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Machine Learning Engineering Manager United States Jobs (On-site work)

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Engineering Manager - Machine Learning
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Lead a Machine Learning team in New York, building and scaling ML systems for financial growth and personalization. You'll need 7+ years of ML experience and 3+ years in management, with deep expertise in modern techniques. Partner with product teams to drive revenue and shape Plaid's ML ecosyste...
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United States , New York
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268000.00 - 400000.00 USD / Year
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Plaid
Expiration Date
Until further notice
Engineering Manager - Machine Learning
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Lead a Machine Learning team in San Francisco, building impactful models for financial growth and personalization. You'll manage engineers and data scientists, driving ML systems from concept to production. Requires 7+ years ML experience and 3+ years in leadership. Enjoy full benefits, equity, a...
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United States , San Francisco
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268000.00 - 400000.00 USD / Year
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Plaid
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Until further notice
Machine Learning Engineering Manager, Recommendations
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Lead the vision and build Suno's music recommendation systems from the ground up in San Francisco. We seek a manager with 5+ years scaling recommender systems and 2+ years leading teams. You'll shape discovery for millions while growing your team, supported by generous equity, unlimited PTO, and ...
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United States , San Francisco
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280000.00 - 350000.00 USD / Year
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Suno
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Until further notice
Looking for Machine Learning Engineering Manager jobs? This senior leadership role sits at the critical intersection of advanced artificial intelligence, software engineering, and product development. A Machine Learning Engineering Manager is responsible for building, mentoring, and leading a team of machine learning engineers, applied scientists, and often MLOps specialists. Their core mission is to translate cutting-edge ML research and models—especially in high-demand areas like Large Language Models (LLMs) and generative AI—into reliable, scalable, and impactful production systems that drive business value. Professionals in these jobs typically shoulder a dual mandate of deep technical leadership and people management. On the technical side, they define the architectural vision and roadmap for ML initiatives. This involves making key decisions on system design, selecting appropriate technologies (such as model training frameworks, vector databases, and orchestration tools), and establishing robust MLOps practices for continuous integration, deployment, and monitoring. They ensure their team follows best practices in model evaluation, performance optimization, and responsible AI, including safety, fairness, and data governance. A significant part of the role is navigating the full ML lifecycle, from prototyping and experimentation to large-scale training, deployment, and iterative improvement. From a leadership perspective, Machine Learning Engineering Managers are talent cultivators and strategic partners. They recruit top-tier engineers, provide mentorship to grow both technical depth and product acumen, and foster a culture of innovation and ownership. They act as the crucial bridge between the research/data science organization, product teams, and infrastructure groups, aligning technical execution with business objectives. This requires exceptional communication skills to articulate complex technical concepts to non-technical stakeholders and to advocate for resources and strategic direction. Typical requirements for these high-level jobs include a substantial background in software engineering and machine learning, often with an advanced degree in Computer Science or a related field. Candidates are expected to have 8+ years of industry experience, with at least 3+ years in a direct people-management role leading ML teams. Hands-on expertise with modern deep learning stacks (e.g., PyTorch, TensorFlow), cloud platforms, and distributed systems is essential. Perhaps most importantly, successful candidates demonstrate a proven track record of shipping and maintaining ML-powered products in real-world environments, combining strategic vision with the practical execution needed to turn AI potential into production reality. If you are a leader passionate about guiding teams to solve complex problems with machine learning, exploring Machine Learning Engineering Manager jobs could be your next career step.

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