Teleo, a Havoc company, is a robotics company that transforms construction heavy equipment, including loaders, dozers, excavators, and trucks, into autonomous robots for commercial and defense applications. Our technology enables a single operator to supervise and control multiple machines simultaneously, delivering significant productivity gains while improving operator safety and comfort.
Teleo was founded by a team of experienced technology leaders who previously led the development of Lyft's Self-Driving Car program and Google Street View. Teleo recently announced its merger with Havoc AI, a fast-growing defense technology company developing coordinated fleets of autonomous maritime vessels.
This is a unique opportunity to join a team building technology with real-world impact. You will work on cutting-edge 100,000-pound autonomous robots and engineer complex systems at the intersection of hardware, software, robotics, and AI.
Build perception algorithms and architecture, fusing multiple sensor modalities and supporting an evolving set of novel object classes, in order to provide safe operations for heavy machinery working on construction and mining sites.
Core Responsibilities
Re-use, adapt and extend existing perception algorithms (such as those commonly used in AV applications) to be applied to Teleo's operational domain and develop novel multi-modal perception algorithms
(Re-)Train models as Teleo's operational domain evolves
Develop auto-annotation and auto-labeling tools using SoTA methods, such as VLMs
Define evaluation protocols that correlate with on-ground performance
Drive active learning: select the right data
Integrate tightly with MLOps for continuous deployment
Required Qualifications
M.S. or higher in Computer Science, Computer Engineering, Robotics, Electrical Engineering, or a related technical field.
3+ years in applied ML with large-scale datasets
Strong Python + PyTorch
Experience shipping perception or ML systems into production
Systems thinker: understands data, models, infra as one system
Strong Experience With
Auto-annotation techniques like VLM-based labeling
Model evaluation beyond single metrics (failure modes, edge cases)
Perception tasks: detection, segmentation, depth, tracking
Multi-modal data (camera, LiDAR, radar)
Nice to Have
Dataset management & slicing
Experience with synthetic data or simulation
Large-scale data pipelines (Parquet, Arrow, object storage)