A complete, opinionated recipe for adapting Gemma 4 E2B to your domain — from multimodal dataset construction and QLoRA configuration through training loop debugging, evaluation, and production deployment. April 2026 · ~28 min read · HuggingFace / TRL / PEFT Recipe at a Glance Serves: 1 fine-tuned model Ingredients (hardware) NVIDIA GPU ≥ 24 GB VRAM System RAM ≥ 32 GB Storage (SSD) ≥ 50 GB free Training dataset 1K–100K samples Python ≥ 3.11 CUDA ≥ 12.1 Ingredients (libraries) transformers ≥ 4.51 peft ≥ 0.12 trl ≥ 0.12 bitsandbytes ≥ 0.44 accelerate ≥ 0.34 wandb / mlflow any Contents 01. Why Fine-Tune E2B? 02. Dataset Construction 03. QLoRA Configuration 04. Multimodal Fine-Tuning 05. The Training Loop 06. Debugging ...
A production-grade walkthrough — PDF ingestion, OCR, audio transcription, structured reasoning, and agentic tool calling — all on a 2.3B parameter model that fits on a single consumer GPU. Gemma 4 E2B Vision · OCR Audio · ASR Function Calling 128K Context April 2026 · ~22 min read · Google DeepMind / HuggingFace Transformers Contents Model Overview & Key Architecture Choices Environment Setup & Loading the Model The Document Intelligence Pipeline Vision Pipeline — OCR & Document Parsing Audio Pipeline — ASR & Translation Configurable Thinking Mode Agentic Tool Calling Production Serving with vLLM Benchmark Results 01 — Model Overview Why Gemma 4 E2B Changes On-Device AI The Gemma 4 family is a fundamental rethinking of what a small model can do. The E2B variant — "2B effective parameters" — achieves 2.3B active parameters while c...