This fork of Bolt.new (oTToDev) allows you to choose the LLM that you use for each prompt! Currently, you can use OpenAI, Anthropic, Ollama, OpenRouter, Gemini, LMStudio, Mistral, xAI, HuggingFace, DeepSeek, or Groq models - and it is easily extended to use any other model supported by the Vercel AI SDK! See the instructions below for running this locally and extending it to include more models.
Join the community for oTToDev!
https://thinktank.ottomator.ai
- ✅ OpenRouter Integration (@coleam00)
- ✅ Gemini Integration (@jonathands)
- ✅ Autogenerate Ollama models from what is downloaded (@yunatamos)
- ✅ Filter models by provider (@jasonm23)
- ✅ Download project as ZIP (@fabwaseem)
- ✅ Improvements to the main Bolt.new prompt in
app\lib\.server\llm\prompts.ts
(@kofi-bhr) - ✅ DeepSeek API Integration (@zenith110)
- ✅ Mistral API Integration (@ArulGandhi)
- ✅ "Open AI Like" API Integration (@ZerxZ)
- ✅ Ability to sync files (one way sync) to local folder (@muzafferkadir)
- ✅ Containerize the application with Docker for easy installation (@aaronbolton)
- ✅ Publish projects directly to GitHub (@goncaloalves)
- ✅ Ability to enter API keys in the UI (@ali00209)
- ✅ xAI Grok Beta Integration (@milutinke)
- ✅ LM Studio Integration (@karrot0)
- ✅ HuggingFace Integration (@ahsan3219)
- ✅ Bolt terminal to see the output of LLM run commands (@thecodacus)
- ✅ Streaming of code output (@thecodacus)
- ✅ Ability to revert code to earlier version (@wonderwhy-er)
- ⬜ HIGH PRIORITY - Prevent Bolt from rewriting files as often (file locking and diffs)
- ⬜ HIGH PRIORITY - Better prompting for smaller LLMs (code window sometimes doesn't start)
- ⬜ HIGH PRIORITY - Load local projects into the app
- ⬜ HIGH PRIORITY - Attach images to prompts
- ⬜ HIGH PRIORITY - Run agents in the backend as opposed to a single model call
- ⬜ Mobile friendly
- ⬜ Together Integration
- ⬜ Azure Open AI API Integration
- ⬜ Perplexity Integration
- ⬜ Vertex AI Integration
- ✅ Cohere Integration (@hasanraiyan)
- ✅ Dynamic model max token length (@hasanraiyan)
- ⬜ Deploy directly to Vercel/Netlify/other similar platforms
- ⬜ Prompt caching
- ⬜ Better prompt enhancing
- ⬜ Have LLM plan the project in a MD file for better results/transparency
- ⬜ VSCode Integration with git-like confirmations
- ⬜ Upload documents for knowledge - UI design templates, a code base to reference coding style, etc.
- ⬜ Voice prompting
Bolt.new is an AI-powered web development agent that allows you to prompt, run, edit, and deploy full-stack applications directly from your browser—no local setup required. If you're here to build your own AI-powered web dev agent using the Bolt open source codebase, click here to get started!
Claude, v0, etc are incredible- but you can't install packages, run backends, or edit code. That’s where Bolt.new stands out:
-
Full-Stack in the Browser: Bolt.new integrates cutting-edge AI models with an in-browser development environment powered by StackBlitz’s WebContainers. This allows you to:
- Install and run npm tools and libraries (like Vite, Next.js, and more)
- Run Node.js servers
- Interact with third-party APIs
- Deploy to production from chat
- Share your work via a URL
-
AI with Environment Control: Unlike traditional dev environments where the AI can only assist in code generation, Bolt.new gives AI models complete control over the entire environment including the filesystem, node server, package manager, terminal, and browser console. This empowers AI agents to handle the whole app lifecycle—from creation to deployment.
Whether you’re an experienced developer, a PM, or a designer, Bolt.new allows you to easily build production-grade full-stack applications.
For developers interested in building their own AI-powered development tools with WebContainers, check out the open-source Bolt codebase in this repo!
Many of you are new users to installing software from Github. If you have any installation troubles reach out and submit an "issue" using the links above, or feel free to enhance this documentation by forking, editing the instructions, and doing a pull request.
-
Install Git from https://git-scm.com/downloads
-
Install Node.js from https://nodejs.org/en/download/
Pay attention to the installer notes after completion.
On all operating systems, the path to Node.js should automatically be added to your system path. But you can check your path if you want to be sure. On Windows, you can search for "edit the system environment variables" in your system, select "Environment Variables..." once you are in the system properties, and then check for a path to Node in your "Path" system variable. On a Mac or Linux machine, it will tell you to check if /usr/local/bin is in your $PATH. To determine if usr/local/bin is included in $PATH open your Terminal and run:
echo $PATH .
If you see usr/local/bin in the output then you're good to go.
- Clone the repository (if you haven't already) by opening a Terminal window (or CMD with admin permissions) and then typing in this:
git clone https://github.com/coleam00/bolt.new-any-llm.git
- Rename .env.example to .env.local and add your LLM API keys. You will find this file on a Mac at "[your name]/bold.new-any-llm/.env.example". For Windows and Linux the path will be similar.
If you can't see the file indicated above, its likely you can't view hidden files. On Mac, open a Terminal window and enter this command below. On Windows, you will see the hidden files option in File Explorer Settings. A quick Google search will help you if you are stuck here.
defaults write com.apple.finder AppleShowAllFiles YES
NOTE: you only have to set the ones you want to use and Ollama doesn't need an API key because it runs locally on your computer:
Get your GROQ API Key here: https://console.groq.com/keys
Get your Open AI API Key by following these instructions: https://help.openai.com/en/articles/4936850-where-do-i-find-my-openai-api-key
Get your Anthropic API Key in your account settings: https://console.anthropic.com/settings/keys
GROQ_API_KEY=XXX
OPENAI_API_KEY=XXX
ANTHROPIC_API_KEY=XXX
Optionally, you can set the debug level:
VITE_LOG_LEVEL=debug
Important: Never commit your .env.local
file to version control. It's already included in .gitignore.
Prerequisites:
Git and Node.js as mentioned above, as well as Docker: https://www.docker.com/
NPM scripts are provided for convenient building:
# Development build
npm run dockerbuild
# Production build
npm run dockerbuild:prod
You can use Docker's target feature to specify the build environment instead of using NPM scripts if you wish:
# Development build
docker build . --target bolt-ai-development
# Production build
docker build . --target bolt-ai-production
Use Docker Compose profiles to manage different environments:
# Development environment
docker-compose --profile development up
# Production environment
docker-compose --profile production up
When you run the Docker Compose command with the development profile, any changes you make on your machine to the code will automatically be reflected in the site running on the container (i.e. hot reloading still applies!).
- Install dependencies using Terminal (or CMD in Windows with admin permissions):
pnpm install
If you get an error saying "command not found: pnpm" or similar, then that means pnpm isn't installed. You can install it via this:
sudo npm install -g pnpm
- Start the application with the command:
pnpm run dev
Ollama models by default only have 2048 tokens for their context window. Even for large models that can easily handle way more. This is not a large enough window to handle the Bolt.new/oTToDev prompt! You have to create a version of any model you want to use where you specify a larger context window. Luckily it's super easy to do that.
All you have to do is:
- Create a file called "Modelfile" (no file extension) anywhere on your computer
- Put in the two lines:
FROM [Ollama model ID such as qwen2.5-coder:7b]
PARAMETER num_ctx 32768
- Run the command:
ollama create -f Modelfile [your new model ID, can be whatever you want (example: qwen2.5-coder-extra-ctx:7b)]
Now you have a new Ollama model that isn't heavily limited in the context length like Ollama models are by default for some reason. You'll see this new model in the list of Ollama models along with all the others you pulled!
To make new LLMs available to use in this version of Bolt.new, head on over to app/utils/constants.ts
and find the constant MODEL_LIST. Each element in this array is an object that has the model ID for the name (get this from the provider's API documentation), a label for the frontend model dropdown, and the provider.
By default, Anthropic, OpenAI, Groq, and Ollama are implemented as providers, but the YouTube video for this repo covers how to extend this to work with more providers if you wish!
When you add a new model to the MODEL_LIST array, it will immediately be available to use when you run the app locally or reload it. For Ollama models, make sure you have the model installed already before trying to use it here!
pnpm run dev
: Starts the development server.pnpm run build
: Builds the project.pnpm run start
: Runs the built application locally using Wrangler Pages. This script usesbindings.sh
to set up necessary bindings so you don't have to duplicate environment variables.pnpm run preview
: Builds the project and then starts it locally, useful for testing the production build. Note, HTTP streaming currently doesn't work as expected withwrangler pages dev
.pnpm test
: Runs the test suite using Vitest.pnpm run typecheck
: Runs TypeScript type checking.pnpm run typegen
: Generates TypeScript types using Wrangler.pnpm run deploy
: Builds the project and deploys it to Cloudflare Pages.
To start the development server:
pnpm run dev
This will start the Remix Vite development server. You will need Google Chrome Canary to run this locally if you use Chrome! It's an easy install and a good browser for web development anyway.
Here are some tips to get the most out of Bolt.new:
-
Be specific about your stack: If you want to use specific frameworks or libraries (like Astro, Tailwind, ShadCN, or any other popular JavaScript framework), mention them in your initial prompt to ensure Bolt scaffolds the project accordingly.
-
Use the enhance prompt icon: Before sending your prompt, try clicking the 'enhance' icon to have the AI model help you refine your prompt, then edit the results before submitting.
-
Scaffold the basics first, then add features: Make sure the basic structure of your application is in place before diving into more advanced functionality. This helps Bolt understand the foundation of your project and ensure everything is wired up right before building out more advanced functionality.
-
Batch simple instructions: Save time by combining simple instructions into one message. For example, you can ask Bolt to change the color scheme, add mobile responsiveness, and restart the dev server, all in one go saving you time and reducing API credit consumption significantly.