Francis Ogoke

Postdoctoral Associate at MIT with the DeCoDE Lab and Mechanosynthesis Group.

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I am currently a Postdoctoral Associate within the MIT Mechanical Engineering Department, working with Prof. Faez Ahmed and Prof. John Hart in the intersection of machine learning, additive manufacturing, and design.

I will join the Mechanical Engineering faculty at Carnegie Mellon University as an Assistant Professor in Fall 2025. I am broadly interested in developing artificial intelligence methods to enhance, understand, and control engineering processes. My work focuses on creating physics-informed deep learning methods to accelerate simulation-based insights, designing probabilistic frameworks for analysis under uncertainty, and developing generalizable deep learning frameworks for interpreting information. These efforts aim to build foundational models for engineering problems, and are applicable to areas including advanced manufacturing, sensing, cyber-physical systems, and digital twins.

I completed my Ph.D. at Carnegie Mellon University in September 2024, where I was advised by Prof. Amir Barati Farimani. During my Ph.D., I developed deep learning methods to characterize, simulate, and control metal additive manufacturing processes. Prior to my Ph.D., I received a B.S.E in Chemical and Biological Engineering from Princeton University in 2019.

Selected Papers

  1. super_resolution/preview_image.png
    Inexpensive high fidelity melt pool models in additive manufacturing using generative deep diffusion
    Francis Ogoke, Quanliang Liu, Olabode Ajenifujah, and 5 more authors
    Materials & Design, 2024
  2. melt_pool_edp/melt_pool_edp.png
    Deep learning for melt pool depth contour prediction from surface thermal images via vision transformers
    Francis Ogoke, Peter Pak, Alexander Myers, and 4 more authors
    Additive Manufacturing Letters, 2024
  3. Under Review
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    Deep Learning based Optical Image Super-Resolution via Generative Diffusion Models for Layerwise in-situ LPBF Monitoring
    Francis Ogoke, Sumesh Kalambettu Suresh, Jesse Adamczyk, and 4 more authors
    arXiv preprint arXiv:2409.13171, 2024
  4. deep_learned_generators/preview_image.png
    Deep-learned generators of porosity distributions produced during metal Additive Manufacturing
    Francis Ogoke, Kyle Johnson, Michael Glinsky, and 3 more authors
    Additive Manufacturing, 2022