Available for Summer 2026 / 2027 ML research internships AI / ML PhD Candidate · Wright State University

Building trustworthy machine learning for systems that have to actually work.

PhD candidate at Wright State University, working at the intersection of adversarial ML, LLM-assisted systems, hardware security, and applied scientific ML — with 256+ Google Scholar citations across 33 peer-reviewed papers as of 2026-06-07.

PythonGoPyTorchAdversarial MLLLM SystemsFPGA Side-Channel MLSLURM / HPC
PhD AI/ML PhD candidate in Computer Science and Engineering
11 Project case studies across ML, security, systems, and scientific AI
33+ Scholar-listed papers supporting technical credibility
6+ Years across software engineering and applied AI research

Technical Profile

Applied ML, security, and systems work.

I build models and software that hold up under real constraints: noisy data, limited labels, reproducibility, adversarial conditions, and domain-specific evaluation. My strongest fit is work where ML rigor has to meet engineering reality.

See experience and skills
Machine Learning Engineering Building reproducible Python ML pipelines, preparing datasets, evaluating models, and turning research ideas into working experiments.
Pythonscikit-learnPyTorchTensorFlowpandas
Applied AI Research Designing experiments, comparing baselines, reading papers deeply, and communicating results through papers, reports, and demos.
Experiment DesignAblationsRobustnessScientific Writing
Trustworthy AI and Security ML Working on adversarial ML, explainability, anomaly detection, side-channel learning, and AI for security-critical systems.
Adversarial MLXAIHardware SecurityIoT Security
ML Systems and Software Engineering Bringing production software experience in APIs, backend systems, Git workflows, Linux, containers, and performance-focused ML code.
REST APIsGitLinuxDockerHPC

Featured Projects

Selected work with build and impact.

All Projects

Publications

Peer-reviewed credibility behind the projects.

Publication Page
About

PhD with a software engineering backbone.

I'm a PhD candidate in Computer Science and Engineering at Wright State University, with three years of prior software engineering experience building production REST APIs, backend systems, and customer-facing applications.

That mix shows up in the work: I write reproducible Python ML pipelines, ship code that runs in batch on HPC, evaluate models under adversarial conditions, and communicate research clearly. Comfortable across the stack from FPGA side-channel measurements up to LLM-based explanation layers.

What I'm looking for: Industry research internships (Summer 2026 / 2027), applied scientist roles, and post-PhD positions where ML rigor meets real engineering constraints — security, healthcare, scientific computing, infrastructure.

Let's talk.

Open to internship conversations, research engineering roles, and collaborations. Quick to reply.