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@markprompt/core

`@markprompt/core` is the core library for Markprompt, a conversational AI component for your website, trained on your data.

  • 0.17.0
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  • npm
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@markprompt/core

@markprompt/core is the core library for Markprompt, a conversational AI component for your website, trained on your data.

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


Installation

npm install @markprompt/core

In browsers with esm.sh:

<script type="module">
  import {
    submitChat,
    submitSearchQuery,
    submitFeedback,
  } from 'https://esm.sh/@markprompt/core';
</script>

Usage

import { submitChat } from '@markprompt/core';

// User input
const prompt = 'What is Markprompt?';
// Can be obtained in your project settings on markprompt.com
const projectKey = 'YOUR-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
}

function onConversationId(conversationId) {
  // Store conversationId for future use
}

function onPromptId(promptId) {
  // Store promptId for future use
}

// Called when submitChat encounters an error
function onError(error) {
  // Handle errors
}

// Optional parameters, defaults displayed
const options = {
  model: 'gpt-3.5-turbo', // Supports all OpenAI models
  iDontKnowMessage: 'Sorry, I am not sure how to answer that.',
  apiUrl: 'https://api.markprompt.com/v1/chat', // Or your own chat API endpoint
};

await submitChat(
  [{ content: prompt, role: 'user' }],
  projectKey,
  onAnswerChunk,
  onReferences,
  onConversationId,
  onPromptId,
  onError,
  options,
);

API

submitChat(messages: ChatMessage[], projectKey: string, onAnswerChunk, onReferences, onConversationId, onPromptId, onError, options?)

Submit a prompt to the Markprompt Completions API.

Arguments
  • messages (ChatMessage[]): Chat messages to submit to the model
  • projectKey (string): Project key for the project
  • onAnswerChunk (function(chunk: string)): Answers come in via streaming. This function is called when a new chunk arrives. Chunks should be concatenated to previous chunks of the same answer response.
  • onReferences (function(references: FileSectionReference[])): This function is called when receiving the list of references from which the response was created.
  • onConversationId (function(conversationId: string)): This function is called with the conversation ID returned by the API. Used to keep track of conversations.
  • onPromptId (function(promptId: string)): This function is called with the prompt ID returned by the API. Used to submit feedback.
  • onError (function): called when an error occurs
  • options (SubmitChatOptions): Optional parameters
Options

All options are optional.

  • apiUrl (string): URL at which to fetch completions
  • conversationId (string): Conversation ID
  • iDontKnowMessage (string): Message returned when the model does not have an answer
  • model (OpenAIModelId): The OpenAI model to use
  • systemPrompt (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.

submitSearchQuery(query, projectKey, options?)

Submit a search query to the Markprompt Search API.

Arguments
  • query (string): Search query
  • projectKey (string): Project key for the project
  • options (object): Optional parameters
Options
  • apiUrl (string): URL at which to fetch search results
  • limit (number): Maximum amount of results to return
  • signal (AbortSignal): AbortController signal
Returns

A list of search results.

submitFeedback(feedback, projectKey, options?)

Submit feedback to the Markprompt Feedback API about a specific prompt.

Arguments
  • feedback (object): Feedback to submit
  • feedback.feedback (object): Feedback data
  • feedback.feedback.vote ("1" | "-1"): Vote
  • feedback.promptId (string): Prompt ID
  • projectKey (string): Project key for the project
  • options (object): Optional parameters
  • options.apiUrl (string): URL at which to post feedback
  • options.onFeedbackSubmitted (function): Callback function when feedback is submitted
  • options.signal (AbortSignal): AbortController signal
Returns

A promise that resolves when the feedback is submitted. Has no return value.

Community

Authors

This library is created by the team behind Markprompt (@markprompt).

License

MIT © Markprompt

FAQs

Package last updated on 24 Oct 2023

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