pytolemaic
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0.15.4 | pytolemaic-0.15.4-py3-none-any.whl |
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Project: | pytolemaic |
Version: | 0.15.4 |
Filename: | pytolemaic-0.15.4-py3-none-any.whl |
Download: | [link] |
Size: | 113785 |
MD5: | 5c0d6b1b34358488ccbee12ecb62858d |
SHA256: | b3347291524fe88bb3c41b65366f37d1721938df593e7980b33c5967dda05228 |
Uploaded: | 2022-06-19 14:18:28 +0000 |
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METADATA · WHEEL · RECORD · top_level.txt
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Generator: | bdist_wheel (0.37.1) |
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Tag: | py3-none-any |
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top_level.txt
examples
pytolemaic
resources
tests