Senior Principal Machine Learning Engineer, ML Platform and Systems ArchitectureAutodesk • Richmond, Virginia, United States
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Senior Principal Machine Learning Engineer, ML Platform and Systems Architecture
Autodesk
- Richmond, Virginia, United States
- Richmond, Virginia, United States
Über
Define and lead technical strategy for a domain or large-scale platform supporting machine learning systems Drive architecture decisions across teams for scalable training, data, evaluation, deployment, observability, and reliability systems Lead multi-team initiatives with far-reaching technical impact across a function, platform, or division Define technical direction for data pipelines that support large-scale structured and semi-structured technical datasets Set standards for data lineage, provenance, governance, and responsible data usage in ML systems Lead architecture for distributed data processing and orchestration systems such as Ray, Airflow, Spark, or similar platforms Define scalable approaches for model deployment, inference services, monitoring, and observability for production ML systems Influence platform direction for ML-ready representations of geometry, graph, hierarchical, or multimodal data Influence standards for engineering quality, architecture, resiliency, risk management, and operational excellence Identify long-term technical and operational risks and guide investment decisions that future-proof platform capabilities Serve as a technical authority and trusted advisor to engineering leaders, senior engineers, and cross-functional stakeholders Resolve complex cross-team technical problems by framing options, aligning stakeholders, and driving execution Champion engineering practices that improve service quality, release readiness, monitoring, incident response, and maintainability Mentor senior engineers and help build the next level of technical leadership within the organization Clearly articulate the business rationale for technical investments and ensure alignment with broader organizational goals
Minimum Qualifications
Bachelor’s or Master’s degree in Computer Science, Engineering, or a related field, or equivalent industry experience At least 8 years of industry experience in software engineering, ML platform architecture, distributed systems, or related domains, including experience driving architecture, cross-team technical direction, and large-scale platform outcomes Significant experience in software architecture, distributed systems, platform engineering, or ML infrastructure at scale Deep expertise in one or more critical areas such as distributed training, data platforms, ML platform architecture, model serving, or reliability engineering Proven record of leading technical strategy and delivering cross-team outcomes with broad organizational impact Strong command of cloud-native architectures, production engineering practices, and large-scale system design Demonstrated ability to influence architecture and engineering standards beyond a single team Strong executive-level communication and the ability to connect technical direction to business priorities
Preferred Qualifications
Experience setting architecture direction for ML platforms used across multiple teams or organizations Experience building or scaling data pipelines for large-scale structured and semi-structured technical datasets Experience with data lineage, provenance, governance, and responsible data usage in ML systems Experience with distributed data processing and orchestration systems such as Ray, Airflow, Spark, or similar platforms Experience with model deployment, inference services, monitoring, and observability for production ML systems Experience building ML-ready representations for geometry, graph, hierarchical, or multimodal data Experience building or scaling foundation model infrastructure and high-throughput data systems Experience leading engineering improvements around resiliency, service reviews, fire drills, and risk reduction Familiarity with AEC, design technology, BIM/CAD ecosystems, or Autodesk products External technical leadership through architecture leadership, speaking, or domain expertise is a plus
The Ideal Candidate
Is a deeply technical leader who still operates effectively in hands-on engineering contexts Thinks in systems, platforms, and multi-year strategy Leads through influence, judgment, and clarity Builds alignment across teams while holding a high bar for technical excellence
Benefits From health and financial benefits to time away and everyday wellness, we give Autodeskers the best, so they can do their best work. Learn more about our benefits in the U.S. by visiting https://benefits.autodesk.com/ Salary transparency Salary is one part of Autodesk’s competitive compensation package. For U.S.-based roles, we expect a starting base salary between $178,875 and $320,650. Offers are based on the candidate’s experience and geographic location, and may exceed this range. In addition to base salaries, our compensation package may include annual cash bonuses, commissions for sales roles, stock grants, and a comprehensive benefits package. Equal Employment Opportunity At Autodesk, we’re building a diverse workplace and an inclusive culture to give more people the chance to imagine, design, and make a better world. Autodesk is proud to be an equal opportunity employer and considers all qualified applicants for employment without regard to race, color, religion, age, sex, sexual orientation, gender, gender identity, national origin, disability, veteran status or any other legally protected characteristic. We also consider for employment all qualified applicants regardless of criminal histories, consistent with applicable law. Diversity & Belonging We take pride in cultivating a culture of belonging where everyone can thrive. Learn more here: https://www.autodesk.com/company/diversity-and-belonging #J-18808-Ljbffr
Sprachkenntnisse
- English
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