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Optimizing to do more with less!
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Optimizing to do more with less!

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peterdsharpe/README.md

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Hello there! My name is Peter Sharpe, and I'm a PhD Candidate at MIT AeroAstro studying aircraft design, multidisciplinary design optimization (MDO), and computational aerodynamics. 🚀 ✈️

I research new optimization techniques that allow us to quickly solve challenging real-world engineering problems. Some general ideas in my work:

  • I'm a strong advocate of "interactive design" - design optimization must be an exploratory process with a human at the wheel, because 90% of design is asking the right question. Unfortunately, many traditional design optimization tools ("black-box optimizers") at an acceptable level of modeling fidelity are too slow for interactive use - an optimizer that takes hours, days, or weeks to run is generally not very useful.
  • Most of my optimization research focuses on enabling rapid, interactive design through automatic differentiation and "simultaneous analysis and design" (SAND) methods. Both of these require you to "get inside of the black box" of solvers, and the payoff is that design optimization of highly-coupled systems becomes many orders of magnitude faster.
  • Generally, my work focuses on "wide" rather than "deep" design optimization: when designing complex engineering systems, I've found that it's usually more important to capture the rough design trade-offs across dozens of subsystems, rather than precisely analyzing just one or two disciplines. When precision is required, surrogate modeling techniques based on data from high-fidelity analysis can allow us to retain both high speed and high accuracy.

I do consulting work on the side, usually in the areas of aircraft design optimization and scientific machine learning - if you have a problem you're interested in solving, I'd be happy to chat at pds@mit.edu.

Welcome to my GitHub! Come in. Have some tea. Stay a while.


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Note: The background photo up top is from a hike I did in Acadia National Park - I'd highly recommend going if you're in the area!

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  1. AeroSandbox AeroSandbox Public

    Aircraft design optimization made fast through computational graph transformations (e.g., automatic differentiation). Composable analysis tools for aerodynamics, propulsion, structures, trajectory …

    Jupyter Notebook 762 126

  2. NeuralFoil NeuralFoil Public

    NeuralFoil is a practical airfoil aerodynamics analysis tool using physics-informed machine learning, in pure Python/NumPy.

    Python 143 16