cohere-core-workflow-b
Build tool-use agents and function calling with Cohere API v2. Use when implementing multi-step agents, function calling, or building autonomous tool-using workflows with Cohere. Trigger with phrases like "cohere tool use", "cohere agents", "cohere function calling", "cohere multi-step".
What this skill does
# Cohere Tool Use & Agents (Core Workflow B)
## Overview
Build multi-step tool-using agents with Cohere's Chat API v2. The model decides which tools to call, you execute them, and feed results back in a loop until the task is complete.
## Prerequisites
- Completed `cohere-install-auth` setup
- Understanding of `cohere-core-workflow-a` (RAG)
- Command R7B or newer model (required for tool use)
## Instructions
### Step 1: Define Tools
```typescript
import { CohereClientV2 } from 'cohere-ai';
const cohere = new CohereClientV2();
// Define tools the model can call
const tools = [
{
type: 'function' as const,
function: {
name: 'get_weather',
description: 'Get current weather for a city',
parameters: {
type: 'object' as const,
properties: {
city: { type: 'string', description: 'City name' },
unit: { type: 'string', enum: ['celsius', 'fahrenheit'], description: 'Temperature unit' },
},
required: ['city'],
},
},
},
{
type: 'function' as const,
function: {
name: 'search_database',
description: 'Search internal database for records',
parameters: {
type: 'object' as const,
properties: {
query: { type: 'string', description: 'Search query' },
limit: { type: 'number', description: 'Max results' },
},
required: ['query'],
},
},
},
];
```
### Step 2: Implement Tool Executors
```typescript
// Map tool names to actual implementations
const toolExecutors: Record<string, (args: any) => Promise<string>> = {
get_weather: async ({ city, unit = 'celsius' }) => {
// Replace with real weather API call
return JSON.stringify({
city,
temperature: unit === 'celsius' ? 22 : 72,
unit,
condition: 'partly cloudy',
});
},
search_database: async ({ query, limit = 5 }) => {
// Replace with real database query
return JSON.stringify({
results: [
{ id: 1, title: `Result for: ${query}`, relevance: 0.95 },
],
total: 1,
});
},
};
```
### Step 3: Single-Step Tool Use
```typescript
async function singleStepToolUse(userMessage: string) {
// 1. Send message with tools
const response = await cohere.chat({
model: 'command-a-03-2025',
messages: [{ role: 'user', content: userMessage }],
tools,
});
// 2. Check if model wants to call tools
if (response.finishReason === 'TOOL_CALL') {
const toolCalls = response.message?.toolCalls ?? [];
// 3. Execute each tool call
const toolResults = await Promise.all(
toolCalls.map(async (tc) => {
const executor = toolExecutors[tc.function.name];
const args = JSON.parse(tc.function.arguments);
const result = await executor(args);
return {
call: tc,
outputs: [{ result }],
};
})
);
// 4. Send tool results back for final answer
const finalResponse = await cohere.chat({
model: 'command-a-03-2025',
messages: [
{ role: 'user', content: userMessage },
{ role: 'assistant', toolCalls },
{ role: 'tool', toolCallId: toolCalls[0].id, content: toolResults[0].outputs[0].result },
],
tools,
});
return finalResponse.message?.content?.[0]?.text ?? '';
}
// No tool call — direct response
return response.message?.content?.[0]?.text ?? '';
}
```
### Step 4: Multi-Step Agent Loop
```typescript
async function agentLoop(userMessage: string, maxSteps = 5) {
const messages: any[] = [{ role: 'user', content: userMessage }];
for (let step = 0; step < maxSteps; step++) {
const response = await cohere.chat({
model: 'command-a-03-2025',
messages,
tools,
});
// If model is done (no tool calls), return the answer
if (response.finishReason !== 'TOOL_CALL') {
return response.message?.content?.[0]?.text ?? '';
}
// Model wants to call tools
const toolCalls = response.message?.toolCalls ?? [];
messages.push({ role: 'assistant', toolCalls });
// Execute tools (parallel if multiple)
for (const tc of toolCalls) {
const executor = toolExecutors[tc.function.name];
if (!executor) {
messages.push({ role: 'tool', toolCallId: tc.id, content: `Error: Unknown tool ${tc.function.name}` });
continue;
}
try {
const args = JSON.parse(tc.function.arguments);
const result = await executor(args);
messages.push({ role: 'tool', toolCallId: tc.id, content: result });
} catch (err) {
messages.push({ role: 'tool', toolCallId: tc.id, content: `Error: ${(err as Error).message}` });
}
}
console.log(`Step ${step + 1}: executed ${toolCalls.length} tool(s)`);
}
return 'Agent reached max steps without completing.';
}
// Usage
const answer = await agentLoop("What's the weather in Tokyo and search for 'Tokyo events'?");
console.log(answer);
```
### Step 5: Force Tool Use
```typescript
// Force the model to use at least one tool
const response = await cohere.chat({
model: 'command-a-03-2025',
messages: [{ role: 'user', content: 'Look up the weather in Paris' }],
tools,
toolChoice: 'REQUIRED', // REQUIRED = must use tool, NONE = cannot use tools
});
// toolChoice options:
// - omitted: model decides freely
// - 'REQUIRED': must call at least one tool
// - 'NONE': cannot call any tools (text-only response)
```
### Step 6: Streaming Tool Use
```typescript
async function streamWithTools(userMessage: string) {
const stream = await cohere.chatStream({
model: 'command-a-03-2025',
messages: [{ role: 'user', content: userMessage }],
tools,
});
const toolCalls: any[] = [];
for await (const event of stream) {
switch (event.type) {
case 'tool-call-start':
console.log(`Tool call: ${event.delta?.message?.toolCalls?.function?.name}`);
break;
case 'tool-call-delta':
// Streaming tool arguments
break;
case 'content-delta':
process.stdout.write(event.delta?.message?.content?.text ?? '');
break;
}
}
}
```
## Output
- Single-step tool calls with automatic execution
- Multi-step agent loop handling sequential reasoning
- Parallel tool execution for independent calls
- Streaming with tool-call events
## Error Handling
| Error | Cause | Solution |
|-------|-------|----------|
| `tool not found` | Mismatched tool name | Verify `tools` array matches executors |
| `invalid arguments` | Schema mismatch | Check tool parameter types |
| Infinite loop | Model keeps calling tools | Set `maxSteps` limit |
| `TOOL_CALL` with no toolCalls | Edge case | Check `response.message?.toolCalls` length |
## Resources
- [Tool Use Quickstart](https://docs.cohere.com/docs/tool-use-quickstart)
- [Multi-Step Tool Use](https://docs.cohere.com/docs/multi-step-tool-use)
- [Tool Use Streaming](https://docs.cohere.com/docs/tool-use-streaming)
- [Tool Use Citations](https://docs.cohere.com/docs/tool-use-citations)
## Next Steps
For common errors, see `cohere-common-errors`.
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