Metadata-Version: 2.1
Name: smol-dev
Version: 0.0.4
Summary: python module of smol developer
License: MIT
Author: swyx
Author-email: swyx@dontemail.me
Requires-Python: >=3.11,<4.0
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.11
Requires-Dist: openai (>=0.27.8,<0.28.0)
Requires-Dist: openai-function-call (>=0.0.5,<0.0.6)
Requires-Dist: tenacity (>=8.2.2,<9.0.0)
Description-Content-Type: text/markdown

# 🐣 smol developer

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<picture>
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***Human-centric & Coherent Whole Program Synthesis*** aka your own personal junior developer

> [Build the thing that builds the thing!](https://twitter.com/swyx/status/1657578738345979905) a `smol dev` for every dev in every situation

This is a "junior developer" agent (aka `smol dev`) that either: 

1. scaffolds an entire codebase out for you once you give it a product spec
2. gives you basic building blocks to have a smol developer inside of your own app.

Instead of making and maintaining specific, rigid, one-shot starters, like `create-react-app`, or `create-nextjs-app`, this is basically is or helps you make [`create-anything-app`](https://news.ycombinator.com/item?id=35942352) where you develop your scaffolding prompt in a tight loop with your smol dev.

After the [successful initial v0 launch](https://twitter.com/swyx/status/1657578738345979905), smol developer was rewritten to be **even smol-ler**, and importable from a library!

## Basic Usage

### In Git Repo mode

```bash
# install 
git clone https://github.com/smol-ai/developer.git
cd developer
poetry install # install dependencies. pip install poetry if you need

# run
python main.py "a HTML/JS/CSS Tic Tac Toe Game" # defaults to gpt-4-0613
# python main.py "a HTML/JS/CSS Tic Tac Toe Game" --model=gpt-3.5-turbo-0613

# other cli flags 
python main.py --prompt prompt.md # for longer prompts, move them into a markdown file
python main.py --prompt prompt.md --debug True # for debugging
```

<details>
  <summary>
This lets you develop apps as a human in the loop, as per the original version of smol developer.
  </summary>


<p align="center">
  <img height=200 src="https://pbs.twimg.com/media/FwEzVCcaMAE7t4h?format=jpg&name=large" />
</p>

*engineering with prompts, rather than prompt engineering* 

The demo example in `prompt.md` shows the potential of AI-enabled, but still firmly human developer centric, workflow:

- Human writes a basic prompt for the app they want to build
- `main.py` generates code
- Human runs/reads the code
- Human can:
  - simply add to the prompt as they discover underspecified parts of the prompt
  - manually runs the code and identifies errors
  - *paste the error into the prompt* just like they would file a GitHub issue
  - for extra help, they can use `debugger.py` which reads the whole codebase to make specific code change suggestions

Loop until happiness is attained. Notice that AI is only used as long as it is adding value - once it gets in your way, just take over the codebase from your smol junior developer with no fuss and no hurt feelings. (*we could also have smol-dev take over an existing codebase and bootstrap its own prompt... but that's a Future Direction*)

</details>

In this way you can use your clone of this repo itself to prototype/develop your app.

### In Library mode 

This is the new thing in smol developer v1! Add `smol developer` to your own projects!

```bash
pip install smol-dev
``` 

Here you can basically look at the contents of `main.py` as our "documentation" of how you can use these functions and prompts in your own app:

```python
from smol_dev.prompts import plan, specify_file_paths, generate_code_sync

prompt = "a HTML/JS/CSS Tic Tac Toe Game"

shared_deps = plan(prompt) # returns a long string representing the coding plan

# do something with the shared_deps plan if you wish, for example ask for user confirmation/edits and iterate in a loop

file_paths = specify_file_paths(prompt, shared_deps) # returns an array of strings representing the filenames it needs to write based on your prompt and shared_deps. Relies on OpenAI's new Function Calling API to guarantee JSON.

# do something with the filepaths if you wish, for example display a plan

# loop through file_paths array and generate code for each file
for file_path in file_paths:
    code = generate_code_sync(prompt, shared_deps, file_path) # generates the source code of each file
    
    # do something with the source code of the file, eg. write to disk or display in UI
    # there is also an async `generate_code()` version of this
```



## examples/prompt gallery

- [6 minute video demo](https://youtu.be/UCo7YeTy-aE) - (sorry for sped up audio, we were optimizing for twitter, bad call)
  - this was the original smol developer demo - going from prompt to full chrome extension that requests and stores and apikey, generates a popup window, reads and transmits page content, and usefully summarizes any website with Anthropic Claude, switching models up to the 100k one based on length of input
  - the prompt is located in [prompt.md](https://github.com/smol-ai/developer/blob/main/prompt.md) and it outputs [/exampleChromeExtension](https://github.com/smol-ai/developer/tree/main/examples/exampleChromeExtension)
- `smol-plugin` - prompt to ChatGPT plugin ([tweet](https://twitter.com/ultrasoundchad/status/1659366507409985536?s=20), [fork](https://github.com/gmchad/smol-plugin))

  <img src="https://github.com/smol-ai/developer/assets/6764957/6ffaac3b-5d90-460a-a590-c8a8c004bd36" height=200 />

- [Prompt to Pokemon App](https://twitter.com/RobertCaracaus/status/1659312419485761536?s=20)
  
  <img src="https://github.com/smol-ai/developer/assets/6764957/15fa189a-3f52-4618-ac8e-2a77b6500264" height=200 />
  
- [Political Campaign CRM Program example](https://github.com/smol-ai/developer/pull/22/files)
- [Lessons from Creating a VSCode Extension with GPT-4](https://bit.kevinslin.com/p/leveraging-gpt-4-to-automate-the) (also on [HN](https://news.ycombinator.com/item?id=36071342))
- [7 min Video: Smol AI Developer - Build ENTIRE Codebases With A Single Prompt](https://www.youtube.com/watch?v=DzRoYc2UGKI) produces a full working OpenAI CLI python app from a prompt

  <img src="https://github.com/smol-ai/developer/assets/6764957/e80058f1-ea9c-42dd-87ff-004b61f08f2e" height=200 />
  
- [12 min Video: SMOL AI - Develop Large Scale Apps with AGI in one click](https://www.youtube.com/watch?v=zsxyqz6SYp8) scaffolds a surprisingly complex React/Node/MongoDB full stack app in 40 minutes and $9

  <img src="https://github.com/smol-ai/developer/assets/6764957/c51f9f8c-021d-446a-b44d-7a6f48e64550" height=200 />

I'm actively seeking more examples, please PR yours! 

sorry for the lack of examples, I know that is frustrating but I wasnt ready for so many of you lol

## major forks/alternatives

please send in alternative implementations, and deploy strategies on alternative stacks!

- **JS/TS**: https://github.com/PicoCreator/smol-dev-js A pure JS variant of smol-dev, allowing even smoler incremental changes via prompting (if you dun want to do the whole spec2code thing), allowing you to plug it into any project live (for better or worse)
- **C#/Dotnet**: https://github.com/colhountech/smol-ai-dotnet in C#!
- **Golang**: https://github.com/tmc/smol-dev-go in Go
- https://github.com/gmchad/smol-plugin automatically generate @openai plugins by specifying your API in markdown in smol-developer style
- your fork here!


### innovations and insights

> Please subscribe to https://latent.space/ for a fuller writeup and insights and reflections

- **Markdown is all you need** - Markdown is the perfect way to prompt for whole program synthesis because it is easy to mix english and code (whether `variable_names` or entire \`\`\` code fenced code samples)
  - turns out you can specify prompts in code in prompts and gpt4 obeys that to the letter
- **Copy and paste programming**
  - teaching the program to understand how to code around a new API (Anthropic's API is after GPT3's knowledge cutoff) by just pasting in the `curl` input and output
  - pasting error messages into the prompt and vaguely telling the program how you'd like it handled. it kind of feels like "logbook driven programming".
- **Debugging by `cat`ing** the whole codebase with your error message and getting specific fix suggestions - particularly delightful!
- **Tricks for whole program coherence** - our chosen example usecase, Chrome extensions, have a lot of indirect dependencies across files. Any hallucination of cross dependencies causes the whole program to error. 
  - We solved this by adding an intermediate step asking GPT to think through `shared_dependencies.md`, and then insisting on using that in generating each file. This basically means GPT is able to talk to itself...
  - ... but it's not perfect, yet. `shared_dependencies.md` is sometimes not comperehensive in understanding what are hard dependencies between files. So we just solved it by specifying a specific `name` in the prompt. felt dirty at first but it works, and really it's just clear unambiguous communication at the end of the day. 
  - see `prompt.md` for SOTA smol-dev prompting
- **Low activation energy for unfamiliar APIs**
  - we have never really learned css animations, but now can just say we want a "juicy css animated red and white candy stripe loading indicator" and it does the thing. 
  - ditto for Chrome Extension Manifest v3 - the docs are an abject mess, but fortunately we don't have to read them now to just get a basic thing done
  - the Anthropic docs (bad bad) were missing guidance on what return signature they have. so just curl it and dump it in the prompt lol.
- **Modal is all you need** - we chose Modal to solve 4 things:
  - solve python dependency hell in dev and prod
  - parallelizable code generation
  - simple upgrade path from local dev to cloud hosted endpoints (in future)
  - fault tolerant openai api calls with retries/backoff, and attached storage (for future use)

> Please subscribe to https://latent.space/ for a fuller writeup and insights and reflections

### caveats

We were working on a Chrome Extension, which requires images to be generated, so we added some usecase specific code in there to skip destroying/regenerating them, that we haven't decided how to generalize.

We dont have access to GPT4-32k, but if we did, we'd explore dumping entire API/SDK documentation into context.

The feedback loop is very slow right now (`time` says about 2-4 mins to generate a program with GPT4, even with parallelization due to Modal (occasionally spiking higher)), but it's a safe bet that it will go down over time (see also "future directions" below).


## future directions

things to try/would accept open issue discussions and PRs:

- **specify .md files for each generated file**, with further prompts that could finetune the output in each of them
  - so basically like `popup.html.md` and `content_script.js.md` and so on
- **bootstrap the `prompt.md`** for existing codebases - write a script to read in a codebase and write a descriptive, bullet pointed prompt that generates it
  - done by `smol pm`, but its not very good yet - would love for some focused polish/effort until we have quine smol developer that can generate itself lmao
- **ability to install its own dependencies**
  - this leaks into depending on the execution environment, which we all know is the path to dependency madness. how to avoid? dockerize? nix? [web container](https://twitter.com/litbid/status/1658154530385670150)?
  - Modal has an interesting possibility: generate functions that speak modal which also solves the dependency thing https://twitter.com/akshat_b/status/1658146096902811657
- **self-heal** by running the code itself and use errors as information for reprompting 
  - however its a bit hard to get errors from the chrome extension environment so we did not try this
- **using anthropic as the coding layer**
  - you can run `modal run anthropic.py --prompt prompt.md --outputdir=anthropic` to try it
  - but it doesnt work because anthropic doesnt follow instructions to generate file code very well.
- **make agents that autonomously run this code in a loop/watch the prompt file** and regenerate code each time, on a new git branch
  - the code could be generated on 5 simultaneous git branches and checking their output would just involve switching git branches

