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@anuran-roy/langtache

v0.1.1-beta

Published

Mustache-driven chat prompt helpers

Readme

Langtache

NOTE: WIP, don't use in production yet.

A quick way to offramp from LangChain.

Drop in replacements for popular LangChain types, without the OOP hell.

Why this?

Well, LangChain is...not frankly what I would like to use anymore, something that I never thought I would do when I first tried it out in early 2023.

Turns out, many other are facing the same situation, so I just decided to put up this small package.

Also, from most use cases that I have seen (as per my limited knowledge), they involve just plain templating that could've been done with a templating language already. This project is a step in that direction, to reduce the OOP madness.

Examples

Example 1: Simple "Hello, world!" implementation

import { OpenAI } from 'openai';
import { ChatPromptTemplate, getStructuredOutput } from '../src';

const chatClient = new OpenAI();
const chatPrompt = new ChatPromptTemplate({
  template: `Hello there, my name is {{name}}`,
  inputVariables: ["name"],
  templateFormat: 'mustache' // Currently only mustache is supported
})

const chatPromptChain = chatPrompt.pipe(chatClient);

const chatPromptResult = await chatPromptChain.invoke(
  'gpt-5-nano', // Invoke model during runtime - enables easy handoffs and orchestration in multi-agent systems.
  {
    "name": "Anuran"
  });

console.log(chatPromptResult.choices[0]?.message?.content?.toString() ?? 'No response content')

Example 2: Structured output

import { OpenAI } from 'openai';
import z from 'zod';
import { ChatPromptTemplate, getStructuredOutput } from '../src';

const chatClient = new OpenAI();
const chatPromptStructuredOutput = new ChatPromptTemplate({
  template: `Given the user's Linkedin bio, return their name, role and company name in a JSON format. The data is:
  \`\`\`
  {{bio}}
  \`\`\``,
  inputVariables: ["bio"],
  templateFormat: 'mustache' // Currently only mustache is supported
});

const structuredOutputSchema = z.object({
  "name": z.string(),
  "company": z.string(),
  "role": z.string()
});

const structuredOutputGenerator = getStructuredOutput(structuredOutputSchema);
const input = {
  "bio": "Hey there, I am Anuran. I am the co-founder and CTO at Alchemyst AI."
}

const chatPromptStructedOutput = chatPromptStructuredOutput.format(input);

const finalPrompt = structuredOutputGenerator(chatPromptStructedOutput);

const chatPromptStructuredOutputResult = await chatClient.chat.completions.create({
  messages: [
    {
      "content": finalPrompt,
      role: "user"
    }
  ],
  model: "gpt-5-nano"
})

const receivedResponse = chatPromptStructuredOutputResult.choices[0]?.message?.content?.toString() ?? 'No response content'
console.log(receivedResponse)

// Now validate it

const validatedOutput = getValidatedOutput(structuredOutputSchema, receivedResponse)

if (validatedOutput.error) { // Escape hatch in case of error
  console.error(validatedOutput.error)
} else if (validatedOutput.data) { // If LLM response is good.
  console.info(validatedOutput.data) // Ensures that the output type is always of type z.infer<typeof structuredOutputSchema>;
}