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@promptbook/azure-openai

Supercharge your use of large language models

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Promptbook logo - cube with letters P and B Promptbook

Supercharge your use of large language models

NPM Version of Promptbook logo - cube with letters P and B Promptbook Quality of package Promptbook logo - cube with letters P and B Promptbook Known Vulnerabilities Issues

๐Ÿ“ฆ Package @promptbook/azure-openai

  • Promptbooks are divided into several packages, all are published from single monorepo.
  • This package @promptbook/azure-openai is one part of the promptbook ecosystem.

To install this package, run:

# Install entire promptbook ecosystem
npm i ptbk

# Install just this package to save space
npm i @promptbook/azure-openai

@promptbook/azure-openai integrates Azure OpenAI API with Promptbook. It allows to execute Promptbooks with Azure OpenAI GPT models.

Note: This is similar to @promptbook/openai but more useful for Enterprise customers who use Azure OpenAI to ensure strict data privacy and compliance.

๐Ÿงก Usage

import { createPipelineExecutor, assertsExecutionSuccessful } from '@promptbook/core';
import { createCollectionFromDirectory } from '@promptbook/node';
import { JavascriptExecutionTools } from '@promptbook/execute-javascript';
import { AzureOpenAiExecutionTools } from '@promptbook/azure-openai';

// โ–ถ Create whole pipeline collection
const collection = await createCollectionFromDirectory('./promptbook-collection');

// โ–ถ Get single Pipeline
const pipeline = await collection.getPipelineByUrl(`https://promptbook.studio/my-collection/write-article.ptbk.md`);

// โ–ถ Prepare tools
const tools = {
    llm: new AzureOpenAiExecutionTools(
        //            <- TODO: [๐Ÿงฑ] Implement in a functional (not new Class) way
        {
            isVerbose: true,
            resourceName: process.env.AZUREOPENAI_RESOURCE_NAME,
            deploymentName: process.env.AZUREOPENAI_DEPLOYMENT_NAME,
            apiKey: process.env.AZUREOPENAI_API_KEY,
        },
    ),
    script: [
        new JavascriptExecutionTools(),
        //            <- TODO: [๐Ÿงฑ] Implement in a functional (not new Class) way
    ],
};

// โ–ถ Create executor - the function that will execute the Pipeline
const pipelineExecutor = createPipelineExecutor({ pipeline, tools });

// โ–ถ Prepare input parameters
const inputParameters = { word: 'crocodile' };

// ๐Ÿš€โ–ถ Execute the Pipeline
const result = await pipelineExecutor(inputParameters);

// โ–ถ Fail if the execution was not successful
assertsExecutionSuccessful(result);

// โ–ถ Handle the result
const { isSuccessful, errors, outputParameters, executionReport } = result;
console.info(outputParameters);

๐Ÿ’• Usage of multiple LLM providers

You can use multiple LLM providers in one Promptbook execution. The best model will be chosen automatically according to the prompt and the model's capabilities.

import { createPipelineExecutor, assertsExecutionSuccessful } from '@promptbook/core';
import { createCollectionFromDirectory } from '@promptbook/node';
import { JavascriptExecutionTools } from '@promptbook/execute-javascript';
import { AzureOpenAiExecutionTools } from '@promptbook/azure-openai';
import { OpenAiExecutionTools } from '@promptbook/openai';
import { AnthropicClaudeExecutionTools } from '@promptbook/anthropic-claude';

// โ–ถ Create whole pipeline collection
const collection = await createCollectionFromDirectory('./promptbook-collection');

// โ–ถ Get single Pipeline
const pipeline = await collection.getPipelineByUrl(`https://promptbook.studio/my-collection/write-article.ptbk.md`);

// โ–ถ Prepare multiple tools
const tools = {
    llm: [
        // Note: You can use multiple LLM providers in one Promptbook execution.
        //       The best model will be chosen automatically according to the prompt and the model's capabilities.
        new AzureOpenAiExecutionTools(
            //            <- TODO: [๐Ÿงฑ] Implement in a functional (not new Class) way
            {
                resourceName: process.env.AZUREOPENAI_RESOURCE_NAME,
                deploymentName: process.env.AZUREOPENAI_DEPLOYMENT_NAME,
                apiKey: process.env.AZUREOPENAI_API_KEY,
            },
        ),
        new OpenAiExecutionTools(
            //            <- TODO: [๐Ÿงฑ] Implement in a functional (not new Class) way
            {
                apiKey: process.env.OPENAI_API_KEY,
            },
        ),
        new AnthropicClaudeExecutionTools(
            //            <- TODO: [๐Ÿงฑ] Implement in a functional (not new Class) way
            {
                apiKey: process.env.ANTHROPIC_CLAUDE_API_KEY,
            },
        ),
    ],
    script: [
        new JavascriptExecutionTools(),
        //            <- TODO: [๐Ÿงฑ] Implement in a functional (not new Class) way
    ],
};

// โ–ถ Create executor - the function that will execute the Pipeline
const pipelineExecutor = createPipelineExecutor({ pipeline, tools });

// โ–ถ Prepare input parameters
const inputParameters = { word: 'snake' };

// ๐Ÿš€โ–ถ Execute the Pipeline
const result = await pipelineExecutor(inputParameters);

// โ–ถ Fail if the execution was not successful
assertsExecutionSuccessful(result);

// โ–ถ Handle the result
const { isSuccessful, errors, outputParameters, executionReport } = result;
console.info(outputParameters);

๐Ÿ’™ Integration with other models

See the other models available in the Promptbook package:


Rest of the documentation is common for entire promptbook ecosystem:

๐Ÿค The Promptbook Whitepaper

If you have a simple, single prompt for ChatGPT, GPT-4, Anthropic Claude, Google Gemini, Llama 2, or whatever, it doesn't matter how you integrate it. Whether it's calling a REST API directly, using the SDK, hardcoding the prompt into the source code, or importing a text file, the process remains the same.

But often you will struggle with the limitations of LLMs, such as hallucinations, off-topic responses, poor quality output, language drift, word repetition repetition repetition repetition or misuse, lack of context, or just plain w๐’†๐ขrd responses. When this happens, you generally have three options:

  1. Fine-tune the model to your specifications or even train your own.
  2. Prompt-engineer the prompt to the best shape you can achieve.
  3. Use multiple prompts in a pipeline to get the best result.

In all of these situations, but especially in 3., the Promptbook library can make your life easier.

  • Separates concerns between prompt-engineer and programmer, between code files and prompt files, and between prompts and their execution logic.
  • Establishes a common format .ptbk.md that can be used to describe your prompt business logic without having to write code or deal with the technicalities of LLMs.
  • Forget about low-level details like choosing the right model, tokens, context size, temperature, top-k, top-p, or kernel sampling. Just write your intent and persona who should be responsible for the task and let the library do the rest.
  • Has built-in orchestration of pipeline execution and many tools to make the process easier, more reliable, and more efficient, such as caching, compilation+preparation, just-in-time fine-tuning, expectation-aware generation, agent adversary expectations, and more.
  • Sometimes even the best prompts with the best framework like Promptbook :) can't avoid the problems. In this case, the library has built-in anomaly detection and logging to help you find and fix the problems.
  • Promptbook has built in versioning. You can test multiple A/B versions of pipelines and see which one works best.
  • Promptbook is designed to do RAG (Retrieval-Augmented Generation) and other advanced techniques. You can use knowledge to improve the quality of the output.

๐Ÿง” Promptbook (for prompt-engeneers)

Prompt book markdown file (or .ptbk.md file) is document that describes a pipeline - a series of prompts that are chained together to form somewhat reciepe for transforming natural language input.

  • Multiple pipelines forms a collection which will handle core know-how of your LLM application.
  • Theese pipelines are designed such as they can be written by non-programmers.

Sample:

File write-website-content.ptbk.md:

๐ŸŒ Create website content

Instructions for creating web page content.

  • PIPELINE URL https://promptbook.studio/webgpt/write-website-content.ptbk.md
  • PROMPTBOOK VERSION 0.0.1
  • INPUTโ€ฏโ€ฏPARAM {rawTitle} Automatically suggested a site name or empty text
  • INPUTโ€ฏโ€ฏPARAM {rawAssigment} Automatically generated site entry from image recognition
  • OUTPUTโ€ฏPARAM {websiteContent} Web content
  • OUTPUTโ€ฏPARAM {keywords} Keywords

๐Ÿ‘ค Specifying the assigment

What is your web about?

  • DIALOG TEMPLATE
{rawAssigment}

-> {assigment} Website assignment and specification

โœจ Improving the title

  • PERSONA Jane, Copywriter and Marketing Specialist.
As an experienced marketing specialist, you have been entrusted with improving the name of your client's business.

A suggested name from a client:
"{rawTitle}"

Assignment from customer:

> {assigment}

## Instructions:

-   Write only one name suggestion
-   The name will be used on the website, business cards, visuals, etc.

-> {enhancedTitle} Enhanced title

๐Ÿ‘ค Website title approval

Is the title for your website okay?

  • DIALOG TEMPLATE
{enhancedTitle}

-> {title} Title for the website

๐Ÿฐ Cunning subtitle

  • PERSONA Josh, a copywriter, tasked with creating a claim for the website.
As an experienced copywriter, you have been entrusted with creating a claim for the "{title}" web page.

A website assignment from a customer:

> {assigment}

## Instructions:

-   Write only one name suggestion
-   Claim will be used on website, business cards, visuals, etc.
-   Claim should be punchy, funny, original

-> {claim} Claim for the web

๐Ÿšฆ Keyword analysis

  • PERSONA Paul, extremely creative SEO specialist.
As an experienced SEO specialist, you have been entrusted with creating keywords for the website "{title}".

Website assignment from the customer:

> {assigment}

## Instructions:

-   Write a list of keywords
-   Keywords are in basic form

## Example:

-   Ice cream
-   Olomouc
-   Quality
-   Family
-   Tradition
-   Italy
-   Craft

-> {keywords} Keywords

๐Ÿ”— Combine the beginning

  • SIMPLE TEMPLATE

# {title}

> {claim}

-> {contentBeginning} Beginning of web content

๐Ÿ–‹ Write the content

  • PERSONA Jane
As an experienced copywriter and web designer, you have been entrusted with creating text for a new website {title}.

A website assignment from a customer:

> {assigment}

## Instructions:

-   Text formatting is in Markdown
-   Be concise and to the point
-   Use keywords, but they should be naturally in the text
-   This is the complete content of the page, so don't forget all the important information and elements the page should contain
-   Use headings, bullets, text formatting

## Keywords:

{keywords}

## Web Content:

{contentBeginning}

-> {contentBody} Middle of the web content

๐Ÿ”— Combine the content

  • SIMPLE TEMPLATE
{contentBeginning}

{contentBody}

-> {websiteContent}

Following is the scheme how the promptbook above is executed:

%% ๐Ÿ”ฎ Tip: Open this on GitHub or in the VSCode website to see the Mermaid graph visually

flowchart LR
  subgraph "๐ŸŒ Create website content"

      direction TB

      input((Input)):::input
      templateSpecifyingTheAssigment(๐Ÿ‘ค Specifying the assigment)
      input--"{rawAssigment}"-->templateSpecifyingTheAssigment
      templateImprovingTheTitle(โœจ Improving the title)
      input--"{rawTitle}"-->templateImprovingTheTitle
      templateSpecifyingTheAssigment--"{assigment}"-->templateImprovingTheTitle
      templateWebsiteTitleApproval(๐Ÿ‘ค Website title approval)
      templateImprovingTheTitle--"{enhancedTitle}"-->templateWebsiteTitleApproval
      templateCunningSubtitle(๐Ÿฐ Cunning subtitle)
      templateWebsiteTitleApproval--"{title}"-->templateCunningSubtitle
      templateSpecifyingTheAssigment--"{assigment}"-->templateCunningSubtitle
      templateKeywordAnalysis(๐Ÿšฆ Keyword analysis)
      templateWebsiteTitleApproval--"{title}"-->templateKeywordAnalysis
      templateSpecifyingTheAssigment--"{assigment}"-->templateKeywordAnalysis
      templateCombineTheBeginning(๐Ÿ”— Combine the beginning)
      templateWebsiteTitleApproval--"{title}"-->templateCombineTheBeginning
      templateCunningSubtitle--"{claim}"-->templateCombineTheBeginning
      templateWriteTheContent(๐Ÿ–‹ Write the content)
      templateWebsiteTitleApproval--"{title}"-->templateWriteTheContent
      templateSpecifyingTheAssigment--"{assigment}"-->templateWriteTheContent
      templateKeywordAnalysis--"{keywords}"-->templateWriteTheContent
      templateCombineTheBeginning--"{contentBeginning}"-->templateWriteTheContent
      templateCombineTheContent(๐Ÿ”— Combine the content)
      templateCombineTheBeginning--"{contentBeginning}"-->templateCombineTheContent
      templateWriteTheContent--"{contentBody}"-->templateCombineTheContent

      templateCombineTheContent--"{websiteContent}"-->output
      output((Output)):::output

      classDef input color: grey;
      classDef output color: grey;

  end;

Note: We are using postprocessing functions like unwrapResult that can be used to postprocess the result.

๐Ÿ“ฆ Packages

This library is divided into several packages, all are published from single monorepo. You can install all of them at once:

npm i ptbk

Or you can install them separately:

โญ Marked packages are worth to try first

๐Ÿ“š Dictionary

The following glossary is used to clarify certain concepts:

Core concepts

Advanced concepts

๐Ÿ”Œ Usage in Typescript / Javascript

โž•โž– When to use Promptbook?

โž• When to use

  • When you are writing app that generates complex things via LLM - like websites, articles, presentations, code, stories, songs,...
  • When you want to separate code from text prompts
  • When you want to describe complex prompt pipelines and don't want to do it in the code
  • When you want to orchestrate multiple prompts together
  • When you want to reuse parts of prompts in multiple places
  • When you want to version your prompts and test multiple versions
  • When you want to log the execution of prompts and backtrace the issues

โž– When not to use

  • When you have already implemented single simple prompt and it works fine for your job
  • When OpenAI Assistant (GPTs) is enough for you
  • When you need streaming (this may be implemented in the future, see discussion).
  • When you need to use something other than JavaScript or TypeScript (other languages are on the way, see the discussion)
  • When your main focus is on something other than text - like images, audio, video, spreadsheets (other media types may be added in the future, see discussion)
  • When you need to use recursion (see the discussion)

๐Ÿœ Known issues

๐Ÿงผ Intentionally not implemented features

โ” FAQ

If you have a question start a discussion, open an issue or write me an email.

Why not just use the OpenAI SDK / Anthropic Claude SDK / ...?

Different levels of abstraction. OpenAI library is for direct use of OpenAI API. This library is for a higher level of abstraction. It define pipelines that are independent of the underlying library, LLM model, or even LLM provider.

How is it different from the Langchain library?

Langchain is primarily aimed at ML developers working in Python. This library is for developers working in javascript/typescript and creating applications for end users.

We are considering creating a bridge/converter between these two libraries.

Promptbooks vs. OpenAI`s GPTs

GPTs are chat assistants that can be assigned to specific tasks and materials. But they are still chat assistants. Promptbooks are a way to orchestrate many more predefined tasks to have much tighter control over the process. Promptbooks are not a good technology for creating human-like chatbots, GPTs are not a good technology for creating outputs with specific requirements.

Where should I store my promptbooks?

If you use raw SDKs, you just put prompts in the sourcecode, mixed in with typescript, javascript, python or whatever programming language you use.

If you use promptbooks, you can store them in several places, each with its own advantages and disadvantages:

  1. As source code, typically git-committed. In this case you can use the versioning system and the promptbooks will be tightly coupled with the version of the application. You still get the power of promptbooks, as you separate the concerns of the prompt-engineer and the programmer.

  2. As data in a database In this case, promptbooks are like posts / articles on the blog. They can be modified independently of the application. You don't need to redeploy the application to change the promptbooks. You can have multiple versions of promptbooks for each user. You can have a web interface for non-programmers to create and modify promptbooks. But you lose the versioning system and you still have to consider the interface between the promptbooks and the application (= input and output parameters).

  3. In a configuration in environment variables. This is a good way to store promptbooks if you have an application with multiple deployments and you want to have different but simple promptbooks for each deployment and you don't need to change them often.

What should I do when I need same promptbook in multiple human languages?

A single promptbook can be written for several (human) languages at once. However, we recommend that you have separate promptbooks for each language.

In large language models, you will get better results if you have prompts in the same language as the user input.

The best way to manage this is to have suffixed promptbooks like write-website-content.en.ptbk.md and write-website-content.cs.ptbk.md for each supported language.

โŒš Changelog

See CHANGELOG.md

๐Ÿ“œ License

Promptbook by Pavol Hejnรฝ is licensed under CC BY 4.0

๐ŸŽฏ Todos

See TODO.md

๐Ÿ–‹๏ธ Contributing

I am open to pull requests, feedback, and suggestions. Or if you like this utility, you can โ˜• buy me a coffee or donate via cryptocurrencies.

You can also โญ star the promptbook package, follow me on GitHub or various other social networks.

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Package last updated on 01 Sep 2024

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