Agent skill
azure-ai-textanalytics-py
Azure AI Text Analytics SDK for sentiment analysis, entity recognition, key phrases, language detection, PII, and healthcare NLP. Use for natural language processing on text. Triggers: "text analytics", "sentiment analysis", "entity recognition", "key phrase", "PII detection", "TextAnalyticsClient".
Install this agent skill to your Project
npx add-skill https://github.com/aiskillstore/marketplace/tree/main/skills/sickn33/azure-ai-textanalytics-py
SKILL.md
Azure AI Text Analytics SDK for Python
Client library for Azure AI Language service NLP capabilities including sentiment, entities, key phrases, and more.
Installation
pip install azure-ai-textanalytics
Environment Variables
AZURE_LANGUAGE_ENDPOINT=https://<resource>.cognitiveservices.azure.com
AZURE_LANGUAGE_KEY=<your-api-key> # If using API key
Authentication
API Key
import os
from azure.core.credentials import AzureKeyCredential
from azure.ai.textanalytics import TextAnalyticsClient
endpoint = os.environ["AZURE_LANGUAGE_ENDPOINT"]
key = os.environ["AZURE_LANGUAGE_KEY"]
client = TextAnalyticsClient(endpoint, AzureKeyCredential(key))
Entra ID (Recommended)
from azure.ai.textanalytics import TextAnalyticsClient
from azure.identity import DefaultAzureCredential
client = TextAnalyticsClient(
endpoint=os.environ["AZURE_LANGUAGE_ENDPOINT"],
credential=DefaultAzureCredential()
)
Sentiment Analysis
documents = [
"I had a wonderful trip to Seattle last week!",
"The food was terrible and the service was slow."
]
result = client.analyze_sentiment(documents, show_opinion_mining=True)
for doc in result:
if not doc.is_error:
print(f"Sentiment: {doc.sentiment}")
print(f"Scores: pos={doc.confidence_scores.positive:.2f}, "
f"neg={doc.confidence_scores.negative:.2f}, "
f"neu={doc.confidence_scores.neutral:.2f}")
# Opinion mining (aspect-based sentiment)
for sentence in doc.sentences:
for opinion in sentence.mined_opinions:
target = opinion.target
print(f" Target: '{target.text}' - {target.sentiment}")
for assessment in opinion.assessments:
print(f" Assessment: '{assessment.text}' - {assessment.sentiment}")
Entity Recognition
documents = ["Microsoft was founded by Bill Gates and Paul Allen in Albuquerque."]
result = client.recognize_entities(documents)
for doc in result:
if not doc.is_error:
for entity in doc.entities:
print(f"Entity: {entity.text}")
print(f" Category: {entity.category}")
print(f" Subcategory: {entity.subcategory}")
print(f" Confidence: {entity.confidence_score:.2f}")
PII Detection
documents = ["My SSN is 123-45-6789 and my email is john@example.com"]
result = client.recognize_pii_entities(documents)
for doc in result:
if not doc.is_error:
print(f"Redacted: {doc.redacted_text}")
for entity in doc.entities:
print(f"PII: {entity.text} ({entity.category})")
Key Phrase Extraction
documents = ["Azure AI provides powerful machine learning capabilities for developers."]
result = client.extract_key_phrases(documents)
for doc in result:
if not doc.is_error:
print(f"Key phrases: {doc.key_phrases}")
Language Detection
documents = ["Ce document est en francais.", "This is written in English."]
result = client.detect_language(documents)
for doc in result:
if not doc.is_error:
print(f"Language: {doc.primary_language.name} ({doc.primary_language.iso6391_name})")
print(f"Confidence: {doc.primary_language.confidence_score:.2f}")
Healthcare Text Analytics
documents = ["Patient has diabetes and was prescribed metformin 500mg twice daily."]
poller = client.begin_analyze_healthcare_entities(documents)
result = poller.result()
for doc in result:
if not doc.is_error:
for entity in doc.entities:
print(f"Entity: {entity.text}")
print(f" Category: {entity.category}")
print(f" Normalized: {entity.normalized_text}")
# Entity links (UMLS, etc.)
for link in entity.data_sources:
print(f" Link: {link.name} - {link.entity_id}")
Multiple Analysis (Batch)
from azure.ai.textanalytics import (
RecognizeEntitiesAction,
ExtractKeyPhrasesAction,
AnalyzeSentimentAction
)
documents = ["Microsoft announced new Azure AI features at Build conference."]
poller = client.begin_analyze_actions(
documents,
actions=[
RecognizeEntitiesAction(),
ExtractKeyPhrasesAction(),
AnalyzeSentimentAction()
]
)
results = poller.result()
for doc_results in results:
for result in doc_results:
if result.kind == "EntityRecognition":
print(f"Entities: {[e.text for e in result.entities]}")
elif result.kind == "KeyPhraseExtraction":
print(f"Key phrases: {result.key_phrases}")
elif result.kind == "SentimentAnalysis":
print(f"Sentiment: {result.sentiment}")
Async Client
from azure.ai.textanalytics.aio import TextAnalyticsClient
from azure.identity.aio import DefaultAzureCredential
async def analyze():
async with TextAnalyticsClient(
endpoint=endpoint,
credential=DefaultAzureCredential()
) as client:
result = await client.analyze_sentiment(documents)
# Process results...
Client Types
| Client | Purpose |
|---|---|
TextAnalyticsClient |
All text analytics operations |
TextAnalyticsClient (aio) |
Async version |
Available Operations
| Method | Description |
|---|---|
analyze_sentiment |
Sentiment analysis with opinion mining |
recognize_entities |
Named entity recognition |
recognize_pii_entities |
PII detection and redaction |
recognize_linked_entities |
Entity linking to Wikipedia |
extract_key_phrases |
Key phrase extraction |
detect_language |
Language detection |
begin_analyze_healthcare_entities |
Healthcare NLP (long-running) |
begin_analyze_actions |
Multiple analyses in batch |
Best Practices
- Use batch operations for multiple documents (up to 10 per request)
- Enable opinion mining for detailed aspect-based sentiment
- Use async client for high-throughput scenarios
- Handle document errors — results list may contain errors for some docs
- Specify language when known to improve accuracy
- Use context manager or close client explicitly
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