skills_antigravity/skills/azure-ai-contentunderstanding-py/SKILL.md
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".
npx skillsauth add alexsander532/atlas azure-ai-contentunderstanding-pyInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Multimodal AI service that extracts semantic content from documents, video, audio, and image files for RAG and automated workflows.
pip install azure-ai-contentunderstanding
CONTENTUNDERSTANDING_ENDPOINT=https://<resource>.cognitiveservices.azure.com/
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)
Content Understanding operations are asynchronous long-running operations:
begin_analyze() (returns a poller).result())AnalyzeResult.contents| 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 |
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)
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)
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)
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}")
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}")
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"])
# 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")
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())
| 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.
from azure.ai.contentunderstanding.models import (
AnalyzeInput,
AnalyzeResult,
MediaContentKind,
DocumentContent,
AudioVisualContent,
)
| Client | Purpose |
|--------|---------|
| ContentUnderstandingClient | Sync client for all operations |
| ContentUnderstandingClient (aio) | Async client for all operations |
begin_analyze with AnalyzeInput — this is the correct method signatureresult.contents[0] — results are returned as a listazure.identity.aio credentialstools
Multi-agent autonomous startup system for Claude Code. Triggers on "Loki Mode". Orchestrates 100+ specialized agents across engineering, QA, DevOps, security, data/ML, business operations, marketing, HR, and customer success. Takes PRD to fully deployed, revenue-generating product with zero human intervention. Features Task tool for subagent dispatch, parallel code review with 3 specialized reviewers, severity-based issue triage, distributed task queue with dead letter handling, automatic deployment to cloud providers, A/B testing, customer feedback loops, incident response, circuit breakers, and self-healing. Handles rate limits via distributed state checkpoints and auto-resume with exponential backoff. Requires --dangerously-skip-permissions flag.
development
Best practices for Remotion - Video creation in React
content-media
When the user wants to create, optimize, or analyze a referral program, affiliate program, or word-of-mouth strategy. Also use when the user mentions 'referral,' 'affiliate,' 'ambassador,' 'word of mouth,' 'viral loop,' 'refer a friend,' or 'partner program.' This skill covers program design, incentive structure, and growth optimization.
development
Creates exhaustive technical references and API documentation. Generates comprehensive parameter listings, configuration guides, and searchable reference materials. Use PROACTIVELY for API docs, configuration references, or complete technical specifications.