From e9e69d63f5ca26de31d8fe3c255bdf12038417df Mon Sep 17 00:00:00 2001 From: iguazio-cicd Date: Thu, 24 Jul 2025 14:31:43 +0000 Subject: [PATCH] Automatically generated by github-worflow[bot] for commit: 7e810cc --- README.md | 38 + catalog.json | 2 +- ...296f466b2cfe2517ffebfabe82451661e28f02.css | 2474 +++++++++++++++++ .../aggregate/1.3.0/static/aggregate.html | 2 +- .../aggregate/1.3.0/static/documentation.html | 2 +- .../aggregate/1.3.0/static/example.html | 2 +- .../aggregate/latest/static/aggregate.html | 2 +- .../latest/static/documentation.html | 2 +- .../aggregate/latest/static/example.html | 2 +- .../1.4.1/static/arc_to_parquet.html | 2 +- .../1.4.1/static/documentation.html | 2 +- .../arc_to_parquet/1.4.1/static/example.html | 2 +- .../latest/static/arc_to_parquet.html | 2 +- .../latest/static/documentation.html | 2 +- .../arc_to_parquet/latest/static/example.html | 2 +- .../1.7.0/static/auto_trainer.html | 2 +- .../1.7.0/static/documentation.html | 2 +- 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.../1.1.0/static/v2_model_tester.html | 2 +- .../latest/static/documentation.html | 2 +- .../latest/static/example.html | 2 +- .../latest/static/v2_model_tester.html | 2 +- 215 files changed, 2725 insertions(+), 213 deletions(-) create mode 100644 functions/development/_static/mystnb.8ecb98da25f57f5357bf6f572d296f466b2cfe2517ffebfabe82451661e28f02.css diff --git a/README.md b/README.md index af6c831e..558a7947 100644 --- a/README.md +++ b/README.md @@ -1,3 +1,41 @@ +### Change log [2025-07-24 14:31:41] +1. Item Updated: `model_server_tester` (from version: `1.1.0` to `1.1.0`) +2. Item Updated: `aggregate` (from version: `1.3.0` to `1.3.0`) +3. Item Updated: `translate` (from version: `0.1.0` to `0.1.0`) +4. Item Updated: `v2_model_server` (from version: `1.2.0` to `1.2.0`) +5. Item Updated: `gen_class_data` (from version: `1.2.0` to `1.2.0`) +6. Item Updated: `auto_trainer` (from version: `1.7.0` to `1.7.0`) +7. Item Updated: `silero_vad` (from version: `1.3.0` to `1.3.0`) +8. Item Updated: `text_to_audio_generator` (from version: `1.3.0` to `1.3.0`) +9. Item Updated: `describe` (from version: `1.3.0` to `1.3.0`) +10. Item Updated: `transcribe` (from version: `1.1.0` to `1.1.0`) +11. Item Updated: `pyannote_audio` (from version: `1.2.0` to `1.2.0`) +12. Item Updated: `test_classifier` (from version: `1.1.0` to `1.1.0`) +13. Item Updated: `feature_selection` (from version: `1.6.0` to `1.6.0`) +14. Item Updated: `tf2_serving` (from version: `1.1.0` to `1.1.0`) +15. Item Updated: `azureml_serving` (from version: `1.1.0` to `1.1.0`) +16. Item Updated: `sklearn_classifier` (from version: `1.1.1` to `1.1.1`) +17. Item Updated: `azureml_utils` (from version: `1.3.0` to `1.3.0`) +18. Item Updated: `describe_dask` (from version: `1.1.0` to `1.1.0`) +19. Item Updated: `mlflow_utils` (from version: `1.0.0` to `1.0.0`) +20. Item Updated: `github_utils` (from version: `1.1.0` to `1.1.0`) +21. Item Updated: `v2_model_tester` (from version: `1.1.0` to `1.1.0`) +22. Item Updated: `open_archive` (from version: `1.2.0` to `1.2.0`) +23. Item Updated: `describe_spark` (from version: `1.1.0` to `1.1.0`) +24. Item Updated: `sklearn_classifier_dask` (from version: `1.1.1` to `1.1.1`) +25. Item Updated: `batch_inference_v2` (from version: `2.6.0` to `2.6.0`) +26. Item Updated: `arc_to_parquet` (from version: `1.4.1` to `1.4.1`) +27. Item Updated: `send_email` (from version: `1.2.0` to `1.2.0`) +28. Item Updated: `structured_data_generator` (from version: `1.5.0` to `1.5.0`) +29. Item Updated: `question_answering` (from version: `0.4.0` to `0.4.0`) +30. Item Updated: `hugging_face_serving` (from version: `1.1.0` to `1.1.0`) +31. Item Updated: `noise_reduction` (from version: `1.0.0` to `1.0.0`) +32. Item Updated: `pii_recognizer` (from version: `0.3.0` to `0.3.0`) +33. Item Updated: `onnx_utils` (from version: `1.3.0` to `1.3.0`) +34. Item Updated: `batch_inference` (from version: `1.7.0` to `1.7.0`) +35. Item Updated: `load_dataset` (from version: `1.2.0` to `1.2.0`) +36. Item Updated: `model_server` (from version: `1.1.0` to `1.1.0`) + ### Change log [2025-06-04 14:51:06] 1. Item Updated: `v2_model_server` (from version: `1.2.0` to `1.2.0`) 2. 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translated ANSI escape sequences +Color values are copied from Jupyter Notebook +https://github.com/jupyter/notebook/blob/52581f8eda9b319eb0390ac77fe5903c38f81e3e/notebook/static/notebook/less/ansicolors.less#L14-L21 +Background colors from +https://nbsphinx.readthedocs.io/en/latest/code-cells.html#ANSI-Colors +*/ +div.highlight .-Color-Bold { + font-weight: bold; +} + +div.highlight .-Color[class*=-Black] { + color: #3E424D +} + +div.highlight .-Color[class*=-Red] { + color: #E75C58 +} + +div.highlight .-Color[class*=-Green] { + color: #00A250 +} + +div.highlight .-Color[class*=-Yellow] { + color: #DDB62B +} + +div.highlight .-Color[class*=-Blue] { + color: #208FFB +} + +div.highlight .-Color[class*=-Magenta] { + color: #D160C4 +} + +div.highlight .-Color[class*=-Cyan] { + color: #60C6C8 +} + +div.highlight .-Color[class*=-White] { + color: #C5C1B4 +} + +div.highlight .-Color[class*=-BGBlack] { + background-color: #3E424D +} + +div.highlight .-Color[class*=-BGRed] { + background-color: #E75C58 +} + +div.highlight .-Color[class*=-BGGreen] { + background-color: #00A250 +} + +div.highlight .-Color[class*=-BGYellow] { + background-color: #DDB62B +} + +div.highlight .-Color[class*=-BGBlue] { + background-color: #208FFB +} + +div.highlight .-Color[class*=-BGMagenta] { + background-color: #D160C4 +} + +div.highlight .-Color[class*=-BGCyan] { + background-color: #60C6C8 +} + +div.highlight .-Color[class*=-BGWhite] { + background-color: #C5C1B4 +} + +/* Font colors for 8-bit ANSI */ + +div.highlight .-Color[class*=-C0] { + color: #000000 +} + +div.highlight .-Color[class*=-BGC0] { + background-color: #000000 +} + +div.highlight .-Color[class*=-C1] { + color: #800000 +} + +div.highlight .-Color[class*=-BGC1] { + background-color: #800000 +} + +div.highlight .-Color[class*=-C2] { + color: #008000 +} + +div.highlight .-Color[class*=-BGC2] { + background-color: #008000 +} + +div.highlight .-Color[class*=-C3] { + color: #808000 +} + +div.highlight .-Color[class*=-BGC3] { + background-color: #808000 +} + +div.highlight .-Color[class*=-C4] { + color: #000080 +} + +div.highlight .-Color[class*=-BGC4] { + background-color: #000080 +} + +div.highlight .-Color[class*=-C5] { + color: #800080 +} + +div.highlight .-Color[class*=-BGC5] { + background-color: #800080 +} + +div.highlight .-Color[class*=-C6] { + color: #008080 +} + +div.highlight .-Color[class*=-BGC6] { + background-color: #008080 +} + +div.highlight .-Color[class*=-C7] { + color: #C0C0C0 +} + +div.highlight .-Color[class*=-BGC7] { + background-color: #C0C0C0 +} + +div.highlight .-Color[class*=-C8] { + color: #808080 +} + +div.highlight .-Color[class*=-BGC8] { + background-color: #808080 +} + +div.highlight .-Color[class*=-C9] { + color: #FF0000 +} + +div.highlight .-Color[class*=-BGC9] { + background-color: #FF0000 +} + +div.highlight .-Color[class*=-C10] { + color: #00FF00 +} + +div.highlight .-Color[class*=-BGC10] { + background-color: #00FF00 +} + +div.highlight .-Color[class*=-C11] { + color: #FFFF00 +} + +div.highlight .-Color[class*=-BGC11] { + background-color: #FFFF00 +} + +div.highlight .-Color[class*=-C12] { + color: #0000FF +} + +div.highlight .-Color[class*=-BGC12] { + background-color: #0000FF +} + +div.highlight .-Color[class*=-C13] { + color: #FF00FF +} + +div.highlight .-Color[class*=-BGC13] { + background-color: #FF00FF +} + +div.highlight .-Color[class*=-C14] { + color: #00FFFF +} + +div.highlight .-Color[class*=-BGC14] { + background-color: #00FFFF +} + +div.highlight .-Color[class*=-C15] { + color: #FFFFFF +} + +div.highlight .-Color[class*=-BGC15] { + background-color: #FFFFFF +} + +div.highlight .-Color[class*=-C16] { + color: #000000 +} + +div.highlight .-Color[class*=-BGC16] { + background-color: #000000 +} + +div.highlight .-Color[class*=-C17] { + color: #00005F +} + +div.highlight .-Color[class*=-BGC17] { + background-color: #00005F +} + +div.highlight .-Color[class*=-C18] { + color: #000087 +} + +div.highlight .-Color[class*=-BGC18] { + background-color: #000087 +} + +div.highlight .-Color[class*=-C19] { + color: #0000AF +} + +div.highlight .-Color[class*=-BGC19] { + background-color: #0000AF +} + +div.highlight .-Color[class*=-C20] { + color: #0000D7 +} + +div.highlight .-Color[class*=-BGC20] { + background-color: #0000D7 +} + +div.highlight .-Color[class*=-C21] { + color: #0000FF +} + +div.highlight .-Color[class*=-BGC21] { + background-color: #0000FF +} + +div.highlight .-Color[class*=-C22] { + color: #005F00 +} + +div.highlight .-Color[class*=-BGC22] { + background-color: #005F00 +} + +div.highlight .-Color[class*=-C23] { + color: #005F5F +} + +div.highlight .-Color[class*=-BGC23] { + background-color: #005F5F +} + +div.highlight .-Color[class*=-C24] { + color: #005F87 +} + +div.highlight .-Color[class*=-BGC24] { + background-color: #005F87 +} + +div.highlight .-Color[class*=-C25] { + color: #005FAF +} + +div.highlight .-Color[class*=-BGC25] { + background-color: #005FAF +} + +div.highlight .-Color[class*=-C26] { + color: #005FD7 +} + +div.highlight .-Color[class*=-BGC26] { + background-color: #005FD7 +} + +div.highlight .-Color[class*=-C27] { + color: #005FFF +} + +div.highlight .-Color[class*=-BGC27] { + background-color: #005FFF +} + +div.highlight .-Color[class*=-C28] { + color: #008700 +} + +div.highlight .-Color[class*=-BGC28] { + background-color: #008700 +} + +div.highlight .-Color[class*=-C29] { + color: #00875F +} + +div.highlight .-Color[class*=-BGC29] { + background-color: #00875F +} + +div.highlight .-Color[class*=-C30] { + color: #008787 +} + +div.highlight .-Color[class*=-BGC30] { + background-color: #008787 +} + +div.highlight .-Color[class*=-C31] { + color: #0087AF +} + +div.highlight .-Color[class*=-BGC31] { + background-color: #0087AF +} + +div.highlight .-Color[class*=-C32] { + color: #0087D7 +} + +div.highlight .-Color[class*=-BGC32] { + background-color: #0087D7 +} + +div.highlight .-Color[class*=-C33] { + color: #0087FF +} + +div.highlight .-Color[class*=-BGC33] { + background-color: #0087FF +} + +div.highlight .-Color[class*=-C34] { + color: #00AF00 +} + +div.highlight .-Color[class*=-BGC34] { + background-color: #00AF00 +} + +div.highlight .-Color[class*=-C35] { + color: #00AF5F +} + +div.highlight .-Color[class*=-BGC35] { + background-color: #00AF5F +} + +div.highlight .-Color[class*=-C36] { + color: #00AF87 +} + +div.highlight .-Color[class*=-BGC36] { + background-color: #00AF87 +} + +div.highlight .-Color[class*=-C37] { + color: #00AFAF +} + +div.highlight .-Color[class*=-BGC37] { + background-color: #00AFAF +} + +div.highlight .-Color[class*=-C38] { + color: #00AFD7 +} + +div.highlight .-Color[class*=-BGC38] { + background-color: #00AFD7 +} + +div.highlight .-Color[class*=-C39] { + color: #00AFFF +} + +div.highlight .-Color[class*=-BGC39] { + background-color: #00AFFF +} + +div.highlight .-Color[class*=-C40] { + color: #00D700 +} + +div.highlight .-Color[class*=-BGC40] { + background-color: #00D700 +} + +div.highlight .-Color[class*=-C41] { + color: #00D75F +} + +div.highlight .-Color[class*=-BGC41] { + background-color: #00D75F +} + +div.highlight .-Color[class*=-C42] { + color: #00D787 +} + +div.highlight .-Color[class*=-BGC42] { + background-color: #00D787 +} + +div.highlight .-Color[class*=-C43] { + color: #00D7AF +} + +div.highlight .-Color[class*=-BGC43] { + background-color: #00D7AF +} + +div.highlight .-Color[class*=-C44] { + color: #00D7D7 +} + +div.highlight .-Color[class*=-BGC44] { + background-color: #00D7D7 +} + +div.highlight .-Color[class*=-C45] { + color: #00D7FF +} + +div.highlight .-Color[class*=-BGC45] { + background-color: #00D7FF +} + +div.highlight .-Color[class*=-C46] { + color: #00FF00 +} + +div.highlight .-Color[class*=-BGC46] { + background-color: #00FF00 +} + +div.highlight .-Color[class*=-C47] { + color: #00FF5F +} + +div.highlight .-Color[class*=-BGC47] { + background-color: #00FF5F +} + +div.highlight .-Color[class*=-C48] { + color: #00FF87 +} + +div.highlight .-Color[class*=-BGC48] { + background-color: #00FF87 +} + +div.highlight .-Color[class*=-C49] { + color: #00FFAF +} + +div.highlight .-Color[class*=-BGC49] { + background-color: #00FFAF +} + +div.highlight .-Color[class*=-C50] { + color: #00FFD7 +} + +div.highlight .-Color[class*=-BGC50] { + background-color: #00FFD7 +} + +div.highlight .-Color[class*=-C51] { + color: #00FFFF +} + +div.highlight .-Color[class*=-BGC51] { + background-color: #00FFFF +} + +div.highlight .-Color[class*=-C52] { + color: #5F0000 +} + +div.highlight .-Color[class*=-BGC52] { + background-color: #5F0000 +} + +div.highlight .-Color[class*=-C53] { + color: #5F005F +} + +div.highlight .-Color[class*=-BGC53] { + background-color: #5F005F +} + +div.highlight .-Color[class*=-C54] { + color: #5F0087 +} + +div.highlight .-Color[class*=-BGC54] { + background-color: #5F0087 +} + +div.highlight .-Color[class*=-C55] { + color: #5F00AF +} + +div.highlight .-Color[class*=-BGC55] { + background-color: #5F00AF +} + +div.highlight .-Color[class*=-C56] { + color: #5F00D7 +} + +div.highlight .-Color[class*=-BGC56] { + background-color: #5F00D7 +} + +div.highlight .-Color[class*=-C57] { + color: #5F00FF +} + +div.highlight .-Color[class*=-BGC57] { + background-color: #5F00FF +} + +div.highlight .-Color[class*=-C58] { + color: #5F5F00 +} + +div.highlight .-Color[class*=-BGC58] { + background-color: #5F5F00 +} + +div.highlight .-Color[class*=-C59] { + color: #5F5F5F +} + +div.highlight .-Color[class*=-BGC59] { + background-color: #5F5F5F +} + +div.highlight .-Color[class*=-C60] { + color: #5F5F87 +} + +div.highlight .-Color[class*=-BGC60] { + background-color: #5F5F87 +} + +div.highlight .-Color[class*=-C61] { + color: #5F5FAF +} + +div.highlight .-Color[class*=-BGC61] { + background-color: #5F5FAF +} + +div.highlight .-Color[class*=-C62] { + color: #5F5FD7 +} + +div.highlight .-Color[class*=-BGC62] { + background-color: #5F5FD7 +} + +div.highlight .-Color[class*=-C63] { + color: #5F5FFF +} + +div.highlight .-Color[class*=-BGC63] { + background-color: #5F5FFF +} + +div.highlight .-Color[class*=-C64] { + color: #5F8700 +} + +div.highlight .-Color[class*=-BGC64] { + background-color: #5F8700 +} + +div.highlight .-Color[class*=-C65] { + color: #5F875F +} + +div.highlight .-Color[class*=-BGC65] { + background-color: #5F875F +} + +div.highlight .-Color[class*=-C66] { + color: #5F8787 +} + +div.highlight .-Color[class*=-BGC66] { + background-color: #5F8787 +} + +div.highlight .-Color[class*=-C67] { + color: #5F87AF +} + +div.highlight .-Color[class*=-BGC67] { + background-color: #5F87AF +} + +div.highlight .-Color[class*=-C68] { + color: #5F87D7 +} + +div.highlight .-Color[class*=-BGC68] { + background-color: #5F87D7 +} + +div.highlight .-Color[class*=-C69] { + color: #5F87FF +} + +div.highlight .-Color[class*=-BGC69] { + background-color: #5F87FF +} + +div.highlight .-Color[class*=-C70] { + color: #5FAF00 +} + +div.highlight .-Color[class*=-BGC70] { + background-color: #5FAF00 +} + +div.highlight .-Color[class*=-C71] { + color: #5FAF5F +} + +div.highlight .-Color[class*=-BGC71] { + background-color: #5FAF5F +} + +div.highlight .-Color[class*=-C72] { + color: #5FAF87 +} + +div.highlight .-Color[class*=-BGC72] { + background-color: #5FAF87 +} + +div.highlight .-Color[class*=-C73] { + color: #5FAFAF +} + +div.highlight .-Color[class*=-BGC73] { + background-color: #5FAFAF +} + +div.highlight .-Color[class*=-C74] { + color: #5FAFD7 +} + +div.highlight .-Color[class*=-BGC74] { + background-color: #5FAFD7 +} + +div.highlight .-Color[class*=-C75] { + color: #5FAFFF +} + +div.highlight .-Color[class*=-BGC75] { + background-color: #5FAFFF +} + +div.highlight .-Color[class*=-C76] { + color: #5FD700 +} + +div.highlight .-Color[class*=-BGC76] { + background-color: #5FD700 +} + +div.highlight .-Color[class*=-C77] { + color: #5FD75F +} + +div.highlight .-Color[class*=-BGC77] { + background-color: #5FD75F +} + +div.highlight .-Color[class*=-C78] { + color: #5FD787 +} + +div.highlight .-Color[class*=-BGC78] { + background-color: #5FD787 +} + +div.highlight .-Color[class*=-C79] { + color: #5FD7AF +} + +div.highlight .-Color[class*=-BGC79] { + background-color: #5FD7AF +} + +div.highlight .-Color[class*=-C80] { + color: #5FD7D7 +} + +div.highlight .-Color[class*=-BGC80] { + background-color: #5FD7D7 +} + +div.highlight .-Color[class*=-C81] { + color: #5FD7FF +} + +div.highlight .-Color[class*=-BGC81] { + background-color: #5FD7FF +} + +div.highlight .-Color[class*=-C82] { + color: #5FFF00 +} + +div.highlight .-Color[class*=-BGC82] { + background-color: #5FFF00 +} + +div.highlight .-Color[class*=-C83] { + color: #5FFF5F +} + +div.highlight .-Color[class*=-BGC83] { + background-color: #5FFF5F +} + +div.highlight .-Color[class*=-C84] { + color: #5FFF87 +} + +div.highlight .-Color[class*=-BGC84] { + background-color: #5FFF87 +} + +div.highlight .-Color[class*=-C85] { + color: #5FFFAF +} + +div.highlight .-Color[class*=-BGC85] { + background-color: #5FFFAF +} + +div.highlight .-Color[class*=-C86] { + color: #5FFFD7 +} + +div.highlight .-Color[class*=-BGC86] { + background-color: #5FFFD7 +} + +div.highlight .-Color[class*=-C87] { + color: #5FFFFF +} + +div.highlight .-Color[class*=-BGC87] { + background-color: #5FFFFF +} + +div.highlight .-Color[class*=-C88] { + color: #870000 +} + +div.highlight .-Color[class*=-BGC88] { + background-color: #870000 +} + +div.highlight .-Color[class*=-C89] { + color: #87005F +} + +div.highlight .-Color[class*=-BGC89] { + background-color: #87005F +} + +div.highlight .-Color[class*=-C90] { + color: #870087 +} + +div.highlight .-Color[class*=-BGC90] { + background-color: #870087 +} + +div.highlight .-Color[class*=-C91] { + color: #8700AF +} + +div.highlight .-Color[class*=-BGC91] { + background-color: #8700AF +} + +div.highlight .-Color[class*=-C92] { + color: #8700D7 +} + +div.highlight .-Color[class*=-BGC92] { + background-color: #8700D7 +} + +div.highlight .-Color[class*=-C93] { + color: #8700FF +} + +div.highlight .-Color[class*=-BGC93] { + background-color: #8700FF +} + +div.highlight .-Color[class*=-C94] { + color: #875F00 +} + +div.highlight .-Color[class*=-BGC94] { + background-color: #875F00 +} + +div.highlight .-Color[class*=-C95] { + color: #875F5F +} + +div.highlight .-Color[class*=-BGC95] { + background-color: #875F5F +} + +div.highlight .-Color[class*=-C96] { + color: #875F87 +} + +div.highlight .-Color[class*=-BGC96] { + background-color: #875F87 +} + +div.highlight .-Color[class*=-C97] { + color: #875FAF +} + +div.highlight .-Color[class*=-BGC97] { + background-color: #875FAF +} + +div.highlight .-Color[class*=-C98] { + color: #875FD7 +} + +div.highlight .-Color[class*=-BGC98] { + background-color: #875FD7 +} + +div.highlight .-Color[class*=-C99] { + color: #875FFF +} + +div.highlight .-Color[class*=-BGC99] { + background-color: #875FFF +} + +div.highlight .-Color[class*=-C100] { + color: #878700 +} + +div.highlight .-Color[class*=-BGC100] { + background-color: #878700 +} + +div.highlight .-Color[class*=-C101] { + color: #87875F +} + +div.highlight .-Color[class*=-BGC101] { + background-color: #87875F +} + +div.highlight .-Color[class*=-C102] { + color: #878787 +} + +div.highlight .-Color[class*=-BGC102] { + background-color: #878787 +} + +div.highlight .-Color[class*=-C103] { + color: #8787AF +} + +div.highlight .-Color[class*=-BGC103] { + background-color: #8787AF +} + +div.highlight .-Color[class*=-C104] { + color: #8787D7 +} + +div.highlight .-Color[class*=-BGC104] { + background-color: #8787D7 +} + +div.highlight .-Color[class*=-C105] { + color: #8787FF +} + +div.highlight .-Color[class*=-BGC105] { + background-color: #8787FF +} + +div.highlight .-Color[class*=-C106] { + color: #87AF00 +} + +div.highlight .-Color[class*=-BGC106] { + background-color: #87AF00 +} + +div.highlight .-Color[class*=-C107] { + color: #87AF5F +} + +div.highlight .-Color[class*=-BGC107] { + background-color: #87AF5F +} + +div.highlight .-Color[class*=-C108] { + color: #87AF87 +} + +div.highlight .-Color[class*=-BGC108] { + background-color: #87AF87 +} + +div.highlight .-Color[class*=-C109] { + color: #87AFAF +} + +div.highlight .-Color[class*=-BGC109] { + background-color: #87AFAF +} + +div.highlight .-Color[class*=-C110] { + color: #87AFD7 +} + +div.highlight .-Color[class*=-BGC110] { + background-color: #87AFD7 +} + +div.highlight .-Color[class*=-C111] { + color: #87AFFF +} + +div.highlight .-Color[class*=-BGC111] { + background-color: #87AFFF +} + +div.highlight .-Color[class*=-C112] { + color: #87D700 +} + +div.highlight .-Color[class*=-BGC112] { + background-color: #87D700 +} + +div.highlight .-Color[class*=-C113] { + color: #87D75F +} + +div.highlight .-Color[class*=-BGC113] { + background-color: #87D75F +} + +div.highlight .-Color[class*=-C114] { + color: #87D787 +} + +div.highlight .-Color[class*=-BGC114] { + background-color: #87D787 +} + +div.highlight .-Color[class*=-C115] { + color: #87D7AF +} + +div.highlight .-Color[class*=-BGC115] { + background-color: #87D7AF +} + +div.highlight .-Color[class*=-C116] { + color: #87D7D7 +} + +div.highlight .-Color[class*=-BGC116] { + background-color: #87D7D7 +} + +div.highlight .-Color[class*=-C117] { + color: #87D7FF +} + +div.highlight .-Color[class*=-BGC117] { + background-color: #87D7FF +} + +div.highlight .-Color[class*=-C118] { + color: #87FF00 +} + +div.highlight .-Color[class*=-BGC118] { + background-color: #87FF00 +} + +div.highlight .-Color[class*=-C119] { + color: #87FF5F +} + +div.highlight .-Color[class*=-BGC119] { + background-color: #87FF5F +} + +div.highlight .-Color[class*=-C120] { + color: #87FF87 +} + +div.highlight .-Color[class*=-BGC120] { + background-color: #87FF87 +} + +div.highlight .-Color[class*=-C121] { + color: #87FFAF +} + +div.highlight .-Color[class*=-BGC121] { + background-color: #87FFAF +} + +div.highlight .-Color[class*=-C122] { + color: #87FFD7 +} + +div.highlight .-Color[class*=-BGC122] { + background-color: #87FFD7 +} + +div.highlight 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a/functions/development/question_answering/latest/static/example.html b/functions/development/question_answering/latest/static/example.html index 5f8422d9..e54ca5e5 100644 --- a/functions/development/question_answering/latest/static/example.html +++ b/functions/development/question_answering/latest/static/example.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/question_answering/latest/static/question_answering.html b/functions/development/question_answering/latest/static/question_answering.html index d077dfed..79c5db68 100644 --- a/functions/development/question_answering/latest/static/question_answering.html +++ b/functions/development/question_answering/latest/static/question_answering.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/send_email/1.2.0/static/documentation.html b/functions/development/send_email/1.2.0/static/documentation.html index a5315478..ab35e980 100644 --- a/functions/development/send_email/1.2.0/static/documentation.html +++ b/functions/development/send_email/1.2.0/static/documentation.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/send_email/1.2.0/static/example.html b/functions/development/send_email/1.2.0/static/example.html index 752eb14c..4e6a237e 100644 --- a/functions/development/send_email/1.2.0/static/example.html +++ b/functions/development/send_email/1.2.0/static/example.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/send_email/1.2.0/static/send_email.html b/functions/development/send_email/1.2.0/static/send_email.html index 6333b120..e806359d 100644 --- a/functions/development/send_email/1.2.0/static/send_email.html +++ b/functions/development/send_email/1.2.0/static/send_email.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/send_email/latest/static/documentation.html b/functions/development/send_email/latest/static/documentation.html index a5315478..ab35e980 100644 --- a/functions/development/send_email/latest/static/documentation.html +++ b/functions/development/send_email/latest/static/documentation.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/send_email/latest/static/example.html b/functions/development/send_email/latest/static/example.html index 752eb14c..4e6a237e 100644 --- a/functions/development/send_email/latest/static/example.html +++ b/functions/development/send_email/latest/static/example.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/send_email/latest/static/send_email.html b/functions/development/send_email/latest/static/send_email.html index 6333b120..e806359d 100644 --- a/functions/development/send_email/latest/static/send_email.html +++ b/functions/development/send_email/latest/static/send_email.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/silero_vad/1.3.0/static/documentation.html b/functions/development/silero_vad/1.3.0/static/documentation.html index a24baa8e..344c2421 100644 --- a/functions/development/silero_vad/1.3.0/static/documentation.html +++ b/functions/development/silero_vad/1.3.0/static/documentation.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/silero_vad/1.3.0/static/example.html b/functions/development/silero_vad/1.3.0/static/example.html index bb7366a9..0eb7542f 100644 --- a/functions/development/silero_vad/1.3.0/static/example.html +++ b/functions/development/silero_vad/1.3.0/static/example.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/silero_vad/1.3.0/static/silero_vad.html b/functions/development/silero_vad/1.3.0/static/silero_vad.html index 502167b2..feae13a6 100644 --- a/functions/development/silero_vad/1.3.0/static/silero_vad.html +++ b/functions/development/silero_vad/1.3.0/static/silero_vad.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/silero_vad/latest/static/documentation.html b/functions/development/silero_vad/latest/static/documentation.html index a24baa8e..344c2421 100644 --- a/functions/development/silero_vad/latest/static/documentation.html +++ b/functions/development/silero_vad/latest/static/documentation.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/silero_vad/latest/static/example.html b/functions/development/silero_vad/latest/static/example.html index bb7366a9..0eb7542f 100644 --- a/functions/development/silero_vad/latest/static/example.html +++ b/functions/development/silero_vad/latest/static/example.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/silero_vad/latest/static/silero_vad.html b/functions/development/silero_vad/latest/static/silero_vad.html index 502167b2..feae13a6 100644 --- a/functions/development/silero_vad/latest/static/silero_vad.html +++ b/functions/development/silero_vad/latest/static/silero_vad.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/sklearn_classifier/1.1.1/static/documentation.html b/functions/development/sklearn_classifier/1.1.1/static/documentation.html index 48056cda..1f3427a2 100644 --- a/functions/development/sklearn_classifier/1.1.1/static/documentation.html +++ b/functions/development/sklearn_classifier/1.1.1/static/documentation.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/sklearn_classifier/1.1.1/static/example.html b/functions/development/sklearn_classifier/1.1.1/static/example.html index 9c4249a6..05d293d8 100644 --- a/functions/development/sklearn_classifier/1.1.1/static/example.html +++ b/functions/development/sklearn_classifier/1.1.1/static/example.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/sklearn_classifier/1.1.1/static/sklearn_classifier.html b/functions/development/sklearn_classifier/1.1.1/static/sklearn_classifier.html index db33df83..e229f241 100644 --- a/functions/development/sklearn_classifier/1.1.1/static/sklearn_classifier.html +++ b/functions/development/sklearn_classifier/1.1.1/static/sklearn_classifier.html @@ -20,7 +20,7 @@ - + diff --git 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b/functions/development/structured_data_generator/1.5.0/static/documentation.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/structured_data_generator/1.5.0/static/example.html b/functions/development/structured_data_generator/1.5.0/static/example.html index 589080f3..1573d754 100644 --- a/functions/development/structured_data_generator/1.5.0/static/example.html +++ b/functions/development/structured_data_generator/1.5.0/static/example.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/structured_data_generator/1.5.0/static/structured_data_generator.html b/functions/development/structured_data_generator/1.5.0/static/structured_data_generator.html index 51e05a22..b665f268 100644 --- a/functions/development/structured_data_generator/1.5.0/static/structured_data_generator.html +++ b/functions/development/structured_data_generator/1.5.0/static/structured_data_generator.html @@ -20,7 +20,7 @@ - + diff --git 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100644 --- a/functions/development/structured_data_generator/latest/static/structured_data_generator.html +++ b/functions/development/structured_data_generator/latest/static/structured_data_generator.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/tags.json b/functions/development/tags.json index 320172b3..287a3a4a 100644 --- a/functions/development/tags.json +++ b/functions/development/tags.json @@ -1 +1 @@ -{"categories": ["model-testing", "etl", "audio", "pytorch", "data-preparation", "genai", "model-serving", "deep-learning", "data-generation", "model-training", "data-analysis", "machine-learning", "utils", "huggingface", "monitoring", "NLP"], "kind": ["serving", "job", "nuclio:serving"]} \ No newline at end of file +{"categories": ["data-preparation", "data-analysis", "utils", "audio", "deep-learning", "data-generation", "NLP", "machine-learning", "pytorch", "monitoring", "huggingface", "model-testing", "model-serving", "etl", "model-training", "genai"], "kind": 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--- a/functions/development/tf2_serving/latest/static/documentation.html +++ b/functions/development/tf2_serving/latest/static/documentation.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/tf2_serving/latest/static/example.html b/functions/development/tf2_serving/latest/static/example.html index bded5cf6..a27ca4ac 100644 --- a/functions/development/tf2_serving/latest/static/example.html +++ b/functions/development/tf2_serving/latest/static/example.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/tf2_serving/latest/static/tf2_serving.html b/functions/development/tf2_serving/latest/static/tf2_serving.html index 9e33ec1e..de5fa741 100644 --- a/functions/development/tf2_serving/latest/static/tf2_serving.html +++ b/functions/development/tf2_serving/latest/static/tf2_serving.html @@ -20,7 +20,7 @@ - + diff --git a/functions/development/transcribe/1.1.0/static/documentation.html b/functions/development/transcribe/1.1.0/static/documentation.html index 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