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transformers

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Transformers

Overview

The Hugging Face Transformers library provides access to thousands of pre-trained models for tasks across NLP, computer vision, audio, and multimodal domains. Use this skill to load models, perform inference, and fine-tune on custom data.

Installation

Install transformers and core dependencies:

uv pip install torch transformers datasets evaluate accelerate

For vision tasks, add:

uv pip install timm pillow

For audio tasks, add:

uv pip install librosa soundfile

Authentication

Many models on the Hugging Face Hub require authentication. Set up access:

from huggingface_hub import login
login()  # Follow prompts to enter token

Or set environment variable:

export HUGGINGFACE_TOKEN="your_token_here"

Get tokens at: https://huggingface.co/settings/tokens

Quick Start

Use the Pipeline API for fast inference without manual configuration:

from transformers import pipeline

# Text generation
generator = pipeline("text-generation", model="gpt2")
result = generator("The future of AI is", max_length=50)

# Text classification
classifier = pipeline("text-classification")
result = classifier("This movie was excellent!")

# Question answering
qa = pipeline("question-answering")
result = qa(question="What is AI?", context="AI is artificial intelligence...")

Core Capabilities

1. Pipelines for Quick Inference

Use for simple, optimized inference across many tasks. Supports text generation, classification, NER, question answering, summarization, translation, image classification, object detection, audio classification, and more.

When to use: Quick prototyping, simple inference tasks, no custom preprocessing needed.

See references/pipelines.md for comprehensive task coverage and optimization.

2. Model Loading and Management

Load pre-trained models with fine-grained control over configuration, device placement, and precision.

When to use: Custom model initialization, advanced device management, model inspection.

See references/models.md for loading patterns and best practices.

3. Text Generation

Generate text with LLMs using various decoding strategies (greedy, beam search, sampling) and control parameters (temperature, top-k, top-p).

When to use: Creative text generation, code generation, conversational AI, text completion.

See references/generation.md for generation strategies and parameters.

4. Training and Fine-Tuning

Fine-tune pre-trained models on custom datasets using the Trainer API with automatic mixed precision, distributed training, and logging.

When to use: Task-specific model adaptation, domain adaptation, improving model performance.

See references/training.md for training workflows and best practices.

5. Tokenization

Convert text to tokens and token IDs for model input, with padding, truncation, and special token handling.

When to use: Custom preprocessing pipelines, understanding model inputs, batch processing.

See references/tokenizers.md for tokenization details.

Common Patterns

Pattern 1: Simple Inference

For straightforward tasks, use pipelines:

pipe = pipeline("task-name", model="model-id")
output = pipe(input_data)

Pattern 2: Custom Model Usage

For advanced control, load model and tokenizer separately:

from transformers import AutoModelForCausalLM, AutoTokenizer

tokenizer = AutoTokenizer.from_pretrained("model-id")
model = AutoModelForCausalLM.from_pretrained("model-id", device_map="auto")

inputs = tokenizer("text", return_tensors="pt")
outputs = model.generate(**inputs, max_new_tokens=100)
result = tokenizer.decode(outputs[0])

Pattern 3: Fine-Tuning

For task adaptation, use Trainer:

from transformers import Trainer, TrainingArguments

training_args = TrainingArguments(
    output_dir="./results",
    num_train_epochs=3,
    per_device_train_batch_size=8,
)

trainer = Trainer(
    model=model,
    args=training_args,
    train_dataset=train_dataset,
)

trainer.train()

Reference Documentation

For detailed information on specific components:

  • Pipelines: references/pipelines.md - All supported tasks and optimization
  • Models: references/models.md - Loading, saving, and configuration
  • Generation: references/generation.md - Text generation strategies and parameters
  • Training: references/training.md - Fine-tuning with Trainer API
  • Tokenizers: references/tokenizers.md - Tokenization and preprocessing

Source

git clone https://github.com/Microck/ordinary-claude-skills/blob/main/skills_all/claude-scientific-skills/scientific-skills/transformers/SKILL.mdView on GitHub

Overview

The Hugging Face Transformers library provides access to thousands of pre-trained models for NLP, computer vision, audio, and multimodal tasks. This skill enables loading models, running inference via pipelines or custom code, and fine-tuning on your own datasets to adapt models to specific domains. It covers generation, classification, QA, translation, summarization, image classification, object detection, and speech recognition.

How This Skill Works

Install the library and required dependencies, authenticate to access private models if needed, and choose between high-level pipelines for quick inference or explicit model and tokenizer for advanced control. You can load pre-trained models, configure devices and precision, and use the Trainer API to fine-tune on custom data.

When to Use It

  • You need quick, out-of-the-box inference across tasks with minimal setup.
  • You want to perform text generation, classification, QA, or translation using pipelines.
  • You are integrating image or audio tasks (e.g., image classification or speech recognition) or multimodal models.
  • You are prototyping with pre-trained models on a domain-specific dataset.
  • You need to fine-tune or customize models with training loops and automatic mixed precision.

Quick Start

  1. Step 1: Install transformers and core dependencies (pip install torch transformers datasets evaluate accelerate).
  2. Step 2: (Optional) Install vision/audio extras (pip install timm pillow) and (pip install librosa soundfile).
  3. Step 3: Use the Pipeline API for quick inference or load models with tokenizer for custom workflows.

Best Practices

  • Install dependencies per guidance: pip install torch transformers datasets evaluate accelerate; for vision add timm pillow; for audio add librosa soundfile.
  • Prefer pipelines for simple tasks; switch to explicit model + tokenizer for advanced use.
  • Authenticate to Hugging Face Hub for access to private models; use login() or set HUGGINGFACE_TOKEN.
  • Optimize resources by configuring device_map and torch_dtype, and consider gradient_checkpointing for large models.
  • Follow task-specific references and docs for generation, training, and tokenization examples.

Example Use Cases

  • Text generation with a GPT-2 model to draft blog intros.
  • Text classification of customer reviews (positive/negative) using a BERT-like classifier.
  • Question answering over a document corpus with a QA pipeline.
  • Image classification using a vision transformer (ViT) or object detection with DETR.
  • Fine-tuning a pre-trained model on a domain-specific dataset (legal/medical) for a custom task.

Frequently Asked Questions

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