azure-ai-projects-py
작성자: microsoft
Azure AI Projects Python SDK(azure-ai-projects)를 사용하여 AI 애플리케이션을 구축합니다. Foundry 프로젝트 클라이언트로 작업하거나 버전 관리되는 에이전트를 생성할 때 사용합니다.
npx skills add https://github.com/microsoft/skills --skill azure-ai-projects-pyAzure AI Projects Python SDK (Foundry SDK)
Build AI applications on Microsoft Foundry using the azure-ai-projects SDK.
Installation
pip install azure-ai-projects azure-identity
Environment Variables
AZURE_AI_PROJECT_ENDPOINT="https://<resource>.services.ai.azure.com/api/projects/<project>" # Required for all auth methods
AZURE_AI_MODEL_DEPLOYMENT_NAME="gpt-4o-mini" # Required for all auth methods
AZURE_TOKEN_CREDENTIALS=prod # Required only if DefaultAzureCredential is used in production
Authentication & Lifecycle
🔑 Two rules apply to every code sample below:
- Prefer
DefaultAzureCredential. It works locally (Azure CLI / VS Code / Developer CLI) and in Azure (managed identity, workload identity) with no code change. Avoid connection strings, account/API keys — they bypass Entra audit and rotation.
- Local dev:
DefaultAzureCredentialworks as-is.- Production: set
AZURE_TOKEN_CREDENTIALS=prod(orAZURE_TOKEN_CREDENTIALS=<specific_credential>) to constrain the credential chain to production-safe credentials.- Wrap every client in a context manager so HTTP transports, sockets, and token caches are released deterministically:
- Sync:
with <Client>(...) as client:- Async:
async with <Client>(...) as client:andasync with DefaultAzureCredential() as credential:(fromazure.identity.aio)Snippets may abbreviate this setup, but production code should always follow both rules.
import os
from azure.identity import DefaultAzureCredential, ManagedIdentityCredential
from azure.ai.projects import AIProjectClient
# Local dev: DefaultAzureCredential. Production: set AZURE_TOKEN_CREDENTIALS=prod or AZURE_TOKEN_CREDENTIALS=<specific_credential>
credential = DefaultAzureCredential(require_envvar=True)
# Or use a specific credential directly in production:
# See https://learn.microsoft.com/python/api/overview/azure/identity-readme?view=azure-python#credential-classes
# credential = ManagedIdentityCredential()
with AIProjectClient(
endpoint=os.environ["AZURE_AI_PROJECT_ENDPOINT"],
credential=credential,
) as client:
deployments = list(client.deployments.list())
Client Operations Overview
| Operation | Access | Purpose |
|---|---|---|
client.agents | .agents.* | Agent CRUD, versions, threads, runs |
client.connections | .connections.* | List/get project connections |
client.deployments | .deployments.* | List model deployments |
client.datasets | .datasets.* | Dataset management |
client.indexes | .indexes.* | Index management |
client.evaluations | .evaluations.* | Run evaluations |
client.red_teams | .red_teams.* | Red team operations |
Two Client Approaches
1. AIProjectClient (Native Foundry)
from azure.ai.projects import AIProjectClient
with AIProjectClient(
endpoint=os.environ["AZURE_AI_PROJECT_ENDPOINT"],
credential=DefaultAzureCredential(),
) as client:
# Use Foundry-native operations
agent = client.agents.create_agent(
model=os.environ["AZURE_AI_MODEL_DEPLOYMENT_NAME"],
name="my-agent",
instructions="You are helpful.",
)
2. OpenAI-Compatible Client
# Get OpenAI-compatible client from project
openai_client = client.get_openai_client()
# Use standard OpenAI API
response = openai_client.chat.completions.create(
model=os.environ["AZURE_AI_MODEL_DEPLOYMENT_NAME"],
messages=[{"role": "user", "content": "Hello!"}],
)
Agent Operations
Create Agent (Basic)
agent = client.agents.create_agent(
model=os.environ["AZURE_AI_MODEL_DEPLOYMENT_NAME"],
name="my-agent",
instructions="You are a helpful assistant.",
)
Create Agent with Tools
from azure.ai.agents import CodeInterpreterTool, FileSearchTool
agent = client.agents.create_agent(
model=os.environ["AZURE_AI_MODEL_DEPLOYMENT_NAME"],
name="tool-agent",
instructions="You can execute code and search files.",
tools=[CodeInterpreterTool(), FileSearchTool()],
)
Versioned Agents with PromptAgentDefinition
from azure.ai.projects.models import PromptAgentDefinition
# Create a versioned agent
agent_version = client.agents.create_version(
agent_name="customer-support-agent",
definition=PromptAgentDefinition(
model=os.environ["AZURE_AI_MODEL_DEPLOYMENT_NAME"],
instructions="You are a customer support specialist.",
tools=[], # Add tools as needed
),
version_label="v1.0",
)
See references/agents.md for detailed agent patterns.
Tools Overview
| Tool | Class | Use Case |
|---|---|---|
| Code Interpreter | CodeInterpreterTool | Execute Python, generate files |
| File Search | FileSearchTool | RAG over uploaded documents |
| Bing Grounding | BingGroundingTool | Web search (requires connection) |
| Azure AI Search | AzureAISearchTool | Search your indexes |
| Function Calling | FunctionTool | Call your Python functions |
| OpenAPI | OpenApiTool | Call REST APIs |
| MCP | McpTool | Model Context Protocol servers |
| Memory Search | MemorySearchTool | Search agent memory stores |
| SharePoint | SharepointGroundingTool | Search SharePoint content |
See references/tools.md for all tool patterns.
Thread and Message Flow
# 1. Create thread
thread = client.agents.threads.create()
# 2. Add message
client.agents.messages.create(
thread_id=thread.id,
role="user",
content="What's the weather like?",
)
# 3. Create and process run
run = client.agents.runs.create_and_process(
thread_id=thread.id,
agent_id=agent.id,
)
# 4. Get response
if run.status == "completed":
messages = client.agents.messages.list(thread_id=thread.id)
for msg in messages:
if msg.role == "assistant":
print(msg.content[0].text.value)
Connections
# List all connections
connections = client.connections.list()
for conn in connections:
print(f"{conn.name}: {conn.connection_type}")
# Get specific connection
connection = client.connections.get(connection_name="my-search-connection")
See references/connections.md for connection patterns.
Deployments
# List available model deployments
deployments = client.deployments.list()
for deployment in deployments:
print(f"{deployment.name}: {deployment.model}")
See references/deployments.md for deployment patterns.
Datasets and Indexes
# List datasets
datasets = client.datasets.list()
# List indexes
indexes = client.indexes.list()
See references/datasets-indexes.md for data operations.
Evaluation
# Using OpenAI client for evals
openai_client = client.get_openai_client()
# Create evaluation with built-in evaluators
eval_run = openai_client.evals.runs.create(
eval_id="my-eval",
name="quality-check",
data_source={
"type": "custom",
"item_references": [{"item_id": "test-1"}],
},
testing_criteria=[
{"type": "fluency"},
{"type": "task_adherence"},
],
)
See references/evaluation.md for evaluation patterns.
Async Client
from azure.ai.projects.aio import AIProjectClient
async with AIProjectClient(
endpoint=os.environ["AZURE_AI_PROJECT_ENDPOINT"],
credential=DefaultAzureCredential(),
) as client:
agent = await client.agents.create_agent(...)
# ... async operations
See references/async-patterns.md for async patterns.
Memory Stores
# Create memory store for agent
memory_store = client.agents.create_memory_store(
name="conversation-memory",
)
# Attach to agent for persistent memory
agent = client.agents.create_agent(
model=os.environ["AZURE_AI_MODEL_DEPLOYMENT_NAME"],
name="memory-agent",
tools=[MemorySearchTool()],
tool_resources={"memory": {"store_ids": [memory_store.id]}},
)
Best Practices
- Pick sync OR async and stay consistent. Do not mix
azure.ai.projectssync clients withazure.ai.projects.aioasync clients in the same call path. Choose one mode per module. - Always use context managers for clients and async credentials. Wrap every client in
with AIProjectClient(...) as client:(sync) orasync with AIProjectClient(...) as client:(async). For asyncDefaultAzureCredentialfromazure.identity.aio, also useasync with credential:so tokens and transports are cleaned up. - Clean up agents when done:
client.agents.delete_agent(agent.id) - Use
create_and_processfor simple runs, streaming for real-time UX - Use versioned agents for production deployments
- Prefer connections for external service integration (AI Search, Bing, etc.)
SDK Comparison
| Feature | azure-ai-projects | azure-ai-agents |
|---|---|---|
| Level | High-level (Foundry) | Low-level (Agents) |
| Client | AIProjectClient | AgentsClient |
| Versioning | create_version() | Not available |
| Connections | Yes | No |
| Deployments | Yes | No |
| Datasets/Indexes | Yes | No |
| Evaluation | Via OpenAI client | No |
| When to use | Full Foundry integration | Standalone agent apps |
Reference Files
- references/agents.md: Agent operations with PromptAgentDefinition
- references/tools.md: All agent tools with examples
- references/evaluation.md: Evaluation operations overview
- references/built-in-evaluators.md: Complete built-in evaluator reference
- references/custom-evaluators.md: Code and prompt-based evaluator patterns
- references/connections.md: Connection operations
- references/deployments.md: Deployment enumeration
- references/datasets-indexes.md: Dataset and index operations
- references/async-patterns.md: Async client usage
- references/api-reference.md: Complete API reference for all 373 SDK exports (v2.0.0b4)
- scripts/run_batch_evaluation.py: CLI tool for batch evaluations
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