| assets |
assets-in-registry |
share-models-components-environments |
no description |
 |
| assets |
component |
component |
Create a component asset |
 |
| assets |
data |
data |
Read, write and register a data asset |
 |
| assets |
data |
working_with_mltable |
Read, write and register a data asset |
 |
| assets |
environment |
environment |
Create custom environments from docker and/or conda YAML |
 |
| assets |
model |
model |
Create model from local files, cloud files, Runs |
 |
| data-wrangling |
interactive_data_wrangling.ipynb |
interactive_data_wrangling |
no description - This sample is excluded from automated tests |
 |
| endpoints |
batch |
custom-output-batch |
no description |
 |
| endpoints |
batch |
imagenet-classifier-batch |
no description |
 |
| endpoints |
batch |
mlflow-for-batch-images |
no description |
 |
| endpoints |
batch |
mlflow-for-batch-tabular |
no description |
 |
| endpoints |
batch |
mnist-batch |
Create and test batch endpoint and deployement |
 |
| endpoints |
batch |
text-summarization-batch |
no description |
 |
| endpoints |
online |
online-endpoints-custom-container-multimodel |
no description |
 |
| endpoints |
online |
online-endpoints-custom-container |
Deploy a custom container as an online endpoint. Use web servers other than the default Python Flask server used by Azure ML without losing the benefits of Azure ML's built-in monitoring, scaling, alerting, and authentication. |
 |
| endpoints |
online |
online-endpoints-triton-cc |
Deploy a custom container as an online endpoint. Use web servers other than the default Python Flask server used by Azure ML without losing the benefits of Azure ML's built-in monitoring, scaling, alerting, and authentication. |
 |
| endpoints |
online |
kubernetes-online-endpoints-safe-rollout |
Safely rollout a new version of a web service to production by rolling out the change to a small subset of users/requests before rolling it out completely |
 |
| endpoints |
online |
kubernetes-online-endpoints-simple-deployment |
Use an online endpoint to deploy your model, so you don't have to create and manage the underlying infrastructure |
 |
| endpoints |
online |
debug-online-endpoints-locally-in-visual-studio-code |
no description - This sample is excluded from automated tests |
 |
| endpoints |
online |
online-endpoints-managed-identity-sai |
no description |
 |
| endpoints |
online |
online-endpoints-managed-identity-uai |
no description |
 |
| endpoints |
online |
online-endpoints-binary-payloads |
no description |
 |
| endpoints |
online |
online-endpoints-inference-schema |
no description |
 |
| endpoints |
online |
online-endpoints-keyvault |
no description |
 |
| endpoints |
online |
online-endpoints-multimodel |
no description |
 |
| endpoints |
online |
online-endpoints-openapi |
no description |
 |
| endpoints |
online |
online-endpoints-safe-rollout |
Safely rollout a new version of a web service to production by rolling out the change to a small subset of users/requests before rolling it out completely |
 |
| endpoints |
online |
online-endpoints-simple-deployment |
Use an online endpoint to deploy your model, so you don't have to create and manage the underlying infrastructure |
 |
| endpoints |
online |
online-endpoints-deploy-mlflow-model-with-script |
Deploy an mlflow model to an online endpoint. This will be a no-code-deployment. It doesn't require scoring script and environment. |
 |
| endpoints |
online |
online-endpoints-deploy-mlflow-model |
Deploy an mlflow model to an online endpoint. This will be a no-code-deployment. It doesn't require scoring script and environment. |
 |
| endpoints |
online |
online-endpoints-triton |
Deploy a custom container as an online endpoint. Use web servers other than the default Python Flask server used by Azure ML without losing the benefits of Azure ML's built-in monitoring, scaling, alerting, and authentication. |
 |
| jobs |
automl-standalone-jobs |
automl-classification-task-bankmarketing |
no description |
 |
| jobs |
automl-standalone-jobs |
mlflow-model-local-inference-test |
no description - This sample is excluded from automated tests |
 |
| jobs |
automl-standalone-jobs |
auto-ml-forecasting-github-dau |
no description |
 |
| jobs |
automl-standalone-jobs |
automl-forecasting-orange-juice-sales-mlflow |
no description |
 |
| jobs |
automl-standalone-jobs |
auto-ml-forecasting-bike-share |
no description |
 |
| jobs |
automl-standalone-jobs |
automl-forecasting-task-energy-demand-advanced |
no description |
 |
| jobs |
automl-standalone-jobs |
mlflow-model-local-inference-test |
no description - This sample is excluded from automated tests |
 |
| jobs |
automl-standalone-jobs |
automl-image-classification-multiclass-task-fridge-items |
no description |
 |
| jobs |
automl-standalone-jobs |
mlflow-model-local-inference-test |
no description - This sample is excluded from automated tests |
 |
| jobs |
automl-standalone-jobs |
automl-image-classification-multilabel-task-fridge-items |
no description |
 |
| jobs |
automl-standalone-jobs |
mlflow-model-local-inference-test |
no description - This sample is excluded from automated tests |
 |
| jobs |
automl-standalone-jobs |
automl-image-instance-segmentation-task-fridge-items |
no description |
 |
| jobs |
automl-standalone-jobs |
mlflow-model-local-inference-test |
no description - This sample is excluded from automated tests |
 |
| jobs |
automl-standalone-jobs |
image-object-detection-batch-scoring-non-mlflow-model |
no description |
 |
| jobs |
automl-standalone-jobs |
automl-image-object-detection-task-fridge-items |
no description |
 |
| jobs |
automl-standalone-jobs |
mlflow-model-local-inference-test |
no description - This sample is excluded from automated tests |
 |
| jobs |
automl-standalone-jobs |
automl-nlp-multiclass-sentiment-mlflow |
no description |
 |
| jobs |
automl-standalone-jobs |
automl-nlp-multiclass-sentiment |
no description |
 |
| jobs |
automl-standalone-jobs |
mlflow-model-local-inference-test |
no description - This sample is excluded from automated tests |
 |
| jobs |
automl-standalone-jobs |
automl-nlp-multilabel-paper-cat |
no description |
 |
| jobs |
automl-standalone-jobs |
automl-nlp-text-ner-task-distributed-with-sweeping |
no description |
 |
| jobs |
automl-standalone-jobs |
automl-nlp-text-ner-task |
no description |
 |
| jobs |
automl-standalone-jobs |
automl-regression-task-hardware-performance |
no description |
 |
| jobs |
configuration.ipynb |
configuration |
Setting up your Azure Machine Learning services workspace and configuring needed resources |
 |
| jobs |
multicloud-configuration.ipynb |
multicloud-configuration |
Setting up your Azure Machine Learning services workspace and configuring needed resources - This sample is excluded from automated tests |
 |
| jobs |
pipelines |
pipeline_with_components_from_yaml |
Create pipeline with CommandComponents from local YAML file |
 |
| jobs |
pipelines |
pipeline_with_python_function_components |
Create pipeline with command_component decorator |
 |
| jobs |
pipelines |
pipeline_with_hyperparameter_sweep |
Use sweep (hyperdrive) in pipeline to train mnist model using tensorflow |
 |
| jobs |
pipelines |
pipeline_with_non_python_components |
Create a pipeline with command function |
 |
| jobs |
pipelines |
pipeline_with_registered_components |
Register component and then use these components to build pipeline |
 |
| jobs |
pipelines |
pipeline_with_parallel_nodes |
Create pipeline with parallel node to do batch inference |
 |
| jobs |
pipelines |
automl-classification-bankmarketing-in-pipeline |
Create pipeline with automl node |
 |
| jobs |
pipelines |
automl-forecasting-in-pipeline |
no description |
 |
| jobs |
pipelines |
automl-image-classification-multiclass-in-pipeline |
Create pipeline with automl node |
 |
| jobs |
pipelines |
automl-image-classification-multilabel-in-pipeline |
Create pipeline with automl node |
 |
| jobs |
pipelines |
automl-image-instance-segmentation-in-pipeline |
Create pipeline with automl node |
 |
| jobs |
pipelines |
automl-image-object-detection-in-pipeline |
Create pipeline with automl node |
 |
| jobs |
pipelines |
automl-regression-house-pricing-in-pipeline |
Create pipeline with automl node |
 |
| jobs |
pipelines |
automl-text-classification-in-pipeline |
Create pipeline with automl node |
 |
| jobs |
pipelines |
automl-text-classification-multilabel-in-pipeline |
Create pipeline with automl node |
 |
| jobs |
pipelines |
automl-text-ner-named-entity-recognition-in-pipeline |
Create pipeline with automl node |
 |
| jobs |
pipelines |
pipeline_with_spark_nodes |
Create pipeline with spark node - This sample is excluded from automated tests |
 |
| jobs |
pipelines |
train_mnist_with_tensorflow |
Create pipeline using components to run a distributed job with tensorflow |
 |
| jobs |
pipelines |
train_cifar_10_with_pytorch |
Get data, train and evaluate a model in pipeline with Components |
 |
| jobs |
pipelines |
nyc_taxi_data_regression |
Build pipeline with components for 5 jobs - prep data, transform data, train model, predict results and evaluate model performance |
 |
| jobs |
pipelines |
image_classification_with_densenet |
Create pipeline to train cnn image classification model |
 |
| jobs |
pipelines |
image_classification_keras_minist_convnet |
Create pipeline to train cnn image classification model with keras |
 |
| jobs |
single-step |
debug-and-monitor |
Run a Command to train a basic neural network with TensorFlow on the MNIST dataset |
 |
| jobs |
single-step |
lightgbm-iris-sweep |
Run hyperparameter sweep on a Command or CommandComponent |
 |
| jobs |
single-step |
objectdetectionAzureML |
no description |
 |
| jobs |
single-step |
tutorial |
no description |
 |
| jobs |
single-step |
distributed-cifar10 |
no description |
 |
| jobs |
single-step |
pytorch-iris |
Run Command to train a neural network with PyTorch on Iris dataset |
 |
| jobs |
single-step |
train-hyperparameter-tune-deploy-with-pytorch |
Train, hyperparameter tune, and deploy a PyTorch model to classify chicken and turkey images to build a deep learning neural network (DNN) based on PyTorch's transfer learning tutorial. |
 |
| jobs |
single-step |
accident-prediction |
Run R in a Command to train a prediction model |
 |
| jobs |
single-step |
sklearn-diabetes |
Run Command to train a scikit-learn LinearRegression model on the Diabetes dataset |
 |
| jobs |
single-step |
iris-scikit-learn |
Run Command to train a scikit-learn SVM on the Iris dataset |
 |
| jobs |
single-step |
sklearn-mnist |
Run a Command to train a scikit-learn SVM on the mnist dataset. |
 |
| jobs |
single-step |
train-hyperparameter-tune-with-sklearn |
Train and tune a machine learning model using scikit-learn training scripts to build a to classify iris flower images. - This sample is excluded from automated tests |
 |
| jobs |
single-step |
tensorflow-mnist-distributed-horovod |
Run a Distributed Command to train a basic neural network with distributed MPI on the MNIST dataset using Horovod |
 |
| jobs |
single-step |
tensorflow-mnist-distributed |
Run a Distributed Command to train a basic neural network with TensorFlow on the MNIST dataset |
 |
| jobs |
single-step |
tensorflow-mnist |
Run a Command to train a basic neural network with TensorFlow on the MNIST dataset |
 |
| jobs |
single-step |
train-hyperparameter-tune-deploy-with-keras |
Train, hyperparameter tune, and deploy a Keras model to classify handwritten digits using a deep neural network (DNN). - This sample is excluded from automated tests |
 |
| jobs |
single-step |
train-hyperparameter-tune-deploy-with-tensorflow |
Train, hyperparameter tune, and deploy a Tensorflow model to classify handwritten digits using a deep neural network (DNN). - This sample is excluded from automated tests |
 |
| jobs |
spark |
submit_spark_pipeline_jobs |
no description - This sample is excluded from automated tests |
 |
| jobs |
spark |
submit_spark_standalone_jobs |
no description - This sample is excluded from automated tests |
 |
| resources |
compute |
attach_manage_spark_pools |
no description - This sample is excluded from automated tests |
 |
| resources |
compute |
compute |
Create compute in Azure ML workspace |
 |
| resources |
connections |
connections |
no description |
 |
| resources |
datastores |
datastore |
Create datastores and use in a Command - This sample is excluded from automated tests |
 |
| resources |
registry |
registry-create |
no description |
 |
| resources |
workspace |
workspace |
Create Azure ML workspace |
 |
| responsible-ai |
responsibleaidashboard-diabetes-decision-making |
responsibleaidashboard-diabetes-decision-making |
no description |
 |
| responsible-ai |
responsibleaidashboard-diabetes-regression-model-debugging |
responsibleaidashboard-diabetes-regression-model-debugging |
no description |
 |
| responsible-ai |
responsibleaidashboard-housing-classification-model-debugging |
responsibleaidashboard-housing-classification-model-debugging |
no description |
 |
| responsible-ai |
responsibleaidashboard-housing-decision-making |
responsibleaidashboard-housing-decision-making |
no description |
 |
| responsible-ai |
responsibleaidashboard-programmer-regression-model-debugging |
responsibleaidashboard-programmer-regression-model-debugging |
no description |
 |
| schedules |
job-schedule.ipynb |
job-schedule |
Create a component asset |
 |
| using-mlflow |
deploy |
mlflow_sdk_online_endpoints |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
deploy |
mlflow_sdk_online_endpoints_progresive |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
deploy |
mlflow_sdk_web_service |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
deploy |
scoring_to_mlmodel |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
deploy |
track_with_databricks_deploy_aml |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
model-management |
model_management |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
runs-management |
run_history |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
train-and-log |
keras_mnist_with_mlflow |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
train-and-log |
logging_and_customizing_models |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
train-and-log |
xgboost_classification_mlflow |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
train-and-log |
xgboost_nested_runs |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
train-and-log |
xgboost_service_principal |
no description - This sample is excluded from automated tests |
 |
| using-mlflow |
using-rest-api |
using_mlflow_rest_api |
no description - This sample is excluded from automated tests |
 |