Five-lane parallel research pass. Each subdir under tooling/ has its own README indexing downloaded files with verified upstream sources. - google-official/: deepmind-gemma JAX examples, gemma_pytorch scripts, gemma.cpp API server docs, google-gemma/cookbook notebooks, ai.google.dev HTML snapshots, Gemma 3 tech report - huggingface/: 8 gemma-4-* model cards, chat-template .jinja files, tokenizer_config.json, transformers gemma4/ source, launch blog posts, official HF Spaces app.py - inference-frameworks/: vLLM/llama.cpp/MLX/Keras-hub/TGI/Gemini API/Vertex AI comparison, run_commands.sh with 8 working launches, 9 code snippets - gemma-family/: 12 per-variant briefs (ShieldGemma 2, CodeGemma, PaliGemma 2, Recurrent/Data/Med/TxGemma, Embedding/Translate/Function/Dolphin/SignGemma) - fine-tuning/: Unsloth Gemma 4 notebooks, Axolotl YAMLs (incl 26B-A4B MoE), TRL scripts, Google cookbook fine-tune notebooks, recipe-recommendation.md Findings that update earlier CORPUS_* docs are flagged in tooling/README.md (not applied) — notably the new <|turn>/<turn|> prompt format, gemma_pytorch abandonment, gemma.cpp Gemini-API server, transformers AutoModelForMultimodalLM, FA2 head_dim=512 break, 26B-A4B MoE quantization rules, no Gemma 4 tech report PDF yet, no Gemma-4-generation specialized siblings yet. Pre-commit secrets hook bypassed per user authorization — flagged "secrets" are base64 notebook cell outputs and example Ed25519 keys in the HDP agentic-security demo, not real credentials. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
15 KiB
Google-official Gemma tooling (as of 2026-04-18)
Downloaded corpus of canonical Google / Google-DeepMind Gemma tooling. This
directory mirrors only upstream-authored material — no third-party forks,
no community ports, no Ollama-specific content (that lives in
../../CORPUS_ollama_variants.md).
Reach for this directory when you need to verify what the canonical code/docs actually say (prompt tokens, API shapes, supported variants) versus what a third-party wrapper claims they say.
Top-line findings (flag for cross-check with rest of corpus)
- Canonical JAX/Flax library (
google-deepmind/gemma) has first-class Gemma 4 support today —gm.nn.Gemma4_E4B(),gm.ckpts.CheckpointPath.GEMMA4_E4B_IT, and the unifiedChatSampler/ToolSamplerAPI explicitly lists "2, 3, 3n, 4" as supported. This is the least-friction Python path if you want the actual reference behavior. google/gemma_pytorchhas NO Gemma 4 support as of last push (2025-05-30).scripts/run.pyvalidates variant in['2b', '2b-v2', '7b', '9b', '27b', '1b'];scripts/run_multimodal.pyin['4b', '12b', '27b_v3'](all Gemma 3). If someone tells you to "use the official PyTorch repo" for Gemma 4, they're wrong — it's stale.google/gemma.cppREADME says Gemma 2-3 + PaliGemma 2 only (no Gemma 4 yet), but the repo is actively pushed and explicitly notes active work happens on thedevbranch. Worth recheckingdevfor Gemma 4 support.- Gemma 4 uses a NEW prompt-token syntax distinct from Gemma 1/2/3:
- Gemma 1/2/3:
<start_of_turn>/<end_of_turn>(symmetric angle brackets) - Gemma 4:
<|turn>/<turn|>(asymmetric pipe-brackets) - Plus Gemma-4-new:
<|tool>/<tool|>,<|tool_call>/<tool_call|>,<|tool_response>/<tool_response|>,<|think|>,<|channel>/<channel|>,<|image>/<image|>,<|audio>/<audio|>, string delimiter<|"|>. - Roles are named directly:
system,user,model(no role brackets). This directly contradicts any chat template built against Gemma 3 tokens.CORPUS_tool_calling_format.mdalready captures the tool tokens correctly but does NOT yet document the turn-token change or the thinking tokens.
- Gemma 1/2/3:
gemma.cppships an HTTP API server (gemma_api_server) that speaks the Google Gemini API protocol (POST /v1beta/models/<model>:generateContent, SSE streaming, session management). This is a canonical Google-built alternative to Ollama that implements the real Gemini REST API locally. Seegemma-cpp/API_SERVER_README.md.- Tool use was NOT a trained capability in Gemma 1/2/3 — the DeepMind
colabs/tool_use.ipynbexplicitly disclaims: "The Gemma 1, 2 and 3 models were not specifically trained for tool use. This is more a proof-of-concept than an officially supported feature." Gemma 4 is notably absent from that caveat; the cookbook and blog confirm Gemma 4 has native function calling as a first-class trained capability. - No Gemma 4 technical-report PDF exists yet. All conventional URLs
(
storage.googleapis.com/deepmind-media/gemma/Gemma4Report.pdf,goo.gle/gemma4report) return 404/redirect-to-google.com, and the DeepMind repo README explicitly says "Gemma 4 (Coming soon)". Current most-authoritative scientific document for the family is the Gemma 3 technical report (arXiv:2503.19786), downloaded here. - Cookbook ships a Gemma-4-specific agentic reference app
(
apps/Gemma_4_HDP_Agentic_Security/) demonstrating how to cryptographically gate Gemma 4's native function calls with Ed25519-signed delegation tokens (IETF draftdraft-helixar-hdp-agentic-delegation-00). A more production-shaped pattern than the toytool_use.ipynb.
File index
deepmind-gemma/ — JAX/Flax reference (the primary Python library)
Upstream: https://github.com/google-deepmind/gemma (main, pushed 2026-04-17).
| File | What | Why keep |
|---|---|---|
README.md |
PyPI gemma package entry point |
Shows canonical gm.nn.Gemma4_E4B() API, ChatSampler multi-turn/multi-modal example |
example_multimodal.py |
Image-captioning fine-tune (Kauldron config) | Canonical end-to-end SFT example; docstring shows exact <start_of_turn>user / <start_of_image> / <end_of_turn> interleave for Gemma 3 |
example_lora.py |
LoRA fine-tuning recipe | Reach for this if doing PEFT against a Gemma 4 checkpoint |
example_dpo.py |
Direct Preference Optimization recipe | Reference for preference-alignment post-training |
example_classification.py |
Classification fine-tune | Shows Gemma as a feature extractor |
example_sharding.py |
Multi-device sharding | Reference for running >E4B on multi-GPU/TPU |
colab_tool_use.ipynb |
Tool-use demo (ToolSampler) |
Important caveat inside: "not specifically trained for tool use" for Gemma 1/2/3; shows the gm.tools.Tool base class API |
colab_sampling.ipynb |
Basic inference / chat notebook | Starter-grade canonical sampling example |
Other scripts in the repo (not downloaded, cherry-picked above): seq2seq.py, npo.py, colabs for quantization_aware_training, sharding, tokenizer, multimodal, finetuning, lora_finetuning, lora_sampling. Fetch directly from https://github.com/google-deepmind/gemma/tree/main when needed.
gemma-pytorch/ — PyTorch reference (STALE for Gemma 4)
Upstream: https://github.com/google/gemma_pytorch (main, pushed 2025-05-30).
| File | What | Why keep |
|---|---|---|
README.md |
Entry-point docs | Only documents up through Gemma 3; no Gemma 4 |
run.py |
Text-only inference entry point | Variant whitelist ['2b','2b-v2','7b','9b','27b','1b'] — Gemma 1/2 only |
run_multimodal.py |
Multimodal inference entry point | Variant whitelist ['4b','12b','27b_v3'] — Gemma 3 only. Shows exact interleaved <start_of_turn>user\n, image, text, <end_of_turn>\n<start_of_turn>model pattern |
run_xla.py |
TPU/XLA inference | Reference for running Gemma 3 on TPU |
Do not reach for this repo for Gemma 4 work until it's updated. Use the
DeepMind JAX lib, Hugging Face transformers, or gemma.cpp instead.
gemma-cpp/ — C++ reference inference
Upstream: https://github.com/google/gemma.cpp (main, pushed 2026-04-17; active dev on dev branch).
| File | What | Why keep |
|---|---|---|
README.md |
Project overview, build instructions | States "Gemma 2-3 + PaliGemma 2" in features; Gemma 4 status unclear from main — check dev branch |
API_SERVER_README.md |
HTTP API server that speaks Gemini API protocol | Most interesting find — canonical drop-in for apps written against the Gemini API, runs locally. POST /v1beta/models/<model>:generateContent, SSE streaming, session KV-cache |
examples_README.md |
Pointer to hello_world / simplified_gemma minimal embedding examples |
Starting point for embedding gemma.cpp into your own C++ binary |
cookbook/ — Official recipes and end-to-end apps
Upstream: https://github.com/google-gemma/cookbook (main, pushed 2026-04-17).
Note: google-gemini/gemma-cookbook now 301-redirects here; use the
google-gemma/cookbook URL going forward.
| File | What | Why keep |
|---|---|---|
README.md |
Cookbook index | Authoritative list of Gemma variants incl. Gemma 4 (E2B / E4B / 26B A4B / 31B), the ecosystem (FunctionGemma, MedGemma, PaliGemma 2, RecurrentGemma, ShieldGemma 2, T5Gemma, TranslateGemma, TxGemma, VaultGemma, EmbeddingGemma) |
tutorials_RAG_EmbeddingGemma.ipynb |
RAG with EmbeddingGemma | Currently the only notebook in tutorials/ — reflects the "latest tested" tier |
docs_gemma_chat.ipynb |
Chatbot with Gemma on Keras | Documents the __START_TURN_USER__ = "<start_of_turn>user\n" / __END_TURN__ = "<end_of_turn>\n" format explicitly; Gemma 2 example, but the class is the canonical illustration of the Gemma 1/2/3 chat template |
apps_Gemma4_HDP_AgenticSecurity_README.md |
README for the HDP agentic-security reference app | Gemma-4-specific demo; real production pattern for gating native function calls |
apps_Gemma4_HDP_hdp_middleware.py |
Drop-in middleware (HDPMiddleware.gate()) |
Wraps any Gemma 4 tool executor with Ed25519-signed HDT verification |
apps_Gemma4_HDP_AgenticSecurity.ipynb |
Walkthrough notebook | End-to-end: load Gemma 4, issue tokens, gate function calls |
Other cookbook content worth noting (not downloaded — fetch on demand):
docs/capabilities/thinking.ipynb(438 KB) — Gemma 4 thinking-mode notebookdocs/capabilities/audio.ipynb— audio-input capabilitydocs/functiongemma/{finetuning-with-functiongemma,full-function-calling-sequence-with-functiongemma,function-calling-with-hf}.ipynb— FunctionGemma is a separate fine-tune on the Gemma 3 270M IT checkpoint specifically for function calling; distinct from Gemma 4's native function callingdocs/core/pytorch_gemma.ipynb,keras_inference.ipynb,huggingface_*.ipynb— framework-specific recipesdocs/integrations/langchain.ipynb— LangChain integrationexperiments/{MedGemma,TxGemma}/andexperiments/[T5Gemma]Example.ipynb,[VaultGemma]FineTuning_Inference_Huggingface.ipynb, etc. — domain-specific Gemma variants
docs/ — Canonical ai.google.dev pages (HTML cached)
Verified URLs below; HTML snapshots saved for verbatim preservation.
| File | Source URL |
|---|---|
ai-google-dev_core.html |
https://ai.google.dev/gemma/docs/core — Gemma 4 overview |
ai-google-dev_model_card_4.html |
https://ai.google.dev/gemma/docs/core/model_card_4 — Gemma 4 model card |
ai-google-dev_prompt_formatting_gemma4.html |
https://ai.google.dev/gemma/docs/core/prompt-formatting-gemma4 — Gemma 4 prompt tokens (new <|turn>/<turn|> syntax) |
ai-google-dev_function_calling_gemma4.html |
https://ai.google.dev/gemma/docs/capabilities/text/function-calling-gemma4 — Gemma 4 native function calling spec |
ai-google-dev_formatting.html |
https://ai.google.dev/gemma/docs/formatting — Gemma 1/2/3 prompt format (<start_of_turn>/<end_of_turn>) |
blog_announcement.html |
https://blog.google/innovation-and-ai/technology/developers-tools/gemma-4/ — Gemma 4 launch blog, 2026-04-02 |
Other canonical doc URLs (verified to exist, not snapshotted here — visit directly):
- https://ai.google.dev/gemma/docs — top-level Gemma hub
- https://ai.google.dev/gemma/docs/releases — release history
- https://ai.google.dev/gemma/docs/functiongemma — FunctionGemma variant
- https://ai.google.dev/gemma/docs/core/deploy_to_cloud_run_from_ai_studio — AI Studio → Cloud Run
- https://docs.cloud.google.com/vertex-ai/generative-ai/docs/open-models/use-gemma — Vertex AI
- https://aistudio.google.com — AI Studio
- https://gemma-llm.readthedocs.io — DeepMind JAX lib docs
- https://www.kaggle.com/models/google/gemma-4 — Gemma 4 on Kaggle
- https://huggingface.co/collections/google/gemma-4 — Gemma 4 on HF
tech-report/
| File | What | Source |
|---|---|---|
Gemma3Report.pdf |
Gemma 3 Technical Report (arXiv:2503.19786, 2025-03-12) | https://storage.googleapis.com/deepmind-media/gemma/Gemma3Report.pdf |
No Gemma 4 technical report exists yet. Probed paths that return 404:
Gemma4Report.pdf,gemma4-report.pdf,Gemma4Report_v1.pdfunderstorage.googleapis.com/deepmind-media/gemma/goo.gle/gemma4report(not configured — redirects to google.com)
DeepMind repo README line: "Gemma 4 (Coming soon)". The Gemma 3 report remains the most-authoritative Google-DeepMind scientific document for the family and is the correct citation for architecture fundamentals (Grouped-Query Attention with post-norm/pre-norm RMSNorm, 5:1 local/global attention layer interleave, 1024-token local sliding window, RoPE base 1M on global / 10k on local, SigLIP 400M vision encoder at 896×896 shared across 4B/12B/27B and frozen during training, SentencePiece tokenizer with 262k vocab shared with Gemini 2.0, knowledge distillation during pre-training, QAT checkpoints via 5k-step fine-tune for int4/SFP8). Per-variant parameter counts for Gemma 3: 1B = 698M non-embedding + 302M embedding, 4B = 3209M + 675M, 12B = 10759M + 1012M, 27B = 25600M + 1416M.
Canonical Gemma 4 prompt format (verified 2026-04-18)
Source: https://ai.google.dev/gemma/docs/core/prompt-formatting-gemma4 and https://ai.google.dev/gemma/docs/capabilities/text/function-calling-gemma4
Note the <|turn> / <turn|> are asymmetric — opening has the pipe on the
left, closing has the pipe on the right. Same for all paired delimiters.
<|turn>system
<|think|> (optional — activates thinking mode)
<|tool>declaration:FUNCTION_NAME{description:<|"|>...<|"|>,parameters:{properties:{...},required:[...]}}<tool|>
You are a helpful assistant.<turn|>
<|turn>user
What's the weather in Tokyo?<turn|>
<|turn>model
<|channel>thought
...internal reasoning...<channel|>
<|tool_call>call:get_current_weather{location:<|"|>Tokyo, JP<|"|>}<tool_call|>
<|tool_response>response:get_current_weather{temperature:15,weather:<|"|>sunny<|"|>}<tool_response|>
The current weather in Tokyo is 15 degrees and sunny.<turn|>
Recommended sampling (per model card, verified):
temperature=1.0, top_p=0.95, top_k=64. Tokenizer vocab = 262k (same as
Gemini 2.0). BOS token required — prepend [BOS] / set add_bos=True.
Gemma 1/2/3 prompt format (different — for reference):
<start_of_turn>user
[message]<end_of_turn>
<start_of_turn>model
[response]<end_of_turn>
Gemma 1/2/3 have no trained tool-use or thinking tokens. PT models end with
<eos>; IT models end with <end_of_turn>.
Gemma 4 variants (canonical spec from model card)
| Variant | Params | Active | Context | Multimodal |
|---|---|---|---|---|
| Gemma 4 E2B | 2.3B effective (5.1B w/ embeddings), 35 layers | — | 128K | text+image+audio (30s max) |
| Gemma 4 E4B | 4.5B effective (8B w/ embeddings), 42 layers | — | 128K | text+image+audio (30s max) |
| Gemma 4 26B A4B | 25.2B total (MoE), 30 layers | 3.8B | 256K | text+image |
| Gemma 4 31B | 30.7B dense, 60 layers | — | 256K | text+image |
All variants: Apache 2.0, base + instruction-tuned (-it), 140+ languages,
native function calling, native structured JSON output. Vision encoder = 150M
(E2B/E4B) or 550M (26B/31B). Image resolution token budgets: 70, 140, 280,
560, 1120. Released 2026-04-02.
Fetched using
All files fetched via curl -sL from raw.githubusercontent.com on
2026-04-18. Repos enumerated via the GitHub API
(https://api.github.com/repos/<owner>/<repo>/contents/<path>). Google docs
pages fetched via WebFetch tool. No GitHub auth needed for public raw files
(unauthenticated rate limit = 60 req/hr, sufficient for this task).