skills/sickn33/azure-ai-vision-imageanalysis-py/SKILL.md
Azure AI Vision Image Analysis SDK for captions, tags, objects, OCR, people detection, and smart cropping. Use for computer vision and image understanding tasks. Triggers: "image analysis", "computer vision", "OCR", "object detection", "ImageAnalysisClient", "image caption".
npx skillsauth add aiskillstore/marketplace azure-ai-vision-imageanalysis-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.
Client library for Azure AI Vision 4.0 image analysis including captions, tags, objects, OCR, and more.
pip install azure-ai-vision-imageanalysis
VISION_ENDPOINT=https://<resource>.cognitiveservices.azure.com
VISION_KEY=<your-api-key> # If using API key
import os
from azure.ai.vision.imageanalysis import ImageAnalysisClient
from azure.core.credentials import AzureKeyCredential
endpoint = os.environ["VISION_ENDPOINT"]
key = os.environ["VISION_KEY"]
client = ImageAnalysisClient(
endpoint=endpoint,
credential=AzureKeyCredential(key)
)
from azure.ai.vision.imageanalysis import ImageAnalysisClient
from azure.identity import DefaultAzureCredential
client = ImageAnalysisClient(
endpoint=os.environ["VISION_ENDPOINT"],
credential=DefaultAzureCredential()
)
from azure.ai.vision.imageanalysis.models import VisualFeatures
image_url = "https://example.com/image.jpg"
result = client.analyze_from_url(
image_url=image_url,
visual_features=[
VisualFeatures.CAPTION,
VisualFeatures.TAGS,
VisualFeatures.OBJECTS,
VisualFeatures.READ,
VisualFeatures.PEOPLE,
VisualFeatures.SMART_CROPS,
VisualFeatures.DENSE_CAPTIONS
],
gender_neutral_caption=True,
language="en"
)
with open("image.jpg", "rb") as f:
image_data = f.read()
result = client.analyze(
image_data=image_data,
visual_features=[VisualFeatures.CAPTION, VisualFeatures.TAGS]
)
result = client.analyze_from_url(
image_url=image_url,
visual_features=[VisualFeatures.CAPTION],
gender_neutral_caption=True
)
if result.caption:
print(f"Caption: {result.caption.text}")
print(f"Confidence: {result.caption.confidence:.2f}")
result = client.analyze_from_url(
image_url=image_url,
visual_features=[VisualFeatures.DENSE_CAPTIONS]
)
if result.dense_captions:
for caption in result.dense_captions.list:
print(f"Caption: {caption.text}")
print(f" Confidence: {caption.confidence:.2f}")
print(f" Bounding box: {caption.bounding_box}")
result = client.analyze_from_url(
image_url=image_url,
visual_features=[VisualFeatures.TAGS]
)
if result.tags:
for tag in result.tags.list:
print(f"Tag: {tag.name} (confidence: {tag.confidence:.2f})")
result = client.analyze_from_url(
image_url=image_url,
visual_features=[VisualFeatures.OBJECTS]
)
if result.objects:
for obj in result.objects.list:
print(f"Object: {obj.tags[0].name}")
print(f" Confidence: {obj.tags[0].confidence:.2f}")
box = obj.bounding_box
print(f" Bounding box: x={box.x}, y={box.y}, w={box.width}, h={box.height}")
result = client.analyze_from_url(
image_url=image_url,
visual_features=[VisualFeatures.READ]
)
if result.read:
for block in result.read.blocks:
for line in block.lines:
print(f"Line: {line.text}")
print(f" Bounding polygon: {line.bounding_polygon}")
# Word-level details
for word in line.words:
print(f" Word: {word.text} (confidence: {word.confidence:.2f})")
result = client.analyze_from_url(
image_url=image_url,
visual_features=[VisualFeatures.PEOPLE]
)
if result.people:
for person in result.people.list:
print(f"Person detected:")
print(f" Confidence: {person.confidence:.2f}")
box = person.bounding_box
print(f" Bounding box: x={box.x}, y={box.y}, w={box.width}, h={box.height}")
result = client.analyze_from_url(
image_url=image_url,
visual_features=[VisualFeatures.SMART_CROPS],
smart_crops_aspect_ratios=[0.9, 1.33, 1.78] # Portrait, 4:3, 16:9
)
if result.smart_crops:
for crop in result.smart_crops.list:
print(f"Aspect ratio: {crop.aspect_ratio}")
box = crop.bounding_box
print(f" Crop region: x={box.x}, y={box.y}, w={box.width}, h={box.height}")
from azure.ai.vision.imageanalysis.aio import ImageAnalysisClient
from azure.identity.aio import DefaultAzureCredential
async def analyze_image():
async with ImageAnalysisClient(
endpoint=endpoint,
credential=DefaultAzureCredential()
) as client:
result = await client.analyze_from_url(
image_url=image_url,
visual_features=[VisualFeatures.CAPTION]
)
print(result.caption.text)
| Feature | Description |
|---------|-------------|
| CAPTION | Single sentence describing the image |
| DENSE_CAPTIONS | Captions for multiple regions |
| TAGS | Content tags (objects, scenes, actions) |
| OBJECTS | Object detection with bounding boxes |
| READ | OCR text extraction |
| PEOPLE | People detection with bounding boxes |
| SMART_CROPS | Suggested crop regions for thumbnails |
from azure.core.exceptions import HttpResponseError
try:
result = client.analyze_from_url(
image_url=image_url,
visual_features=[VisualFeatures.CAPTION]
)
except HttpResponseError as e:
print(f"Status code: {e.status_code}")
print(f"Reason: {e.reason}")
print(f"Message: {e.error.message}")
development
Apple Human Interface Guidelines for content display components. Use this skill when the user asks about charts component, collection view, image view, web view, color well, image well, activity view, lockup, data visualization, content display, displaying images, rendering web content, color pickers, or presenting collections of items in Apple apps. Also use when the user says how should I display charts, what's the best way to show images, should I use a web view, how do I build a grid of items, what component shows media, or how do I present a share sheet. Cross-references: hig-foundations for color/typography/accessibility, hig-patterns for data visualization patterns, hig-components-layout for structural containers, hig-platforms for platform-specific component behavior.
tools
Automate HelpDesk tasks via Rube MCP (Composio): list tickets, manage views, use canned responses, and configure custom fields. Always search tools first for current schemas.
testing
Expert Haskell engineer specializing in advanced type systems, pure functional design, and high-reliability software. Use PROACTIVELY for type-level programming, concurrency, and architecture guidance.
tools
GraphQL gives clients exactly the data they need - no more, no less. One endpoint, typed schema, introspection. But the flexibility that makes it powerful also makes it dangerous. Without proper controls, clients can craft queries that bring down your server. This skill covers schema design, resolvers, DataLoader for N+1 prevention, federation for microservices, and client integration with Apollo/urql. Key insight: GraphQL is a contract. The schema is the API documentation. Design it carefully.