Skills Development Mistral AI Core Workflow for Chat Completions

Mistral AI Core Workflow for Chat Completions

v20260423
mistral-core-workflow-a
This comprehensive workflow guide covers all production-ready patterns for Mistral AI chat completions. It demonstrates critical advanced features including multi-turn conversation management, real-time streaming responses, structured JSON output using schemas, and implementing robust guardrails and moderation. Ideal for building scalable, production-grade conversational AI applications and advanced chat interfaces.
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Overview

Mistral AI Core Workflow A: Chat Completions

Overview

Production chat completion patterns for Mistral AI: multi-turn conversations, streaming responses, JSON mode structured output, guardrails/moderation, and model selection. Uses the @mistralai/mistralai SDK.

Prerequisites

  • Completed mistral-install-auth setup
  • MISTRAL_API_KEY environment variable set
  • Understanding of Mistral model tiers

Instructions

Step 1: Basic Chat Completion

import { Mistral } from '@mistralai/mistralai';

const client = new Mistral({ apiKey: process.env.MISTRAL_API_KEY });

async function chat(userMessage: string): Promise<string> {
  const response = await client.chat.complete({
    model: 'mistral-small-latest',
    messages: [
      { role: 'system', content: 'You are a helpful assistant.' },
      { role: 'user', content: userMessage },
    ],
  });
  return response.choices?.[0]?.message?.content ?? '';
}

Step 2: Multi-Turn Conversation Manager

interface Message {
  role: 'system' | 'user' | 'assistant';
  content: string;
}

class MistralConversation {
  private messages: Message[] = [];
  private client: Mistral;
  private model: string;

  constructor(systemPrompt: string, model = 'mistral-small-latest') {
    this.client = new Mistral({ apiKey: process.env.MISTRAL_API_KEY });
    this.model = model;
    this.messages.push({ role: 'system', content: systemPrompt });
  }

  async send(userMessage: string): Promise<string> {
    this.messages.push({ role: 'user', content: userMessage });

    const response = await this.client.chat.complete({
      model: this.model,
      messages: this.messages,
    });

    const reply = response.choices?.[0]?.message?.content ?? '';
    this.messages.push({ role: 'assistant', content: reply });
    return reply;
  }

  // Prevent context window overflow
  trimHistory(maxTurns = 20): void {
    const system = this.messages[0];
    const recent = this.messages.slice(1).slice(-maxTurns * 2);
    this.messages = [system, ...recent];
  }
}

// Usage
const conv = new MistralConversation('You are a coding tutor.');
await conv.send('How do I reverse a list in Python?');
await conv.send('What about in-place?');

Step 3: Streaming Responses

async function streamChat(
  messages: Message[],
  onChunk: (text: string) => void,
): Promise<string> {
  const stream = await client.chat.stream({
    model: 'mistral-small-latest',
    messages,
  });

  let full = '';
  for await (const event of stream) {
    const text = event.data?.choices?.[0]?.delta?.content;
    if (text) {
      full += text;
      onChunk(text);
    }
  }
  return full;
}

// Express.js SSE endpoint
app.post('/chat/stream', async (req, res) => {
  res.setHeader('Content-Type', 'text/event-stream');
  res.setHeader('Cache-Control', 'no-cache');
  res.setHeader('Connection', 'keep-alive');

  const stream = await client.chat.stream({
    model: 'mistral-small-latest',
    messages: req.body.messages,
  });

  for await (const event of stream) {
    const content = event.data?.choices?.[0]?.delta?.content;
    if (content) {
      res.write(`data: ${JSON.stringify({ content })}\n\n`);
    }
  }
  res.write('data: [DONE]\n\n');
  res.end();
});

Step 4: JSON Mode and JSON Schema Mode

// JSON mode — model returns valid JSON
const jsonResponse = await client.chat.complete({
  model: 'mistral-small-latest',
  messages: [
    { role: 'user', content: 'List 3 countries with capitals as JSON array.' },
  ],
  responseFormat: { type: 'json_object' },
});
const data = JSON.parse(jsonResponse.choices?.[0]?.message?.content ?? '{}');

// JSON Schema mode — guarantees structure conformance
const schemaResponse = await client.chat.complete({
  model: 'mistral-small-latest',
  messages: [
    { role: 'user', content: 'Classify this ticket: "Login page crashes on mobile"' },
  ],
  responseFormat: {
    type: 'json_schema',
    jsonSchema: {
      name: 'ticket_classification',
      schema: {
        type: 'object',
        properties: {
          category: { type: 'string', enum: ['bug', 'feature', 'question'] },
          severity: { type: 'string', enum: ['low', 'medium', 'high', 'critical'] },
          summary: { type: 'string' },
        },
        required: ['category', 'severity', 'summary'],
      },
    },
  },
});

Step 5: Guardrails and Moderation

// Built-in safe_prompt flag — injects safety system prompt
const safeResponse = await client.chat.complete({
  model: 'mistral-small-latest',
  messages: [{ role: 'user', content: userInput }],
  safePrompt: true,
});

// Dedicated moderation API — classify text against policy categories
const moderation = await client.classifiers.moderate({
  model: 'mistral-moderation-latest',
  inputs: [userInput],
});

const flagged = moderation.results[0].categories;
// Check: flagged.sexual, flagged.hate_and_discrimination, flagged.violence, etc.
if (Object.values(flagged).some(Boolean)) {
  throw new Error('Content flagged by moderation');
}

Step 6: Model Selection Guide

type UseCase = 'realtime' | 'analysis' | 'code' | 'vision' | 'embedding';

const MODEL_MAP: Record<UseCase, { model: string; note: string }> = {
  realtime:  { model: 'mistral-small-latest',   note: '256k ctx, fast, $0.1/M in' },
  analysis:  { model: 'mistral-large-latest',   note: '256k ctx, reasoning, $0.5/M in' },
  code:      { model: 'codestral-latest',        note: '256k ctx, code + FIM, $0.3/M in' },
  vision:    { model: 'pixtral-large-latest',    note: '128k ctx, multimodal' },
  embedding: { model: 'mistral-embed',           note: '1024-dim vectors, $0.1/M in' },
};

function selectModel(use: UseCase): string {
  return MODEL_MAP[use].model;
}

Output

  • Chat completions with configurable parameters
  • Multi-turn conversation management with history trimming
  • Real-time streaming responses
  • JSON and JSON Schema structured output
  • Content moderation via guardrails

Error Handling

Error Cause Solution
401 Unauthorized Invalid API key Verify MISTRAL_API_KEY
429 Rate Limited RPM or TPM exceeded Implement backoff (see mistral-rate-limits)
400 Bad Request Invalid model or params Check model ID and message format
Context exceeded Too many tokens Trim conversation history
Empty JSON response Missing instruction Tell model to respond in JSON in prompt

Resources

Next Steps

For embeddings and function calling, see mistral-core-workflow-b.

Info
Category Development
Name mistral-core-workflow-a
Version v20260423
Size 7.31KB
Updated At 2026-04-28
Language