DevOps & Infra
azure-ai-ml-py - Claude MCP Skill
Azure Machine Learning SDK v2 for Python. Use for ML workspaces, jobs, models, datasets, compute, and pipelines.
SEO Guide: Enhance your AI agent with the azure-ai-ml-py tool. This Model Context Protocol (MCP) server allows Claude Desktop and other LLMs to azure machine learning sdk v2 for python. use for ml workspaces, jobs, models, datasets, compute, an... Download and configure this skill to unlock new capabilities for your AI workflow.
Documentation
SKILL.md# Azure Machine Learning SDK v2 for Python
Client library for managing Azure ML resources: workspaces, jobs, models, data, and compute.
## Installation
```bash
pip install azure-ai-ml
```
## Environment Variables
```bash
AZURE_SUBSCRIPTION_ID=<your-subscription-id>
AZURE_RESOURCE_GROUP=<your-resource-group>
AZURE_ML_WORKSPACE_NAME=<your-workspace-name>
```
## Authentication
```python
from azure.ai.ml import MLClient
from azure.identity import DefaultAzureCredential
ml_client = MLClient(
credential=DefaultAzureCredential(),
subscription_id=os.environ["AZURE_SUBSCRIPTION_ID"],
resource_group_name=os.environ["AZURE_RESOURCE_GROUP"],
workspace_name=os.environ["AZURE_ML_WORKSPACE_NAME"]
)
```
### From Config File
```python
from azure.ai.ml import MLClient
from azure.identity import DefaultAzureCredential
# Uses config.json in current directory or parent
ml_client = MLClient.from_config(
credential=DefaultAzureCredential()
)
```
## Workspace Management
### Create Workspace
```python
from azure.ai.ml.entities import Workspace
ws = Workspace(
name="my-workspace",
location="eastus",
display_name="My Workspace",
description="ML workspace for experiments",
tags={"purpose": "demo"}
)
ml_client.workspaces.begin_create(ws).result()
```
### List Workspaces
```python
for ws in ml_client.workspaces.list():
print(f"{ws.name}: {ws.location}")
```
## Data Assets
### Register Data
```python
from azure.ai.ml.entities import Data
from azure.ai.ml.constants import AssetTypes
# Register a file
my_data = Data(
name="my-dataset",
version="1",
path="azureml://datastores/workspaceblobstore/paths/data/train.csv",
type=AssetTypes.URI_FILE,
description="Training data"
)
ml_client.data.create_or_update(my_data)
```
### Register Folder
```python
my_data = Data(
name="my-folder-dataset",
version="1",
path="azureml://datastores/workspaceblobstore/paths/data/",
type=AssetTypes.URI_FOLDER
)
ml_client.data.create_or_update(my_data)
```
## Model Registry
### Register Model
```python
from azure.ai.ml.entities import Model
from azure.ai.ml.constants import AssetTypes
model = Model(
name="my-model",
version="1",
path="./model/",
type=AssetTypes.CUSTOM_MODEL,
description="My trained model"
)
ml_client.models.create_or_update(model)
```
### List Models
```python
for model in ml_client.models.list(name="my-model"):
print(f"{model.name} v{model.version}")
```
## Compute
### Create Compute Cluster
```python
from azure.ai.ml.entities import AmlCompute
cluster = AmlCompute(
name="cpu-cluster",
type="amlcompute",
size="Standard_DS3_v2",
min_instances=0,
max_instances=4,
idle_time_before_scale_down=120
)
ml_client.compute.begin_create_or_update(cluster).result()
```
### List Compute
```python
for compute in ml_client.compute.list():
print(f"{compute.name}: {compute.type}")
```
## Jobs
### Command Job
```python
from azure.ai.ml import command, Input
job = command(
code="./src",
command="python train.py --data ${{inputs.data}} --lr ${{inputs.learning_rate}}",
inputs={
"data": Input(type="uri_folder", path="azureml:my-dataset:1"),
"learning_rate": 0.01
},
environment="AzureML-sklearn-1.0-ubuntu20.04-py38-cpu@latest",
compute="cpu-cluster",
display_name="training-job"
)
returned_job = ml_client.jobs.create_or_update(job)
print(f"Job URL: {returned_job.studio_url}")
```
### Monitor Job
```python
ml_client.jobs.stream(returned_job.name)
```
## Pipelines
```python
from azure.ai.ml import dsl, Input, Output
from azure.ai.ml.entities import Pipeline
@dsl.pipeline(
compute="cpu-cluster",
description="Training pipeline"
)
def training_pipeline(data_input):
prep_step = prep_component(data=data_input)
train_step = train_component(
data=prep_step.outputs.output_data,
learning_rate=0.01
)
return {"model": train_step.outputs.model}
pipeline = training_pipeline(
data_input=Input(type="uri_folder", path="azureml:my-dataset:1")
)
pipeline_job = ml_client.jobs.create_or_update(pipeline)
```
## Environments
### Create Custom Environment
```python
from azure.ai.ml.entities import Environment
env = Environment(
name="my-env",
version="1",
image="mcr.microsoft.com/azureml/openmpi4.1.0-ubuntu20.04",
conda_file="./environment.yml"
)
ml_client.environments.create_or_update(env)
```
## Datastores
### List Datastores
```python
for ds in ml_client.datastores.list():
print(f"{ds.name}: {ds.type}")
```
### Get Default Datastore
```python
default_ds = ml_client.datastores.get_default()
print(f"Default: {default_ds.name}")
```
## MLClient Operations
| Property | Operations |
|----------|------------|
| `workspaces` | create, get, list, delete |
| `jobs` | create_or_update, get, list, stream, cancel |
| `models` | create_or_update, get, list, archive |
| `data` | create_or_update, get, list |
| `compute` | begin_create_or_update, get, list, delete |
| `environments` | create_or_update, get, list |
| `datastores` | create_or_update, get, list, get_default |
| `components` | create_or_update, get, list |
## Best Practices
1. **Use versioning** for data, models, and environments
2. **Configure idle scale-down** to reduce compute costs
3. **Use environments** for reproducible training
4. **Stream job logs** to monitor progress
5. **Register models** after successful training jobs
6. **Use pipelines** for multi-step workflows
7. **Tag resources** for organization and cost tracking
## When to Use
This skill is applicable to execute the workflow or actions described in the overview.Signals
Information
- Repository
- arlenagreer/claude_configuration_docs
- Author
- arlenagreer
- Last Sync
- 5/10/2026
- Repo Updated
- 5/7/2026
- Created
- 4/10/2026
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