| name | ai-provider-cohere-sdk |
| description | Official Cohere TypeScript SDK patterns -- CohereClientV2, chat, embeddings, rerank, RAG with citations, tool use, streaming, and model selection |
Cohere SDK Patterns
Quick Guide: Use the cohere-ai npm package with CohereClientV2 for all new Cohere integrations. V2 API requires model on every call. Use chatStream for streaming with content-delta events. Embeddings require inputType matching your use case (search_document for indexing, search_query for querying). Rerank scores documents by relevance. RAG works by passing documents to chat() -- the model returns inline citations automatically. Tool use follows a 4-step loop: user message, model returns tool_calls, you execute and return results, model generates cited response.
<critical_requirements>
CRITICAL: Before Using This Skill
All code must follow project conventions in CLAUDE.md (kebab-case, named exports, import ordering, import type, named constants)
(You MUST use CohereClientV2 (not CohereClient) for all new code -- V2 is the current API with required model parameter)
(You MUST specify inputType on every embed call -- search_document for indexing, search_query for querying -- mismatched types produce garbage similarity scores)
(You MUST handle the tool use loop correctly: append the full assistant message (with tool_calls) to messages, then append tool role results with matching tool_call_id)
(You MUST check finish_reason in responses -- MAX_TOKENS means the output was truncated)
(You MUST never hardcode API keys -- pass via token constructor parameter sourced from environment variables)
</critical_requirements>
Auto-detection: Cohere, cohere-ai, CohereClientV2, CohereClient, command-a, command-r, command-r-plus, embed-v4, rerank-v4, chatStream, content-delta, inputType, search_document, search_query, embeddingTypes, topN, CO_API_KEY, COHERE_API_KEY
When to use:
- Building applications with Cohere Command models (chat, generation, summarization)
- Creating semantic search pipelines with Cohere embeddings
- Adding relevance scoring to search results with Cohere Rerank
- Implementing RAG with inline document grounding and automatic citations
- Building agentic workflows with Cohere tool use / function calling
- Streaming chat responses for real-time user interfaces
Key patterns covered:
- Client setup with
CohereClientV2 (token, timeout, platform configs)
- Chat and streaming (
chat, chatStream, event types)
- Embeddings with
inputType for search/classification/clustering
- Rerank for relevance scoring and search result ordering
- RAG with documents and automatic citation handling
- Tool use / function calling with multi-step loops
- Model selection (Command-A, Command-R, Embed v4, Rerank v4)
When NOT to use:
- Multi-provider applications needing OpenAI/Anthropic/Google switching -- use a unified provider SDK
- React-specific chat UI hooks -- use a framework-integrated AI SDK
- Simple text completion without Cohere-specific features (rerank, citations)
Examples Index
- Core: Setup, Chat & Error Handling -- CohereClientV2 init, basic chat, streaming, error handling
- Embeddings & Rerank -- Semantic search, input types, rerank scoring, RAG pipeline
- Tool Use & RAG -- Function calling, document grounding, citation handling
- Quick API Reference -- Model IDs, method signatures, event types, error classes
Philosophy
The Cohere TypeScript SDK (cohere-ai) provides direct access to Cohere's API surface -- chat, embeddings, rerank, and RAG with citations. The SDK is auto-generated from Cohere's API spec using Fern.
Core principles:
- V2 API is current --
CohereClientV2 provides the modern API. model is required on every call. V1 methods on CohereClient are legacy.
- Embeddings are typed -- The
inputType parameter (search_document, search_query, classification, clustering) is mandatory for v3+ models. Mismatching input types between indexing and querying silently degrades results.
- RAG is first-class -- Pass
documents directly to chat() and the model returns grounded answers with inline citations. No external retrieval framework required for the grounding step.
- Rerank is a standalone primitive -- Score and reorder search results without building a full RAG pipeline. Feed any list of documents and a query, get relevance scores back.
- Citations are automatic -- When documents are provided (via RAG or tool results), the model generates fine-grained citations with start/end positions and source references.
When to use the Cohere SDK directly:
- You want Cohere-specific features: rerank, citation grounding, multilingual embeddings
- You need semantic search with embed + rerank pipeline
- You want RAG with automatic inline citations
- You are building on Cohere's platform (or Bedrock/Azure/OCI with Cohere models)
When NOT to use:
- You need to switch between multiple LLM providers -- use a unified provider SDK
- You want React-specific chat UI hooks -- use a framework-integrated AI SDK
- You only need basic chat completion without Cohere differentiators
Core Patterns
Pattern 1: Client Setup
Initialize CohereClientV2. The token parameter is required (pass from environment).
import { CohereClientV2 } from "cohere-ai";
const client = new CohereClientV2({
token: process.env.CO_API_KEY,
});
export { client };
const TIMEOUT_MS = 30_000;
const client = new CohereClientV2({
token: process.env.CO_API_KEY,
timeout: TIMEOUT_MS,
});
Why good: Explicit token from env var, named timeout constant, named export
import { CohereClient } from "cohere-ai";
const client = new CohereClient({ token: "sk-abc123" });
Why bad: Hardcoded API key is a security breach risk, CohereClient is the legacy V1 client
See: examples/core.md for error handling, platform configs (Bedrock, Azure)
Pattern 2: Chat Completion
V2 chat uses messages array with system, user, assistant, and tool roles.
const response = await client.chat({
model: "command-a-03-2025",
messages: [
{ role: "system", content: "You are a helpful coding assistant." },
{ role: "user", content: "Explain TypeScript generics." },
],
});
console.log(response.message.content[0].text);
Why good: System message for instruction, model explicitly specified, correct V2 content access path
const response = await client.chat({
messages: [{ role: "user", content: "Hello" }],
});
console.log(response.text);
Why bad: V2 requires model, response shape is response.message.content[0].text not response.text
See: examples/core.md for multi-turn, token tracking, temperature control
Pattern 3: Streaming
Use chatStream with for await and check event type for content-delta.
const stream = await client.chatStream({
model: "command-a-03-2025",
messages: [{ role: "user", content: "Explain async/await." }],
});
for await (const event of stream) {
if (event.type === "content-delta") {
process.stdout.write(event.delta?.message?.content?.text ?? "");
}
}
Why good: Checks event type before accessing delta, handles nullable content safely
for await (const event of stream) {
console.log(event.delta?.message);
}
Why bad: Only content-delta events have text content -- other events (message-start, citation-start, tool-plan-delta) have different shapes
See: examples/core.md for full streaming with all event types
Pattern 4: Embeddings
inputType is required for v3+ models. Mismatching types between indexing and querying silently degrades results.
const EMBEDDING_MODEL = "embed-v4.0";
const docEmbeddings = await client.embed({
model: EMBEDDING_MODEL,
inputType: "search_document",
texts: ["TypeScript is a typed superset of JavaScript."],
embeddingTypes: ["float"],
});
const queryEmbedding = await client.embed({
model: EMBEDDING_MODEL,
inputType: "search_query",
texts: ["What is TypeScript?"],
embeddingTypes: ["float"],
});
Why good: Correct inputType pairing, embeddingTypes explicitly specified, named model constant
const docs = await client.embed({
model: "embed-v4.0",
inputType: "search_query",
texts: documents,
embeddingTypes: ["float"],
});
Why bad: Using search_query for document indexing silently produces worse similarity scores -- documents must use search_document
See: examples/embeddings-rerank.md for cosine similarity, dimension control, batch embedding
Pattern 5: Rerank
Score documents by relevance to a query. Returns ordered results with relevance scores.
const RERANK_MODEL = "rerank-v4.0-pro";
const TOP_N = 3;
const result = await client.rerank({
model: RERANK_MODEL,
query: "What is TypeScript?",
documents: [
"TypeScript is a typed superset of JavaScript.",
"Python is a general-purpose language.",
"TypeScript compiles to JavaScript.",
],
topN: TOP_N,
});
for (const item of result.results) {
console.log(`Doc ${item.index}: score ${item.relevanceScore}`);
}
Why good: Named constants, topN limits results, accesses index and relevanceScore
See: examples/embeddings-rerank.md for embed + rerank pipeline, rank fields
Pattern 6: RAG with Documents
Pass documents to chat() and the model returns grounded answers with inline citations.
const response = await client.chat({
model: "command-a-03-2025",
messages: [{ role: "user", content: "What is TypeScript?" }],
documents: [
{
data: {
text: "TypeScript is a typed superset of JavaScript.",
title: "TS Docs",
},
},
{
data: {
text: "TypeScript was developed by Microsoft.",
title: "History",
},
},
],
});
console.log(response.message.content[0].text);
if (response.message.citations) {
for (const citation of response.message.citations) {
console.log(`"${citation.text}" from doc ${citation.sources}`);
}
}
Why good: Documents passed inline with metadata, citations accessed from response, no external retrieval framework needed
See: examples/tools-rag.md for full RAG pipeline with embed + rerank + chat
Pattern 7: Tool Use / Function Calling
4-step loop: user message -> model returns tool_calls -> execute tools -> return results with tool_call_id.
const tools = [
{
type: "function" as const,
function: {
name: "get_weather",
description: "Get weather for a city",
parameters: {
type: "object",
properties: {
location: { type: "string", description: "City name" },
},
required: ["location"],
},
},
},
];
const response = await client.chat({
model: "command-a-03-2025",
messages: [{ role: "user", content: "Weather in Paris?" }],
tools,
});
if (response.message.toolCalls) {
}
Why good: Standard JSON Schema tool definition, checks for toolCalls before executing
See: examples/tools-rag.md for complete multi-step tool loop with tool result submission
Pattern 8: Error Handling
Catch CohereError for API errors, CohereTimeoutError for timeouts.
import { CohereError, CohereTimeoutError } from "cohere-ai";
try {
const response = await client.chat({
model: "command-a-03-2025",
messages: [{ role: "user", content: "Hello" }],
});
} catch (error) {
if (error instanceof CohereTimeoutError) {
console.error("Request timed out");
} else if (error instanceof CohereError) {
console.error(`API Error [${error.statusCode}]: ${error.message}`);
console.error("Body:", error.body);
} else {
throw error;
}
}
Why good: Specific error types with status codes, re-throws unexpected errors, timeout handled separately
See: examples/core.md for production error handling patterns
Performance Optimization
Model Selection for Cost/Speed
General purpose (best) -> command-a-03-2025 (256K context, strongest)
Reasoning tasks -> command-a-reasoning-08-2025 (multi-step reasoning)
Vision/document analysis -> command-a-vision-07-2025 (images, charts, OCR)
Translation -> command-a-translate-08-2025 (23 languages)
Lightweight / edge -> command-r7b-12-2024 (7B, fast, 128K context)
Legacy (still supported) -> command-r-08-2024, command-r-plus-08-2024
Embeddings (best) -> embed-v4.0 (multimodal, 128K context, flexible dims)
Embeddings (English) -> embed-english-v3.0 (1024 dims)
Embeddings (multilingual) -> embed-multilingual-v3.0 (23 languages)
Rerank (quality) -> rerank-v4.0-pro (32K context, multilingual)
Rerank (speed) -> rerank-v4.0-fast (32K context, latency-optimized)
Key Optimization Patterns
- Batch embeddings -- pass up to 96 texts per
embed() call instead of calling per-document
- Use
topN in rerank -- limit results to reduce response size and cost
- Use
outputDimension with embed-v4 -- reduce dimensions (256/512/1024) for faster similarity search at minimal quality loss
- Check
finish_reason === "MAX_TOKENS" -- detect truncated output
- Use
temperature: 0 for deterministic output (enables caching)
- Use embed-v4
int8/binary types for compressed storage with minimal quality loss
- Use
strictTools: true to force tool calls to follow the schema exactly (structured outputs)
- Use
thinking: { type: "enabled" } with reasoning models for complex multi-step tasks
- Use
toolChoice: "REQUIRED" when you always want the model to call a tool (command-r7b+ only)
<decision_framework>
Decision Framework
Which Client Class to Use
New project?
+-- YES -> CohereClientV2 (always)
+-- Existing V1 code?
+-- Working fine? -> Keep CohereClient but plan migration
+-- Need V2 features? -> Migrate to CohereClientV2
Which Model to Choose
What is your task?
+-- General chat/generation -> command-a-03-2025 (most capable)
+-- Reasoning / multi-step -> command-a-reasoning-08-2025
+-- Image/document analysis -> command-a-vision-07-2025
+-- Translation -> command-a-translate-08-2025
+-- Lightweight / low latency -> command-r7b-12-2024
+-- Embeddings -> embed-v4.0 (or embed-english-v3.0 for English-only)
+-- Rerank quality -> rerank-v4.0-pro
+-- Rerank speed -> rerank-v4.0-fast
Embed inputType Selection
What are you embedding?
+-- Documents for a search index -> "search_document"
+-- Search queries against an index -> "search_query"
+-- Text for a classifier -> "classification"
+-- Text for clustering -> "clustering"
+-- Images -> "image" (embed-v4+ only)
When to Use Rerank
Do you have search results to re-order?
+-- YES -> Use rerank as a second-stage ranker
| +-- Quality matters most? -> rerank-v4.0-pro
| +-- Latency matters most? -> rerank-v4.0-fast
+-- NO -> Not applicable (rerank needs existing results to score)
RAG Approach
Do you need grounded answers with citations?
+-- YES -> Pass documents to chat()
| +-- Have pre-retrieved documents? -> Pass directly via documents param
| +-- Need retrieval first? -> Use embed + vector search + rerank pipeline, then pass top results to chat()
+-- NO -> Use plain chat without documents
</decision_framework>
<red_flags>
RED FLAGS
High Priority Issues:
- Using
CohereClient instead of CohereClientV2 for new code (V1 is legacy)
- Missing
model parameter in V2 API calls (required on every call, unlike V1)
- Using wrong
inputType for embeddings (search_query for documents or vice versa -- silently degrades results)
- Hardcoding API keys instead of using environment variables
- Not appending the full assistant message (with
tool_calls) before appending tool results in the tool use loop
Medium Priority Issues:
- Not specifying
embeddingTypes (defaults may not match your storage format)
- Ignoring
finish_reason: "MAX_TOKENS" (output was silently truncated)
- Not handling
CohereTimeoutError separately from CohereError
- Processing all stream events without checking
type (only content-delta has text)
- Using V1 parameter names (
preamble, connectors, conversation_id) with V2 client
Common Mistakes:
- Accessing
response.text instead of response.message.content[0].text (V2 response shape changed)
- Forgetting that
embeddingTypes is required in V2 Embed API
- Not matching
tool_call_id when submitting tool results (model cannot correlate results)
- Using
documents with string values instead of { data: { text: "..." } } objects in V2
- Expecting
response.message.citations to exist when no documents were provided (citations only appear with grounded responses)
Gotchas & Edge Cases:
- The SDK is in beta -- pin your
cohere-ai version in package.json to avoid breaking changes
- V2 API is NOT yet supported for cloud deployments (Bedrock, SageMaker, Azure, OCI) -- use V1 client for cloud platforms
inputType is camelCase in TypeScript SDK (inputType) but snake_case in the REST API (input_type)
- Embed API accepts max 96 texts per call -- batch larger sets yourself
embed-v4.0 supports outputDimension for flexible sizing (256, 512, 1024, 1536) but v3 models have fixed dimensions
- Rerank
relevanceScore is normalized 0-1 but not calibrated across queries -- compare scores within a single query only
- Stream events include
tool-plan-delta before tool-call-start -- the model's reasoning about which tool to call
- V2 uses
system role for instructions (V1 used preamble parameter)
- Citation
sources in tool use responses reference tool_call_id values, not document indices
- The
clientName constructor parameter is for logging/analytics, not authentication
responseFormat: { type: "json_object" } is NOT supported in RAG mode (with documents, tools, or toolResults)
toolChoice is only supported on command-r7b-12-2024 and newer models
- First requests with
strictTools: true and a new tool set take longer (schema compilation)
thinking (reasoning mode) is only available on reasoning-capable models like command-a-reasoning-08-2025
</red_flags>
<critical_reminders>
CRITICAL REMINDERS
All code must follow project conventions in CLAUDE.md (kebab-case, named exports, import ordering, import type, named constants)
(You MUST use CohereClientV2 (not CohereClient) for all new code -- V2 is the current API with required model parameter)
(You MUST specify inputType on every embed call -- search_document for indexing, search_query for querying -- mismatched types produce garbage similarity scores)
(You MUST handle the tool use loop correctly: append the full assistant message (with tool_calls) to messages, then append tool role results with matching tool_call_id)
(You MUST check finish_reason in responses -- MAX_TOKENS means the output was truncated)
(You MUST never hardcode API keys -- pass via token constructor parameter sourced from environment variables)
Failure to follow these rules will produce broken embeddings, missing citations, or insecure AI integrations.
</critical_reminders>