diff --git a/README.md b/README.md index 08f6d23f..7b731454 100644 --- a/README.md +++ b/README.md @@ -1,3 +1,41 @@ +### Change log [2025-07-31 07:19:18] +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: `0.2.0` to `0.2.0`) +4. Item Updated: `v2_model_server` (from version: `1.2.0` to `1.2.0`) +5. Item Updated: `gen_class_data` (from version: `1.3.0` to `1.3.0`) +6. Item Updated: `auto_trainer` (from version: `1.7.0` to `1.7.0`) +7. Item Updated: `silero_vad` (from version: `1.4.0` to `1.4.0`) +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: `1.2.0` to `1.2.0`) +11. Item Updated: `pyannote_audio` (from version: `1.3.0` to `1.3.0`) +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: `1.4.0` to `1.4.0`) +18. Item Updated: `describe_dask` (from version: `1.1.0` to `1.1.0`) +19. Item Updated: `mlflow_utils` (from version: `1.1.0` to `1.1.0`) +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: `1.5.0` to `1.5.0`) +27. Item Updated: `send_email` (from version: `1.2.0` to `1.2.0`) +28. Item Updated: `structured_data_generator` (from version: `1.6.0` to `1.6.0`) +29. Item Updated: `question_answering` (from version: `0.5.0` to `0.5.0`) +30. Item Updated: `hugging_face_serving` (from version: `1.1.0` to `1.1.0`) +31. Item Updated: `noise_reduction` (from version: `1.1.0` to `1.1.0`) +32. Item Updated: `pii_recognizer` (from version: `0.4.0` to `0.4.0`) +33. Item Updated: `onnx_utils` (from version: `1.3.0` to `1.3.0`) +34. Item Updated: `batch_inference` (from version: `1.8.0` to `1.8.0`) +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 [2025-07-27 06:51:56] 1. Item Updated: `model_server_tester` (from version: `1.1.0` to `1.1.0`) 2. 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a/functions/development/mlflow_utils/1.1.0/src/item.yaml +++ b/functions/development/mlflow_utils/1.1.0/src/item.yaml @@ -23,7 +23,7 @@ spec: image: mlrun/mlrun kind: serving requirements: - - mlflow==2.12.2 + - mlflow==2.20.3 - lightgbm - xgboost url: '' diff --git a/functions/development/mlflow_utils/1.1.0/src/requirements.txt b/functions/development/mlflow_utils/1.1.0/src/requirements.txt index 2a40b1a8..18395000 100644 --- a/functions/development/mlflow_utils/1.1.0/src/requirements.txt +++ b/functions/development/mlflow_utils/1.1.0/src/requirements.txt @@ -1,3 +1,3 @@ -mlflow==2.20.2 +mlflow==2.20.3 lightgbm xgboost diff --git a/functions/development/mlflow_utils/1.1.0/static/item.html b/functions/development/mlflow_utils/1.1.0/static/item.html index d193c1fa..455e929c 100644 --- a/functions/development/mlflow_utils/1.1.0/static/item.html +++ b/functions/development/mlflow_utils/1.1.0/static/item.html @@ -53,7 +53,7 @@ image: mlrun/mlrun kind: serving requirements: - - mlflow==2.12.2 + - mlflow==2.20.3 - lightgbm - xgboost url: '' diff --git a/functions/development/mlflow_utils/latest/src/item.yaml b/functions/development/mlflow_utils/latest/src/item.yaml index 27e61ab4..fd331024 100644 --- a/functions/development/mlflow_utils/latest/src/item.yaml +++ b/functions/development/mlflow_utils/latest/src/item.yaml @@ -23,7 +23,7 @@ spec: image: mlrun/mlrun kind: serving requirements: - - mlflow==2.12.2 + - mlflow==2.20.3 - lightgbm - xgboost url: '' diff --git a/functions/development/mlflow_utils/latest/src/requirements.txt b/functions/development/mlflow_utils/latest/src/requirements.txt index 2a40b1a8..18395000 100644 --- a/functions/development/mlflow_utils/latest/src/requirements.txt +++ b/functions/development/mlflow_utils/latest/src/requirements.txt @@ -1,3 +1,3 @@ -mlflow==2.20.2 +mlflow==2.20.3 lightgbm xgboost diff --git a/functions/development/mlflow_utils/latest/static/item.html b/functions/development/mlflow_utils/latest/static/item.html index d193c1fa..455e929c 100644 --- a/functions/development/mlflow_utils/latest/static/item.html +++ b/functions/development/mlflow_utils/latest/static/item.html @@ -53,7 +53,7 @@ image: mlrun/mlrun kind: serving requirements: - - mlflow==2.12.2 + - mlflow==2.20.3 - lightgbm - xgboost url: '' diff --git a/functions/development/tags.json b/functions/development/tags.json index 45193935..adf8a1a9 100644 --- a/functions/development/tags.json +++ b/functions/development/tags.json @@ -1 +1 @@ -{"kind": ["serving", "nuclio:serving", "job"], "categories": ["machine-learning", "data-analysis", "utils", "genai", "model-testing", "data-preparation", "audio", "data-generation", "deep-learning", "model-training", "NLP", "model-serving", "monitoring"]} \ No newline at end of file +{"categories": ["utils", "model-training", "data-analysis", "genai", "machine-learning", "model-testing", "model-serving", "NLP", "audio", "data-generation", "deep-learning", "data-preparation", "monitoring"], "kind": 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