Reinforcement learning for phasing giant telescopes

The Giant Magellan Telescope (GMT) requires real-time phasing of its primary mirror segments. Each instrument of GMT is required to provide phasing telemetry from guide-star images.

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This project is open for Bachelor and Honours students
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The Giant Magellan Telescope (GMT) requires real-time phasing of its primary mirror segments. Each instrument of GMT is required to provide phasing telemetry from guide-star images. The required phasing data is embedded in these images in a highly non-linear way. Neural-network based solutions ought to be capable of extracting this data efficiently, and in a way that is tuned online to perform optimally under time-varying conditions.

Learning outcomes for a student undertaking this project include:

  1. Proficiency in real-time data processing and analysis.

  2. Skill development in utilizing neural network-based solutions for efficient data extraction.

  3. Understanding of complex data structures and their analysis.

  4. Application of adaptive techniques for optimal performance in dynamic conditions.

Competency in Python programming is required. Prior experience in control and estimation  theory, Machine Learning, and Fourier Optics is valued.

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Instrumentation Scientist