hugging-face-model-trainer
💡 Summary
This skill enables training and fine-tuning of language models using TRL on Hugging Face's cloud infrastructure.
🎯 Target Audience
🤖 AI Roast: “Powerful, but the setup might scare off the impatient.”
Risk: Critical. Review: shell/CLI command execution; outbound network access (SSRF, data egress); API keys/tokens handling and storage; filesystem read/write scope and path traversal; dependency pinning and supply-chain risk. Run with least privilege and audit before enabling in production.
name: hugging-face-model-trainer description: This skill should be used when users want to train or fine-tune language models using TRL (Transformer Reinforcement Learning) on Hugging Face Jobs infrastructure. Covers SFT, DPO, GRPO and reward modeling training methods, plus GGUF conversion for local deployment. Includes guidance on the TRL Jobs package, UV scripts with PEP 723 format, dataset preparation and validation, hardware selection, cost estimation, Trackio monitoring, Hub authentication, and model persistence. Should be invoked for tasks involving cloud GPU training, GGUF conversion, or when users mention training on Hugging Face Jobs without local GPU setup. license: Complete terms in LICENSE.txt
TRL Training on Hugging Face Jobs
Overview
Train language models using TRL (Transformer Reinforcement Learning) on fully managed Hugging Face infrastructure. No local GPU setup required—models train on cloud GPUs and results are automatically saved to the Hugging Face Hub.
TRL provides multiple training methods:
- SFT (Supervised Fine-Tuning) - Standard instruction tuning
- DPO (Direct Preference Optimization) - Alignment from preference data
- GRPO (Group Relative Policy Optimization) - Online RL training
- Reward Modeling - Train reward models for RLHF
For detailed TRL method documentation:
hf_doc_search("your query", product="trl") hf_doc_fetch("https://huggingface.co/docs/trl/sft_trainer") # SFT hf_doc_fetch("https://huggingface.co/docs/trl/dpo_trainer") # DPO # etc.
See also: references/training_methods.md for method overviews and selection guidance
When to Use This Skill
Use this skill when users want to:
- Fine-tune language models on cloud GPUs without local infrastructure
- Train with TRL methods (SFT, DPO, GRPO, etc.)
- Run training jobs on Hugging Face Jobs infrastructure
- Convert trained models to GGUF for local deployment (Ollama, LM Studio, llama.cpp)
- Ensure trained models are permanently saved to the Hub
- Use modern workflows with optimized defaults
Key Directives
When assisting with training jobs:
-
ALWAYS use
hf_jobs()MCP tool - Submit jobs usinghf_jobs("uv", {...}), NOT bashtrl-jobscommands. Thescriptparameter accepts Python code directly. Do NOT save to local files unless the user explicitly requests it. Pass the script content as a string tohf_jobs(). If user asks to "train a model", "fine-tune", or similar requests, you MUST create the training script AND submit the job immediately usinghf_jobs(). -
Always include Trackio - Every training script should include Trackio for real-time monitoring. Use example scripts in
scripts/as templates. -
Provide job details after submission - After submitting, provide job ID, monitoring URL, estimated time, and note that the user can request status checks later.
-
Use example scripts as templates - Reference
scripts/train_sft_example.py,scripts/train_dpo_example.py, etc. as starting points.
Local Script Dependencies
To run scripts locally (like estimate_cost.py), install dependencies:
pip install -r requirements.txt
Prerequisites Checklist
Before starting any training job, verify:
✅ Account & Authentication
- Hugging Face Account with Pro, Team, or Enterprise plan (Jobs require paid plan)
- Authenticated login: Check with
hf_whoami() - HF_TOKEN for Hub Push ⚠️ CRITICAL - Training environment is ephemeral, must push to Hub or ALL training results are lost
- Token must have write permissions
- MUST pass
secrets={"HF_TOKEN": "$HF_TOKEN"}in job config to make token available (the$HF_TOKENsyntax references your actual token value)
✅ Dataset Requirements
- Dataset must exist on Hub or be loadable via
datasets.load_dataset() - Format must match training method (SFT: "messages"/text/prompt-completion; DPO: chosen/rejected; GRPO: prompt-only)
- ALWAYS validate unknown datasets before GPU training to prevent format failures (see Dataset Validation section below)
- Size appropriate for hardware (Demo: 50-100 examples on t4-small; Production: 1K-10K+ on a10g-large/a100-large)
⚠️ Critical Settings
- Timeout must exceed expected training time - Default 30min is TOO SHORT for most training. Minimum recommended: 1-2 hours. Job fails and loses all progress if timeout is exceeded.
- Hub push must be enabled - Config:
push_to_hub=True,hub_model_id="username/model-name"; Job:secrets={"HF_TOKEN": "$HF_TOKEN"}
Asynchronous Job Guidelines
⚠️ IMPORTANT: Training jobs run asynchronously and can take hours
Action Required
When user requests training:
- Create the training script with Trackio included (use
scripts/train_sft_example.pyas template) - Submit immediately using
hf_jobs()MCP tool with script content inline - don't save to file unless user requests - Report submission with job ID, monitoring URL, and estimated time
- Wait for user to request status checks - don't poll automatically
Ground Rules
- Jobs run in background - Submission returns immediately; training continues independently
- Initial logs delayed - Can take 30-60 seconds for logs to appear
- User checks status - Wait for user to request status updates
- Avoid polling - Check logs only on user request; provide monitoring links instead
After Submission
Provide to user:
- ✅ Job ID and monitoring URL
- ✅ Expected completion time
- ✅ Trackio dashboard URL
- ✅ Note that user can request status checks later
Example Response:
✅ Job submitted successfully!
Job ID: abc123xyz
Monitor: https://huggingface.co/jobs/username/abc123xyz
Expected time: ~2 hours
Estimated cost: ~$10
The job is running in the background. Ask me to check status/logs when ready!
Quick Start: Three Approaches
💡 Tip for Demos: For quick demos on smaller GPUs (t4-small), omit eval_dataset and eval_strategy to save ~40% memory. You'll still see training loss and learning progress.
Sequence Length Configuration
TRL config classes use max_length (not max_seq_length) to control tokenized sequence length:
# ✅ CORRECT - If you need to set sequence length SFTConfig(max_length=512) # Truncate sequences to 512 tokens DPOConfig(max_length=2048) # Longer context (2048 tokens) # ❌ WRONG - This parameter doesn't exist SFTConfig(max_seq_length=512) # TypeError!
Default behavior: max_length=1024 (truncates from right). This works well for most training.
When to override:
- Longer context: Set higher (e.g.,
max_length=2048) - Memory constraints: Set lower (e.g.,
max_length=512) - Vision models: Set
max_length=None(prevents cutting image tokens)
Usually you don't need to set this parameter at all - the examples below use the sensible default.
Approach 1: UV Scripts (Recommended—Default Choice)
UV scripts use PEP 723 inline dependencies for clean, self-contained training. This is the primary approach for Claude Code.
hf_jobs("uv", { "script": """ # /// script # dependencies = ["trl>=0.12.0", "peft>=0.7.0", "trackio"] # /// from datasets import load_dataset from peft import LoraConfig from trl import SFTTrainer, SFTConfig import trackio dataset = load_dataset("trl-lib/Capybara", split="train") # Create train/eval split for monitoring dataset_split = dataset.train_test_split(test_size=0.1, seed=42) trainer = SFTTrainer( model="Qwen/Qwen2.5-0.5B", train_dataset=dataset_split["train"], eval_dataset=dataset_split["test"], peft_config=LoraConfig(r=16, lora_alpha=32), args=SFTConfig( output_dir="my-model", push_to_hub=True, hub_model_id="username/my-model", num_train_epochs=3, eval_strategy="steps", eval_steps=50, report_to="trackio", project="meaningful_prject_name", # project name for the training name (trackio) run_name="meaningful_run_name", # descriptive name for the specific training run (trackio) ) ) trainer.train() trainer.push_to_hub() """, "flavor": "a10g-large", "timeout": "2h", "secrets": {"HF_TOKEN": "$HF_TOKEN"} })
Benefits: Direct MCP tool usage, clean code, dependencies declared inline (PEP 723), no file saving required, full control
When to use: Default choice for all training tasks in Claude Code, custom training logic, any scenario requiring hf_jobs()
Working with Scripts
⚠️ Important: The script parameter accepts either inline code (as shown above) OR a URL. Local file paths do NOT work.
Why local paths don't work: Jobs run in isolated Docker containers without access to your local filesystem. Scripts must be:
- Inline code (recommended for custom training)
- Publicly accessible URLs
- Private repo URLs (with HF_TOKEN)
Common mistakes:
# ❌ These will all fail hf_jobs("uv", {"script": "train.py"}) hf_jobs("uv", {"script": "./scripts/train.py"}) hf_jobs("uv", {"script": "/path/to/train.py"})
Correct approaches:
# ✅ Inline code (recommended) hf_jobs("uv", {"script": "# /// script\n# dependencies = [...]\n# ///\n\n<your code>"}) # ✅ From Hugging Face Hub hf_jobs("uv", {"script": "https://huggingface.co/user/repo/resolve/main/train.py"}) # ✅ From GitHub hf_jobs("uv", {"script": "https://raw.githubusercontent.com/user/repo/main/train.py"}) # ✅ From Gist hf_jobs("uv", {"script": "https://gist.githubusercontent.com/user/id/raw/train.py"})
To use local scripts: Upload to HF Hub first:
huggingface-cli repo create my-training-scripts --type model huggingface-cli upload my-training-scripts ./train.py train.py # Use: https://huggingface.co/USERNAME/my-training-scripts/resolve/main/train.py
Approach 2: TRL Maintained Scripts (Official Examples)
TRL provides battl
Pros
- No local GPU required for training
- Multiple advanced training methods supported
- Automatic saving of results to Hugging Face Hub
- Real-time monitoring with Trackio
Cons
- Requires a paid Hugging Face account
- Dependency on cloud infrastructure
- Potentially high costs for extensive training
- Complex setup for beginners
Related Skills
pytorch
S“It's the Swiss Army knife of deep learning, but good luck figuring out which of the 47 installation methods is the one that won't break your system.”
agno
S“It promises to be the Kubernetes for agents, but let's see if developers have the patience to learn yet another orchestration layer.”
nuxt-skills
S“It's essentially a well-organized cheat sheet that turns your AI assistant into a Nuxt framework parrot.”
Disclaimer: This content is sourced from GitHub open source projects for display and rating purposes only.
Copyright belongs to the original author huggingface.
