In-browser semantic search with EmbeddingGemma
A few days ago, Google DeepMind released a new embedding model based on the Gemma open weight model: EmbeddingGemma . With 308 million parameters , such a model is tiny enough to be able to run on…
Read the full articleYou might also wanna read

Workers AI - Introducing EmbeddingGemma from Google on Workers AI
We're excited to be a launch partner alongside Google to bring their newest embedding model, EmbeddingGemma , to Workers AI that delivers be
TranslateGemma: Open AI Translation Models Based on Google's Gemma 3 Support 55 Languages
TranslateGemma is a new suite of open AI translation models built on Google’s Gemma 3. It enables high-quality communication across 55 langu
FunctionGemma: Google's Specialized AI Model for Edge Device Function Calling
FunctionGemma is a specialized version of our Gemma 3 270M model fine-tuned for function calling.
Google DeepMind's DiffusionGemma uses image-generation diffusion techniques to accelerate text output by up to 4x
Language model builds on diffusion tech to boost output performance by up to 4x, claims Chocolate Factory
Technical Analysis of Local RAG Implementation: Tradeoffs Between Inference Speed and Retrieval Accuracy
I interacted with the authors of these models quite a bit!
Google's DiffusionGemma achieves 4x faster text generation using diffusion-based approach
An overview of DiffusionGemma, an exceptionally fast text generation model with up to 4x faster speeds.

Comments
Sign in to join the conversation.
No comments yet. Be the first.