semantic_kernel.connectors.ai.nvidia
This connector enables integration with NVIDIA NIM API for text embeddings and chat completion. It allows you to use NVIDIA's models within the Semantic Kernel framework.
Quick start
Initialize the kernel
import semantic_kernel as sk
kernel = sk.Kernel()
Add NVIDIA text embedding service
You can provide your API key directly or through environment variables
from semantic_kernel.connectors.ai.nvidia import NvidiaTextEmbedding
embedding_service = NvidiaTextEmbedding(
ai_model_id="nvidia/nv-embedqa-e5-v5", # Default model if not specified
api_key="your-nvidia-api-key", # Can also use NVIDIA_API_KEY env variable
service_id="nvidia-embeddings" # Optional service identifier
)
Add the embedding service to the kernel
kernel.add_service(embedding_service)
Generate embeddings for text
texts = ["Hello, world!", "Semantic Kernel is awesome"]
embeddings = await kernel.get_service("nvidia-embeddings").generate_embeddings(texts)
Add NVIDIA chat completion service
from semantic_kernel.connectors.ai.nvidia import NvidiaChatCompletion
chat_service = NvidiaChatCompletion(
ai_model_id="meta/llama-3.1-8b-instruct", # Default model if not specified
api_key="your-nvidia-api-key", # Can also use NVIDIA_API_KEY env variable
service_id="nvidia-chat" # Optional service identifier
)
kernel.add_service(chat_service)
Basic chat completion
response = await kernel.invoke_prompt("Hello, how are you?")
Using with Chat Completion Agent
from semantic_kernel.agents import ChatCompletionAgent
from semantic_kernel.connectors.ai.nvidia import NvidiaChatCompletion
agent = ChatCompletionAgent(
service=NvidiaChatCompletion(),
name="SK-Assistant",
instructions="You are a helpful assistant.",
)
response = await agent.get_response(messages="Write a haiku about Semantic Kernel.")
print(response.content)