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@chatjet-ai/core

v0.5.3

Published

`@chatjet-ai/core` is the core library for Chatjet, a conversational AI component for your website, trained on your data.

Downloads

11

Readme

@chatjet-ai/core

@chatjet-ai/core is the core library for Chatjet, a conversational AI component for your website, trained on your data.

It contains core functionality for Chatjet and allows you to build abstractions on top of it.

Table of Contents

Installation

npm install @chatjet-ai/core

In browsers with esm.sh:

<script type="module">
  import { submitPrompt } from 'https://esm.sh/@chatjet-ai/core';
</script>

Usage

import { submitPrompt } from '@chatjet-ai/core';

// user input
const prompt = 'Hello, Markprompt!';
// can be obtained in your project settings on markprompt.com
const projectKey = '<project-key>';

// called when a new answer chunk is available
// should be concatenated to previous chunks
function onAnswerChunk(chunk) {
  // process an answer chunk
}

// called when references are available
function onReferences(references) {
  // process references
}

// called when submitPrompt encounters an error
const onError(error) {
  // handle errors
}

// optional options, defaults displayed
const options = {
  model: 'gpt-3.5-turbo', // supports all OpenAI models
  iDontKnowMessage: 'Sorry, I am not sure how to answer that.',
  completionsUrl: 'https://chatjet.co/v1/completions', // or your own completions API endpoint,
};

await submitPrompt(prompt, projectKey, onAnswerChunk, onReferences, onError, options);

API

submitPrompt(prompt, projectKey, onAnswerChunk, onReferences, onError, options?)

Submit a prompt the the Markprompt API.

Arguments

  • prompt (string): Prompt to submit to the model
  • projectKey (string): The key of your project
  • onAnswerChunk (function): Answers come in via streaming. This function is called when a new chunk arrives
  • onReferences (function): This function is called when a chunk includes references.
  • onError (function): called when an error occurs
  • options (object): Optional options object

Options

  • completionsUrl (string): URL at which to fetch completions
  • iDontKnowMessage (string): Message returned when the model does not have an answer
  • model (OpenAIModelId): The OpenAI model to use
  • promptTemplate (string): The prompt template
  • temperature (number): The model temperature
  • topP (number): The model top P
  • frequencyPenalty (number): The model frequency penalty
  • presencePenalty (number): The model present penalty
  • maxTokens (number): The max number of tokens to include in the response
  • sectionsMatchCount (number): The number of sections to include in the prompt context
  • sectionsMatchThreshold (number): The similarity threshold between the input question and selected sections
  • signal (AbortSignal): AbortController signal

Returns

A promise that resolves when the response is fully handled.

Community

Authors

This library is created by the team behind Motif (@motifland).

License

MIT © Motif