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functions/README.md

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@@ -9,40 +9,40 @@ it is expected that contributors follow certain guidelines/protocols (please chi
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| Name | Description | Kind | Categories |
1111
| --- | --- | --- | --- |
12-
| [aggregate](https://github.com/mlrun/functions/tree/development/functions/src/aggregate) | Rolling aggregation over Metrics and Lables according to specifications | job | data-preparation |
13-
| [arc_to_parquet](https://github.com/mlrun/functions/tree/development/functions/src/arc_to_parquet) | retrieve remote archive, open and save as parquet | job | utils |
14-
| [auto_trainer](https://github.com/mlrun/functions/tree/development/functions/src/auto_trainer) | Automatic train, evaluate and predict functions for the ML frameworks - Scikit-Learn, XGBoost and LightGBM. | job | machine-learning, model-training |
15-
| [azureml_serving](https://github.com/mlrun/functions/tree/development/functions/src/azureml_serving) | AzureML serving function | serving | machine-learning, model-serving |
16-
| [azureml_utils](https://github.com/mlrun/functions/tree/development/functions/src/azureml_utils) | Azure AutoML integration in MLRun, including utils functions for training models on Azure AutoML platfrom. | job | model-serving, utils |
17-
| [batch_inference](https://github.com/mlrun/functions/tree/development/functions/src/batch_inference) | Batch inference (also knows as prediction) for the common ML frameworks (SciKit-Learn, XGBoost and LightGBM) while performing data drift analysis. | job | model-serving |
18-
| [batch_inference_v2](https://github.com/mlrun/functions/tree/development/functions/src/batch_inference_v2) | Batch inference (also knows as prediction) for the common ML frameworks (SciKit-Learn, XGBoost and LightGBM) while performing data drift analysis. | job | model-serving |
19-
| [describe](https://github.com/mlrun/functions/tree/development/functions/src/describe) | describe and visualizes dataset stats | job | data-analysis |
20-
| [describe_dask](https://github.com/mlrun/functions/tree/development/functions/src/describe_dask) | describe and visualizes dataset stats | job | data-analysis |
21-
| [describe_spark](https://github.com/mlrun/functions/tree/development/functions/src/describe_spark) | | job | data-analysis |
22-
| [feature_selection](https://github.com/mlrun/functions/tree/development/functions/src/feature_selection) | Select features through multiple Statistical and Model filters | job | data-preparation, machine-learning |
23-
| [gen_class_data](https://github.com/mlrun/functions/tree/development/functions/src/gen_class_data) | Create a binary classification sample dataset and save. | job | data-generation |
24-
| [github_utils](https://github.com/mlrun/functions/tree/development/functions/src/github_utils) | add comments to github pull request | job | utils |
25-
| [hugging_face_serving](https://github.com/mlrun/functions/tree/development/functions/src/hugging_face_serving) | Generic Hugging Face model server. | serving | genai, model-serving |
26-
| [load_dataset](https://github.com/mlrun/functions/tree/development/functions/src/load_dataset) | load a toy dataset from scikit-learn | job | data-preparation |
27-
| [mlflow_utils](https://github.com/mlrun/functions/tree/development/functions/src/mlflow_utils) | Mlflow model server, and additional utils. | serving | model-serving, utils |
28-
| [model_server](https://github.com/mlrun/functions/tree/development/functions/src/model_server) | generic sklearn model server | nuclio:serving | model-serving, machine-learning |
29-
| [model_server_tester](https://github.com/mlrun/functions/tree/development/functions/src/model_server_tester) | test model servers | job | monitoring, model-serving |
30-
| [noise_reduction](https://github.com/mlrun/functions/tree/development/functions/src/noise_reduction) | Reduce noise from audio files | job | data-preparation, audio |
31-
| [onnx_utils](https://github.com/mlrun/functions/tree/development/functions/src/onnx_utils) | ONNX intigration in MLRun, some utils functions for the ONNX framework, optimizing and converting models from different framework to ONNX using MLRun. | job | utils, deep-learning |
32-
| [open_archive](https://github.com/mlrun/functions/tree/development/functions/src/open_archive) | Open a file/object archive into a target directory | job | utils |
33-
| [pii_recognizer](https://github.com/mlrun/functions/tree/development/functions/src/pii_recognizer) | This function is used to recognize PII in a directory of text files | job | data-preparation, NLP |
34-
| [pyannote_audio](https://github.com/mlrun/functions/tree/development/functions/src/pyannote_audio) | pyannote's speech diarization of audio files | job | deep-learning, audio |
35-
| [question_answering](https://github.com/mlrun/functions/tree/development/functions/src/question_answering) | GenAI approach of question answering on a given data | job | genai |
36-
| [send_email](https://github.com/mlrun/functions/tree/development/functions/src/send_email) | Send Email messages through SMTP server | job | utils |
37-
| [silero_vad](https://github.com/mlrun/functions/tree/development/functions/src/silero_vad) | Silero VAD (Voice Activity Detection) functions. | job | deep-learning, audio |
38-
| [sklearn_classifier](https://github.com/mlrun/functions/tree/development/functions/src/sklearn_classifier) | train any classifier using scikit-learn's API | job | machine-learning, model-training |
39-
| [sklearn_classifier_dask](https://github.com/mlrun/functions/tree/development/functions/src/sklearn_classifier_dask) | train any classifier using scikit-learn's API over Dask | job | machine-learning, model-training |
40-
| [structured_data_generator](https://github.com/mlrun/functions/tree/development/functions/src/structured_data_generator) | GenAI approach of generating structured data according to a given schema | job | data-generation, genai |
41-
| [test_classifier](https://github.com/mlrun/functions/tree/development/functions/src/test_classifier) | test a classifier using held-out or new data | job | machine-learning, model-testing |
42-
| [text_to_audio_generator](https://github.com/mlrun/functions/tree/development/functions/src/text_to_audio_generator) | Generate audio file from text using different speakers | job | data-generation, audio |
43-
| [tf2_serving](https://github.com/mlrun/functions/tree/development/functions/src/tf2_serving) | tf2 image classification server | nuclio:serving | model-serving, machine-learning |
44-
| [transcribe](https://github.com/mlrun/functions/tree/development/functions/src/transcribe) | Transcribe audio files into text files | job | audio, genai |
45-
| [translate](https://github.com/mlrun/functions/tree/development/functions/src/translate) | Translate text files from one language to another | job | genai, NLP |
46-
| [v2_model_server](https://github.com/mlrun/functions/tree/development/functions/src/v2_model_server) | generic sklearn model server | serving | model-serving, machine-learning |
47-
| [v2_model_tester](https://github.com/mlrun/functions/tree/development/functions/src/v2_model_tester) | test v2 model servers | job | model-testing, machine-learning |
12+
| [aggregate](https://github.com/mlrun/functions/tree/master/functions/src/aggregate) | Rolling aggregation over Metrics and Lables according to specifications | job | data-preparation |
13+
| [arc_to_parquet](https://github.com/mlrun/functions/tree/master/functions/src/arc_to_parquet) | retrieve remote archive, open and save as parquet | job | utils |
14+
| [auto_trainer](https://github.com/mlrun/functions/tree/master/functions/src/auto_trainer) | Automatic train, evaluate and predict functions for the ML frameworks - Scikit-Learn, XGBoost and LightGBM. | job | machine-learning, model-training |
15+
| [azureml_serving](https://github.com/mlrun/functions/tree/master/functions/src/azureml_serving) | AzureML serving function | serving | machine-learning, model-serving |
16+
| [azureml_utils](https://github.com/mlrun/functions/tree/master/functions/src/azureml_utils) | Azure AutoML integration in MLRun, including utils functions for training models on Azure AutoML platfrom. | job | model-serving, utils |
17+
| [batch_inference](https://github.com/mlrun/functions/tree/master/functions/src/batch_inference) | Batch inference (also knows as prediction) for the common ML frameworks (SciKit-Learn, XGBoost and LightGBM) while performing data drift analysis. | job | model-serving |
18+
| [batch_inference_v2](https://github.com/mlrun/functions/tree/master/functions/src/batch_inference_v2) | Batch inference (also knows as prediction) for the common ML frameworks (SciKit-Learn, XGBoost and LightGBM) while performing data drift analysis. | job | model-serving |
19+
| [describe](https://github.com/mlrun/functions/tree/master/functions/src/describe) | describe and visualizes dataset stats | job | data-analysis |
20+
| [describe_dask](https://github.com/mlrun/functions/tree/master/functions/src/describe_dask) | describe and visualizes dataset stats | job | data-analysis |
21+
| [describe_spark](https://github.com/mlrun/functions/tree/master/functions/src/describe_spark) | | job | data-analysis |
22+
| [feature_selection](https://github.com/mlrun/functions/tree/master/functions/src/feature_selection) | Select features through multiple Statistical and Model filters | job | data-preparation, machine-learning |
23+
| [gen_class_data](https://github.com/mlrun/functions/tree/master/functions/src/gen_class_data) | Create a binary classification sample dataset and save. | job | data-generation |
24+
| [github_utils](https://github.com/mlrun/functions/tree/master/functions/src/github_utils) | add comments to github pull request | job | utils |
25+
| [hugging_face_serving](https://github.com/mlrun/functions/tree/master/functions/src/hugging_face_serving) | Generic Hugging Face model server. | serving | genai, model-serving |
26+
| [load_dataset](https://github.com/mlrun/functions/tree/master/functions/src/load_dataset) | load a toy dataset from scikit-learn | job | data-preparation |
27+
| [mlflow_utils](https://github.com/mlrun/functions/tree/master/functions/src/mlflow_utils) | Mlflow model server, and additional utils. | serving | model-serving, utils |
28+
| [model_server](https://github.com/mlrun/functions/tree/master/functions/src/model_server) | generic sklearn model server | nuclio:serving | model-serving, machine-learning |
29+
| [model_server_tester](https://github.com/mlrun/functions/tree/master/functions/src/model_server_tester) | test model servers | job | monitoring, model-serving |
30+
| [noise_reduction](https://github.com/mlrun/functions/tree/master/functions/src/noise_reduction) | Reduce noise from audio files | job | data-preparation, audio |
31+
| [onnx_utils](https://github.com/mlrun/functions/tree/master/functions/src/onnx_utils) | ONNX intigration in MLRun, some utils functions for the ONNX framework, optimizing and converting models from different framework to ONNX using MLRun. | job | utils, deep-learning |
32+
| [open_archive](https://github.com/mlrun/functions/tree/master/functions/src/open_archive) | Open a file/object archive into a target directory | job | utils |
33+
| [pii_recognizer](https://github.com/mlrun/functions/tree/master/functions/src/pii_recognizer) | This function is used to recognize PII in a directory of text files | job | data-preparation, NLP |
34+
| [pyannote_audio](https://github.com/mlrun/functions/tree/master/functions/src/pyannote_audio) | pyannote's speech diarization of audio files | job | deep-learning, audio |
35+
| [question_answering](https://github.com/mlrun/functions/tree/master/functions/src/question_answering) | GenAI approach of question answering on a given data | job | genai |
36+
| [send_email](https://github.com/mlrun/functions/tree/master/functions/src/send_email) | Send Email messages through SMTP server | job | utils |
37+
| [silero_vad](https://github.com/mlrun/functions/tree/master/functions/src/silero_vad) | Silero VAD (Voice Activity Detection) functions. | job | deep-learning, audio |
38+
| [sklearn_classifier](https://github.com/mlrun/functions/tree/master/functions/src/sklearn_classifier) | train any classifier using scikit-learn's API | job | machine-learning, model-training |
39+
| [sklearn_classifier_dask](https://github.com/mlrun/functions/tree/master/functions/src/sklearn_classifier_dask) | train any classifier using scikit-learn's API over Dask | job | machine-learning, model-training |
40+
| [structured_data_generator](https://github.com/mlrun/functions/tree/master/functions/src/structured_data_generator) | GenAI approach of generating structured data according to a given schema | job | data-generation, genai |
41+
| [test_classifier](https://github.com/mlrun/functions/tree/master/functions/src/test_classifier) | test a classifier using held-out or new data | job | machine-learning, model-testing |
42+
| [text_to_audio_generator](https://github.com/mlrun/functions/tree/master/functions/src/text_to_audio_generator) | Generate audio file from text using different speakers | job | data-generation, audio |
43+
| [tf2_serving](https://github.com/mlrun/functions/tree/master/functions/src/tf2_serving) | tf2 image classification server | nuclio:serving | model-serving, machine-learning |
44+
| [transcribe](https://github.com/mlrun/functions/tree/master/functions/src/transcribe) | Transcribe audio files into text files | job | audio, genai |
45+
| [translate](https://github.com/mlrun/functions/tree/master/functions/src/translate) | Translate text files from one language to another | job | genai, NLP |
46+
| [v2_model_server](https://github.com/mlrun/functions/tree/master/functions/src/v2_model_server) | generic sklearn model server | serving | model-serving, machine-learning |
47+
| [v2_model_tester](https://github.com/mlrun/functions/tree/master/functions/src/v2_model_tester) | test v2 model servers | job | model-testing, machine-learning |
4848
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modules/README.md

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<!-- AUTOGEN:START (do not edit below) -->
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| Name | Description | Kind | Categories |
88
| --- | --- | --- | --- |
9-
| [agent_deployer](https://github.com/mlrun/functions/tree/development/modules/src/agent_deployer) | Helper for serving function deploy of an AI agents using MLRun | monitoring_application | model-serving |
10-
| [count_events](https://github.com/mlrun/functions/tree/development/modules/src/count_events) | Count events in each time window | monitoring_application | model-serving |
11-
| [evidently_iris](https://github.com/mlrun/functions/tree/development/modules/src/evidently_iris) | Demonstrates Evidently integration in MLRun for data quality and drift monitoring using the Iris dataset | monitoring_application | model-serving, structured-ML |
12-
| [histogram_data_drift](https://github.com/mlrun/functions/tree/development/modules/src/histogram_data_drift) | Model-monitoring application for detecting and visualizing data drift | monitoring_application | model-serving, structured-ML |
13-
| [openai_proxy_app](https://github.com/mlrun/functions/tree/development/modules/src/openai_proxy_app) | OpenAI application runtime based on fastapi | generic | genai |
9+
| [agent_deployer](https://github.com/mlrun/functions/tree/master/modules/src/agent_deployer) | Helper for serving function deploy of an AI agents using MLRun | monitoring_application | model-serving |
10+
| [count_events](https://github.com/mlrun/functions/tree/master/modules/src/count_events) | Count events in each time window | monitoring_application | model-serving |
11+
| [evidently_iris](https://github.com/mlrun/functions/tree/master/modules/src/evidently_iris) | Demonstrates Evidently integration in MLRun for data quality and drift monitoring using the Iris dataset | monitoring_application | model-serving, structured-ML |
12+
| [histogram_data_drift](https://github.com/mlrun/functions/tree/master/modules/src/histogram_data_drift) | Model-monitoring application for detecting and visualizing data drift | monitoring_application | model-serving, structured-ML |
13+
| [openai_proxy_app](https://github.com/mlrun/functions/tree/master/modules/src/openai_proxy_app) | OpenAI application runtime based on fastapi | generic | genai |
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<!-- AUTOGEN:END -->

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