ticker
stringlengths 1
10
| date
timestamp[ns] | profitability
float32 1
100
| value
float32 1
100
| solvency
float32 1
100
| cash_flow
float32 1
100
| illiquidity
float32 1
100
| momentum_long_term
float32 1
100
| momentum_medium_term
float32 1
100
| short_term_reversal
float32 1
100
| price_volatility
float32 1
100
| dividend_yield
float32 1
100
| earnings_consistency
float32 1
100
| small_size
float32 1
100
| low_growth
float32 1
100
| low_equity_issuance
float32 1
100
| bounce_dip
float32 1
100
| accrual_growth
float32 1
100
| low_depreciation_growth
float32 1
100
| current_liquidity
float32 1
100
| low_rnd
float32 1
100
| momentum
float32 1
100
| market_risk
float32 1
100
| business_risk
float32 1
100
| political_risk
float32 1
100
| inflation_fluctuation
float32 1
100
| inflation_persistence
float32 1
100
| returns
float32 -1
1.44k
⌀ |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
A
| 1999-11-26T00:00:00
| 57
| 8
| 18
| 77
| 82
| 61
| 57
| 47
| 29
| 29
| 64
| 3
| 50.5
| 1
| 52
| 54
| 45
| 97
| 74.5
| 61
| 13
| 26
| 50
| 69
| 37
| 0.020071
|
A
| 1999-12-03T00:00:00
| 56
| 8
| 18
| 77
| 82
| 61
| 57
| 16
| 29
| 29
| 64
| 3
| 50.5
| 1
| 52
| 54
| 45
| 96
| 74.5
| 61
| 13
| 26
| 50
| 69
| 37
| 0.080332
|
A
| 1999-12-10T00:00:00
| 56
| 8
| 21
| 77
| 82
| 61
| 57
| 30
| 28
| 28
| 64
| 3
| 50.5
| 1
| 52
| 54
| 45
| 96
| 74.5
| 60
| 13
| 26
| 50
| 69
| 37
| 0.005629
|
A
| 1999-12-17T00:00:00
| 56
| 7
| 24
| 77
| 82
| 61
| 57
| 20
| 11
| 11
| 64
| 3
| 50.5
| 1
| 52
| 54
| 45
| 96
| 74.5
| 60
| 13
| 26
| 50
| 69
| 37
| 0.026599
|
A
| 1999-12-24T00:00:00
| 55
| 7
| 14
| 77
| 82
| 61
| 57
| 12
| 13
| 13
| 64
| 3
| 50.5
| 1
| 52
| 54
| 45
| 96
| 74.5
| 61
| 13
| 26
| 50
| 69
| 37
| 0.082932
|
A
| 1999-12-31T00:00:00
| 53
| 4
| 10
| 77
| 82
| 61
| 57
| 1
| 97
| 97
| 64
| 2
| 50.5
| 1
| 52
| 54
| 45
| 95
| 74.5
| 61
| 13
| 26
| 50
| 69
| 37
| 0.553972
|
A
| 2000-01-07T00:00:00
| 54
| 5
| 24
| 77
| 82
| 61
| 57
| 34
| 97
| 97
| 64
| 2
| 50.5
| 1
| 52
| 54
| 45
| 96
| 74.5
| 61
| 13
| 26
| 50
| 69
| 37
| -0.159237
|
A
| 2000-01-14T00:00:00
| 54
| 5
| 9
| 77
| 82
| 61
| 57
| 19
| 96
| 96
| 64
| 2
| 50.5
| 1
| 52
| 54
| 45
| 96
| 74.5
| 61
| 13
| 26
| 50
| 69
| 37
| 0.05199
|
A
| 2000-01-21T00:00:00
| 54
| 5
| 17
| 77
| 82
| 55
| 50
| 48
| 93
| 93
| 64
| 2
| 50.5
| 1
| 52
| 54
| 45
| 96
| 74.5
| 54
| 13
| 26
| 50
| 69
| 37
| 0.005411
|
A
| 2000-01-28T00:00:00
| 54
| 6
| 25
| 43
| 82
| 67
| 74
| 29
| 91
| 91
| 64
| 2
| 50.5
| 4
| 52
| 54
| 45
| 97
| 74.5
| 73
| 13
| 26
| 50
| 69
| 37
| -0.010026
|
A
| 2000-02-04T00:00:00
| 53
| 5
| 5
| 43
| 82
| 65
| 71
| 11
| 89
| 89
| 64
| 2
| 50.5
| 39
| 52
| 54
| 45
| 97
| 74.5
| 70
| 13
| 26
| 50
| 69
| 37
| 0.12033
|
A
| 2000-02-11T00:00:00
| 53
| 5
| 4
| 43
| 82
| 68
| 76
| 35
| 87
| 87
| 64
| 2
| 50.5
| 45
| 52
| 54
| 46
| 97
| 74.5
| 75
| 13
| 26
| 50
| 69
| 37
| -0.011402
|
A
| 2000-02-18T00:00:00
| 52
| 4
| 21
| 43
| 82
| 76
| 87
| 7
| 88
| 88
| 64
| 2
| 50.5
| 9
| 52
| 54
| 45
| 97
| 74.5
| 84
| 13
| 26
| 50
| 69
| 37
| 0.243701
|
A
| 2000-02-25T00:00:00
| 52
| 4
| 14
| 43
| 82
| 95
| 100
| 5
| 86
| 86
| 64
| 2
| 50.5
| 18
| 52
| 54
| 45
| 96
| 74.5
| 98
| 13
| 26
| 50
| 69
| 37
| 0.153056
|
A
| 2000-03-03T00:00:00
| 52
| 4
| 4
| 43
| 82
| 85
| 91
| 24
| 83
| 83
| 64
| 2
| 50.5
| 44
| 52
| 54
| 45
| 97
| 74.5
| 91
| 13
| 26
| 50
| 69
| 37
| -0.000924
|
A
| 2000-03-10T00:00:00
| 51
| 3
| 8
| 43
| 82
| 82
| 87
| 4
| 81
| 81
| 64
| 1
| 50.5
| 29
| 52
| 54
| 45
| 96
| 74.5
| 87
| 13
| 26
| 50
| 69
| 37
| 0.314813
|
A
| 2000-03-17T00:00:00
| 46
| 4
| 16
| 85
| 82
| 76
| 76
| 50
| 82
| 82
| 64
| 2
| 50.5
| 89
| 52
| 54
| 40
| 95
| 74.5
| 79
| 13
| 26
| 50
| 69
| 37
| -0.147183
|
A
| 2000-03-24T00:00:00
| 46
| 4
| 34
| 84
| 82
| 77
| 76
| 42
| 82
| 82
| 64
| 2
| 50.5
| 89
| 52
| 54
| 40
| 95
| 74.5
| 80
| 13
| 26
| 50
| 69
| 37
| -0.009086
|
A
| 2000-03-31T00:00:00
| 48
| 4
| 29
| 83
| 82
| 82
| 89
| 79
| 83
| 83
| 64
| 2
| 50.5
| 89
| 52
| 54
| 40
| 95
| 74.5
| 88
| 13
| 26
| 50
| 69
| 37
| -0.13333
|
A
| 2000-04-07T00:00:00
| 47
| 4
| 34
| 83
| 82
| 76
| 71
| 10
| 83
| 83
| 64
| 2
| 50.5
| 89
| 52
| 54
| 40
| 94
| 74.5
| 76
| 13
| 26
| 50
| 69
| 37
| 0.173079
|
A
| 2000-04-14T00:00:00
| 48
| 4
| 27
| 82
| 82
| 88
| 92
| 78
| 87
| 87
| 64
| 2
| 50.5
| 89
| 52
| 54
| 40
| 95
| 74.5
| 92
| 13
| 26
| 50
| 69
| 37
| -0.322221
|
A
| 2000-04-21T00:00:00
| 48
| 4
| 25
| 82
| 82
| 91
| 95
| 69
| 84
| 84
| 53
| 2
| 50.5
| 90
| 52
| 54
| 40
| 95
| 74.5
| 94
| 13
| 26
| 50
| 69
| 37
| 0.087696
|
A
| 2000-04-28T00:00:00
| 48
| 5
| 20
| 82
| 82
| 84
| 86
| 80
| 82
| 82
| 54
| 2
| 50.5
| 90
| 52
| 54
| 40
| 95
| 74.5
| 86
| 13
| 26
| 50
| 69
| 37
| -0.014581
|
A
| 2000-05-05T00:00:00
| 48
| 4
| 25
| 82
| 82
| 93
| 97
| 42
| 79
| 79
| 57
| 2
| 50.5
| 90
| 52
| 54
| 41
| 94
| 74.5
| 96
| 13
| 26
| 50
| 69
| 37
| 0.031719
|
A
| 2000-05-12T00:00:00
| 47
| 4
| 33
| 84
| 82
| 90
| 90
| 48
| 79
| 79
| 67
| 2
| 50.5
| 89
| 52
| 54
| 41
| 95
| 74.5
| 93
| 13
| 26
| 50
| 69
| 37
| -0.009633
|
A
| 2000-05-19T00:00:00
| 49
| 6
| 30
| 86
| 82
| 89
| 84
| 98
| 82
| 82
| 63
| 2
| 50.5
| 89
| 52
| 54
| 42
| 97
| 74.5
| 91
| 13
| 26
| 50
| 69
| 37
| -0.264233
|
A
| 2000-05-26T00:00:00
| 49
| 5
| 36
| 86
| 82
| 78
| 49
| 82
| 80
| 80
| 78
| 2
| 50.5
| 88
| 52
| 54
| 42
| 96
| 74.5
| 67
| 13
| 26
| 50
| 69
| 37
| -0.024474
|
A
| 2000-06-02T00:00:00
| 48
| 5
| 20
| 86
| 82
| 96
| 91
| 30
| 83
| 83
| 38
| 2
| 50.5
| 89
| 52
| 54
| 42
| 96
| 74.5
| 97
| 13
| 26
| 50
| 69
| 37
| 0.257683
|
A
| 2000-06-09T00:00:00
| 49
| 6
| 21
| 87
| 82
| 41
| 31
| 85
| 82
| 82
| 40
| 2
| 50.5
| 89
| 52
| 54
| 42
| 97
| 74.5
| 32
| 13
| 26
| 50
| 69
| 37
| -0.132966
|
A
| 2000-06-16T00:00:00
| 55
| 7
| 26
| 40
| 82
| 55
| 35
| 96
| 81
| 81
| 80
| 2
| 50.5
| 98
| 52
| 54
| 44
| 73
| 74.5
| 43
| 13
| 26
| 50
| 69
| 37
| -0.116398
|
A
| 2000-06-23T00:00:00
| 54
| 5
| 29
| 40
| 82
| 47
| 33
| 31
| 84
| 84
| 80
| 2
| 50.5
| 98
| 52
| 54
| 44
| 72
| 74.5
| 38
| 13
| 26
| 50
| 69
| 37
| 0.199597
|
A
| 2000-06-30T00:00:00
| 54
| 6
| 29
| 40
| 82
| 57
| 40
| 33
| 83
| 83
| 73
| 2
| 50.5
| 98
| 52
| 54
| 44
| 72
| 74.5
| 47
| 13
| 26
| 50
| 69
| 37
| -0.018371
|
A
| 2000-07-07T00:00:00
| 55
| 7
| 15
| 40
| 82
| 58
| 53
| 75
| 83
| 83
| 39
| 2
| 50.5
| 98
| 52
| 54
| 45
| 73
| 74.5
| 56
| 13
| 26
| 50
| 69
| 37
| -0.084739
|
A
| 2000-07-14T00:00:00
| 54
| 6
| 20
| 40
| 82
| 14
| 10
| 27
| 83
| 83
| 50
| 2
| 50.5
| 98
| 52
| 54
| 45
| 72
| 74.5
| 9
| 13
| 26
| 50
| 69
| 37
| 0.14163
|
A
| 2000-07-21T00:00:00
| 57
| 10
| 16
| 40
| 82
| 19
| 18
| 100
| 93
| 93
| 40
| 3
| 50.5
| 98
| 52
| 54
| 45
| 76
| 74.5
| 16
| 13
| 26
| 50
| 69
| 37
| -0.376323
|
A
| 2000-07-28T00:00:00
| 58
| 11
| 16
| 40
| 16
| 42
| 54
| 97
| 91
| 91
| 41
| 3
| 50.5
| 38
| 52
| 54
| 45
| 76
| 74.5
| 47
| 27
| 34
| 18
| 69
| 37
| -0.141718
|
A
| 2000-08-04T00:00:00
| 58
| 11
| 32
| 40
| 17
| 17
| 8
| 95
| 90
| 90
| 75
| 3
| 50.5
| 39
| 52
| 54
| 45
| 76
| 74.5
| 10
| 28
| 33
| 17
| 69
| 37
| -0.028856
|
A
| 2000-08-11T00:00:00
| 58
| 11
| 19
| 39
| 89
| 13
| 6
| 80
| 89
| 89
| 47
| 3
| 50.5
| 40
| 52
| 54
| 45
| 76
| 74.5
| 7
| 29
| 34
| 19
| 69
| 37
| 0.014264
|
A
| 2000-08-18T00:00:00
| 55
| 7
| 22
| 38
| 84
| 37
| 50
| 9
| 96
| 96
| 91
| 3
| 50.5
| 43
| 52
| 54
| 45
| 73
| 74.5
| 42
| 25
| 31
| 33
| 69
| 37
| 0.387613
|
A
| 2000-08-25T00:00:00
| 55
| 7
| 24
| 38
| 80
| 32
| 52
| 17
| 95
| 95
| 92
| 3
| 50.5
| 43
| 52
| 54
| 45
| 73
| 74.5
| 41
| 25
| 30
| 32
| 69
| 37
| 0.037607
|
A
| 2000-09-01T00:00:00
| 51
| 8
| 22
| 56
| 85
| 19
| 19
| 9
| 93
| 93
| 50
| 3
| 50.5
| 43
| 52
| 54
| 49
| 98
| 74.5
| 16
| 25
| 31
| 24
| 69
| 37
| 0.057767
|
A
| 2000-09-08T00:00:00
| 52
| 8
| 23
| 56
| 83
| 38
| 61
| 42
| 92
| 92
| 52
| 3
| 50.5
| 43
| 52
| 54
| 50
| 98
| 74.5
| 50
| 21
| 45
| 60
| 69
| 37
| -0.042494
|
A
| 2000-09-15T00:00:00
| 52
| 9
| 24
| 55
| 82
| 5
| 1
| 60
| 91
| 91
| 54
| 3
| 50.5
| 43
| 52
| 54
| 50
| 98
| 74.5
| 2
| 35
| 38
| 53
| 69
| 37
| -0.037968
|
A
| 2000-09-22T00:00:00
| 53
| 10
| 23
| 55
| 84
| 5
| 2
| 80
| 91
| 91
| 51
| 3
| 50.5
| 43
| 52
| 54
| 50
| 98
| 74.5
| 2
| 34
| 36
| 53
| 69
| 37
| -0.122824
|
A
| 2000-09-29T00:00:00
| 53
| 10
| 30
| 55
| 67
| 14
| 2
| 79
| 86
| 86
| 66
| 3
| 50.5
| 41
| 52
| 54
| 50
| 98
| 74.5
| 6
| 36
| 36
| 55
| 69
| 37
| -0.021187
|
A
| 2000-10-06T00:00:00
| 52
| 9
| 26
| 55
| 76
| 13
| 5
| 28
| 82
| 82
| 59
| 3
| 50.5
| 42
| 52
| 54
| 50
| 98
| 74.5
| 7
| 36
| 47
| 61
| 69
| 37
| 0.066408
|
A
| 2000-10-13T00:00:00
| 53
| 11
| 33
| 55
| 54
| 33
| 62
| 80
| 83
| 83
| 65
| 3
| 50.5
| 41
| 52
| 54
| 50
| 98
| 74.5
| 47
| 26
| 42
| 61
| 69
| 37
| -0.149642
|
A
| 2000-10-20T00:00:00
| 53
| 10
| 22
| 55
| 84
| 36
| 62
| 51
| 81
| 81
| 52
| 3
| 50.5
| 41
| 52
| 54
| 50
| 98
| 74.5
| 48
| 28
| 41
| 65
| 69
| 37
| 0.049104
|
A
| 2000-10-27T00:00:00
| 53
| 10
| 25
| 55
| 79
| 40
| 84
| 67
| 65
| 65
| 53
| 3
| 50.5
| 41
| 52
| 54
| 50
| 98
| 74.5
| 65
| 24
| 30
| 79
| 69
| 37
| -0.017372
|
A
| 2000-11-03T00:00:00
| 53
| 10
| 27
| 54
| 74
| 24
| 74
| 49
| 61
| 61
| 54
| 3
| 50.5
| 41
| 52
| 54
| 50
| 98
| 74.5
| 49
| 26
| 34
| 80
| 69
| 37
| 0.023154
|
A
| 2000-11-10T00:00:00
| 54
| 12
| 21
| 54
| 84
| 25
| 50
| 89
| 64
| 64
| 51
| 4
| 50.5
| 41
| 52
| 54
| 50
| 98
| 74.5
| 35
| 24
| 36
| 67
| 69
| 37
| -0.157433
|
A
| 2000-11-17T00:00:00
| 53
| 9
| 20
| 52
| 85
| 18
| 30
| 15
| 76
| 76
| 10
| 3
| 50.5
| 57
| 63
| 54
| 50
| 98
| 74.5
| 21
| 33
| 65
| 85
| 69
| 37
| 0.201295
|
A
| 2000-11-24T00:00:00
| 52
| 8
| 33
| 52
| 52
| 19
| 22
| 3
| 75
| 75
| 33
| 3
| 50.5
| 57
| 74
| 54
| 50
| 98
| 74.5
| 19
| 36
| 74
| 78
| 69
| 37
| 0.075161
|
A
| 2000-12-01T00:00:00
| 52
| 7
| 25
| 52
| 76
| 31
| 52
| 4
| 70
| 70
| 19
| 3
| 50.5
| 55
| 70
| 54
| 50
| 97
| 74.5
| 40
| 32
| 72
| 72
| 69
| 37
| 0.040433
|
A
| 2000-12-08T00:00:00
| 51
| 6
| 23
| 52
| 80
| 21
| 22
| 3
| 69
| 69
| 16
| 3
| 50.5
| 55
| 62
| 54
| 50
| 97
| 74.5
| 20
| 26
| 82
| 74
| 69
| 37
| 0.121498
|
A
| 2000-12-15T00:00:00
| 51
| 7
| 14
| 53
| 88
| 26
| 33
| 21
| 67
| 67
| 1
| 3
| 50.5
| 55
| 71
| 54
| 50
| 97
| 74.5
| 28
| 19
| 92
| 73
| 69
| 37
| -0.043053
|
A
| 2000-12-22T00:00:00
| 51
| 7
| 25
| 53
| 74
| 24
| 32
| 39
| 62
| 62
| 20
| 3
| 50.5
| 55
| 38
| 54
| 50
| 97
| 74.5
| 26
| 31
| 89
| 70
| 69
| 37
| -0.038514
|
A
| 2000-12-29T00:00:00
| 51
| 7
| 32
| 52
| 52
| 22
| 40
| 56
| 59
| 59
| 32
| 3
| 50.5
| 55
| 25
| 54
| 50
| 97
| 74.5
| 28
| 29
| 90
| 71
| 69
| 37
| 0.001108
|
A
| 2001-01-05T00:00:00
| 51
| 7
| 22
| 52
| 81
| 17
| 21
| 55
| 55
| 55
| 13
| 3
| 50.5
| 54
| 26
| 54
| 50
| 97
| 74.5
| 17
| 28
| 88
| 66
| 69
| 37
| 0.005652
|
A
| 2001-01-12T00:00:00
| 52
| 7
| 18
| 52
| 86
| 32
| 77
| 59
| 52
| 52
| 6
| 3
| 50.5
| 51
| 25
| 54
| 50
| 97
| 74.5
| 54
| 31
| 88
| 68
| 69
| 37
| 0.019418
|
A
| 2001-01-19T00:00:00
| 71
| 7
| 25
| 88
| 73
| 46
| 97
| 18
| 59
| 59
| 60
| 3
| 50.5
| 42
| 5
| 54
| 49
| 96
| 74.5
| 73
| 27
| 89
| 62
| 69
| 37
| 0.168018
|
A
| 2001-01-26T00:00:00
| 74
| 9
| 25
| 88
| 75
| 57
| 93
| 96
| 63
| 63
| 59
| 3
| 50.5
| 41
| 14
| 54
| 49
| 97
| 74.5
| 77
| 33
| 89
| 68
| 69
| 37
| -0.166725
|
A
| 2001-02-02T00:00:00
| 76
| 10
| 16
| 88
| 87
| 73
| 97
| 94
| 63
| 63
| 71
| 3
| 50.5
| 42
| 18
| 54
| 49
| 97
| 74.5
| 88
| 34
| 90
| 67
| 69
| 37
| -0.044476
|
A
| 2001-02-09T00:00:00
| 75
| 9
| 28
| 87
| 68
| 66
| 92
| 77
| 62
| 62
| 93
| 3
| 50.5
| 41
| 10
| 54
| 49
| 97
| 74.5
| 81
| 42
| 92
| 71
| 69
| 37
| 0.00574
|
A
| 2001-02-16T00:00:00
| 77
| 10
| 29
| 88
| 64
| 61
| 77
| 83
| 60
| 60
| 95
| 3
| 50.5
| 63
| 14
| 54
| 49
| 97
| 74.5
| 69
| 50
| 86
| 64
| 69
| 37
| -0.047622
|
A
| 2001-02-23T00:00:00
| 83
| 14
| 32
| 87
| 54
| 56
| 63
| 97
| 67
| 67
| 100
| 4
| 50.5
| 62
| 24
| 54
| 48
| 97
| 74.5
| 60
| 47
| 85
| 58
| 69
| 37
| -0.234004
|
A
| 2001-03-02T00:00:00
| 83
| 15
| 15
| 87
| 89
| 57
| 63
| 87
| 66
| 66
| 66
| 3
| 50.5
| 65
| 28
| 54
| 49
| 97
| 74.5
| 61
| 42
| 76
| 66
| 69
| 37
| -0.007011
|
A
| 2001-03-09T00:00:00
| 84
| 15
| 17
| 87
| 88
| 52
| 56
| 84
| 66
| 66
| 72
| 4
| 50.5
| 65
| 23
| 54
| 49
| 97
| 74.5
| 55
| 42
| 74
| 67
| 69
| 37
| -0.025788
|
A
| 2001-03-16T00:00:00
| 85
| 15
| 29
| 87
| 67
| 77
| 87
| 70
| 64
| 64
| 95
| 4
| 50.5
| 63
| 28
| 54
| 49
| 97
| 74.5
| 91
| 45
| 70
| 62
| 69
| 37
| -0.062088
|
A
| 2001-03-23T00:00:00
| 53
| 14
| 30
| 25
| 78
| 40
| 18
| 22
| 68
| 68
| 62
| 3
| 50.5
| 54
| 25
| 54
| 68
| 73
| 74.5
| 21
| 44
| 76
| 59
| 69
| 37
| 0.088626
|
A
| 2001-03-30T00:00:00
| 57
| 21
| 36
| 25
| 59
| 31
| 12
| 91
| 68
| 68
| 75
| 4
| 50.5
| 57
| 43
| 54
| 68
| 74
| 74.5
| 15
| 24
| 83
| 62
| 69
| 37
| -0.187665
|
A
| 2001-04-06T00:00:00
| 59
| 24
| 31
| 25
| 78
| 35
| 22
| 87
| 66
| 66
| 68
| 4
| 50.5
| 58
| 48
| 54
| 67
| 74
| 74.5
| 24
| 21
| 83
| 61
| 69
| 37
| -0.09537
|
A
| 2001-04-13T00:00:00
| 56
| 17
| 25
| 25
| 88
| 32
| 20
| 30
| 74
| 74
| 52
| 4
| 50.5
| 55
| 38
| 54
| 67
| 73
| 74.5
| 23
| 17
| 80
| 55
| 69
| 37
| 0.221627
|
A
| 2001-04-20T00:00:00
| 56
| 14
| 33
| 25
| 72
| 20
| 10
| 6
| 76
| 76
| 71
| 3
| 50.5
| 50
| 38
| 54
| 67
| 73
| 74.5
| 13
| 22
| 78
| 59
| 69
| 37
| 0.189615
|
A
| 2001-04-27T00:00:00
| 56
| 15
| 30
| 25
| 82
| 20
| 11
| 33
| 75
| 75
| 68
| 4
| 50.5
| 50
| 37
| 54
| 67
| 73
| 74.5
| 14
| 33
| 93
| 47
| 69
| 37
| -0.039838
|
A
| 2001-05-04T00:00:00
| 56
| 16
| 32
| 24
| 76
| 20
| 13
| 61
| 71
| 71
| 71
| 4
| 50.5
| 57
| 39
| 54
| 67
| 74
| 74.5
| 15
| 35
| 94
| 51
| 69
| 37
| -0.010848
|
A
| 2001-05-11T00:00:00
| 56
| 15
| 35
| 25
| 68
| 22
| 18
| 35
| 70
| 70
| 76
| 4
| 50.5
| 58
| 44
| 54
| 67
| 73
| 74.5
| 18
| 34
| 93
| 48
| 69
| 37
| 0.034393
|
A
| 2001-05-18T00:00:00
| 60
| 20
| 23
| 30
| 89
| 27
| 43
| 86
| 70
| 70
| 45
| 4
| 50.5
| 62
| 75
| 54
| 67
| 74
| 74.5
| 33
| 37
| 94
| 39
| 69
| 37
| -0.092942
|
A
| 2001-05-25T00:00:00
| 59
| 18
| 27
| 30
| 87
| 21
| 11
| 55
| 69
| 69
| 55
| 4
| 50.5
| 62
| 56
| 54
| 67
| 74
| 74.5
| 14
| 34
| 95
| 38
| 69
| 37
| 0.046935
|
A
| 2001-06-01T00:00:00
| 61
| 21
| 25
| 30
| 88
| 21
| 13
| 94
| 70
| 70
| 48
| 4
| 50.5
| 62
| 59
| 54
| 67
| 75
| 74.5
| 15
| 36
| 95
| 42
| 69
| 37
| -0.098697
|
A
| 2001-06-08T00:00:00
| 61
| 20
| 35
| 30
| 71
| 27
| 44
| 69
| 67
| 67
| 80
| 4
| 50.5
| 62
| 71
| 54
| 67
| 75
| 74.5
| 32
| 35
| 95
| 41
| 69
| 37
| 0.030605
|
A
| 2001-06-15T00:00:00
| 52
| 25
| 28
| 56
| 86
| 38
| 82
| 92
| 69
| 69
| 35
| 4
| 50.5
| 69
| 74
| 54
| 68
| 98
| 74.5
| 62
| 34
| 90
| 34
| 69
| 37
| -0.129963
|
A
| 2001-06-22T00:00:00
| 53
| 26
| 23
| 57
| 90
| 28
| 69
| 84
| 65
| 65
| 2
| 4
| 50.5
| 70
| 66
| 54
| 67
| 98
| 74.5
| 47
| 55
| 92
| 33
| 69
| 37
| -0.034777
|
A
| 2001-06-29T00:00:00
| 52
| 24
| 23
| 56
| 90
| 27
| 45
| 41
| 64
| 64
| 1
| 4
| 50.5
| 70
| 51
| 54
| 67
| 98
| 74.5
| 31
| 52
| 94
| 30
| 69
| 37
| 0.105419
|
A
| 2001-07-06T00:00:00
| 53
| 24
| 41
| 56
| 60
| 30
| 66
| 74
| 63
| 63
| 33
| 4
| 50.5
| 65
| 55
| 54
| 68
| 98
| 74.5
| 47
| 52
| 95
| 29
| 69
| 37
| -0.072292
|
A
| 2001-07-13T00:00:00
| 53
| 25
| 34
| 56
| 77
| 22
| 21
| 59
| 62
| 62
| 19
| 4
| 50.5
| 67
| 60
| 54
| 67
| 98
| 74.5
| 17
| 52
| 95
| 29
| 69
| 37
| 0.004942
|
A
| 2001-07-20T00:00:00
| 53
| 27
| 31
| 56
| 83
| 22
| 30
| 81
| 61
| 61
| 15
| 4
| 50.5
| 64
| 92
| 54
| 67
| 99
| 74.5
| 21
| 53
| 94
| 44
| 69
| 37
| -0.046201
|
A
| 2001-07-27T00:00:00
| 53
| 26
| 31
| 56
| 83
| 19
| 9
| 35
| 60
| 60
| 15
| 4
| 50.5
| 63
| 79
| 54
| 67
| 99
| 74.5
| 11
| 41
| 86
| 7
| 69
| 37
| 0.041527
|
A
| 2001-08-03T00:00:00
| 52
| 24
| 28
| 56
| 87
| 18
| 16
| 22
| 59
| 59
| 9
| 4
| 50.5
| 65
| 74
| 54
| 68
| 99
| 74.5
| 14
| 34
| 82
| 12
| 69
| 37
| 0.039872
|
A
| 2001-08-10T00:00:00
| 53
| 28
| 29
| 54
| 86
| 15
| 9
| 77
| 59
| 59
| 10
| 4
| 50.5
| 66
| 80
| 54
| 68
| 98
| 74.5
| 10
| 36
| 84
| 18
| 69
| 37
| -0.086572
|
A
| 2001-08-17T00:00:00
| 54
| 30
| 34
| 51
| 75
| 16
| 12
| 87
| 59
| 59
| 19
| 5
| 50.5
| 68
| 66
| 54
| 68
| 98
| 74.5
| 12
| 45
| 78
| 13
| 69
| 37
| -0.074848
|
A
| 2001-08-24T00:00:00
| 53
| 30
| 30
| 51
| 84
| 19
| 35
| 57
| 58
| 58
| 11
| 4
| 50.5
| 69
| 52
| 54
| 68
| 98
| 74.5
| 24
| 39
| 78
| 14
| 69
| 37
| 0.050634
|
A
| 2001-08-31T00:00:00
| 53
| 29
| 36
| 51
| 72
| 18
| 19
| 74
| 58
| 58
| 24
| 5
| 50.5
| 67
| 40
| 54
| 68
| 98
| 74.5
| 17
| 37
| 78
| 14
| 69
| 37
| -0.046427
|
A
| 2001-09-07T00:00:00
| 55
| 37
| 36
| 51
| 71
| 19
| 29
| 86
| 59
| 59
| 26
| 5
| 50.5
| 67
| 48
| 54
| 68
| 98
| 74.5
| 21
| 35
| 78
| 14
| 69
| 37
| -0.118876
|
A
| 2001-09-14T00:00:00
| 27
| 37
| 32
| 86
| 79
| 19
| 23
| 86
| 58
| 58
| 16
| 5
| 50.5
| 40
| 49
| 54
| 66
| 98
| 74.5
| 19
| 45
| 85
| 20
| 69
| 37
| -0.012832
|
A
| 2001-09-21T00:00:00
| 27
| 39
| 29
| 86
| 83
| 19
| 40
| 64
| 50
| 50
| 10
| 5
| 50.5
| 47
| 65
| 54
| 66
| 98
| 74.5
| 26
| 53
| 84
| 53
| 69
| 37
| -0.125799
|
A
| 2001-09-28T00:00:00
| 26
| 41
| 36
| 86
| 71
| 21
| 62
| 79
| 45
| 45
| 24
| 5
| 50.5
| 41
| 56
| 54
| 66
| 98
| 74.5
| 39
| 60
| 82
| 57
| 69
| 37
| -0.029739
|
A
| 2001-10-05T00:00:00
| 27
| 40
| 27
| 85
| 85
| 18
| 23
| 46
| 48
| 48
| 9
| 5
| 50.5
| 49
| 43
| 54
| 66
| 98
| 74.5
| 18
| 47
| 73
| 52
| 69
| 37
| 0.079223
|
A
| 2001-10-12T00:00:00
| 27
| 34
| 38
| 86
| 65
| 16
| 17
| 20
| 51
| 51
| 34
| 5
| 50.5
| 38
| 46
| 54
| 66
| 98
| 74.5
| 15
| 46
| 72
| 53
| 69
| 37
| 0.107162
|
A
| 2001-10-19T00:00:00
| 27
| 34
| 35
| 85
| 73
| 18
| 28
| 22
| 49
| 49
| 35
| 5
| 50.5
| 40
| 42
| 54
| 66
| 98
| 74.5
| 20
| 45
| 73
| 52
| 69
| 37
| 0
|
Factor Signals
Data Notice: This dataset provides academic research access with a 6-month data lag. For real-time data access, please visit sov.ai to subscribe. For market insights and additional subscription options, check out our newsletter at blog.sov.ai.
from datasets import load_dataset
df_factor_comp = load_dataset("sovai/factor_signals", split="train").to_pandas().set_index(["ticker","date"])
Data is updated weekly as data arrives after market close US-EST time.
Tutorials are the best documentation — Factor Signals Tutorial
| Category | Details |
|---|---|
| Input Datasets | Filings, Financial Data |
| Models Used | OLS Regression |
| Model Outputs | Factors, Coefficients, Standard Errors |
Description
This dataset includes traditional accounting factors, alternative financial metrics, and advanced statistical analyses, enabling sophisticated financial modeling.
It could be used for bottom-up equity selection strategies and for the development of investment strategies.
Data Access
Comprehensive Factors
Comprehensive Factors dataset is a merged set of both accounting and alternative financial metrics, providing a holistic view of a company's financial status.
import sovai as sov
df_factor_comp = sov.data("factors/comprehensive",tickers=["MSFT","TSLA"])
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Accounting Factors
The Accounting Factors dataset includes key financial metrics related to accounting for various companies.
import sovai as sov
df_factor_actn = sov.data("factors/accounting",tickers=["MSFT","TSLA"])
Alternative Factors
This dataset contains alternative financial factors that are not typically found in standard financial statements.
import sovai as sov
df_factor_alt = sov.data("factors/alternative",tickers=["MSFT","TSLA"])
Coefficients Factors
The Coefficients Factors dataset includes various coefficients related to different financial metrics.
import sovai as sov
df_factor_coeff = sov.data("factors/coefficients",tickers=["MSFT","TSLA"])
Standard Errors Factors
This dataset provides standard errors for various financial metrics, useful for statistical analysis and modeling.
import sovai as sov
df_factor_std_err = get_data("factors/standard_errors",tickers=["MSFT","TSLA"])
T-Statistics Factors
The T-Statistics Factors dataset includes t-statistics for different financial metrics, offering insights into their significance.
import sovai as sov
df_factor_t_stat = get_data("factors/t_statistics",tickers=["MSFT","TSLA"])
Model Metrics
Model Metrics dataset includes various metrics such as R-squared, AIC, BIC, etc., that are crucial for evaluating the performance of financial models.
import sovai as sov
df_model_metrics = sov.data("factors/model_metrics",tickers=["MSFT","TSLA"])
This documentation provides a clear guide on how to access each dataset, and can be easily extended or modified as needed for additional datasets or details.
Data Dictionary
Financial Factors Dataset
| Name | Description |
|---|---|
ticker | The unique identifier for a publicly traded company's stock. |
date | The specific date for which the data is recorded. |
profitability | A measure of a company's efficiency in generating profits. |
value | Indicates the company's market value, often reflecting its perceived worth. |
solvency | Reflects the company's ability to meet its long-term financial obligations. |
cash_flow | Represents the amount of cash being transferred into and out of a business. |
illiquidity | Measures the difficulty of converting assets into cash quickly without significant loss in value. |
momentum_long_term | Indicates long-term trends in the company's stock price movements. |
momentum_medium_term | Represents medium-term trends in stock price movements. |
short_term_reversal | Reflects short-term price reversals in the stock market. |
price_volatility | Measures the degree of variation in a company's stock price over time. |
dividend_yield | The dividend per share, divided by the price per share, showing how much a company pays out in dividends each year relative to its stock price. |
earnings_consistency | Indicates the stability and predictability of a company's earnings over time. |
small_size | A factor indicating the company's size, with smaller companies potentially offering higher returns (albeit with higher risk). |
low_growth | Reflects the company's lower-than-average growth prospects. |
low_equity_issuance | Indicates a lower level of issuing new shares, which can be a sign of financial strength or limited growth prospects. |
bounce_dip | Measures the tendency of a stock to recover quickly after a significant drop. |
accrual_growth | Represents the growth rate in accruals, which are earnings not yet realized in cash. |
low_depreciation_growth | Indicates lower growth in depreciation expenses, which might suggest more stable capital expenditures. |
current_liquidity | A measure of a company's ability to pay off its short-term liabilities with its short-term assets. |
low_rnd | Reflects lower expenditures on research and development, which could indicate less investment in future growth. |
momentum | Overall momentum factor, representing the general trend in the stock price movements. |
market_risk | Indicates the risk of an investment in a particular market relative to the entire market. |
business_risk | Reflects the inherent risk associated with the specific business activities of a company. |
political_risk | Measures the potential for losses due to political instability or changes in a country's political environment. |
inflation_fluctuation | Indicates how sensitive the company is to fluctuations in inflation rates. |
inflation_persistence | Measures the company's exposure to persistent inflation trends. |
returns | Represents the financial returns generated by the company over a specified period. |
ModelMetrics Dataset
| Name | Description |
|---|---|
ticker | The unique stock ticker symbol identifying the company. |
date | The date for which the model metrics are calculated. |
rsquared | The R-squared value, indicating the proportion of variance in the dependent variable that's predictable from the independent variables. |
rsquared_adj | The adjusted R-squared value, accounting for the number of predictors in the model (provides a more accurate measure when dealing with multiple predictors). |
fvalue | The F-statistic value, used to determine if the overall regression model is a good fit for the data. |
aic | Akaike’s Information Criterion, a measure of the relative quality of statistical models for a given set of data. Lower AIC indicates a better model. |
bic | Bayesian Information Criterion, similar to AIC but with a higher penalty for models with more parameters. |
mse_resid | Mean Squared Error of the residuals, measuring the average of the squares of the errors, i.e., the average squared difference between the estimated values and the actual value. |
mse_total | Total Mean Squared Error, measuring the total variance in the observed data. |
In addition to the primary financial metrics and model metrics, our data suite includes three specialized datasets:
- Coefficients: This dataset provides regression coefficients for various financial factors. These coefficients offer insights into the relative importance and impact of each factor in financial models.
- Standard Errors: Accompanying the coefficients, this dataset provides the standard error for each coefficient. The standard errors are crucial for understanding the precision and reliability of the coefficients in the model.
- T-Statistics: This dataset contains the t-statistic for each coefficient, a key metric for determining the statistical significance of each financial factor. It helps in evaluating the robustness of the coefficients' impact in the model.
These datasets form a comprehensive toolkit for financial analysis, enabling detailed regression analysis and statistical evaluation of financial factors.
Factor Analysis Datasets
Our suite of Factor Analysis datasets offers a rich and comprehensive resource for investors seeking to deepen their understanding of market dynamics and enhance their investment strategies. Here's an overview of each dataset and its potential use cases:
Comprehensive Financial Metrics
- Accounting Factors (
FactorsAccounting): This dataset includes core financial metrics like profitability, solvency, and cash flow. It's invaluable for fundamental analysis, enabling investors to assess a company's financial health and operational efficiency. - Alternative Factors (
FactorsAlternative): Focusing on non-traditional financial metrics such as market risk, business risk, and political risk, this dataset helps in evaluating external factors that could impact a company's performance. - Comprehensive Factors (
FactorsComprehensive): A merged set of accounting and alternative factors providing a holistic view of a company's status. This dataset is perfect for a comprehensive financial analysis, blending traditional and modern financial metrics.
Advanced Statistical Analysis
- Coefficients (
FactorsCoefficients): Reveals the weight or importance of each financial factor in a statistical model. Investors can use this to identify which factors are most influential in predicting stock performance. - Standard Errors (
FactorsStandardErrors): Provides precision levels of the coefficients. This is crucial for investors in assessing the reliability of the coefficients in predictive models. - T-Statistics (
FactorsTStatistics): Offers insights into the statistical significance of each factor. Investors can use this to gauge the robustness and credibility of the factors in their investment models. - Model Metrics (
ModelMetrics): Includes advanced metrics like R-squared, AIC, and BIC. This dataset is essential for evaluating the effectiveness of financial models, helping investors to choose the most reliable models for their investment decisions.
Potential Use Cases
- Portfolio Construction and Optimization: By understanding the importance and impact of various financial factors, investors can construct and optimize their portfolios to maximize returns and minimize risks.
- Risk Assessment and Management: Alternative factors, along with risk-related metrics from other datasets, enable investors to conduct thorough risk assessments, leading to better risk management strategies.
- Market Trend Analysis: Long-term and medium-term momentum factors can be used for identifying prevailing market trends, aiding in strategic investment decisions.
- Statistical Model Validation: Investors can validate their financial models using model metrics and statistical datasets (Standard Errors and T-Statistics), ensuring robustness and reliability in their analysis.
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