From antigravity-awesome-skills
Build search applications with vector, hybrid, and semantic search capabilities.
npx claudepluginhub mit-network/antigravity-awesome-skillsThis skill uses the workspace's default tool permissions.
Build search applications with vector, hybrid, and semantic search capabilities.
Mandates invoking relevant skills via tools before any response in coding sessions. Covers access, priorities, and adaptations for Claude Code, Copilot CLI, Gemini CLI.
Share bugs, ideas, or general feedback.
Build search applications with vector, hybrid, and semantic search capabilities.
npm install @azure/search-documents @azure/identity
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
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);
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);
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 ${result.results.length} documents`);
const results = await searchClient.search("widget", {
select: ["id", "title", "description"],
filter: "category eq 'Tools'",
orderBy: ["title asc"],
top: 10,
});
for await (const result of results.results) {
console.log(`${result.document.title}: ${result.score}`);
}
const queryVector = await getEmbedding("useful tool"); // Your embedding function
const results = await searchClient.search("*", {
vectorSearchOptions: {
queries: [
{
kind: "vector",
vector: queryVector,
fields: ["embedding"],
kNearestNeighborsCount: 10,
},
],
},
select: ["id", "title", "description"],
});
for await (const result of results.results) {
console.log(`${result.document.title}: ${result.score}`);
}
const queryVector = await getEmbedding("useful tool");
const results = await searchClient.search("tool", {
vectorSearchOptions: {
queries: [
{
kind: "vector",
vector: queryVector,
fields: ["embedding"],
kNearestNeighborsCount: 50,
},
],
},
select: ["id", "title", "description"],
top: 10,
});
// Index must have semantic configuration
const index: SearchIndex = {
name: "products",
fields: [...],
semanticSearch: {
configurations: [
{
name: "semantic-config",
prioritizedFields: {
titleField: { name: "title" },
contentFields: [{ name: "description" }],
},
},
],
},
};
// Search with semantic ranking
const results = await searchClient.search("best tool for the job", {
queryType: "semantic",
semanticSearchOptions: {
configurationName: "semantic-config",
captions: { captionType: "extractive" },
answers: { answerType: "extractive", count: 3 },
},
select: ["id", "title", "description"],
});
for await (const result of results.results) {
console.log(`${result.document.title}`);
console.log(` Caption: ${result.captions?.[0]?.text}`);
console.log(` Reranker Score: ${result.rerankerScore}`);
}
// Filter syntax
const results = await searchClient.search("*", {
filter: "category eq 'Electronics' and price lt 100",
facets: ["category,count:10", "brand"],
});
// Access facets
for (const [facetName, facetResults] of Object.entries(results.facets || {})) {
console.log(`${facetName}:`);
for (const facet of facetResults) {
console.log(` ${facet.value}: ${facet.count}`);
}
}
// 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 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 });
import {
SearchClient,
SearchIndexClient,
SearchIndexerClient,
SearchIndex,
SearchField,
SearchOptions,
VectorSearch,
SemanticSearch,
SearchIterator,
} from "@azure/search-documents";
uploadDocuments with arrays, not single docsmergeOrUploadDocuments for updatesincludeTotalCount: true sparingly in productionThis skill is applicable to execute the workflow or actions described in the overview.