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>
2.2 KiB
TxGemma
Therapeutic-development / drug-discovery variant. Built on Gemma 2. No Gemma 3 or 4 generation yet.
What it is
Gemma 2 fine-tuned on 7M examples curated from the Therapeutics Data Commons (TDC) — predictive tasks across small molecules, proteins, nucleic acids, diseases, and cell lines. Beats or matches state-of-the-art on 50 of 66 TDC tasks; beats specialist models on 26 of them.
Sizes
- 2B predict — prediction-only, narrow prompt format.
- 9B predict + 9B chat — prediction plus conversational reasoning.
- 27B predict + 27B chat — same, larger.
Model card
- https://developers.google.com/health-ai-developer-foundations/txgemma/model-card
- DeepMind: https://deepmind.google/models/gemma/txgemma/
- Paper: https://deepmind.google/research/publications/153799/
Prompting modes
Prediction mode (all sizes): structured TDC-format prompt with instruction + context + question + optional few-shot. Output is a short prediction (sometimes a single token or a float).
Conversational mode (9B, 27B): chat-template interactions, can explain reasoning behind predictions.
Minimum invocation — prediction
from transformers import pipeline
pipe = pipeline(
"text-generation",
model="google/txgemma-27b-predict",
device="cuda",
)
prompt = (
"Instructions: Predict whether the molecule can penetrate the blood-brain barrier.\n"
"Context: Blood-brain barrier penetration is an important property for CNS drugs.\n"
"Question: Given the SMILES string CN1C=NC2=C1C(=O)N(C(=O)N2C)C, "
"predict BBB penetration. Answer with 'Yes' or 'No'.\n"
"Answer:"
)
out = pipe(prompt, max_new_tokens=8)
print(out[0]["generated_text"])
License
Health AI Developer Foundations — same terms as MedGemma. Non-clinical, research-use.
When to choose it over base Gemma 4
- You're doing drug-discovery research and need TDC-format predictions out of the box.
- You want SMILES-aware reasoning without a custom cheminformatics stack.
Almost never chosen for general-purpose work. TxGemma's value is the training data, not the base model.
Homelab fit
Zero. Noted for completeness.