ballerinax/pinecone.vector Ballerina library

1.0.2

Overview

This is a generated connector for the Vector Operations under Pinecone Vector Database API OpenAPI specification. Pinecone is a fully managed vector database, which allows storing data objects and vector embeddings from the ML models, including the LLMs offered by OpenAI, Hugging Face, and Cohere. The Pinecone vector database makes it easy to build developer-friendly, easily scalable, and high-performance vector search applications without infrastructure hassles.

Prerequisites

Before using this connector in your Ballerina application, complete the following:

  1. Sign up and log in to Pinecone.
  2. Create a new project and specify an environment.
  3. Click on API Keys and create an API key.

Quick start

To use the Pinecone.vector connector in your Ballerina application, update the .bal file as follows:

Step 1: Import the connector

First, import the ballerinax/pinecone.vector module into the Ballerina project.

Copy
import ballerinax/pinecone.vector;

Step 2: Create a new connector instance

Create and initialize a vector:Client with your Service URL and the obtained Authentication key.

Copy
vector:Client pineconeVectorClient = check new ({
    apiKey: "XXXXX"
}, serviceUrl = "https://<index_name>-<project_name>.svc.<environment>.pinecone.io");

Step 3: Invoke the connector operation

  1. Now, you can use the operations available within the connector. You can describe the statistics of your index as follows.
    Copy
    vector:DescribeIndexStatsResponse indexStats = check pineconeVectorClient->/describe_index_stats.post({});
  2. Use the bal run command to compile and run the Ballerina program.

Import

import ballerinax/pinecone.vector;Copy

Metadata

Released date: 12 months ago

Version: 1.0.2

License: Apache-2.0


Compatibility

Platform: any

Ballerina version: 2201.4.1

GraalVM compatible: Yes


Pull count

Total: 10

Current verison: 7


Weekly downloads


Source repository


Keywords

AI/Vector Databases

Cost/Freemium

Vendor/Pinecone

Embedding Search


Contributors

Other versions