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Class of 2023 Princeton Preview

Class of 2023 Princeton Preview. Presented by Prof. Alain Kornhauser Department Representative. For more info see orfe.princeton.edu. Why ORFE?. Study and work on challenging and relevant problems.

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Class of 2023 Princeton Preview

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  1. Class of 2023Princeton Preview Presented by Prof. Alain Kornhauser Department Representative For more info see orfe.princeton.edu

  2. Why ORFE? • Study and work on challenging and relevant problems. • Learn and apply mathematical & computational skills to address interesting, useful and timely applications. • These skills are recognized and rewarded in the marketplace by employers& top graduate schools. • They will make you a better Leader.

  3. Marketable Skills • Probability: Modeling & understanding of uncertainty. • Statistics: Quantifying uncertainty. • Optimization: Modeling & understanding of the tradeoffs associated with the good fortune of having alternatives (and choosing among them even though they are uncertain) • These skills are recognized and rewarded in the marketplace by employers & top graduate schools. • They will make you a better Leader.

  4. Skills are Focused on Improving Societal Challenges • Operations Research: • Logistics & Transportation • Energy Systems • Telecommunications & eCommerce • Health Care • Financial Engineering: • Risk Management • Investment Strategies • Financial Instruments • Economic Stimulation • Machine Learning: • Real-time Decision Systems • Addressing High Dimensional Problems (aka “Big Data”)

  5. Freshman Year Fall: 4 courses Math Physics Chemistry Writing (or Frosh Seminar or ???) Spring: 5 courses Math Physics Statistics (ORF 245) Frosh Seminar (or Writing or ???) other

  6. Core Classes • ORF 245 – Fundamentals of Statistics • ORF 307 – Optimization • ORF 309 – Probability & Stochastic Processes • ORF 335 – Introduction to Financial Engineering

  7. Ten Department Electives • From... ORF 311 – Stochastic Optimization and Machine Learning in Finance (previously - Optimization Under Uncertainty), ORF 350 – Analysis of Big Data, ORF 360 – Decision Modeling in Business Analytics, ORF 363 – Computing and Optimization for the Physical and Social Sciences, ORF 375/376 - Junior Independent Work, ORF 401 - Electronic Commerce , ORF 405 – Regression and Applied Tim, Series, ORF 406 - Statistical Design of Experiments, ORF 407 – Fundamentals of Queueing Theory, ORF 409 - Introduction to Monte Carlo Simulation, ORF 411 – Sequential Decision Analytics and Modeling, ORF 417 - Dynamic Programming, ORF 418 - Optimal Learning, ORF 435 - Financial Risk Management, ORF 455 – Energy and Commodities Markets, ORF 467 – Transportation Systems Analysis, ORF 473/474 - Special Topics in Operations Research and Financial Engineering, CEE 304 – Environmental Engineering and Energy, CEE 460 - Risk Analysis , CHM 303 – Organic Chemistry I, CHM 304 – Organic Chemistry II, COS 217 - Introduction to Programming Systems, COS 226 - Algorithms and Data Structures, COS 323 - Computing for the Physical and Social Sciences, COS 340 - Reasoning about Computation, COS 402 - Artificial Intelligence and Machine Learning, COS 423 - Theory of Algorithms, COS 485 – Neural Networks: Theory and Application, ECO 310 - Microeconomic Theory: A Mathematical Approach, ECO 311/312 – Macroeconomics: A Mathematical Approach, ECO 317 - The Economics of Uncertainty, ECO 332 – Economics of Health and Health Care, ECO 341 - Public Finance, ECO 342 - Money and Banking, ECO 361 - Financial Accounting, ECO 362 - Financial Investments, ECO 363 - Corporate Finance and Financial Institutions, ECO 418 - Strategy and Information, ECO 462 - Portfolio Theory and Asset Management, ECO 464 - Corporate Restructuring, ECO 466 - Fixed Income: Models and Applications, ECO 467 - Institutional Finance, EEB 324 – Theoretical Ecology, ELE 301 – Designing Real Systems, ELE 381 – Networks: Friends, Money and Bytes, ELE 486 - Digital Communication and Networks, ENV 302 – Practical Models for Environmental Systems, MAE 206 – Introduction to Engineering Dynamics, MAE 433 - Automatic Control Systems, MAE 434 – Modern Control, MAT 320 - Introduction to Real Analysis, MAT 322/APC 350 - Methods in Partial Differential Equations, MAT 375 - Introduction to Graph Theory, MAT 377 - Combinatorial Mathematics, MAT 378 - Theory of Games, MAT 385 - Probability Theory, MAT 391/MAE 305 - Mathematics in Engineering I or MAT 427, (both may not be taken because content is too similar), MAT 392/MAE 306 - Mathematics in Engineering II, MAT 427 - Ordinary Differential Equations, MAT 486 - Random Process, MAT 522 - Introduction to Partial Differential Equations, MOL 345 – Biochemistry, NEU 437 – Computational Neuroscience, NEU 330 – Computational Modeling of Psychological Function

  8. Some Common Tracks • Information Sciences • ORF 401 – eCommerce • ORF 411 – Sequential Decision Analytics Modeling • ORF 418 – Optimal Learning • COS 217 – Introduction to Programming Systems • COS 226 – Algorithms & Data Structures • COS 425 – Database Systems • Engineering Systems • ORF 409 – Intro to Monte Carlo Simulation • ORF 411 – Sequential Decision Analytics Modeling • ORF 467 – Transportation Systems Analysis • ORF 417 – Dynamic Programming • MAE 433 – Automatic Control Systems • ELE 485 – Signal Analysis and Communication Systems

  9. More Common Tracks • Applied Mathematics • MAT 375 – Intro to Graph Theory • MAT 378 – Theory of Games • MAT 321 – Numerical Methods • MAE 406 – Partial Differential Equations • ORF 405 – Regression and Applied Time Series • Financial Engineering • ORF 311 – Stochastic Optimization and Machine Learning in Finance • ORF 350 – Analysis of Big Data • ORF 405 – Regression and Applied Time Series • ORF 435 – Financial Risk Management • ECO 362 – Financial Investments • ECO 465 – Financial Derivatives

  10. More Common Tracks • Machine Learning • COS 217 – Intro to Graph Theory • COS 226 – Theory of Games • ORF 350 – Analysis of Big Data • ORF 407 – Fundamentals of Queueing Theory • ORF 411 – Sequential Decision Analytics Modeling • ORF 418 – Optimal Learning • Statistics • ORF 311 – Stochastic Optimization and Machine Learning in Finance • ORF 350 – Analysis of Big Data • ORF 405 – Regression and Applied Time Series • ORF 409 – Intro to Monte Carlo Simulation • ORF 418 – Optimal Learning • ORF 467 – Transportation Systems Analysis

  11. More Common Tracks • Pre-Med/Health Care • CHM 303 – Organic Chemistry I • CHM 304 – Organic Chemistry II • MOL 345 – BioChemistry • ORF 350 – Analysis of Big Data • ORF 401 – eCommerce • ORF 411 – Sequential Decision Analytics Modeling • ORF 418 – Optimal Learning

  12. Selected Senior Theses • Eileen Lee’14 – Uncovering Systematic Corruption in the ER: An Empirical Analysis of Motor Vehicle-Related Hospital Bills and their Impacts on Insurance Companies • Adam Esquer’14 -The Real Moneyball: Modelling Baseball Salary Arbitration • Chad Cowden’17-Default Prediction of Commerical Real Estate Properties through the use of Support Vector Machines • Stephanie Lubiak’11 – Neighborhood Nukes: Great for America? Great for the Environment? Great for Al Qaeda? • Serena Jeon’17– Walking on Wall Street in Heels: A Quantitative and Sociological Approach to Gender and Recruitment in Finance • A. Hill Wyrough, Jr.’14 – A National Disaggregate Transportation Demand Model for the Analysis of Autonomous Taxi Systems • Ian Kinn’17– Seeking Relief: Making the Most of Pitchers in the Modern Era of Major League Baseball • Walid Marfouk’17– Fashion Police: Application of Convolutional Neural Networks to Single-Step Apparel Recognition on Social Media in Scarce Training Data Contexts

  13. Recent Graduates • Graduate Schools: Harvard, Stanford, Cornell, Georgia Tech, Texas A&M, U. of Kentucky (Med School), U. of Calif. Berkeley • Banks & Investment Firms: Goldman Sachs, Morgan Stanley, JP Morgan Chase & Co, Barclays, BlackRock, Credit Suisse • Industries: Aspect Medical Systems, Parsons Airbnb, Walt Disney, Abercrombie, Google, IBM • Management/Economic Consulting: Mercer, Accenture, McKinsey, Bates

  14. Recent Graduates

  15. Questions / Discussion For more info see orfe.princeton.edu

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