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agent-framework/python/samples/getting_started/agents/anthropic/anthropic_foundry.py
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Eduard van Valkenburg 390f93344c Python: Add samples syntax checking with pyright (#3710)
* Add samples syntax checking with pyright

- Add pyrightconfig.samples.json with relaxed type checking but import validation
- Add samples-syntax poe task to check samples for syntax and import errors
- Add samples-syntax to check and pre-commit-check tasks
- Fix 78 sample errors:
  - Update workflow builder imports to use agent_framework_orchestrations
  - Change content type isinstance checks to content.type comparisons
  - Use Content factory methods instead of removed content type classes
  - Fix TypedDict access patterns for Annotation
  - Fix various API mismatches (normalize_messages, ChatMessage.text, role)

* fixed a bunch of samples and tweaks to pre-commit

* updated lock

* updated lock

* fixes

* added lint to samples
2026-02-07 07:10:47 +00:00

66 lines
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Python

# Copyright (c) Microsoft. All rights reserved.
import asyncio
from agent_framework import HostedMCPTool, HostedWebSearchTool
from agent_framework.anthropic import AnthropicClient
from anthropic import AsyncAnthropicFoundry
"""
Anthropic Foundry Chat Agent Example
This sample demonstrates using Anthropic with:
- Setting up an Anthropic-based agent with hosted tools.
- Using the `thinking` feature.
- Displaying both thinking and usage information during streaming responses.
This example requires `anthropic>=0.74.0` and an endpoint in Foundry for Anthropic.
To use the Foundry integration ensure you have the following environment variables set:
- ANTHROPIC_FOUNDRY_API_KEY
Alternatively you can pass in a azure_ad_token_provider function to the AsyncAnthropicFoundry constructor.
- ANTHROPIC_FOUNDRY_ENDPOINT
Should be something like https://<your-resource-name>.services.ai.azure.com/anthropic/
- ANTHROPIC_CHAT_MODEL_ID
Should be something like claude-haiku-4-5
"""
async def main() -> None:
"""Example of streaming response (get results as they are generated)."""
agent = AnthropicClient(anthropic_client=AsyncAnthropicFoundry()).as_agent(
name="DocsAgent",
instructions="You are a helpful agent for both Microsoft docs questions and general questions.",
tools=[
HostedMCPTool(
name="Microsoft Learn MCP",
url="https://learn.microsoft.com/api/mcp",
),
HostedWebSearchTool(),
],
default_options={
# anthropic needs a value for the max_tokens parameter
# we set it to 1024, but you can override like this:
"max_tokens": 20000,
"thinking": {"type": "enabled", "budget_tokens": 10000},
},
)
query = "Can you compare Python decorators with C# attributes?"
print(f"User: {query}")
print("Agent: ", end="", flush=True)
async for chunk in agent.run(query, stream=True):
for content in chunk.contents:
if content.type == "text_reasoning":
print(f"\033[32m{content.text}\033[0m", end="", flush=True)
if content.type == "usage":
print(f"\n\033[34m[Usage so far: {content.usage_details}]\033[0m\n", end="", flush=True)
if chunk.text:
print(chunk.text, end="", flush=True)
print("\n")
if __name__ == "__main__":
asyncio.run(main())