×
How this online gifting site protects customer privacy with Meta’s AI tools
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

Innovative privacy protection in AI-driven gift recommendations: Untukmu.AI, an Indonesian personalized gift recommendation platform, has developed a unique approach to safeguarding customer data privacy using Llama on edge devices.

  • The company has created a semi-decentralized personal assistant that prevents direct access to customer data while still providing personalized recommendations.
  • This innovative solution addresses growing concerns about data privacy and the protection of Personally Identifiable Information (PII) in the post-cookie era.

Technical implementation of split inference: Untukmu.AI’s Senior ML Engineer, Puja Romulus, devised a split inference approach to balance privacy concerns with computational feasibility.

  • Customer data is stored only on edge devices and user accounts, ensuring the company doesn’t have direct access to sensitive information.
  • The Llama 3.1 8B model is split across two checkpoints: the first transformer layer runs on edge devices, while the remaining 31 layers and output layer operate in the cloud.
  • This approach allows the use of the original model without quantization, maintaining output quality while addressing privacy issues.

Advantages of Llama for privacy-preserving applications: The Untukmu.AI team selected Llama 3.1 8B after evaluating several open weight models for their specific needs.

  • Llama 3.1 8B offered an optimal balance between output quality and resource efficiency for entity extraction and product recommendation tasks.
  • The model performed well without requiring fine-tuning, making it an attractive choice for the company.
  • The potential for future multimodal versions of Llama, such as the rumored 405B model, further solidified the decision to use this technology.

The split inference process: The innovative approach developed by Untukmu.AI involves a multi-step process to protect user data while generating personalized recommendations.

  • Predefined prompts from Untukmu.AI or third parties are sent to users and merged with their personal data on edge devices.
  • The merged prompt is processed at the edge to generate a first-layer tensor, which is then sent to the server for further computation.
  • This iterative process continues until a stop token is detected, at which point the server converts the token list into full text.
  • The final output is sent back to both the user and the third party, ensuring transparency and data privacy throughout the process.

Data visibility and user control: Untukmu.AI’s approach prioritizes user control and transparency in data handling.

  • Users have full access to all their information and can monitor how their data is used.
  • The company only has access to non-personal data, while third-party providers can view their own prompts and the resulting output but not customers’ personal data.
  • This policy ensures that sensitive information remains protected while still allowing for personalized recommendations and services.

Potential applications and future directions: The split inference approach developed by Untukmu.AI has broad implications for industries dealing with sensitive user data.

  • Sectors managing large volumes of unorganized data while needing to protect sensitive information can benefit from deploying Llama for split inference processing.
  • Untukmu.AI is focused on implementing split inference with larger Llama models to further improve output quality while maintaining strong privacy protections.
  • The company continues to explore innovative ways to safeguard customer data, recognizing the growing importance of privacy-preserving technologies in the AI-driven marketplace.

Broader implications for AI and privacy: Untukmu.AI’s innovative approach to privacy protection in AI-driven recommendations highlights the evolving landscape of data privacy and AI implementation.

  • As concerns about data privacy continue to grow, solutions like split inference may become increasingly essential for companies looking to leverage AI capabilities while respecting user privacy.
  • This approach could potentially set a new standard for privacy-preserving AI applications, encouraging other companies to develop similar solutions that balance advanced AI capabilities with robust data protection measures.
  • The success of Untukmu.AI’s implementation may also spur further research and development in privacy-preserving AI technologies, potentially leading to new breakthroughs in this critical area of AI ethics and implementation.
How an online gifting site is using Llama to help protect customer privacy

Recent News

Nvidia’s new AI agents can search and summarize huge quantities of visual data

NVIDIA's new AI Blueprint combines computer vision and generative AI to enable efficient analysis of video and image content, with potential applications across industries and smart city initiatives.

How Boulder schools balance AI innovation with student data protection

Colorado school districts embrace AI in classrooms, focusing on ethical use and data privacy while preparing students for a tech-driven future.

Microsoft Copilot Vision nears launch — here’s what we know right now

Microsoft's new AI feature can analyze on-screen content, offering contextual assistance without the need for additional searches or explanations.