Overview

Google’s leaked “Snow Bunny” model (possibly Gemini 3.5 or 3.0 Pro GA) is showing exceptional performance in early testing, with testers claiming it combines deep reasoning capabilities with high-speed performance. The model demonstrates remarkable versatility across coding, lateral reasoning, music generation, and graphics, potentially representing a significant leap forward in AI capabilities.

Key Takeaways

  • Lateral reasoning capabilities are becoming a key differentiator - Snow Bunny’s 80% score on specialized reasoning tasks significantly outperforms current leading models, suggesting a new frontier in AI problem-solving abilities
  • Multimodal versatility may be more valuable than specialized performance - The model’s ability to excel across coding, music, graphics, and reasoning tasks indicates that future AI success lies in broad capability rather than narrow expertise
  • The gap between reasoning depth and speed is closing - Early testers describe the model as combining ‘deep thinking’ thoroughness with ‘flash’ speed, potentially solving the traditional trade-off between quality and response time
  • Consistent performance across model versions suggests robust architecture - Both ‘RAW’ and ‘Less Raw’ versions achieved identical benchmark scores, indicating the underlying capabilities are stable rather than flukes
  • Benchmark saturation signals rapid AI advancement - When benchmark creators need to make tests harder because models are hitting ceiling performance, it demonstrates how quickly AI capabilities are advancing beyond current measurement tools

Topics Covered