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About This Role
Three hundred fifty million Americans rely on a healthcare system whose decision\-making has become slow, costly, and adversarial \- care delayed by prior authorization and paperwork, claims that misfire, clinical decisions made without the right information at the right moment, and patients who struggle to navigate or afford the care they need. Deloitte has a new AI\-first effort,, backed by $1B in committed investment, building the reasoning models and agentic systems to rebuild how that system decides \- across payers, providers, and life sciences, and for the patients they serve \- so that care is faster, fairer, and far less wasteful. This is not AI applied at the margins. It is a ground\-up rebuild of the decision\-making machinery behind American healthcare, at national scale.
This is resourced to do real post\-training at scale \- committed investment in GPU compute and training infrastructure, not toy fine\-tunes.
As a Research Engineer on our post\-training team, you will design, train, evaluate, and align the models that reason about healthcare \- working across the full post\-training lifecycle to shape model behavior for clinical and operational decisioning across the industry. Healthcare decisioning is one of the cleanest verifiable\-reward domains outside math and code: the problems are hard. We ground that reward in real signals \- clinical policy and criteria, adjudicated outcomes, and clinical\-expert judgment \- so correctness is checkable rather than asserted.
You will own the post\-training stack for our clinical reasoning models end to end \- from data and reward design through trained, evaluated models that ship. This is not a prompt\-engineering role. We are looking for people who understand not just how to use LLMs, but how to improve and shape model behavior through advanced post\-training.
You do not need a healthcare background. We pair every engineer with clinical and domain experts and teach you the domain \- you bring the modeling depth.
We hire on demonstrated depth, not years \- the level you join at is determined through our interview process, based on the depth and judgment you demonstrate, not your years in a title.
Work you'll do
Post\-training \& alignment
- Design and execute post\-training pipelines: supervised fine\-tuning (SFT), preference optimization, and reinforcement learning / alignment workflows.
- Build and optimize training using techniques such as SFT, RLHF, PPO, DPO, GRPO, RLAIF, and Constitutional AI, and understand how each affects reasoning quality, safety, latency, cost, and reliability.
- Train reasoning models for healthcare decisioning using verifiable\-reward RL \- designing reward signals and verifiers grounded in clinical guidelines, policy and criteria, and adjudicated outcomes.
Reward modeling \& data
- Develop reward models and preference datasets to improve reasoning quality, factuality, safety, policy adherence, and task performance.
- Curate, clean, synthesize, and evaluate large\-scale instruction, preference, and domain\-specific datasets, with rigorous filtering, deduplication, and quality control.
- Build verification and reward pipelines from our proprietary clinical, claims, and operational data and from clinical\-expert labeling \- turning guidelines, policy, and adjudicated outcomes into checkable reward signals at scale.
Efficient fine\-tuning, training \& inference infrastructure
- Implement efficient fine\-tuning strategies including LoRA, QLoRA, PEFT, and adapter\-based approaches; build scalable distributed training using DeepSpeed, FSDP, Megatron\-LM, Ray, or equivalent.
- Optimize inference performance \- latency, throughput, quantization, and deployment efficiency \- for production, including frameworks such as vLLM, TensorRT\-LLM, or TGI.
Small language models \& open\-weight models
- Train and optimize open\-weight models such as Llama, Qwen, Mistral, or DeepSeek; build specialized small language models (SLMs) for on\-premise and cloud\-hybrid deployment with strong performance\-per\-dollar.
Evaluation, safety \& red teaming
- Design evaluation frameworks covering reasoning, hallucination detection, factuality, instruction following, structured outputs, and domain\-specific metrics.
- Build healthcare\-grade evaluation \- held\-out clinical benchmarks, deployment regression gates, calibration and uncertainty, factuality against ground truth, and bias/fairness evaluation across patient populations and subgroups \- co\-designed with clinical experts.
- Apply PHI/HIPAA\-aware data handling and produce model documentation suitable for regulated clinical use.
- Perform red teaming and adversarial testing to identify alignment failures, unsafe behaviors, jailbreak vulnerabilities, and regression risks; collaborate with agentic and application teams to improve tool use, grounding, and long\-horizon reasoning.
The team
Deloitte brings together AI researchers, modeling and platform engineers, architects, clinical and domain specialists, and product leaders to build, deploy, and operate verticalized AI systems across software, data, models, and cloud infrastructure \- engineered for one of the most complex operating environments in the world. The work spans the healthcare industry \- payers, providers, and life sciences \- and involves genuinely hard reasoning problems, nuanced operational workflows, and a high bar for reliability, with little tolerance for shallow or unreliable outputs. We pair frontier AI research with production\-grade engineering, and we ship into real clinical and operational settings rather than leaving models in the lab.
You can go deep. The team sub\-specializes across post\-training research, data and reward engineering, and training and inference infrastructure \- you won't be expected to own all of it alone.
Required qualifications
- Bachelor's degree in Computer Science, Machine Learning, Artificial Intelligence, Applied Mathematics, Computational Linguistics, or a related field.
- Demonstrated depth training and post\-training large transformer\-based language models in production or research \- this is your craft, not coursework or a one\-off fine\-tune. Genuine depth including SFT and at least one preference\-optimization or RL method, evidenced by shipped models, releases, or research.
- Hands\-on experience with reasoning\-model training and/or verifiable\-reward (RLVR) workflows.
- Strong understanding of modern post\-training techniques: SFT, RLHF, PPO, DPO, GRPO, RLAIF, and preference optimization workflows.
- Experience with open\-weight foundation models such as Llama, Qwen, Mistral, DeepSeek, or equivalent architectures.
- Strong expertise in PyTorch and modern deep\-learning tooling; experience with distributed training frameworks such as DeepSpeed, FSDP, Megatron\-LM, or Ray.
- Experience implementing efficient fine\-tuning techniques such as LoRA, QLoRA, PEFT, and quantization\-aware workflows.
- Deep understanding of transformer architectures, tokenization, attention mechanisms, decoding strategies, and model scaling trade\-offs.
- Strong grasp of LLM evaluation methodologies, benchmarking, reward modeling, and alignment trade\-offs; experience with large\-scale and synthetic datasets, filtering, deduplication, and quality\-control pipelines.
- Strong Python engineering skills and production\-grade software practices; ability to work through ambiguous, highly complex technical problems in fast\-moving environments.
- Ability to travel 0\-50%, on average, based on the work you do and the clients and industries/sectors you serve.
- Limited immigration sponsorship may be available.
Preferred qualifications
- Experience building or optimizing reasoning models, agentic models, or tool\-using LLM systems.
- Familiarity with inference optimization frameworks such as vLLM, TensorRT\-LLM, TGI, or Ollama.
- Experience with multimodal models, speech models, or domain\-specific foundation models; experience using large\-scale GPU clusters and distributed compute.
- Contributions to open\-source AI projects, research publications, benchmark development, or model releases.
- Familiarity with safety, governance, and responsible\-AI practices; experience in regulated or high\-stakes industries such as healthcare, finance, insurance, or public sector.
Compensation
Base salary is benchmarked to leading technology companies rather than traditional consulting scales, and the role carries a substantial performance\-based incentive opportunity designed to grow with the value you help create \- startup\-style upside, with the backing of a committed, well\-capitalized platform. The estimated base salary range is $189,200\-$372,900 (not adjusted for geographic differential); actual base pay depends on your skills, experience, and level, and you may also be eligible for a discretionary annual incentive based on individual and organizational performance.
Salary Context
This $189K-$372K range is above the 75th percentile for Research Engineer roles in our dataset (median: $202K across 52 roles with salary data).
View full Research Engineer salary data →Role Details
About This Role
Research Engineers bridge the gap between research and production. They implement papers, build experiment infrastructure, optimize training pipelines, and make research prototypes production-ready. They're the engineers who make research work at scale.
The role sits at a unique intersection. You need to understand the math well enough to implement novel architectures correctly, and you need the engineering chops to make them run efficiently on distributed systems. When a research scientist has a breakthrough idea, you're the person who turns it from a notebook prototype into a training pipeline that runs on 256 GPUs.
Across the 3,823 AI roles we're tracking, Research Engineer positions make up 2% of the market. At Deloitte, this role fits into their broader AI and engineering organization.
Research Engineer roles are growing as AI labs recognize that research velocity depends on engineering quality. The role is less competitive than Research Scientist (no PhD required), but the bar for engineering skill is very high. These roles are concentrated at major labs and well-funded startups.
What the Work Looks Like
A typical week involves: implementing a new attention mechanism from a recent paper, profiling and optimizing a training pipeline that's bottlenecked on data loading, building evaluation infrastructure for a new benchmark, debugging distributed training issues across a GPU cluster, and pair-programming with a research scientist on their latest experiment. The work is deeply technical.
Research Engineer roles are growing as AI labs recognize that research velocity depends on engineering quality. The role is less competitive than Research Scientist (no PhD required), but the bar for engineering skill is very high. These roles are concentrated at major labs and well-funded startups.
Skills Required
Strong software engineering fundamentals plus ML knowledge. Python, C++, and CUDA experience are common requirements. You'll need to read papers and turn ideas into working code. Distributed systems experience (especially distributed training) is highly valued. Performance optimization skills separate great candidates from good ones.
Experience with large-scale training infrastructure (FSDP, DeepSpeed, Megatron), GPU programming (CUDA, Triton), and the internals of ML frameworks (PyTorch internals, custom autograd functions) is what makes candidates stand out. The best research engineers can debug issues that span the full stack from GPU memory management to numerical precision to algorithmic correctness.
Strong postings mention the team's recent research, the infrastructure scale, and the specific technical challenges. They often list the research areas you'd support. Look for roles that emphasize both implementation quality and research understanding.
Compensation Benchmarks
Research Engineer roles pay a median of $260,000 based on 434 positions with disclosed compensation. Mid-level AI roles across all categories have a median of $165,000. This role's midpoint ($281K) sits 8% above the category median. Disclosed range: $189K to $372K.
Across all AI roles, the market median is $200,100. Top-quartile compensation starts at $253,500. The 90th percentile reaches $307,500. For comparison, the highest-paying categories include AI Engineering Manager ($275,000) and AI Safety ($274,200). By seniority level: Entry: $97,880; Mid: $165,000; Senior: $227,400; Director: $247,800; VP: $250,000.
Deloitte AI Hiring
Deloitte has 77 open AI roles right now. They're hiring across AI/ML Engineer, Data Scientist, AI Software Engineer, Research Engineer. Positions span Stamford, CT, US, Austin, TX, US, Jersey City, NJ, US. Compensation range: $121K - $372K.
Location Context
Across all AI roles, 15% (590 positions) offer remote work, while 3,217 require on-site attendance. Top AI hiring metros: New York (2,643 roles, $211,000 median); San Francisco (2,168 roles, $253,000 median); Los Angeles (1,792 roles, $191,580 median).
Career Path
Common paths into Research Engineer roles include Software Engineer, ML Engineer, Research Intern.
From here, career progression typically leads toward Senior Research Engineer, Research Scientist, ML Architect.
This is one of the best entry points into AI research without a PhD. Build a strong engineering portfolio with ML projects, contribute to open-source ML frameworks, and demonstrate that you can implement complex ideas correctly and efficiently. The transition to Research Scientist is possible with published first-author work, which some research engineer roles support.
What to Expect in Interviews
Technical screens test both engineering skill and research understanding. Expect coding rounds with performance-critical implementations (GPU optimization, efficient data loading). Be prepared to discuss papers relevant to the team's research area and explain how you'd implement key ideas. System design questions focus on training infrastructure: distributed training, experiment tracking, and compute resource management.
When evaluating opportunities: Strong postings mention the team's recent research, the infrastructure scale, and the specific technical challenges. They often list the research areas you'd support. Look for roles that emphasize both implementation quality and research understanding.
AI Hiring Overview
The AI job market has 3,823 open positions tracked in our dataset. By seniority: 112 entry-level, 1,798 mid-level, 1,516 senior, and 397 leadership roles (Director, VP, C-Level). Remote roles make up 15% of the market (590 positions). The remaining 3,217 roles require on-site or hybrid attendance.
The market median for AI roles is $200,100. Top-quartile compensation starts at $253,500. The 90th percentile reaches $307,500. Highest-paying categories: AI Engineering Manager ($275,000 median, 41 roles); AI Safety ($274,200 median, 55 roles); Research Engineer ($260,000 median, 434 roles).
Research Engineer roles are growing as AI labs recognize that research velocity depends on engineering quality. The role is less competitive than Research Scientist (no PhD required), but the bar for engineering skill is very high. These roles are concentrated at major labs and well-funded startups.
The AI Job Market Today
The AI job market spans 3,823 open positions across 15 role categories. The largest categories by volume: AI/ML Engineer (2,629), Data Scientist (322), AI Software Engineer (279). These three account for the majority of open positions, though smaller categories often have higher per-role compensation because of specialized skill requirements.
The seniority mix tells a story about where AI teams are in their maturity. Entry-level roles (112) are outnumbered by mid-level (1,798) and senior (1,516) positions, reflecting that most companies are past the 'build a team from scratch' phase and need experienced engineers who can ship production systems. Leadership roles (Director, VP, C-Level) total 397 positions, representing the bottleneck between technical execution and organizational strategy.
Remote work availability sits at 15% of all AI roles (590 positions), with 3,217 requiring on-site or hybrid attendance. The remote share has stabilized after the post-pandemic correction. Senior and specialized roles (Research Scientist, ML Architect) are more likely to be remote-eligible than entry-level positions, partly because experienced hires have more negotiating power and partly because these roles require less hands-on mentorship.
AI compensation is structured in clear tiers. The market median sits at $200,100. Top-quartile roles start at $253,500, and the 90th percentile reaches $307,500. These figures include base salary with disclosed compensation. Total compensation (including equity, bonuses, and sign-on) runs 20-40% higher at companies that offer those components.
Category matters for compensation. AI Engineering Manager roles lead at $275,000 median, while Prompt Engineer roles sit at $140,000. The spread between highest and lowest-paying categories reflects the premium on specialized technical skills versus broader analytical roles.
The most in-demand skills across all AI postings: Python (1,979 postings), Aws (1,190 postings), Azure (899 postings), Rag (839 postings), Gcp (726 postings), Pytorch (595 postings), Prompt Engineering (595 postings), Claude (540 postings). Python dominates, appearing in the vast majority of role descriptions regardless of category. Cloud platform experience (AWS, GCP, Azure) is the second most common requirement. The newer entrants to the top skills list (RAG, vector databases, LLM APIs) reflect the shift from traditional ML toward generative AI applications.
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