Realtime Robotics built a specialized processor that generates collision-free robot motion plans in microseconds, enabling robots to operate safely alongside humans in unstructured spaces. The tech stack reveals a dual-track engineering organization: C++/C# and optimization solvers (OR-Tools, CPLEX, Gurobi) power the motion-planning core, while React/Three.js/WebGL handle browser-based visualization and simulation. Current hiring accelerates across engineering and product, with active roles in connector integration, test automation, and go-to-market—signaling a shift from pure R&D toward industrial OEM adoption.
Realtime Robotics develops motion-planning software for industrial robots that operate in dynamic, human-shared environments. Founded in 2016 and headquartered in Boston, the company focuses on reducing manual robot programming costs and cycle time through real-time path planning that avoids collisions autonomously. The product connects to Siemens simulation tools and cloud infrastructure (AWS), serving automotive OEMs and general manufacturing. The organization spans 51–200 employees, with engineering-heavy teams split between motion-planning algorithm development and web-based product interfaces.
Core: C++, C#, Python, and optimization libraries (OR-Tools, CPLEX, Gurobi). Frontend: React, Three.js, WebGL, Next.js. Infrastructure: AWS (Lambda, DynamoDB, CDK), Kubernetes, Docker, Terraform.
Connector integration with industrial simulation tools (Siemens), motion-planning data extraction, test automation frameworks, Windows-based product validation, and account-based marketing strategy targeting automotive OEMs.
Other companies in the same industry, closest in size
Realtime Robotics, Inc.'s technology stack, projects, and hiring signals are inferred from public hiring and company data — career pages, public listings, and company web presence — then clustered and de-duplicated. Figures are estimates that refresh over time. Read our full methodology →
This is not an official vendor or customer list. It is a technology-adoption signal inferred from public data, intended for B2B research.