The role involves researchers working to build foundation models that enhance Apple's products by applying AI techniques to real-world scenarios. The team focuses on advancing deep learning capabilities, particularly in areas like natural language processing and multi-modal understanding. Researchers will have opportunities to tackle significant challenges and identify unique applications of deep learning technologies. This position offers a chance to contribute to innovations that improve the user experience for millions.
Required Qualifications and Skills The position requires demonstrated expertise in deep learning and a strong publication record in relevant conferences. Proficiency in programming with Python and experience with deep learning toolkits like JAX, PyTorch, or TensorFlow are necessary. Candidates should have the ability to work collaboratively in a team environment. A PhD or equivalent practical experience in Computer Science or a related technical field is required for this role.
The company is at the forefront of integrating AI into user experiences, particularly through natural language processing and machine learning to innovate text input and interaction technologies on its platforms. They have developed and implemented advanced generative models for text generation, such as Transformer models, to provide features like auto-correction, sentence level correction, and inline completions. The representation of Apple as a leader in creating seamless input experiences through the exceptional integration of hardware and software, alongside a commitment to privacy, underlines their dedication to leveraging powerful on-device ML. This role offers a chance to contribute to a team that has a significant history and expertise in NLP and ML, impacting users globally across all Apple platforms.
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