start": "3.0", "size": 0.010162602, "ndv": 2 }, { "start": "3.2", "size": 0.010162602, "ndv": 2 }, { "start": "3.3", "size": 0.010162602, "ndv": 3 }, { "start": "3.5", "size": 0.010162602, "ndv": 3 }, { "start": "3.7", "size": 0.010162602, "ndv": 2 }, { "start": "3.8", "size": 0.010162602, "ndv": 4 }, { "start": "4.1", "size": 0.010162602, "ndv": 3 }, { "start": "4.4", "size": 0.010162602, "ndv": 4 }, { "start": "4.8", "size": 0.010162602, "ndv": 2 }, { "start": "4.9", "size": 0.010162602, "ndv": 5 }, { "start": "5.3", "size": 0.010162602, "ndv": 3 }, { "start": "5.5", "size": 0.010162602, "ndv": 3 }, { "start": "5.7", "size": 0.010162602, "ndv": 4 }, { "start": "6.0", "size": 0.010162602, "ndv": 5 }, { "start": "6.4", "size": 0.010162602, "ndv": 4 }, { "start": "6.7", "size": 0.010162602, "ndv": 5 }, { "start": "7.2", "size": 0.010162602, "ndv": 3 }, { "start": "7.4", "size": 0.010162602, "ndv": 3 }, { "start": "7.7", "size": 0.010162602, "ndv": 3 }, { "start": "8.0", "size": 0.010162602, "ndv": 4 }, { "start": "8.5", "size": 0.010162602, "ndv": 3 }, { "start": "8.7", "size": 0.010162602, "ndv": 4 }, { "start": "9.1", "size": 0.010162602, "ndv": 4 }, { "start": "9.5", "size": 0.010162602, "ndv": 4 }, { "start": "10.1", "size": 0.010162602, "ndv": 6 }, { "start": "10.8", "size": 0.010162602, "ndv": 6 }, { "start": "11.4", "size": 0.010162602, "ndv": 7 }, { "start": "12.1", "size": 0.010162602, "ndv": 6 }, { "start": "12.8", "size": 0.010162602, "ndv": 8 }, { "start": "13.8", "size": 0.010162602, "ndv": 6 }, { "start": "14.6", "size": 0.010162602, "ndv": 7 }, { "start": "16.1", "size": 0.010162602, "ndv": 7 }, { "start": "17.1", "size": 0.010162602, "ndv": 8 }, { "start": "19.0", "size": 0.010162602, "ndv": 7 }, { "start": "20.3", "size": 0.010162602, "ndv": 8 }, { "start": "22.7", "size": 0.010162602, "ndv": 7 }, { "start": "23.8", "size": 0.010162602, "ndv": 9 }, { "start": "29.7", "size": 0.010162602, "ndv": 7 }, { "start": "32.1", "size": 0.010162602, "ndv": 9 }, { "start": "34.8", "size": 0.010162602, "ndv": 8 }, { "start": "39.9", "size": 0.010162602, "ndv": 9 }, { "start": "44.6", "size": 0.010162602, "ndv": 10 }, { "start": "49.1", "size": 0.010162602, "ndv": 9 }, { "start": "52.0", "size": 0.010162602, "ndv": 8 }, { "start": "58.4", "size": 0.010162602, "ndv": 10 }, { "start": "64.7", "size": 0.010162602, "ndv": 9 }, { "start": "69.9", "size": 0.010162602, "ndv": 10 }, { "start": "76.7", "size": 0.010162602, "ndv": 7 }, { "start": "80.0", "size": 0.010162602, "ndv": 8 }, { "start": "85.0", "size": 0.010162602, "ndv": 7 }, { "start": "87.0", "size": 0.010162602, "ndv": 9 }, { "start": "89.5", "size": 0.010162602, "ndv": 8 }, { "start": "92.0", "size": 0.010162602, "ndv": 7 }, { "start": "93.6", "size": 0.010162602, "ndv": 8 }, { "start": "95.7", "size": 0.010162602, "ndv": 7 }, { "start": "96.9", "size": 0.010162602, "ndv": 7 }, { "start": "98.0", "size": 0.010162602, "ndv": 7 }, { "start": "99.0", "size": 0.006097561, "ndv": 4 }, { "start": "99.9", "end": "99.9", "size": 0.015243902, "ndv": 1 } ] } select UPPER(db_name),UPPER(table_name),UPPER(column_name),min_value,max_value,nulls_ratio,avg_length,avg_frequency,hist_size,hist_type,decode_histogram(hist_type,histogram) from mysql.column_stats where UPPER(db_name)='WORLD' and UPPER(table_name)='CITY' and UPPER(column_name) = 'POPULATION';; UPPER(db_name) WORLD UPPER(table_name) CITY UPPER(column_name) POPULATION min_value 42 max_value 10500000 nulls_ratio 0.0000 avg_length 4.0000 avg_frequency 1.0467 hist_size 240 hist_type JSON_HB decode_histogram(hist_type,histogram) { "target_histogram_size": 254, "collected_at": 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0.004167688, "ndv": 17 }, { "start": "2117500", "size": 0.004167688, "ndv": 17 }, { "start": "2500000", "size": 0.004167688, "ndv": 17 }, { "start": "2896016", "size": 0.004167688, "ndv": 17 }, { "start": "4017733", "size": 0.004167688, "ndv": 17 }, { "start": "6758845", "end": "10500000", "size": 0.00392253, "ndv": 16 } ] } set histogram_type=@SINGLE_PREC_TYPE; set histogram_size=0; use test; DROP DATABASE world; SELECT UPPER(db_name), UPPER(table_name), cardinality FROM mysql.table_stats; UPPER(db_name) UPPER(table_name) cardinality WORLD_INNODB CITY 4079 WORLD_INNODB COUNTRY 239 WORLD_INNODB COUNTRYLANGUAGE 984 SELECT UPPER(db_name), UPPER(table_name), column_name, min_value, max_value, nulls_ratio, avg_length, avg_frequency FROM mysql.column_stats; UPPER(db_name) UPPER(table_name) column_name min_value max_value nulls_ratio avg_length avg_frequency WORLD_INNODB CITY Country ABW ZWE 0.0000 3.0000 17.5819 WORLD_INNODB CITY ID 1 4079 0.0000 4.0000 1.0000 WORLD_INNODB CITY Name A Coruña (La Coruña) Ürgenc 0.0000 8.6416 1.0195 WORLD_INNODB CITY Population 42 10500000 0.0000 4.0000 1.0467 WORLD_INNODB COUNTRY Capital 1 4074 0.0293 4.0000 1.0000 WORLD_INNODB COUNTRY Code ABW ZWE 0.0000 3.0000 1.0000 WORLD_INNODB COUNTRY Name Afghanistan Zimbabwe 0.0000 10.1172 1.0000 WORLD_INNODB COUNTRY Population 0 1277558000 0.0000 4.0000 1.0575 WORLD_INNODB COUNTRY SurfaceArea 0.40 17075400.00 0.0000 4.0000 1.0042 WORLD_INNODB COUNTRYLANGUAGE Country ABW ZWE 0.0000 3.0000 4.2232 WORLD_INNODB COUNTRYLANGUAGE Language Abhyasi [South]Mande 0.0000 7.1778 2.1532 WORLD_INNODB COUNTRYLANGUAGE Percentage 0.0 99.9 0.0000 4.0000 2.7640 SELECT UPPER(db_name), UPPER(table_name), index_name, prefix_arity, avg_frequency FROM mysql.index_stats; UPPER(db_name) UPPER(table_name) index_name prefix_arity avg_frequency WORLD_INNODB CITY Country 1 17.5819 WORLD_INNODB CITY PRIMARY 1 1.0000 WORLD_INNODB CITY Population 1 1.0467 WORLD_INNODB COUNTRY Name 1 1.0000 WORLD_INNODB COUNTRY PRIMARY 1 1.0000 WORLD_INNODB COUNTRYLANGUAGE PRIMARY 1 4.2232 WORLD_INNODB COUNTRYLANGUAGE PRIMARY 2 1.0000 WORLD_INNODB COUNTRYLANGUAGE Percentage 1 2.7640 DROP DATABASE world_innodb; SELECT UPPER(db_name), UPPER(table_name), cardinality FROM mysql.table_stats; UPPER(db_name) UPPER(table_name) cardinality SELECT UPPER(db_name), UPPER(table_name), column_name, min_value, max_value, nulls_ratio, avg_length, avg_frequency FROM mysql.column_stats; UPPER(db_name) UPPER(table_name) column_name min_value max_value nulls_ratio avg_length avg_frequency SELECT UPPER(db_name), UPPER(table_name), index_name, prefix_arity, avg_frequency FROM mysql.index_stats; UPPER(db_name) UPPER(table_name) index_name prefix_arity avg_frequency DELETE FROM mysql.table_stats; DELETE FROM mysql.column_stats; DELETE FROM mysql.index_stats; # # Bug mdev-4357: empty string as a value of the HIST_SIZE column # from mysql.column_stats # create table t1 (a int); insert into t1 values (1),(2),(3); set histogram_size=10; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK select db_name, table_name, column_name, min_value, max_value, nulls_ratio, avg_frequency, hist_size, hist_type, decode_histogram(hist_type,histogram) FROM mysql.column_stats ORDER BY db_name, table_name, column_name; db_name table_name column_name min_value max_value nulls_ratio avg_frequency hist_size hist_type decode_histogram(hist_type,histogram) test t1 a 1 3 0.0000 1.0000 3 JSON_HB { "target_histogram_size": 10, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "1", "size": 0.333333333, "ndv": 1 }, { "start": "2", "size": 0.333333333, "ndv": 1 }, { "start": "3", "end": "3", "size": 0.333333333, "ndv": 1 } ] } set histogram_size=default; drop table t1; # # Bug mdev-4359: wrong setting of the HIST_SIZE column # (see also mdev-4357) from mysql.column_stats # create table t1 ( a int); insert into t1 values (1),(2),(3),(4),(5); set histogram_size=10; set histogram_type=@DOUBLE_PREC_TYPE; show variables like 'histogram%'; Variable_name Value histogram_size 10 histogram_type JSON_HB analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK select db_name, table_name, column_name, min_value, max_value, nulls_ratio, avg_frequency, hist_size, hist_type, decode_histogram(hist_type,histogram) FROM mysql.column_stats ORDER BY db_name, table_name, column_name; db_name table_name column_name min_value max_value nulls_ratio avg_frequency hist_size hist_type decode_histogram(hist_type,histogram) test t1 a 1 5 0.0000 1.0000 5 JSON_HB { "target_histogram_size": 10, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "1", "size": 0.2, "ndv": 1 }, { "start": "2", "size": 0.2, "ndv": 1 }, { "start": "3", "size": 0.2, "ndv": 1 }, { "start": "4", "size": 0.2, "ndv": 1 }, { "start": "5", "end": "5", "size": 0.2, "ndv": 1 } ] } set histogram_size=0; set histogram_type=@SINGLE_PREC_TYPE; drop table t1; # # Bug mdev-4369: histogram for a column with many distinct values # CREATE TABLE t1 (id int); CREATE TABLE t2 (id int); INSERT INTO t1 (id) VALUES (1), (1), (1),(1); INSERT INTO t1 (id) SELECT id FROM t1; INSERT INTO t1 SELECT id+1 FROM t1; INSERT INTO t1 SELECT id+2 FROM t1; INSERT INTO t1 SELECT id+4 FROM t1; INSERT INTO t1 SELECT id+8 FROM t1; INSERT INTO t1 SELECT id+16 FROM t1; INSERT INTO t1 SELECT id+32 FROM t1; INSERT INTO t1 SELECT id+64 FROM t1; INSERT INTO t1 SELECT id+128 FROM t1; INSERT INTO t1 SELECT id+256 FROM t1; INSERT INTO t1 SELECT id+512 FROM t1; INSERT INTO t2 SELECT id FROM t1 ORDER BY id*rand(); SELECT COUNT(*) FROM t2; COUNT(*) 8192 SELECT COUNT(DISTINCT id) FROM t2; COUNT(DISTINCT id) 1024 set @@tmp_table_size=1024*16; set @@max_heap_table_size=1024*16; set histogram_size=63; analyze table t2 persistent for all; Table Op Msg_type Msg_text test.t2 analyze status Engine-independent statistics collected test.t2 analyze status OK select db_name, table_name, column_name, min_value, max_value, nulls_ratio, avg_frequency, hist_size, hist_type, decode_histogram(hist_type,histogram) FROM mysql.column_stats; db_name table_name column_name min_value max_value nulls_ratio avg_frequency hist_size hist_type decode_histogram(hist_type,histogram) test t2 id 1 1024 0.0000 8.0000 63 JSON_HB { "target_histogram_size": 63, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "1", "size": 0.015991211, "ndv": 17 }, { "start": "17", "size": 0.015991211, "ndv": 17 }, { "start": "33", "size": 0.015991211, "ndv": 18 }, { "start": "50", "size": 0.015991211, "ndv": 17 }, { "start": "66", "size": 0.015991211, "ndv": 17 }, { "start": "82", "size": 0.015991211, "ndv": 18 }, { "start": "99", "size": 0.015991211, "ndv": 17 }, { "start": "115", "size": 0.015991211, "ndv": 17 }, { "start": "132", "size": 0.015991211, "ndv": 17 }, { "start": "148", "size": 0.015991211, "ndv": 17 }, { "start": "164", "size": 0.015991211, "ndv": 18 }, { "start": "181", "size": 0.015991211, "ndv": 17 }, { "start": "197", "size": 0.015991211, "ndv": 17 }, { "start": "213", "size": 0.015991211, "ndv": 18 }, { "start": "230", "size": 0.015991211, "ndv": 17 }, { "start": "246", "size": 0.015991211, "ndv": 17 }, { "start": "263", "size": 0.015991211, "ndv": 17 }, { "start": "279", "size": 0.015991211, "ndv": 17 }, { "start": "295", "size": 0.015991211, "ndv": 18 }, { "start": "312", "size": 0.015991211, "ndv": 17 }, { "start": "328", "size": 0.015991211, "ndv": 17 }, { "start": "344", "size": 0.015991211, "ndv": 18 }, { "start": "361", "size": 0.015991211, "ndv": 17 }, { "start": "377", "size": 0.015991211, "ndv": 17 }, { "start": "394", "size": 0.015991211, "ndv": 17 }, { "start": "410", "size": 0.015991211, "ndv": 17 }, { "start": "426", "size": 0.015991211, "ndv": 18 }, { "start": "443", "size": 0.015991211, "ndv": 17 }, { "start": "459", "size": 0.015991211, "ndv": 17 }, { "start": "475", "size": 0.015991211, "ndv": 18 }, { "start": "492", "size": 0.015991211, "ndv": 17 }, { "start": "508", "size": 0.015991211, "ndv": 17 }, { "start": "525", "size": 0.015991211, "ndv": 17 }, { "start": "541", "size": 0.015991211, "ndv": 17 }, { "start": "557", "size": 0.015991211, "ndv": 18 }, { "start": "574", "size": 0.015991211, "ndv": 17 }, { "start": "590", "size": 0.015991211, "ndv": 17 }, { "start": "606", "size": 0.015991211, "ndv": 18 }, { "start": "623", "size": 0.015991211, "ndv": 17 }, { "start": "639", "size": 0.015991211, "ndv": 17 }, { "start": "656", "size": 0.015991211, "ndv": 17 }, { "start": "672", "size": 0.015991211, "ndv": 17 }, { "start": "688", "size": 0.015991211, "ndv": 18 }, { "start": "705", "size": 0.015991211, "ndv": 17 }, { "start": "721", "size": 0.015991211, "ndv": 17 }, { "start": "737", "size": 0.015991211, "ndv": 18 }, { "start": "754", "size": 0.015991211, "ndv": 17 }, { "start": "770", "size": 0.015991211, "ndv": 17 }, { "start": "787", "size": 0.015991211, "ndv": 17 }, { "start": "803", "size": 0.015991211, "ndv": 17 }, { "start": "819", "size": 0.015991211, "ndv": 18 }, { "start": "836", "size": 0.015991211, "ndv": 17 }, { "start": "852", "size": 0.015991211, "ndv": 17 }, { "start": "868", "size": 0.015991211, "ndv": 18 }, { "start": "885", "size": 0.015991211, "ndv": 17 }, { "start": "901", "size": 0.015991211, "ndv": 17 }, { "start": "918", "size": 0.015991211, "ndv": 17 }, { "start": "934", "size": 0.015991211, "ndv": 17 }, { "start": "950", "size": 0.015991211, "ndv": 18 }, { "start": "967", "size": 0.015991211, "ndv": 17 }, { "start": "983", "size": 0.015991211, "ndv": 17 }, { "start": "999", "size": 0.015991211, "ndv": 18 }, { "start": "1016", "end": "1024", "size": 0.008544922, "ndv": 9 } ] } set histogram_size=0; drop table t1, t2; set use_stat_tables=@save_use_stat_tables; # # Bug MDEV-7383: min/max value for a column not utf8 compatible # create table t1 (a varchar(100)) engine=MyISAM; insert into t1 values(unhex('D879626AF872675F73E662F8')); analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK show warnings; Level Code Message select db_name, table_name, column_name, HEX(min_value), HEX(max_value), nulls_ratio, avg_frequency, hist_size, hist_type, decode_histogram(hist_type,histogram) FROM mysql.column_stats; db_name table_name column_name HEX(min_value) HEX(max_value) nulls_ratio avg_frequency hist_size hist_type decode_histogram(hist_type,histogram) test t1 a D879626AF872675F73E662F8 D879626AF872675F73E662F8 0.0000 1.0000 0 NULL NULL drop table t1; # # MDEB-9744: session optimizer_use_condition_selectivity=5 causing SQL Error (1918): # Encountered illegal value '' when converting to DECIMAL # set @save_optimizer_use_condition_selectivity= @@optimizer_use_condition_selectivity; set optimizer_use_condition_selectivity=3, use_stat_tables=preferably; create table t1 (id int(10),cost decimal(9,2)) engine=innodb; ANALYZE TABLE t1 PERSISTENT FOR ALL; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK create temporary table t2 (id int); insert into t2 (id) select id from t1 where cost > 0; select * from t2; id set use_stat_tables=@save_use_stat_tables; set optimizer_use_condition_selectivity= @save_optimizer_use_condition_selectivity; drop table t1,t2; # # MDEV-16507: statistics for temporary tables should not be used # SET @save_optimizer_use_condition_selectivity= @@optimizer_use_condition_selectivity; SET @@use_stat_tables = preferably ; SET @@optimizer_use_condition_selectivity = 4; CREATE TABLE t1 ( TIMESTAMP TIMESTAMP NOT NULL DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP ); SET @had_t1_table= @@warning_count != 0; CREATE TEMPORARY TABLE tmp_t1 LIKE t1; INSERT INTO tmp_t1 VALUES (now()); INSERT INTO t1 SELECT * FROM tmp_t1 WHERE @had_t1_table=0; DROP TABLE t1; SET use_stat_tables=@save_use_stat_tables; SET optimizer_use_condition_selectivity= @save_optimizer_use_condition_selectivity; # End of 10.0 tests # # MDEV-9590: Always print "Engine-independent statistic" warnings and # might be filtering columns unintentionally from engines # set use_stat_tables='NEVER'; create table t1 (test blob); show variables like 'use_stat_tables'; Variable_name Value use_stat_tables NEVER analyze table t1; Table Op Msg_type Msg_text test.t1 analyze status Table is already up to date drop table t1; # # MDEV-10435 crash with bad stat tables # set use_stat_tables='preferably'; call mtr.add_suppression("Column count of mysql.table_stats is wrong. Expected 3, found 1. The table is probably corrupted"); rename table mysql.table_stats to test.table_stats; flush tables; create table t1 (a int); rename table t1 to t2, t3 to t4; ERROR 42S02: Table 'test.t3' doesn't exist drop table t1; rename table test.table_stats to mysql.table_stats; rename table mysql.table_stats to test.table_stats; create table mysql.table_stats (a int); flush tables; create table t1 (a int); rename table t1 to t2, t3 to t4; ERROR 42S02: Table 'test.t3' doesn't exist drop table t1, mysql.table_stats; rename table test.table_stats to mysql.table_stats; # # MDEV-19334: bool is_eits_usable(Field*): Assertion `field->table->stats_is_read' failed. # create temporary table t1(a int); insert into t1 values (1),(2),(3); set use_stat_tables=preferably; set @optimizer_use_condition_selectivity= @@optimizer_use_condition_selectivity; set optimizer_use_condition_selectivity=4; select * from t1 where a >= 2; a 2 3 drop table t1; set @@optimizer_use_condition_selectivity= @save_optimizer_use_condition_selectivity; set use_stat_tables=@save_use_stat_tables; # # Start of 10.2 tests # # # MDEV-10134 Add full support for DEFAULT # # # End of 10.2 tests # set histogram_size=@save_histogram_size, histogram_type=@save_hist_type; # # Start of 10.4 tests # # # Test analyze_sample_percentage system variable. # set @save_use_stat_tables=@@use_stat_tables; set @save_analyze_sample_percentage=@@analyze_sample_percentage; set session rand_seed1=42; set session rand_seed2=62; set use_stat_tables=PREFERABLY; set histogram_size=10; CREATE TABLE t1 (id int); INSERT INTO t1 (id) VALUES (1), (1), (1), (1), (1), (1), (1); INSERT INTO t1 (id) SELECT id FROM t1; INSERT INTO t1 SELECT id+1 FROM t1; INSERT INTO t1 SELECT id+2 FROM t1; INSERT INTO t1 SELECT id+4 FROM t1; INSERT INTO t1 SELECT id+8 FROM t1; INSERT INTO t1 SELECT id+16 FROM t1; INSERT INTO t1 SELECT id+32 FROM t1; INSERT INTO t1 SELECT id+64 FROM t1; INSERT INTO t1 SELECT id+128 FROM t1; INSERT INTO t1 SELECT id+256 FROM t1; INSERT INTO t1 SELECT id+512 FROM t1; INSERT INTO t1 SELECT id+1024 FROM t1; INSERT INTO t1 SELECT id+2048 FROM t1; INSERT INTO t1 SELECT id+4096 FROM t1; INSERT INTO t1 SELECT id+9192 FROM t1; # # This query will should show a full table scan analysis. # ANALYZE TABLE t1; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK select table_name, column_name, min_value, max_value, nulls_ratio, avg_length, avg_frequency, DECODE_HISTOGRAM(hist_type, histogram) from mysql.column_stats; table_name column_name min_value max_value nulls_ratio avg_length avg_frequency DECODE_HISTOGRAM(hist_type, histogram) t1 id 1 17384 0.0000 4.0000 14.0000 { "target_histogram_size": 10, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "1", "size": 0.100001744, "ndv": 1639 }, { "start": "1639", "size": 0.100001744, "ndv": 1639 }, { "start": "3277", "size": 0.100001744, "ndv": 1640 }, { "start": "4916", "size": 0.100001744, "ndv": 1639 }, { "start": "6554", "size": 0.100001744, "ndv": 1640 }, { "start": "9193", "size": 0.100001744, "ndv": 1639 }, { "start": "10831", "size": 0.100001744, "ndv": 1639 }, { "start": "12470", "size": 0.100001744, "ndv": 1639 }, { "start": "14108", "size": 0.100001744, "ndv": 1639 }, { "start": "15746", "end": "17384", "size": 0.099984305, "ndv": 1639 } ] } set analyze_sample_percentage=0.1; # # This query will show an innacurate avg_frequency value. # ANALYZE TABLE t1; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date select table_name, column_name, min_value, max_value, nulls_ratio, avg_length, avg_frequency, DECODE_HISTOGRAM(hist_type, histogram) from mysql.column_stats; table_name column_name min_value max_value nulls_ratio avg_length avg_frequency DECODE_HISTOGRAM(hist_type, histogram) t1 id 111 17026 0.0000 4.0000 10.4739 { "target_histogram_size": 10, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "111", "size": 0.103773585, "ndv": 21 }, { "start": "1074", "size": 0.103773585, "ndv": 22 }, { "start": "2504", "size": 0.103773585, "ndv": 22 }, { "start": "4395", "size": 0.103773585, "ndv": 22 }, { "start": "6165", "size": 0.103773585, "ndv": 22 }, { "start": "8082", "size": 0.103773585, "ndv": 22 }, { "start": "10671", "size": 0.103773585, "ndv": 22 }, { "start": "12738", "size": 0.103773585, "ndv": 22 }, { "start": "14487", "size": 0.103773585, "ndv": 22 }, { "start": "15785", "end": "17026", "size": 0.066037736, "ndv": 14 } ] } # # This query will show a better avg_frequency value. # set analyze_sample_percentage=25; ANALYZE TABLE t1; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date select table_name, column_name, min_value, max_value, nulls_ratio, avg_length, avg_frequency, DECODE_HISTOGRAM(hist_type, histogram) from mysql.column_stats; table_name column_name min_value max_value nulls_ratio avg_length avg_frequency DECODE_HISTOGRAM(hist_type, histogram) t1 id 1 17384 0.0000 4.0000 14.0401 { "target_histogram_size": 10, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "1", "size": 0.100015657, "ndv": 1591 }, { "start": "1624", "size": 0.100015657, "ndv": 1599 }, { "start": "3252", "size": 0.100015657, "ndv": 1587 }, { "start": "4868", "size": 0.100015657, "ndv": 1594 }, { "start": "6483", "size": 0.100015657, "ndv": 1632 }, { "start": "8153", "size": 0.100015657, "ndv": 1607 }, { "start": "10791", "size": 0.100015657, "ndv": 1619 }, { "start": "12435", "size": 0.100015657, "ndv": 1627 }, { "start": "14080", "size": 0.100015657, "ndv": 1613 }, { "start": "15727", "end": "17384", "size": 0.099859084, "ndv": 1622 } ] } set analyze_sample_percentage=0; # # Test self adjusting sampling level. # ANALYZE TABLE t1; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date select table_name, column_name, min_value, max_value, nulls_ratio, avg_length, avg_frequency, DECODE_HISTOGRAM(hist_type, histogram) from mysql.column_stats; table_name column_name min_value max_value nulls_ratio avg_length avg_frequency DECODE_HISTOGRAM(hist_type, histogram) t1 id 1 17384 0.0000 4.0000 13.9812 { "target_histogram_size": 10, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "1", "size": 0.100007372, "ndv": 1651 }, { "start": "1651", "size": 0.100007372, "ndv": 1656 }, { "start": "3306", "size": 0.100007372, "ndv": 1643 }, { "start": "4949", "size": 0.100007372, "ndv": 1648 }, { "start": "6597", "size": 0.100007372, "ndv": 1644 }, { "start": "9240", "size": 0.100007372, "ndv": 1624 }, { "start": "10864", "size": 0.100007372, "ndv": 1633 }, { "start": "12496", "size": 0.100007372, "ndv": 1619 }, { "start": "14114", "size": 0.100007372, "ndv": 1645 }, { "start": "15758", "end": "17384", "size": 0.099933656, "ndv": 1627 } ] } # # Test record estimation is working properly. # select count(*) from t1; count(*) 229376 explain select * from t1; id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 229060 set analyze_sample_percentage=100; ANALYZE TABLE t1; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status Table is already up to date select table_name, column_name, min_value, max_value, nulls_ratio, avg_length, avg_frequency, DECODE_HISTOGRAM(hist_type, histogram) from mysql.column_stats; table_name column_name min_value max_value nulls_ratio avg_length avg_frequency DECODE_HISTOGRAM(hist_type, histogram) t1 id 1 17384 0.0000 4.0000 14.0000 { "target_histogram_size": 10, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "1", "size": 0.100001744, "ndv": 1639 }, { "start": "1639", "size": 0.100001744, "ndv": 1639 }, { "start": "3277", "size": 0.100001744, "ndv": 1640 }, { "start": "4916", "size": 0.100001744, "ndv": 1639 }, { "start": "6554", "size": 0.100001744, "ndv": 1640 }, { "start": "9193", "size": 0.100001744, "ndv": 1639 }, { "start": "10831", "size": 0.100001744, "ndv": 1639 }, { "start": "12470", "size": 0.100001744, "ndv": 1639 }, { "start": "14108", "size": 0.100001744, "ndv": 1639 }, { "start": "15746", "end": "17384", "size": 0.099984305, "ndv": 1639 } ] } explain select * from t1; id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 229376 drop table t0; drop table t1; set analyze_sample_percentage=@save_analyze_sample_percentage; set histogram_size=@save_histogram_size; set use_stat_tables=@save_use_stat_tables; set @@global.histogram_size=@save_histogram_size; drop table if exists t1; set @save_histogram_type=@@histogram_type; set @save_histogram_size=@@histogram_size; call mtr.add_suppression("Failed to parse histogram for table .*"); create table ten(a int primary key); insert into ten values (0),(1),(2),(3),(4),(5),(6),(7),(8),(9); set histogram_size=100; set histogram_type='double_prec_hb'; create table t1_bin (a varchar(255)); insert into t1_bin select concat('a-', a) from ten; analyze table t1_bin persistent for all; Table Op Msg_type Msg_text test.t1_bin analyze status Engine-independent statistics collected test.t1_bin analyze status OK select hex(histogram) from mysql.column_stats where table_name='t1_bin'; hex(histogram) 00000000000000000000711C711C711C711C711CE338E338E338E338E33855555555555555555555C671C671C671C671C671388E388E388E388E388EAAAAAAAAAAAAAAAAAAAA1BC71BC71BC71BC71BC78DE38DE38DE38DE38DE3FFFFFFFFFFFFFFFFFFFF explain extended select * from t1_bin where a between 'a-3a' and 'zzzzzzzzz'; id select_type table type possible_keys key key_len ref rows filtered Extra 1 SIMPLE t1_bin ALL NULL NULL NULL NULL 10 58.82 Using where Warnings: Note 1003 select `test`.`t1_bin`.`a` AS `a` from `test`.`t1_bin` where `test`.`t1_bin`.`a` between 'a-3a' and 'zzzzzzzzz' analyze select * from t1_bin where a between 'a-3a' and 'zzzzzzzzz'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1_bin ALL NULL NULL NULL NULL 10 10.00 58.82 60.00 Using where set histogram_type=json_hb; create table t1_json (a varchar(255)); insert into t1_json select concat('a-', a) from ten; analyze table t1_json persistent for all; Table Op Msg_type Msg_text test.t1_json analyze status Engine-independent statistics collected test.t1_json analyze status OK select * from mysql.column_stats where table_name='t1_json'; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1_json a a-0 a-9 0.0000 3.0000 1.0000 10 JSON_HB { "target_histogram_size": 100, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "a-0", "size": 0.1, "ndv": 1 }, { "start": "a-1", "size": 0.1, "ndv": 1 }, { "start": "a-2", "size": 0.1, "ndv": 1 }, { "start": "a-3", "size": 0.1, "ndv": 1 }, { "start": "a-4", "size": 0.1, "ndv": 1 }, { "start": "a-5", "size": 0.1, "ndv": 1 }, { "start": "a-6", "size": 0.1, "ndv": 1 }, { "start": "a-7", "size": 0.1, "ndv": 1 }, { "start": "a-8", "size": 0.1, "ndv": 1 }, { "start": "a-9", "end": "a-9", "size": 0.1, "ndv": 1 } ] } explain extended select * from t1_json where a between 'a-3a' and 'zzzzzzzzz'; id select_type table type possible_keys key key_len ref rows filtered Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 60.00 Using where Warnings: Note 1003 select `test`.`t1_json`.`a` AS `a` from `test`.`t1_json` where `test`.`t1_json`.`a` between 'a-3a' and 'zzzzzzzzz' analyze select * from t1_json where a between 'a-3a' and 'zzzzzzzzz'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 10.00 60.00 60.00 Using where explain extended select * from t1_json where a < 'b-1a'; id select_type table type possible_keys key key_len ref rows filtered Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 100.00 Using where Warnings: Note 1003 select `test`.`t1_json`.`a` AS `a` from `test`.`t1_json` where `test`.`t1_json`.`a` < 'b-1a' analyze select * from t1_json where a > 'zzzzzzzzz'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 10.00 0.00 0.00 Using where drop table ten; UPDATE mysql.column_stats SET histogram='["not-what-you-expect"]' WHERE table_name='t1_json'; FLUSH TABLES; explain select * from t1_json limit 1; id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 Warnings: Warning 4186 Failed to parse histogram for table test.t1_json: Root JSON element must be a JSON object at offset 1. UPDATE mysql.column_stats SET histogram='{"histogram_hb":"not-histogram"}' WHERE table_name='t1_json'; FLUSH TABLES; explain select * from t1_json limit 1; id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 Warnings: Warning 4186 Failed to parse histogram for table test.t1_json: histogram_hb must contain an array at offset 32. UPDATE mysql.column_stats SET histogram='{"histogram_hb":["not-a-bucket"]}' WHERE table_name='t1_json'; FLUSH TABLES; explain select * from t1_json limit 1; id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 Warnings: Warning 4186 Failed to parse histogram for table test.t1_json: Expected an object in the buckets array at offset 32. UPDATE mysql.column_stats SET histogram='{"histogram_hb":[{"no-expected-members":1}]}' WHERE table_name='t1_json'; FLUSH TABLES; explain select * from t1_json limit 1; id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 Warnings: Warning 4186 Failed to parse histogram for table test.t1_json: "start" element not present at offset 42. UPDATE mysql.column_stats SET histogram='{"histogram_hb":[{"start":{}}]}' WHERE table_name='t1_json'; FLUSH TABLES; explain select * from t1_json limit 1; id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 Warnings: Warning 4186 Failed to parse histogram for table test.t1_json: String or number expected at offset 27. UPDATE mysql.column_stats SET histogram='{"histogram_hb":[{"start":"aaa", "size":"not-an-integer"}]}' WHERE table_name='t1_json'; FLUSH TABLES; explain select * from t1_json limit 1; id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 Warnings: Warning 4186 Failed to parse histogram for table test.t1_json: "ndv" element not present at offset 57. UPDATE mysql.column_stats SET histogram='{"histogram_hb":[{"start":"aaa", "size":0.25}]}' WHERE table_name='t1_json'; FLUSH TABLES; explain select * from t1_json limit 1; id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 Warnings: Warning 4186 Failed to parse histogram for table test.t1_json: "ndv" element not present at offset 45. UPDATE mysql.column_stats SET histogram='{"histogram_hb":[{"start":"aaa", "size":0.25, "ndv":1}]}' WHERE table_name='t1_json'; FLUSH TABLES; explain select * from t1_json limit 1; id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 UPDATE mysql.column_stats SET histogram='{"histogram_hb":[]}' WHERE table_name='t1_json'; FLUSH TABLES; explain select * from t1_json limit 1; id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE t1_json ALL NULL NULL NULL NULL 10 Warnings: Warning 4186 Failed to parse histogram for table test.t1_json: Histogram must have at least one bucket at offset 19. create table t2 ( city varchar(100) ); set histogram_size=50; insert into t2 select 'Moscow' from seq_1_to_99; insert into t2 select 'Helsinki' from seq_1_to_2; set histogram_type=json_hb; analyze table t2 persistent for all; Table Op Msg_type Msg_text test.t2 analyze status Engine-independent statistics collected test.t2 analyze status OK explain extended select * from t2 where city = 'Moscow'; id select_type table type possible_keys key key_len ref rows filtered Extra 1 SIMPLE t2 ALL NULL NULL NULL NULL 101 98.02 Using where Warnings: Note 1003 select `test`.`t2`.`city` AS `city` from `test`.`t2` where `test`.`t2`.`city` = 'Moscow' analyze select * from t2 where city = 'Moscow'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t2 ALL NULL NULL NULL NULL 101 101.00 98.02 98.02 Using where explain extended select * from t2 where city = 'Helsinki'; id select_type table type possible_keys key key_len ref rows filtered Extra 1 SIMPLE t2 ALL NULL NULL NULL NULL 101 1.98 Using where Warnings: Note 1003 select `test`.`t2`.`city` AS `city` from `test`.`t2` where `test`.`t2`.`city` = 'Helsinki' analyze select * from t2 where city = 'helsinki'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t2 ALL NULL NULL NULL NULL 101 101.00 1.98 1.98 Using where explain extended select * from t2 where city < 'Lagos'; id select_type table type possible_keys key key_len ref rows filtered Extra 1 SIMPLE t2 ALL NULL NULL NULL NULL 101 1.98 Using where Warnings: Note 1003 select `test`.`t2`.`city` AS `city` from `test`.`t2` where `test`.`t2`.`city` < 'Lagos' drop table t1_bin; drop table t1_json; drop table t2; DELETE FROM mysql.column_stats; create schema world; use world; set histogram_type='JSON_HB'; set histogram_size=50; ANALYZE TABLE Country, City, CountryLanguage persistent for all; SELECT column_name, min_value, max_value, hist_size, hist_type, histogram FROM mysql.column_stats; column_name min_value max_value hist_size hist_type histogram Code ABW ZWE 48 JSON_HB { "target_histogram_size": 50, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "ABW", "size": 0.020920502, "ndv": 5 }, { "start": "AND", "size": 0.020920502, "ndv": 5 }, { "start": "ASM", "size": 0.020920502, "ndv": 5 }, { "start": "AUT", "size": 0.020920502, "ndv": 5 }, { "start": "BFA", "size": 0.020920502, "ndv": 5 }, { "start": "BIH", "size": 0.020920502, "ndv": 5 }, { "start": "BRA", "size": 0.020920502, "ndv": 5 }, { "start": "BWA", "size": 0.020920502, "ndv": 5 }, { "start": "CHL", "size": 0.020920502, "ndv": 5 }, { "start": "COG", "size": 0.020920502, "ndv": 5 }, { "start": "CRI", "size": 0.020920502, "ndv": 5 }, { "start": "CZE", "size": 0.020920502, "ndv": 5 }, { "start": "DOM", "size": 0.020920502, "ndv": 5 }, { "start": "ESH", "size": 0.020920502, "ndv": 5 }, { "start": "FJI", "size": 0.020920502, "ndv": 5 }, { "start": "GAB", "size": 0.020920502, "ndv": 5 }, { "start": "GIN", "size": 0.020920502, "ndv": 5 }, { "start": "GRC", "size": 0.020920502, "ndv": 5 }, { "start": "GUM", "size": 0.020920502, "ndv": 5 }, { "start": "HRV", "size": 0.020920502, "ndv": 5 }, { "start": "IOT", "size": 0.020920502, "ndv": 5 }, { "start": "ISR", "size": 0.020920502, "ndv": 5 }, { "start": "KAZ", "size": 0.020920502, "ndv": 5 }, { "start": "KNA", "size": 0.020920502, "ndv": 5 }, { "start": "LBR", "size": 0.020920502, "ndv": 5 }, { "start": "LSO", "size": 0.020920502, "ndv": 5 }, { "start": "MAR", "size": 0.020920502, "ndv": 5 }, { "start": "MEX", "size": 0.020920502, "ndv": 5 }, { "start": "MMR", "size": 0.020920502, "ndv": 5 }, { "start": "MSR", "size": 0.020920502, "ndv": 5 }, { "start": "MYT", "size": 0.020920502, "ndv": 5 }, { "start": "NGA", "size": 0.020920502, "ndv": 5 }, { "start": "NPL", "size": 0.020920502, "ndv": 5 }, { "start": "PAN", "size": 0.020920502, "ndv": 5 }, { "start": "PNG", "size": 0.020920502, "ndv": 5 }, { "start": "PRY", "size": 0.020920502, "ndv": 5 }, { "start": "ROM", "size": 0.020920502, "ndv": 5 }, { "start": "SEN", "size": 0.020920502, "ndv": 5 }, { "start": "SLB", "size": 0.020920502, "ndv": 5 }, { "start": "SPM", "size": 0.020920502, "ndv": 5 }, { "start": "SWE", "size": 0.020920502, "ndv": 5 }, { "start": "TCD", "size": 0.020920502, "ndv": 5 }, { "start": "TKM", "size": 0.020920502, "ndv": 5 }, { "start": "TUR", "size": 0.020920502, "ndv": 5 }, { "start": "UKR", "size": 0.020920502, "ndv": 5 }, { "start": "VAT", "size": 0.020920502, "ndv": 5 }, { "start": "VNM", "size": 0.020920502, "ndv": 5 }, { "start": "YUG", "end": "ZWE", "size": 0.016736402, "ndv": 4 } ] } Country ABW ZWE 39 JSON_HB { "target_histogram_size": 50, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "ABW", "size": 0.020102966, "ndv": 11 }, { "start": "ATG", "size": 0.020102966, "ndv": 14 }, { "start": "BLR", "size": 0.006619269, "ndv": 4 }, { "start": "BRA", "size": 0.061289532, "ndv": 1 }, { "start": "BRB", "size": 0.020102966, "ndv": 9 }, { "start": "CHL", "size": 0.002206423, "ndv": 1 }, { "start": "CHN", "size": 0.0889924, "ndv": 1 }, { "start": "CIV", "size": 0.020102966, "ndv": 10 }, { "start": "CUB", "size": 0.020102966, "ndv": 6 }, { "start": "DEU", "size": 0.020102966, "ndv": 8 }, { "start": "EGY", "size": 0.020102966, "ndv": 4 }, { "start": "ESP", "size": 0.020102966, "ndv": 11 }, { "start": "GBR", "size": 0.020102966, "ndv": 3 }, { "start": "GIB", "size": 0.020102966, "ndv": 19 }, { "start": "IDN", "size": 0.012503064, "ndv": 1 }, { "start": "IND", "size": 0.083598921, "ndv": 1 }, { "start": "IRL", "size": 0.020102966, "ndv": 3 }, { "start": "IRQ", "size": 0.020102966, "ndv": 6 }, { "start": "JOR", "size": 2.451581e-4, "ndv": 1 }, { "start": "JPN", "size": 0.060799215, "ndv": 1 }, { "start": "KAZ", "size": 0.020102966, "ndv": 7 }, { "start": "KOR", "size": 0.020102966, "ndv": 16 }, { "start": "MDA", "size": 0.002451581, "ndv": 3 }, { "start": "MEX", "size": 0.042412356, "ndv": 1 }, { "start": "MHL", "size": 0.020102966, "ndv": 20 }, { "start": "NGA", "size": 0.020102966, "ndv": 4 }, { "start": "NLD", "size": 0.020102966, "ndv": 7 }, { "start": "PAK", "size": 0.007354744, "ndv": 4 }, { "start": "PHL", "size": 0.033341505, "ndv": 1 }, { "start": "PLW", "size": 0.020102966, "ndv": 8 }, { "start": "PSE", "size": 0.008580534, "ndv": 5 }, { "start": "RUS", "size": 0.046334886, "ndv": 1 }, { "start": "RWA", "size": 0.020102966, "ndv": 18 }, { "start": "SWE", "size": 0.020102966, "ndv": 16 }, { "start": "TUR", "size": 0.020102966, "ndv": 4 }, { "start": "TZA", "size": 0.015199804, "ndv": 4 }, { "start": "USA", "size": 0.067173327, "ndv": 1 }, { "start": "UZB", "size": 0.020102966, "ndv": 7 }, { "start": "VNM", "end": "ZWE", "size": 0.018632018, "ndv": 9 } ] } Name Afghanistan Zimbabwe 48 JSON_HB { "target_histogram_size": 50, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "Afghanistan", "size": 0.020920502, "ndv": 5 }, { "start": "Angola", "size": 0.020920502, "ndv": 5 }, { "start": "Armenia", "size": 0.020920502, "ndv": 5 }, { "start": "Bahamas", "size": 0.020920502, "ndv": 5 }, { "start": "Belgium", "size": 0.020920502, "ndv": 5 }, { "start": "Bolivia", "size": 0.020920502, "ndv": 5 }, { "start": "British 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"size": 0.020102966, "ndv": 82 }, { "start": "Silay", "size": 0.020102966, "ndv": 80 }, { "start": "Subotica", "size": 0.020102966, "ndv": 81 }, { "start": "Tagum", "size": 0.020102966, "ndv": 81 }, { "start": "Tema", "size": 0.020102966, "ndv": 80 }, { "start": "Tongling", "size": 0.020102966, "ndv": 81 }, { "start": "Udine", "size": 0.020102966, "ndv": 79 }, { "start": "Verona", "size": 0.020102966, "ndv": 80 }, { "start": "Wichita Falls", "size": 0.020102966, "ndv": 81 }, { "start": "Yibin", "size": 0.020102966, "ndv": 79 }, { "start": "Zixing", "end": "Ürgenc", "size": 0.014954646, "ndv": 61 } ] } Population 42 10500000 50 JSON_HB { "target_histogram_size": 50, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "42", "size": 0.020102966, "ndv": 80 }, { "start": "56601", "size": 0.020102966, "ndv": 64 }, { "start": "90674", "size": 0.020102966, "ndv": 70 }, { "start": "92700", "size": 0.020102966, "ndv": 76 }, { "start": "94800", "size": 0.020102966, "ndv": 74 }, { "start": "96984", "size": 0.020102966, "ndv": 75 }, { "start": "99296", "size": 0.020102966, "ndv": 73 }, { "start": "101144", "size": 0.020102966, "ndv": 80 }, { "start": "103211", "size": 0.020102966, "ndv": 73 }, { "start": "105700", "size": 0.020102966, "ndv": 77 }, { "start": "107800", "size": 0.020102966, "ndv": 76 }, { "start": "110048", "size": 0.020102966, "ndv": 76 }, { "start": "113336", "size": 0.020102966, "ndv": 80 }, { "start": "116485", "size": 0.020102966, "ndv": 79 }, { "start": "119675", "size": 0.020102966, "ndv": 77 }, { "start": "122700", "size": 0.020102966, "ndv": 77 }, { "start": "125300", "size": 0.020102966, "ndv": 77 }, { "start": "127898", "size": 0.020102966, "ndv": 77 }, { "start": "131831", "size": 0.020102966, "ndv": 79 }, { "start": "135621", "size": 0.020102966, "ndv": 79 }, { "start": "139712", "size": 0.020102966, "ndv": 75 }, { "start": "144282", "size": 0.020102966, "ndv": 77 }, { "start": "149000", "size": 0.020102966, "ndv": 79 }, { "start": "154976", "size": 0.020102966, "ndv": 81 }, { "start": "161191", "size": 0.020102966, "ndv": 78 }, { "start": "167795", "size": 0.020102966, "ndv": 80 }, { "start": "174381", "size": 0.020102966, "ndv": 80 }, { "start": "180650", "size": 0.020102966, "ndv": 79 }, { "start": "187691", "size": 0.020102966, "ndv": 76 }, { "start": "195400", "size": 0.020102966, "ndv": 81 }, { "start": "203500", "size": 0.020102966, "ndv": 81 }, { "start": "214901", "size": 0.020102966, "ndv": 82 }, { "start": "224897", "size": 0.020102966, "ndv": 80 }, { "start": "239810", "size": 0.020102966, "ndv": 82 }, { "start": "253587", "size": 0.020102966, "ndv": 81 }, { "start": "268013", "size": 0.020102966, "ndv": 81 }, { "start": "285114", "size": 0.020102966, "ndv": 77 }, { "start": "303346", "size": 0.020102966, "ndv": 81 }, { "start": "325790", "size": 0.020102966, "ndv": 82 }, { "start": "348845", "size": 0.020102966, "ndv": 81 }, { "start": "374945", "size": 0.020102966, "ndv": 81 }, { "start": "410000", "size": 0.020102966, "ndv": 82 }, { "start": "445555", "size": 0.020102966, "ndv": 81 }, { "start": "487148", "size": 0.020102966, "ndv": 79 }, { "start": "559249", "size": 0.020102966, "ndv": 81 }, { "start": "651154", "size": 0.020102966, "ndv": 82 }, { "start": "791926", "size": 0.020102966, "ndv": 80 }, { "start": "1040000", "size": 0.020102966, "ndv": 80 }, { "start": "1398800", "size": 0.020102966, "ndv": 81 }, { "start": "2641312", "end": "10500000", "size": 0.014954646, "ndv": 61 } ] } Country ABW ZWE 50 JSON_HB { "target_histogram_size": 50, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "ABW", "size": 0.020325203, "ndv": 5 }, { "start": "ALB", "size": 0.020325203, "ndv": 8 }, { "start": "ATG", "size": 0.020325203, "ndv": 4 }, { "start": "AZE", "size": 0.020325203, "ndv": 5 }, { "start": "BFA", "size": 0.020325203, "ndv": 7 }, { "start": "BLR", "size": 0.020325203, "ndv": 7 }, { "start": "BRN", "size": 0.020325203, "ndv": 5 }, { "start": "CAN", "size": 0.020325203, "ndv": 5 }, { "start": "CHN", "size": 0.020325203, "ndv": 3 }, { "start": "CMR", "size": 0.020325203, "ndv": 3 }, { "start": "COK", "size": 0.020325203, "ndv": 7 }, { "start": "CXR", "size": 0.020325203, "ndv": 6 }, { "start": "DJI", "size": 0.020325203, "ndv": 8 }, { "start": "ERI", "size": 0.020325203, "ndv": 5 }, { "start": "ETH", "size": 0.020325203, "ndv": 7 }, { "start": "FSM", "size": 0.020325203, "ndv": 5 }, { "start": "GHA", "size": 0.020325203, "ndv": 6 }, { "start": "GNB", "size": 0.020325203, "ndv": 8 }, { "start": "GUM", "size": 0.020325203, "ndv": 7 }, { "start": "HUN", "size": 0.020325203, "ndv": 3 }, { "start": "IND", "size": 0.020325203, "ndv": 4 }, { "start": "IRQ", "size": 0.020325203, "ndv": 6 }, { "start": "JOR", "size": 0.020325203, "ndv": 4 }, { "start": "KEN", "size": 0.020325203, "ndv": 6 }, { "start": "KWT", "size": 0.020325203, "ndv": 6 }, { "start": "LCA", "size": 0.020325203, "ndv": 6 }, { "start": "LVA", "size": 0.020325203, "ndv": 5 }, { "start": "MDA", "size": 0.020325203, "ndv": 7 }, { "start": "MLI", "size": 0.020325203, "ndv": 4 }, { "start": "MNP", "size": 0.020325203, "ndv": 3 }, { "start": "MRT", "size": 0.020325203, "ndv": 6 }, { "start": "MYS", "size": 0.020325203, "ndv": 5 }, { "start": "NFK", "size": 0.020325203, "ndv": 5 }, { "start": "NLD", "size": 0.020325203, "ndv": 5 }, { "start": "OMN", "size": 0.020325203, "ndv": 5 }, { "start": "PHL", "size": 0.020325203, "ndv": 4 }, { "start": "PRI", "size": 0.020325203, "ndv": 8 }, { "start": "REU", "size": 0.020325203, "ndv": 4 }, { "start": "RWA", "size": 0.020325203, "ndv": 5 }, { "start": "SGP", "size": 0.020325203, "ndv": 8 }, { "start": "SPM", "size": 0.020325203, "ndv": 7 }, { "start": "SWZ", "size": 0.020325203, "ndv": 6 }, { "start": "TGO", "size": 0.020325203, "ndv": 6 }, { "start": "TON", "size": 0.020325203, "ndv": 6 }, { "start": "TZA", "size": 0.020325203, "ndv": 2 }, { "start": "UGA", "size": 0.020325203, "ndv": 5 }, { "start": "USA", "size": 0.020325203, "ndv": 8 }, { "start": "VNM", "size": 0.020325203, "ndv": 6 }, { "start": "YUG", "size": 0.020325203, "ndv": 3 }, { "start": "ZWE", "end": "ZWE", "size": 0.004065041, "ndv": 1 } ] } Language Abhyasi [South]Mande 48 JSON_HB { "target_histogram_size": 50, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "Abhyasi", "size": 0.020325203, "ndv": 12 }, { "start": "Ami", "size": 0.020325203, "ndv": 3 }, { "start": "Arabic", "size": 0.020325203, "ndv": 5 }, { "start": "Armenian", "size": 0.020325203, "ndv": 11 }, { "start": "Balochi", "size": 0.020325203, "ndv": 13 }, { "start": "Belorussian", "size": 0.020325203, "ndv": 13 }, { "start": "Bullom-sherbro", "size": 0.020325203, "ndv": 15 }, { "start": "Chechen", "size": 0.020325203, "ndv": 7 }, { "start": "Chinese", "size": 0.020325203, "ndv": 12 }, { "start": "Creole English", "size": 0.020325203, "ndv": 2 }, { "start": "Creole French", "size": 0.020325203, "ndv": 13 }, { "start": "Dorbet", "size": 0.012195122, "ndv": 8 }, { "start": "English", "size": 0.06097561, "ndv": 1 }, { "start": "Eskimo Languages", "size": 0.020325203, "ndv": 9 }, { "start": "French", "size": 0.020325203, "ndv": 2 }, { "start": "Friuli", "size": 0.020325203, "ndv": 9 }, { "start": "Ganda", "size": 0.020325203, "ndv": 6 }, { "start": "German", "size": 0.020325203, "ndv": 11 }, { "start": "Guaymí", "size": 0.020325203, "ndv": 15 }, { "start": "Hehet", "size": 0.020325203, "ndv": 7 }, { "start": "Hungarian", "size": 0.020325203, "ndv": 10 }, { "start": "Italian", "size": 0.020325203, "ndv": 10 }, { "start": "Kanuri", "size": 0.020325203, "ndv": 10 }, { "start": "Khoekhoe", "size": 0.020325203, "ndv": 11 }, { "start": "Kotokoli", "size": 0.020325203, "ndv": 14 }, { "start": "Lithuanian", "size": 0.020325203, "ndv": 16 }, { "start": "Macedonian", "size": 0.020325203, "ndv": 13 }, { "start": "Malenasian Languages", "size": 0.020325203, "ndv": 12 }, { "start": "Maranao", "size": 0.020325203, "ndv": 18 }, { "start": "Miao", "size": 0.020325203, "ndv": 17 }, { "start": "Muong", "size": 0.020325203, "ndv": 15 }, { "start": "Norwegian", "size": 0.020325203, "ndv": 18 }, { "start": "Paiwan", "size": 0.020325203, "ndv": 13 }, { "start": "Polish", "size": 0.020325203, "ndv": 3 }, { "start": "Portuguese", "size": 0.020325203, "ndv": 9 }, { "start": "Romanian", "size": 0.020325203, "ndv": 5 }, { "start": "Russian", "size": 0.020325203, "ndv": 10 }, { "start": "Saraiki", "size": 0.020325203, "ndv": 10 }, { "start": "Sidamo", "size": 0.020325203, "ndv": 12 }, { "start": "Soninke", "size": 0.020325203, "ndv": 6 }, { "start": "Spanish", "size": 0.020325203, "ndv": 4 }, { "start": "Sunda", "size": 0.020325203, "ndv": 11 }, { "start": "Tamil", "size": 0.020325203, "ndv": 11 }, { "start": "Tigre", "size": 0.020325203, "ndv": 15 }, { "start": "Turkish", "size": 0.020325203, "ndv": 6 }, { "start": "Ukrainian", "size": 0.020325203, "ndv": 4 }, { "start": "Uzbek", "size": 0.020325203, "ndv": 13 }, { "start": "Yap", "end": "[South]Mande", "size": 0.012195122, "ndv": 9 } ] } Percentage 0.0 99.9 47 JSON_HB { "target_histogram_size": 50, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "0.0", "size": 0.066056911, "ndv": 1 }, { "start": "0.1", "size": 0.020325203, "ndv": 1 }, { "start": "0.2", "size": 0.022357724, "ndv": 1 }, { "start": "0.3", "size": 0.017276423, "ndv": 1 }, { "start": "0.4", "size": 0.025406504, "ndv": 1 }, { "start": "0.5", "size": 0.020325203, "ndv": 1 }, { "start": "0.6", "size": 0.020325203, "ndv": 1 }, { "start": "0.7", "size": 0.020325203, "ndv": 2 }, { "start": "0.8", "size": 0.020325203, "ndv": 3 }, { "start": "1.0", "size": 0.020325203, "ndv": 4 }, { "start": "1.3", "size": 0.020325203, "ndv": 2 }, { "start": "1.4", "size": 0.020325203, "ndv": 3 }, { "start": "1.6", "size": 0.020325203, "ndv": 3 }, { "start": "1.8", "size": 0.020325203, "ndv": 4 }, { "start": "2.1", "size": 0.020325203, "ndv": 3 }, { "start": "2.3", "size": 0.020325203, "ndv": 4 }, { "start": "2.6", "size": 0.020325203, "ndv": 4 }, { "start": "2.9", "size": 0.020325203, "ndv": 4 }, { "start": "3.2", "size": 0.020325203, "ndv": 5 }, { "start": "3.6", "size": 0.020325203, "ndv": 5 }, { "start": "4.1", "size": 0.020325203, "ndv": 6 }, { "start": "4.6", "size": 0.020325203, "ndv": 6 }, { "start": "5.1", "size": 0.020325203, "ndv": 7 }, { "start": "5.7", "size": 0.020325203, "ndv": 6 }, { "start": "6.2", "size": 0.020325203, "ndv": 8 }, { "start": "6.9", "size": 0.020325203, "ndv": 7 }, { "start": "7.6", "size": 0.020325203, "ndv": 6 }, { "start": "8.2", "size": 0.020325203, "ndv": 7 }, { "start": "8.9", "size": 0.020325203, "ndv": 9 }, { "start": "9.7", "size": 0.020325203, "ndv": 11 }, { "start": "11.0", "size": 0.020325203, "ndv": 15 }, { "start": "12.4", "size": 0.020325203, "ndv": 14 }, { "start": "14.1", "size": 0.020325203, "ndv": 13 }, { "start": "16.5", "size": 0.020325203, "ndv": 17 }, { "start": "19.7", "size": 0.020325203, "ndv": 14 }, { "start": "23.3", "size": 0.020325203, "ndv": 16 }, { "start": "31.7", "size": 0.020325203, "ndv": 16 }, { "start": "37.5", "size": 0.020325203, "ndv": 19 }, { "start": "47.4", "size": 0.020325203, "ndv": 18 }, { "start": "55.1", "size": 0.020325203, "ndv": 19 }, { "start": "66.7", "size": 0.020325203, "ndv": 18 }, { "start": "78.1", "size": 0.020325203, "ndv": 15 }, { "start": "86.2", "size": 0.020325203, "ndv": 18 }, { "start": "90.7", "size": 0.020325203, "ndv": 15 }, { "start": "95.1", "size": 0.020325203, "ndv": 14 }, { "start": "97.6", "size": 0.020325203, "ndv": 14 }, { "start": "99.9", "end": "99.9", "size": 0.015243902, "ndv": 1 } ] } analyze select * from Country use index () where Code between 'BBC' and 'GGG'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE Country ALL NULL NULL NULL NULL 239 239.00 24.58 25.52 Using where analyze select * from Country use index () where Code < 'BBC'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE Country ALL NULL NULL NULL NULL 239 239.00 8.37 7.11 Using where set histogram_type=@save_histogram_type; set histogram_size=@save_histogram_size; DROP SCHEMA world; use test; create table t10 ( a varchar(10) ); # # Histograms are not collected for empty tables: # analyze table t10 persistent for all; Table Op Msg_type Msg_text test.t10 analyze status Engine-independent statistics collected test.t10 analyze status Table is already up to date select histogram from mysql.column_stats where table_name='t10' and db_name=database(); histogram NULL # # Try with n_buckets > n_rows # insert into t10 values ('Berlin'),('Paris'),('Rome'); set histogram_size=10, histogram_type='json_hb'; analyze table t10 persistent for all; Table Op Msg_type Msg_text test.t10 analyze status Engine-independent statistics collected test.t10 analyze status OK select histogram from mysql.column_stats where table_name='t10' and db_name=database(); histogram { "target_histogram_size": 10, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "Berlin", "size": 0.333333333, "ndv": 1 }, { "start": "Paris", "size": 0.333333333, "ndv": 1 }, { "start": "Rome", "end": "Rome", "size": 0.333333333, "ndv": 1 } ] } drop table t10; # # MDEV-26590: Stack smashing/buffer overflow in Histogram_json_hb::parse upon UPDATE on table with long VARCHAR # CREATE TABLE t1 (b INT, a VARCHAR(3176)); INSERT INTO t1 VALUES (1,'foo'),(2,'bar'); SET histogram_type= JSON_HB; ANALYZE TABLE t1 PERSISTENT FOR ALL; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK SELECT * FROM t1; b a 1 foo 2 bar drop table t1; # # MDEV-26589: Assertion failure upon DECODE_HISTOGRAM with NULLs in first column # CREATE TABLE t1 (a INT, b INT); INSERT INTO t1 VALUES (NULL,1), (NULL,2); SET histogram_type = JSON_HB; ANALYZE TABLE t1 PERSISTENT FOR ALL; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK SELECT DECODE_HISTOGRAM(hist_type, histogram) from mysql.column_stats; DECODE_HISTOGRAM(hist_type, histogram) NULL { "target_histogram_size": 10, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "1", "size": 0.5, "ndv": 1 }, { "start": "2", "end": "2", "size": 0.5, "ndv": 1 } ] } drop table t1; # # MDEV-26711: Values in JSON histograms are not properly quoted # create table t1 (a varchar(32)); insert into t1 values ('this is "quoted" text'); set histogram_type= JSON_HB; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK select * from t1 where a = 'foo'; a drop table t1; # # MDEV-26724 Endless loop in json_escape_to_string upon ... empty string # CREATE TABLE t1 (f VARCHAR(8)); INSERT INTO t1 VALUES ('a'),(''),('b'); SET histogram_type=JSON_HB; ANALYZE TABLE t PERSISTENT FOR ALL; Table Op Msg_type Msg_text test.t analyze Error Table 'test.t' doesn't exist test.t analyze status Operation failed select * from t1; f a b drop table t1; create table t1 (a char(1)) character set latin1; insert into t1 values (0xD1); select hex(a) from t1; hex(a) D1 set histogram_type='json_hb'; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK select decode_histogram(hist_type, histogram) from mysql.column_stats where db_name=database() and table_name='t1'; decode_histogram(hist_type, histogram) { "target_histogram_size": 10, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "Ñ", "end": "Ñ", "size": 1, "ndv": 1 } ] } select * from t1; a Ñ drop table t1; # # Another testcase: use a character that cannot be represented in utf8: # Also, now it's testcase for: # MDEV-26764: JSON_HB Histograms: handle BINARY and unassigned characters # create table t1 ( a varchar(100) character set cp1251); insert into t1 values ( _cp1251 x'88'),( _cp1251 x'88'), ( _cp1251 x'88'); insert into t1 values ( _cp1251 x'98'),( _cp1251 x'98'); analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK select hist_type, histogram from mysql.column_stats where db_name=database() and table_name='t1'; hist_type histogram JSON_HB { "target_histogram_size": 10, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "€", "size": 0.6, "ndv": 1 }, { "start_hex": "98", "end_hex": "98", "size": 0.4, "ndv": 1 } ] } analyze select * from t1 where a=_cp1251 x'88'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 5 5.00 60.00 60.00 Using where drop table t1; # # ASAN use-after-poison my_strnxfrm_simple_internal / Histogram_json_hb::range_selectivity ... # (Just the testcase) # CREATE TABLE t1 (f CHAR(8)); INSERT INTO t1 VALUES ('foo'),('bar'); SET histogram_type = JSON_HB; ANALYZE TABLE t1 PERSISTENT FOR ALL; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK SELECT * FROM t1 WHERE f > 'qux'; f DROP TABLE t1; # # MDEV-26737: Outdated VARIABLE_COMMENT for HISTOGRAM_TYPE in I_S.SYSTEM_VARIABLES # select variable_comment from information_schema.system_variables where VARIABLE_NAME='HISTOGRAM_TYPE'; variable_comment Specifies type of the histograms created by ANALYZE. Possible values are: SINGLE_PREC_HB - single precision height-balanced, DOUBLE_PREC_HB - double precision height-balanced, JSON_HB - height-balanced, stored as JSON. # # MDEV-26709: JSON histogram may contain bucketS than histogram_size allows # create table t1 (a int); insert into t1 values (1),(3),(5),(7); insert into t1 select 2 from seq_1_to_25; insert into t1 select 4 from seq_1_to_25; insert into t1 select 6 from seq_1_to_25; set histogram_size=4, histogram_type=JSON_HB; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK select histogram from mysql.column_stats where table_name = 't1'; histogram { "target_histogram_size": 4, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "1", "size": 0.253164557, "ndv": 2 }, { "start": "2", "size": 0.253164557, "ndv": 3 }, { "start": "4", "size": 0.253164557, "ndv": 3 }, { "start": "6", "end": "7", "size": 0.240506329, "ndv": 2 } ] } drop table t1; # # MDEV-26750: Estimation for filtered rows is far off with JSON_HB histogram # create table t1 (c char(8)); insert into t1 values ('1x'); insert into t1 values ('1x'); insert into t1 values ('1xx'); insert into t1 values ('0xx'); insert into t1 select * from t1; insert into t1 select * from t1; set histogram_type= JSON_HB; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK analyze select c from t1 where c > '1'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 16 16.00 75.00 75.00 Using where drop table t1; # # MDEV-26849: JSON Histograms: point selectivity estimates are off for non-existent values # create table t0(a int); insert into t0 (a) values (0),(1),(2),(3),(4),(5),(6),(7),(8),(9); create table t1(a int); insert into t1 select 100*A.a from t0 A, t0 B, t0 C; select a, count(*) from t1 group by a order by a; a count(*) 0 100 100 100 200 100 300 100 400 100 500 100 600 100 700 100 800 100 900 100 set histogram_type=json_hb, histogram_size=default; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK select * from mysql.column_stats where table_name='t1'; db_name table_name column_name min_value max_value nulls_ratio avg_length avg_frequency hist_size hist_type histogram test t1 a 0 900 0.0000 4.0000 100.0000 10 JSON_HB { "target_histogram_size": 254, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start": "0", "size": 0.1, "ndv": 1 }, { "start": "100", "size": 0.1, "ndv": 1 }, { "start": "200", "size": 0.1, "ndv": 1 }, { "start": "300", "size": 0.1, "ndv": 1 }, { "start": "400", "size": 0.1, "ndv": 1 }, { "start": "500", "size": 0.1, "ndv": 1 }, { "start": "600", "size": 0.1, "ndv": 1 }, { "start": "700", "size": 0.1, "ndv": 1 }, { "start": "800", "size": 0.1, "ndv": 1 }, { "start": "900", "end": "900", "size": 0.1, "ndv": 1 } ] } analyze select * from t1 where a=0; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 1000 1000.00 10.00 10.00 Using where analyze select * from t1 where a=50; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 1000 1000.00 0.10 0.00 Using where analyze select * from t1 where a=70; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 1000 1000.00 0.10 0.00 Using where analyze select * from t1 where a=100; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 1000 1000.00 10.00 10.00 Using where analyze select * from t1 where a=150; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 1000 1000.00 0.10 0.00 Using where analyze select * from t1 where a=200; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 1000 1000.00 10.00 10.00 Using where drop table t0,t1; # # MDEV-26892: JSON histograms become invalid with a specific (corrupt) value in t # create table t1 (a varchar(32)) DEFAULT CHARSET=cp1257; set histogram_type= JSON_HB, histogram_size= 1; insert into t1 values ('foo'),(unhex('9C')); analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK select * from t1; a foo ? drop table t1; # # MDEV-26911: Unexpected ER_DUP_KEY, ASAN errors, double free detected in tcache with JSON_HB histogram # SET histogram_type= JSON_HB; CREATE TABLE t1 (pk INT AUTO_INCREMENT, f VARCHAR(8), PRIMARY KEY (pk)); INSERT INTO t1 (f) VALUES ('foo'); ANALYZE TABLE t1 PERSISTENT FOR ALL; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK ALTER TABLE t1 MODIFY f TEXT, ORDER BY pk; INSERT INTO t1 (f) VALUES ('bar'); DROP TABLE t1; # # MDEV-26886: Estimation for filtered rows less precise with JSON histogram # create table t1 (a tinyint) as select if(seq%3,seq,0) as a from seq_1_to_100; select count(*) from t1 where a <= 0; count(*) 33 set histogram_type = JSON_HB, histogram_size=default; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK analyze select * from t1 where a <= 0; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 100 100.00 33.00 33.00 Using where analyze select * from t1 where a < 0; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 100 100.00 1.00 0.00 Using where analyze select * from t1 where a > 0; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 100 100.00 67.00 67.00 Using where analyze select * from t1 where a >= 0; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 100 100.00 100.00 100.00 Using where drop table t1; # # More test coverage # create table t0(a int); insert into t0 values (0),(1),(2),(3),(4),(5),(6),(7),(8),(9); create table t1(a int); insert into t1 select A.a + B.a* 10 + C.a * 100 from t0 A, t0 B, t0 C; create table t2 (a int); insert into t2 select 1 from t1; insert into t2 select (a+1)*10 from t0; insert into t2 values (0); analyze table t2 persistent for all; Table Op Msg_type Msg_text test.t2 analyze status Engine-independent statistics collected test.t2 analyze status OK analyze select * from t2 where a < 1; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t2 ALL NULL NULL NULL NULL 1011 1011.00 0.10 0.10 Using where analyze select * from t2 where a =100; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t2 ALL NULL NULL NULL NULL 1011 1011.00 0.10 0.10 Using where drop table t0,t1,t2; # # MDEV-27230: Estimation for filtered rows less precise ... # create table t1 (a char(1)); insert into t1 select chr(seq%26+97) from seq_1_to_50; insert into t1 select ':' from t1; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK analyze select COUNT(*) FROM t1 WHERE a <> 'a'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 100 100.00 99.00 99.00 Using where analyze select COUNT(*) FROM t1 WHERE a < 'a'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 100 100.00 50.00 50.00 Using where drop table t1; # # MDEV-27229: Estimation for filtered rows less precise ... #5 # create table t1 (id int, a varchar(8)); insert into t1 select seq, 'bar' from seq_1_to_100; insert into t1 select id, 'qux' from t1; set histogram_type=JSON_HB; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK analyze select COUNT(*) FROM t1 WHERE a > 'foo'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 200 200.00 50.00 50.00 Using where analyze select COUNT(*) FROM t1 WHERE a > 'aaa'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 200 200.00 100.00 100.00 Using where analyze select COUNT(*) FROM t1 WHERE a >='aaa'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 200 200.00 100.00 100.00 Using where analyze select COUNT(*) FROM t1 WHERE a > 'bar'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 200 200.00 50.00 50.00 Using where analyze select COUNT(*) FROM t1 WHERE a >='bar'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 200 200.00 100.00 100.00 Using where analyze select COUNT(*) FROM t1 WHERE a < 'aaa'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 200 200.00 0.50 0.00 Using where analyze select COUNT(*) FROM t1 WHERE a <='aaa'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 200 200.00 0.50 0.00 Using where analyze select COUNT(*) FROM t1 WHERE a < 'bar'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 200 200.00 0.50 0.00 Using where analyze select COUNT(*) FROM t1 WHERE a <='bar'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 200 200.00 50.00 50.00 Using where drop table t1; # # MDEV-27243: Estimation for filtered rows less precise ... #7 # (Testcase only) CREATE TABLE t1 (f TIME); INSERT INTO t1 SELECT IF(seq%2,'00:00:00',SEC_TO_TIME(seq+7200)) FROM seq_1_to_1000; SET histogram_type= JSON_HB; ANALYZE TABLE t1 PERSISTENT FOR ALL; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK ANALYZE SELECT * FROM t1 WHERE f > '00:01:00'; id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 1000 1000.00 50.00 50.00 Using where drop table t1; # # MDEV-26901: Estimation for filtered rows less precise ... #4 # create table t1 (f int); insert into t1 values (7),(5),(0),(5),(112),(9),(9),(7),(5),(9), (1),(7),(0),(6),(6),(2),(1),(6),(169),(7); select f from t1 where f in (77, 1, 144, 73, 14, 12); f 1 1 set histogram_type= JSON_HB; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK analyze select f from t1 where f in (77, 1, 144, 73, 14, 12); id select_type table type possible_keys key key_len ref rows r_rows filtered r_filtered Extra 1 SIMPLE t1 ALL NULL NULL NULL NULL 20 20.00 10.00 10.00 Using where drop table t1; # # Test that histograms over BIT fields use hex # create table t1 (a BIT(64)); insert into t1 values (x'01'),(x'10'),(x'BE562B1A99001918'); set histogram_type= JSON_HB; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK select histogram from mysql.column_stats where table_name='t1' and db_name=database(); histogram { "target_histogram_size": 254, "collected_at": "REPLACED", "collected_by": "REPLACED", "histogram_hb": [ { "start_hex": "0000000000000001", "size": 0.333333333, "ndv": 1 }, { "start_hex": "0000000000000010", "size": 0.333333333, "ndv": 1 }, { "start_hex": "BE562B1A99001918", "end_hex": "BE562B1A99001918", "size": 0.333333333, "ndv": 1 } ] } drop table t1; # # MDEV-28882: Assertion `tmp >= 0' failed in best_access_path # CREATE TABLE t1 (a varchar(1)); INSERT INTO t1 VALUES ('o'),('s'),('j'),('s'),('y'),('s'),('l'), ('q'),('x'),('m'),('t'),('d'),('v'),('j'),('p'),('t'),('b'),('q'); set histogram_type=json_hb; analyze table t1 persistent for all; Table Op Msg_type Msg_text test.t1 analyze status Engine-independent statistics collected test.t1 analyze status OK # filtered must not be negative: explain format=json select * from t1 where a > 'y'; EXPLAIN { "query_block": { "select_id": 1, "cost": "COST_REPLACED", "nested_loop": [ { "table": { "table_name": "t1", "access_type": "ALL", "loops": 1, "rows": 18, "cost": "COST_REPLACED", "filtered": 5.555555344, "attached_condition": "t1.a > 'y'" } } ] } } drop table t1;