Area:
visual motion processing
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High-probability grants
According to our matching algorithm, Benjamin Harvey is the likely recipient of the following grants.
Years |
Recipients |
Code |
Title / Keywords |
Matching score |
2020 |
Harvey, Benjamin |
N/AActivity Code Description: No activity code was retrieved: click on the grant title for more information |
I-Corps: System, Apparatus, and Method For Providing Behavior-Based Human-Centered Artificial Intelligence Augmentation to Enhance Performance @ George Washington University
The broader impact/commercial potential of this I-Corps project is to reduce the cost of machine learning (ML) development by up to 50%, while simultaneously increasing intelligence production to address national priorities. The advancements of Big Data and storage technology have led to increasing levels of data production but without enough qualified analysts to transform data into actionable insights. The federal government invests nearly $5 billion in research related to artificial intelligence (AI) and ML in fiscal 2020, and public sector forecasts suggest that AI decision support/augmentation will deliver $2.9 trillion in value. This project will introduce revolutionary methods enabling analysts to auto-visualize patterns to support public sector and private market applications.
This I-Corps project provides a framework for artificial intelligence (AI) augmentation that is tool-agnostic and can be used across any application, including national security. The innovation aims to integrate artificial intelligence (AI) augmentation and user behavior patterns through existing applications, collectively enhancing the performance of analysts and citizen data scientists. To address these challenges, the goal is to provide recommendations that are overlaid and integrated directly into the web application to help analysts increase intelligence production and dissemination across various public sector entities.
This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.
|
0.951 |
2021 |
Harvey, Benjamin |
N/AActivity Code Description: No activity code was retrieved: click on the grant title for more information |
I-Corps: Securing the Machine Learning Lifecycle and Providing Artificial Intelligence Assurance @ George Washington University
The broader impact of this I-Corps project is the development of a framework to securely develop Artificial Intelligence/Machine Learning (AI/ML). As the vulnerability of the AI/ML lifecycle becomes increasingly apparent, organizations that rely on the consistency and integrity of their AI/ML are faced with the difficult task of assuring AI/ML security. Along with challenges involved with tailoring the concept of zero trust into such environments, assuring security also needs to be accomplished quickly. The cost to develop and implement a single AI/ML model can reach hundreds of thousands of dollars, and the malicious alteration of AI/ML models, model features, and training data that effectively poison AI/ML can negate the return on this substantial investment. Such poisoning attacks are a nascent threat that is expected to become widespread as malicious actors gain technical ability. This susceptibility of AI/ML to poisoning attacks poses a severe national security concern as AI/ML has become central to mission-critical defense and intelligence capacities. This I-Corps project is based on the development of a lifecycle management tool utilizing blockchain technology. The proposed innovation will enable users to store, train, and deploy data, AI/ML models, and model features, with each transaction or attempted transaction. These transactions will be immutably logged to provide an audit trail, ensuring that nothing stored on the blockchain can be surreptitiously altered. These project goals are to determine how the use of blockchain technology may enhance the security of the AI/ML lifecycle. The technology may be used to analyze the AI/ML lifecycle security concerns and foci of stakeholders including intelligence agencies, academia, commercial businesses, and machine learning engineers. The project will also help determine if practical solutions exist for engineers to secure the machine learning lifecycle, examine economic models that inform the tradeoff of security, cost efficiency, awareness of virtual structure as it relates to the concept of “Zero AI Trust”, and test usability in machine learning lifecycle management tools.
This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.
|
0.951 |