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Large Language Model Machine Learning Engineer - Seattle Washington
Company: Apple Inc. Location: Seattle, Washington
Posted On: 01/21/2025
Seattle, Washington, United StatesMachine Learning and AIThe VCV-Science Model Optimization and Algorithms Development team brings innovative AI research into Apple products.DescriptionWe are looking for strong ML applied scientists and engineers to build groundbreaking AI infrastructures to power the infrastructures that Apple in-house ML experts use every day to optimize models shipped on devices and servers for Apple Intelligence. We are part of a collaborative group of software developers and deep learning authorities working in the area of neural network optimization, on-device inference, and model evaluation. You will work with world-class talents in visualization, LLM training, on-device optimization, and ML tools/platforms. You will develop reliable and scalable web services for ML developers: e.g., model optimization pipeline, effective ML dev workflow, and infrastructure to serve internal service.Minimum Qualifications - Experience developing/optimizing/training large language models (LLMs), large computer vision models, or generative AI models.
- Software engineering skills in Python and general-purpose system admin and infrastructure management abilities.
- History of applied research in neural network model life cycle or training or a related area application.
- Track record to drive scientific investigations and experiments and overcome obstacles and uncertainty in a research environment.
- BS degree and 3+ years of proven experience.Preferred Qualifications
- Publication record at top AI/ML venues.
- Experience with LLM LoRA fine-tuning, neural network optimization (e.g., quantization and compression).
- Experience with on-device/server scale deployment.
- Experience with languages like C/C++.
- Infrastructure management and debugging experience.
- Experimental rigor when training/evaluating LLMs for the purpose of benchmarking LLM optimization algorithms.
- Strong communication and accountability skills; hard-working, strong work ethic, and collaboration abilities.
- PHD in a related field.Additional Requirements
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