--- sidebar_position: 5 title: "Environments, Benchmarks & Data Generation" description: "Building RL training environments, running evaluation benchmarks, and generating SFT data with the Hermes-Agent Atropos integration" --- # Environments, Benchmarks & Data Generation Hermes Agent includes a full environment framework that connects its tool-calling capabilities to the [Atropos](https://github.com/NousResearch/atropos) RL training framework. This enables three workflows: 1. **RL Training** — Train language models on multi-turn agentic tasks with GRPO 2. **Benchmarks** — Evaluate models on standardised agentic benchmarks 3. **Data Generation** — Generate SFT training data from agent rollouts All three share the same core: an **environment** class that defines tasks, runs an agent loop, and scores the output. :::info Repo environments vs RL training tools The Python environment framework documented here lives under the repo's `environments/` directory and is the implementation-level API for Hermes/Atropos integration. This is separate from the user-facing `rl_*` tools, which operate as an orchestration surface for remote RL training workflows. ::: :::tip Quick Links - **Want to run benchmarks?** Jump to [Available Benchmarks](#available-benchmarks) - **Want to train with RL?** See [RL Training Tools](/user-guide/features/rl-training) for the agent-driven interface, or [Running Environments](#running-environments) for manual execution - **Want to create a new environment?** See [Creating Environments](#creating-environments) ::: ## Architecture The environment system is built on a three-layer inheritance chain: ```mermaid classDiagram class BaseEnv { Server management Worker scheduling Wandb logging CLI: serve / process / evaluate } class HermesAgentBaseEnv { Terminal backend configuration Tool resolution Agent loop engine ToolContext access } class TerminalTestEnv { Stack testing } class HermesSweEnv { SWE training } class TerminalBench2EvalEnv { Benchmark evaluation } class TBLiteEvalEnv { Fast benchmark } class YCBenchEvalEnv { Long-horizon benchmark } BaseEnv <|-- HermesAgentBaseEnv HermesAgentBaseEnv <|-- TerminalTestEnv HermesAgentBaseEnv <|-- HermesSweEnv HermesAgentBaseEnv <|-- TerminalBench2EvalEnv TerminalBench2EvalEnv <|-- TBLiteEvalEnv TerminalBench2EvalEnv <|-- YCBenchEvalEnv ``` ### BaseEnv (Atropos) The foundation from `atroposlib`. Provides: - **Server management** — connects to OpenAI-compatible APIs (VLLM, SGLang, OpenRouter) - **Worker scheduling** — parallel rollout coordination - **Wandb integration** — metrics logging and rollout visualisation - **CLI interface** — three subcommands: `serve`, `process`, `evaluate` - **Eval logging** — `evaluate_log()` saves results to JSON + JSONL ### HermesAgentBaseEnv The hermes-agent layer (`environments/hermes_base_env.py`). Adds: - **Terminal backend configuration** — sets `TERMINAL_ENV` for sandboxed execution (local, Docker, Modal, Daytona, SSH, Singularity) - **Tool resolution** — `_resolve_tools_for_group()` calls hermes-agent's `get_tool_definitions()` to get the right tool schemas based on enabled/disabled toolsets - **Agent loop integration** — `collect_trajectory()` runs `HermesAgentLoop` and scores the result - **Two-phase operation** — Phase 1 (OpenAI server) for eval/SFT, Phase 2 (VLLM ManagedServer) for full RL with logprobs - **Async safety patches** — monkey-patches Modal backend to work inside Atropos's event loop ### Concrete Environments Your environment inherits from `HermesAgentBaseEnv` and implements five methods: | Method | Purpose | |--------|---------| | `setup()` | Load dataset, initialise state | | `get_next_item()` | Return the next item for rollout | | `format_prompt(item)` | Convert an item into the user message | | `compute_reward(item, result, ctx)` | Score the rollout (0.0–1.0) | | `evaluate()` | Periodic evaluation logic | ## Core Components ### Agent Loop `HermesAgentLoop` (`environments/agent_loop.py`) is the reusable multi-turn agent engine. It runs the same tool-calling pattern as hermes-agent's main loop: 1. Send messages + tool schemas to the API via `server.chat_completion()` 2. If the response contains `tool_calls`, dispatch each via `handle_function_call()` 3. Append tool results to the conversation, go back to step 1 4. If no `tool_calls`, the agent is done Tool calls execute in a thread pool (`ThreadPoolExecutor(128)`) so that async backends (Modal, Docker) don't deadlock inside Atropos's event loop. Returns an `AgentResult`: ```python @dataclass class AgentResult: messages: List[Dict[str, Any]] # Full conversation history turns_used: int # Number of LLM calls made finished_naturally: bool # True if model stopped on its own reasoning_per_turn: List[Optional[str]] # Extracted reasoning content tool_errors: List[ToolError] # Errors encountered during tool dispatch managed_state: Optional[Dict] # VLLM ManagedServer state (Phase 2) ``` ### Tool Context `ToolContext` (`environments/tool_context.py`) gives reward functions direct access to the **same sandbox** the model used during its rollout. The `task_id` scoping means all state (files, processes, browser tabs) is preserved. ```python async def compute_reward(self, item, result, ctx: ToolContext): # Run tests in the model's terminal sandbox test = ctx.terminal("pytest -v") if test["exit_code"] == 0: return 1.0 # Check if a file was created content = ctx.read_file("/workspace/solution.py") if content.get("content"): return 0.5 # Download files for local verification ctx.download_file("/remote/output.bin", "/local/output.bin") return 0.0 ``` Available methods: | Category | Methods | |----------|---------| | **Terminal** | `terminal(command, timeout)` | | **Files** | `read_file(path)`, `write_file(path, content)`, `search(query, path)` | | **Transfers** | `upload_file()`, `upload_dir()`, `download_file()`, `download_dir()` | | **Web** | `web_search(query)`, `web_extract(urls)` | | **Browser** | `browser_navigate(url)`, `browser_snapshot()` | | **Generic** | `call_tool(name, args)` — escape hatch for any hermes-agent tool | | **Cleanup** | `cleanup()` — release all resources | ### Tool Call Parsers For **Phase 2** (VLLM ManagedServer), the server returns raw text without structured tool calls. Client-side parsers in `environments/tool_call_parsers/` extract `tool_calls` from raw output: ```python from environments.tool_call_parsers import get_parser parser = get_parser("hermes") # or "mistral", "llama3_json", "qwen", "deepseek_v3", etc. content, tool_calls = parser.parse(raw_model_output) ``` Available parsers: `hermes`, `mistral`, `llama3_json`, `qwen`, `qwen3_coder`, `deepseek_v3`, `deepseek_v3_1`, `kimi_k2`, `longcat`, `glm45`, `glm47`. In Phase 1 (OpenAI server type), parsers are not needed — the server handles tool call parsing natively. ## Available Benchmarks ### TerminalBench2 **89 challenging terminal tasks** with per-task Docker sandbox environments. | | | |---|---| | **What it tests** | Single-task coding/sysadmin ability | | **Scoring** | Binary pass/fail (test suite verification) | | **Sandbox** | Modal cloud sandboxes (per-task Docker images) | | **Tools** | `terminal` + `file` | | **Tasks** | 89 tasks across multiple categories | | **Cost** | ~$50–200 for full eval (parallel execution) | | **Time** | ~2–4 hours | ```bash python environments/benchmarks/terminalbench_2/terminalbench2_env.py evaluate \ --config environments/benchmarks/terminalbench_2/default.yaml # Run specific tasks python environments/benchmarks/terminalbench_2/terminalbench2_env.py evaluate \ --config environments/benchmarks/terminalbench_2/default.yaml \ --env.task_filter fix-git,git-multibranch ``` Dataset: [NousResearch/terminal-bench-2](https://huggingface.co/datasets/NousResearch/terminal-bench-2) on HuggingFace. ### TBLite (OpenThoughts Terminal Bench Lite) **100 difficulty-calibrated tasks** — a faster proxy for TerminalBench2. | | | |---|---| | **What it tests** | Same as TB2 (coding/sysadmin), calibrated difficulty tiers | | **Scoring** | Binary pass/fail | | **Sandbox** | Modal cloud sandboxes | | **Tools** | `terminal` + `file` | | **Tasks** | 100 tasks: Easy (40), Medium (26), Hard (26), Extreme (8) | | **Correlation** | r=0.911 with full TB2 | | **Speed** | 2.6–8× faster than TB2 | ```bash python environments/benchmarks/tblite/tblite_env.py evaluate \ --config environments/benchmarks/tblite/default.yaml ``` TBLite is a thin subclass of TerminalBench2 — only the dataset and timeouts differ. Created by the OpenThoughts Agent team (Snorkel AI + Bespoke Labs). Dataset: [NousResearch/openthoughts-tblite](https://huggingface.co/datasets/NousResearch/openthoughts-tblite). ### YC-Bench **Long-horizon strategic benchmark** — the agent plays CEO of an AI startup. | | | |---|---| | **What it tests** | Multi-turn strategic coherence over hundreds of turns | | **Scoring** | Composite: `0.5 × survival + 0.5 × normalised_funds` | | **Sandbox** | Local terminal (no Modal needed) | | **Tools** | `terminal` only | | **Runs** | 9 default (3 presets × 3 seeds), sequential | | **Cost** | ~$50–200 for full eval | | **Time** | ~3–6 hours | ```bash # Install yc-bench (optional dependency) pip install "hermes-agent[yc-bench]" # Run evaluation bash environments/benchmarks/yc_bench/run_eval.sh # Or directly python environments/benchmarks/yc_bench/yc_bench_env.py evaluate \ --config environments/benchmarks/yc_bench/default.yaml # Quick single-preset test python environments/benchmarks/yc_bench/yc_bench_env.py evaluate \ --config environments/benchmarks/yc_bench/default.yaml \ --env.presets '["fast_test"]' --env.seeds '[1]' ``` YC-Bench uses [collinear-ai/yc-bench](https://github.com/collinear-ai/yc-bench) — a deterministic simulation with 4 skill domains (research, inference, data_environment, training), prestige system, employee management, and financial pressure. Unlike TB2's per-task binary scoring, YC-Bench measures whether an agent can maintain coherent strategy over hundreds of compounding decisions. ## Training Environments ### TerminalTestEnv A minimal self-contained environment with inline tasks (no external dataset). Used for **validating the full stack** end-to-end. Each task asks the model to create a file at a known path; the verifier checks the content. ```bash # Process mode (saves rollouts to JSONL, no training server needed) python environments/terminal_test_env/terminal_test_env.py process \ --env.data_path_to_save_groups terminal_test_output.jsonl # Serve mode (connects to Atropos API for RL training) python environments/terminal_test_env/terminal_test_env.py serve ``` ### HermesSweEnv SWE-bench style training environment. The model gets a coding task, uses terminal + file + web tools to solve it, and the reward function runs tests in the same Modal sandbox. ```bash python environments/hermes_swe_env/hermes_swe_env.py serve \ --openai.model_name YourModel \ --env.dataset_name bigcode/humanevalpack \ --env.terminal_backend modal ``` ## Running Environments Every environment is a standalone Python script with three CLI subcommands: ### `evaluate` — Run a benchmark For eval-only environments (benchmarks). Runs all items, computes metrics, logs to wandb. ```bash python environments/benchmarks/tblite/tblite_env.py evaluate \ --config environments/benchmarks/tblite/default.yaml \ --openai.model_name anthropic/claude-sonnet-4.6 ``` No training server or `run-api` needed. The environment handles everything. ### `process` — Generate SFT data Runs rollouts and saves scored trajectories to JSONL. Useful for generating training data without a full RL loop. ```bash python environments/terminal_test_env/terminal_test_env.py process \ --env.data_path_to_save_groups output.jsonl \ --openai.model_name anthropic/claude-sonnet-4.6 ``` Output format: each line is a scored trajectory with the full conversation history, reward, and metadata. ### `serve` — Connect to Atropos for RL training Connects the environment to a running Atropos API server (`run-api`). Used during live RL training. ```bash # Terminal 1: Start the Atropos API run-api # Terminal 2: Start the environment python environments/hermes_swe_env/hermes_swe_env.py serve \ --openai.model_name YourModel ``` The environment receives items from Atropos, runs agent rollouts, computes rewards, and sends scored trajectories back for training. ## Two-Phase Operation ### Phase 1: OpenAI Server (Eval / SFT) Uses `server.chat_completion()` with `tools=` parameter. The server (VLLM, SGLang, OpenRouter, OpenAI) handles tool call parsing natively. Returns `ChatCompletion` objects with structured `tool_calls`. - **Use for**: evaluation, SFT data generation, benchmarks, testing - **Placeholder tokens** are created for the Atropos pipeline (since real token IDs aren't available from the OpenAI API) ### Phase 2: VLLM ManagedServer (Full RL) Uses ManagedServer for exact token IDs + logprobs via `/generate`. A client-side [tool call parser](#tool-call-parsers) reconstructs structured `tool_calls` from raw output. - **Use for**: full RL training with GRPO/PPO - **Real tokens**, masks, and logprobs flow through the pipeline - Set `tool_call_parser` in config to match your model's format (e.g., `"hermes"`, `"qwen"`, `"mistral"`) ## Creating Environments ### Training Environment ```python from environments.hermes_base_env import HermesAgentBaseEnv, HermesAgentEnvConfig from atroposlib.envs.server_handling.server_manager import APIServerConfig class MyEnvConfig(HermesAgentEnvConfig): my_custom_field: str = "default_value" class MyEnv(HermesAgentBaseEnv): name = "my-env" env_config_cls = MyEnvConfig @classmethod def config_init(cls): env_config = MyEnvConfig( enabled_toolsets=["terminal", "file"], terminal_backend="modal", max_agent_turns=30, ) server_configs = [APIServerConfig( base_url="https://openrouter.ai/api/v1", model_name="anthropic/claude-sonnet-4.6", server_type="openai", )] return env_config, server_configs async def setup(self): from datasets import load_dataset self.dataset = list(load_dataset("my-dataset", split="train")) self.iter = 0 async def get_next_item(self): item = self.dataset[self.iter % len(self.dataset)] self.iter += 1 return item def format_prompt(self, item): return item["instruction"] async def compute_reward(self, item, result, ctx): # ctx gives full tool access to the rollout's sandbox test = ctx.terminal("pytest -v") return 1.0 if test["exit_code"] == 0 else 0.0 async def evaluate(self, *args, **kwargs): # Periodic evaluation during training pass if __name__ == "__main__": MyEnv.cli() ``` ### Eval-Only Benchmark For benchmarks, follow the pattern used by TerminalBench2, TBLite, and YC-Bench: 1. **Create under** `environments/benchmarks/your-benchmark/` 2. **Set eval-only config**: `eval_handling=STOP_TRAIN`, `steps_per_eval=1`, `total_steps=1` 3. **Stub training methods**: `collect_trajectories()` returns `(None, [])`, `score()` returns `None` 4. **Implement** `rollout_and_score_eval(eval_item)` — the per-item agent loop + scoring 5. **Implement** `evaluate()` — orchestrates all runs, computes aggregate metrics 6. **Add streaming JSONL** for crash-safe result persistence 7. **Add cleanup**: `KeyboardInterrupt` handling, `cleanup_all_environments()`, `_tool_executor.shutdown()` 8. **Run with** `evaluate` subcommand See `environments/benchmarks/yc_bench/yc_bench_env.py` for a clean, well-documented reference implementation. ## Configuration Reference ### HermesAgentEnvConfig Fields | Field | Type | Default | Description | |-------|------|---------|-------------| | `enabled_toolsets` | `List[str]` | `None` (all) | Which hermes toolsets to enable | | `disabled_toolsets` | `List[str]` | `None` | Toolsets to filter out | | `distribution` | `str` | `None` | Probabilistic toolset distribution name | | `max_agent_turns` | `int` | `30` | Max LLM calls per rollout | | `agent_temperature` | `float` | `1.0` | Sampling temperature | | `system_prompt` | `str` | `None` | System message for the agent | | `terminal_backend` | `str` | `"local"` | `local`, `docker`, `modal`, `daytona`, `ssh`, `singularity` | | `terminal_timeout` | `int` | `120` | Seconds per terminal command | | `terminal_lifetime` | `int` | `3600` | Max sandbox lifetime | | `dataset_name` | `str` | `None` | HuggingFace dataset identifier | | `tool_pool_size` | `int` | `128` | Thread pool size for tool execution | | `tool_call_parser` | `str` | `"hermes"` | Parser for Phase 2 raw output | | `extra_body` | `Dict` | `None` | Extra params for OpenAI API (e.g., OpenRouter provider prefs) | | `eval_handling` | `Enum` | `STOP_TRAIN` | `STOP_TRAIN`, `LIMIT_TRAIN`, `NONE` | ### YAML Configuration Environments can be configured via YAML files passed with `--config`: ```yaml env: enabled_toolsets: ["terminal", "file"] max_agent_turns: 60 max_token_length: 32000 agent_temperature: 0.8 terminal_backend: "modal" terminal_timeout: 300 dataset_name: "NousResearch/terminal-bench-2" tokenizer_name: "NousResearch/Hermes-3-Llama-3.1-8B" use_wandb: true wandb_name: "my-benchmark" openai: base_url: "https://openrouter.ai/api/v1" model_name: "anthropic/claude-sonnet-4.6" server_type: "openai" health_check: false ``` YAML values override `config_init()` defaults. CLI arguments override YAML values: ```bash python my_env.py evaluate \ --config my_config.yaml \ --openai.model_name anthropic/claude-opus-4.6 # overrides YAML ``` ## Prerequisites ### For all environments - Python >= 3.11 - `atroposlib`: `pip install git+https://github.com/NousResearch/atropos.git` - An LLM API key (OpenRouter, OpenAI, or self-hosted VLLM/SGLang) ### For Modal-sandboxed benchmarks (TB2, TBLite) - [Modal](https://modal.com) account and CLI: `pip install "hermes-agent[modal]"` - `MODAL_TOKEN_ID` and `MODAL_TOKEN_SECRET` environment variables ### For YC-Bench - `pip install "hermes-agent[yc-bench]"` (installs the yc-bench CLI + SQLAlchemy) - No Modal needed — runs with local terminal backend ### For RL training - `TINKER_API_KEY` — API key for the [Tinker](https://tinker.computer) training service - `WANDB_API_KEY` — for Weights & Biases metrics tracking - The `tinker-atropos` submodule (at `tinker-atropos/` in the repo) See [RL Training](/user-guide/features/rl-training) for the agent-driven RL workflow. ## Directory Structure ``` environments/ ├── hermes_base_env.py # Abstract base class (HermesAgentBaseEnv) ├── agent_loop.py # Multi-turn agent engine (HermesAgentLoop) ├── tool_context.py # Per-rollout tool access for reward functions ├── patches.py # Async-safety patches for Modal backend │ ├── tool_call_parsers/ # Phase 2 client-side parsers │ ├── hermes_parser.py # Hermes/ChatML format │ ├── mistral_parser.py # Mistral [TOOL_CALLS] format │ ├── llama_parser.py # Llama 3 JSON tool calling │ ├── qwen_parser.py # Qwen format │ ├── deepseek_v3_parser.py # DeepSeek V3 format │ └── ... # + kimi_k2, longcat, glm45/47, etc. │ ├── terminal_test_env/ # Stack validation (inline tasks) ├── hermes_swe_env/ # SWE-bench training environment │ └── benchmarks/ # Evaluation benchmarks ├── terminalbench_2/ # 89 terminal tasks, Modal sandboxes ├── tblite/ # 100 calibrated tasks (fast TB2 proxy) └── yc_bench/ # Long-horizon strategic benchmark ```