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Principal Machine Learning EngineerSan Francisco StaffingUnited States
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Principal Machine Learning Engineer

San Francisco Staffing
  • US
    United States
  • US
    United States

Über

Principal Machine Learning Engineer
We're passionate about delivering on Our Promise to improve the lives of patients and create healthier communities for all. We foster a culture of inclusivity, integrity, and creativity while boldly pursuing answers to the world's most complex health challenges and transforming society. Our Data, Analytics, and AI team is dedicated to solving complex healthcare challenges and improving patient outcomes. Data, Analytics, and AI empowers business partners across Commercial, Medical, and Government Affairs (CMG) to make impactful decisions by leveraging data, analytics, business products, and AI/ML to enable fast, targeted actions in rapidly evolving business contexts. Data, Analytics, and AI fosters a unified understanding of customers, actions, and outcomes by integrating analytics and insights seamlessly into CMG's evolving digital, data, and automation platforms, creating scalable solutions and eliminating silos. In Data, Analytics, and AI, you will work as a trusted, objective advisor and expert, recommending critical decisions and actions to be taken with credibility and a focus on driving measurable impact. You will be part of a thriving culture built on collaboration and innovation. The Principal Machine Learning Engineer leads the strategic design and development of advanced machine learning models, driving innovation and exploring emerging technologies. This role involves overseeing the entire lifecycle of ML models, ensuring they meet business and regulatory standards, and collaborating with cross-functional teams to integrate these models into existing systems. The Principal Machine Learning Engineer writes scalable, production-ready code, ensures models are explainable and robust, and contributes to the company's machine learning architecture. Key Job Responsibilities: Independently leads the strategic design and development of machine learning (ML) models across multiple projects. Innovates with different ML algorithms and architectures to optimize performance. Pushes the boundaries of machine learning, exploring emerging technologies for potential integration. Oversees the entire lifecycle of Machine Learning (ML) models, from conception to deployment, ensuring they meet business and regulatory standards. Uses feature engineering to prepare input data for building ML models and improving the accuracy and performance of those models. Writes efficient, scalable, and production-ready code for ML models, to be scaled and productionalized in partnership with ML Ops Engineer. Collaborates with data scientists to transition models from research to production with support from data leads, ML Operations, and Informatics (IX) team. Ensures ML models are explainable, fair, and robust. Uses ML frameworks like TensorFlow, PyTorch, or Scikit-learn. Collaborates with data scientists and data science product owners/managers to translate business requirements into ML models. Manages risks and dependencies and proactively addresses any challenges that arise. Contributes to the company's machine learning architecture in partnership with the IX team to support scalable and repeatable model training and deployment. Complies with all laws, regulations, and policies that govern the conduct of Genentech activities. Who You Are: Minimum Candidate Qualifications & Experience: 8 years of experience working in a machine learning engineer role or related experience. Bachelor's or Master's Degree in Computer Science or related discipline is preferred. Expert in ML frameworks and a proven track record of leading complex ML projects. Expertise in ML frameworks like TensorFlow, PyTorch, Scikit-learn, etc. Solid understanding of statistical methods and machine learning algorithms. Proficient with software engineering best practices, including agile development, code reviews, software change management, build processes, and testing. Ability to navigate in a cross-functional environment with appropriate agile-based approaches for sprint planning, backlog grooming, and timelines tracking. Ability to translate complex concepts into simple, easy-to-understand content for a non-technical audience. Additional Desired Candidate Qualifications & Experience: Extensive experience in designing and implementing cutting-edge data architectures and pipelines. Recognized expertise in the application of ML in highly regulated industries, with a focus on strategic impact. Experience building and optimizing structured and unstructured big data pipelines, architectures, and datasets. Excellent communication skills to effectively collaborate with cross-functional teams. Experience in healthcare, pharmaceutical, or highly regulated industries. Location: This position is based in South San Francisco, CA. Relocation Assistance is not available. The expected salary range for this position based on the primary location of South San Francisco, CA is $231,280 and $429,520. Actual pay will be determined based on experience, qualifications, geographic location, and other job-related factors permitted by law. A discretionary annual bonus may be available based on individual and Company performance. This position also qualifies for the benefits detailed at the link provided below.
  • United States

Sprachkenntnisse

  • English
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