skills_antigravity/skills/azure-search-documents-py/SKILL.md
Azure AI Search SDK for Python. Use for vector search, hybrid search, semantic ranking, indexing, and skillsets. Triggers: "azure-search-documents", "SearchClient", "SearchIndexClient", "vector search", "hybrid search", "semantic search".
npx skillsauth add alexsander532/atlas azure-search-documents-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.
Full-text, vector, and hybrid search with AI enrichment capabilities.
pip install azure-search-documents
AZURE_SEARCH_ENDPOINT=https://<service-name>.search.windows.net
AZURE_SEARCH_API_KEY=<your-api-key>
AZURE_SEARCH_INDEX_NAME=<your-index-name>
from azure.search.documents import SearchClient
from azure.core.credentials import AzureKeyCredential
client = SearchClient(
endpoint=os.environ["AZURE_SEARCH_ENDPOINT"],
index_name=os.environ["AZURE_SEARCH_INDEX_NAME"],
credential=AzureKeyCredential(os.environ["AZURE_SEARCH_API_KEY"])
)
from azure.search.documents import SearchClient
from azure.identity import DefaultAzureCredential
client = SearchClient(
endpoint=os.environ["AZURE_SEARCH_ENDPOINT"],
index_name=os.environ["AZURE_SEARCH_INDEX_NAME"],
credential=DefaultAzureCredential()
)
| Client | Purpose |
|--------|---------|
| SearchClient | Search and document operations |
| SearchIndexClient | Index management, synonym maps |
| SearchIndexerClient | Indexers, data sources, skillsets |
from azure.search.documents.indexes import SearchIndexClient
from azure.search.documents.indexes.models import (
SearchIndex,
SearchField,
SearchFieldDataType,
VectorSearch,
HnswAlgorithmConfiguration,
VectorSearchProfile,
SearchableField,
SimpleField
)
index_client = SearchIndexClient(endpoint, AzureKeyCredential(key))
fields = [
SimpleField(name="id", type=SearchFieldDataType.String, key=True),
SearchableField(name="title", type=SearchFieldDataType.String),
SearchableField(name="content", type=SearchFieldDataType.String),
SearchField(
name="content_vector",
type=SearchFieldDataType.Collection(SearchFieldDataType.Single),
searchable=True,
vector_search_dimensions=1536,
vector_search_profile_name="my-vector-profile"
)
]
vector_search = VectorSearch(
algorithms=[
HnswAlgorithmConfiguration(name="my-hnsw")
],
profiles=[
VectorSearchProfile(
name="my-vector-profile",
algorithm_configuration_name="my-hnsw"
)
]
)
index = SearchIndex(
name="my-index",
fields=fields,
vector_search=vector_search
)
index_client.create_or_update_index(index)
from azure.search.documents import SearchClient
client = SearchClient(endpoint, "my-index", AzureKeyCredential(key))
documents = [
{
"id": "1",
"title": "Azure AI Search",
"content": "Full-text and vector search service",
"content_vector": [0.1, 0.2, ...] # 1536 dimensions
}
]
result = client.upload_documents(documents)
print(f"Uploaded {len(result)} documents")
results = client.search(
search_text="azure search",
select=["id", "title", "content"],
top=10
)
for result in results:
print(f"{result['title']}: {result['@search.score']}")
from azure.search.documents.models import VectorizedQuery
# Your query embedding (1536 dimensions)
query_vector = get_embedding("semantic search capabilities")
vector_query = VectorizedQuery(
vector=query_vector,
k_nearest_neighbors=10,
fields="content_vector"
)
results = client.search(
vector_queries=[vector_query],
select=["id", "title", "content"]
)
for result in results:
print(f"{result['title']}: {result['@search.score']}")
from azure.search.documents.models import VectorizedQuery
vector_query = VectorizedQuery(
vector=query_vector,
k_nearest_neighbors=10,
fields="content_vector"
)
results = client.search(
search_text="azure search",
vector_queries=[vector_query],
select=["id", "title", "content"],
top=10
)
from azure.search.documents.models import QueryType
results = client.search(
search_text="what is azure search",
query_type=QueryType.SEMANTIC,
semantic_configuration_name="my-semantic-config",
select=["id", "title", "content"],
top=10
)
for result in results:
print(f"{result['title']}")
if result.get("@search.captions"):
print(f" Caption: {result['@search.captions'][0].text}")
results = client.search(
search_text="*",
filter="category eq 'Technology' and rating gt 4",
order_by=["rating desc"],
select=["id", "title", "category", "rating"]
)
results = client.search(
search_text="*",
facets=["category,count:10", "rating"],
top=0 # Only get facets, no documents
)
for facet_name, facet_values in results.get_facets().items():
print(f"{facet_name}:")
for facet in facet_values:
print(f" {facet['value']}: {facet['count']}")
# Autocomplete
results = client.autocomplete(
search_text="sea",
suggester_name="my-suggester",
mode="twoTerms"
)
# Suggest
results = client.suggest(
search_text="sea",
suggester_name="my-suggester",
select=["title"]
)
from azure.search.documents.indexes import SearchIndexerClient
from azure.search.documents.indexes.models import (
SearchIndexer,
SearchIndexerDataSourceConnection,
SearchIndexerSkillset,
EntityRecognitionSkill,
InputFieldMappingEntry,
OutputFieldMappingEntry
)
indexer_client = SearchIndexerClient(endpoint, AzureKeyCredential(key))
# Create data source
data_source = SearchIndexerDataSourceConnection(
name="my-datasource",
type="azureblob",
connection_string=connection_string,
container={"name": "documents"}
)
indexer_client.create_or_update_data_source_connection(data_source)
# Create skillset
skillset = SearchIndexerSkillset(
name="my-skillset",
skills=[
EntityRecognitionSkill(
inputs=[InputFieldMappingEntry(name="text", source="/document/content")],
outputs=[OutputFieldMappingEntry(name="organizations", target_name="organizations")]
)
]
)
indexer_client.create_or_update_skillset(skillset)
# Create indexer
indexer = SearchIndexer(
name="my-indexer",
data_source_name="my-datasource",
target_index_name="my-index",
skillset_name="my-skillset"
)
indexer_client.create_or_update_indexer(indexer)
| File | Contents | |------|----------| | references/vector-search.md | HNSW configuration, integrated vectorization, multi-vector queries | | references/semantic-ranking.md | Semantic configuration, captions, answers, hybrid patterns | | scripts/setup_vector_index.py | CLI script to create vector-enabled search index |
Write clean, idiomatic Python code for Azure AI Search using azure-search-documents.
pip install azure-search-documents azure-identity
AZURE_SEARCH_ENDPOINT=https://<search-service>.search.windows.net
AZURE_SEARCH_INDEX_NAME=<index-name>
# For API key auth (not recommended for production)
AZURE_SEARCH_API_KEY=<api-key>
DefaultAzureCredential (preferred):
from azure.identity import DefaultAzureCredential
from azure.search.documents import SearchClient
credential = DefaultAzureCredential()
client = SearchClient(endpoint, index_name, credential)
API Key:
from azure.core.credentials import AzureKeyCredential
from azure.search.documents import SearchClient
client = SearchClient(endpoint, index_name, AzureKeyCredential(api_key))
| Client | Purpose |
|--------|---------|
| SearchClient | Query indexes, upload/update/delete documents |
| SearchIndexClient | Create/manage indexes, knowledge sources, knowledge bases |
| SearchIndexerClient | Manage indexers, skillsets, data sources |
| KnowledgeBaseRetrievalClient | Agentic retrieval with LLM-powered Q&A |
from azure.search.documents.indexes import SearchIndexClient
from azure.search.documents.indexes.models import (
SearchIndex, SearchField, VectorSearch, VectorSearchProfile,
HnswAlgorithmConfiguration, AzureOpenAIVectorizer,
AzureOpenAIVectorizerParameters, SemanticSearch,
SemanticConfiguration, SemanticPrioritizedFields, SemanticField
)
index = SearchIndex(
name=index_name,
fields=[
SearchField(name="id", type="Edm.String", key=True),
SearchField(name="content", type="Edm.String", searchable=True),
SearchField(name="embedding", type="Collection(Edm.Single)",
vector_search_dimensions=3072,
vector_search_profile_name="vector-profile"),
],
vector_search=VectorSearch(
profiles=[VectorSearchProfile(
name="vector-profile",
algorithm_configuration_name="hnsw-algo",
vectorizer_name="openai-vectorizer"
)],
algorithms=[HnswAlgorithmConfiguration(name="hnsw-algo")],
vectorizers=[AzureOpenAIVectorizer(
vectorizer_name="openai-vectorizer",
parameters=AzureOpenAIVectorizerParameters(
resource_url=aoai_endpoint,
deployment_name=embedding_deployment,
model_name=embedding_model
)
)]
),
semantic_search=SemanticSearch(
default_configuration_name="semantic-config",
configurations=[SemanticConfiguration(
name="semantic-config",
prioritized_fields=SemanticPrioritizedFields(
content_fields=[SemanticField(field_name="content")]
)
)]
)
)
index_client = SearchIndexClient(endpoint, credential)
index_client.create_or_update_index(index)
from azure.search.documents import SearchIndexingBufferedSender
# Batch upload with automatic batching
with SearchIndexingBufferedSender(endpoint, index_name, credential) as sender:
sender.upload_documents(documents)
# Direct operations via SearchClient
search_client = SearchClient(endpoint, index_name, credential)
search_client.upload_documents(documents) # Add new
search_client.merge_documents(documents) # Update existing
search_client.merge_or_upload_documents(documents) # Upsert
search_client.delete_documents(documents) # Remove
# Basic search
results = search_client.search(search_text="query")
# Vector search
from azure.search.documents.models import VectorizedQuery
results = search_client.search(
search_text=None,
vector_queries=[VectorizedQuery(
vector=embedding,
k_nearest_neighbors=5,
fields="embedding"
)]
)
# Hybrid search (vector + keyword)
results = search_client.search(
search_text="query",
vector_queries=[VectorizedQuery(vector=embedding, k_nearest_neighbors=5, fields="embedding")],
query_type="semantic",
semantic_configuration_name="semantic-config"
)
# With filters
results = search_client.search(
search_text="query",
filter="category eq 'technology'",
select=["id", "title", "content"],
top=10
)
For LLM-powered Q&A with answer synthesis, see references/agentic-retrieval.md.
Key concepts:
EXTRACTIVE_DATA (raw chunks) or ANSWER_SYNTHESIS (LLM-generated answers)from azure.search.documents.aio import SearchClient
async with SearchClient(endpoint, index_name, credential) as client:
results = await client.search(search_text="query")
async for result in results:
print(result["title"])
DefaultAzureCredential over API keys for productionSearchIndexingBufferedSender for batch uploads (handles batching/retries)create_or_update_index for idempotent index creationclose()| EDM Type | Python | Notes |
|----------|--------|-------|
| Edm.String | str | Searchable text |
| Edm.Int32 | int | Integer |
| Edm.Int64 | int | Long integer |
| Edm.Double | float | Floating point |
| Edm.Boolean | bool | True/False |
| Edm.DateTimeOffset | datetime | ISO 8601 |
| Collection(Edm.Single) | List[float] | Vector embeddings |
| Collection(Edm.String) | List[str] | String arrays |
from azure.core.exceptions import (
HttpResponseError,
ResourceNotFoundError,
ResourceExistsError
)
try:
result = search_client.get_document(key="123")
except ResourceNotFoundError:
print("Document not found")
except HttpResponseError as e:
print(f"Search error: {e.message}")
tools
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.