Package Exports
- genkitx-aws-bedrock
Readme
Firebase Genkit <> AWS Bedrock Plugin
AWS Bedrock Community Plugin for Google Firebase Genkit
genkitx-aws-bedrock
is a community plugin for using AWS Bedrock APIs with
Firebase Genkit. Built by Xavier Portilla Edo.
This Genkit plugin allows to use AWS Bedrock through their official APIs.
Installation
Install the plugin in your project with your favorite package manager:
npm install genkitx-aws-bedrock
pnpm add genkitx-aws-bedrock
Versions
if you are using Genkit version <v0.9.0
, please use the plugin version v1.9.0
. If you are using Genkit >=v0.9.0
, please use the plugin version >=v1.10.0
.
Usage
Configuration
To use the plugin, you need to configure it with your AWS credentials. There are several approaches depending on your environment.
Standard Initialization
You can configure the plugin by calling the genkit
function with your AWS region and model:
import { genkit, z } from 'genkit';
import { awsBedrock, amazonNovaProV1 } from "genkitx-aws-bedrock";
const ai = genkit({
plugins: [
awsBedrock({ region: "<my-region>" }),
],
model: amazonNovaProV1,
});
If you have set the AWS_
environment variables, you can initialize it like this:
import { genkit, z } from 'genkit';
import { awsBedrock, amazonNovaProV1 } from "genkitx-aws-bedrock";
const ai = genkit({
plugins: [
awsBedrock(),
],
model: amazonNovaProV1,
});
Production Environment Authentication
In production environments, it is often necessary to install an additional library to handle authentication. One approach is to use the @aws-sdk/credential-providers
package:
import { fromEnv } from "@aws-sdk/credential-providers";
const ai = genkit({
plugins: [
awsBedrock({
region: "us-east-1",
credentials: fromEnv(),
}),
],
});
Ensure you have a .env
file with the necessary AWS credentials. Remember that the .env file must be added to your .gitignore to prevent sensitive credentials from being exposed.
AWS_ACCESS_KEY_ID =
AWS_SECRET_ACCESS_KEY =
Local Environment Authentication
For local development, you can directly supply the credentials:
const ai = genkit({
plugins: [
awsBedrock({
region: "us-east-1",
credentials: {
accessKeyId: awsAccessKeyId.value(),
secretAccessKey: awsSecretAccessKey.value(),
},
}),
],
});
Each approach allows you to manage authentication effectively based on your environment needs.
Configuration with Inference Endpoint
If you want to use a model that uses Cross-region Inference Endpoints, you can specify the region in the model configuration. Cross-region inference uses inference profiles to increase throughput and improve resiliency by routing your requests across multiple AWS Regions during peak utilization bursts:
import { genkit, z } from 'genkit';
import {awsBedrock, amazonNovaProV1, anthropicClaude35SonnetV2} from "genkitx-aws-bedrock";
const ai = genkit({
plugins: [
awsBedrock(),
],
model: anthropicClaude35SonnetV2("us"),
});
You can check more information about the available models in the AWS Bedrock PLugin documentation.
Basic examples
The simplest way to call the text generation model is by using the helper function generate
:
import { genkit, z } from 'genkit';
import {awsBedrock, amazonNovaProV1} from "genkitx-aws-bedrock";
// Basic usage of an LLM
const response = await ai.generate({
prompt: 'Tell me a joke.',
});
console.log(await response.text);
Within a flow
// ...configure Genkit (as shown above)...
export const myFlow = ai.defineFlow(
{
name: 'menuSuggestionFlow',
inputSchema: z.string(),
outputSchema: z.string(),
},
async (subject) => {
const llmResponse = await ai.generate({
prompt: `Suggest an item for the menu of a ${subject} themed restaurant`,
});
return llmResponse.text;
}
);
Tool use
// ...configure Genkit (as shown above)...
const specialToolInputSchema = z.object({ meal: z.enum(["breakfast", "lunch", "dinner"]) });
const specialTool = ai.defineTool(
{
name: "specialTool",
description: "Retrieves today's special for the given meal",
inputSchema: specialToolInputSchema,
outputSchema: z.string(),
},
async ({ meal }): Promise<string> => {
// Retrieve up-to-date information and return it. Here, we just return a
// fixed value.
return "Baked beans on toast";
}
);
const result = ai.generate({
tools: [specialTool],
prompt: "What's for breakfast?",
});
console.log(result.then((res) => res.text));
For more detailed examples and the explanation of other functionalities, refer to the official Genkit documentation.
Supported models
This plugin supports all currently available Chat/Completion and Embeddings models from AWS Bedrock. This plugin supports image input and multimodal models.
API Reference
You can find the full API reference in the API Reference Documentation
Contributing
Want to contribute to the project? That's awesome! Head over to our Contribution Guidelines.
Need support?
[!NOTE]
This repository depends on Google's Firebase Genkit. For issues and questions related to Genkit, please refer to instructions available in Genkit's repository.
Reach out by opening a discussion on GitHub Discussions.
Credits
This plugin is proudly maintained by Xavier Portilla Edo Xavier Portilla Edo.
I got the inspiration, structure and patterns to create this plugin from the Genkit Community Plugins repository built by the Fire Compnay as well as the ollama plugin.
License
This project is licensed under the Apache 2.0 License.