llm-patterns

llm-patterns

热门

AI-first application patterns, LLM testing, prompt management

428Star
34Fork
更新于 1/21/2026
SKILL.md
readonly只读
name
llm-patterns
description

AI-first application patterns, LLM testing, prompt management

LLM Patterns Skill

Load with: base.md + [language].md

For AI-first applications where LLMs handle logical operations.


Core Principle

LLM for logic, code for plumbing.

Use LLMs for:

  • Classification, extraction, summarization
  • Decision-making with natural language reasoning
  • Content generation and transformation
  • Complex conditional logic that would be brittle in code

Use traditional code for:

  • Data validation (Zod/Pydantic)
  • API routing and HTTP handling
  • Database operations
  • Authentication/authorization
  • Orchestration and error handling

Project Structure

project/
├── src/
│   ├── core/
│   │   ├── prompts/           # Prompt templates
│   │   │   ├── classify.ts
│   │   │   └── extract.ts
│   │   ├── llm/               # LLM client and utilities
│   │   │   ├── client.ts      # LLM client wrapper
│   │   │   ├── schemas.ts     # Response schemas (Zod)
│   │   │   └── index.ts
│   │   └── services/          # Business logic using LLM
│   ├── infra/
│   └── ...
├── tests/
│   ├── unit/
│   ├── integration/
│   └── llm/                   # LLM-specific tests
│       ├── fixtures/          # Saved responses for deterministic tests
│       ├── evals/             # Evaluation test suites
│       └── mocks/             # Mock LLM responses
└── _project_specs/
    └── prompts/               # Prompt specifications

LLM Client Pattern

Typed LLM Wrapper

// core/llm/client.ts
import Anthropic from '@anthropic-ai/sdk';
import { z } from 'zod';

const client = new Anthropic();

interface LLMCallOptions<T> {
  prompt: string;
  schema: z.ZodSchema<T>;
  model?: string;
  maxTokens?: number;
}

export async function llmCall<T>({
  prompt,
  schema,
  model = 'claude-sonnet-4-20250514',
  maxTokens = 1024,
}: LLMCallOptions<T>): Promise<T> {
  const response = await client.messages.create({
    model,
    max_tokens: maxTokens,
    messages: [{ role: 'user', content: prompt }],
  });

  const text = response.content[0].type === 'text'
    ? response.content[0].text
    : '';

  // Parse and validate response
  const parsed = JSON.parse(text);
  return schema.parse(parsed);
}

Structured Outputs

// core/llm/schemas.ts
import { z } from 'zod';

export const ClassificationSchema = z.object({
  category: z.enum(['support', 'sales', 'feedback', 'other']),
  confidence: z.number().min(0).max(1),
  reasoning: z.string(),
});

export type Classification = z.infer<typeof ClassificationSchema>;

Prompt Patterns

Template Functions

// core/prompts/classify.ts
export function classifyTicketPrompt(ticket: string): string {
  return `Classify this support ticket into one of these categories:
- support: Technical issues or help requests
- sales: Pricing, plans, or purchase inquiries
- feedback: Suggestions or complaints
- other: Anything else

Respond with JSON:
{
  "category": "...",
  "confidence": 0.0-1.0,
  "reasoning": "brief explanation"
}

Ticket:
${ticket}`;
}

Prompt Versioning

// core/prompts/index.ts
export const PROMPTS = {
  classify: {
    v1: classifyTicketPromptV1,
    v2: classifyTicketPromptV2,  // improved accuracy
    current: classifyTicketPromptV2,
  },
} as const;

Testing LLM Calls

1. Unit Tests with Mocks (Fast, Deterministic)

// tests/llm/mocks/classify.mock.ts
export const mockClassifyResponse = {
  category: 'support',
  confidence: 0.95,
  reasoning: 'User is asking for help with login',
};

// tests/unit/services/ticket.test.ts
import { classifyTicket } from '../../../src/core/services/ticket';
import { mockClassifyResponse } from '../../llm/mocks/classify.mock';

// Mock the LLM client
vi.mock('../../../src/core/llm/client', () => ({
  llmCall: vi.fn().mockResolvedValue(mockClassifyResponse),
}));

describe('classifyTicket', () => {
  it('returns classification for ticket', async () => {
    const result = await classifyTicket('I cannot log in');

    expect(result.category).toBe('support');
    expect(result.confidence).toBeGreaterThan(0.9);
  });
});

2. Fixture Tests (Deterministic, Tests Parsing)

// tests/llm/fixtures/classify.fixtures.json
{
  "support_ticket": {
    "input": "I can't reset my password",
    "expected_category": "support",
    "raw_response": "{\"category\":\"support\",\"confidence\":0.98,\"reasoning\":\"Password reset is a support issue\"}"
  }
}

// tests/llm/classify.fixture.test.ts
import fixtures from './fixtures/classify.fixtures.json';
import { ClassificationSchema } from '../../src/core/llm/schemas';

describe('Classification Response Parsing', () => {
  Object.entries(fixtures).forEach(([name, fixture]) => {
    it(`parses ${name} correctly`, () => {
      const parsed = JSON.parse(fixture.raw_response);
      const result = ClassificationSchema.parse(parsed);

      expect(result.category).toBe(fixture.expected_category);
    });
  });
});

3. Evaluation Tests (Slow, Run in CI nightly)

// tests/llm/evals/classify.eval.test.ts
import { classifyTicket } from '../../../src/core/services/ticket';

const TEST_CASES = [
  { input: 'How much does the pro plan cost?', expected: 'sales' },
  { input: 'The app crashes when I click save', expected: 'support' },
  { input: 'You should add dark mode', expected: 'feedback' },
  { input: 'What time is it in Tokyo?', expected: 'other' },
];

describe('Classification Accuracy (Eval)', () => {
  // Skip in regular CI, run nightly
  const runEvals = process.env.RUN_LLM_EVALS === 'true';

  it.skipIf(!runEvals)('achieves >90% accuracy on test set', async () => {
    let correct = 0;

    for (const testCase of TEST_CASES) {
      const result = await classifyTicket(testCase.input);
      if (result.category === testCase.expected) correct++;
    }

    const accuracy = correct / TEST_CASES.length;
    expect(accuracy).toBeGreaterThan(0.9);
  }, 60000); // 60s timeout for LLM calls
});

GitHub Actions for LLM Tests

# .github/workflows/quality.yml (add to existing)
jobs:
  quality:
    # ... existing steps ...

    - name: Run Tests (with LLM mocks)
      run: npm run test:coverage

  llm-evals:
    runs-on: ubuntu-latest
    # Run nightly or on-demand
    if: github.event_name == 'schedule' || github.event_name == 'workflow_dispatch'
    steps:
      - uses: actions/checkout@v4

      - name: Setup Node
        uses: actions/setup-node@v4
        with:
          node-version: '20'

      - name: Install dependencies
        run: npm ci

      - name: Run LLM Evals
        run: npm run test:evals
        env:
          ANTHROPIC_API_KEY: ${{ secrets.ANTHROPIC_API_KEY }}
          RUN_LLM_EVALS: 'true'

Cost & Performance Tracking

// core/llm/client.ts - add tracking
interface LLMMetrics {
  model: string;
  inputTokens: number;
  outputTokens: number;
  latencyMs: number;
  cost: number;
}

export async function llmCallWithMetrics<T>(
  options: LLMCallOptions<T>
): Promise<{ result: T; metrics: LLMMetrics }> {
  const start = Date.now();

  const response = await client.messages.create({...});

  const metrics: LLMMetrics = {
    model: options.model,
    inputTokens: response.usage.input_tokens,
    outputTokens: response.usage.output_tokens,
    latencyMs: Date.now() - start,
    cost: calculateCost(response.usage, options.model),
  };

  // Log or send to monitoring
  console.log('[LLM]', metrics);

  return { result: parsed, metrics };
}

LLM Anti-Patterns

  • ❌ Hardcoded prompts in business logic - use prompt templates
  • ❌ No schema validation on LLM responses - always use Zod
  • ❌ Testing with live LLM calls in CI - use mocks for unit tests
  • ❌ No cost tracking - monitor token usage
  • ❌ Ignoring latency - LLM calls are slow, design for async
  • ❌ No fallback for LLM failures - handle timeouts and errors
  • ❌ Prompts without version control - track prompt changes
  • ❌ No evaluation suite - measure accuracy over time
  • ❌ Using LLM for deterministic logic - use code for validation, auth, math
  • ❌ Giant monolithic prompts - compose smaller focused prompts

You Might Also Like

Related Skills

fix

fix

243Kdev-testing

Use when you have lint errors, formatting issues, or before committing code to ensure it passes CI.

facebook avatarfacebook
获取
peekaboo

peekaboo

179Kdev-testing

Capture and automate macOS UI with the Peekaboo CLI.

openclaw avataropenclaw
获取
frontend-testing

frontend-testing

128Kdev-testing

Generate Vitest + React Testing Library tests for Dify frontend components, hooks, and utilities. Triggers on testing, spec files, coverage, Vitest, RTL, unit tests, integration tests, or write/review test requests.

langgenius avatarlanggenius
获取
frontend-code-review

frontend-code-review

127Kdev-testing

Trigger when the user requests a review of frontend files (e.g., `.tsx`, `.ts`, `.js`). Support both pending-change reviews and focused file reviews while applying the checklist rules.

langgenius avatarlanggenius
获取
code-reviewer

code-reviewer

92Kdev-testing

Use this skill to review code. It supports both local changes (staged or working tree) and remote Pull Requests (by ID or URL). It focuses on correctness, maintainability, and adherence to project standards.

google-gemini avatargoogle-gemini
获取
session-logs

session-logs

90Kdev-testing

Search and analyze your own session logs (older/parent conversations) using jq.

moltbot avatarmoltbot
获取