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Advancing Research at the intersection of Biology and Artificial Intelligence/Machine Learning (AI/ML) is sponsored by National Science Foundation (NSF) Directorate for Biological Sciences (BIO). Encourages proposals that advance biological research through the use or development of AI/ML methods using biological data and systems in areas supported by the Biological Sciences Directorate.
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Advancing Research at the intersection of Biology and Artificial Intelligence/Machine Learning (AI/ML) | NSF - U.S. National Science Foundation Important information for proposers and award recipients All proposals must be submitted in accordance with the requirements specified in the funding opportunity and in the Proposal & Award Policies & Procedures Guide (PAPPG) and its supplements .
All NSF grants and cooperative agreements are subject to the applicable set of NSF award terms and conditions . NSF has updated its research security policies for NSF funded projects.
Advancing Research at the intersection of Biology and Artificial Intelligence/Machine Learning (AI/ML) Encourages proposals that advance biological research through use of Artificial Intelligence/Machine Learning (AI/ML) or through development of AI/ML methods using biological data and systems in areas supported by the Biological Sciences Directorate.
Encourages proposals that advance biological research through use of Artificial Intelligence/Machine Learning (AI/ML) or through development of AI/ML methods using biological data and systems in areas supported by the Biological Sciences Directorate.
The U.S. National Science Foundation Directorate for Biological Sciences (NSF BIO) encourages the submission of proposals that advance biological research using Artificial Intelligence/Machine Learning (AI/ML) or AI/ML methods using biological data and systems. To tackle grand challenge problems across the biological sciences, researchers increasingly are turning to the development and adoption of AI/ML methods.
AI/ML includes any computational tool that mimics intelligence and the ability to learn from data to derive inferences. These methods are powerful tools for analyzing, synthesizing, and integrating large and complex datasets, developing predictive models, and designing and deploying bio-inspired innovations.
Unique aspects of information processing in biological systems and the complexity of biological data can also inform and inspire new developments in AI/ML. In addition, AI-enabled research requires a trained workforce prepared to use, develop, and validate appropriate AI/ML approaches and supporting technologies tailored for biological systems.
To promote research that benefits from AI/ML and reduces barriers to its use in the biological sciences, NSF BIO welcomes proposals that incorporate, develop, or advance AI/ML approaches across the research areas supported by the BIO Directorate. Proposers are encouraged to include partnerships between biologists and experts in AI/ML from academia, industry, or other organizations.
Areas where AI/ML approaches may be used include, but are not limited to: Implementing existing AI/ML methods to solve pressing questions in biology Developing new AI/ML models to derive biological insights Validating and/or comparing results from AI/ML methods against results from traditional analytical methods, theoretical models, and/or experimental approaches Proposals that advance both biological discovery and AI/ML research are especially encouraged.
Activities, such as generating well-curated and labeled, publicly available AI/ML training datasets, creating software and tools openly available to the scientific community, and developing a workforce trained and conversant in AI/ML approaches may be incorporated as elements relevant to the Intellectual Merit and/or Broader Impacts of proposals in response to this call. Proposals solely aimed at generating new data are not encouraged.
NSF offers access to computing resources through the National Artificial Intelligence Research Resource (NAIRR) Pilot for the research community to request access to a set of computing, model, platform, and educational resources for projects related to advancing AI research. This is not a special competition or new program. Relevant proposals should be submitted to an existing NSF BIO solicitation.
Proposal titles should begin with " BIO-AI: " followed by any other relevant prefixes and the project name. Before submission, PIs are encouraged to contact bio-ai@nsf. gov to discuss the appropriate mechanism for submission.
Proposals will be evaluated alongside other proposals submitted to the respective BIO unit and therefore must be responsive to the relevant solicitation. Proposals must also describe the AI/ML methods and justify how these methods address a scientific challenge or question that was previously intractable.
The project team must have appropriate expertise in AI/ML, which can be demonstrated through previous experience with proposed methods, collaboration with relevant experts, and/or pathways for training students and other researchers in AI/ML. General questions about this Dear Colleague Letter or specific questions about fit of the proposed research to this opportunity may be submitted to bio-ai@nsf. gov .
Assistant Director for Biological Sciences Directorate for Biological Sciences (BIO)
Based on current listing details, eligibility includes: Review official notice for complete eligibility requirements. Applicants should confirm final requirements in the official notice before submission.
Current published award information indicates Varies by specific solicitation Always verify allowable costs, matching requirements, and funding caps directly in the sponsor documentation.
The current target date is rolling deadlines or periodic funding windows. Build your timeline backwards from this date to cover registrations, approvals, attachments, and final submission checks.
Federal grant success rates typically range from 10-30%, varying by agency and program. Build a strong proposal with clear objectives, measurable outcomes, and a well-justified budget to improve your chances.
Requirements vary by sponsor, but typically include a project narrative, budget justification, organizational capability statement, and key personnel CVs. Check the official notice for the complete list of required attachments.
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Review timelines vary by funder. Federal agencies typically take 3-6 months from submission to award notification. Foundation grants may be faster, often 1-3 months. Check the program's timeline in the official solicitation for specific dates.
Many federal programs offer multi-year funding or allow competitive renewals. Check the official solicitation for continuation and renewal policies. Non-competing continuation applications are common for multi-year awards.
Postdoctoral Research Fellowships in Biology (PRFB) is sponsored by National Science Foundation (NSF) Directorate for Biological Sciences (BIO). These fellowships are awarded to recent doctoral degree recipients for research and training in selected areas supported by the BIO Directorate, with a focus on encouraging independence early in a research career.
Neural Systems is sponsored by National Science Foundation (NSF) Directorate for Biological Sciences (BIO) / Division of Integrative Organismal Systems (IOS). This NSF program supports mechanistic studies in neuroscience, from molecular and cellular to complex behavioral aspects of organisms. It encourages comparative approaches, studies in natural contexts, and novel theoretical, computational, and transdisciplinary approaches. Research areas include organization, activation, and modulation, with modulation specifically mentioning neuroimmune function. While broad, the inclusion of neuroimmune function and neuroscience research makes it a relevant opportunity.