cli-tool/components/skills/ai-research/post-training-verl/SKILL.md
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.
npx skillsauth add davila7/claude-code-templates verl-rl-trainingInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
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.
Choose verl when you need:
Consider alternatives when:
# 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]
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
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) │
└─────────────────────────────────────────────────────────┘
Use this workflow for training reasoning models on math tasks like GSM8K or MATH.
prompt and reward_model columnsimport 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")
# 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
# 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
python3 -m verl.trainer.main_ppo \
--config-path config \
--config-name grpo_math \
trainer.experiment_name=grpo_math_qwen7b
Use this workflow when you need value-based advantage estimation (GAE).
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
python3 -m verl.trainer.main_ppo \
algorithm.adv_estimator=gae \
critic.model.path=Qwen/Qwen2.5-7B-Instruct \
trainer.n_gpus_per_node=8
Use this workflow for models >70B parameters or when you need expert parallelism.
pip install mbridgeactor_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
# 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
| 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 |
# 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
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
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
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
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)
See references/multi-turn.md for agentic workflows with tool use.
actor_rollout_ref:
model:
path: Qwen/Qwen2.5-VL-7B-Instruct
rollout:
name: vllm
enable_vision: true
actor_rollout_ref:
actor:
lora:
enabled: true
r: 16
alpha: 32
target_modules: ["q_proj", "v_proj"]
tools
No-code automation democratizes workflow building. Zapier and Make (formerly Integromat) let non-developers automate business processes without writing code. But no-code doesn't mean no-complexity - these platforms have their own patterns, pitfalls, and breaking points. This skill covers when to use which platform, how to build reliable automations, and when to graduate to code-based solutions. Key insight: Zapier optimizes for simplicity and integrations (7000+ apps), Make optimizes for power
tools
Use only when the user explicitly asks to stage, commit, push, and open a GitHub pull request in one flow using the GitHub CLI (`gh`).
tools
Workflow automation is the infrastructure that makes AI agents reliable. Without durable execution, a network hiccup during a 10-step payment flow means lost money and angry customers. With it, workflows resume exactly where they left off. This skill covers the platforms (n8n, Temporal, Inngest) and patterns (sequential, parallel, orchestrator-worker) that turn brittle scripts into production-grade automation. Key insight: The platforms make different tradeoffs. n8n optimizes for accessibility
development
Trigger.dev expert for background jobs, AI workflows, and reliable async execution with excellent developer experience and TypeScript-first design. Use when: trigger.dev, trigger dev, background task, ai background job, long running task.