install
source · Clone the upstream repo
git clone https://github.com/ComeOnOliver/skillshub
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/ComeOnOliver/skillshub "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/microsoft/skills/azure-search-documents-dotnet" ~/.claude/skills/comeonoliver-skillshub-azure-search-documents-dotnet-ab541e && rm -rf "$T"
manifest:
skills/microsoft/skills/azure-search-documents-dotnet/SKILL.mdsource content
Azure.Search.Documents (.NET)
Build search applications with full-text, vector, semantic, and hybrid search capabilities.
Installation
dotnet add package Azure.Search.Documents dotnet add package Azure.Identity
Current Versions: Stable v11.7.0, Preview v11.8.0-beta.1
Environment Variables
SEARCH_ENDPOINT=https://<search-service>.search.windows.net SEARCH_INDEX_NAME=<index-name> # For API key auth (not recommended for production) SEARCH_API_KEY=<api-key>
Authentication
DefaultAzureCredential (preferred):
using Azure.Identity; using Azure.Search.Documents; var credential = new DefaultAzureCredential(); var client = new SearchClient( new Uri(Environment.GetEnvironmentVariable("SEARCH_ENDPOINT")), Environment.GetEnvironmentVariable("SEARCH_INDEX_NAME"), credential);
API Key:
using Azure; using Azure.Search.Documents; var credential = new AzureKeyCredential( Environment.GetEnvironmentVariable("SEARCH_API_KEY")); var client = new SearchClient( new Uri(Environment.GetEnvironmentVariable("SEARCH_ENDPOINT")), Environment.GetEnvironmentVariable("SEARCH_INDEX_NAME"), credential);
Client Selection
| Client | Purpose |
|---|---|
| Query indexes, upload/update/delete documents |
| Create/manage indexes, synonym maps |
| Manage indexers, skillsets, data sources |
Index Creation
Using FieldBuilder (Recommended)
using Azure.Search.Documents.Indexes; using Azure.Search.Documents.Indexes.Models; // Define model with attributes public class Hotel { [SimpleField(IsKey = true, IsFilterable = true)] public string HotelId { get; set; } [SearchableField(IsSortable = true)] public string HotelName { get; set; } [SearchableField(AnalyzerName = LexicalAnalyzerName.EnLucene)] public string Description { get; set; } [SimpleField(IsFilterable = true, IsSortable = true, IsFacetable = true)] public double? Rating { get; set; } [VectorSearchField(VectorSearchDimensions = 1536, VectorSearchProfileName = "vector-profile")] public ReadOnlyMemory<float>? DescriptionVector { get; set; } } // Create index var indexClient = new SearchIndexClient(endpoint, credential); var fieldBuilder = new FieldBuilder(); var fields = fieldBuilder.Build(typeof(Hotel)); var index = new SearchIndex("hotels") { Fields = fields, VectorSearch = new VectorSearch { Profiles = { new VectorSearchProfile("vector-profile", "hnsw-algo") }, Algorithms = { new HnswAlgorithmConfiguration("hnsw-algo") } } }; await indexClient.CreateOrUpdateIndexAsync(index);
Manual Field Definition
var index = new SearchIndex("hotels") { Fields = { new SimpleField("hotelId", SearchFieldDataType.String) { IsKey = true, IsFilterable = true }, new SearchableField("hotelName") { IsSortable = true }, new SearchableField("description") { AnalyzerName = LexicalAnalyzerName.EnLucene }, new SimpleField("rating", SearchFieldDataType.Double) { IsFilterable = true, IsSortable = true }, new SearchField("descriptionVector", SearchFieldDataType.Collection(SearchFieldDataType.Single)) { VectorSearchDimensions = 1536, VectorSearchProfileName = "vector-profile" } } };
Document Operations
var searchClient = new SearchClient(endpoint, indexName, credential); // Upload (add new) var hotels = new[] { new Hotel { HotelId = "1", HotelName = "Hotel A" } }; await searchClient.UploadDocumentsAsync(hotels); // Merge (update existing) await searchClient.MergeDocumentsAsync(hotels); // Merge or Upload (upsert) await searchClient.MergeOrUploadDocumentsAsync(hotels); // Delete await searchClient.DeleteDocumentsAsync("hotelId", new[] { "1", "2" }); // Batch operations var batch = IndexDocumentsBatch.Create( IndexDocumentsAction.Upload(hotel1), IndexDocumentsAction.Merge(hotel2), IndexDocumentsAction.Delete(hotel3)); await searchClient.IndexDocumentsAsync(batch);
Search Patterns
Basic Search
var options = new SearchOptions { Filter = "rating ge 4", OrderBy = { "rating desc" }, Select = { "hotelId", "hotelName", "rating" }, Size = 10, Skip = 0, IncludeTotalCount = true }; SearchResults<Hotel> results = await searchClient.SearchAsync<Hotel>("luxury", options); Console.WriteLine($"Total: {results.TotalCount}"); await foreach (SearchResult<Hotel> result in results.GetResultsAsync()) { Console.WriteLine($"{result.Document.HotelName} (Score: {result.Score})"); }
Faceted Search
var options = new SearchOptions { Facets = { "rating,count:5", "category" } }; var results = await searchClient.SearchAsync<Hotel>("*", options); foreach (var facet in results.Value.Facets["rating"]) { Console.WriteLine($"Rating {facet.Value}: {facet.Count}"); }
Autocomplete and Suggestions
// Autocomplete var autocompleteOptions = new AutocompleteOptions { Mode = AutocompleteMode.OneTermWithContext }; var autocomplete = await searchClient.AutocompleteAsync("lux", "suggester-name", autocompleteOptions); // Suggestions var suggestOptions = new SuggestOptions { UseFuzzyMatching = true }; var suggestions = await searchClient.SuggestAsync<Hotel>("lux", "suggester-name", suggestOptions);
Vector Search
See references/vector-search.md for detailed patterns.
using Azure.Search.Documents.Models; // Pure vector search var vectorQuery = new VectorizedQuery(embedding) { KNearestNeighborsCount = 5, Fields = { "descriptionVector" } }; var options = new SearchOptions { VectorSearch = new VectorSearchOptions { Queries = { vectorQuery } } }; var results = await searchClient.SearchAsync<Hotel>(null, options);
Semantic Search
See references/semantic-search.md for detailed patterns.
var options = new SearchOptions { QueryType = SearchQueryType.Semantic, SemanticSearch = new SemanticSearchOptions { SemanticConfigurationName = "my-semantic-config", QueryCaption = new QueryCaption(QueryCaptionType.Extractive), QueryAnswer = new QueryAnswer(QueryAnswerType.Extractive) } }; var results = await searchClient.SearchAsync<Hotel>("best hotel for families", options); // Access semantic answers foreach (var answer in results.Value.SemanticSearch.Answers) { Console.WriteLine($"Answer: {answer.Text} (Score: {answer.Score})"); } // Access captions await foreach (var result in results.Value.GetResultsAsync()) { var caption = result.SemanticSearch?.Captions?.FirstOrDefault(); Console.WriteLine($"Caption: {caption?.Text}"); }
Hybrid Search (Vector + Keyword + Semantic)
var vectorQuery = new VectorizedQuery(embedding) { KNearestNeighborsCount = 5, Fields = { "descriptionVector" } }; var options = new SearchOptions { QueryType = SearchQueryType.Semantic, SemanticSearch = new SemanticSearchOptions { SemanticConfigurationName = "my-semantic-config" }, VectorSearch = new VectorSearchOptions { Queries = { vectorQuery } } }; // Combines keyword search, vector search, and semantic ranking var results = await searchClient.SearchAsync<Hotel>("luxury beachfront", options);
Field Attributes Reference
| Attribute | Purpose |
|---|---|
| Non-searchable field (filters, sorting, facets) |
| Full-text searchable field |
| Vector embedding field |
| Document key (required, one per index) |
| Enable $filter expressions |
| Enable $orderby |
| Enable faceted navigation |
| Exclude from results |
| Specify text analyzer |
Error Handling
using Azure; try { var results = await searchClient.SearchAsync<Hotel>("query"); } catch (RequestFailedException ex) when (ex.Status == 404) { Console.WriteLine("Index not found"); } catch (RequestFailedException ex) { Console.WriteLine($"Search error: {ex.Status} - {ex.ErrorCode}: {ex.Message}"); }
Best Practices
- Use
over API keys for productionDefaultAzureCredential - Use
with model attributes for type-safe index definitionsFieldBuilder - Use
for idempotent index creationCreateOrUpdateIndexAsync - Batch document operations for better throughput
- Use
to return only needed fieldsSelect - Configure semantic search for natural language queries
- Combine vector + keyword + semantic for best relevance
Reference Files
| File | Contents |
|---|---|
| references/vector-search.md | Vector search, hybrid search, vectorizers |
| references/semantic-search.md | Semantic ranking, captions, answers |