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skills and familiarity with LLM APIs (e.g., OpenAI API), agent frameworks (e.g. LangChain), PyTorch, and the Python scientific stack (e.g., numpy, pandas, scikit-learn). Experience with front-end
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programming background Experience in computer vision projects Experience in software or webapp development/API integration Interest (but not necessarily expertise) in medicine and radiotherapy Required
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our Cookie Policy and the list of Google Ad-Tech Vendors . You may choose not to allow some types of cookies. However, blocking some types may impact your experience of our site and the services we
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-mining/NLP pipelines). Experience developing research software that supports end users, including building web-based tools/platform features, APIs, dashboards, and deployable prototypes (level of depth can
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) • Big data pipelines, distributed computing, and geospatial data processing • Python, R, SQL/NoSQL, containerization (Docker), Kubernetes • API development and web-based analytics tools • Systems
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& Pressure Vessel Code, API standards, R5, RCC-MRx, or similar documents. Coding experience in Python. Skilled in oral and written communications, with the ability to present research at all levels
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, containerization (Docker), Kubernetes API development and web-based analytics tools Systems, Optimization, and AI ML/AI for mobility prediction and optimization Graph algorithms, network science Spatiotemporal
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evidenced by publications, preprints, or clearly defined completed work on CV and Google Scholar ● Contributions to open-source software, reproducible pipelines, or publicly available tools (e.g
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of scientific AI. Focus Areas: Cross-Domain Interoperability: Develop common readiness templates, standardized metadata models, and APIs to enable seamless integration across diverse scientific domains
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this Google Form: https://docs.google.com/forms/d/e/1FAIpQLSe4Qc-KJ-BAlPixUnBjBZvl9OVh1oB-gRR85dhhOAdQx7teMQ/viewform?usp=publish-editor (link is external) Please note: The form will require all application