Files
wehub-resource-sync db620d33df
dotnet-build-and-test / dotnet-build (Debug, windows-latest, net9.0) (push) Blocked by required conditions
CodeQL / Analyze (csharp) (push) Waiting to run
CodeQL / Analyze (python) (push) Waiting to run
dotnet-build-and-test / paths-filter (push) Waiting to run
dotnet-build-and-test / dotnet-build (Release, ubuntu-latest, net10.0) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-build (Release, ubuntu-latest, net8.0) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-build (Release, windows-latest, net472) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-test (Release, integration, true, ubuntu-latest, net10.0) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-test (Release, integration, true, windows-latest, net472) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-foundry-hosted-it (push) Blocked by required conditions
dotnet-build-and-test / dotnet-test-functions (push) Blocked by required conditions
dotnet-build-and-test / dotnet-build-and-test-check (push) Blocked by required conditions
dotnet-build-and-test / Integration Test Report (push) Blocked by required conditions
chore: import upstream snapshot with attribution
2026-07-13 13:39:25 +08:00
..

Get Started with Microsoft Agent Framework Mistral AI

Please install this package:

pip install agent-framework-mistral --pre

and see the README for more information.

Embedding Client

The MistralEmbeddingClient provides embedding generation using Mistral AI models.

Quick Start

from agent_framework_mistral import MistralEmbeddingClient

# Using environment variables (MISTRAL_API_KEY, MISTRAL_EMBEDDING_MODEL)
client = MistralEmbeddingClient()

# Or passing parameters directly
client = MistralEmbeddingClient(
    model="mistral-embed",
    api_key="your-api-key",
)

# Generate embeddings
result = await client.get_embeddings(["Hello, world!", "How are you?"])
for embedding in result:
    print(f"Dimensions: {embedding.dimensions}")
    print(f"Vector: {embedding.vector[:5]}...")

Configuration

Environment Variable Description
MISTRAL_API_KEY Your Mistral AI API key
MISTRAL_EMBEDDING_MODEL Embedding model name (e.g., mistral-embed)
MISTRAL_SERVER_URL Optional server URL override