Associate Principal AI Research Scientist (Fundamental AI Research for Digital Biology) jobs in United States
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AstraZeneca · 12 hours ago

Associate Principal AI Research Scientist (Fundamental AI Research for Digital Biology)

AstraZeneca is a leading pharmaceutical company committed to delivering life-changing medicines. They are seeking an Associate Principal AI Research Scientist to lead and deliver research projects focused on novel AI theories and methodologies for various biological applications, while addressing fundamental AI research challenges in drug discovery and development.

BiopharmaBiotechnologyHealth CareMedicalPharmaceuticalPrecision Medicine
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Comp. & Benefits
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H1B Sponsor Likelynote

Responsibilities

Work as part of a high‑performing team to lead and deliver research projects, researching, developing and using novel AI theories, methodologies and algorithms with engineering best practices for a range of biology, chemistry and clinical applications
Lead and contribute to multifunctional projects to conceive, design, develop and conduct experiments to test hypotheses, validate new approaches and compare the effectiveness of different AI/ML systems, algorithms, methods and tools for new applications that support the discovery, design and optimisation of medicines with improved biological activity
Address fundamental AI research challenges and opportunities across the drug discovery and development value chain, providing innovative solutions in areas such as deep learning, representation learning, reinforcement learning, meta‑learning, active learning, search and optimisation, applied to domains including de novo molecule design, protein engineering, in‑silico discovery, structural biology, genetic engineering, synthetic biology, computational biology, translational sciences, biomarker discovery, clinical research and clinical trials
Design and develop machine learning models for heterogeneous biological data, collaborating with experimental scientists (e.g. in chemistry, discovery science and other experimental fields) to plan and interpret algorithmically designed wet‑lab experiments and inform future experimental directions
Translate complex scientific requirements into AI research problems and solution strategies, exploring different approaches and reasoning about trade‑offs to tackle diverse, complex challenges across multiple projects
Stay at the forefront of AI/ML research by participating in journal clubs, seminars, mentoring and personal development initiatives, and by contributing to publications and academic/industry collaborations

Qualification

Fundamental AI researchMachine learning modelsDeep learning frameworksPython programmingStatistical analysisAlgorithm developmentCloud computingResearch publicationExperimental designCollaboration skillsCommunication skills

Required

PhD in machine learning, statistics, computer science, mathematics, physics or a related technical discipline, with relevant fundamental research experience in AI/ML, or equivalent practical experience
Fundamental AI research experience with a strong track record in conceptualising, designing and creating entirely new models, methods, approaches, architectures and algorithms from scratch
Deep theoretical understanding and strong quantitative knowledge of algebra, algorithms, probability, calculus and statistics, combined with extensive hands-on experience in experimentation, analysis and visualisation of AI/ML techniques
Well-rounded experience designing new AI/ML approaches to derive insights from proprietary and external datasets and to generate testable hypotheses, using algorithmic, mathematical, computational and statistical methods combined with theoretical, empirical or experimental research approaches
Experience in theoretical, fundamental AI research and practical aspects of AI/ML foundations and model design, such as improving model efficiency, quantisation, conditional computation, reducing bias or achieving explainability in complex models
In-depth understanding of rigorous scientific methodology to identify and create novel ML techniques and the data required to train models, develop machine learning model architectures and training algorithms, analyse and tune experimental results to inform future experimental directions, implement and scale training and inference frameworks, validate hypotheses in a reproducible manner
Distinctive experience in using anything from simple baseline tricks to cutting-edge research methods to advance AI/ML capabilities, and in implementing them in an elegant, stable and scalable way
Strong algorithmic development and programming experience in Python or similar languages, and standard machine learning toolkits, especially deep learning frameworks such as PyTorch, TensorFlow or similar
Robust ability to communicate and collaborate effectively with diverse stakeholders, clearly presenting research findings and developments to scientists, engineers and domain experts from different disciplines, including non-AI audiences
Fundamental research expertise and hands-on experience, combined with theoretical knowledge, in at least two or more of the following research areas: Multi-agent systems, logic, causal inference, Bayesian optimisation, experimental design, Deep learning, reinforcement learning, non-convex optimisation, Bayesian non-parametrics, Natural language processing, approximate inference, control theory, meta-learning, category theory, Statistical mechanics, information theory, knowledge representation, supervised/unsupervised/semi-supervised learning, Computational complexity, search and optimisation, artificial neural networks, multi-scale modelling, transfer learning, Mathematical optimisation and simulation, planning and control modelling, time series, foundation models, federated learning, game theory, Statistical inference, pattern recognition, large language models, probability theory, probabilistic programming, Bayesian statistics, Multimodality, computational linguistics, representation learning, foundations of generative modelling, computational geometry and geometric methods, multi-modal deep learning, information retrieval and related areas

Preferred

Fluency in Python, R and/or Julia or other programming languages, including scientific packages and libraries (e.g. PyTorch, TensorFlow, Pandas, NumPy, Matplotlib)
Experience in machine learning research and developing fundamental algorithms and frameworks that can be applied to a wide range of machine learning problems, particularly in biology, chemistry and clinical applications, with a demonstrated track record of solving biological problems relevant to drug discovery and development
Research experience demonstrated by journal and conference publications in prestigious venues (with at least one publication as a leading author), e.g. NeurIPS, ICML, ICLR, JMLR or similar
A track record of successful collaboration with AI engineering teams to deliver complex machine learning models and production-ready data and analytics products
Practical experience working in cloud computing environments such as AWS, GCP or Azure
Domain knowledge of tools, techniques, methods, software and approaches in one or more areas such as protein engineering, microbiology, structural biology, molecular design, biochemistry, genomics, genetics, bioinformatics, molecular/cellular/tissue biology
Evidence of open-source projects, patents, personal portfolios, products, peer-reviewed publications or similar achievements

Company

AstraZeneca

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AstraZeneca is a pharmaceutical company that discovers, develops, manufactures, and markets prescription medicines. It is a sub-organization of Investor.

H1B Sponsorship

AstraZeneca has a track record of offering H1B sponsorships. Please note that this does not guarantee sponsorship for this specific role. Below presents additional info for your reference. (Data Powered by US Department of Labor)
Distribution of Different Job Fields Receiving Sponsorship
Represents job field similar to this job
Trends of Total Sponsorships
2021 (2)
2020 (11)

Funding

Current Stage
Public Company
Total Funding
$5.26B
2024-07-30Post Ipo Debt· $1.51B
2023-02-28Post Ipo Debt· $2.25B
2023-02-24Post Ipo Debt· $1.5B

Leadership Team

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Pascal Soriot
Chief Executive Officer
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Aradhana Sarin
Group CFO and Executive Director
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Company data provided by crunchbase