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Machine Learning Research Engineer, 3D
Autodesk
Design and make software for architecture, engineering, construction, and entertainment industries.
Develop and manage large multimodal 3D data pipelines for generative AI at Autodesk.
Write robust, testable code that is well-documented and easy to understand.
Own and lead engineering projects in the area of data acquisition, ingestion, curation and benchmarking.
Work with our legal and trust teams to ensure compliant and ethical use of data.
Conduct and analyze experiments on data to provide insights to other researchers and leadership.
Organize and curate large, unstructured, disparate multi-modal (text, images, 3D models, code snippets, metadata) data sources into a unified format suitable for machine learning.
Develop and deploy highly scalable data pipelines for machine learning.
What you bring
linux
ml
cad
ray
spark
msc/phd
Excellent communication skills to document code, produce visualizations, and present findings from experiments.
Experience with computational geometry, CAD data, and 3D formats such as meshes, boundary representations (BReps), or implicit representations.
Strong data modelling, architecture, and processing skills with varied data representations including 2D and 3D geometry.
Proficiency with Linux, cloud, version control, testing and deployment pipelines.
Demonstrates curiosity, creativity, and self-motivation, with a collaborative mindset and the flexibility to adapt to new challenges and evolving research directions.
Experience with collecting human data for training and evaluating ML models.
Familiarity with the latest developments in ML models, datasets, training pipelines, and benchmarks, and the ability to translate new research into practical tools and workflows.
Experience working with large multimodal machine learning datasets.
Excellent software engineering skills, including ML implementation and distributed frameworks (e.g. Multiprocessing, Ray, Spark).
Strong publication record related to ML, datasets and benchmarks.
MSc or PhD in Computer Science, Engineering, or a related technical discipline.
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