Mortdecai 5011059f5d docs: initial Gemma 4 research corpus and synthesis
Architecture specs, benchmarks, gotchas, Ollama settings, tool calling
format, and implementation patterns from Simon and AI_Visualizer.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-04-12 18:14:19 -04:00

gemma4-research

Research corpus and implementation guidance for Google Gemma 4, based on production use in Seth's homelab.

Files

File What When to Read
SYNTHESIS.md Start here. Opinionated guide — how to build with Gemma 4 Before any new Gemma 4 implementation
GOTCHAS.md Known issues and workarounds, severity-ranked When debugging Gemma 4 issues or starting a new project
IMPLEMENTATIONS.md Patterns from Simon and AI_Visualizer When designing a new Gemma 4 integration
CORPUS_architecture.md Model architecture details (layers, attention, PLE, MoE) When you need to understand WHY Gemma 4 behaves a certain way
CORPUS_ollama_variants.md Available models, sizes, VRAM, Ollama settings When choosing a model variant or configuring Ollama
CORPUS_capabilities.md Modalities (vision, audio, video, tools), what it can/can't do When scoping what Gemma 4 can handle
CORPUS_benchmarks.md Full benchmark table vs Gemma 3, arena scores, agentic scores When comparing Gemma 4 to alternatives
CORPUS_tool_calling_format.md Native token format + JSON API format for function calling When implementing tool calling

Source Projects

  • Simon (~/bin/FreibergFamily/simon/) — Multi-turn chat agent with 6 tools, genealogy historian
  • AI Visualizer (~/bin/AI_Visualizer/) — Music video generator, 4-stage Gemma pipeline + vision

Key Insight

Gemma 4 is ultra-compliant and highly capable but doesn't know who it is. It needs explicit system prompts, not hand-holding. Due to fast local inference, sequential tool calls beat long JSON requests.

S
Description
Gemma 4 research corpus, gotchas, and implementation patterns for local inference
Readme 5.4 MiB
Languages
Jupyter Notebook 79.5%
HTML 12.5%
Python 7.5%
Jinja 0.4%