Machine Learning Architect - Conversational Speech
The Speech organization within Siri drives major speech recognition, synthesis, and speech-to-speech model advances for features deeply embedded throughout Apple's ecosystem. Our mission is to build cutting-edge infrastructure, datasets, and models that empower Siri conversational AI, dictation, and speech-enabled Apple Intelligence features across natural language understanding, dialog generation, speech recognition, and multimodal interaction. We apply these technologies to create engaging, intelligent, and personalized conversational experiences for millions of Apple users.
We are seeking a Machine Learning Architect to serve as a senior technical leader spanning the full Speech organization. You will set the future modeling direction for all of conversational speech—charting the architectural and algorithmic course for how Apple's speech technologies evolve. You will operate as a hands-on expert who not only defines strategy but also digs into the hardest technical problems, working shoulder-to-shoulder with teams to overcome critical obstacles. Reporting directly to the Speech organization leadership, you will have broad visibility and influence across speech recognition, synthesis, dialog, multimodal foundation models, and speech-to-speech systems, ensuring coherent technical vision and cross-team alignment.
Minimum Qualifications
10+ years of experience in machine learning applied to speech or multimodal systems, with progressively increasing technical scope and leadership.
Demonstrated expertise as a technical leader or architect who has defined modeling direction across multiple teams or product areas.
Deep, hands-on proficiency in modern deep learning, including large language models and end-to-end speech systems.
Significant experience with multimodal LLMs, including architecture design, training, adaptation, and deployment of models that integrate speech, audio, and text modalities.
Direct experience building speech-to-speech conversational systems, with a strong understanding of full-duplex natural conversational interaction and end-to-end speech pipelines.
A track record of translating research into production-quality systems at scale.
Expert programming skills in Python and deep learning frameworks such as PyTorch, JAX, or TensorFlow.
Preferred Qualifications
Ph.D. in Computer Science, Electrical Engineering, Machine Learning, or similar technical field.
Experience architecting or leading development of full-duplex natural conversational systems, speech-to-speech models, or multimodal foundation models that have shipped to large-scale user populations.
Deep familiarity with the full stack of speech technologies—ASR, TTS, spoken dialog, speaker modeling, audio understanding—and an ability to reason about their interactions and dependencies.
Experience with large-scale distributed training and the infrastructure considerations that shape model design at scale.
A data-centric perspective on foundation model development, including experience guiding data collection, curation, annotation, and quality strategies.
Experience with on-device ML deployment, including model compression, quantization, and latency-aware architecture design.