00:00:00

Share Your Feedback 🏝️

Apple LFM | Tech Report

Apple LFM | Tech Report

MinWoo(Daniel) Park | Tech Blog

Read more
Previous: A Survey | Context Engineering for LLMs Next: Seed-X

Apple LFM | Tech Report

  • Related Project: Private
  • Category: Paper Review
  • Date: 2025-07-21

Apple Intelligence Foundation Language Models: Tech Report 2025

  • url https://arxiv.org/abs/2507.13575
  • pdf https://arxiv.org/pdf/2507.13575
  • html: https://arxiv.org/html/2507.13575v1
  • abstract We introduce two multilingual, multimodal foundation language models that power Apple Intelligence features across Apple devices and services: i a 3B-parameter on-device model optimized for Apple silicon through architectural innovations such as KV-cache sharing and 2-bit quantization-aware training; and ii a scalable server model built on a novel Parallel-Track Mixture-of-Experts PT-MoE transformer that combines track parallelism, mixture-of-experts sparse computation, and interleaved global-local attention to deliver high quality with competitive cost on Apple’s Private Cloud Compute platform. Both models are trained on large-scale multilingual and multimodal datasets sourced via responsible web crawling, licensed corpora, and high-quality synthetic data, then further refined with supervised fine-tuning and reinforcement learning on a new asynchronous platform. The resulting models support several additional languages while understanding images and executing tool calls. In public benchmarks and human evaluations, both the server model and the on-device model match or surpass comparably sized open baselines. A new Swift-centric Foundation Models framework exposes guided generation, constrained tool calling, and LoRA adapter fine-tuning, allowing developers to integrate these capabilities with a few lines of code. The latest advancements in Apple Intelligence models are grounded in our Responsible AI approach with safeguards like content filtering and locale-specific evaluation, as well as our commitment to protecting our users’ privacy with innovations like Private Cloud Compute.
Previous: A Survey | Context Engineering for LLMs Next: Seed-X

post contain ""

    No matching posts found containing ""