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Senior ML Engineer United States, San Francisco Jobs

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Senior Software Engineer - ML Infrastructure
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Join Plaid's ML Infrastructure team in San Francisco as a Senior Software Engineer. You will design and build scalable platforms for feature stores, pipelines, and ML Ops tooling. This role requires 5+ years of experience in ML/AI infrastructure and distributed systems. Enjoy comprehensive benefi...
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United States , San Francisco
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Salary
180000.00 - 270000.00 USD / Year
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Plaid
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Until further notice
Senior Software Engineer - Network Enablement (Applied ML)
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Join Plaid in San Francisco as a Senior Software Engineer in Applied ML. You will build and deploy real-time ML systems, integrating model inference into product APIs and backend flows. We seek strong backend skills in Go/Python, with experience in feature stores, model CI/CD, and data pipelines....
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United States , San Francisco
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180000.00 - 270000.00 USD / Year
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Plaid
Expiration Date
Until further notice
Senior ML Infrastructure Engineer
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Join Parametric in San Francisco as a Senior ML Infrastructure Engineer. Build the core systems powering our robotics autonomy stack from the ground up. You'll design production-grade infrastructure for the full ML lifecycle, enabling rapid iteration. This early-stage role requires expertise in c...
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United States , San Francisco
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150000.00 - 210000.00 USD / Year
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YC Work at a Startup
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Until further notice
Senior ML Engineer jobs represent the pinnacle of technical leadership in the rapidly evolving field of artificial intelligence. Professionals in these roles are the critical bridge between theoretical data science and robust, scalable production systems. They are responsible for the entire machine learning lifecycle, transforming prototypes into reliable, high-impact applications that drive business value. A Senior ML Engineer typically possesses a deep blend of software engineering rigor, data architecture expertise, and applied machine learning knowledge, ensuring that models are not just accurate but also efficient, maintainable, and integrated seamlessly into broader technology ecosystems. The core responsibilities of a Senior Machine Learning Engineer are multifaceted. They design, build, and maintain scalable data pipelines and infrastructure specifically optimized for ML workloads, which includes managing data ingestion, transformation (ETL/ELT), and storage solutions like feature stores and vector databases. A significant part of the role involves developing end-to-end ML pipelines that encompass data preparation, model training, validation, deployment (MLOps), and continuous monitoring in production. This includes implementing automated processes for retraining, performance tracking, and drift detection to ensure model longevity and accuracy. With the rise of Generative AI, these roles increasingly involve productionizing LLM-based applications and agentic workflows, focusing on aspects like latency, cost optimization, and observability. Furthermore, Senior ML Engineers enforce best practices around versioning, testing, and reproducibility using frameworks like MLflow. They ensure all systems adhere to stringent governance, security, and compliance standards while often leading strategic initiatives and mentoring junior team members. To excel in Senior ML Engineer jobs, candidates generally need a strong foundation in computer science principles, statistics, and software engineering. A relevant Bachelor's or Master's degree is commonly required, coupled with 5+ years of hands-on experience in ML engineering or a closely related field. Proficiency in programming languages like Python and SQL is essential, along with extensive experience with cloud platforms (AWS, Azure, GCP) and big data technologies such as Apache Spark. Deep practical knowledge of machine learning frameworks (e.g., TensorFlow, PyTorch, Scikit-learn) and MLOps tools is mandatory. For modern roles, familiarity with NLP concepts, LLM application development frameworks (e.g., LangChain), and prompt engineering is highly valuable. Beyond technical skills, successful Senior ML Engineers demonstrate strong problem-solving abilities, clear communication to collaborate effectively with data scientists and business stakeholders, and a proactive, agile mindset to navigate the fast-paced AI landscape. They are leaders who drive innovation, set engineering standards, and take ownership of delivering complex, production-ready AI solutions.

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