Success Story: Senior AI Engineer Gains NIW Approval With NAILG for Learning-Enhanced Nuclear Design and Operations

 

Client’s Testimonial:

“I wanted to extend my sincere thanks and appreciation for the excellent work your team has done in preparing my I-140 NIW case. I am particularly grateful for the attorney’s responsiveness to ensure that my case was filed by the end of March before the fee increase. Thank you.”


On December 12th, 2025, we received another EB-2 NIW (National Interest Waiver) approval for a Senior Artificial Intelligence (AI) Engineer in the field of Nuclear Engineering (Approval Notice).


General Field: Nuclear Engineering

Position at the Time of Case Filing: Senior Artificial Intelligence (AI) Engineer

State of Residence at the Time of Filing: Indiana

Approval Notice Date: December 12th, 2025

Processing Time: 20 months, 11 days (Premium Processing Requested)


Case Summary:  

Nuclear energy plays a unique role in U.S. energy security because it delivers large-scale, carbon-free electricity, but it also demands an uncompromising safety margin. In this case, the client, a senior artificial intelligence (AI) engineer at the time of filing, focused on a practical constraint that affects both safety and efficiency: the speed and fidelity of reactor analysis used to guide design and operational decisions.

The case centered on a practical reality in nuclear power: design and operational decisions depend on analysis that is both rigorous and timely. When simulations and evaluations take too long, iteration slows, scenario testing narrows, and opportunities to improve safety and efficiency become harder to capture. The proposed endeavor addressed that constraint directly by developing and implementing advanced machine learning approaches to optimize reactor design and operational decision-making across the U.S. nuclear power fleet, with the stated goal of enabling safer and more efficient nuclear energy generation.

Objective federal support served as a strong credibility anchor. The work had been backed by funding from the U.S. Nuclear Regulatory Commission, which helped demonstrate that the research direction aligns with the U.S. nuclear safety ecosystem and is considered meaningful within institutions responsible for oversight, risk reduction, and public protection. That support reinforced the national importance argument because it tied the work to stakeholders with direct responsibility for nuclear safety outcomes.

The petition also showed sustained technical contribution and peer trust. The client holds a Ph.D. in Nuclear Engineering and has produced a body of work focused on reactor modeling and learning-assisted analysis, including 6 peer-reviewed journal articles (4 first-authored), 14 peer-reviewed conference papers (13 first-authored), 3 first-authored preprints, and 1 technical report. While the citation total of 38 was presented in context for a specialized domain, the broader record reflected consistent dissemination and influence. In parallel, completing at least 30 peer reviews reinforced that journals and conferences repeatedly relied on the client’s judgment to evaluate work in the field.

To ensure the impact was immediately clear, the petition included an expert perspective that linked the research directly to real-world nuclear engineering needs. One independent recommender stated:

“[Client]’s use of machine learning has offered faster and more efficient analyses of reactor core designs, paving the way for safer and more sustainable nuclear power generation.”

NAILG (North America Immigration Law Group) used this statement as corroboration, tying it back to the objective record, NRC-backed relevance, a sustained publication portfolio, and peer-review invitations, so the adjudicator could credit both the practical value and the client’s capacity to keep delivering it.