Success Story: NIW Approval With NAILG Support for Researcher Optimizing Large-Scale Computational Systems
Client’s Testimonial:
“Many, many thanks for your hard work throughout this process.”
On November 18th, 2025, we received another EB-2 NIW (National Interest Waiver) approval for a PhD Student in the field of Computer Science (Approval Notice).
General Field: Computer Science
Position at the Time of Case Filing: PhD Student
Country of Origin: Bangladesh
State of Residence at the Time of Filing: Washington
Approval Notice Date: November 18th, 2025
Processing Time: 1 year, 9 months, 20 days
Case Summary:
A computer science Ph.D. student recently secured NIW approval for work focused on making scientific computing more efficient and accessible. His research tackles a growing challenge across scientific fields: the high computational cost of processing large datasets. By creating methods that reduce resource demands while accelerating analysis, his work supports faster discovery in physics, materials science, engineering, and other data-intensive disciplines. With NAILG’s guidance, his petition clearly demonstrated how improving computation efficiency benefits U.S. scientific and technological progress.
His proposed endeavor centers on developing computational strategies that significantly lower the time, memory, and energy needed for large-scale modeling and simulation. These improvements allow researchers to run experiments and analyze data without the barriers posed by limited computing resources, an important contribution as federal agencies and national laboratories increasingly rely on high-performance computing for research and innovation.
The petitioner brings a strong scholarly foundation to this work. He has published four peer-reviewed journal articles (including one first-authored) and four conference papers, along with two additional first-authored conference papers accepted for publication. His work has already received 43 citations, reflecting growing interest from independent researchers. He has also completed at least eleven peer reviews, demonstrating his recognized expertise in scientific computing and machine learning methods.
His projects have been supported by major federal institutions, including the National Science Foundation (NSF), the U.S. Department of Energy (DOE), and the Office of Naval Research (ONR), underscoring the national importance of his research. NAILG highlighted how this federal support aligns with U.S. priorities in computational efficiency, advanced modeling, and accelerating scientific discovery.
Experts in the field emphasized that his contributions help reduce barriers for research teams working with large or complex datasets, supporting more reliable simulations, efficient workflows, and improved decision-making tools across scientific domains. His work provides foundational methods that can enhance productivity in laboratories and research centers throughout the United States.
By demonstrating a clear national benefit and a strong capacity to advance his research, the petitioner met the criteria for the National Interest Waiver. His approval recognizes both the growing importance of efficient scientific computing and the meaningful contributions he is positioned to continue making, supported through NAILG’s strategic and effective presentation of his record.

