The next generation of encoder-decoder models


T5Gemma 2 is the next evolution of our encoder-decoder family based on Gemma 3, featuring the first multi-modal and long-context encoder-decoder models.

Unlike T5Gemma, T5Gemma 2 adopts tied word embeddings (over encoder and decoder) and merged decoder self- and cross-attention to save model parameters. It offers compact pre-trained models at sizes of 270M-270M (~370M total, excluding vision encoder), 1B-1B (~1.7B) and 4B-4B (~7B) parameters, making them ideal for rapid experimentation and deployment in on-device applications.

Background

With the original T5Gemma, we demonstrated that we could successfully adapt modern, pre-trained decoder-only models into an encoder-decoder architecture, unlocking new versatility. By initializing with weights from a powerful decoder-only model and then applying continued pre-training, we created high-quality, inference-efficient models while bypassing the computational cost of training from scratch.

T5Gemma 2 extends this into the realm of vision-language models by incorporating key innovations from Gemma 3.

What’s new

T5Gemma 2 is more than a re-training. It incorporates significant architectural changes while inheriting many of the powerful, next-generation features of the Gemma 3 family.

Architectural innovations for efficiency

To maximize efficiency at smaller scales, we have introduced key structural refinements:

  • Tied embeddings: We now tie the embeddings between the encoder and decoder. This significantly reduces the overall parameter count, allowing us to pack more active capabilities into the same memory footprint — crucial for our new compact 270M-270M model.
  • Merged attention: In the decoder, we adopt a merged attention mechanism, combining self- and cross-attention into a single, unified attention layer. This reduces model parameters and architectural complexity, improving model parallelization and benefiting inference.

Next-generation capabilities

Drawing from Gemma 3, T5Gemma 2 also represents a significant upgrade in model capabilities:

  • Multimodality: T5Gemma 2 models can understand and process images alongside text. By utilizing a highly efficient vision encoder, the models can seamlessly perform visual question answering and multimodal reasoning tasks.
  • Extended long context: We’ve dramatically expanded the context window. Leveraging Gemma 3’s alternating local and global attention mechanism, T5Gemma 2 can handle context windows of up to 128K tokens.
  • Massively multilingual: Trained on a larger, more diverse dataset, these models now support over 140 languages out of the box.

Performance

T5Gemma 2 sets a new standard for what compact encoder-decoder models can achieve. Our new models demonstrate strong performance across key capability areas, inheriting the powerful multimodal and long-context features from the Gemma 3 architecture.



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