Thoughts on Reimagining The University · Thoughts on Reimagining The University Rajiv Ramnath...
Transcript of Thoughts on Reimagining The University · Thoughts on Reimagining The University Rajiv Ramnath...
Thoughts on Reimagining The University
Rajiv RamnathProgram Director, Software Cluster, NSF/OAC
Version: 03/09/17 00:15
Workshop Focus• The research world has changed - how• The university needs to adapt its structure, mission,
infrastructure, education, recruitment. • Recognize new types of research outputs - software and
data • Adapt research staffing and give research staff a place in
academia • Tailor measures of success for faculty active in open
science/open research• Make universities competitive to attract the best students,
staff, and faculty
How can NSF support this – from an Research Cyberinfrastructure and Software Perspective?
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We Are Driven By Big Science - NSF Big Ideas
• Understanding the Rules of Life: Predicting Phenotype• Work at the Human-Technology Frontier: Shaping the
Future• Mid-scale Research Infrastructure• Windows on the Universe: The Era of Multi-messenger
Astrophysics• Navigating the New Arctic• Harnessing Data for 21st Century Science and
Engineering• The Quantum Leap: Leading the Next Quantum
Revolution• Growing Convergent Research
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Our Priorities Also Support Big Science
• A National CI Ecosystem– Community establishment (directive to leverage
Institutes)– Sustainability– Building on existing assets– Towards an infrastructure “platform”
• Enabling Robust and Reliable Science– Repeatability -> Replicability -> Reproducibility– Uncertainty quantification– Software publication, citation– Education
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We are Looking to the Future of Computing – the 5 NSCI Objectives
1. Exascale computing system…– Foundational work on science, algorithms, programming
environments, system software, architecture, and performance evaluation
2. Increasing coherence between … simulation and data analytics…– Science and technology that use and enable applications involving
both computational simulation and data analysis.3. A viable path forward … [in] the ‘post-Moore’s Law era
– Foundational work on new device technology, fabrication methods, computer architectures, software techniques.
4. An enduring National HPC ecosystem…– Develop, integrate, and deploy building blocks of an HPC ecosystem. – Advance the organization, architecture applications of such a system, – Enhance user productivity, broaden participation, skilled workforce.
5. Public-private collaboration…”– Existing programs, such as GOALI, SBIR/SBTT, and IUCRC– Technology transition to and from practice – Advance the use of HPC technology in the commercial sector
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HYPOTHESESINFORMATION
DATA IN CONTEXT
DISCOVERY
THEORY
DATA
Encouraging Convergence and Co-design Builds the Future Research Infrastructures
AccessVisualization Data Quality
Collaboration Tools
Exploratory Analysis
AnalyticsHigh Performance ComputingComputational-Mathematical -Statistical Methods/Models
InterpretationModel ValidationRedesign
ExperimentsData CollectionBenchmark Data Sets
Science domainsSystems, algorithms Foundations
Cyberinfrastructure
Workforce
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Our Initiatives Seek to Help Holistically
Support Foundational CI Research and Development
Support Scientific Research and
Development with CI
Influence Community, Policies,
Environment for Sustainability of the
CI Ecosystem Help Develop a Trained
CIWorkforce
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Example: Software Programs Target the Research -> Production Pipeline
• Research in Scientific Software• Computational and Data-Enabled Science & Engineering (CDS&E)• Critical Resilient Infrastructure Systems and Processes (CRISP)• Designing Material to Revolutionize and Engineer our Future (DMREF)
• Exploiting Parallelism and Scalability (XPS) and Scalable Parallelism in the Extreme (SPX)
• Development, Deployment of CI (lead)• Software Infrastructure for Sustained Innovation (SI2):
• Discretionary investments:• Venture/Reuse Fund• EAGERs and RAPIDs• Workshops• Supplements including REU
• Collaborations with other software programs:– Advances in Biological Informatics (ABI)– Metadata for Long-standing Large-Scale Social Science Surveys (META-SSS)– Geoinformatics Program in the Division of Earth Sciences (EAR) – Polar Cyberinfrastructure Program in Polar Programs– Critical Techniques, Technologies and Methodologies for Advancing Foundations
and Applications of Big Data Sciences and Engineering (BIGDATA)– Integrative Graduate Education and Research Traineeship Program-CIF21 Track
(IGERT)8
• Fill a recognized need in the science community
• Create innovative, robust and reliable research capabilities in science and engineering for researchers
• Embed research and innovation into the project activities
• Use a comprehensive user-engaged management plan
• Resourced by teams with credibility in engineering, and science
• Build community through direct engagement
• Progress towards sustainability after NSF funding has ended
• Further a national CI ecosystem (reuse, integrate, adopt)
Example: Unique Criteria for Software Cyberinfrastructure Bring in the Full Range of Capabilities
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Embedded Research in CI Projects Creates Robust Insights that help Build Academic Reputations
Systems Integration:– New integration techniques - auto-generation of integration code from interface
specifications– Studies of software engineering methods for s/w integration – DevOps, continuous
deployment– Studies of integrative methods for data science– Empirical studies on software reuse in science– Analytical models for understanding/evaluating performance, scalability, security during
integration– Service-based integration of data analytics and HPC system architectures
HCI: – Search based composition of services– Human-computer interfaces and interaction design and evaluation during integration -
e.g. when “surprise" is a givenSBE:
– Ethnographic studies on how scientists actually work– Economic and social aspects of reuse– Economic and social aspects of integration– Science of team science in dynamic situations
Education:– Learning theories for "just-in-time" application (novice vs. expert learning)
Domain science:– End-to-end composition of models across scales (neuron->cognition, chip->data center)
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Cyber Scientiststo develop
new capabilities
Area Scientiststo exploit
new capabilities
Professional Staffto support
new capabilities
ACI
We Consider the Research Workforce as Infrastructure
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We Support The Career Pipeline• Goal: Build robust careers paths in Cyber-
Infrastructure (CI) and Computational and Data-enabled Science and Engineering (CDSE)
• Techniques: Leverage existing programs for early-stage researchers. Develop new programs in areas of need/challenge
REU Sites
NRT/IGERT
CI-TraCS
CAREERCURRICULA, Educational Resources
RESEARCHERSCAMPUS CLIMATE
CRII
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Finally: We hope to learn from this workshop• Universities have to wrestle with
how to make open science work for all their diverse research communities
• What we learn here will inform our programs
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Thanks!