Our Mission

To demonstrate how spacecraft can leverage environmental randomness to execute evolutionary, learning-based algorithms in orbit while improving performance and reducing energy consumption.

What We Do

  • Develop and validate small satellite technology
  • Design and build evolutionary computing payloads
  • Execute genetic algorithms that leverage radiation-induced variability within memory hardware
  • Measure how radiation-driven mutation impacts adaptive performance in orbit
  • Train engineers through hands-on mission development

Why it Matters

Most spacecraft rely on fixed, prewritten software designed to minimize environmental uncertainty, often requiring continuous error detection and correction to maintain reliability. DoomSat applies a different approach: using the space radiation environment as a computational resource.

By leveraging radiation-induced variability as a natural source of mutation, Genetic Algorithms reduce reliance on energy-intensive correction processes while continuing to improve performance over time.

This approach enables more energy-efficient onboard computing so spacecraft can adapt, optimize, and operate by incorporating the environment itself into the system, which has implications for long-duration and deep space missions where power is limited and autonomous adaptation is critical.

  • Demonstrate evolutionary computation in orbit

  • Measure adaptation driven by radiation-induced memory variation

  • Validate autonomous onboard performance improvement without continuous ground intervention

  • Establish a repeatable benchmark for adaptive computing in space

  • Advance spacecraft computing architectures for future missions