Window AI is a browser extension that lets you configure AI models in one place and use them on the web.
-
For developers: easily make multi-model apps free from API costs and limits - just use the injected
window.ai
library. Leverage decentralized AI. -
For users: control the AI you use on the web, whether it's external (like OpenAI), proxied, or local, to protect privacy.
-
For model providers: plug into an ecosystem of users without requiring developers to change their apps.
More about why this was made here.
Below, you'll find out how to install, how to find apps, how to make apps, and how to connect custom models.
demo.mp4
- Window: use your own AI models on the web
-
Configure keys: set all your API keys in one place and forget about them. They are only stored locally.
-
User-controlled models: use external, proxied, and local models of your choice.
-
Save your prompt history across apps (maybe train your own models with it).
-
You configure your keys and models just once in the extension (see demo above).
-
Apps can request permission to send prompts to your chosen model via the injected
window.ai
library (see the simple docs). -
You maintain visibility on what's being asked and when.
It works with these models:
- OpenAI's GPT-3.5, GPT-3.5 16k, GPT-4, and GPT-4 32k
- Google's PaLM 2 Chat and Code Chat
- Anthropic's Claude, Claude Instant, and 100k models
- Together's GPT NeoXT 20B
- Cohere Xlarge
- Open models, like MPT or Dolly, that can run locally (see how).
Download the Chrome extension here: https://chrome.google.com/webstore/detail/window-ai/cbhbgmdpcoelfdoihppookkijpmgahag
β Chrome β Brave βοΈ Microsoft Edge βοΈ Firefox βοΈ Safari: #20
You can join the #beta-builds channel on Discord to get early access to features being tested and developed by the community.
Better ways of doing this are coming soon, but today, you can use the Discord #app-showcase channel to discover new window.ai
-compatible apps, or you can browse user-submitted ones on aggregators:
This section shows why and how to get started, followed by a reference of window.ai
methods.
Infrastructure burden: No more model API costs, timeouts, rate limiting. Reduced server billing time.
Easily go multi-model. Integrate once, and then let Window handle model upgrades and support for other providers.
Privacy: Now you can build privacy-conscious apps that just talk to the user's choice of model, and you have less liability for the model's output.
To leverage user-managed models in your app, simply call await window.ai.generateText
with your prompt and options.
Example:
const [ response ] : Output[] = await window.ai.generateText(
{ messages: [{role: "user", content: "Who are you?"}] }: Input
)
console.log(response.message.content) // "I am an AI language model"
All public types, including error messages, are available with comments in the window.ai library. Jump down to export interface WindowAI
to see the type of the root object.
Input
, for example, allows you to use both simple strings and ChatML.
Example of streaming GPT-4 results to the console:
const [{ message }] = await window.ai.generateText(
{
messages: [{ role: "user", content: "Who are you?" }]
},
{
temperature: 0.7,
maxTokens: 800,
model: ModelID.GPT_4,
// Handle partial results if they can be streamed in
onStreamResult: (res) => console.log(res.message.content)
}
)
console.log("Full ChatML response: ", message)
Note that generateText
will return an array, Output[]
, that only has multiple elements if numOutputs > 1
.
This does not guarantee that the length of the return result will equal numOutputs
. If the model doesn't support multiple choices, then only one choice will be present in the array.
The onStreamResult
handler is similar. You should rely on the promise resolution and only use this
handler to improve UX, since not all models and config options support it.
- Next.js Window AI - A Next.js app that demonstrates how to use Window AI in a chat application. (Demo)
- Robot Companion - An AI robot that can move, emote, and change facial expressions while chatting. (Demo)
The Window API is simple. Just a few functions:
Generate Text: generate text from a specified model or the user-preferred model.
window.ai.generateText(
input: Input,
options: CompletionOptions = {}
): Promise<Output[]>
Input
is either a { prompt : string }
or { messages: ChatMessage[]}
. Examples: see getting started above.
Current model: get the user's currently preferred model. Will be undefined if their chosen model provider doesn't have a model lookup, or the model is unknown.
window.ai.getCurrentModel(): Promise<ModelID | undefined>
Listen to events: to listen to events emitted by the extension, such as whenever the preferred model changes, here's what you do:
window.ai.addEventListener((event: EventType, data: unknown) => {
// You can check `event` to see if it's the EventType you care about, e.g. "model_changed"
console.log("EVENT received", event, data)
})
(BETA) Generate 3D Objects: Uses Shap-e.
window.ai.BETA_generate3DObject(
input: PromptInput,
options?: ThreeDOptions
): Promise<MediaOutput[]>
The BETA_generate3DObject
function allows you to generate 3D objects with a defined model and options. The input should be a PromptInput
{ prompt : string }
. The options parameter is optional and accepts ThreeDOptions
customize the media generation request.
Here's an example request:
const [ result ] = await window.ai.BETA_generate3DObject(
{ "prompt": "a glazed donut" },
{ "numInferenceSteps": 32,});
// base64 representation of your 3D object, in ply format
const uri = result.uri;
All public types, including error messages, are documented in the window.ai library. Highlights below:
This options dictionary allows you to specify options for the completion request.
export interface CompletionOptions {
// If specified, partial updates will be streamed to this handler as they become available,
// and only the first partial update will be returned by the Promise.
// This only works if 1) the chosen model supports streaming and
// 2) `numOutputs` below is not > 1. Otherwise, it will be ignored, and the
// whole result will be in the promise's resolution
onStreamResult?: (result: Output | null, error: string | null) => unknown
// What sampling temperature to use, between 0 and 2. Higher values like 0.8 will
// make the output more random, while lower values like 0.2 will make it more focused and deterministic.
// Different models have different defaults.
temperature?: number
// How many completion choices to generate. Defaults to 1.
numOutputs?: number
// The maximum number of tokens to generate in the chat completion. Defaults to infinity, but the
// total length of input tokens and generated tokens is limited by the model's context length.
maxTokens?: number
// Sequences where the API will stop generating further tokens.
stopSequences?: string[]
// Identifier of the model to use. Defaults to the user's current model, but can be overridden here.
// Arbitrary strings are allowed, and will be passed to the Local model as `model`.
// NOTE: this standard is evolving - recommend not using this if you're making an immutable app.
model?: ModelID | string
}
This options dictionary allows you to specify options for generating a three dimensional object.
export interface ThreeDOptions{
// The number of inference steps to run. Defaults to 32, with specific default values for each model.
numInferenceSteps?: number
// How many generations to create. Defaults to 1.
numOutputs?: number
// Identifier of the model to use. Defaults to openai/shap-e for now.
model?: ModelID | string
}
ModelID
is an enum of the available models, which are available as a
TypeScript enum inside window.ai
. See the library's README.
Errors emitted by the extension API:
export enum ErrorCode {
// Incorrect API key / auth
NotAuthenticated = "NOT_AUTHENTICATED",
// User denied permission to the app
PermissionDenied = "PERMISSION_DENIED",
// Happens when a permission request popup times out
RequestNotFound = "REQUEST_NOT_FOUND",
// When a request is badly formed
InvalidRequest = "INVALID_REQUEST",
// When an AI model refuses to fulfill a request. The returned error is
// prefixed by this value and includes the status code that the model API returned
ModelRejectedRequest = "MODEL_REJECTED_REQUEST"
}
Hope to eventually make an awesome-window.ai
repo, but in the meantime:
- πͺ Wanda: React Hooks for working with
window.ai
You can configure any local model to work with Window-compatible apps by writing a simple HTTP server.
To quickly set up a local LLM server for experimentation, you can download local.ai, which includes a GUI to download models and configure the streaming server:
local.ai-demo-000.mp4
Types
ChatMessage
:{"role": string, "content": string}
POST /completions
Generate text to complete a prompt or list of messages. This endpoint accepts a request body containing the following parameters:
prompt
: The prompt(s) to generate completions for, encoded as astring
. OR you can use ChatML format viamessages
:messages
an array ofChatMessage
s.model
: a string representing the type of model being requested. ex:ModelID.GPT_4
max_tokens
: The maximum number of tokens to generate in the completion.temperature
: What sampling temperature to use, between 0 and 2.stop_sequences
: A string or array of strings where the API will stop generating further tokens. The returned text will not contain the stop sequence.stream
: A boolean representing whether to stream generated tokens, sent as data-only server-sent events as they become available. Defaults to false.num_generations
: How many choices to generate (should default to 1).
Note: apps like windowai.io
will ask to stream, so your local server might not work with them until you support streaming.
Return value:
This endpoint should return an object that looks like:
{
choices: Array<{ text: string }>
}
POST /model
Get the model that will be used for the given prompt and completion options
This endpoint accepts a request body containing the same parameters as the /completions
endpoint above.
Return value:
This endpoint should return an object that looks like:
{
id: string
}
Where id
is a string identifying the model, such as a known ModelID.
More WIP thinking here.
WindowAlpacaRecordingApr4.mp4
This is a turborepo monorepo containing:
- A Plasmo extension project.
- A web app serving windowai.io.
- Upcoming packages to help developers (see Discord for more info).
To run the extension and the web app in parallel:
pnpm dev
To build them both:
pnpm build
After building, open your browser and load the appropriate development build by loading an unpacked extension. For example, if you are developing for the Chrome browser, using manifest v3, use: build/chrome-mv3-dev
.