A conversation with Quants, Thinkers and Innovators all challenged to innovate in turbulent times!
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Join QuantUniversity for a complimentary spring speaker series where you will hear from Quants, innovators, startups and Fintech experts on various topics in Quant Investing, Machine Learning, Optimization, Fintech, AI etc.
Privacy-preserving Analytics and Machine Learning with Differential Privacy
With Andreas Kopp and Lucas Rosenblatt from Microsoft
The COVID -19 pandemic demonstrates the tremendous importance of data for research, cause analysis, government action, and medical progress. However, for understandable data protection considerations,
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individuals and decision-makers are often very reluctant to share personal or sensitive data. To ensure sustainable progress, we need new practices that enable insights from personal data while reliably protecting individuals' privacy.
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Pioneered by Microsoft Research and associates, differential privacy is the emerging gold standard for protecting data in applications like preparing and publishing statistical analyses. Differential privacy provides a mathematically measurable privacy guarantee to individuals by adding a carefully tuned amount of statistical noise to sensitive data. It promises significantly higher privacy protection levels than commonly used disclosure limitation practices like data anonymization.
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Join our session to learn about:
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- What differential privacy is and how it works
- Microsoft's and Harvard's OpenDP initiative and the SmartNoise systemÂ
- Using SmartNoise to protect sensitive data against privacy attacks
- How to create differentially private synthetic data using the new SmartNoise synthesizers
- Performing analytics, machine learning including deep learning on sensitive data using differential privacy
- The trade-off between privacy guarantee and accuracy of analytical results
- How to engage in our Early Adopter program
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Digital Advisor for AI Solutions, Microsoft
As a Microsoft Digital Advisor, Andreas Kopp advises Enterprise customers on the planning and implementation of digital business solutions. His focus is on applied business AI solutions, including medical imaging and fraud detection. Furthermore, he specializes in practical solutions for the responsible use of AI systems. Among these are AI interpretability and fairness, as well as differential privacy.Â
ML Engineer (MAIDAP) at Microsoft
Lucas Rosenblatt is a Machine Learning Engineer and Researcher with Microsoft's AI Development Acceleration Program (MAIDAP). He works in the space of responsible AI around privacy and fairness, and has contributed differentially private synthesizers to the Smartnoise toolkit. You can read about some of his work in a paper he and the team published on the subject: Differentially Private Synthetic Data: Applied Evaluations and Enhancements (arxiv.org). He graduated from Brown University in 2019 with Honors.
Sri Krishnamurthy, CFA is the Founder and CEO of QuantUniversity. Sri is the creator of QuSandbox, a platform for experimenting analytical and machine learning solutions for enterprises prior to adoption.
Sri earned an MS in Computer Systems Engineering and another MS in Computer Science, both from Northeastern University and an MBA from Babson College.
The QuantUniversity Spring School 2021
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Join QuantUniversity for a complimentary Spring speaker series where you will hear from Quants, innovators, startups and Fintech experts on various topics in Quant Investing, Machine Learning, Optimization, Fintech, AI etc.
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QuantUniversity is a quantitative analytics and machine learning advisory based in Boston, Massachusetts. QuantUniversity runs various programs and workshops in Boston, New York, Chicago, and online. The company offers online programs in Machine Learning and AI for Financial services
Contact us at info@qusandbox.com to know more.
Checkout our upcoming courses at www.qu.academy