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7.3 KiB
Python

# Copyright (c) Microsoft. All rights reserved.
# /// script
# requires-python = ">=3.10"
# dependencies = [
# "agent-framework-azure-contentunderstanding",
# "agent-framework-foundry",
# "azure-identity",
# ]
# ///
# Run with: uv run packages/azure-contentunderstanding/samples/01-get-started/03_multimodal_chat.py
import asyncio
import os
import time
from pathlib import Path
from agent_framework import Agent, AgentSession, Content, Message
from agent_framework.foundry import ContentUnderstandingContextProvider, FoundryChatClient
from azure.identity import AzureCliCredential
from dotenv import load_dotenv
load_dotenv()
"""
Multi-Modal Chat — PDF, audio, and video in a single turn
This sample demonstrates CU's multi-modal capability: upload a PDF invoice,
an audio call recording, and a video file all at once. The provider analyzes
all three in parallel using the right CU analyzer for each media type.
The provider auto-detects the media type and selects the right CU analyzer:
- PDF/images → prebuilt-documentSearch
- Audio → prebuilt-audioSearch
- Video → prebuilt-videoSearch
Environment variables:
FOUNDRY_PROJECT_ENDPOINT — Azure AI Foundry project endpoint
FOUNDRY_MODEL — Model deployment name (e.g. gpt-4.1)
AZURE_CONTENTUNDERSTANDING_ENDPOINT — CU endpoint URL
"""
# Local PDF from package assets
SAMPLE_PDF = Path(__file__).resolve().parents[1] / "shared" / "sample_assets" / "invoice.pdf"
# Public audio/video from Azure CU samples repo (raw GitHub URLs)
_CU_ASSETS = "https://raw.githubusercontent.com/Azure-Samples/azure-ai-content-understanding-assets/main"
AUDIO_URL = f"{_CU_ASSETS}/audio/callCenterRecording.mp3"
VIDEO_URL = f"{_CU_ASSETS}/videos/sdk_samples/FlightSimulator.mp4"
async def main() -> None:
# 1. Set up credentials and CU context provider
credential = AzureCliCredential()
# No analyzer_id specified — the provider auto-detects from media type:
# PDF/images → prebuilt-documentSearch
# Audio → prebuilt-audioSearch
# Video → prebuilt-videoSearch
cu = ContentUnderstandingContextProvider(
endpoint=os.environ["AZURE_CONTENTUNDERSTANDING_ENDPOINT"],
credential=credential,
max_wait=None, # wait until each analysis finishes
)
# 2. Set up the LLM client
client = FoundryChatClient(
project_endpoint=os.environ["FOUNDRY_PROJECT_ENDPOINT"],
model=os.environ["FOUNDRY_MODEL"],
credential=credential,
)
# 3. Create agent and session
async with cu:
agent = Agent(
client=client,
name="MultiModalAgent",
instructions=(
"You are a helpful assistant that can analyze documents, audio, "
"and video files. Answer questions using the extracted content."
),
context_providers=[cu],
)
session = AgentSession()
# --- Turn 1: Upload all 3 modalities at once ---
# The provider analyzes all files in parallel using the appropriate
# CU analyzer for each media type. All results are injected into
# the same context so the agent can answer about all of them.
turn1_prompt = (
"I'm uploading three files: an invoice PDF, a call center "
"audio recording, and a flight simulator video. "
"Give a brief summary of each file."
)
print("--- Turn 1: Upload PDF + audio + video (parallel analysis) ---")
print(" (CU analysis may take a few minutes for these audio/video files...)")
print(f"User: {turn1_prompt}")
t0 = time.perf_counter()
response = await agent.run(
Message(
role="user",
contents=[
Content.from_text(turn1_prompt),
Content.from_data(
SAMPLE_PDF.read_bytes(),
"application/pdf",
additional_properties={"filename": "invoice.pdf"},
),
Content.from_uri(
AUDIO_URL,
media_type="audio/mp3",
additional_properties={"filename": "callCenterRecording.mp3"},
),
Content.from_uri(
VIDEO_URL,
media_type="video/mp4",
additional_properties={"filename": "FlightSimulator.mp4"},
),
],
),
session=session,
)
elapsed = time.perf_counter() - t0
usage = response.usage_details or {}
print(f" [Analyzed in {elapsed:.1f}s | Input tokens: {usage.get('input_token_count', 'N/A')}]")
print(f"Agent: {response}\n")
# --- Turn 2: Detail question about the PDF ---
turn2_prompt = "What are the line items and their amounts on the invoice?"
print("--- Turn 2: PDF detail ---")
print(f"User: {turn2_prompt}")
response = await agent.run(turn2_prompt, session=session)
usage = response.usage_details or {}
print(f" [Input tokens: {usage.get('input_token_count', 'N/A')}]")
print(f"Agent: {response}\n")
# --- Turn 3: Detail question about the audio ---
turn3_prompt = "What was the customer's issue in the call recording?"
print("--- Turn 3: Audio detail ---")
print(f"User: {turn3_prompt}")
response = await agent.run(turn3_prompt, session=session)
usage = response.usage_details or {}
print(f" [Input tokens: {usage.get('input_token_count', 'N/A')}]")
print(f"Agent: {response}\n")
# --- Turn 4: Detail question about the video ---
turn4_prompt = "What key scenes or actions are shown in the flight simulator video?"
print("--- Turn 4: Video detail ---")
print(f"User: {turn4_prompt}")
response = await agent.run(turn4_prompt, session=session)
usage = response.usage_details or {}
print(f" [Input tokens: {usage.get('input_token_count', 'N/A')}]")
print(f"Agent: {response}\n")
# --- Turn 5: Cross-document question ---
turn5_prompt = (
"Across all three files, which one contains financial data, "
"which one involves a customer interaction, and which one is "
"a visual demonstration?"
)
print("--- Turn 5: Cross-document question ---")
print(f"User: {turn5_prompt}")
response = await agent.run(turn5_prompt, session=session)
usage = response.usage_details or {}
print(f" [Input tokens: {usage.get('input_token_count', 'N/A')}]")
print(f"Agent: {response}\n")
if __name__ == "__main__":
asyncio.run(main())
"""
Sample output:
--- Turn 1: Upload PDF + audio + video (parallel analysis) ---
User: I'm uploading three files...
(CU analysis may take 1-2 minutes for audio/video files...)
[Analyzed in ~94s | Input tokens: ~2939]
Agent: ### invoice.pdf: An invoice from CONTOSO LTD. to MICROSOFT CORPORATION...
### callCenterRecording.mp3: A customer service call about point balance...
### FlightSimulator.mp4: A clip discussing neural text-to-speech...
--- Turn 2-5: Detail and cross-document questions ---
(Agent answers from conversation history without re-analysis)
"""