From claude-code-toolkit
Provides TypeScript patterns for Anthropic LLM integration: API usage, streaming responses, function calling, RAG pipelines, and cost optimization.
How this skill is triggered — by the user, by Claude, or both
Slash command
/claude-code-toolkit:llm-integrationThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
```typescript
import Anthropic from "@anthropic-ai/sdk";
const client = new Anthropic();
async function generateResponse(
systemPrompt: string,
userMessage: string,
options?: { maxTokens?: number; temperature?: number }
): Promise<string> {
const response = await client.messages.create({
model: "claude-sonnet-4-20250514",
max_tokens: options?.maxTokens ?? 1024,
temperature: options?.temperature ?? 0,
system: systemPrompt,
messages: [{ role: "user", content: userMessage }],
});
const textBlock = response.content.find(block => block.type === "text");
return textBlock?.text ?? "";
}
async function streamResponse(
messages: Array<{ role: "user" | "assistant"; content: string }>,
onChunk: (text: string) => void
): Promise<string> {
const stream = client.messages.stream({
model: "claude-sonnet-4-20250514",
max_tokens: 4096,
messages,
});
let fullText = "";
for await (const event of stream) {
if (event.type === "content_block_delta" && event.delta.type === "text_delta") {
onChunk(event.delta.text);
fullText += event.delta.text;
}
}
return fullText;
}
const response = await streamResponse(
[{ role: "user", content: "Explain async/await in TypeScript" }],
(chunk) => process.stdout.write(chunk)
);
const tools: Anthropic.Tool[] = [
{
name: "search_database",
description: "Search the product database by name, category, or price range",
input_schema: {
type: "object" as const,
properties: {
query: { type: "string", description: "Search query" },
category: { type: "string", description: "Product category filter" },
max_price: { type: "number", description: "Maximum price" },
},
required: ["query"],
},
},
];
async function agentLoop(userMessage: string): Promise<string> {
const messages: Anthropic.MessageParam[] = [
{ role: "user", content: userMessage },
];
while (true) {
const response = await client.messages.create({
model: "claude-sonnet-4-20250514",
max_tokens: 4096,
tools,
messages,
});
if (response.stop_reason === "end_turn") {
const text = response.content.find(b => b.type === "text");
return text?.text ?? "";
}
const toolUse = response.content.find(b => b.type === "tool_use");
if (!toolUse || toolUse.type !== "tool_use") break;
const result = await executeToolCall(toolUse.name, toolUse.input);
messages.push({ role: "assistant", content: response.content });
messages.push({
role: "user",
content: [{ type: "tool_result", tool_use_id: toolUse.id, content: result }],
});
}
return "";
}
import { embed } from "./embeddings";
interface Chunk {
id: string;
text: string;
metadata: Record<string, string>;
embedding: number[];
}
async function retrieveAndGenerate(query: string): Promise<string> {
const queryEmbedding = await embed(query);
const relevantChunks = await vectorDb.search({
vector: queryEmbedding,
topK: 5,
filter: { source: "documentation" },
});
const context = relevantChunks
.map((chunk, i) => `[${i + 1}] ${chunk.text}`)
.join("\n\n");
const response = await client.messages.create({
model: "claude-sonnet-4-20250514",
max_tokens: 2048,
system: `Answer questions using the provided context. Cite sources with [n] notation. If the context doesn't contain the answer, say so.`,
messages: [
{
role: "user",
content: `Context:\n${context}\n\nQuestion: ${query}`,
},
],
});
return response.content[0].type === "text" ? response.content[0].text : "";
}
function chunkDocument(
text: string,
options: { chunkSize: number; overlap: number }
): string[] {
const { chunkSize, overlap } = options;
const chunks: string[] = [];
const sentences = text.split(/(?<=[.!?])\s+/);
let current = "";
for (const sentence of sentences) {
if (current.length + sentence.length > chunkSize && current.length > 0) {
chunks.push(current.trim());
const words = current.split(" ");
const overlapWords = words.slice(-Math.floor(overlap / 5));
current = overlapWords.join(" ") + " " + sentence;
} else {
current += (current ? " " : "") + sentence;
}
}
if (current.trim()) chunks.push(current.trim());
return chunks;
}
function selectModel(task: TaskType): string {
switch (task) {
case "classification":
case "extraction":
return "claude-haiku-4-20250514";
case "analysis":
case "coding":
return "claude-sonnet-4-20250514";
case "complex-reasoning":
return "claude-opus-4-5-20251101";
default:
return "claude-sonnet-4-20250514";
}
}
Use the smallest model that achieves acceptable quality. Cache embeddings and responses where possible. Batch requests when latency is not critical.
npx claudepluginhub wolfe-jam/awesome-claude-code-toolkit2plugins reuse this skill
First indexed Jul 1, 2026
Provides LLM integration patterns including API clients, streaming responses, function calling (tool use), and RAG pipelines. Useful when building AI features with Anthropic's SDK.
Provides AI/LLM patterns: Anthropic SDK streaming with TypeScript, RAG (chunking, pgvector vector search), tool use, model selection (Haiku/Sonnet/Opus), prompt caching, Zod outputs, token management. For AI features, RAG, agents.
Applies production-ready Anthropic SDK patterns for TypeScript and Python, covering typed wrappers, retries, streaming, and multi-turn conversations for Claude integrations.