| name | together-chat-completions |
| description | Real-time and streaming text generation via Together AI's OpenAI-compatible chat/completions API, including multi-turn conversations, tool and function calling, structured JSON outputs, and reasoning models. Reach for it whenever the user wants to build or debug text generation on Together AI, unless they specifically need batch jobs, embeddings, fine-tuning, dedicated endpoints, dedicated containers, or GPU clusters. |
Together Chat Completions
Overview
Use Together AI's serverless chat/completions API for interactive inference workloads:
- basic text generation
- streaming responses
- multi-turn chat state
- tool and function calling
- structured outputs
- reasoning-capable models
Treat this skill as the default entry point for Together AI text generation unless the task is
clearly offline batch processing, vector retrieval, model training, or infrastructure management.
When This Skill Wins
- Build a chatbot, assistant, or text-generation endpoint on Together AI
- Add streaming output to a real-time user experience
- Implement tool calling or function-calling loops
- Constrain model output to JSON or a regex-defined shape
- Choose between standard chat models and reasoning models
- Debug request parameters, model behavior, or response shapes
Hand Off To Another Skill
- Use
together-batch-inference for large offline runs, backfills, or lower-cost asynchronous jobs
- Use
together-embeddings for vector search, semantic retrieval, or reranking
- Use
together-fine-tuning when the user wants to train or adapt a model
- Use
together-dedicated-endpoints when the user needs always-on single-tenant hosting
- Use
together-dedicated-containers or together-gpu-clusters for custom infrastructure
Quick Routing
- Basic chat, streaming, or multi-turn state
- OpenAI SDK migration, rate limits, or debug headers
- Parallel async requests
- Tool calling or function calling
- Structured outputs
- Reasoning models or thinking-mode toggles
- Combining tools + structured output, or tools + streaming
- Model selection, context length, or pricing-aware choices
Workflow
- Confirm that the workload is interactive serverless inference rather than batch, retrieval, or training.
- Pick the smallest model that satisfies latency, quality, and context requirements.
- Decide whether the job needs plain text, tools, structured output, or reasoning.
- Start from the matching script instead of re-deriving request shapes from scratch.
- Pull deeper details from the relevant reference file only when needed.
High-Signal Rules
- Python scripts require the Together v2 SDK (
together>=2.0.0). If the user is on an older version, they must upgrade first: uv pip install --upgrade "together>=2.0.0".
- Use
client.chat.completions.create() for Python and client.chat.completions.create() for TypeScript.
- Preserve full
messages history for multi-turn conversations; do not rebuild context from final text only.
- For tools, implement the full loop: model tool call -> execute tool -> append tool result -> second model call.
- Prefer
json_schema over looser JSON modes when the user needs stable machine-readable output.
- Use reasoning models only when the task benefits from deeper deliberation; otherwise prefer cheaper standard models.
- To combine tool calling with structured output, use a two-phase approach: Phase 1 sends
tools (no response_format), Phase 2 sends response_format (no tools) after tool results are appended.
- Streaming works with
response_format; accumulate chunks and parse the final concatenated string as JSON.
- If the user needs many independent requests, combine this skill with
async_parallel.py or hand off to batch inference.
Resource Map
Scripts
Official Docs