About QuantHealth
QuantHealth is a fast-growing AI company transforming drug development through clinical simulations, predictions of disease progression and treatment effects, and large-scale biomedical AI.
Our platform combines real-world patient data from over 350 million patients, biomedical knowledge graphs, and advanced machine learning models to simulate clinical trials and predict
patient outcomes. Pharmaceutical companies use QuantHealth platform to optimize trial design, reduce development risk, and accelerate the development of new therapies.
At the core of our platform is a family of proprietary AI models that learn from large-scale longitudinal healthcare data and biomedical knowledge to model disease progression, treatment effects, and clinical trial outcomes.
About the Role
We are looking for a Senior AI Research Engineer to help develop the next generation of QuantHealth’s core AI technology.
This is a highly technical, hands-on role focused on advancing our foundation models and predictive modeling capabilities. You will work closely with the Director of AI & Algorithms
and a team of researchers and engineers to develop novel machine learning approaches that improve how clinical outcomes, treatment effects, and patient trajectories are modeled.
The ideal candidate combines strong research instincts with exceptional implementation skills. You are comfortable reading and evaluating cutting-edge research, designing new modeling
approaches, and turning ideas into robust, production-ready systems. This role is primarily an individual contributor position, with a strong emphasis on research,
experimentation, algorithm development, and technical execution.
Responsibilities
- Design, develop, and evaluate novel machine learning algorithms that advance
QuantHealth’s core modeling capabilities. - Drive the development of significant components of the next generation of QuantHealth
foundation models and predictive modeling systems. - Evaluate, implement, and extend state-of-the-art machine learning research and translate
promising advances into QuantHealth’s modeling platform. - Research and implement state-of-the-art approaches in areas such as:
- Transformer architectures
- Self-supervised and representation learning
- Foundation models
- Multimodal learning
- Knowledge-graph-enhanced modeling
- Temporal modeling of longitudinal patient data
- Causal and treatment-effect modeling
- Uncertainty quantification
- Design and evaluate new pre-training objectives, model architectures, representations,
and learning strategies. - Develop rigorous validation methodologies and contribute to benchmarking and
evaluation frameworks. - Implement research ideas efficiently and at high-quality using modern machine learning
frameworks. - Collaborate closely with Clinical Teams, DataOps, MLOps, Product, and Engineering
teams. - Stay current with advances in machine learning and identify opportunities to incorporate
relevant innovations into QuantHealth’s platform. - Communicate technical findings clearly and proactively raise risks, limitations, and
opportunities when identified. - Contribute to scientific publications, patents, and external thought leadership initiatives
when appropriate.
Qualifications - MSc or PhD in Computer Science, Machine Learning, Statistics, Mathematics, Physics,
Computational Biology, or a related quantitative discipline. PhD strongly preferred. - 5+ years of experience developing advanced machine learning systems in industry,
academia, or both. - Strong hands-on experience developing deep learning systems using PyTorch or
equivalent frameworks. - Demonstrated experience designing, implementing, and evaluating novel machine
learning approaches. - Deep expertise in modern machine learning architectures, including transformer-based
models, self-supervised learning, representation learning, and foundation models. - Experience designing, training, adapting, and optimizing transformer-based and other
large-scale machine learning models, including distributed training and large-scale
experimentation environments. - Strong background in machine learning, statistics, optimization, and experimental design.
- Experience translating research concepts into reliable software and production-ready
systems. - Excellent software engineering skills and coding practices.
- Strong communication skills and ability to work effectively in highly cross-functional
environments. - Proven ability to work independently, drive complex projects, and operate with high
ownership. - Proven ability to critically evaluate scientific literature and independently identify
promising research directions.
Strong Advantages - Experience developing foundation models, large language models, or large-scale self-
supervised learning systems. - Experience with multimodal machine learning.
- Experience with graph neural networks, knowledge graphs, or representation learning
over structured biomedical data. - Experience with causal inference, treatment-effect estimation, survival analysis, or time-
to-event modeling. - Experience working with healthcare, biomedical, pharmaceutical, or real-world patient
data. - Track record of publications at leading machine learning or AI conferences.
- Experience working in high-growth startup environments.
- Experience implementing and extending state-of-the-art research papers.
Skills Required
- MSc or PhD in Computer Science, Machine Learning, Statistics, Mathematics, Physics, Computational Biology, or related quantitative discipline (PhD strongly preferred)
- 5+ years developing advanced machine learning systems in industry or academia
- Hands-on experience developing deep learning systems using PyTorch or equivalent frameworks
- Demonstrated experience designing, implementing, and evaluating novel machine learning approaches
- Deep expertise in transformer-based models, self-supervised learning, representation learning, and foundation models
- Experience designing, training, adapting, and optimizing large-scale ML models, including distributed training and large-scale experimentation
- Strong background in machine learning, statistics, optimization, and experimental design
- Experience translating research concepts into reliable, production-ready software and systems
- Excellent software engineering skills and coding practices
- Strong communication skills and ability to work effectively in cross-functional environments
- Proven ability to work independently, drive complex projects, and operate with high ownership
- Proven ability to critically evaluate scientific literature and independently identify promising research directions
- Experience developing foundation models, LLMs, or large-scale self-supervised systems
- Experience with multimodal ML, knowledge graphs, graph neural networks, or representation learning over structured biomedical data
- Experience with causal inference, treatment-effect estimation, survival analysis, or time-to-event modeling
- Experience working with healthcare, biomedical, pharmaceutical, or real-world patient data
- Track record of publications at leading ML or AI conferences
- Experience working in high-growth startup environments and implementing state-of-the-art research papers
What We Do
QuantHealth is an AI company conducting patient-centric drug simulations to accelerate and de-risk drug development. Over 90% of drugs in clinical development stage fail to reach the market, which accumulates to a $45B/year direct lost to the pharma and biotech industry. Our platform allows our pharma and biotech partners to rapidly run thousands of variations of their clinical trials to optimize the trial design and significantly increase the probability of trial success, all while enabling discovery of new clinical opportunities and optimization strategies. QuantHealth has one the largest integrated datasets that spans the clinical, pharmacological and biological domains together with a proprietary AI platform that can predict patient-response to both approved and novel therapies.
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