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Senior Principal Machine Learning Engineer, Foundational ModelsAutodeskUnited States
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Senior Principal Machine Learning Engineer, Foundational Models

Autodesk
  • US
    United States
  • US
    United States

Über

Job Requisition ID #
26WD94805
Senior Principal Machine Learning Engineer, Foundational Models
Position Overview
Autodesk is transforming the Architecture, Engineering, and Construction (AEC) industry by embedding advanced AI and foundation models into cloud-native platforms such as AutoCAD, Revit, Construction Cloud, and Forma.
As a Senior Principal
Machine Learning
Engineer, you will act as a technical leader and delivery owner for complex, high-impact ML initiatives spanning foundation models,
reinforcement
learning, data systems, and large-scale ML platforms. You will operate at the intersection of applied research, engineering, and product-setting technical direction while remaining hands-on in the areas of highest complexity and risk.
This role is designed for a senior ML tech lead with a proven track record of owning and delivering ML systems at scale, including training and operating models in large, distributed environments.
Reporting:
ML Development Manager, AEC Solutions
Location:
US or Canada (Remote or Hybrid)
Responsibilities
Technical Strategy & Leadership:
Define the long-term technical vision for Generative AI and Foundation
Model
infrastructure within the AEC Solutions team. Influence architectural decisions across the broader organization.
End-to-End Delivery:
Lead the design, development, and delivery of complex ML systems. Own the full lifecycle from
model
architecture selection and data strategy to distributed training and production deployment.
Foundation
Model
Engineering:
Drive the development of large-scale training pipelines. Collaborate with Research Scientists to translate experimental ideas (custom architectures, novel loss functions) into scalable, performant code.
Scalability & Infrastructure:
Architect solutions for distributed training (e.g., FSDP, Megatron-LM, DeepSpeed) on massive compute clusters. Identify and resolve bottlenecks in data processing and
model
parallelism to maximize training throughput.
Mentorship & Influence:
Mentor Principal and Senior engineers, fostering a culture of technical ownership, rigorous experimentation, and best practices. Act as a technical partner to Product Management and Engineering leadership.
Cross-Functional Collaboration:
Partner effectively with Data Engineering, Platform, and Research teams to integrate large-scale
multimodal
AEC data (
3D
geometry
, images, text) into
model
development workflows.
Operational Excellence:
Establish standards for
model
evaluation, versioning, monitoring, and MLOps best practices to ensure reproducibility and reliability in a high-stakes production environment.
Minimum Qualifications
Master's or
PhD
in a field related to AI/ML such as Computer Science, Mathematics, Statistics, Physics, Computational Linguistics, or related disciplines
10+ years of experience in
machine learning
, AI, or related fields, with a proven track record of technical leadership and hands-on implementation
Demonstrated experience mentoring engineers and leading technical projects in cross-functional environments
Proven history of leading the delivery of large-scale ML systems from conception to production
Expert-level understanding of deep learning architectures (Transformers, Diffusion models) and modern frameworks (
PyTorch
is required)
Hands-on experience with distributed training frameworks and techniques (e.g.,
PyTorch
Distributed, Ray, DeepSpeed, Megatron, CUDA optimization) in HPC or cloud environments (AWS/Azure)
Strong proficiency in Python, with an emphasis on performance profiling, debugging, and writing robust, maintainable production code
Excellent ability to translate complex technical concepts into clear insights for executive leadership and cross-functional partners
Preferred Qualifications
Experience with large foundation
model
training in distributed compute environments
Experience designing data pipelines for
multimodal
datasets at the terabyte/petabyte scale (using Spark, Iceberg, etc.)
Experience constructing internal developer platforms for ML, utilizing tools like Kubernetes, Slurm, or Metaflow
A portfolio demonstrating the successful translation of academic research papers into tangible product features
Background in AEC, computational
geometry
, or experience working with
3D
data representations (BIM, CAD, meshes, point clouds)
The Ideal Candidate
Owns outcomes, not just components
Has operated ML systems at real scale, including the messy parts
Brings strong technical judgment shaped by production experience
Thrives in ambiguous problem spaces and drives clarity
Enjoys mentoring senior engineers and shaping technical culture
Is motivated by delivering real-world impact at scale
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.
Are you an existing contractor or consultant with Autodesk? Please search for open jobs and apply internally (not on this external site). If you have any questions or require support, contact Autodesk Careers (Careers%20%3Ccareers@autodesk.com%3E) .
  • United States

Sprachkenntnisse

  • English
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