CI Resources for Students

This is a curated list of CI resources such as JupyterLab servers, Cloud compute servers, storage solutions, etc.

SKC JupyterHub

The SKC JupyterHub is a cloud-based website that allows faculty, researchers, and students to create shared JupyterLab Notebooks. These JupyterNotebooks can use Python, R, and Julia to create reports, process data, complete exercises, and complete homework assignments.

Internship Opportunities

Summer 2026 projects:

  • Exploring Quantum AI with Anvil - Step into the future of computing with this hands-on project that connects Quantum Computing, Artificial Intelligence (AI), and High-Performance Computing (HPC)! As part of the Anvil REU project team, you’ll use Open OnDemand to create interactive tools and learning materials that make cutting-edge Quantum Computing and AI more accessible for students, researchers, and professionals in Science, Engineering, and Medicine (SEM). You’ll explore how classical and quantum computing can work together, through quantum simulation, machine learning, and optimization, to tackle some of the biggest challenges in modern research. A working prototype is expected to debut in Spring 2026 to support the Quantum Computing for Materials Science and Chemistry (QC4MC) Summer School. Your contributions will help shape a larger NSF CyberTraining project proposal (QAI4SEM), expanding the impact of Quantum AI education and research nationwide. This is an exciting opportunity to: (1) Build real tools that advance Quantum AI learning and research, (2) collaborate with experts in HPC, AI, and Quantum Computing, and (3) gain experience that bridges computing, science, and innovation.
  • SciAgents: AI Agents for Scientific Discovery and Reproducibility - Imagine a world where science moves faster, and smarter, thanks to AI working alongside researchers. That’s the vision behind SciAgents, a next-generation system of AI-powered agents designed to help scientists discover, test, and validate new ideas more efficiently. As part of this project, you’ll help build an integrated network of specialized AI agents that collaborate to perform end-to-end research workflows. Each agent has a unique role: (1) Literature Agent – analyzes research papers to extract key experimental details, (2) Data Agent – discovers, organizes, and preprocesses scientific datasets, (3) Experiment Agent – designs and runs computational experiments, and (4) Synthesis Agent – interprets results and generates new scientific insights. To take it even further, you’ll help develop an Interactive Reproducibility Checker, a tool that reads a paper’s methods section and tries to recreate the experiment automatically. It flags missing information like software versions, hyperparameters, or unclear data splits, benchmarking each workflow against established standards such as the ACM Artifact Review, FAIR Principles, and the ML Reproducibility Checklist. By bringing together discovery, experimentation, and validation in one intelligent system, SciAgents aims to revolutionize how scientific research is conducted and verified. This project is perfect for students who want to: Work at the intersection of AI, data science, and research innovation, contribute to tools that promote transparency and reproducibility in science, and gain hands-on experience building multi-agent systems with real-world impact.
  • Elastic Cloud Scheduling for Anvil - Help push the limits of high-performance computing by making GPU use more efficient and flexible on the Anvil supercomputer. Currently, Anvil can convert entire compute nodes into Kubernetes workloads, but GPU nodes, often equipped with multiple GPUs, must be allocated as a whole. In this project, you’ll develop a fine-grained scheduling system that enables single-GPU allocation across heterogeneous compute environments and multiple Kubernetes clusters. Your work will help researchers use powerful GPUs more effectively, reducing waste and improving access for AI, machine learning, and data-intensive applications. This project is perfect for students interested in HPC, cloud computing, or systems engineering who want hands-on experience developing real solutions for large-scale research computing.
  • Building a Scalable Data Federation for Anvil Using the Pelican Platform - Unlock the power of data federation and distributed computing in this hands-on project using the Pelican Platform. As an REU student, you’ll deploy infrastructure to federate data access on Anvil, providing a unified endpoint to scientific data hosted across Anvil’s multiple petabyte (PB) scale distributed storage systems. This project uses Pelican as an abstraction layer to connect multiple, technologically diverse storage resources as unified data origins, enabling seamless access and integration across diverse computing environments. Leveraging Pelican’s infrastructure for data distribution and caching, you’ll develop example workflows and container-based analysis pipelines that are generalizable and reproducible to support the usage of the Anvil data fabric for AI and scientific computing. This project is ideal for students interested in systems engineering, data science, distributed computing, and workflow automation, especially those eager to build tools that make large-scale, data-driven research more efficient, connected, and reproducible.

To apply, students can visit: https://purdue.ca1.qualtrics.com/jfe/form/SV_b9oMTPWpqCdewXs 

The 2026 Undergraduate Summer Research Internship is funded by a National Science Foundation award #2234326. The application period is open through February 28, 2026

Opportunities will be posted as they become available