mirror of
https://github.com/crewAIInc/crewAI.git
synced 2026-01-09 08:08:32 +00:00
fixed broken link in docs/tools/weaviatevectorsearchtool.mdx (#2569)
This commit is contained in:
@@ -25,7 +25,7 @@ uv add weaviate-client
|
|||||||
To effectively use the `WeaviateVectorSearchTool`, follow these steps:
|
To effectively use the `WeaviateVectorSearchTool`, follow these steps:
|
||||||
|
|
||||||
1. **Package Installation**: Confirm that the `crewai[tools]` and `weaviate-client` packages are installed in your Python environment.
|
1. **Package Installation**: Confirm that the `crewai[tools]` and `weaviate-client` packages are installed in your Python environment.
|
||||||
2. **Weaviate Setup**: Set up a Weaviate cluster. You can follow the [Weaviate documentation](https://weaviate.io/developers/wcs/connect) for instructions.
|
2. **Weaviate Setup**: Set up a Weaviate cluster. You can follow the [Weaviate documentation](https://weaviate.io/developers/wcs/manage-clusters/connect) for instructions.
|
||||||
3. **API Keys**: Obtain your Weaviate cluster URL and API key.
|
3. **API Keys**: Obtain your Weaviate cluster URL and API key.
|
||||||
4. **OpenAI API Key**: Ensure you have an OpenAI API key set in your environment variables as `OPENAI_API_KEY`.
|
4. **OpenAI API Key**: Ensure you have an OpenAI API key set in your environment variables as `OPENAI_API_KEY`.
|
||||||
|
|
||||||
@@ -161,4 +161,4 @@ rag_agent = Agent(
|
|||||||
|
|
||||||
## Conclusion
|
## Conclusion
|
||||||
|
|
||||||
The `WeaviateVectorSearchTool` provides a powerful way to search for semantically similar documents in a Weaviate vector database. By leveraging vector embeddings, it enables more accurate and contextually relevant search results compared to traditional keyword-based searches. This tool is particularly useful for applications that require finding information based on meaning rather than exact matches.
|
The `WeaviateVectorSearchTool` provides a powerful way to search for semantically similar documents in a Weaviate vector database. By leveraging vector embeddings, it enables more accurate and contextually relevant search results compared to traditional keyword-based searches. This tool is particularly useful for applications that require finding information based on meaning rather than exact matches.
|
||||||
|
|||||||
Reference in New Issue
Block a user