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agent-framework/python/packages/purview
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Eduard van Valkenburg 838a7fd61d Python: [BREAKING] Types API Review improvements (#3647)
* Replace Role and FinishReason classes with NewType + Literal

- Remove EnumLike metaclass from _types.py
- Replace Role class with NewType('Role', str) + RoleLiteral
- Replace FinishReason class with NewType('FinishReason', str) + FinishReasonLiteral
- Update all usages across codebase to use string literals
- Remove .value access patterns (direct string comparison now works)
- Add backward compatibility for legacy dict serialization format
- Update tests to reflect new string-based types

Addresses #3591, #3615

* Simplify ChatResponse and AgentResponse type hints (#3592)

- Remove overloads from ChatResponse.__init__
- Remove text parameter from ChatResponse.__init__
- Remove | dict[str, Any] from finish_reason and usage_details params
- Remove **kwargs from AgentResponse.__init__
- Both now accept ChatMessage | Sequence[ChatMessage] | None for messages
- Update docstrings and examples to reflect changes
- Fix tests that were using removed kwargs
- Fix Role type hint usage in ag-ui utils

* Remove text parameter from ChatResponseUpdate and AgentResponseUpdate (#3597)

- Remove text parameter from ChatResponseUpdate.__init__
- Remove text parameter from AgentResponseUpdate.__init__
- Remove **kwargs from both update classes
- Simplify contents parameter type to Sequence[Content] | None
- Update all usages to use contents=[Content.from_text(...)] pattern
- Fix imports in test files
- Update docstrings and examples

* Rename from_chat_response_updates to from_updates (#3593)

- ChatResponse.from_chat_response_updates → ChatResponse.from_updates
- ChatResponse.from_chat_response_generator → ChatResponse.from_update_generator
- AgentResponse.from_agent_run_response_updates → AgentResponse.from_updates

* Remove try_parse_value method from ChatResponse and AgentResponse (#3595)

- Remove try_parse_value method from ChatResponse
- Remove try_parse_value method from AgentResponse
- Remove try_parse_value calls from from_updates and from_update_generator methods
- Update samples to use try/except with response.value instead
- Update tests to use response.value pattern
- Users should now use response.value with try/except for safe parsing

* Add agent_id to AgentResponse and clarify author_name documentation (#3596)

- Add agent_id parameter to AgentResponse class
- Document that author_name is on ChatMessage objects, not responses
- Update ChatResponse docstring with author_name note
- Update AgentResponse docstring with author_name note

* Simplify ChatMessage.__init__ signature (#3618)

- Make contents a positional argument accepting Sequence[Content | str]
- Auto-convert strings in contents to TextContent
- Remove overloads, keep text kwarg for backward compatibility with serialization
- Update _parse_content_list to handle string items
- Update all usages across codebase to use new format: ChatMessage("role", ["text"])

* Allow Content as input on run and get_response

- Update prepare_messages and normalize_messages to accept Content
- Update type signatures in _agents.py and _clients.py
- Add tests for Content input handling

* Fix ChatMessage usage across packages and samples

Update all remaining ChatMessage(role=..., text=...) to use new
ChatMessage('role', ['text']) signature.

* Fix Role string usage and response format parsing

- Fix redis provider: remove .value access on string literals
- Fix durabletask ensure_response_format: set _response_format before accessing .value

* Fix ollama .value and ai_model_id issues, handle None in content list

- Fix ollama _chat_client: remove .value on string literals
- Fix ollama _chat_client: rename ai_model_id to model_id
- Fix _parse_content_list: skip None values gracefully

* Fix A2AAgent type signature to include Content

* Fix Role/FinishReason NewType dict annotations and improve test coverage to 95%

* Fix mypy errors for Role/FinishReason NewType usage

* Fix Role.TOOL and Role.ASSISTANT usage in _orchestrator_helpers.py

* Fix Role NewType usage in durabletask _models.py
838a7fd61d · 2026-02-04 10:13:23 +00:00
History
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2025-10-16 21:46:04 +00:00

Microsoft Agent Framework Purview Integration (Python)

agent-framework-purview adds Microsoft Purview (Microsoft Graph dataSecurityAndGovernance) policy evaluation to the Microsoft Agent Framework. It lets you enforce data security / governance policies on both the prompt (user input + conversation history) and the model response before they proceed further in your workflow.

Status: Preview

Key Features

  • Middleware-based policy enforcement (agent-level and chat-client level)
  • Blocks or allows content at both ingress (prompt) and egress (response)
  • Works with any ChatAgent / agent orchestration using the standard Agent Framework middleware pipeline
  • Supports both synchronous TokenCredential and AsyncTokenCredential from azure-identity
  • Configuration via PurviewSettings / PurviewAppLocation
  • Built-in caching with configurable TTL and size limits for protection scopes in PurviewSettings
  • Background processing for content activities and offline policy evaluation

When to Use

Add Purview when you need to:

  • Prevent sensitive data leaks: Inline blocking of sensitive content based on Data Loss Prevention (DLP) policies.
  • Enable governance: Log AI interactions in Purview for Audit, Communication Compliance, Insider Risk Management, eDiscovery, and Data Lifecycle Management.
  • Prevent sensitive or disallowed content from being sent to an LLM
  • Prevent model output containing disallowed data from leaving the system
  • Apply centrally managed policies without rewriting agent logic

Prerequisites

  • Microsoft Azure subscription with Microsoft Purview configured.
  • Microsoft 365 subscription with an E5 license and pay-as-you-go billing setup.

Authentication

PurviewClient uses the azure-identity library for token acquisition. You can use any TokenCredential or AsyncTokenCredential implementation.

Scopes

PurviewSettings.get_scopes() derives the Graph scope list (currently https://graph.microsoft.com/.default style).


Quick Start

import asyncio
from agent_framework import ChatAgent, ChatMessage, Role
from agent_framework.azure import AzureOpenAIChatClient
from agent_framework.microsoft import PurviewPolicyMiddleware, PurviewSettings
from azure.identity import InteractiveBrowserCredential

async def main():
	chat_client = AzureOpenAIChatClient()  # uses environment for endpoint + deployment

	purview_middleware = PurviewPolicyMiddleware(
		credential=InteractiveBrowserCredential(),
		settings=PurviewSettings(app_name="My Sample App")
	)

	agent = ChatAgent(
		chat_client=chat_client,
		instructions="You are a helpful assistant.",
		middleware=[purview_middleware]
	)

	response = await agent.run(ChatMessage("user", ["Summarize zero trust in one sentence."]))
	print(response)

asyncio.run(main())

If a policy violation is detected on the prompt, the middleware terminates the run and substitutes a system message: "Prompt blocked by policy". If on the response, the result becomes "Response blocked by policy".


Configuration

PurviewSettings

PurviewSettings(
    app_name="My App",                         # Required: Display / logical name
    app_version=None,                          # Optional: Version string of the application
    tenant_id=None,                            # Optional: Tenant id (guid), used mainly for auth context
    purview_app_location=None,                 # Optional: PurviewAppLocation for scoping
    graph_base_uri="https://graph.microsoft.com/v1.0/",
    blocked_prompt_message="Prompt blocked by policy",      # Custom message for blocked prompts
    blocked_response_message="Response blocked by policy",  # Custom message for blocked responses
    ignore_exceptions=False,                   # If True, non-payment exceptions are logged but not thrown
    ignore_payment_required=False,             # If True, 402 payment required errors are logged but not thrown
    cache_ttl_seconds=14400,                   # Cache TTL in seconds (default 4 hours)
    max_cache_size_bytes=200 * 1024 * 1024     # Max cache size in bytes (default 200MB)
)

Caching

The Purview integration includes built-in caching for protection scopes responses to improve performance and reduce API calls:

  • Default TTL: 4 hours (14400 seconds)
  • Default Cache Size: 200MB
  • Cache Provider: InMemoryCacheProvider is used by default, but you can provide a custom implementation via the CacheProvider protocol
  • Cache Invalidation: Cache is automatically invalidated when protection scope state is modified
  • Exception Caching: 402 Payment Required errors are cached to avoid repeated failed API calls

You can customize caching behavior in PurviewSettings:

from agent_framework.microsoft import PurviewSettings

settings = PurviewSettings(
    app_name="My App",
    cache_ttl_seconds=14400,           # 4 hours
    max_cache_size_bytes=200 * 1024 * 1024  # 200MB
)

Or provide your own cache provider:

from typing import Any
from agent_framework.microsoft import PurviewPolicyMiddleware, PurviewSettings, CacheProvider
from azure.identity import DefaultAzureCredential

class MyCustomCache(CacheProvider):
    async def get(self, key: str) -> Any | None:
        # Your implementation
        pass

    async def set(self, key: str, value: Any, ttl_seconds: int | None = None) -> None:
        # Your implementation
        pass

    async def remove(self, key: str) -> None:
        # Your implementation
        pass

credential = DefaultAzureCredential()
settings = PurviewSettings(app_name="MyApp")

middleware = PurviewPolicyMiddleware(
    credential=credential,
    settings=settings,
    cache_provider=MyCustomCache()
)

To scope evaluation by location (application, URL, or domain):

from agent_framework.microsoft import (
	PurviewAppLocation,
	PurviewLocationType,
	PurviewSettings,
)

settings = PurviewSettings(
	app_name="Contoso Support",
	purview_app_location=PurviewAppLocation(
		location_type=PurviewLocationType.APPLICATION,
		location_value="<app-client-id>"
	)
)

Customizing Blocked Messages

By default, when Purview blocks a prompt or response, the middleware returns a generic system message. You can customize these messages by providing your own text in the PurviewSettings:

from agent_framework.microsoft import PurviewSettings

settings = PurviewSettings(
	app_name="My App",
	blocked_prompt_message="Your request contains content that violates our policies. Please rephrase and try again.",
	blocked_response_message="The response was blocked due to policy restrictions. Please contact support if you need assistance."
)

Exception Handling Controls

The Purview integration provides fine-grained control over exception handling to support graceful degradation scenarios:

from agent_framework.microsoft import PurviewSettings

# Ignore all non-payment exceptions (continue execution even if policy check fails)
settings = PurviewSettings(
    app_name="My App",
    ignore_exceptions=True  # Log errors but don't throw
)

# Ignore only 402 Payment Required errors (useful for tenants without proper licensing)
settings = PurviewSettings(
    app_name="My App",
    ignore_payment_required=True  # Continue even without Purview Consumptive Billing Setup
)

# Both can be combined
settings = PurviewSettings(
    app_name="My App",
    ignore_exceptions=True,
    ignore_payment_required=True
)

Selecting Agent vs Chat Middleware

Use the agent middleware when you already have / want the full agent pipeline:

from agent_framework import ChatAgent
from agent_framework.azure import AzureOpenAIChatClient
from agent_framework.microsoft import PurviewPolicyMiddleware, PurviewSettings
from azure.identity import DefaultAzureCredential

credential = DefaultAzureCredential()
client = AzureOpenAIChatClient()

agent = ChatAgent(
	chat_client=client,
	instructions="You are helpful.",
	middleware=[PurviewPolicyMiddleware(credential, PurviewSettings(app_name="My App"))]
)

Use the chat middleware when you attach directly to a chat client (e.g. minimal agent shell or custom orchestration):

import os
from agent_framework import ChatAgent
from agent_framework.azure import AzureOpenAIChatClient
from agent_framework.microsoft import PurviewChatPolicyMiddleware, PurviewSettings
from azure.identity import DefaultAzureCredential

credential = DefaultAzureCredential()

chat_client = AzureOpenAIChatClient(
	deployment_name=os.environ["AZURE_OPENAI_DEPLOYMENT_NAME"],
	endpoint=os.environ["AZURE_OPENAI_ENDPOINT"],
	credential=credential,
	middleware=[
		PurviewChatPolicyMiddleware(credential, PurviewSettings(app_name="My App (Chat)"))
	],
)

agent = ChatAgent(chat_client=chat_client, instructions="You are helpful.")

The policy logic is identical; the difference is only the hook point in the pipeline.


Middleware Lifecycle

  1. Before agent execution (prompt phase): all context.messages are evaluated.
    • If no valid user_id is found, processing is skipped (no policy evaluation)
    • Protection scopes are retrieved (with caching)
    • Applicable scopes are checked to determine execution mode
    • In inline mode: content is evaluated immediately
    • In offline mode: evaluation is queued in background
  2. If blocked: context.result is replaced with a system message and context.terminate = True.
  3. After successful agent execution (response phase): the produced messages are evaluated using the same user_id from the prompt phase.
  4. If blocked: result messages are replaced with a blocking notice.

The user identifier is discovered from ChatMessage.additional_properties['user_id'] during the prompt phase and reused for the response phase, ensuring both evaluations map consistently to the same user. If no user_id is present, policy evaluation is skipped entirely.

You can customize the blocking messages using the blocked_prompt_message and blocked_response_message fields in PurviewSettings. For more advanced scenarios, you can wrap the middleware or post-process context.result in later middleware.


Exceptions

Exception Scenario
PurviewPaymentRequiredError 402 Payment Required - tenant lacks proper Purview licensing or consumptive billing setup
PurviewAuthenticationError Token acquisition / validation issues
PurviewRateLimitError 429 responses from service
PurviewRequestError 4xx client errors (bad input, unauthorized, forbidden)
PurviewServiceError 5xx or unexpected service errors

Exception Handling

All exceptions inherit from PurviewServiceError. You can catch specific exceptions or use the base class:

from agent_framework.microsoft import (
    PurviewPaymentRequiredError,
    PurviewAuthenticationError,
    PurviewRateLimitError,
    PurviewRequestError,
    PurviewServiceError
)

try:
    # Your code here
    pass
except PurviewPaymentRequiredError as ex:
    # Handle licensing issues specifically
    print(f"Purview licensing required: {ex}")
except (PurviewAuthenticationError, PurviewRateLimitError, PurviewRequestError, PurviewServiceError) as ex:
    # Handle other errors
    print(f"Purview enforcement skipped: {ex}")

Notes

  • User Identification: Provide a user_id per request (e.g. in ChatMessage(..., additional_properties={"user_id": "<guid>"})) for per-user policy scoping. If no user_id is provided, policy evaluation is skipped entirely.
  • Blocking Messages: Can be customized via blocked_prompt_message and blocked_response_message in PurviewSettings. By default, they are "Prompt blocked by policy" and "Response blocked by policy" respectively.
  • Streaming Responses: Post-response policy evaluation presently applies only to non-streaming chat responses.
  • Error Handling: Use ignore_exceptions and ignore_payment_required settings for graceful degradation. When enabled, errors are logged but don't fail the request.
  • Caching: Protection scopes responses and 402 errors are cached by default with a 4-hour TTL. Cache is automatically invalidated when protection scope state changes.
  • Background Processing: Content Activities and offline Process Content requests are handled asynchronously using background tasks to avoid blocking the main execution flow.