Tech Wavo
  • Home
  • Technology
  • Computers
  • Gadgets
  • Mobile
  • Apps
  • News
  • Financial
  • Stock
Tech Wavo
No Result
View All Result

Google AI Releases VaultGemma: The Largest and Most Capable Open Model (1B-parameters) Trained from Scratch with Differential Privacy

Tech Wavo by Tech Wavo
September 13, 2025
in News
0


Google AI Research and DeepMind have released VaultGemma 1B, the largest open-weight large language model trained entirely with differential privacy (DP). This development is a major step toward building AI models that are both powerful and privacy-preserving.

Why Do We Need Differential Privacy in LLMs?

Large language models trained on vast web-scale datasets are prone to memorization attacks, where sensitive or personally identifiable information can be extracted from the model. Studies have shown that verbatim training data can resurface, especially in open-weight releases.

Differential Privacy offers a mathematical guarantee that prevents any single training example from significantly influencing the model. Unlike approaches that apply DP only during fine-tuning, VaultGemma enforces full private pretraining, ensuring that privacy protection begins at the foundational level.

https://services.google.com/fh/files/blogs/vaultgemma_tech_report.pdf

What Is the Architecture of VaultGemma?

VaultGemma is architecturally similar to earlier Gemma models, but optimized for private training.

  • Model size: 1B parameters, 26 layers.
  • Transformer type: Decoder-only.
  • Activations: GeGLU with feedforward dimension of 13,824.
  • Attention: Multi-Query Attention (MQA) with global span of 1024 tokens.
  • Normalization: RMSNorm in pre-norm configuration.
  • Tokenizer: SentencePiece with a 256K vocabulary.

A notable change is the reduction of sequence length to 1024 tokens, which lowers compute costs and enables larger batch sizes under DP constraints.

What Data Was Used for Training?

VaultGemma was trained on the same 13 trillion-token dataset as Gemma 2, composed primarily of English text from web documents, code, and scientific articles.

The dataset underwent several filtering stages to:

  • Remove unsafe or sensitive content.
  • Reduce personal information exposure.
  • Prevent evaluation data contamination.

This ensures both safety and fairness in benchmarking.

How Was Differential Privacy Applied?

VaultGemma used DP-SGD (Differentially Private Stochastic Gradient Descent) with gradient clipping and Gaussian noise addition. Implementation was built on JAX Privacy and introduced optimizations for scalability:

  • Vectorized per-example clipping for parallel efficiency.
  • Gradient accumulation to simulate large batches.
  • Truncated Poisson Subsampling integrated into the data loader for efficient on-the-fly sampling.

The model achieved a formal DP guarantee of (ε ≤ 2.0, δ ≤ 1.1e−10) at the sequence level (1024 tokens).

How Do Scaling Laws Work for Private Training?

Training large models under DP constraints requires new scaling strategies. The VaultGemma team developed DP-specific scaling laws with three innovations:

  1. Optimal learning rate modeling using quadratic fits across training runs.
  2. Parametric extrapolation of loss values to reduce reliance on intermediate checkpoints.
  3. Semi-parametric fits to generalize across model size, training steps, and noise-batch ratios.

This methodology enabled precise prediction of achievable loss and efficient resource use on the TPUv6e training cluster.

What Were the Training Configurations?

VaultGemma was trained on 2048 TPUv6e chips using GSPMD partitioning and MegaScale XLA compilation.

  • Batch size: ~518K tokens.
  • Training iterations: 100,000.
  • Noise multiplier: 0.614.

The achieved loss was within 1% of predictions from the DP scaling law, validating the approach.

How Does VaultGemma Perform Compared to Non-Private Models?

On academic benchmarks, VaultGemma trails its non-private counterparts but shows strong utility:

  • ARC-C: 26.45 vs. 38.31 (Gemma-3 1B).
  • PIQA: 68.0 vs. 70.51 (GPT-2 1.5B).
  • TriviaQA (5-shot): 11.24 vs. 39.75 (Gemma-3 1B).

These results suggest that DP-trained models are currently comparable to non-private models from about five years ago. Importantly, memorization tests confirmed that no training data leakage was detectable in VaultGemma, unlike in non-private Gemma models.

https://services.google.com/fh/files/blogs/vaultgemma_tech_report.pdf

Summary

In summary, VaultGemma 1B proves that large-scale language models can be trained with rigorous differential privacy guarantees without making them impractical to use. While a utility gap remains compared to non-private counterparts, the release of both the model and its training methodology provides the community with a strong foundation for advancing private AI. This work signals a shift toward building models that are not only capable but also inherently safe, transparent, and privacy-preserving.


Check out the Paper, Model on Hugging Face and Technical Details. Feel free to check out our GitHub Page for Tutorials, Codes and Notebooks. Also, feel free to follow us on Twitter and don’t forget to join our 100k+ ML SubReddit and Subscribe to our Newsletter.


Asif Razzaq is the CEO of Marktechpost Media Inc.. As a visionary entrepreneur and engineer, Asif is committed to harnessing the potential of Artificial Intelligence for social good. His most recent endeavor is the launch of an Artificial Intelligence Media Platform, Marktechpost, which stands out for its in-depth coverage of machine learning and deep learning news that is both technically sound and easily understandable by a wide audience. The platform boasts of over 2 million monthly views, illustrating its popularity among audiences.

Previous Post

Chinese brand Seaviv surprises the mini PC market with a Ryzen AI Max+ 395 mini PC that includes an SD 4.0 slot

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Google AI Releases VaultGemma: The Largest and Most Capable Open Model (1B-parameters) Trained from Scratch with Differential Privacy

by Tech Wavo
September 13, 2025
0
Google AI Releases VaultGemma: The Largest and Most Capable Open Model (1B-parameters) Trained from Scratch with Differential Privacy
News

Google AI Research and DeepMind have released VaultGemma 1B, the largest open-weight large language model trained entirely with differential privacy...

Read more

Chinese brand Seaviv surprises the mini PC market with a Ryzen AI Max+ 395 mini PC that includes an SD 4.0 slot

by Tech Wavo
September 13, 2025
0
Chinese brand Seaviv surprises the mini PC market with a Ryzen AI Max+ 395 mini PC that includes an SD 4.0 slot
Computers

Seaviv AIdeaStation R1 uses Ryzen AI Max+ 395 for demanding professional workloadsRadeon 8060S iGPU rivals RTX 5060 Laptop GPU performance...

Read more

HP ProBook 4 G1a business laptop review

by Tech Wavo
September 13, 2025
0
HP ProBook 4 G1a business laptop review
Computers

Why you can trust TechRadar We spend hours testing every product or service we review, so you can be sure...

Read more

ASML invests $1.5 billion in French startup Mistral AI to strengthen artificial intelligence use in chip development

by Tech Wavo
September 13, 2025
0
ASML invests $1.5 billion in French startup Mistral AI to strengthen artificial intelligence use in chip development
Computers

ASML invests €1.3 billion in French startup Mistral AI, securing an 11 percent stakePartnership will apply AI to ASML’s research...

Read more

Site links

  • Home
  • About Us
  • Contact Us
  • Privacy Policy
  • Terms of use
  • Home
  • About Us
  • Contact Us
  • Privacy Policy
  • Terms of use

No Result
View All Result
  • Home
  • Technology
  • Computers
  • Gadgets
  • Mobile
  • Apps
  • News
  • Financial
  • Stock