PhD Researcher, Dalhousie University · AI Lead

Reliable language models for specialized technical domains.

My research explores how language models can be adapted to perform reliably and safely in specialized technical domains.

Domain-specific LLMs Model adaptation Evaluation Evidence-grounded AI
Research workflow

How the research comes together

Domain knowledge

Build high-quality technical corpora with clear provenance and coverage.

Model adaptation

Help models learn specialized concepts, language, and task behaviour.

Evidence grounding

Connect model responses to trusted technical and regulatory sources.

Evaluation

Determine where models succeed, fail, or require greater caution.

Research motivation

Specialized domains demand more than fluent answers.

The challenge is not simply whether a language model can produce an answer. It is whether that answer is accurate, supported, appropriately cautious, and useful to a domain expert.

Nuclear and energy systems provide a demanding environment for this research. The knowledge is technical, the language is precise, and unsupported conclusions can carry real consequences.

The broader goal is to advance language models that can operate responsibly across engineering, scientific, and regulated environments.

Research areas

A focused research program for reliable domain AI.

The work brings together model adaptation, evaluation, evidence grounding, and data development—the foundations needed to move from general language capability to dependable specialized performance.

Adapting models to specialized knowledge

Exploring how compact, open-weight language models can develop stronger domain understanding and useful task behaviour without losing the capabilities that make them broadly effective.

Continued pre-training · Supervised fine-tuning · Preference optimization · Private deployment

Defining and measuring reliability

Designing benchmarks that reveal what a model knows, how well it uses evidence, when it becomes uncertain, and where specialization creates meaningful gains or trade-offs.

Question-only · Supplied evidence · RAG · Failure analysis · Capability retention

Grounding models in trusted evidence

Studying how retrieval, agentic search, and governed tools can produce responses that are more current, traceable, and defensible for technical knowledge work.

RAG evaluation · Agentic retrieval · Function calling · Governed data access

Creating the data the research requires

Developing training and evaluation datasets from scarce technical material while maintaining the provenance, quality, and coverage required for credible research.

Question generation · Quality review · Gold answers · Dataset provenance

Selected research and publications

Research grounded in real technical problems.

Each project starts with a practical limitation in specialized-domain AI, develops a research approach around it, and produces evidence that guides the next stage of the work.

Adapting and evaluating LLMs for nuclear engineering and regulation
Motivation

More evidence and larger models do not automatically produce stronger domain understanding or more reliable regulatory reasoning.

Approach

Build a benchmark spanning CANDU engineering and Canadian regulatory material, then compare general and adapted open-weight models under different evidence conditions.

Significance

Clarifies what model scale, evidence access, continued pre-training, and supervised fine-tuning each contribute to specialized-domain performance.

Manuscript in preparation · Dalhousie University

Secure and private language models for nuclear applications
Motivation

Sensitive technical environments cannot always depend on externally hosted, general-purpose models.

Approach

Train a compact language model on public CANDU material to examine the feasibility and limitations of locally controlled domain adaptation.

Significance

Establishes a practical foundation for private domain models while identifying the data, training, evaluation, and deployment challenges that remain.

Evaluating RAG on nuclear domain-specific data
Motivation

Specialized-domain answers can appear credible even when important technical details are missing or unsupported.

Approach

Create a curated technical question-answer dataset and compare direct model responses with retrieval-augmented responses through human and automated evaluation.

Significance

Demonstrates why reliable domain AI depends on the full information system—not only the underlying language model.

From naïve RAG to agentic retrieval for regulatory work
Motivation

Static retrieval struggles as document collections grow and questions require evidence from multiple sections, sources, or levels of detail.

Approach

Trace the evolution of an enterprise retrieval pipeline toward planned and iterative information gathering, alongside governed function calling for operational data.

Significance

Shows how retrieval research can improve traceability, maintainability, and confidence in production AI systems.

Classifying technical and safety-related condition records
Motivation

Engineering and safety teams must review large volumes of unstructured operational records containing specialized terminology and inconsistent descriptions.

Approach

Develop and evaluate LLM-based workflows for safety screening, equipment-reliability events, and failure-mode identification.

Significance

Demonstrates how LLMs can support expert review while preserving accountability and clear boundaries around automation.

Research, collaboration, and applied work

Let’s discuss reliable AI for specialized domains.

I am open to research scientist and research engineer opportunities, academic and industry collaboration, and applied research contracts focused on reliable language models and evidence-grounded AI.