gpt-engineer
gpt-engineer lets you:- Specify software in natural language
- Sit back and watch as an AI writes and executes the code
- Ask the AI to implement improvements
Getting Started
Install gpt-engineer
For stable release:python -m pip install gpt-engineer
git clone https://github.com/gpt-engineer-org/gpt-engineer.gitcd gpt-engineerpoetry installpoetry shell
to activate the virtual environment
We actively support Python 3.10 - 3.12. The last version to support Python 3.8 - 3.9 was 0.2.6.
Setup API key
Choose one of:- Export env variable (you can add this to .bashrc so that you don't have to do it each time you start the terminal)
export OPENAI_API_KEY=[your api key]
- .env file:
- Create a copy of
.env.template
named.env
- Add your OPENAI\\\_API\\\_KEY in .env
- Create a copy of
- Custom model:
- See docs, supports local model, azure, etc.
Create new code (default usage)
- Create an empty folder for your project anywhere on your computer
- Create a file called
prompt
(no extension) inside your new folder and fill it with instructions - Run
gpte
with a relative path to your folder- For example:
gpte projects/my-new-project
from the gpt-engineer directory root with your new folder inprojects/
- For example:
Improve existing code
- Locate a folder with code which you want to improve anywhere on your computer
- Create a file called
prompt
(no extension) inside your new folder and fill it with instructions for how you want to improve the code - Run
gpte -i
with a relative path to your folder- For example:
gpte projects/my-old-project -i
from the gpt-engineer directory root with your folder inprojects/
- For example:
Benchmark custom agents
- gpt-engineer installs the binary 'bench', which gives you a simple interface for benchmarking your own agent implementations against popular public datasets.
- The easiest way to get started with benchmarking is by checking out the template repo, which contains detailed instructions and an agent template.
- Currently supported benchmark:
Relation to gptengineer.app (GPT Engineer)
gptengineer.app is a commercial project for the automatic generation of web apps. It features a UI for non-technical users connected to a git-controlled codebase. The gptengineer.app team is actively supporting the open source community.Features
Pre Prompts
You can specify the "identity" of the AI agent by overriding thepreprompts
folder with your own version of the preprompts
. You can do so via the --use-custom-preprompts
argument. Editing the preprompts
is how you make the agent remember things between projects.
Vision
By default, gpt-engineer expects text input via aprompt
file. It can also accept image inputs for vision-capable models. This can be useful for adding UX or architecture diagrams as additional context for GPT Engineer. You can do this by specifying an image directory with the —-image_directory
flag and setting a vision-capable model in the second CLI argument. E.g. gpte projects/example-vision gpt-4-vision-preview --prompt_file prompt/text --image_directory prompt/images -i
Open source, local and alternative models
By default, gpt-engineer supports OpenAI Models via the OpenAI API or Azure OpenAI API, as well as Anthropic models. With a little extra setup, you can also run with open source models like WizardCoder. See the documentation for example instructions. gpt-engineer is governed by a board of long-term contributors. If you contribute routinely and have an interest in shaping the future of gpt-engineer, you will be considered for the board.No reviews found!
No comments found for this product. Be the first to comment!