-
Notifications
You must be signed in to change notification settings - Fork 124
environments documentation
-
Environment used by Hugging Face NLP Finetune components
-
Environment used by Hugging Face NLP Finetune components
-
Environment used by MMDetection Image Finetune components
-
Environment used by MMTracking Video Finetune components
-
Environment used by Multimodal classification Finetune components
-
Environment used by HuggingFace Transformers Image Finetune components
-
acpt-automl-image-framework-selector-gpu
Environment used by framework selector component for automl image workloads
-
Recommended environment for Deep Learning with PyTorch on Azure containing the Azure ML SDK with the latest compatible versions of Ubuntu, Python, PyTorch, CUDA\RocM, combined with optimizers like ORT Training,+DeepSpeed+MSCCL+ORT MoE and more. The image introduces preview of new fastcheckpointin...
-
Recommended environment for Deep Learning in public preview with PyTorch on Azure containing the Azure ML SDK with the latest compatible versions of Ubuntu, Python, PyTorch, CUDA\RocM, combined with optimizers like ORT Training,+DeepSpeed+MSCCL+ORT MoE and more. The image introduces newly release...
-
acpt-pytorch-2.2-cuda12.1-profiler
Recommended environment for Deep Learning in public preview with PyTorch on Azure containing the Azure ML SDK with the latest compatible versions of Ubuntu, Python, PyTorch, CUDA\RocM, combined with optimizers like ORT Training,+DeepSpeed+MSCCL+ORT MoE and more. The image introduces newly release...
-
Environment used by proxy AOAI components
-
GPU based environment for finetuning AutoML legacy models for image tasks.
-
An environment for automl inferencing (part of demand forecasting).
-
CPU based environment for AML Data Labeling.
-
GPU based environment for AML Data Labeling SAM Embedding Generation.
-
Environment used for deploying model to use DS-MII or vLLM for inference
-
general-langchain-app-deployment
AzureML general environment to deploy and serve a Langchain app.
-
An environment for tasks such as regression, clustering, and classification with LightGBM. Contains the Azure ML SDK and additional python packages.
-
An environment for Large Language Model Retrieval Augmented Generation standard grounding database components.
-
An environment for Large Language Model MIR endpoint components.
-
An environment for standard Large Language Model Retrieval Augmented Generation components.
-
An environment for standard Large Language Model Retrieval Augmented Generation embedding components.
-
AzureML minimal app quickstart environment.
-
AzureML minimal/Ubuntu 22.04/Python 3.11 cpu environment.
-
AzureML minimal/Ubuntu 20.04/Python 3.9 cpu environment.
-
CPU based environment for pipelines (ML Designer).
-
CPU based environment for pipelines (ML Designer) minimal version.
-
Environment for evaluating mlflow models.
-
Environment used by Model Management components
-
An environment for olive_optimizer cpu components.
-
An environment for olive_optimizer_gpu components.
-
Environment containing Azure SDK for Python v2
-
responsibleai-text-ubuntu20.04-py38-cpu
AzureML Responsible AI Text environment.
-
responsibleai-ubuntu20.04-py38-cpu
AzureML Responsible AI environment.
-
responsibleai-vision-ubuntu20.04-py38-cpu
AzureML Responsible AI Vision environment.
-
An environment for tasks such as regression, clustering, and classification with Scikit-learn. Contains the Azure ML SDK and additional python packages.
-
An environment for tasks such as regression, clustering, and classification with Scikit-learn. Contains the Azure ML SDK and additional python packages.
-
An environment for deep learning with Tensorflow containing the Azure ML SDK and additional python packages.
-
An environment for deep learning with Tensorflow containing the Azure ML SDK and additional python packages.
-
An environment for deep learning with Tensorflow containing the Azure ML SDK and additional python packages.