Parallel Domain
AI

Senior Machine Learning Engineer, Diffusion Reconstruction

Parallel Domain · Karlsruhe, ND, US

Actively hiring Posted 5 months ago

Role overview

  • + We are seeking a Senior Machine Learning Engineer to advance the state of learned reconstruction for Replica. In this role, you will drive development of feed-forward and diffusion-based models for 3D and spatiotemporal reconstruction and work closely with cross-functional teams to integrate these models into production systems.

Responsibilities

  • + Develop innovative ML models: Design and implement video-to-video diffusion models and efficient 4D feed-forward reconstruction methods. Improve scalability and performance: Optimize models and pipelines to support large-scale Replica environments. Productionize research: Ship robust, documented ML components integrated with Replica tooling. Collaborate cross-functionally: Engage with simulation, rendering, and infrastructure engineers to deliver end-to-end solutions.
  • Improve scalability and performance: Optimize models and pipelines to support large-scale Replica environments.
  • Productionize research: Ship robust, documented ML components integrated with Replica tooling.
  • Collaborate cross-functionally: Engage with simulation, rendering, and infrastructure engineers to deliver end-to-end solutions.
  • + Advanced degree: MS or PhD in ML, computer vision, robotics, or related field. Deep ML expertise: Experience with deep learning frameworks (e.g., PyTorch) and large model development. Strong engineering skills: Experience taking ML prototypes into production quality code. Experience with 3D vision or reconstruction: Demonstrated knowledge of modern 3D representation learning. Generative model background: Experience with diffusion models or neural rendering.
  • Deep ML expertise: Experience with deep learning frameworks (e.g., PyTorch) and large model development.
  • Strong engineering skills: Experience taking ML prototypes into production quality code.
  • Experience with 3D vision or reconstruction: Demonstrated knowledge of modern 3D representation learning.
  • Generative model background: Experience with diffusion models or neural rendering.
  • + Hands-on experience: Demonstrated experience in developing and deploying production-level machine learning models. Research background: Familiarity with academic research in video diffusion models, LoRA fine-tuning, or feed-forward reconstruction. Industry knowledge: Understanding of the autonomous systems landscape and the potential applications of machine learning in this domain. Publication record: Publications in top-tier conferences or journals related to machine learning.
  • Research background: Familiarity with academic research in video diffusion models, LoRA fine-tuning, or feed-forward reconstruction.
  • Industry knowledge: Understanding of the autonomous systems landscape and the potential applications of machine learning in this domain.
  • Publication record: Publications in top-tier conferences or journals related to machine learning.

Benefits

  • + Competitive compensation: Dependent on your skills, qualifications, experience, and location. Impactful work: The chance to contribute to the advancement of autonomous systems and AI. Collaborative culture: A dynamic and supportive work environment where your ideas are valued. Professional growth: Opportunities to learn and develop your skills in a cutting-edge field.
  • Impactful work: The chance to contribute to the advancement of autonomous systems and AI.
  • Collaborative culture: A dynamic and supportive work environment where your ideas are valued.
  • Professional growth: Opportunities to learn and develop your skills in a cutting-edge field.

Tags & focus areas

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Fulltime Machine Learning Computer Vision Robotics Ai