azure-search-documents-ts
skill✓Build search applications using Azure AI Search SDK for JavaScript (@azure/search-documents). Use when creating/managing indexes, implementing vector/hybrid search, semantic ranking, or building agentic retrieval with knowledge bases.
apm::install
apm install @microsoft/azure-search-documents-tsapm::skill.md
---
name: azure-search-documents-ts
description: Build search applications using Azure AI Search SDK for JavaScript (@azure/search-documents). Use when creating/managing indexes, implementing vector/hybrid search, semantic ranking, or building agentic retrieval with knowledge bases.
package: "@azure/search-documents"
---
# Azure AI Search SDK for TypeScript
Build search applications with vector, hybrid, and semantic search capabilities.
## Installation
```bash
npm install @azure/search-documents @azure/identity
```
## Environment Variables
```bash
AZURE_SEARCH_ENDPOINT=https://<service-name>.search.windows.net
AZURE_SEARCH_INDEX_NAME=my-index
AZURE_SEARCH_ADMIN_KEY=<admin-key> # Optional if using Entra ID
```
## Authentication
```typescript
import { SearchClient, SearchIndexClient } from "@azure/search-documents";
import { DefaultAzureCredential } from "@azure/identity";
const endpoint = process.env.AZURE_SEARCH_ENDPOINT!;
const indexName = process.env.AZURE_SEARCH_INDEX_NAME!;
const credential = new DefaultAzureCredential();
// For searching
const searchClient = new SearchClient(endpoint, indexName, credential);
// For index management
const indexClient = new SearchIndexClient(endpoint, credential);
```
## Core Workflow
### Create Index with Vector Field
```typescript
import { SearchIndex, SearchField, VectorSearch } from "@azure/search-documents";
const index: SearchIndex = {
name: "products",
fields: [
{ name: "id", type: "Edm.String", key: true },
{ name: "title", type: "Edm.String", searchable: true },
{ name: "description", type: "Edm.String", searchable: true },
{ name: "category", type: "Edm.String", filterable: true, facetable: true },
{
name: "embedding",
type: "Collection(Edm.Single)",
searchable: true,
vectorSearchDimensions: 1536,
vectorSearchProfileName: "vector-profile",
},
],
vectorSearch: {
algorithms: [
{ name: "hnsw-algorithm", kind: "hnsw" },
],
profiles: [
{ name: "vector-profile", algorithmConfigurationName: "hnsw-algorithm" },
],
},
};
await indexClient.createOrUpdateIndex(index);
```
### Index Documents
```typescript
const documents = [
{ id: "1", title: "Widget", description: "A useful widget", category: "Tools", embedding: [...] },
{ id: "2", title: "Gadget", description: "A cool gadget", category: "Electronics", embedding: [...] },
];
const result = await searchClient.uploadDocuments(documents);
console.log(`Indexed ${result.results.length} documents`);
```
### Full-Text Search
```typescript
const results = await searchClient.search("widget", {
select: ["id", "title", "description"],
filter: "category eq 'Tools'",
orderBy: ["title asc"],
top: 10,
});
for await (const result of results.results) {
console.log(`${result.document.title}: ${result.score}`);
}
```
### Vector Search
```typescript
const queryVector = await getEmbedding("useful tool"); // Your embedding function
const results = await searchClient.search("*", {
vectorSearchOptions: {
queries: [
{
kind: "vector",
vector: queryVector,
fields: ["embedding"],
kNearestNeighborsCount: 10,
},
],
},
select: ["id", "title", "description"],
});
for await (const result of results.results) {
console.log(`${result.document.title}: ${result.score}`);
}
```
### Hybrid Search (Text + Vector)
```typescript
const queryVector = await getEmbedding("useful tool");
const results = await searchClient.search("tool", {
vectorSearchOptions: {
queries: [
{
kind: "vector",
vector: queryVector,
fields: ["embedding"],
kNearestNeighborsCount: 50,
},
],
},
select: ["id", "title", "description"],
top: 10,
});
```
### Semantic Search
```typescript
// Index must have semantic configuration
const index: SearchIndex = {
name: "products",
fields: [...],
semanticSearch: {
configurations: [
{
name: "semantic-config",
prioritizedFields: {
titleField: { name: "title" },
contentFields: [{ name: "description" }],
},
},
],
},
};
// Search with semantic ranking
const results = await searchClient.search("best tool for the job", {
queryType: "semantic",
semanticSearchOptions: {
configurationName: "semantic-config",
captions: { captionType: "extractive" },
answers: { answerType: "extractive", count: 3 },
},
select: ["id", "title", "description"],
});
for await (const result of results.results) {
console.log(`${result.document.title}`);
console.log(` Caption: ${result.captions?.[0]?.text}`);
console.log(` Reranker Score: ${result.rerankerScore}`);
}
```
## Filtering and Facets
```typescript
// Filter syntax
const results = await searchClient.search("*", {
filter: "category eq 'Electronics' and price lt 100",
facets: ["category,count:10", "brand"],
});
// Access facets
for (const [facetName, facetResults] of Object.entries(results.facets || {})) {
console.log(`${facetName}:`);
for (const facet of facetResults) {
console.log(` ${facet.value}: ${facet.count}`);
}
}
```
## Autocomplete and Suggestions
```typescript
// Create suggester in index
const index: SearchIndex = {
name: "products",
fields: [...],
suggesters: [
{ name: "sg", sourceFields: ["title", "description"] },
],
};
// Autocomplete
const autocomplete = await searchClient.autocomplete("wid", "sg", {
mode: "twoTerms",
top: 5,
});
// Suggestions
const suggestions = await searchClient.suggest("wid", "sg", {
select: ["title"],
top: 5,
});
```
## Batch Operations
```typescript
// Batch upload, merge, delete
const batch = [
{ upload: { id: "1", title: "New Item" } },
{ merge: { id: "2", title: "Updated Title" } },
{ delete: { id: "3" } },
];
const result = await searchClient.indexDocuments({ actions: batch });
```
## Key Types
```typescript
import {
SearchClient,
SearchIndexClient,
SearchIndexerClient,
SearchIndex,
SearchField,
SearchOptions,
VectorSearch,
SemanticSearch,
SearchIterator,
} from "@azure/search-documents";
```
## Best Practices
1. **Use hybrid search** - Combine vector + text for best results
2. **Enable semantic ranking** - Improves relevance for natural language queries
3. **Batch document uploads** - Use `uploadDocuments` with arrays, not single docs
4. **Use filters for security** - Implement document-level security with filters
5. **Index incrementally** - Use `mergeOrUploadDocuments` for updates
6. **Monitor query performance** - Use `includeTotalCount: true` sparingly in production