Dr. Jordan Kim

Computer Science Researcher

About Me

I’m Dr. Jordan Kim, a computer science researcher driven by curiosity and a real interest in problems that don’t give up their answers easily. My work sits where theory meets the messiness of real systems—algorithms, distributed computing, machine learning, the kind of stuff that looks clean on paper but behaves wildly in practice. That’s the part I enjoy: tracing the why behind complex behavior and turning that understanding into something others can build on.

When I’m not deep in code or research papers, I usually have a notebook nearby filled with half-formed ideas, odd questions, and the occasional breakthrough scribbled in the margins. I care a lot about clarity—whether I’m writing, teaching, or presenting—and I like helping people see complicated ideas start to make sense. Research can be slow and stubborn work, but the moments when everything clicks make it worth every hour.

Research Areas

Artificial Intelligence

Machine learning, deep learning, and neural networks for complex problem solving.

Distributed Computing

Algorithms and architectures for distributed systems and cloud computing.

Cybersecurity

Security protocols and systems for protecting digital infrastructure.

Real-time Systems

Designing and implementing systems with strict timing constraints.

Featured Projects

2024

Neural Decode Interface

Real-time EEG decoding for paralysis patients

Paper

Project

2023

Neural Decode Interface

Real-time EEG decoding for paralysis patients

Paper

GitHub

2023

Neural Decode Interface

Real-time EEG decoding for paralysis patients

Paper

Code

2023

Neural Decode Interface

Real-time EEG decoding for paralysis patients

Paper

Video

Research Impact

1,240+

Citations

  • 18%

5

Book Chapters

  • 12%

3

Patents

  • 10%

$ 4.2 M

Funding

  • 25%

24

Journal Articles

  • 18%

38

Conference P.

  • 12%

Selected Publications

Real-time AI Infrastructure for Emergency Response Systems

Qadir, S., Johnson, M., & Williams, T. (2024). Journal of Artificial Intelligence Research, 72, 145-178.

This paper presents a novel architecture for AI-powered emergency response systems that can process and analyze data in real-time to improve decision-making during critical situations.

Title

Optimizing Neural Networks for Edge Computing in IoT Devices

Qadir, S., & Rodriguez, A. (2023). IEEE Transactions on Mobile Computing, 22(5), 1892-1905.

We propose a new method for optimizing deep neural networks to run efficiently on resource-constrained IoT devices, enabling advanced AI capabilities at the edge.

Optimizing Neural Networks for Edge Computing in IoT Devices

Qadir, S., & Rodriguez, A. (2023). IEEE Transactions on Mobile Computing, 22(5), 1892-1905.

We propose a new method for optimizing deep neural networks to run efficiently on resource-constrained IoT devices, enabling advanced AI capabilities at the edge.

Secure Communication Protocols for Distributed AI Systems

Chen, L., & Qadir, S. (2023). Computers & Security, 124, 102987.

This work addresses security challenges in distributed AI systems by introducing a new framework for secure communication and data exchange between AI components.

IEEE Journal

[Impact Factor: 8.7]

Secure Communication Protocols for Distributed AI Systems

Chen, L., & Qadir, S. (2023). Computers & Security, 124, 102987.

This work addresses security challenges in distributed AI systems by introducing a new framework for secure communication and data exchange between AI components.

Current Research Projects

Real-time AI Infrastructure for Emergency Response

Funding: National Science Foundation (2023-2026)

Developing a comprehensive AI infrastructure that enables real-time data processing and decision support for emergency response teams during natural disasters and critical incidents.

Ai

Real-time Systems

Real-time AI Infrastructure for Emergency Response

Funding: National Science Foundation (2023-2026)

Developing a comprehensive AI infrastructure that enables real-time data processing and decision support for emergency response teams during natural disasters and critical incidents.

Ai

Real-time Systems

Secure Distributed Learning Framework

Funding: Department of Defense (2022-2025)

Creating a secure framework for distributed machine learning that protects sensitive data while enabling collaborative model training across multiple organizations.

Security

Machine Learning

Next-Generation Edge AI Systems

Funding: Industry Partnership (2023-2025)

Researching novel architectures and algorithms to enable advanced AI capabilities on edge devices with limited computational resources and power constraints.

Edge Computing

Real-time Systems

AI-Driven Smart City Infrastructure

Funding: City Innovation Grant (2023-2027)

Designing and implementing AI systems for optimizing urban infrastructure, including traffic management, energy distribution, and public safety monitoring.

IoT

Urban Planning

Technical Expertise

  •  Software & Tools

Python, JavaScript, Java, C++

90%

My Skills

95%

Algorithms, Systems Programming, ML

80%

My Skills

95%

Git, Docker, AWS, Kubernetes, Linux

85%

My Skills

95%

Postman, Figma, Jira

90%

My Skills

95%

  •  Core Competencies

Signal Processing

95%

My Skills

95%

Machine Learning

85%

My Skills

85%

EEG/fMRI Analysis

80%

My Skills

80%

BCI Hardware

80%

My Skills

80%

Research & Academic

  •  Academic Appointments

Associate Professor

Department of Computer Science, University of Technology (2018 - Present)

Teaching graduate and undergraduate courses in AI, distributed systems, and cybersecurity. Leading the AI Systems Research Lab.

Assistant Professor

Department of Computer Science, University of Technology (2014-2018)

Developed curriculum for AI and real-time systems courses. Established research collaborations with industry partners.

Postdoctoral Researcher

AI Research Institute, Stanford University (2012-2014)

Conducted research on distributed AI systems and real-time machine learning algorithms.

  •  Education

Ph.D. in Computer Science

Massachusetts Institute of Technology (2007-2012)

Dissertation: "Real-time Constraints in Distributed AI Systems"

Ph.D. in Computer Science

M.S. in Computer Science

Dissertation: "Real-time Constraints in Distributed AI Systems"

B.S. in Computer Engineering

Carnegie Mellon University (2001-2005)

Graduated with honors, focus on software systems and algorithms

List of Publications

2024

Real-time neural decoding of speech intent

Nature Neuroscience, IF: 25.0

Rodriguez M, Kim S, Patel J, et al.

PDF

DOI

Alt: 892

2023

An open-source platform for neural data analysis

Journal of Neural Engineering, IF: 4.6

Rodriguez M, Kim S, Patel J, et al.

PDF

DOI

Code

2024

Real-time neural decoding of speech intent

Journal of Neural Engineering, IF: 4.6

Rodriguez M, Kim S, Patel J, et al.

PDF

DOI

Alt: 892

2023

An open-source platform for neural data analysis

Journal of Neural Engineering, IF: 4.6

Rodriguez M, Kim S, Patel J, et al.

PDF

DOI

Code

2023

An open-source platform for neural data analysis

Journal of Neural Engineering, IF: 4.6

Rodriguez M, Kim S, Patel J, et al.

PDF

DOI

Code

2024

An open-source platform for neural data analysis

Journal of Neural Engineering, IF: 4.6

Rodriguez M, Kim S, Patel J, et al.

PDF

DOI

Code

Contact Information

Send a Message

Email

kim@swarthmore.edu

Phone

+1 (555) 123-4567

Office

Computer Science Building, Room 405

University of Technology

Office Hours

Monday & Wednesday: 2:00 PM - 4:00 PM

Friday: 10:00 AM - 12:00 PM

Connect with Me