2026 PhD Graduate - Vehicle Design and Technologies Group - we design the future!
Johns Hopkins APL · Laurel, MD · Aerospace Engineering
About this role
Johns Hopkins APL is hiring a mid-level 2026 PhD Graduate - Vehicle Design and Technologies Group - we design the future! based in Laurel, MD. Listed education preference: a Ph.D. or equivalent.
- Level
- mid
- Location
- Laurel, MD
- Education
- Ph.D. preferred
- Visa
- Not sponsored
- Department
- Aerospace Engineering
- Posted
- Mar 10, 2026
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Job description
from Johns Hopkins APL careersDo you want to research advanced vehicle technologies and then transition that research into real programs supporting national needs?
If you are graduating with a PhD in aerospace or mechanical engineering, you want to be part of the Vehicle Design and Technologies Group - we design the future!
Join our multidisciplinary team of experts across vehicle design disciplines including propulsion, aerodynamics, thermal, advanced materials, mechanical and structural engineering. We investigate basic science and transition it into state of the art vehicle technology enabling innovation and revolutionary new designs. Your research will be applied to conceptualize, design, and prototype advanced vehicles and weapons to meet critical national and warfighter needs.
Depending on your areas of expertise, some of the ways you can contribute are:
- Predict and model the aerodynamic characteristics of various air-vehicle configurations including hypersonic re-entry vehicles, supersonic and hypersonic air-breathing concepts, and subsonic fixed-wing or rotorcraft unmanned air vehicles (UAVs).
- Perform multi-fidelity analysis using commercial and in-house CFD and thermal software in support of vehicle aerothermal design and analysis across various flow regimes from subsonic to hypersonic.
- Plan and execute ground tests and design models for various wind tunnel and arcjet facilities. Conduct post-test analysis to validate numerical predictions then create and improve high fidelity models.