Key Takeaways
- Google’s new 27B parameter AI model discovered novel cancer drug candidates
- The model successfully identified how to make ‘cold’ tumors visible to the immune system
- 70-90% of the highlighted drugs were entirely new discoveries
- The technology is now publicly available on GitHub and Hugging Face
Google has achieved a significant breakthrough in cancer research with its new AI model that can identify promising drug candidates for immunotherapy. The Cell2Sentence-Scale 27B (C2S-Scale) model, developed in partnership with Yale, generated novel hypotheses about cancer cell behavior that were later verified as correct.
CEO Sundar Pichai celebrated this development on social media, calling it “an exciting milestone for AI in science.”
Understanding the Language of Cells
The AI model was specifically designed to interpret the biological “language” of individual cells. This capability addresses a major challenge in cancer treatment: most tumors remain “cold” or invisible to the body’s natural immune defenses.
To overcome this, tumors need to be compelled to display immune-triggering signals through antigen presentation. The C2S-Scale model was tasked with finding drugs that could act as “conditional amplifiers” – boosting immune signals only in specific environments where key immune-signaling proteins already existed.
Google noted that smaller AI models lacked the reasoning capacity for this complex problem, but the scaled-up 27B parameter version successfully cracked it.
Drug Discovery Breakthrough
Researchers simulated 4,000 different drugs across patient samples, asking the AI to predict which would effectively boost antigen presentation in relevant clinical settings. The results were striking: the model identified between 10-30% of known effective drugs while highlighting a substantial 70-90% of entirely novel candidates.
This discovery opens new pathways for development that could significantly accelerate treatment research.
The C2S-Scale 27B model is now accessible to researchers worldwide through GitHub and Hugging Face platforms, potentially accelerating global cancer research efforts.



