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120
README.md
120
README.md
@@ -103,7 +103,125 @@ A TypeScript library that provides a unified interface for working with multiple
|
||||
|
||||
## Documentation
|
||||
|
||||
[Available Here](https://ai-utils.docs.zakscode.com/)
|
||||
### Setup
|
||||
```javascript
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||||
const ai = new Ai({
|
||||
path: '/ai-models',
|
||||
|
||||
// Setup audio
|
||||
whisper: '/path/to/binary', // Required for ASR
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||||
hfToken: '...', // Required for diarization
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||||
asr: 'ggml-base.en.bin', // Override default ASR model
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||||
|
||||
// Setup LLM
|
||||
embedder: 'bge-small-en-v1.5', // Override default embedder model
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llm: {
|
||||
system: 'You are a helpful assistant.',
|
||||
compress: {max: 90_000, min: 50_000}, // Compress chat history to min tokens when max is reached
|
||||
temperature: 0.8,
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max_tokens: 100_000,
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memoryModel: 'gpt-4o', // Cheap model for managing memories in background, defaults to current model
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models: {
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'claude-3-5-sonnet': {proto: 'anthropic', token: process.env.ANTHROPIC_TOKEN},
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'gpt-4o': {proto: 'openai', token: process.env.OPENAI_TOKEN},
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||||
'llama3': {proto: 'ollama', host: 'http://localhost:11434'},
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},
|
||||
mcp: [
|
||||
{name: 'files', url: 'https://mcp.example.com', token: process.env.MCP_TOKEN}
|
||||
],
|
||||
skills: [
|
||||
{name: 'Tone of voice', description: 'Brand writing guidelines', content: '# Tone of Voice\n\nAlways be concise and friendly...'}
|
||||
],
|
||||
tools: [{
|
||||
name: 'Marco?',
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||||
description: 'Where is marco polo?',
|
||||
args: {
|
||||
shout: {type: 'boolean', default: 'Shout into the void?', description: false, required: false}
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||||
},
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fn: (args: any, stream: LLMRequest['stream'], ai: Ai) => {
|
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const {shout} = args;
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||||
return shout ? 'Polo!' : 'Polo';
|
||||
}
|
||||
}],
|
||||
},
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||||
|
||||
// Setup Vision
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ocr: 'eng' // Override default OCR model
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||||
});
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||||
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```
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||||
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||||
### Audio
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|
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```javascript
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// Crate audio transcript
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const text = await ai.audio.asr('./path/to/audio.mp3');
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console.log(text);
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// Break transcript into speakers
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const text = await ai.audio.asr('./path/to/audio.mp3', {diarization: true});
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console.log(text);
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// Break transcript into named speakers
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const text = await ai.audio.asr('./path/to/audio.mp3', {diarization: 'llm'});
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console.log(text);
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```
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||||
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||||
### Language
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|
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```javascript
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const history = [], memory = [];
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// Wait for entire response
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const text = await ai.language.ask('My favorite color is blue, whats yours?', {history, memory});
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console.log(text);
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||||
|
||||
// Stream response
|
||||
const chunks = '';
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||||
await ai.language.ask('Write me a poem', {
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||||
history, memory,
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stream: chunk => chunks += chunk,
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});
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console.log(chunks);
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||||
|
||||
// Manually compile history into memories at end of conversation
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// Happens automatically when coverstaions are compressed
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await ai.language.updateMemory(history, memory);
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||||
|
||||
// Summarize text
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const summary = await ai.language.summarize(longText, 200);
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|
||||
// Code response (no conversation or extra BS)
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const code = await ai.language.code('Write a fibonacci function');
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||||
|
||||
// Structured JSON response
|
||||
const data = await ai.language.json('Extract the name and age', `{
|
||||
"name": "string",
|
||||
"age": "number"
|
||||
}`, {system: 'Extract from user input'});
|
||||
```
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||||
|
||||
#### Premade LLM Tools:
|
||||
- `cli`: Run a shell command, returns its output
|
||||
- `get_datetime`: Returns local date/time
|
||||
- `get_datetime_utc`: Returns current UTC date/time
|
||||
- `exec`: Execute code in cli, node, or python
|
||||
- `fetch`: Make HTTP requests (GET/POST/PUT/DELETE)
|
||||
- `exec_javascript`: Execute CommonJS JavaScript
|
||||
- `exec_python`: Execute Python via python -c
|
||||
- `read_webpage`: Scrape & clean content from a URL, handles HTML, JSON, CSV, media, PDFs etc.
|
||||
- `web_search`: Anonymous DuckDuckGo search, returns a list of URLs
|
||||
- `wikipedia_lookup`: Fetch a Wikipedia article (intro or full)
|
||||
- `wikipedia_search`: Search Wikipedia and return matching articles
|
||||
- `get_weather`: Fetch current weather + forecast for a location (just built!)
|
||||
|
||||
### Vision
|
||||
|
||||
```javascript
|
||||
// Extract text from image
|
||||
const text = await ai.vision.ocr('./path/to/image.png');
|
||||
console.log(text);
|
||||
```
|
||||
|
||||
## License
|
||||
|
||||
|
||||
21
main.mjs
Normal file
21
main.mjs
Normal file
@@ -0,0 +1,21 @@
|
||||
import {Ai} from './dist/index.mjs';
|
||||
|
||||
const ai = new Ai({
|
||||
path: './',
|
||||
llm: {
|
||||
system: 'You are a testbed for developing an AI library',
|
||||
models: {
|
||||
'qwen/qwen3.5-9b': {proto: 'openai', host: 'http://127.0.0.1:1234/v1'}
|
||||
}
|
||||
}
|
||||
});
|
||||
|
||||
const skills = [{
|
||||
name: 'Momentum',
|
||||
description: 'Learn how to use the Momentum API',
|
||||
content: 'You can initialize it with: new Momentum(url);'
|
||||
}];
|
||||
|
||||
const history = [], memory = [];
|
||||
console.log(await ai.language.ask('Can you tell me how to use momentum?', {history, skills}));
|
||||
console.log(history, memory);
|
||||
3321
package-lock.json
generated
3321
package-lock.json
generated
File diff suppressed because it is too large
Load Diff
18
package.json
18
package.json
@@ -1,6 +1,6 @@
|
||||
{
|
||||
"name": "@ztimson/ai-utils",
|
||||
"version": "0.8.11",
|
||||
"version": "1.0.2",
|
||||
"description": "AI Utility library",
|
||||
"author": "Zak Timson",
|
||||
"license": "MIT",
|
||||
@@ -25,21 +25,21 @@
|
||||
"watch": "npx vite build --watch"
|
||||
},
|
||||
"dependencies": {
|
||||
"@anthropic-ai/sdk": "^0.78.0",
|
||||
"@anthropic-ai/sdk": "^0.102.0",
|
||||
"@tensorflow/tfjs": "^4.22.0",
|
||||
"@xenova/transformers": "^2.17.2",
|
||||
"@huggingface/transformers": "^4.2.0",
|
||||
"@ztimson/node-utils": "^1.0.7",
|
||||
"@ztimson/utils": "^0.28.13",
|
||||
"@ztimson/utils": "^0.29.4",
|
||||
"cheerio": "^1.2.0",
|
||||
"openai": "^6.22.0",
|
||||
"openai": "^6.42.0",
|
||||
"tesseract.js": "^7.0.0"
|
||||
},
|
||||
"devDependencies": {
|
||||
"@types/node": "^24.8.1",
|
||||
"@types/node": "^24.13.1",
|
||||
"typedoc": "^0.26.7",
|
||||
"typescript": "^5.3.3",
|
||||
"vite": "^7.2.7",
|
||||
"vite-plugin-dts": "^4.5.3"
|
||||
"typescript": "^5.6.3",
|
||||
"vite": "^8.0.16",
|
||||
"vite-plugin-dts": "^5.0.2"
|
||||
},
|
||||
"files": [
|
||||
"dist"
|
||||
|
||||
@@ -8,7 +8,7 @@ export type AbortablePromise<T> = Promise<T> & {
|
||||
};
|
||||
|
||||
export type AiOptions = {
|
||||
/** Token to pull models from hugging face */
|
||||
/** Token to pull diarization models from hugging face */
|
||||
hfToken?: string;
|
||||
/** Path to models */
|
||||
path?: string;
|
||||
|
||||
@@ -119,7 +119,7 @@ export class Anthropic extends LLMProvider {
|
||||
if(!tool) return {tool_use_id: toolCall.id, is_error: true, content: 'Tool not found'};
|
||||
try {
|
||||
const result = await tool.fn(toolCall.input, options?.stream, this.ai);
|
||||
return {type: 'tool_result', tool_use_id: toolCall.id, content: JSONSanitize(result)};
|
||||
return {type: 'tool_result', tool_use_id: toolCall.id, content: typeof result == 'object' ? JSONSanitize(result) : result};
|
||||
} catch (err: any) {
|
||||
return {type: 'tool_result', tool_use_id: toolCall.id, is_error: true, content: err?.message || err?.toString() || 'Unknown'};
|
||||
}
|
||||
|
||||
@@ -2,7 +2,6 @@ import {execSync, spawn} from 'node:child_process';
|
||||
import {mkdtempSync} from 'node:fs';
|
||||
import fs from 'node:fs/promises';
|
||||
import {tmpdir} from 'node:os';
|
||||
import * as path from 'node:path';
|
||||
import Path, {join} from 'node:path';
|
||||
import {AbortablePromise, Ai} from './ai.ts';
|
||||
|
||||
@@ -155,7 +154,7 @@ print(json.dumps(segments))
|
||||
const p = new Promise<any>((resolve, reject) => {
|
||||
this.downloadAsrModel(opts.model).then(m => {
|
||||
if(opts.diarization) {
|
||||
let output = path.join(path.dirname(file), 'transcript');
|
||||
let output = join(Path.dirname(file), 'transcript');
|
||||
proc = spawn(<string>this.ai.options.whisper,
|
||||
['-m', m, '-f', file, '-np', '-ml', '1', '-oj', '-of', output],
|
||||
{stdio: ['ignore', 'ignore', 'pipe']}
|
||||
@@ -226,11 +225,11 @@ print(json.dumps(segments))
|
||||
return <any>Object.assign(p, {abort});
|
||||
}
|
||||
|
||||
asr(file: string, options: { model?: string; diarization?: boolean | 'llm' } = {}): AbortablePromise<string | null> {
|
||||
asr(path: string, options: { model?: string; diarization?: boolean | 'llm' } = {}): AbortablePromise<string | null> {
|
||||
if(!this.ai.options.whisper) throw new Error('Whisper not configured');
|
||||
|
||||
const tmp = join(mkdtempSync(join(tmpdir(), 'audio-')), 'converted.wav');
|
||||
execSync(`ffmpeg -i "${file}" -ar 16000 -ac 1 -f wav "${tmp}"`, { stdio: 'ignore' });
|
||||
execSync(`ffmpeg -i "${path}" -ar 16000 -ac 1 -f wav "${tmp}"`, { stdio: 'ignore' });
|
||||
const clean = () => fs.rm(Path.dirname(tmp), {recursive: true, force: true}).catch(() => {});
|
||||
|
||||
if(!options.diarization) return this.runAsr(tmp, {model: options.model});
|
||||
|
||||
@@ -1,13 +1,13 @@
|
||||
import { pipeline } from '@xenova/transformers';
|
||||
import { pipeline } from '@huggingface/transformers';
|
||||
|
||||
const [modelDir, model] = process.argv.slice(2);
|
||||
|
||||
let text = '';
|
||||
process.stdin.on('data', chunk => text += chunk);
|
||||
process.stdin.on('end', async () => {
|
||||
const embedder = await pipeline('feature-extraction', 'Xenova/' + model, {quantized: true, cache_dir: modelDir});
|
||||
const embedder = await pipeline('feature-extraction', 'Xenova/' + model, {cache_dir: modelDir});
|
||||
const output = await embedder(text, { pooling: 'mean', normalize: true });
|
||||
const embedding = Array.from(output.data);
|
||||
console.log(JSON.stringify({embedding}));
|
||||
process.stdout.write(JSON.stringify({embedding}));
|
||||
process.exit();
|
||||
});
|
||||
|
||||
@@ -2,6 +2,7 @@ export * from './ai';
|
||||
export * from './antrhopic';
|
||||
export * from './audio';
|
||||
export * from './llm';
|
||||
export * from './memory';
|
||||
export * from './open-ai';
|
||||
export * from './provider';
|
||||
export * from './tools';
|
||||
|
||||
321
src/llm.ts
321
src/llm.ts
@@ -1,4 +1,3 @@
|
||||
import {JSONAttemptParse} from '@ztimson/utils';
|
||||
import {AbortablePromise, Ai} from './ai.ts';
|
||||
import {Anthropic} from './antrhopic.ts';
|
||||
import {OpenAi} from './open-ai.ts';
|
||||
@@ -6,7 +5,8 @@ import {LLMProvider} from './provider.ts';
|
||||
import {AiTool} from './tools.ts';
|
||||
import {fileURLToPath} from 'url';
|
||||
import {dirname, join} from 'path';
|
||||
import { spawn } from 'node:child_process';
|
||||
import {spawn} from 'node:child_process';
|
||||
import {Memory, MemoryManager} from './memory.ts';
|
||||
|
||||
export type AnthropicConfig = {proto: 'anthropic', token: string};
|
||||
export type OllamaConfig = {proto: 'ollama', host: string};
|
||||
@@ -36,16 +36,6 @@ export type LLMMessage = {
|
||||
timestamp?: number;
|
||||
}
|
||||
|
||||
/** Background information the AI will be fed */
|
||||
export type LLMMemory = {
|
||||
/** What entity is this fact about */
|
||||
owner: string;
|
||||
/** The information that will be remembered */
|
||||
fact: string;
|
||||
/** Owner and fact embedding vector */
|
||||
embeddings: [number[], number[]];
|
||||
}
|
||||
|
||||
export type LLMRequest = {
|
||||
/** System prompt */
|
||||
system?: string;
|
||||
@@ -62,17 +52,39 @@ export type LLMRequest = {
|
||||
/** Stream response */
|
||||
stream?: (chunk: {text?: string, tool?: string, done?: true}) => any;
|
||||
/** Compress old messages in the chat to free up context */
|
||||
compress?: {
|
||||
/** Trigger chat compression once context exceeds the token count */
|
||||
max: number;
|
||||
/** Compress chat until context size smaller than */
|
||||
min: number
|
||||
},
|
||||
/** Background information the AI will be fed */
|
||||
memory?: LLMMemory[],
|
||||
compress?: {max: number; min: number};
|
||||
/** User's memory documents - RAG injected automatically each turn */
|
||||
memory?: Memory[];
|
||||
/** Model to use for memory operations */
|
||||
memoryModel?: string;
|
||||
/** Skill documents the AI can browse and read on demand */
|
||||
skills?: Skill[];
|
||||
/** MCP servers to connect and expose as tools */
|
||||
mcp?: McpServer[];
|
||||
}
|
||||
|
||||
export type McpServer = {
|
||||
/** MCP server name for humans */
|
||||
name: string;
|
||||
/** Host URL */
|
||||
host: string;
|
||||
/** Server access token */
|
||||
token?: string;
|
||||
}
|
||||
|
||||
export type Skill = {
|
||||
/** Name of skill for humans */
|
||||
name: string;
|
||||
/** Description LLM will use to decide to learn a skill */
|
||||
description: string;
|
||||
/** Skill instructions */
|
||||
content: string;
|
||||
}
|
||||
|
||||
|
||||
class LLM {
|
||||
private memoryManager!: MemoryManager;
|
||||
|
||||
defaultModel!: string;
|
||||
models: {[model: string]: LLMProvider} = {};
|
||||
|
||||
@@ -84,14 +96,67 @@ class LLM {
|
||||
else if(config.proto == 'ollama') this.models[model] = new OpenAi(this.ai, config.host, 'not-needed', model);
|
||||
else if(config.proto == 'openai') this.models[model] = new OpenAi(this.ai, config.host || null, config.token, model);
|
||||
});
|
||||
this.memoryManager = new MemoryManager(this);
|
||||
}
|
||||
|
||||
private async setupMcp(servers: McpServer[] = []): Promise<{prompt: string, tools: AiTool[]}> {
|
||||
if(!servers?.length) return {prompt: '', tools: []};
|
||||
const allTools: AiTool[] = [];
|
||||
await Promise.all(servers.map(async server => {
|
||||
const res = await fetch(`${server.host}/tools`, {headers: server.token ? {Authorization: `Bearer ${server.token}`} : {}});
|
||||
const mcp: any = await res.json();
|
||||
if(!mcp?.tools) return;
|
||||
for(const t of mcp.tools) {
|
||||
const args: Record<string, any> = {};
|
||||
if(t.inputSchema?.properties) {
|
||||
for(const [key, val] of Object.entries<any>(t.inputSchema.properties)) {
|
||||
args[key] = {type: val.type || 'string', description: val.description || '', required: t.inputSchema.required?.includes(key)};
|
||||
}
|
||||
}
|
||||
allTools.push({
|
||||
name: `${server.name}_${t.name}`,
|
||||
description: t.description || '',
|
||||
args,
|
||||
fn: async (a: any) => {
|
||||
const r = await fetch(`${server.host}/tools/call`, {
|
||||
method: 'POST',
|
||||
headers: {'Content-Type': 'application/json', ...(server.token ? {Authorization: `Bearer ${server.token}`} : {})},
|
||||
body: JSON.stringify({name: t.name, arguments: a})
|
||||
});
|
||||
const data: any = await r.json();
|
||||
return data?.content?.[0]?.text ?? JSON.stringify(data);
|
||||
}
|
||||
});
|
||||
}
|
||||
}));
|
||||
|
||||
const list = allTools.map(t => `- ${t.name}: ${t.description}`).join('\n');
|
||||
return {
|
||||
prompt: `You have access to the following MCP tools:\n${list}`,
|
||||
tools: allTools
|
||||
};
|
||||
}
|
||||
|
||||
private setupSkills(skills: Skill[] = []): {prompt: string, tools: AiTool[]} {
|
||||
if(!skills?.length) return {prompt: '', tools: []};
|
||||
const list = skills.map(s => `- ${s.name}: ${s.description}`).join('\n');
|
||||
return {
|
||||
prompt: `You have access to the following skill documents, use \`read_skill\` to access them:\n${list}`,
|
||||
tools: [{
|
||||
name: 'read_skill',
|
||||
description: 'Read the full content of a skill/knowledge document',
|
||||
args: {
|
||||
name: {type: 'string', description: 'Exact skill name', required: true}
|
||||
},
|
||||
fn: (args: any) => {
|
||||
const skill = skills.find(s => s.name === args.name);
|
||||
if(!skill) return `Skill not found. Available:\n${list}`;
|
||||
return `# ${skill.name}\n${skill.content}`;
|
||||
}
|
||||
}]
|
||||
}
|
||||
}
|
||||
|
||||
/**
|
||||
* Chat with LLM
|
||||
* @param {string} message Question
|
||||
* @param {LLMRequest} options Configuration options and chat history
|
||||
* @returns {{abort: () => void, response: Promise<string>}} Function to abort response and chat history
|
||||
*/
|
||||
ask(message: string, options: LLMRequest = {}): AbortablePromise<string> {
|
||||
options = <any>{
|
||||
system: '',
|
||||
@@ -105,71 +170,51 @@ class LLM {
|
||||
if(!this.models[m]) throw new Error(`Model does not exist: ${m}`);
|
||||
let abort = () => {};
|
||||
return Object.assign(new Promise<string>(async res => {
|
||||
let tools: AiTool[] = options.tools || this.ai.options.llm?.tools || [];
|
||||
const prompts: string[] = [options.system || this.ai.options.llm?.system || ''];
|
||||
if(!options.history) options.history = [];
|
||||
// If memories were passed, find any relevant ones and add a tool for ADHOC lookups
|
||||
if(options.memory) {
|
||||
const search = async (query?: string | null, subject?: string | null, limit = 10) => {
|
||||
const [o, q] = await Promise.all([
|
||||
subject ? this.embedding(subject) : Promise.resolve(null),
|
||||
query ? this.embedding(query) : Promise.resolve(null),
|
||||
]);
|
||||
return (options.memory || []).map(m => {
|
||||
const score = (o ? this.cosineSimilarity(m.embeddings[0], o[0].embedding) : 0)
|
||||
+ (q ? this.cosineSimilarity(m.embeddings[1], q[0].embedding) : 0);
|
||||
return {...m, score};
|
||||
}).toSorted((a: any, b: any) => a.score - b.score).slice(0, limit)
|
||||
.map(m => `- ${m.owner}: ${m.fact}`).join('\n');
|
||||
}
|
||||
|
||||
options.system += '\nYou have RAG memory and will be given the top_k closest memories regarding the users query. Save anything new you have learned worth remembering from the user message using the remember tool and feel free to recall memories manually.\n';
|
||||
const relevant = await search(message);
|
||||
if(relevant.length) options.history.push({role: 'tool', name: 'recall', id: 'auto_recall_' + Math.random().toString(), args: {}, content: `Things I remembered:\n${relevant}`});
|
||||
options.tools = [{
|
||||
name: 'recall',
|
||||
description: 'Recall the closest memories you have regarding a query using RAG',
|
||||
args: {
|
||||
subject: {type: 'string', description: 'Find information by a subject topic, can be used with or without query argument'},
|
||||
query: {type: 'string', description: 'Search memory based on a query, can be used with or without subject argument'},
|
||||
topK: {type: 'number', description: 'Result limit, default 5'},
|
||||
},
|
||||
fn: (args) => {
|
||||
if(!args.subject && !args.query) throw new Error('Either a subject or query argument is required');
|
||||
return search(args.query, args.subject, args.topK);
|
||||
}
|
||||
}, {
|
||||
name: 'remember',
|
||||
description: 'Store important facts user shares for future recall',
|
||||
args: {
|
||||
owner: {type: 'string', description: 'Subject/person this fact is about'},
|
||||
fact: {type: 'string', description: 'The information to remember'}
|
||||
},
|
||||
fn: async (args) => {
|
||||
if(!options.memory) return;
|
||||
const e = await Promise.all([
|
||||
this.embedding(args.owner),
|
||||
this.embedding(`${args.owner}: ${args.fact}`)
|
||||
]);
|
||||
const newMem = {owner: args.owner, fact: args.fact, embeddings: <any>[e[0][0].embedding, e[1][0].embedding]};
|
||||
options.memory.splice(0, options.memory.length, ...[
|
||||
...options.memory.filter(m => {
|
||||
return !(this.cosineSimilarity(newMem.embeddings[0], m.embeddings[0]) >= 0.9 && this.cosineSimilarity(newMem.embeddings[1], m.embeddings[1]) >= 0.8);
|
||||
}),
|
||||
newMem
|
||||
]);
|
||||
return 'Remembered!';
|
||||
}
|
||||
}, ...options.tools || []];
|
||||
// MCP
|
||||
const mcp = options.mcp || this.ai.options?.llm?.mcp;
|
||||
if(mcp?.length) {
|
||||
const m = await this.setupMcp(mcp);
|
||||
prompts.unshift(m.prompt);
|
||||
tools.push(...m.tools);
|
||||
}
|
||||
|
||||
// Ask
|
||||
const resp = await this.models[m].ask(message, options);
|
||||
// Skills
|
||||
const skills = options.skills || this.ai.options?.llm?.skills;
|
||||
if(skills?.length) {
|
||||
const s = this.setupSkills(skills);
|
||||
prompts.unshift(s.prompt);
|
||||
tools.push(...s.tools);
|
||||
}
|
||||
|
||||
// Remove any memory calls from history
|
||||
if(options.memory) options.history.splice(0, options.history.length, ...options.history.filter(h => h.role != 'tool' || (h.name != 'recall' && h.name != 'remember')));
|
||||
// Memory
|
||||
if(options.memory) {
|
||||
const relevant = await this.memoryManager.recollect(message, options.memory);
|
||||
if(relevant.length) {
|
||||
const context = relevant.map(m => `### ${m.name}\n${m.content}`).join('\n\n');
|
||||
options.history.push({
|
||||
id: 'auto_recall_' + Math.random().toString(), role: 'tool', name: 'recall', args: {},
|
||||
content: `Knowledge Documents:\n\n${context}`
|
||||
});
|
||||
}
|
||||
prompts.unshift('You have access to a knowledge base. Relevant documents are injected automatically before each message. Use this knowledge to inform your responses.');
|
||||
}
|
||||
|
||||
// Compress message history
|
||||
const resp = await this.models[m].ask(message, {...options, tools, system: prompts.filter(Boolean).join('\n\n')});
|
||||
|
||||
// Trim memory injections from history
|
||||
if(options.memory) {
|
||||
options.history.splice(0, options.history.length, ...options.history.filter(h =>
|
||||
h.role !== 'tool' || h.name !== 'recall'));
|
||||
}
|
||||
|
||||
// Auto-memorize before compressing
|
||||
if(options.compress) {
|
||||
const compressed = await this.ai.language.compressHistory(options.history, options.compress.max, options.compress.min, options);
|
||||
if(options.memory) await this.memoryManager.memorize(options.history, options.memory, options);
|
||||
const compressed = await this.compressHistory(options.history, options.compress.max, options.compress.min, options);
|
||||
options.history.splice(0, options.history.length, ...compressed);
|
||||
}
|
||||
|
||||
@@ -177,13 +222,12 @@ class LLM {
|
||||
}), {abort});
|
||||
}
|
||||
|
||||
async code(message: string, options?: LLMRequest): Promise<any> {
|
||||
const resp = await this.ask(message, {...options, system: [
|
||||
options?.system,
|
||||
'Return your response in a code block'
|
||||
].filter(t => !!t).join(('\n'))});
|
||||
const codeBlock = /```(?:.+)?\s*([\s\S]*?)```/.exec(resp);
|
||||
return codeBlock ? codeBlock[1].trim() : null;
|
||||
/**
|
||||
* Digest full conversation history into memory documents.
|
||||
* Call on session end to persist the conversation.
|
||||
*/
|
||||
async updateMemory(history: LLMMessage[], memories: Memory[], options: LLMRequest = {}): Promise<void> {
|
||||
await this.memoryManager.memorize(history, memories, {model: this.defaultModel, ...options});
|
||||
}
|
||||
|
||||
/**
|
||||
@@ -272,7 +316,7 @@ class LLM {
|
||||
* @param {maxTokens?: number, overlapTokens?: number} opts Options for embedding such as chunk sizes
|
||||
* @returns {Promise<Awaited<{index: number, embedding: number[], text: string, tokens: number}>[]>} Chunked embeddings
|
||||
*/
|
||||
embedding(target: object | string, opts: {maxTokens?: number, overlapTokens?: number} = {}): AbortablePromise<any[]> {
|
||||
embedding(target: object | string, opts: {maxTokens?: number, overlapTokens?: number} = {}): AbortablePromise<{index: number, embedding: number[], text: string, tokens: number}[]> {
|
||||
let {maxTokens = 500, overlapTokens = 50} = opts;
|
||||
let aborted = false;
|
||||
const abort = () => { aborted = true; };
|
||||
@@ -280,7 +324,6 @@ class LLM {
|
||||
const embed = (text: string): Promise<number[]> => {
|
||||
return new Promise((resolve, reject) => {
|
||||
if(aborted) return reject(new Error('Aborted'));
|
||||
|
||||
const args: string[] = [
|
||||
join(dirname(fileURLToPath(import.meta.url)), 'embedder.js'),
|
||||
<string>this.ai.options.path,
|
||||
@@ -289,7 +332,6 @@ class LLM {
|
||||
const proc = spawn('node', args, {stdio: ['pipe', 'pipe', 'ignore']});
|
||||
proc.stdin.write(text);
|
||||
proc.stdin.end();
|
||||
|
||||
let output = '';
|
||||
proc.stdout.on('data', (data: Buffer) => output += data.toString());
|
||||
proc.on('close', (code: number) => {
|
||||
@@ -299,7 +341,7 @@ class LLM {
|
||||
const result = JSON.parse(output);
|
||||
resolve(result.embedding);
|
||||
} catch(err) {
|
||||
reject(new Error('Failed to parse embedding output'));
|
||||
reject(err);
|
||||
}
|
||||
} else {
|
||||
reject(new Error(`Embedder process exited with code ${code}`));
|
||||
@@ -319,7 +361,7 @@ class LLM {
|
||||
}
|
||||
return results;
|
||||
})();
|
||||
return Object.assign(p, { abort });
|
||||
return <any>Object.assign(p, {abort});
|
||||
}
|
||||
|
||||
/**
|
||||
@@ -345,8 +387,8 @@ class LLM {
|
||||
(char.charCodeAt(0) * (index + 1)) % dimensions / dimensions).slice(0, dimensions);
|
||||
}
|
||||
const v = vector(target);
|
||||
const similarities = searchTerms.map(t => vector(t)).map(refVector => this.cosineSimilarity(v, refVector))
|
||||
return {avg: similarities.reduce((acc, s) => acc + s, 0) / similarities.length, max: Math.max(...similarities), similarities}
|
||||
const similarities = searchTerms.map(t => vector(t)).map(refVector => this.cosineSimilarity(v, refVector));
|
||||
return {avg: similarities.reduce((acc, s) => acc + s, 0) / similarities.length, max: Math.max(...similarities), similarities};
|
||||
}
|
||||
|
||||
/**
|
||||
@@ -357,22 +399,89 @@ class LLM {
|
||||
* @returns {Promise<{} | {} | RegExpExecArray | null>}
|
||||
*/
|
||||
async json(text: string, schema: string, options?: LLMRequest): Promise<any> {
|
||||
const code = await this.code(text, {...options, system: [
|
||||
options?.system,
|
||||
`Only respond using JSON matching this schema:\n\`\`\`json\n${schema}\n\`\`\``
|
||||
].filter(t => !!t).join('\n')});
|
||||
return code ? JSONAttemptParse(code, {}) : null;
|
||||
let system = `Your job is to convert input to JSON using tool calls. Call the \`submit\` tool at least once with JSON matching this schema:\n\`\`\`json\n${schema}\n\`\`\`\n\nResponses are ignored`;
|
||||
if(options?.system) system += '\n\n' + options.system;
|
||||
return new Promise(async (resolve, reject) => {
|
||||
let done = false;
|
||||
const resp = await this.ask(text, {
|
||||
temperature: 0.3,
|
||||
...options,
|
||||
system,
|
||||
tools: [{
|
||||
name: 'submit',
|
||||
description: 'Submit JSON',
|
||||
args: {json: {type: 'string', description: 'Javascript parsable JSON string', required: true}},
|
||||
fn: (args) => {
|
||||
try {
|
||||
const json = JSON.parse(args.json);
|
||||
resolve(json);
|
||||
done = true;
|
||||
} catch { return 'Invalid JSON'; }
|
||||
return 'Saved';
|
||||
}
|
||||
}, ...(options?.tools || [])],
|
||||
});
|
||||
if(!done) reject(`AI failed to create JSON:\n${resp}`);
|
||||
});
|
||||
}
|
||||
|
||||
/**
|
||||
* Create a summary of some text
|
||||
* @param {string} text Text to summarize
|
||||
* @param {number} tokens Max number of tokens
|
||||
* @param {number} length Max number of words
|
||||
* @param options LLM request options
|
||||
* @returns {Promise<string>} Summary
|
||||
*/
|
||||
summarize(text: string, tokens: number = 500, options?: LLMRequest): Promise<string | null> {
|
||||
return this.ask(text, {system: `Generate the shortest summary possible <= ${tokens} tokens. Output nothing else`, temperature: 0.3, ...options});
|
||||
async summarize(text: string, length: number = 500, options?: LLMRequest): Promise<string | null> {
|
||||
let system = `Your job is to summarize the users message using tool calls. Call the \`submit\` tool at least once with the shortest summary possible that's <= ${length} words. The tool call will respond with the token count. Responses are ignored`;
|
||||
if(options?.system) system += '\n\n' + options.system;
|
||||
return new Promise(async (resolve, reject) => {
|
||||
let done = false;
|
||||
const resp = await this.ask(text, {
|
||||
temperature: 0.3,
|
||||
...options,
|
||||
system,
|
||||
tools: [{
|
||||
name: 'submit',
|
||||
description: 'Submit summary',
|
||||
args: {summary: {type: 'string', description: 'Text summarization', required: true}},
|
||||
fn: (args) => {
|
||||
if(!args.summary) return 'No summary provided';
|
||||
const count = args.summary.split(' ').length;
|
||||
if(count > length) return `Too long: ${length} words`;
|
||||
done = true;
|
||||
resolve(args.summary || null);
|
||||
return `Saved: ${length} words`;
|
||||
}
|
||||
}, ...(options?.tools || [])],
|
||||
});
|
||||
if(!done) reject(`AI failed to create summary:\n${resp}`);
|
||||
});
|
||||
}
|
||||
|
||||
addModel(name: string, config: AnthropicConfig | OllamaConfig | OpenAiConfig, setDefault = false) {
|
||||
if(config.proto == 'anthropic') this.models[name] = new Anthropic(this.ai, config.token, name);
|
||||
else if(config.proto == 'ollama') this.models[name] = new OpenAi(this.ai, config.host, 'not-needed', name);
|
||||
else if(config.proto == 'openai') this.models[name] = new OpenAi(this.ai, config.host || null, config.token, name);
|
||||
if(setDefault || !this.defaultModel) this.defaultModel = name;
|
||||
}
|
||||
|
||||
removeModel(name: string) {
|
||||
delete this.models[name];
|
||||
if(this.defaultModel === name) {
|
||||
this.defaultModel = Object.keys(this.models)[0] ?? '';
|
||||
}
|
||||
}
|
||||
|
||||
setModels(models: {[model: string]: AnthropicConfig | OllamaConfig | OpenAiConfig}, replace = true) {
|
||||
if(replace) this.models = {};
|
||||
Object.entries(models).forEach(([model, config]) => {
|
||||
if(!this.defaultModel) this.defaultModel = model;
|
||||
if(config.proto == 'anthropic') this.models[model] = new Anthropic(this.ai, config.token, model);
|
||||
else if(config.proto == 'ollama') this.models[model] = new OpenAi(this.ai, config.host, 'not-needed', model);
|
||||
else if(config.proto == 'openai') this.models[model] = new OpenAi(this.ai, config.host || null, config.token, model);
|
||||
});
|
||||
this.defaultModel = Object.keys(this.models)[0] ?? '';
|
||||
}
|
||||
}
|
||||
|
||||
|
||||
177
src/memory.ts
Normal file
177
src/memory.ts
Normal file
@@ -0,0 +1,177 @@
|
||||
// memory.ts
|
||||
import {LLMRequest, LLMMessage} from './llm.ts';
|
||||
|
||||
/** Background information the AI will be fed as a knowledge document */
|
||||
export type Memory = {
|
||||
/** Memory subject */
|
||||
name: string;
|
||||
/** Short description of what this document contains - used for RAG retrieval */
|
||||
description: string;
|
||||
/** Full markdown content of the document */
|
||||
content: string;
|
||||
/** Embedding vector of the description - used for similarity search */
|
||||
embedding: number[];
|
||||
}
|
||||
|
||||
export type MemoryCollection = {
|
||||
/** Memory subject */
|
||||
name: string;
|
||||
/** Short description - required if isNew */
|
||||
description?: string;
|
||||
/** Extracted facts to merge */
|
||||
facts: string[];
|
||||
}
|
||||
|
||||
export class MemoryManager {
|
||||
|
||||
tools = {
|
||||
edit: (memory: Memory) => ({
|
||||
name: 'edit',
|
||||
description: 'Edit a memory. Omit start/end to append. Pass start only to replace from that line on. Pass start+end to replace a specific range. start=0 replaces the whole document.',
|
||||
args: {
|
||||
content: {type: 'string', description: 'New content', required: true},
|
||||
start: {type: 'number', description: 'First line to replace (0-indexed, inclusive). Omit to append.'},
|
||||
end: {type: 'number', description: 'Last line to replace (0-indexed, inclusive). Omit to replace from start to end of doc.'},
|
||||
},
|
||||
fn: (args: any) => {
|
||||
const lines = memory.content ? memory.content.split('\n') : [];
|
||||
const newLines = args.content.split('\n');
|
||||
if(args.start === undefined) lines.push(...newLines);
|
||||
else if(args.end === undefined) lines.splice(args.start, lines.length - args.start, ...newLines);
|
||||
else lines.splice(args.start, args.end - args.start + 1, ...newLines);
|
||||
memory.content = lines.join('\n');
|
||||
return `Updated memory:\n${memory.content}`;
|
||||
}
|
||||
}),
|
||||
extract: (pools: MemoryCollection[]) => ({
|
||||
name: 'extract',
|
||||
description: 'Extract a list of facts to group into a single memory',
|
||||
args: {
|
||||
name: {type: 'string', description: 'Exact name of an existing memory, or a new name if none fits ([pro]nouns only)', required: true},
|
||||
description: {type: 'string', description: 'One sentence description of the memory subject, only required if new'},
|
||||
facts: {type: 'string', description: 'Comma separated list of extracted facts', required: true},
|
||||
},
|
||||
fn: (args: any) => {
|
||||
pools.push({
|
||||
name: args.name,
|
||||
description: args.description,
|
||||
facts: args.facts.split(',').map((f: string) => f.trim()).filter(Boolean),
|
||||
});
|
||||
return 'Success';
|
||||
}}),
|
||||
read: (memories: Memory[]) => ({
|
||||
name: 'read',
|
||||
description: 'Read entire memory',
|
||||
args: {
|
||||
name: {type: 'string', description: 'Exact memory name', required: true},
|
||||
},
|
||||
fn: (args: any) => {
|
||||
const mem = memories.find(m => m.name === args.name);
|
||||
if(!mem) return 'Document not found';
|
||||
return `Name: ${mem.name}\nDescription: ${mem.description}\n\n${mem.content}`;
|
||||
}
|
||||
}),
|
||||
}
|
||||
|
||||
constructor(private llm: any, private model?: string) {}
|
||||
|
||||
/**
|
||||
* Extracts facts from conversation and groups them into individual memories
|
||||
* @param {string} conversation Full conversation formatted as [role]: content
|
||||
* @param {Memory[]} memories The user's memory documents
|
||||
* @param {LLMRequest} options LLM options
|
||||
* @returns {Promise<MemoryCollection[]>} Fact pools grouped by target document
|
||||
*/
|
||||
private async extract(conversation: string, memories: Memory[], options: LLMRequest): Promise<MemoryCollection[]> {
|
||||
const existingDocs = memories.map(m => `Name: ${m.name}\nDescription: ${m.description}`).join('\n\n');
|
||||
const pools: MemoryCollection[] = [];
|
||||
await this.llm.ask(conversation, {
|
||||
model: this.model || options.model,
|
||||
temperature: 0.2,
|
||||
system: `You are a fact extractor. Analyze this conversation and extract facts worth remembering long term.
|
||||
Rules:
|
||||
- ONLY extract facts the USER explicitly stated about themselves or their business
|
||||
- ONLY extract decisions that were MADE during this conversation
|
||||
- DO NOT extract anything the AI said, its name, capabilities, or how it introduced itself
|
||||
- DO NOT extract greetings, pleasantries or generic exchanges
|
||||
- If nothing worth remembering was said, call NO tools
|
||||
|
||||
For each fact decide whether it belongs in an existing document or needs a new one, then call the \`extract\` tool.
|
||||
|
||||
Existing documents:\n${existingDocs || 'None yet.'}`,
|
||||
tools: [this.tools.extract(pools)]
|
||||
});
|
||||
return pools;
|
||||
}
|
||||
|
||||
/**
|
||||
* Bot 2 - Editor: merges a pool of facts into a specific document using surgical line-based edits.
|
||||
* Receives full document content and uses read + amend tools to make precise edits.
|
||||
* @param {MemoryCollection} newMem The fact pool to merge
|
||||
* @param {Memory[]} memories The user's memory documents
|
||||
* @param {LLMRequest} options LLM options
|
||||
*/
|
||||
private async edit(newMem: MemoryCollection, memories: Memory[], options: LLMRequest): Promise<void> {
|
||||
const existing = memories.find(m => m.name === newMem.name);
|
||||
const mem: Memory = existing || {name: newMem.name, description: newMem.description || '', content: '', embedding: []};
|
||||
const isNew = !existing;
|
||||
|
||||
await this.llm.ask(newMem.facts.map(f => `- ${f}`).join('\n'),
|
||||
{
|
||||
model: this.model || options.model,
|
||||
temperature: 0.2,
|
||||
system: `You are a document editor. Merge the users list of facts into the following document using the \`edit\` tool; call it as many times as necessary.
|
||||
|
||||
Name: ${mem.name}
|
||||
Description: ${mem.description}
|
||||
${mem.content}`,
|
||||
tools: [this.tools.edit(mem)]
|
||||
}
|
||||
);
|
||||
|
||||
if(isNew || mem.description !== existing?.description) {
|
||||
const [e] = await this.llm.embedding(mem.description);
|
||||
mem.embedding = e.embedding;
|
||||
}
|
||||
|
||||
if(isNew) memories.push(mem);
|
||||
else {
|
||||
const idx = memories.findIndex(m => m.name === newMem.name);
|
||||
if(idx >= 0) memories[idx] = mem;
|
||||
}
|
||||
}
|
||||
|
||||
/**
|
||||
* Find relevant memory documents for a query using description embeddings
|
||||
* @param {string} query The query to search against
|
||||
* @param {Memory[]} memories The user's memory documents
|
||||
* @param {number} limit Max number of results to return
|
||||
* @returns {Promise<Memory[]>} The most relevant memory documents
|
||||
*/
|
||||
async recollect(query: string, memories: Memory[], limit = 5): Promise<Memory[]> {
|
||||
const [e] = await this.llm.embedding(query);
|
||||
return memories
|
||||
.filter(m => m.embedding?.length)
|
||||
.map(m => ({...m, score: this.llm.cosineSimilarity(m.embedding, e.embedding)}))
|
||||
.toSorted((a: any, b: any) => b.score - a.score)
|
||||
.slice(0, limit);
|
||||
}
|
||||
|
||||
/**
|
||||
* Two-stage memory pipeline: classify facts from conversation history then surgically merge them into documents.
|
||||
* Bot 1 (classify) extracts and groups facts cheaply. Bot 2 (edit) runs per-document in parallel with full content access.
|
||||
* @param {LLMMessage[]} history Full conversation history to digest
|
||||
* @param {Memory[]} memories The user's memory documents — mutated in place
|
||||
* @param {LLMRequest} options LLM options
|
||||
*/
|
||||
async memorize(history: LLMMessage[], memories: Memory[], options: LLMRequest): Promise<void> {
|
||||
const conversation = history
|
||||
.filter(h => h.role === 'user' || h.role === 'assistant')
|
||||
.map(h => `[${h.role}]: ${h.content}`)
|
||||
.join('\n\n');
|
||||
if(!conversation.trim()) return;
|
||||
const pools = await this.extract(conversation, memories, options);
|
||||
if(!pools.length) return;
|
||||
await Promise.all(pools.map(pool => this.edit(pool, memories, options)));
|
||||
}
|
||||
}
|
||||
@@ -138,6 +138,7 @@ export class OpenAi extends LLMProvider {
|
||||
}
|
||||
}
|
||||
|
||||
if(resp.error) throw new Error(resp.error);
|
||||
const toolCalls = resp.choices[0].message.tool_calls || [];
|
||||
if(toolCalls.length && !controller.signal.aborted) {
|
||||
history.push(resp.choices[0].message);
|
||||
@@ -148,7 +149,7 @@ export class OpenAi extends LLMProvider {
|
||||
try {
|
||||
const args = JSONAttemptParse(toolCall.function.arguments, {});
|
||||
const result = await tool.fn(args, options.stream, this.ai);
|
||||
return {role: 'tool', tool_call_id: toolCall.id, content: JSONSanitize(result)};
|
||||
return {role: 'tool', tool_call_id: toolCall.id, content: typeof result == 'object' ? JSONSanitize(result) : result};
|
||||
} catch (err: any) {
|
||||
return {role: 'tool', tool_call_id: toolCall.id, content: JSONSanitize({error: err?.message || err?.toString() || 'Unknown'})};
|
||||
}
|
||||
@@ -157,7 +158,7 @@ export class OpenAi extends LLMProvider {
|
||||
requestParams.messages = history;
|
||||
}
|
||||
} while (!controller.signal.aborted && resp.choices?.[0]?.message?.tool_calls?.length);
|
||||
history.push({role: 'assistant', content: resp.choices[0].message.content || ''});
|
||||
history.push({role: 'assistant', content: resp.choices[0].message.content.trim() || ''});
|
||||
history = this.toStandard(history);
|
||||
|
||||
if(options.stream) options.stream({done: true});
|
||||
|
||||
241
src/tools.ts
241
src/tools.ts
@@ -1,10 +1,12 @@
|
||||
import * as cheerio from 'cheerio';
|
||||
import {$Sync} from '@ztimson/node-utils';
|
||||
import {ASet, consoleInterceptor, Http, fn as Fn} from '@ztimson/utils';
|
||||
import {ASet, consoleInterceptor, Http, fn as Fn, decodeHtml} from '@ztimson/utils';
|
||||
import * as os from 'node:os';
|
||||
import {Ai} from './ai.ts';
|
||||
import {LLMRequest} from './llm.ts';
|
||||
|
||||
const UA = 'Mozilla/5.0 (Windows NT 10.0; Win64; x64)';
|
||||
|
||||
const getShell = () => {
|
||||
if(os.platform() == 'win32') return 'cmd';
|
||||
return $Sync`echo $SHELL`?.split('/').pop() || 'bash';
|
||||
@@ -129,123 +131,107 @@ export const PythonTool: AiTool = {
|
||||
|
||||
export const ReadWebpageTool: AiTool = {
|
||||
name: 'read_webpage',
|
||||
description: 'Extract clean, structured content from a webpage or convert media/documents to accessible formats',
|
||||
description: 'Extract clean content from webpages, or convert media/documents to accessible formats',
|
||||
args: {
|
||||
url: {type: 'string', description: 'URL to extract content from', required: true},
|
||||
mimeRegex: {type: 'string', description: 'Optional: Regex pattern to filter MIME types (e.g., "^image/", "text/", "application/pdf")'},
|
||||
maxSize: {type: 'number', description: 'Optional: Max file size in bytes for binary content (default: 10MB)'}
|
||||
url: {type: 'string', description: 'URL to read', required: true},
|
||||
mimeRegex: {type: 'string', description: 'Optional regex to filter MIME types (e.g., "^image/", "text/")'}
|
||||
},
|
||||
fn: async (args: {url: string; mimeRegex?: string;}) => {
|
||||
const maxSize = 10 * 1024 * 1024; // 10 MB
|
||||
fn: async (args: {url: string; mimeRegex?: string}) => {
|
||||
const ua = 'AiTools-Webpage/1.0';
|
||||
const maxSize = 10 * 1024 * 1024;
|
||||
|
||||
const response = await fetch(args.url, {
|
||||
headers: {
|
||||
"User-Agent": "Mozilla/5.0 (Windows NT 10.0; Win64; x64) AppleWebKit/537.36",
|
||||
"Accept": "text/html,application/xhtml+xml,application/xml;q=0.9,image/webp,*/*;q=0.8",
|
||||
"Accept-Language": "en-US,en;q=0.5"
|
||||
'User-Agent': ua,
|
||||
'Accept': 'text/html,application/xhtml+xml,application/xml;q=0.9,image/webp,*/*;q=0.8',
|
||||
'Accept-Language': 'en-US,en;q=0.5'
|
||||
},
|
||||
redirect: 'follow'
|
||||
}).catch(err => {throw new Error(`Failed to fetch: ${err.message}`)});
|
||||
|
||||
const contentType = response.headers.get('content-type') || '';
|
||||
const mimeType = contentType.split(';')[0].trim().toLowerCase();
|
||||
const charset = contentType.match(/charset=([^;]+)/)?.[1] || 'utf-8';
|
||||
|
||||
// Filter by MIME type if specified
|
||||
if (args.mimeRegex) {
|
||||
const regex = new RegExp(args.mimeRegex, 'i');
|
||||
if (!regex.test(mimeType)) {
|
||||
return {url: args.url, error: 'MIME type rejected', mimeType, filter: args.mimeRegex};
|
||||
}
|
||||
if(args.mimeRegex && !new RegExp(args.mimeRegex, 'i').test(mimeType)) {
|
||||
return `❌ MIME type rejected: ${mimeType} (filter: ${args.mimeRegex})`;
|
||||
}
|
||||
|
||||
// Handle images, audio, video -> data URL
|
||||
if (mimeType.startsWith('image/') || mimeType.startsWith('audio/') || mimeType.startsWith('video/')) {
|
||||
if(mimeType.match(/^(image|audio|video)\//)) {
|
||||
const buffer = await response.arrayBuffer();
|
||||
if (buffer.byteLength > maxSize) {
|
||||
return {url: args.url, type: 'media', mimeType, error: 'File too large', size: buffer.byteLength, maxSize};
|
||||
if(buffer.byteLength > maxSize) {
|
||||
return `❌ File too large: ${(buffer.byteLength / 1024 / 1024).toFixed(1)}MB (max 10MB)\nType: ${mimeType}`;
|
||||
}
|
||||
const base64 = Buffer.from(buffer).toString('base64');
|
||||
return {url: args.url, type: 'media', mimeType, dataUrl: `data:${mimeType};base64,${base64}`, size: buffer.byteLength};
|
||||
return `## Media File\n**Type:** ${mimeType}\n**Size:** ${(buffer.byteLength / 1024).toFixed(1)}KB\n**Data URL:** \`data:${mimeType};base64,${base64.slice(0, 100)}...\``;
|
||||
}
|
||||
|
||||
// Handle plain text, json, xml, csv
|
||||
if (mimeType.match(/^(text\/(plain|csv|xml)|application\/(json|xml|csv|x-yaml))/) ||
|
||||
args.url.match(/\.(txt|json|xml|csv|yaml|yml|md)$/i)) {
|
||||
if(mimeType.match(/^text\/(plain|csv|xml)/) || args.url.match(/\.(txt|csv|xml|md|yaml|yml)$/i)) {
|
||||
const text = await response.text();
|
||||
return {url: args.url, type: 'text', mimeType, content: text.slice(0, 100000)};
|
||||
const truncated = text.length > 50000 ? text.slice(0, 50000) : text;
|
||||
return `## Text File\n**Type:** ${mimeType}\n**URL:** ${args.url}\n\n${truncated}`;
|
||||
}
|
||||
|
||||
// Handle PDFs and other binaries -> data URL
|
||||
if (mimeType === 'application/pdf' || mimeType.startsWith('application/') && !mimeType.includes('html')) {
|
||||
if(mimeType.match(/application\/(json|xml|csv)/)) {
|
||||
const text = await response.text();
|
||||
const truncated = text.length > 50000 ? text.slice(0, 50000) : text;
|
||||
return `## Structured Data\n**Type:** ${mimeType}\n**URL:** ${args.url}\n\n\`\`\`\n${truncated}\n\`\`\``;
|
||||
}
|
||||
|
||||
if(mimeType === 'application/pdf' || (mimeType.startsWith('application/') && !mimeType.includes('html'))) {
|
||||
const buffer = await response.arrayBuffer();
|
||||
if (buffer.byteLength > maxSize) {
|
||||
return {url: args.url, type: 'binary', mimeType, error: 'File too large', size: buffer.byteLength, maxSize};
|
||||
if(buffer.byteLength > maxSize) {
|
||||
return `❌ File too large: ${(buffer.byteLength / 1024 / 1024).toFixed(1)}MB (max 10MB)\nType: ${mimeType}`;
|
||||
}
|
||||
const base64 = Buffer.from(buffer).toString('base64');
|
||||
return {url: args.url, type: 'binary', mimeType, dataUrl: `data:${mimeType};base64,${base64}`, size: buffer.byteLength};
|
||||
return `## Binary File\n**Type:** ${mimeType}\n**Size:** ${(buffer.byteLength / 1024).toFixed(1)}KB\n**Data URL:** \`data:${mimeType};base64,${base64.slice(0, 100)}...\``;
|
||||
}
|
||||
|
||||
// Default HTML handling
|
||||
// HTML
|
||||
const html = await response.text();
|
||||
const $ = cheerio.load(html);
|
||||
|
||||
// Remove noise
|
||||
$('script, style, nav, footer, header, aside, iframe, noscript, svg, [role="navigation"], [role="banner"], [role="complementary"], .ad, .ads, .advertisement, .cookie, .popup, .modal, .sidebar, .related, .comments, .social-share').remove();
|
||||
|
||||
// Extract metadata
|
||||
const metadata = {
|
||||
title: $('meta[property="og:title"]').attr('content') || $('title').text() || '',
|
||||
description: $('meta[name="description"]').attr('content') || $('meta[property="og:description"]').attr('content') || '',
|
||||
author: $('meta[name="author"]').attr('content') || '',
|
||||
published: $('meta[property="article:published_time"]').attr('content') || $('time').attr('datetime') || '',
|
||||
image: $('meta[property="og:image"]').attr('content') || ''
|
||||
};
|
||||
|
||||
// Extract structured content
|
||||
$('script, style, nav, footer, header, aside, iframe, noscript, svg').remove();
|
||||
$('[role="navigation"], [role="banner"], [role="complementary"]').remove();
|
||||
$('[aria-hidden="true"], [hidden], .visually-hidden, .sr-only, .screen-reader-text').remove();
|
||||
$('.ad, .ads, .advertisement, .cookie, .popup, .modal, .sidebar, .related, .comments, .social-share').remove();
|
||||
$('button, [class*="share"], [class*="follow"], [class*="social"]').remove();
|
||||
const title = $('meta[property="og:title"]').attr('content') || $('title').text().trim() || '';
|
||||
const description = $('meta[name="description"]').attr('content') || $('meta[property="og:description"]').attr('content') || '';
|
||||
const author = $('meta[name="author"]').attr('content') || '';
|
||||
let content = '';
|
||||
const contentSelectors = ['article', 'main', '[role="main"]', '.content', '.post-content', '.entry-content', '.article-content', 'body'];
|
||||
for (const selector of contentSelectors) {
|
||||
const el = $(selector).first();
|
||||
if (el.length && el.text().trim().length > 200) {
|
||||
content = el.text();
|
||||
break;
|
||||
const selectors = ['article', 'main', '[role="main"]', '.content', '.post-content', '.entry-content', '.article-content'];
|
||||
for(const sel of selectors) {
|
||||
const el = $(sel).first();
|
||||
if(el.length && el.text().trim().length > 200) {
|
||||
const paragraphs: string[] = [];
|
||||
el.find('p').each((_, p) => {
|
||||
const text = $(p).text().trim();
|
||||
if(text.length > 80) paragraphs.push(text);
|
||||
});
|
||||
if(paragraphs.length > 2) {
|
||||
content = paragraphs.join('\n\n');
|
||||
break;
|
||||
}
|
||||
}
|
||||
}
|
||||
if (!content) content = $('body').text();
|
||||
|
||||
// Clean whitespace but preserve structure
|
||||
content = content
|
||||
.replace(/\n\s*\n\s*\n/g, '\n\n')
|
||||
.replace(/[ \t]+/g, ' ')
|
||||
.trim()
|
||||
.slice(0, 50000);
|
||||
|
||||
// Extract links if minimal content
|
||||
let links: any[] = [];
|
||||
if (content.length < 500) {
|
||||
$('a[href]').each((_, el) => {
|
||||
const href = $(el).attr('href');
|
||||
const text = $(el).text().trim();
|
||||
if (href && text && !href.startsWith('#')) {
|
||||
links.push({text, href});
|
||||
}
|
||||
if(!content) {
|
||||
const paragraphs: string[] = [];
|
||||
$('body p').each((_, p) => {
|
||||
const text = $(p).text().trim();
|
||||
if(text.length > 80) paragraphs.push(text);
|
||||
});
|
||||
links = links.slice(0, 50);
|
||||
content = paragraphs.slice(0, 30).join('\n\n');
|
||||
}
|
||||
|
||||
return {
|
||||
url: args.url,
|
||||
type: 'html',
|
||||
title: metadata.title.trim(),
|
||||
description: metadata.description.trim(),
|
||||
author: metadata.author.trim(),
|
||||
published: metadata.published,
|
||||
content,
|
||||
links: links.length ? links : undefined,
|
||||
};
|
||||
// Decode escaped newlines and clean
|
||||
const parts = [`## ${title || 'Webpage'}`];
|
||||
if(description) parts.push(`_${description}_`);
|
||||
if(author) parts.push(`👤 ${author}`);
|
||||
parts.push(`🔗 ${args.url}\n`);
|
||||
parts.push(content);
|
||||
return decodeHtml(parts.join('\n\n').replaceAll(/\n{3,}/g, '\n\n'));
|
||||
}
|
||||
}
|
||||
};
|
||||
|
||||
export const WebSearchTool: AiTool = {
|
||||
name: 'web_search',
|
||||
@@ -259,7 +245,7 @@ export const WebSearchTool: AiTool = {
|
||||
length: number;
|
||||
}) => {
|
||||
const html = await fetch(`https://html.duckduckgo.com/html/?q=${encodeURIComponent(args.query)}`, {
|
||||
headers: {"User-Agent": "Mozilla/5.0 (Windows NT 10.0; Win64; x64)", "Accept-Language": "en-US,en;q=0.9"}
|
||||
headers: {"User-Agent": UA, "Accept-Language": "en-US,en;q=0.9"}
|
||||
}).then(resp => resp.text());
|
||||
let match, regex = /<a .*?href="(.+?)".+?<\/a>/g;
|
||||
const results = new ASet<string>();
|
||||
@@ -272,3 +258,94 @@ export const WebSearchTool: AiTool = {
|
||||
return results;
|
||||
}
|
||||
}
|
||||
|
||||
class WikipediaClient {
|
||||
private async get(url: string): Promise<any> {
|
||||
const resp = await fetch(url, {headers: {'User-Agent': UA}});
|
||||
return resp.json();
|
||||
}
|
||||
|
||||
private api(params: Record<string, any>): Promise<any> {
|
||||
const qs = new URLSearchParams({...params, format: 'json', utf8: '1'}).toString();
|
||||
return this.get(`https://en.wikipedia.org/w/api.php?${qs}`);
|
||||
}
|
||||
|
||||
private clean(text: string): string {
|
||||
return text.replace(/\n{3,}/g, '\n\n').replace(/ {2,}/g, ' ').replace(/\[\d+\]/g, '').trim();
|
||||
}
|
||||
|
||||
private truncate(text: string, max: number): string {
|
||||
if(text.length <= max) return text;
|
||||
const cut = text.slice(0, max);
|
||||
const lastPara = cut.lastIndexOf('\n\n');
|
||||
return lastPara > max * 0.7 ? cut.slice(0, lastPara) : cut;
|
||||
}
|
||||
|
||||
private async searchTitles(query: string, limit = 6): Promise<any[]> {
|
||||
const data = await this.api({action: 'query', list: 'search', srsearch: query, srlimit: limit, srprop: 'snippet'});
|
||||
return data.query?.search || [];
|
||||
}
|
||||
|
||||
private async fetchExtract(title: string, intro = false): Promise<string> {
|
||||
const params: any = {action: 'query', prop: 'extracts', titles: title, explaintext: 1, redirects: 1};
|
||||
if(intro) params.exintro = 1;
|
||||
const data = await this.api(params);
|
||||
const page = Object.values(data.query?.pages || {})[0] as any;
|
||||
return this.clean(page?.extract || '');
|
||||
}
|
||||
|
||||
private pageUrl(title: string): string {
|
||||
return `https://en.wikipedia.org/wiki/${encodeURIComponent(title.replace(/ /g, '_'))}`;
|
||||
}
|
||||
|
||||
private stripHtml(text: string): string {
|
||||
return text.replace(/<[^>]+>/g, '');
|
||||
}
|
||||
|
||||
async lookup(query: string, detail: 'intro' | 'full' = 'intro'): Promise<string> {
|
||||
const results = await this.searchTitles(query, 6);
|
||||
if(!results.length) return `❌ No Wikipedia articles found for "${query}"`;
|
||||
const title = results[0].title;
|
||||
const url = this.pageUrl(title);
|
||||
const content = await this.fetchExtract(title, detail === 'intro');
|
||||
const text = this.truncate(content, detail === 'intro' ? 2000 : 8000);
|
||||
return `## ${title}\n🔗 ${url}\n\n${text}`;
|
||||
}
|
||||
|
||||
async search(query: string): Promise<string> {
|
||||
const results = await this.searchTitles(query, 8);
|
||||
if(!results.length) return `❌ No results for "${query}"`;
|
||||
const lines = [`### Search results for "${query}"\n`];
|
||||
for(let i = 0; i < results.length; i++) {
|
||||
const r = results[i];
|
||||
const snippet = this.truncate(this.stripHtml(r.snippet || ''), 150);
|
||||
lines.push(`**${i + 1}. ${r.title}**\n${snippet}\n${this.pageUrl(r.title)}`);
|
||||
}
|
||||
return lines.join('\n\n');
|
||||
}
|
||||
}
|
||||
|
||||
export const WikipediaLookupTool: AiTool = {
|
||||
name: 'wikipedia_lookup',
|
||||
description: 'Get Wikipedia article content',
|
||||
args: {
|
||||
query: {type: 'string', description: 'Topic or article title', required: true},
|
||||
detail: {type: 'string', description: 'Content level: "intro" (summary, default) or "full" (complete article)', enum: ['intro', 'full'], default: 'intro'}
|
||||
},
|
||||
fn: async (args: {query: string; detail?: 'intro' | 'full'}) => {
|
||||
const wiki = new WikipediaClient();
|
||||
return wiki.lookup(args.query, args.detail || 'intro');
|
||||
}
|
||||
};
|
||||
|
||||
export const WikipediaSearchTool: AiTool = {
|
||||
name: 'wikipedia_search',
|
||||
description: 'Search Wikipedia for matching articles',
|
||||
args: {
|
||||
query: {type: 'string', description: 'Search terms', required: true}
|
||||
},
|
||||
fn: async (args: {query: string}) => {
|
||||
const wiki = new WikipediaClient();
|
||||
return wiki.search(args.query);
|
||||
}
|
||||
};
|
||||
|
||||
@@ -17,7 +17,7 @@ export class Vision {
|
||||
const {data} = await worker.recognize(path);
|
||||
await worker.terminate();
|
||||
res(data.text.trim() || null);
|
||||
});
|
||||
}).finally(() => worker?.terminate());
|
||||
return Object.assign(p, {abort: () => worker?.terminate()});
|
||||
}
|
||||
}
|
||||
|
||||
Reference in New Issue
Block a user