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verl-rl-training

@orchestra-research · 收录于 1 周前 · 上游提交 1 个月前

Provides guidance for training LLMs with reinforcement learning using verl (Volcano Engine RL). Use when implementing RLHF, GRPO, PPO, or other RL algorithms for LLM post-training at scale with flexible infrastructure backends.

适合你,如果正在用RLHF/GRPO/PPO等算法微调大模型。

/ 下载安装
verl-rl-training.skill双击,或拖进 Claude 桌面版 / Cowork,即完成安装↓ .skill↓ .zip
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
Claude Code~/.claude/skills/(项目级 .claude/skills/)
Codex CLI~/.codex/skills/
Cursor自动读取上面两处目录
其他工具见其文档的「skills」目录;两个下载是同一份文件,只是名字不同
/ 通过 npx 安装 校验哈希
npx oh-my-skill add orchestra-research/ai-research-skills/verl-rl-training
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- orchestra-research/ai-research-skills/verl-rl-training
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify orchestra-research/ai-research-skills/verl-rl-training
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
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怎么用

商店整理自技能原文 · 版本 773a529 · 表述以原文为准
它做什么

安装后,Claude 可以指导你使用 verl 库对大型语言模型进行强化学习训练,支持 GRPO、PPO 等算法,并处理从数据准备到训练监控的完整流程。

什么时候触发

当你需要实现 RLHF、GRPO、PPO 等强化学习算法对 LLM 进行后训练,且需要灵活的基础设施后端时触发。

装好后可以这样说
Claude 会提供配置和启动命令。
技能原文 SKILL.md作者撰写 · MIT · 773a529

verl: Volcano Engine Reinforcement Learning for LLMs

verl is a flexible, efficient, and production-ready RL training library for large language models from ByteDance's Seed team. It implements the HybridFlow framework (EuroSys 2025) and powers models like Doubao-1.5-pro achieving O1-level performance on math benchmarks.

When to Use verl

Choose verl when you need:

  • Production-ready RL training at scale (tested up to 671B parameters)
  • Flexibility to swap backends (FSDP ↔ Megatron-LM ↔ vLLM ↔ SGLang)
  • Support for multiple RL algorithms (PPO, GRPO, RLOO, REINFORCE++, DAPO)
  • Multi-turn rollout with tool calling for agentic workflows
  • Vision-language model RL training

Consider alternatives when:

  • You need Megatron-native training → use slime or miles
  • You want PyTorch-native abstractions with Monarch → use torchforge
  • You only need simple SFT/DPO → use TRL or Axolotl
Key Features
  • Training backends: FSDP, FSDP2, Megatron-LM
  • Rollout engines: vLLM, SGLang, HuggingFace Transformers
  • Algorithms: PPO, GRPO, DAPO, RLOO, ReMax, REINFORCE++, SPIN, SPPO
  • Models: Qwen-3, Llama-3.1, DeepSeek, Gemma-2 (0.5B to 671B)
  • Advanced: LoRA RL, sequence parallelism, expert parallelism, multi-turn tools
Installation
# Option 1: pip install
pip install verl[vllm]  # or verl[sglang] for SGLang backend

# Option 2: Docker (recommended for production)
docker pull verlai/verl:vllm011.latest

# Option 3: From source
git clone https://github.com/volcengine/verl.git
cd verl && pip install -e .[vllm,math]
Quick Start: GRPO Training
python3 -m verl.trainer.main_ppo \
    algorithm.adv_estimator=grpo \
    data.train_files=~/data/gsm8k/train.parquet \
    actor_rollout_ref.model.path=Qwen/Qwen2.5-7B \
    actor_rollout_ref.rollout.n=8 \
    actor_rollout_ref.actor.use_kl_loss=True \
    trainer.n_gpus_per_node=8
Core Architecture

verl uses a HybridFlow programming model separating control flow from computation:

┌─────────────────────────────────────────────────────────┐
│ Single-Process Controller (Ray)                         │
│ - Orchestrates: rollout → reward → train → sync        │
└─────────────────────┬───────────────────────────────────┘
                      │
┌─────────────────────▼───────────────────────────────────┐
│ Multi-Process Workers                                   │
│ ├── ActorRolloutRefWorker (policy + generation)        │
│ ├── CriticWorker (value estimation, PPO only)          │
│ └── RewardManager (model-based or rule-based rewards)  │
└─────────────────────────────────────────────────────────┘

Workflow 1: Math Reasoning with GRPO

Use this workflow for training reasoning models on math tasks like GSM8K or MATH.

Prerequisites Checklist
  • [ ] GPU cluster with 8+ GPUs (H100 recommended)
  • [ ] Dataset in parquet format with prompt and reward_model columns
  • [ ] Base model from HuggingFace Hub
Step 1: Prepare Dataset
import pandas as pd

data = [
    {
        "prompt": [{"role": "user", "content": "What is 15 + 27?"}],
        "reward_model": {"ground_truth": "42"}
    },
    # ... more examples
]
df = pd.DataFrame(data)
df.to_parquet("train.parquet")
Step 2: Define Reward Function
# reward_function.py
import re

def compute_reward(responses, ground_truths):
    rewards = []
    for response, gt in zip(responses, ground_truths):
        # Extract answer from response
        match = re.search(r'\\boxed{([^}]+)}', response)
        if match and match.group(1).strip() == gt.strip():
            rewards.append(1.0)
        else:
            rewards.append(0.0)
    return rewards
Step 3: Create Training Config
# config/grpo_math.yaml
algorithm:
  adv_estimator: grpo
  gamma: 1.0
  lam: 1.0

data:
  train_files: /path/to/train.parquet
  val_files: /path/to/val.parquet
  train_batch_size: 256
  max_prompt_length: 512
  max_response_length: 2048

actor_rollout_ref:
  model:
    path: Qwen/Qwen2.5-7B-Instruct
  actor:
    use_kl_loss: true
    kl_loss_coef: 0.001
    ppo_mini_batch_size: 64
  rollout:
    name: vllm
    n: 8  # samples per prompt
    temperature: 0.7
    top_p: 0.95

trainer:
  total_epochs: 3
  n_gpus_per_node: 8
  save_freq: 100
Step 4: Launch Training
python3 -m verl.trainer.main_ppo \
    --config-path config \
    --config-name grpo_math \
    trainer.experiment_name=grpo_math_qwen7b
Step 5: Monitor and Validate
  • [ ] Check WandB/TensorBoard for loss curves
  • [ ] Verify reward is increasing over steps
  • [ ] Run evaluation on held-out test set

Workflow 2: PPO with Critic Model

Use this workflow when you need value-based advantage estimation (GAE).

Key Differences from GRPO
  • Requires separate critic model
  • Uses Generalized Advantage Estimation (GAE)
  • Better for tasks with dense rewards
Configuration
algorithm:
  adv_estimator: gae  # Use GAE instead of GRPO
  gamma: 0.99
  lam: 0.95

critic:
  model:
    path: Qwen/Qwen2.5-7B-Instruct  # Can be same or different from actor
  ppo_mini_batch_size: 64

actor_rollout_ref:
  actor:
    use_kl_loss: true
    kl_loss_coef: 0.02
    clip_ratio: 0.2  # PPO clipping
Launch with Critic
python3 -m verl.trainer.main_ppo \
    algorithm.adv_estimator=gae \
    critic.model.path=Qwen/Qwen2.5-7B-Instruct \
    trainer.n_gpus_per_node=8

Workflow 3: Large-Scale Training with Megatron

Use this workflow for models >70B parameters or when you need expert parallelism.

Prerequisites
  • [ ] Install Megatron-LM bridge: pip install mbridge
  • [ ] Convert model to Megatron format
  • [ ] Multi-node cluster with NVLink/InfiniBand
Configuration for 70B+ Models
actor_rollout_ref:
  model:
    path: /path/to/megatron/checkpoint
    backend: megatron
  actor:
    strategy: megatron
    tensor_model_parallel_size: 8
    pipeline_model_parallel_size: 2
  rollout:
    name: vllm
    tensor_parallel_size: 8
Launch Multi-Node
# On head node
ray start --head --port=6379

# On worker nodes
ray start --address='head_ip:6379'

# Launch training
python3 -m verl.trainer.main_ppo \
    trainer.nnodes=4 \
    trainer.n_gpus_per_node=8

Configuration Reference
Algorithm Selection

| Algorithm | adv_estimator | Use Case | |-----------|-----------------|----------| | GRPO | grpo | Critic-free, math/reasoning | | PPO/GAE | gae | Dense rewards, value estimation | | REINFORCE++ | reinforce_plus_plus | Variance reduction | | RLOO | rloo | Leave-one-out baseline | | ReMax | remax | Maximum reward baseline | | OPO | opo | Optimal policy optimization |

Key Parameters
# Rollout parameters
actor_rollout_ref.rollout.n: 8              # Samples per prompt
actor_rollout_ref.rollout.temperature: 0.7  # Sampling temperature
actor_rollout_ref.rollout.top_p: 0.95       # Nucleus sampling

# Training parameters
actor_rollout_ref.actor.lr: 1e-6            # Learning rate
actor_rollout_ref.actor.ppo_mini_batch_size: 64
actor_rollout_ref.actor.clip_ratio: 0.2     # PPO clip range

# KL control
actor_rollout_ref.actor.use_kl_loss: true
actor_rollout_ref.actor.kl_loss_coef: 0.001
algorithm.kl_ctrl.target_kl: 0.1            # For adaptive KL control

Common Issues and Solutions
Issue: OOM During Rollout

Symptoms: CUDA out of memory during generation phase

Solutions:

# Reduce batch size
actor_rollout_ref.rollout.log_prob_micro_batch_size: 4

# Enable gradient checkpointing
actor_rollout_ref.model.enable_gradient_checkpointing: true

# Use FSDP2 with CPU offloading
actor_rollout_ref.actor.strategy: fsdp2
actor_rollout_ref.actor.fsdp_config.offload_policy: true
Issue: Training Instability

Symptoms: Loss spikes, reward collapse

Solutions:

# Reduce learning rate
actor_rollout_ref.actor.lr: 5e-7

# Increase KL penalty
actor_rollout_ref.actor.kl_loss_coef: 0.01

# Enable gradient clipping
actor_rollout_ref.actor.max_grad_norm: 1.0
Issue: Slow Weight Sync

Symptoms: Long pauses between rollout and training

Solutions:

# Use FSDP2 for faster resharding
actor_rollout_ref.actor.strategy=fsdp2

# Enable async weight transfer
trainer.async_weight_update=true
Issue: vLLM Version Mismatch

Symptoms: Import errors or generation failures

Solution: Use compatible versions:

pip install vllm>=0.8.5,<=0.12.0
# Avoid vLLM 0.7.x (known bugs)

Advanced Topics
Multi-Turn Tool Calling

See [references/multi-turn.md](references/multi-turn.md) for agentic workflows with tool use.

Vision-Language Models
actor_rollout_ref:
  model:
    path: Qwen/Qwen2.5-VL-7B-Instruct
  rollout:
    name: vllm
    enable_vision: true
LoRA Training
actor_rollout_ref:
  actor:
    lora:
      enabled: true
      r: 16
      alpha: 32
      target_modules: ["q_proj", "v_proj"]

Resources
  • Documentation: https://verl.readthedocs.io/
  • Paper: https://arxiv.org/abs/2409.19256
  • GitHub: https://github.com/volcengine/verl
  • Recipes: https://github.com/verl-project/verl-recipe (DAPO, GSPO, etc.)
  • Community: Slack at verl-project
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