Research Scientist: Multimodal Learning for Embodied Intelligence
HONDA RESEARCH INSTITUTE USA
San Jose, United States of America
27 days ago
Role details
Contract type
Permanent contract Employment type
Full-time (> 32 hours) Working hours
Regular working hours Languages
English Experience level
JuniorJob location
San Jose, United States of America
Tech stack
Artificial Intelligence
Computer Vision
Machine Learning
Large Language Models
Information Technology
Data Selection
Job description
- Develop and advance machine learning models, including foundation models and multimodal systems that reason over vision, language, action, and other embodied signals.
- Design model architectures that unify perception, reasoning, and decision-making for embodied intelligence.
- Train, fine-tune, and evaluate models on large-scale, diverse datasets to improve robustness, generalization, and real-world performance.
- Develop rigorous evaluation methodologies, benchmarks, and metrics for complex and potentially safety-critical AI systems.
- Build reusable research infrastructure, including evaluation suites, analysis pipelines, and experimental frameworks.
- Conduct empirical analysis of model behavior, generalization, failure modes, and adaptation under changing environments or distribution shifts.
- Contribute to publications, patents, and research prototypes that demonstrate technical impact., + Continual and adaptive learning: lifelong learning, online learning, and adaptation under distribution shift.
- Data-centric AI: curriculum learning, data selection, active learning, and methods for measuring and improving data quality.
- Memory and long-horizon reasoning: persistent memory architectures, external memory systems, long-context modeling, and temporal abstraction.
- Mechanistic interpretability: understanding and analyzing model internals, behaviors, and failure modes.
- Strong publication record in leading machine learning, AI, computer vision, robotics, or NLP venues such as NeurIPS, ICML, ICLR, CVPR, ICCV, ACL, CoRL, RSS, or ICRA.
- Interest in building robust embodied intelligence systems that can operate reliably in real-world environments.
Requirements
- Ph.D. or M.S. with equivalent experience in Computer Science, Machine Learning, Artificial Intelligence, Robotics, or a related field.
- Deep understanding of modern machine learning and deep learning techniques.
- Experience training and evaluating models at scale.
- Experience with foundation models, multimodal learning, or embodied AI systems.
- Proficiency with modern research tooling, including AI-assisted development workflows and agent-based experimentation frameworks.
- Strong ability to formulate research problems, execute experiments, analyze results, and communicate findings clearly.
- 1 - 3 years of relevant work experience.