tid-logistic-regression-model
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1.0.10 | tid_logistic_regression_model-1.0.10-py3-none-any.whl |
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Project: | tid-logistic-regression-model |
Version: | 1.0.10 |
Filename: | tid_logistic_regression_model-1.0.10-py3-none-any.whl |
Download: | [link] |
Size: | 47421 |
MD5: | dac153c42ae0bda55f411cc5222d34db |
SHA256: | 3c7ce88a3203c6baa39f9f0f56c2b6862b7a73ba85647eec6842f898b8332ca2 |
Uploaded: | 2021-09-24 21:19:13 +0000 |
dist-info
METADATA · WHEEL · RECORD · top_level.txt
METADATA
WHEEL
Wheel-Version: | 1.0 |
Generator: | bdist_wheel (0.37.0) |
Root-Is-Purelib: | true |
Tag: | py3-none-any |
RECORD
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top_level.txt
logistic_regression_model
main