What are the responsibilities and job description for the Staff Machine Learning Engineer position at Terra AI?
Role description
In the same way image generators have shown the remarkable ability to produce a diverse set of realistic pictures conditioned on a text prompt (and other inputs), we are developing a generative model that produces 3D geological models conditioned on geophysical surveys, bore hole measurements, and other forms of physical observation. The outputs of the generative capture what we know and don’t know about the state of the subsurface, allowing explorers to make maximally informed decisions about how and where to explore for critical resources.
We are looking for a talented deep learning engineer or scientist to lead the development of this model that will revolutionize decision making in the earth subsurface for a wide range of clean energy applications.
Role Responsibilities
Design, train, test, and iterate on diffusion models for 3D geological models
Design, train, test, and iterate on an approach to for conditioning generation on geophysical data and other observations
Inform the generation of synthetic data to improve model performance
Adapt diffusion modeling approach to specific real-world projects in collaboration with project teams.
Qualifications
Required Qualifications :
Extensive PyTorch Experience
Deep understanding of PyTorch, including writing custom modules, optimizing training, and debugging issues in large-scale models.
Expertise in Developing Large Deep Learning Models from Scratch
Proven ability to design, implement, and train complex deep learning architectures from the ground up.
Data Curation Skills
Hands-on experience in creating, cleaning, and maintaining high-quality datasets tailored for machine learning applications.
Strong Software Engineering and Design Experience
Proficient in software development best practices, including version control, testing, and code optimization.
Familiarity with designing scalable and maintainable systems.
Bonus points if you :
Experience with Generative Models
Familiarity with generative architectures, particularly diffusion models, and an emphasis on posterior sampling methods.
Knowledge of Transformer Architectures
Experience building and training transformers, especially in applications involving 3D data.
Scaling Models Across Large GPU Clusters
Expertise in parallelizing models across multiple GPUs and optimizing distributed training pipelines.
Cloud Infrastructure Expertise
Experience setting up, managing, and optimizing cloud environments for machine learning workloads, including provisioning resources and managing costs.
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