بنقرة واحدة
ai-ml-integration
AI/ML APIs, LLM integration, and intelligent application patterns
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
القائمة
AI/ML APIs, LLM integration, and intelligent application patterns
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
استنادا إلى تصنيف SOC المهني
Enterprise-grade repository analysis with arc42/C4 architecture documentation, technical debt quantification, security assessment, and multi-stakeholder reporting
Claude Code Plugin 開發、發布、安裝、更新與 Marketplace 管理完整指南
Flame Engine core fundamentals - components, input, collision, camera, animation, scenes
Flame Engine 2D 遊戲開發完整指南 - 核心、系統、模板、部署
Game development patterns, architectures, and best practices
Mobile development with React Native, Flutter, and native patterns
| name | ai-ml-integration |
| description | AI/ML APIs, LLM integration, and intelligent application patterns |
| domain | development-stacks |
| version | 1.0.0 |
| tags | ["openai","anthropic","langchain","embeddings","rag","vector-db"] |
| triggers | {"keywords":{"primary":["ai","ml","llm","openai","anthropic","langchain","embedding","rag"],"secondary":["vector database","pinecone","chromadb","prompt engineering","agent","gpt"]},"context_boost":["intelligent","chatbot","nlp","machine learning"],"context_penalty":["frontend","css","ui","database"],"priority":"high"} |
Integrating AI and machine learning capabilities into applications, including LLM APIs, embeddings, and RAG patterns.
import OpenAI from 'openai';
const openai = new OpenAI({
apiKey: process.env.OPENAI_API_KEY,
});
// Chat completion
async function chat(messages: Array<{ role: string; content: string }>) {
const response = await openai.chat.completions.create({
model: 'gpt-4o',
messages,
temperature: 0.7,
max_tokens: 1000,
});
return response.choices[0].message.content;
}
// Streaming response
async function* streamChat(prompt: string) {
const stream = await openai.chat.completions.create({
model: 'gpt-4o',
messages: [{ role: 'user', content: prompt }],
stream: true,
});
for await (const chunk of stream) {
const content = chunk.choices[0]?.delta?.content;
if (content) {
yield content;
}
}
}
// Function calling
async function chatWithTools(message: string) {
const tools = [
{
type: 'function' as const,
function: {
name: 'get_weather',
description: 'Get current weather for a location',
parameters: {
type: 'object',
properties: {
location: { type: 'string', description: 'City name' },
unit: { type: 'string', enum: ['celsius', 'fahrenheit'] },
},
required: ['location'],
},
},
},
];
const response = await openai.chat.completions.create({
model: 'gpt-4o',
messages: [{ role: 'user', content: message }],
tools,
tool_choice: 'auto',
});
const toolCall = response.choices[0].message.tool_calls?.[0];
if (toolCall) {
const args = JSON.parse(toolCall.function.arguments);
// Execute the function
const result = await executeFunction(toolCall.function.name, args);
// Continue conversation with function result
return openai.chat.completions.create({
model: 'gpt-4o',
messages: [
{ role: 'user', content: message },
response.choices[0].message,
{
role: 'tool',
tool_call_id: toolCall.id,
content: JSON.stringify(result),
},
],
});
}
return response;
}
import Anthropic from '@anthropic-ai/sdk';
const anthropic = new Anthropic({
apiKey: process.env.ANTHROPIC_API_KEY,
});
// Basic message
async function chat(prompt: string) {
const message = await anthropic.messages.create({
model: 'claude-sonnet-4-20250514',
max_tokens: 1024,
messages: [{ role: 'user', content: prompt }],
});
return message.content[0].type === 'text' ? message.content[0].text : '';
}
// With system prompt
async function chatWithSystem(system: string, prompt: string) {
const message = await anthropic.messages.create({
model: 'claude-sonnet-4-20250514',
max_tokens: 1024,
system,
messages: [{ role: 'user', content: prompt }],
});
return message.content[0];
}
// Streaming
async function* streamChat(prompt: string) {
const stream = anthropic.messages.stream({
model: 'claude-sonnet-4-20250514',
max_tokens: 1024,
messages: [{ role: 'user', content: prompt }],
});
for await (const event of stream) {
if (event.type === 'content_block_delta' && event.delta.type === 'text_delta') {
yield event.delta.text;
}
}
}
// Tool use
async function chatWithTools(prompt: string) {
const response = await anthropic.messages.create({
model: 'claude-sonnet-4-20250514',
max_tokens: 1024,
tools: [
{
name: 'search_database',
description: 'Search the database for relevant information',
input_schema: {
type: 'object',
properties: {
query: { type: 'string', description: 'Search query' },
limit: { type: 'number', description: 'Max results' },
},
required: ['query'],
},
},
],
messages: [{ role: 'user', content: prompt }],
});
// Handle tool use blocks
for (const block of response.content) {
if (block.type === 'tool_use') {
const result = await executeSearch(block.input);
// Continue with tool result...
}
}
}
import OpenAI from 'openai';
const openai = new OpenAI();
// Generate embeddings
async function getEmbedding(text: string): Promise<number[]> {
const response = await openai.embeddings.create({
model: 'text-embedding-3-small',
input: text,
});
return response.data[0].embedding;
}
// Batch embeddings
async function getEmbeddings(texts: string[]): Promise<number[][]> {
const response = await openai.embeddings.create({
model: 'text-embedding-3-small',
input: texts,
});
return response.data.map(d => d.embedding);
}
// Cosine similarity
function cosineSimilarity(a: number[], b: number[]): number {
let dotProduct = 0;
let normA = 0;
let normB = 0;
for (let i = 0; i < a.length; i++) {
dotProduct += a[i] * b[i];
normA += a[i] * a[i];
normB += b[i] * b[i];
}
return dotProduct / (Math.sqrt(normA) * Math.sqrt(normB));
}
// Find similar items
async function findSimilar(query: string, items: Array<{ text: string; embedding: number[] }>, topK = 5) {
const queryEmbedding = await getEmbedding(query);
const scored = items.map(item => ({
...item,
score: cosineSimilarity(queryEmbedding, item.embedding),
}));
return scored
.sort((a, b) => b.score - a.score)
.slice(0, topK);
}
import { Pinecone } from '@pinecone-database/pinecone';
const pinecone = new Pinecone({
apiKey: process.env.PINECONE_API_KEY,
});
const index = pinecone.index('my-index');
// Upsert vectors
async function upsertDocuments(documents: Document[]) {
const vectors = await Promise.all(
documents.map(async (doc) => ({
id: doc.id,
values: await getEmbedding(doc.content),
metadata: {
title: doc.title,
source: doc.source,
content: doc.content.slice(0, 1000), // Store truncated for retrieval
},
}))
);
await index.upsert(vectors);
}
// Query similar vectors
async function querySimilar(query: string, topK = 5, filter?: object) {
const queryEmbedding = await getEmbedding(query);
const results = await index.query({
vector: queryEmbedding,
topK,
includeMetadata: true,
filter,
});
return results.matches.map(match => ({
id: match.id,
score: match.score,
...match.metadata,
}));
}
class RAGPipeline {
constructor(
private vectorStore: VectorStore,
private llm: LLM,
private embeddings: EmbeddingModel
) {}
async query(question: string): Promise<string> {
// 1. Retrieve relevant documents
const relevantDocs = await this.retrieve(question);
// 2. Build context
const context = this.buildContext(relevantDocs);
// 3. Generate response with context
return this.generate(question, context);
}
private async retrieve(query: string, topK = 5) {
const queryEmbedding = await this.embeddings.embed(query);
return this.vectorStore.similaritySearch(queryEmbedding, topK);
}
private buildContext(docs: Document[]): string {
return docs
.map((doc, i) => `[Document ${i + 1}]\n${doc.content}`)
.join('\n\n');
}
private async generate(question: string, context: string): Promise<string> {
const prompt = `Answer the question based on the following context.
If the answer is not in the context, say "I don't have enough information."
Context:
${context}
Question: ${question}
Answer:`;
return this.llm.generate(prompt);
}
}
import { CohereClient } from 'cohere-ai';
const cohere = new CohereClient({ token: process.env.COHERE_API_KEY });
class AdvancedRAG {
async query(question: string): Promise<string> {
// 1. Initial retrieval (over-fetch)
const candidates = await this.vectorStore.similaritySearch(question, 20);
// 2. Rerank with cross-encoder
const reranked = await this.rerank(question, candidates, 5);
// 3. Generate with reranked context
return this.generate(question, reranked);
}
private async rerank(query: string, documents: Document[], topK: number) {
const response = await cohere.rerank({
model: 'rerank-english-v2.0',
query,
documents: documents.map(d => d.content),
topN: topK,
});
return response.results.map(r => documents[r.index]);
}
private async generate(question: string, context: Document[]) {
const systemPrompt = `You are a helpful assistant. Answer questions based on the provided context.
Cite your sources using [1], [2], etc.`;
const contextText = context
.map((doc, i) => `[${i + 1}] ${doc.content}`)
.join('\n\n');
const response = await openai.chat.completions.create({
model: 'gpt-4o',
messages: [
{ role: 'system', content: systemPrompt },
{ role: 'user', content: `Context:\n${contextText}\n\nQuestion: ${question}` },
],
});
return response.choices[0].message.content;
}
}
import { ChatOpenAI } from '@langchain/openai';
import { StringOutputParser } from '@langchain/core/output_parsers';
import { ChatPromptTemplate } from '@langchain/core/prompts';
import { RunnableSequence } from '@langchain/core/runnables';
const model = new ChatOpenAI({ model: 'gpt-4o' });
// Simple chain
const prompt = ChatPromptTemplate.fromTemplate(
'Summarize the following text in {style} style:\n\n{text}'
);
const chain = prompt.pipe(model).pipe(new StringOutputParser());
const result = await chain.invoke({
style: 'professional',
text: 'Long text to summarize...',
});
// Chain with multiple steps
const analysisChain = RunnableSequence.from([
ChatPromptTemplate.fromTemplate('Extract key points from:\n{text}'),
model,
new StringOutputParser(),
(keyPoints: string) => ({ keyPoints }),
ChatPromptTemplate.fromTemplate('Create a summary from these key points:\n{keyPoints}'),
model,
new StringOutputParser(),
]);
// Branching chain
const routerChain = RunnableSequence.from([
ChatPromptTemplate.fromTemplate(
'Classify this query as either "technical" or "general":\n{query}'
),
model,
new StringOutputParser(),
async (classification: string) => {
if (classification.includes('technical')) {
return technicalChain.invoke({ query });
}
return generalChain.invoke({ query });
},
]);
import { PDFLoader } from 'langchain/document_loaders/fs/pdf';
import { RecursiveCharacterTextSplitter } from 'langchain/text_splitter';
import { OpenAIEmbeddings } from '@langchain/openai';
import { PineconeStore } from '@langchain/pinecone';
// Load documents
const loader = new PDFLoader('document.pdf');
const docs = await loader.load();
// Split into chunks
const splitter = new RecursiveCharacterTextSplitter({
chunkSize: 1000,
chunkOverlap: 200,
separators: ['\n\n', '\n', ' ', ''],
});
const chunks = await splitter.splitDocuments(docs);
// Create vector store
const vectorStore = await PineconeStore.fromDocuments(
chunks,
new OpenAIEmbeddings(),
{
pineconeIndex: index,
namespace: 'documents',
}
);
// Create retriever
const retriever = vectorStore.asRetriever({
k: 5,
filter: { type: 'technical' },
});
import { z } from 'zod';
import OpenAI from 'openai';
import { zodResponseFormat } from 'openai/helpers/zod';
const PersonSchema = z.object({
name: z.string(),
age: z.number(),
occupation: z.string(),
skills: z.array(z.string()),
});
async function extractPerson(text: string) {
const response = await openai.beta.chat.completions.parse({
model: 'gpt-4o',
messages: [
{
role: 'system',
content: 'Extract person information from the text.',
},
{ role: 'user', content: text },
],
response_format: zodResponseFormat(PersonSchema, 'person'),
});
return response.choices[0].message.parsed;
}
// With function calling for complex extraction
const extractionTools = [
{
type: 'function' as const,
function: {
name: 'extract_entities',
description: 'Extract named entities from text',
parameters: {
type: 'object',
properties: {
people: {
type: 'array',
items: {
type: 'object',
properties: {
name: { type: 'string' },
role: { type: 'string' },
},
},
},
organizations: {
type: 'array',
items: { type: 'string' },
},
dates: {
type: 'array',
items: { type: 'string' },
},
},
},
},
},
];