azure-search-documents-dotnet
Azure AI Search SDK for .NET (Azure.Search.Documents). Use for building search applications with full-text, vector, semantic, and hybrid search.
Best use case
azure-search-documents-dotnet is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Azure AI Search SDK for .NET (Azure.Search.Documents). Use for building search applications with full-text, vector, semantic, and hybrid search.
Teams using azure-search-documents-dotnet should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/azure-search-documents-dotnet/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How azure-search-documents-dotnet Compares
| Feature / Agent | azure-search-documents-dotnet | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Azure AI Search SDK for .NET (Azure.Search.Documents). Use for building search applications with full-text, vector, semantic, and hybrid search.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# Azure.Search.Documents (.NET)
Build search applications with full-text, vector, semantic, and hybrid search capabilities.
## Installation
```bash
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
```bash
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)**:
```csharp
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**:
```csharp
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 |
|--------|---------|
| `SearchClient` | Query indexes, upload/update/delete documents |
| `SearchIndexClient` | Create/manage indexes, synonym maps |
| `SearchIndexerClient` | Manage indexers, skillsets, data sources |
## Index Creation
### Using FieldBuilder (Recommended)
```csharp
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
```csharp
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
```csharp
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
```csharp
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
```csharp
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($"Rating {facet.Value}: {facet.Count}");
}
```
### Autocomplete and Suggestions
```csharp
// Autocomplete
var autocompleteOptions = new AutocompleteOptions { Mode = AutocompleteMode.OneTermWithContext };
var autocomplete = await searchClient.AutocompleteAsync("lux", "suggester-name", autocompleteOptions);
// Suggestions
var suggestOptions = new SuggestOptions { UseFuzzyMatching = true };
var suggestions = await searchClient.SuggestAsync<Hotel>("lux", "suggester-name", suggestOptions);
```
## Vector Search
See references/vector-search.md for detailed patterns.
```csharp
using Azure.Search.Documents.Models;
// Pure vector search
var vectorQuery = new VectorizedQuery(embedding)
{
KNearestNeighborsCount = 5,
Fields = { "descriptionVector" }
};
var options = new SearchOptions
{
VectorSearch = new VectorSearchOptions
{
Queries = { vectorQuery }
}
};
var results = await searchClient.SearchAsync<Hotel>(null, options);
```
## Semantic Search
See references/semantic-search.md for detailed patterns.
```csharp
var options = new SearchOptions
{
QueryType = SearchQueryType.Semantic,
SemanticSearch = new SemanticSearchOptions
{
SemanticConfigurationName = "my-semantic-config",
QueryCaption = new QueryCaption(QueryCaptionType.Extractive),
QueryAnswer = new QueryAnswer(QueryAnswerType.Extractive)
}
};
var results = await searchClient.SearchAsync<Hotel>("best hotel for families", options);
// Access semantic answers
foreach (var answer in results.Value.SemanticSearch.Answers)
{
Console.WriteLine($"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)
```csharp
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 |
|-----------|---------|
| `SimpleField` | Non-searchable field (filters, sorting, facets) |
| `SearchableField` | Full-text searchable field |
| `VectorSearchField` | Vector embedding field |
| `IsKey = true` | Document key (required, one per index) |
| `IsFilterable = true` | Enable $filter expressions |
| `IsSortable = true` | Enable $orderby |
| `IsFacetable = true` | Enable faceted navigation |
| `IsHidden = true` | Exclude from results |
| `AnalyzerName` | Specify text analyzer |
## Error Handling
```csharp
using Azure;
try
{
var results = await searchClient.SearchAsync<Hotel>("query");
}
catch (RequestFailedException ex) when (ex.Status == 404)
{
Console.WriteLine("Index not found");
}
catch (RequestFailedException ex)
{
Console.WriteLine($"Search error: {ex.Status} - {ex.ErrorCode}: {ex.Message}");
}
```
## Best Practices
1. **Use `DefaultAzureCredential`** over API keys for production
2. **Use `FieldBuilder`** with model attributes for type-safe index definitions
3. **Use `CreateOrUpdateIndexAsync`** for idempotent index creation
4. **Batch document operations** for better throughput
5. **Use `Select`** to return only needed fields
6. **Configure semantic search** for natural language queries
7. **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 |
## When to Use
This skill is applicable to execute the workflow or actions described in the overview.Related Skills
CitedResearch
Research output with proper source citations. USE WHEN conducting research, creating sector analyses, or generating investment notes that need verifiable sources.
azure-storage-file-share-py
Azure Storage File Share SDK for Python. Use for SMB file shares, directories, and file operations in the cloud.
azure-storage-blob-rust
Azure Blob Storage SDK for Rust. Use for uploading, downloading, and managing blobs and containers.
azure-servicebus-py
Azure Service Bus SDK for Python messaging. Use for queues, topics, subscriptions, and enterprise messaging patterns.
azure-servicebus-dotnet
Azure Service Bus SDK for .NET. Enterprise messaging with queues, topics, subscriptions, and sessions.
azure-search-documents-py
Azure AI Search SDK for Python. Use for vector search, hybrid search, semantic ranking, indexing, and skillsets.
azure-resource-manager-durabletask-dotnet
Azure Resource Manager SDK for Durable Task Scheduler in .NET.
azure-prepare
Default entry point for Azure application development EXCEPT cross-cloud migration — use azure-cloud-migrate instead. Analyzes your project and prepares it for Azure deployment by generating infrastructure code (Bicep/Terraform), azure.yaml, and Dockerfiles. WHEN: "create an app", "build a web app", "create API", "create frontend", "create backend", "add a feature", "build a service", "develop a project", "modernize my code", "update my application", "add database", "add authentication", "add caching", "deploy to Azure", "host on Azure", "Azure with terraform", "Azure with azd", "generate azure.yaml", "generate Bicep", "generate Terraform", "create Azure Functions app", "create serverless HTTP API", "create function app", "create event-driven function", "create and deploy to Azure", "create Azure Functions and deploy", "create function app and deploy".
azure-pipelines
Use when validating Azure DevOps pipeline changes for the VS Code build. Covers queueing builds, checking build status, viewing logs, and iterating on pipeline YAML changes without waiting for full CI runs.
azure-pipelines-validator
Comprehensive toolkit for validating, linting, and securing Azure DevOps Pipeline configurations.
azure-pipelines-generator
Comprehensive toolkit for generating best practice Azure DevOps Pipelines following current standards and conventions. Use this skill when creating new Azure Pipelines, implementing CI/CD workflows, or building deployment pipelines.
azure-networking
Configure Azure VNet, NSG, Load Balancer, and network topology.