Uber
Staff Machine Learning Engineer - Applied AI
Uber, San Francisco, California, United States, 94199
Overview
Applied AI is a horizontal AI team at Uber partnering with product and platform teams across the company to deliver cutting-edge machine learning solutions for core business problems. We specialize in areas like Generative AI, Computer Vision, Personalization, and the ML infrastructure needed to scale these systems in production. We’re looking for a Staff Engineer with deep expertise in machine learning, generative AI, and ML systems design to lead technically complex projects and influence the architecture of ML at Uber. This role also values expertise in speech and audio ML, which will play a key role in building the next generation of voice-based generative AI solutions. This is a great opportunity for a strong technical leader who thrives in a fast-paced, product-driven environment and wants to be at the forefront of applied AI at scale. What You’ll Do
Lead technical execution of projects spanning classical ML, deep learning, and generative AI (e.g., LLMs, multimodal models). Define and influence technical direction for Applied AI initiatives, including system design, model architecture, and infrastructure. Collaborate with product, science, and engineering teams to align ML innovations with business impact. Champion best practices in ML development: experimentation workflows, evaluation, deployment, monitoring, and responsible AI. Mentor engineers across Applied AI and partner orgs, raising the technical bar through leadership and guidance. Basic Qualifications
10+ years of industry experience in ML or software engineering, with a proven record of delivering ML solutions to production. Strong knowledge of machine learning, deep learning, and exposure to generative AI techniques (e.g., transformers, LLMs, diffusion). Experience designing and scaling ML systems or platforms, including training pipelines, serving infrastructure, and model lifecycle tooling. Fluency in ML frameworks (e.g., PyTorch, TensorFlow, JAX) and development in Python and/or scalable backend languages (e.g., Java, Go). Excellent collaboration and communication skills with the ability to work across teams and functions. Preferred qualifications
PhD in Computer Science, Machine Learning, or a related field. Hands-on experience integrating LLMs and generative models into product experiences (e.g., conversational assistants, summarization, multimodal AI). Demonstrated experience with speech and audio ML: ASR (automatic speech recognition), TTS (text-to-speech, expressive voice synthesis), voice embeddings (speaker verification, personalization), noise robustness & enhancement for real-world audio. Experience optimizing models for real-time or resource-constrained environments (mobile, edge, or embedded systems). Track record of technical leadership in multi-disciplinary ML projects involving engineering, data science, and product. Seniority level
Not Applicable Employment type
Full-time Job function
Engineering and Information Technology Industries
Internet Marketplace Platforms
#J-18808-Ljbffr
Applied AI is a horizontal AI team at Uber partnering with product and platform teams across the company to deliver cutting-edge machine learning solutions for core business problems. We specialize in areas like Generative AI, Computer Vision, Personalization, and the ML infrastructure needed to scale these systems in production. We’re looking for a Staff Engineer with deep expertise in machine learning, generative AI, and ML systems design to lead technically complex projects and influence the architecture of ML at Uber. This role also values expertise in speech and audio ML, which will play a key role in building the next generation of voice-based generative AI solutions. This is a great opportunity for a strong technical leader who thrives in a fast-paced, product-driven environment and wants to be at the forefront of applied AI at scale. What You’ll Do
Lead technical execution of projects spanning classical ML, deep learning, and generative AI (e.g., LLMs, multimodal models). Define and influence technical direction for Applied AI initiatives, including system design, model architecture, and infrastructure. Collaborate with product, science, and engineering teams to align ML innovations with business impact. Champion best practices in ML development: experimentation workflows, evaluation, deployment, monitoring, and responsible AI. Mentor engineers across Applied AI and partner orgs, raising the technical bar through leadership and guidance. Basic Qualifications
10+ years of industry experience in ML or software engineering, with a proven record of delivering ML solutions to production. Strong knowledge of machine learning, deep learning, and exposure to generative AI techniques (e.g., transformers, LLMs, diffusion). Experience designing and scaling ML systems or platforms, including training pipelines, serving infrastructure, and model lifecycle tooling. Fluency in ML frameworks (e.g., PyTorch, TensorFlow, JAX) and development in Python and/or scalable backend languages (e.g., Java, Go). Excellent collaboration and communication skills with the ability to work across teams and functions. Preferred qualifications
PhD in Computer Science, Machine Learning, or a related field. Hands-on experience integrating LLMs and generative models into product experiences (e.g., conversational assistants, summarization, multimodal AI). Demonstrated experience with speech and audio ML: ASR (automatic speech recognition), TTS (text-to-speech, expressive voice synthesis), voice embeddings (speaker verification, personalization), noise robustness & enhancement for real-world audio. Experience optimizing models for real-time or resource-constrained environments (mobile, edge, or embedded systems). Track record of technical leadership in multi-disciplinary ML projects involving engineering, data science, and product. Seniority level
Not Applicable Employment type
Full-time Job function
Engineering and Information Technology Industries
Internet Marketplace Platforms
#J-18808-Ljbffr