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* restructure: Python samples into progressive 01-05 layout - 01-get-started/: 6 numbered steps (hello agent → hosting) - 02-agents/: all agent concept samples (tools, middleware, providers, etc.) - 03-workflows/: ALL existing workflow samples preserved as-is - 04-hosting/: azure-functions, durabletask, a2a - 05-end-to-end/: demos, evaluation, hosted agents - Old files moved to _to_delete/ for review - Added AGENTS.md with structure documentation - autogen-migration/ and semantic-kernel-migration/ preserved at root * fix: switch to AzureOpenAI Foundry, fix CI failures - Switch all 01-get-started samples to AzureOpenAIResponsesClient with Azure AI Foundry project endpoint (AZURE_AI_PROJECT_ENDPOINT + AZURE_OPENAI_RESPONSES_DEPLOYMENT_NAME + AzureCliCredential) - Add _to_delete/ and 05-end-to-end/ to pyrightconfig.samples.json excludes - Fix test paths in packages/ that referenced old getting_started/ dirs: durabletask conftest + streaming test, azurefunctions conftest, devui conftest + capture_messages + openai_sdk_integration - Fix workflow_as_agent_human_in_the_loop.py import (sibling import) - Update hosting READMEs and tool comment paths - Replace root README.md with new structure overview - Update AGENTS.md to document Azure OpenAI Foundry as default provider * cleanup: remove _to_delete folder, copy resource files to active dirs All files in _to_delete/ were either: - Exact duplicates of files in the new structure (240 files) - Same file with only comment path updates (100 files) - One import-fix diff (workflow_as_agent_human_in_the_loop.py) - One superseded minimal_sample.py Resource files (sample.pdf, countries.json, employees.pdf, weather.json) copied to 02-agents/sample_assets/ and 02-agents/resources/ since active samples reference them. * fix: address PR review comments, centralize resources, remove root duplicates - Fix type annotation in 04_memory.py (string union -> proper types) - Fix old sample paths in observability files - Fix grammar/spelling in observability samples - Move sample_assets/ and resources/ to shared/ folder - Remove 8 duplicate observability files from 02-agents root - Update resource path references in multimodal_input and provider samples * fix: update broken links from old getting_started paths to new structure - Update relative paths in READMEs: getting_started/ → 01-get-started/, 02-agents/, 03-workflows/, 04-hosting/, 05-end-to-end/ - Fix absolute GitHub URLs in package READMEs - Fix broken link in ollama package README * fix: convert absolute GitHub URLs to relative paths for link checker Absolute URLs to python/samples/ on main branch 404 until PR merges. Converted to relative paths that linkspector can verify locally. * fix: update link for handoff sample moved to orchestrations/ * fix: update chatkit-integration README path from demos/ to 05-end-to-end/ * fix: update broken links in orchestrations README to match flat directory structure
70 lines
2.5 KiB
Python
70 lines
2.5 KiB
Python
# Copyright (c) Microsoft. All rights reserved.
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import asyncio
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from agent_framework.anthropic import AnthropicClient
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from anthropic import AsyncAnthropicFoundry
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"""
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Anthropic Foundry Chat Agent Example
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This sample demonstrates using Anthropic with:
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- Setting up an Anthropic-based agent with hosted tools.
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- Using the `thinking` feature.
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- Displaying both thinking and usage information during streaming responses.
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This example requires `anthropic>=0.74.0` and an endpoint in Foundry for Anthropic.
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To use the Foundry integration ensure you have the following environment variables set:
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- ANTHROPIC_FOUNDRY_API_KEY
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Alternatively you can pass in a azure_ad_token_provider function to the AsyncAnthropicFoundry constructor.
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- ANTHROPIC_FOUNDRY_ENDPOINT
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Should be something like https://<your-resource-name>.services.ai.azure.com/anthropic/
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- ANTHROPIC_CHAT_MODEL_ID
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Should be something like claude-haiku-4-5
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"""
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async def main() -> None:
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"""Example of streaming response (get results as they are generated)."""
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client = AnthropicClient(anthropic_client=AsyncAnthropicFoundry())
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# Create MCP tool configuration using instance method
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mcp_tool = client.get_mcp_tool(
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name="Microsoft_Learn_MCP",
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url="https://learn.microsoft.com/api/mcp",
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)
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# Create web search tool configuration using instance method
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web_search_tool = client.get_web_search_tool()
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agent = client.as_agent(
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name="DocsAgent",
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instructions="You are a helpful agent for both Microsoft docs questions and general questions.",
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tools=[mcp_tool, web_search_tool],
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default_options={
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# anthropic needs a value for the max_tokens parameter
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# we set it to 1024, but you can override like this:
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"max_tokens": 20000,
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"thinking": {"type": "enabled", "budget_tokens": 10000},
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},
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)
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query = "Can you compare Python decorators with C# attributes?"
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print(f"User: {query}")
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print("Agent: ", end="", flush=True)
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async for chunk in agent.run(query, stream=True):
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for content in chunk.contents:
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if content.type == "text_reasoning":
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print(f"\033[32m{content.text}\033[0m", end="", flush=True)
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if content.type == "usage":
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print(f"\n\033[34m[Usage so far: {content.usage_details}]\033[0m\n", end="", flush=True)
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if chunk.text:
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print(chunk.text, end="", flush=True)
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print("\n")
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if __name__ == "__main__":
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asyncio.run(main())
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