Hi, my name is

Cameron Renteria.

Imaging matter from atoms to architectures.

I'm an NIH-NIDCR Postdoctoral Fellow in Materials Science & Engineering at the University of Washington, designing ceramic composites for additive manufacturing through measurement-driven simulation. My research combines synchrotron CT, deep learning, atom-probe tomography, and physics-informed neural networks.

CURRENTLY designing ceramic composites for additive manufacturing
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7+
years materials characterization
5+
years AI / ML for science
10+
peer-reviewed publications
UW · ANL · APS · LBNL · ALS · PNNL · INL

01 About

I work at the intersection of synchrotron X-ray imaging, deep learning, and materials design. Most of my work turns multi-modal characterization data — micro-CT, nano-CT, ToF-SIMS, atom probe — into quantitative descriptions of microstructure, then uses those descriptions to design manufacturable hierarchical materials.

Recent projects span an enamel-inspired biomimetic lattice pipeline (Matter, in prep), a cross-species nano-CT segmentation paper (Acta Biomaterialia, corresponding author), a strain-tunable holographic photopolymer (US provisional patent, 2026), and a physics-informed neural network for Li-ion battery mechanism discovery.

Previously: PhD in Materials Science & Engineering, University of Washington (2023, advisor Dwayne Arola).

Tools I use day-to-day:

Python PyTorch Deep Learning TomoPy Synchrotron CT Nano-CT ToF-SIMS APT SAXS / WAXS FEA / CAD Avizo / Dragonfly ImageJ / Fiji
Cameron Renteria

02 Experience

NIH-NIDCR T90 Postdoctoral Fellow @ University of Washington

Sept 2023 — Present

  • Designing ceramic composites for additive manufacturing through measurement-driven simulation
  • Leading the synchrotron-CT → biomimetic-lattice pipeline (Matter, conditional invitation to submit)
  • Reconstructed 2,423 complete 3D rod trajectories at 0.345 µm isotropic resolution; HSB periodicity 56.3 µm
  • Self-supervised Noise2Inverse denoising (375% noise reduction) + U-Net segmentation (>85% Dice)
  • Coordinate research across four DOE national labs (ANL, LBNL, PNNL, INL); $1M+ in regulated R&D programs

03 Projects

01
Synchrotron Micro-CT → Biomimetic Design
FEATURED PROJECT

Synchrotron Micro-CT → Biomimetic Design

A zero-free-parameter pipeline that extracts enamel rod architecture from ALS 8.3.2 nano-CT using deep-learning PIV, quantifies fabric orientation, and translates the geometry directly into 3D-printable lattices with FEA-validated fracture-tolerant behavior.

Synchrotron μCT Deep Learning PIV Biomimetic 3D Printing FEA
Explore project
02
Cross-Species Nano-CT Segmentation

Cross-Species Nano-CT Segmentation

Deep-learning segmentation of nano-CT enamel across human, lion, and African wild dog. Combines Noise2Inverse self-supervised denoising with U-Net to resolve nanoscale rod geometry — published in Acta Biomaterialia (corresponding author).

Nano-CT U-Net Noise2Inverse Acta Biomaterialia
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03
Differentiable Multimodal X-ray Scattering

Differentiable Multimodal X-ray Scattering

GPU-accelerated SAXS / WAXS / GISAXS / GIWAXS pipeline with physics-informed temporal regularization, automated peak tracking, and Richardson–Lucy deconvolution. Reproduces operando azopolymer dynamics from Shin et al. (PNAS 2019) end-to-end.

SAXS / WAXS PyTorch Differentiable Synchrotron
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04
Mechanochromic Holographic Photopolymer

Mechanochromic Holographic Photopolymer

US provisional patent (filed April 2026, UW CoMotion) for strain-tunable photopolymer lattices with embedded holographic elements that produce reversible mechanochromic color shifts under deformation.

US Patent (2026) Photopolymer Holographic Mechanochromism
Read more
05
Battery Mechanism Discovery via PINN

Battery Mechanism Discovery via PINN

Physics-informed neural network that ingests Li-ion discharge curves and outputs electrode-resolved electrochemical parameters. Classifies four rate-limiting mechanisms across 6,343 NMC and LFP discharges with 27.7 mV median V-RMSE.

Physics-Informed NN Li-ion Mechanism Discovery Transfer Learning
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06
ToF-SIMS Chemical Mapping of Tooth

ToF-SIMS Chemical Mapping of Tooth

129-channel ToF-SIMS hyperstack of human-tooth cross-section, segmented into dentin / inner enamel / outer enamel / epoxy via PCA + thresholding, U-Net, and HDBSCAN. Reveals organic-chemistry gradients invisible to histology.

ToF-SIMS PCA / HDBSCAN U-Net Chemical Mapping
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07
Atom Probe Tomography & APTVIZ

Atom Probe Tomography & APTVIZ

Compositional Community Detection — an unsupervised graph-clustering method for automated chemical-segregation discovery in APT data — plus APTVIZ, an interactive Flask tool for APT exploration. Co-authored in Microscopy and Microanalysis (2025).

APT Graph Clustering Flask M&M 2025
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04 Publications

2026

Cross-species deep-learning nano-CT enables nanoscale geometric characterization of mammalian enamel rods

Acta Biomaterialia · Corresponding Author

2025

Compositional Community Detection: Automated Identification of Chemical Segregation in Atom Probe Tomography Data

Microscopy and Microanalysis · Co-author

View full publication list on Google Scholar

05 — What's next

Get in touch

I'm open to research collaborations, faculty / staff scientist conversations, beamline-science roles, and questions about CT, AM, or the work above.

Say hello
Built with Astro · © 2026 Cameron Renteria