Machine Learning Research Engineer

Oxman

$100K — $150K *
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • 5-7 years in machine learning or related fields with a focus on geospatial applications.
  • Ph.D. in Computer Science, Machine Learning, Operations Research, or closely related domain.
  • Experience with deploying geospatial ML models or generative models in practical scenarios.
  • Background in collaborative projects that integrate ML with ecological, architectural, or design principles.
  • Familiarity with GIS tools and remote sensing technologies is advantageous.

Responsibilities

  • Develop ML models for geospatial inference of ecosystem metrics.
  • Refine deep generative models and reinforcement learning algorithms for design.
  • Contribute to decision frameworks using procedural generation with ML optimization.
  • Collaborate with ecologists and data scientists on generative design integration.
  • Align design outcomes with ecological performance metrics like biodiversity.
  • Document technical processes and validate models with empirical data.

Benefits

  • Work within a multidisciplinary team dedicated to innovative ecosystem design.
  • Opportunities for ongoing research and development in emerging fields.
  • Engagement with advanced geospatial AI technology impacts on real-world applications.
  • A culture that supports collaboration across diverse domains like ecology and architecture.
Full Job Description
Key Responsibilities
  • Develop machine learning models for geospatial inference of key ecosystem metrics, leveraging geospatial AI to synthesize environmental data into actionable parameters for ecosystem design and simulation.
  • Develop and refine advanced deep generative models and reinforcement learning algorithms for built-environment design.
  • Contribute to decision-making frameworks that combine procedural generation with ML and data-driven optimization.
  • Collaborate with computational ecologists and data scientists to integrate generative design with ecosystem simulation models.
  • Align design outputs with ecological performance indicators such as species richness and carbon sequestration.
  • Prepare detailed technical documentation and contribute to model validation using empirical ecological data.


Key Goals and Outcomes
  • Research and development of high-fidelity Geospatial AI models for the automated inference of ecosystem metrics across varied scales.
  • Utilize inferred geospatial data to drive the computational synthesis and design of functional, resilient ecosystems.
  • Establish a robust pipeline for integrating remote sensing and geospatial data into generative design workflows.
  • Deliver scalable ML frameworks that provide real-time or near-real-time feedback on ecological performance (e.g., carbon sequestration and biodiversity).
  • Develop innovative design methods that support and enhance ecological processes through data-driven optimization.


Required Experience
  • Proven experience developing and deploying geospatial machine learning models, deep generative models, or RL algorithms in practical research problems.
  • Ph.D. or equivalent experience in Computer Science, Machine Learning, Operations Research, or related fields.
  • Demonstrated experience working in cross-functional teams bridging ML research with ecology, architecture, or design.


Preferred Experience
  • Experience with GIS tools and remote sensing technologies for geospatial analysis.
  • Prolific corpus of digital or physical expressions rooted in process-driven research and design.
  • Industry experience combined with a background in leading research and producing striking work.


Technical Skills
  • Commitment to Nature-centric principles and a willingness to integrate technology and ecology.
  • Enthusiasm for pushing boundaries in design and science with innovative thinking.
  • Self-directed with an aptitude for nurturing collaborative teamwork across disciplines
Required Education/Certifications
  • Ph.D. in a relevant field (CS, ML, OR).

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