Agent skill
azure-ai-contentunderstanding-py
Azure AI Content Understanding SDK for Python. Use for multimodal content extraction from documents, images, audio, and video. Triggers: "azure-ai-contentunderstanding", "ContentUnderstandingClient", "multimodal analysis", "document extraction", "video analysis", "audio transcription".
Install this agent skill to your Project
npx add-skill https://github.com/microsoft/skills/tree/main/.github/plugins/azure-sdk-python/skills/azure-ai-contentunderstanding-py
SKILL.md
Azure AI Content Understanding SDK for Python
Multimodal AI service that extracts semantic content from documents, video, audio, and image files for RAG and automated workflows.
Installation
pip install azure-ai-contentunderstanding
Environment Variables
CONTENTUNDERSTANDING_ENDPOINT=https://<resource>.cognitiveservices.azure.com/
Authentication
import os
from azure.ai.contentunderstanding import ContentUnderstandingClient
from azure.identity import DefaultAzureCredential
endpoint = os.environ["CONTENTUNDERSTANDING_ENDPOINT"]
credential = DefaultAzureCredential()
client = ContentUnderstandingClient(endpoint=endpoint, credential=credential)
Core Workflow
Content Understanding operations are asynchronous long-running operations:
- Begin Analysis — Start the analysis operation with
begin_analyze()(returns a poller) - Poll for Results — Poll until analysis completes (SDK handles this with
.result()) - Process Results — Extract structured results from
AnalyzeResult.contents
Prebuilt Analyzers
| Analyzer | Content Type | Purpose |
|---|---|---|
prebuilt-documentSearch |
Documents | Extract markdown for RAG applications |
prebuilt-imageSearch |
Images | Extract content from images |
prebuilt-audioSearch |
Audio | Transcribe audio with timing |
prebuilt-videoSearch |
Video | Extract frames, transcripts, summaries |
prebuilt-invoice |
Documents | Extract invoice fields |
Analyze Document
import os
from azure.ai.contentunderstanding import ContentUnderstandingClient
from azure.ai.contentunderstanding.models import AnalyzeInput
from azure.identity import DefaultAzureCredential
endpoint = os.environ["CONTENTUNDERSTANDING_ENDPOINT"]
client = ContentUnderstandingClient(
endpoint=endpoint,
credential=DefaultAzureCredential()
)
# Analyze document from URL
poller = client.begin_analyze(
analyzer_id="prebuilt-documentSearch",
inputs=[AnalyzeInput(url="https://example.com/document.pdf")]
)
result = poller.result()
# Access markdown content (contents is a list)
content = result.contents[0]
print(content.markdown)
Access Document Content Details
from azure.ai.contentunderstanding.models import MediaContentKind, DocumentContent
content = result.contents[0]
if content.kind == MediaContentKind.DOCUMENT:
document_content: DocumentContent = content # type: ignore
print(document_content.start_page_number)
Analyze Image
from azure.ai.contentunderstanding.models import AnalyzeInput
poller = client.begin_analyze(
analyzer_id="prebuilt-imageSearch",
inputs=[AnalyzeInput(url="https://example.com/image.jpg")]
)
result = poller.result()
content = result.contents[0]
print(content.markdown)
Analyze Video
from azure.ai.contentunderstanding.models import AnalyzeInput
poller = client.begin_analyze(
analyzer_id="prebuilt-videoSearch",
inputs=[AnalyzeInput(url="https://example.com/video.mp4")]
)
result = poller.result()
# Access video content (AudioVisualContent)
content = result.contents[0]
# Get transcript phrases with timing
for phrase in content.transcript_phrases:
print(f"[{phrase.start_time} - {phrase.end_time}]: {phrase.text}")
# Get key frames (for video)
for frame in content.key_frames:
print(f"Frame at {frame.time}: {frame.description}")
Analyze Audio
from azure.ai.contentunderstanding.models import AnalyzeInput
poller = client.begin_analyze(
analyzer_id="prebuilt-audioSearch",
inputs=[AnalyzeInput(url="https://example.com/audio.mp3")]
)
result = poller.result()
# Access audio transcript
content = result.contents[0]
for phrase in content.transcript_phrases:
print(f"[{phrase.start_time}] {phrase.text}")
Custom Analyzers
Create custom analyzers with field schemas for specialized extraction:
# Create custom analyzer
analyzer = client.create_analyzer(
analyzer_id="my-invoice-analyzer",
analyzer={
"description": "Custom invoice analyzer",
"base_analyzer_id": "prebuilt-documentSearch",
"field_schema": {
"fields": {
"vendor_name": {"type": "string"},
"invoice_total": {"type": "number"},
"line_items": {
"type": "array",
"items": {
"type": "object",
"properties": {
"description": {"type": "string"},
"amount": {"type": "number"}
}
}
}
}
}
}
)
# Use custom analyzer
from azure.ai.contentunderstanding.models import AnalyzeInput
poller = client.begin_analyze(
analyzer_id="my-invoice-analyzer",
inputs=[AnalyzeInput(url="https://example.com/invoice.pdf")]
)
result = poller.result()
# Access extracted fields
print(result.fields["vendor_name"])
print(result.fields["invoice_total"])
Analyzer Management
# List all analyzers
analyzers = client.list_analyzers()
for analyzer in analyzers:
print(f"{analyzer.analyzer_id}: {analyzer.description}")
# Get specific analyzer
analyzer = client.get_analyzer("prebuilt-documentSearch")
# Delete custom analyzer
client.delete_analyzer("my-custom-analyzer")
Async Client
import asyncio
import os
from azure.ai.contentunderstanding.aio import ContentUnderstandingClient
from azure.ai.contentunderstanding.models import AnalyzeInput
from azure.identity.aio import DefaultAzureCredential
async def analyze_document():
endpoint = os.environ["CONTENTUNDERSTANDING_ENDPOINT"]
credential = DefaultAzureCredential()
async with ContentUnderstandingClient(
endpoint=endpoint,
credential=credential
) as client:
poller = await client.begin_analyze(
analyzer_id="prebuilt-documentSearch",
inputs=[AnalyzeInput(url="https://example.com/doc.pdf")]
)
result = await poller.result()
content = result.contents[0]
return content.markdown
asyncio.run(analyze_document())
Content Types
| Class | For | Provides |
|---|---|---|
DocumentContent |
PDF, images, Office docs | Pages, tables, figures, paragraphs |
AudioVisualContent |
Audio, video files | Transcript phrases, timing, key frames |
Both derive from MediaContent which provides basic info and markdown representation.
Model Imports
from azure.ai.contentunderstanding.models import (
AnalyzeInput,
AnalyzeResult,
MediaContentKind,
DocumentContent,
AudioVisualContent,
)
Client Types
| Client | Purpose |
|---|---|
ContentUnderstandingClient |
Sync client for all operations |
ContentUnderstandingClient (aio) |
Async client for all operations |
Best Practices
- Use
begin_analyzewithAnalyzeInput— this is the correct method signature - Access results via
result.contents[0]— results are returned as a list - Use prebuilt analyzers for common scenarios (document/image/audio/video search)
- Create custom analyzers only for domain-specific field extraction
- Use async client for high-throughput scenarios with
azure.identity.aiocredentials - Handle long-running operations — video/audio analysis can take minutes
- Use URL sources when possible to avoid upload overhead
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