2152205
Project Grant
Overview
Grant Description
Interdisciplinary Training in Data-Driven Soft Materials Research and Science Policy
Soft materials are those which, at room temperature, are easily deformed by changes to the temperature of the material. Examples include foams, gels, and many biological materials. Due to the complexity of the objects under study, advances in soft materials research are becoming more challenging to achieve using traditional approaches. At the same time, there is a growing need to develop new soft materials designed to address pressing societal concerns, many of which are environment- and energy-related. The associated technology implementation landscapes are also complex from a policy perspective. They are particularly challenging to navigate for classically trained scientists working beyond the lab to provide technology solutions for society.
These issues highlight critical gaps in how students are trained to undertake both discipline-centered soft materials research and to tackle societal issues associated with the products of such research. This NSF Research Traineeship (NRT) award will address these gaps by implementing a new graduate education model that equips trainees to leverage data-intensive strategies driven by machine learning for soft materials research and positions them to make impactful contributions beyond the lab through science policy.
The project will provide a unique training opportunity for an anticipated 50 Ph.D. students (20 NRT-funded) and 40 master's students to develop and exercise a new paradigm for tackling high complexity soft materials research and understanding societal implications of technology through science policy. In addition, the project will build a diverse, inclusive, and vibrant community of scholars working within a network of internal and external mentors. The project's investigators aim to graduate leaders in academia, industry, and government, where the ability to harness data and integrate knowledge from multiple disciplines is critical.
Two objectives guide the project's traineeship experiences: (1) help students effectively harness data-intensive strategies to facilitate breakthroughs in complex soft material systems and (2) enable students to integrate information from multiple disciplines and the combined effects from multiple system responses, to effectively confront vexing scientific and societal challenges. The first objective is being met through a transdisciplinary research approach entailing the convergence of computer science (machine learning; data science) and autonomous experimentation with the traditional interdisciplinary approaches (physics, chemistry, engineering, biology) currently used to study soft materials. The second objective is being attained through formal training and experiential learning in science policy to equip students with tools (e.g., thought processes, teamwork, transdisciplinary approaches) to thrive in convergence research and effectively address important societal issues involving science and technology.
This NRT project encompasses three major research areas: autonomous experimentation, colloidal and macromolecular materials, and living soft materials. Potential contributions include the advancement of data-intensive methodologies, autonomous experimentation as a mode of discovery in soft materials research, and the development of new concepts at the interface of information theory, control theory, and materials science. The project will implement a custom-designed transdisciplinary curriculum and associated certificate program that use best practices to monitor and evaluate academic outcomes that are responsive to trainees and other stakeholders. This award supports immersive experiences for trainees in industry, government, and academia. Furthermore, the project targets the recruitment of women and members of groups underrepresented in their participation in STEM fields of study as a major goal of building a diverse community. Towards this goal, the project's team will develop a network of minority-serving institutions for research exchanges, student-focused bootcamps, and trainee recruitment.
The NSF Research Traineeship (NRT) program is designed to encourage the development and implementation of bold, new potentially transformative models for STEM graduate education training. The program is dedicated to effective training of STEM graduate students in high-priority interdisciplinary or convergent research areas through comprehensive traineeship models that are innovative, evidence-based, and aligned with changing workforce and research needs. 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.
Soft materials are those which, at room temperature, are easily deformed by changes to the temperature of the material. Examples include foams, gels, and many biological materials. Due to the complexity of the objects under study, advances in soft materials research are becoming more challenging to achieve using traditional approaches. At the same time, there is a growing need to develop new soft materials designed to address pressing societal concerns, many of which are environment- and energy-related. The associated technology implementation landscapes are also complex from a policy perspective. They are particularly challenging to navigate for classically trained scientists working beyond the lab to provide technology solutions for society.
These issues highlight critical gaps in how students are trained to undertake both discipline-centered soft materials research and to tackle societal issues associated with the products of such research. This NSF Research Traineeship (NRT) award will address these gaps by implementing a new graduate education model that equips trainees to leverage data-intensive strategies driven by machine learning for soft materials research and positions them to make impactful contributions beyond the lab through science policy.
The project will provide a unique training opportunity for an anticipated 50 Ph.D. students (20 NRT-funded) and 40 master's students to develop and exercise a new paradigm for tackling high complexity soft materials research and understanding societal implications of technology through science policy. In addition, the project will build a diverse, inclusive, and vibrant community of scholars working within a network of internal and external mentors. The project's investigators aim to graduate leaders in academia, industry, and government, where the ability to harness data and integrate knowledge from multiple disciplines is critical.
Two objectives guide the project's traineeship experiences: (1) help students effectively harness data-intensive strategies to facilitate breakthroughs in complex soft material systems and (2) enable students to integrate information from multiple disciplines and the combined effects from multiple system responses, to effectively confront vexing scientific and societal challenges. The first objective is being met through a transdisciplinary research approach entailing the convergence of computer science (machine learning; data science) and autonomous experimentation with the traditional interdisciplinary approaches (physics, chemistry, engineering, biology) currently used to study soft materials. The second objective is being attained through formal training and experiential learning in science policy to equip students with tools (e.g., thought processes, teamwork, transdisciplinary approaches) to thrive in convergence research and effectively address important societal issues involving science and technology.
This NRT project encompasses three major research areas: autonomous experimentation, colloidal and macromolecular materials, and living soft materials. Potential contributions include the advancement of data-intensive methodologies, autonomous experimentation as a mode of discovery in soft materials research, and the development of new concepts at the interface of information theory, control theory, and materials science. The project will implement a custom-designed transdisciplinary curriculum and associated certificate program that use best practices to monitor and evaluate academic outcomes that are responsive to trainees and other stakeholders. This award supports immersive experiences for trainees in industry, government, and academia. Furthermore, the project targets the recruitment of women and members of groups underrepresented in their participation in STEM fields of study as a major goal of building a diverse community. Towards this goal, the project's team will develop a network of minority-serving institutions for research exchanges, student-focused bootcamps, and trainee recruitment.
The NSF Research Traineeship (NRT) program is designed to encourage the development and implementation of bold, new potentially transformative models for STEM graduate education training. The program is dedicated to effective training of STEM graduate students in high-priority interdisciplinary or convergent research areas through comprehensive traineeship models that are innovative, evidence-based, and aligned with changing workforce and research needs. 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.
Funding Goals
THE GOAL OF THIS FUNDING OPPORTUNITY, "NATIONAL SCIENCE FOUNDATION RESEARCH TRAINEESHIP (NRT) PROGRAM", IS IDENTIFIED IN THE LINK: HTTPS://WWW.NSF.GOV/PUBLICATIONS/PUB_SUMM.JSP?ODS_KEY=NSF21536
Grant Program (CFDA)
Awarding / Funding Agency
Place of Performance
Philadelphia,
Pennsylvania
19104-6319
United States
Geographic Scope
Single Zip Code
Related Opportunity
Analysis Notes
Amendment Since initial award the total obligations have increased 5% from $3,000,000 to $3,150,000.
Trustees Of The University Of Pennsylvania was awarded
Data-Driven Soft Materials Research and Science Policy Training
Project Grant 2152205
worth $3,150,000
from the Division of Graduate Education in July 2022 with work to be completed primarily in Philadelphia Pennsylvania United States.
The grant
has a duration of 5 years and
was awarded through assistance program 47.076 Education and Human Resources.
The Project Grant was awarded through grant opportunity National Science Foundation Research Traineeship (NRT) Program.
Status
(Ongoing)
Last Modified 9/5/23
Period of Performance
7/1/22
Start Date
6/30/27
End Date
Funding Split
$3.1M
Federal Obligation
$0.0
Non-Federal Obligation
$3.1M
Total Obligated
Activity Timeline
Transaction History
Modifications to 2152205
Additional Detail
Award ID FAIN
2152205
SAI Number
None
Award ID URI
SAI EXEMPT
Awardee Classifications
Private Institution Of Higher Education
Awarding Office
491101 DIVISION OF GRADUATE EDUCATION
Funding Office
491101 DIVISION OF GRADUATE EDUCATION
Awardee UEI
GM1XX56LEP58
Awardee CAGE
7G665
Performance District
PA-03
Senators
Robert Casey
John Fetterman
John Fetterman
Budget Funding
| Federal Account | Budget Subfunction | Object Class | Total | Percentage |
|---|---|---|---|---|
| STEM Education, National Science Foundation (049-0106) | General science and basic research | Grants, subsidies, and contributions (41.0) | $3,150,000 | 100% |
Modified: 9/5/23