WOLFRAM

Wolfram Innovator Award

Wolfram technologies have long been a major force in many areas of industry and research. Leaders in many top organizations and institutions have played a major role in using computational intelligence and pushing the boundaries of how the Wolfram technology stack is leveraged for innovation across fields and disciplines.

We recognize these deserving recipients with the Wolfram Innovator Award, which is awarded at the Wolfram Technology Conferences around the world.

2022

Paul R. Garvey

Distinguished Chief Engineer/Scientist, The MITRE Corporation

Areas: Authoring and Publishing, Data Analysis, Data Analytics, Economic Research and Analysis, Modeling Dynamical Systems with Mathematica, Risk Analysis, Risk Management, System Modeling

Paul R. Garvey is a distinguished chief engineer/scientist at The MITRE Corporation, a not-for-profit organization operating federally funded research and development centers for the US government. He has decades of experience in systems operations research, network modeling, mission systems risk analyses, and the application of risk-decision analytics across a variety of problems in the federal government. His current work involves modeling the network structure of the US food supply chain, which is being done in collaboration with datasets and published studies by the University of Illinois Urbana-Champaign (UIUC) research team led by Professor Megan Konar.

Garvey has authored several textbooks, written numerous papers, holds a US patent, and continues to contribute his expertise and extensive Wolfram Language abilities to tackle big problems. One example is his work “US Food Supply Chain Security: A Network Analysis,” in conjunction with UIUC.

Utilizing Mathematica’s network modeling technologies, they identified critical US counties and links associated with the meat supply chain, which is characterized by 2,817 US counties (nodes) and 30,670 origin-to-destination links (edges) that exist between them.

2021

Leonardo Roncetti

Project Director for Offshore Structures and Maritime Works, TechCon Engineering and Consulting

Areas: Data Analysis, Engineering, Risk Management, Software Development, Structural Engineering

Leonardo Roncetti created data analysis and decision-making process for critical lifting operations of personnel on offshore platforms by crane to increase the safety of this extremely dangerous field. He is also known for creating a methodology that utilizes artificial intelligence to monitor cracks in concrete or steel structures in real time to prevent collapse and study damage over time. This methodology can be used in structures such as dams, bridges, nuclear power plants, buildings, hazardous-content storage tanks and many other large structures. He is an often-sought-after expert regarding structural failures and accidents of many types and has appeared and/or been interviewed about such across many media outlets.

2021

Edmund Robinson

Director of Data Analytics, Afiniti

Areas: Actuarial Sciences, Data Analysis, Data Analytics, Data Science, Industrial Mathematics, Risk Analysis, Risk Management, Software Development

Edmund Robinson is an industrial mathematician and software developer who has made many noteworthy contributions in the fields of fund and risk management as well as reinsurance. His prominent work includes the creation of interactive visualizations to provide breakdowns and comparisons of funds on the fly; generation of highly formatted performance figures with financial measures and statistics; summary infographics and PDF export; and rapid modeling, simulation and analysis of bespoke contract structures with interactive data, model and parameter selection. Edmund has also given talks focusing on workflows that combine third-party geographic information system (GIS) datasets with the contract loss distributions to produce a dynamic tool to estimate and visualize incurred but not reported (IBNR) claims related to a windstorm event and historical analysis of sunny-day flooding occurrences and forecasting with time series analysis.

2017

Dr. Tarkeshwar Singh

Quantitative Analyst and Software Engineer, Quiet Light Securities

Areas: Authoring and Publishing, Finance, Machine Learning, Risk Management

Dr. Singh is a quantitative analyst and software engineer at Quiet Light Securities and an early adopter of Wolfram Finance Platform. In conjunction with the CTO, Robert Maxwell, Dr. Singh brought Finance Platform on board to support daily derivative trading operations by developing extensive strategies and volatility surface models, as well as performing backtesting with intraday market tick data. He also provided daily snapshots of company-wide risk through CDF documents that provided insights and satisfied compliance requirements. He also developed an internal training program to bring quants up to speed with Wolfram technologies. In the future, he hopes to utilize the machine learning capabilities of the Wolfram Language to develop advanced trading algorithms through neural networks.

2015

UnRisk Development Team

MathConsult GmbH and uni software plus GmbH

Areas: Financial Analysis, Industrial Mathematics, Risk Management, Software Development

MathConsult GmbH and uni software plus GmbH share this award for their work in the development and continued success of the UnRisk family of products, built on the Wolfram Language and used in the finance industry for financial derivatives and risk analytics. The two companies are closely linked, working together on numerous other industrial mathematics consultancy projects, and are based at the Johannes Kepler University Linz. They have been long-term advocates of Wolfram technologies, a byproduct of the strong sales and marketing partnership uni software plus has had with Wolfram for over two decades. Michael Aichinger, Stefan Janecek, and Sascha Kratky were present to accept the award on behalf of both companies, but special mention must go to Michael Schwaiger, Andreas Binder, and Herbert Exner, who were unable to collect the award in person.

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