From mistral-pack
Generates Mistral AI embeddings, function calling, and RAG pipelines with batch processing and cosine similarity semantic search.
How this skill is triggered — by the user, by Claude, or both
Slash command
/mistral-pack:mistral-core-workflow-bThis skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
Secondary workflows for Mistral AI: text/code embeddings with `mistral-embed` (1024 dimensions), function calling (tool use) with any chat model, and RAG pipeline combining both. Mistral supports `auto`, `any`, and `none` tool choice modes.
Secondary workflows for Mistral AI: text/code embeddings with mistral-embed (1024 dimensions), function calling (tool use) with any chat model, and RAG pipeline combining both. Mistral supports auto, any, and none tool choice modes.
mistral-install-auth setupMISTRAL_API_KEY environment variable setmistral-core-workflow-aimport { Mistral } from '@mistralai/mistralai';
const client = new Mistral({ apiKey: process.env.MISTRAL_API_KEY });
// Single text embedding
const response = await client.embeddings.create({
model: 'mistral-embed',
inputs: ['Machine learning is fascinating.'],
});
const vector = response.data[0].embedding;
console.log(`Dimensions: ${vector.length}`); // 1024
console.log(`Tokens used: ${response.usage.totalTokens}`);
async function batchEmbed(
texts: string[],
batchSize = 64,
): Promise<number[][]> {
const allEmbeddings: number[][] = [];
for (let i = 0; i < texts.length; i += batchSize) {
const batch = texts.slice(i, i + batchSize);
const response = await client.embeddings.create({
model: 'mistral-embed',
inputs: batch,
});
allEmbeddings.push(...response.data.map(d => d.embedding));
}
return allEmbeddings;
}
// Embed 1000 documents in batches of 64
const docs = ['doc1...', 'doc2...', /* ... */];
const embeddings = await batchEmbed(docs);
function cosineSimilarity(a: number[], b: number[]): number {
let dot = 0, normA = 0, normB = 0;
for (let i = 0; i < a.length; i++) {
dot += a[i] * b[i];
normA += a[i] * a[i];
normB += b[i] * b[i];
}
return dot / (Math.sqrt(normA) * Math.sqrt(normB));
}
class SemanticSearch {
private documents: Array<{ text: string; embedding: number[] }> = [];
private client: Mistral;
constructor() {
this.client = new Mistral({ apiKey: process.env.MISTRAL_API_KEY });
}
async index(texts: string[]): Promise<void> {
const response = await this.client.embeddings.create({
model: 'mistral-embed',
inputs: texts,
});
this.documents = texts.map((text, i) => ({
text,
embedding: response.data[i].embedding,
}));
}
async search(query: string, topK = 5): Promise<Array<{ text: string; score: number }>> {
const qEmbed = await this.client.embeddings.create({
model: 'mistral-embed',
inputs: [query],
});
const qVec = qEmbed.data[0].embedding;
return this.documents
.map(doc => ({ text: doc.text, score: cosineSimilarity(qVec, doc.embedding) }))
.sort((a, b) => b.score - a.score)
.slice(0, topK);
}
}
// 1. Define tools with JSON Schema
const tools = [
{
type: 'function' as const,
function: {
name: 'get_weather',
description: 'Get current weather for a city',
parameters: {
type: 'object',
properties: {
city: { type: 'string', description: 'City name (e.g., "Paris")' },
units: { type: 'string', enum: ['celsius', 'fahrenheit'], default: 'celsius' },
},
required: ['city'],
},
},
},
{
type: 'function' as const,
function: {
name: 'search_database',
description: 'Search product database by query',
parameters: {
type: 'object',
properties: {
query: { type: 'string' },
limit: { type: 'integer', default: 10 },
},
required: ['query'],
},
},
},
];
// 2. Send request with tools
const response = await client.chat.complete({
model: 'mistral-large-latest', // Large recommended for complex tool use
messages: [{ role: 'user', content: "What's the weather in Paris?" }],
tools,
toolChoice: 'auto', // 'auto' | 'any' | 'none'
});
// Tool registry maps function names to implementations
const toolRegistry: Record<string, (args: any) => Promise<any>> = {
get_weather: async ({ city, units }) => ({ city, temp: 22, units: units ?? 'celsius' }),
search_database: async ({ query, limit }) => ({ results: [], total: 0 }),
};
async function chatWithTools(userMessage: string): Promise<string> {
const messages: any[] = [{ role: 'user', content: userMessage }];
while (true) {
const response = await client.chat.complete({
model: 'mistral-large-latest',
messages,
tools,
toolChoice: 'auto',
});
const choice = response.choices?.[0];
if (!choice) throw new Error('No response from model');
// If model wants to call tools
if (choice.message.toolCalls?.length) {
messages.push(choice.message); // Add assistant message with tool_calls
for (const call of choice.message.toolCalls) {
const fn = toolRegistry[call.function.name];
if (!fn) throw new Error(`Unknown tool: ${call.function.name}`);
const args = JSON.parse(call.function.arguments);
const result = await fn(args);
messages.push({
role: 'tool',
name: call.function.name,
content: JSON.stringify(result),
toolCallId: call.id,
});
}
continue; // Let model process tool results
}
// Model returned final text response
return choice.message.content ?? '';
}
}
async function ragChat(
query: string,
searcher: SemanticSearch,
topK = 3,
): Promise<{ answer: string; sources: string[] }> {
// 1. Retrieve relevant documents
const results = await searcher.search(query, topK);
const context = results.map((r, i) => `[${i + 1}] ${r.text}`).join('\n\n');
// 2. Generate answer grounded in context
const response = await client.chat.complete({
model: 'mistral-small-latest',
messages: [
{
role: 'system',
content: `Answer based ONLY on the provided context. Cite sources as [1], [2], etc. If the context doesn't contain the answer, say "I don't have enough information."`,
},
{
role: 'user',
content: `Context:\n${context}\n\nQuestion: ${query}`,
},
],
temperature: 0.1,
});
return {
answer: response.choices?.[0]?.message?.content ?? '',
sources: results.map(r => r.text),
};
}
mistral-embed (1024 dimensions)| Issue | Cause | Resolution |
|---|---|---|
| Empty embeddings | Invalid input text | Validate non-empty strings before API call |
| Tool not found | Unknown function name | Check tool registry matches tool definitions |
| Infinite tool loop | Model keeps calling tools | Add max iteration count (e.g., 10) |
| RAG hallucination | Insufficient context | Add more documents, increase topK |
400 Bad Request | Missing toolCallId | Each tool result must include the matching toolCallId |
For SDK patterns, see mistral-sdk-patterns. For agents, see mistral-webhooks-events.
npx claudepluginhub fleet-to-force/claude-code-plugins-plus --plugin mistral-pack5plugins reuse this skill
First indexed Jul 10, 2026
Execute Mistral AI embeddings, function calling, and RAG pipelines. Use when implementing semantic search, RAG applications, tool-augmented LLM interactions, or code embeddings. Trigger with phrases like "mistral embeddings", "mistral function calling", "mistral tools", "mistral RAG", "mistral semantic search".
Generates dense vector embeddings, performs semantic search, builds RAG pipelines, and reranks results via Together AI. Use for retrieval plumbing before the generation step.
Guides Google Gemini embeddings API (gemini-embedding-001) usage for RAG, semantic search, vector search, and Cloudflare Vectorize integration. Covers TypeScript SDK, batching, task types, and common errors.