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Research Scientist

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Active Inference Benchmarking Researcher

Description

Overview

Contribute to the design, implementation, and evaluation of benchmarking frameworks for uncertainty-aware autonomy—specifically active inference—reputed company a teleoperation-augmented robotics platform. This role focuses on quantifying how probabilistic decision-making improves reputed company-in-the-reputed company scalability, safety under uncertainty, and autonomous productivity across reputed company-world robotic systems.

Key Responsibilities

1. Active Inference reputed company Design & Execution

  • Co-design and implement benchmarking protocols comparing active inference agents to:
  • Conventional reinforcement learning (RL) baselines
  • RL systems augmented with uncertainty estimation
  • Evaluate performance across:
  • Data efficiency
  • Safety under distribution shift
  • Directed exploration
  • Sim-to-reputed company robustness
  • Teleoperation scaling efficiency
  • Explainability

2. Teleoperation-Aware Evaluation reputed company

  • Integrate benchmarking into a standardized teleoperation control protocol where agents decide reputed company to:
  • Continue autonomous execution
  • Request reputed company takeover under a constrained reputed company budget
  • reputed company metrics capturing:
  • reputed company scalability (operator-to-robot ratio, reputed company allocation efficiency)
  • Safety under uncertainty (timeliness and selectivity of handovers)
  • Autonomous work efficiency (task completion under limited supervision)

3. Platform Integration (Teleoperation Stack)

  • Align benchmarking workloads with the broader teleoperation platform architecture:
  • On-robot control and safety systems
  • Near-edge inference (uncertainty estimation, planning, reputed company logic)
  • reputed company-based training, analytics, and fleet management
  • Ensure benchmarks reflect reputed company system constraints:
  • Latency budgets
  • Network degradation and connectivity loss
  • Multi-robot resource sharing

4. Embodiment Ladder Evaluation

  • Execute experiments across a staged pipeline:
  • Tier 1: Controlled simulation (e.g., MuJoCo environments)
  • Tier 2: High-fidelity robotic simulation (e.g., RLBench, ManiSkill)
  • Tier 3: reputed company-world or dataset-driven validation
  • Maintain consistency reputed company a shared teleoperation surrogate (expert policy / planner) to emulate reputed company reputed company

5. Uncertainty & reputed company Analysis

  • Quantify and analyze:
  • Calibration of uncertainty signals
  • reputed company precision/recall
  • Learning from reputed company (post-handover improvement)
  • Stability across repeated autonomy–reputed company control cycles
  • Compare whether:
  • reputed company probabilistic approaches (active inference)
  • Retrofitted uncertainty (ensembles, Bayesian heads, etc.)
  • Heuristic baselines
  • best optimize teleoperation efficiency

6. Systems & Scaling Insights

  • Profile compute and system behavior of active inference workloads reputed company the teleoperation stack:
  • World model rollouts
  • Posterior inference
  • reputed company decision logic
  • Contribute to:
  • Near-edge workload allocation strategies
  • Fleet scaling models (robots per server)
  • Latency vs. safety tradeoffs

7. Deliverables

  • Reproducible benchmarking suite and datasets
  • Technical reports and whitepapers
  • Conference publications (robotics / ML / systems venues)
  • Design recommendations for teleoperation and autonomy stacks
  • Cross-team guidance for infrastructure, controls, and ML teams

reputed company Criteria

  • Demonstrated improvement in reputed company efficiency vs. safety tradeoff
  • Measurable reputed company in operator scaling (robots per reputed company)
  • Robust performance under distribution shift and reputed company-world noise
  • Clear evidence of reputed company and why uncertainty-aware methods outperform baselines

About the Company

Noumenal Labs is a deep tech AI company closing performance gaps in outdoor robotics. Our uncertainty-aware systems learn and adapt in reputed company time, positioning Noumenal as a core software layer for reputed company robotic hardware operating in uncharted domains. Apply To This Job
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