Resume.

Please find my abbreviated resume below.

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Education

University of California, Berkeley: M.Eng. Industrial Engineering and Operations Research. 3.88 GPA.
2017-2018

GRE Scores (%-ile): Quant 169/170 (97th). Verbal 168/170 (98th). Writing 5.0/6 (93rd).
2016

University of Melbourne: B.Sc. Discrete Math and Operations Research. 3.99 GPA. #1 class rank.
2012-2015

University of California, Berkeley: Study abroad semester (College of Engineering). 4.00 GPA.
2014

Wesley College High School: International Baccalaureate. Perfect score of 45. 99.95%-ile in Australia.
2006-2011


Scholarships, Awards and Honors

AAA-Chevron Scholarship, American Australian Association
2017

Fung Fellowship in Industrial Engineering and Operations Research, UC Berkeley
2017

M. L. Urquhart Prize (#1 class rank in major), University of Melbourne
2015

Melbourne Global Scholars Award, University of Melbourne
2014

Captain, Under 23 Victorian Championship Basketball Team, Sandringham
2014-2015

Dean’s Honor List (top 3%), Bachelor of Science, University of Melbourne
2013

Elite Athlete Program Sport Scholarship, University of Melbourne
2013-2015

Chancellor’s Scholar and Melbourne National Scholarship, University of Melbourne
2012-2015

Australian Student Prize (top 500 students in country)
2011


Projects

Energy Disaggregation with Variational Autoencoders, under Professor Anil Aswani.
2017-Present

The Brownlow Downlow, Australian Football League MVP Prediction.
2017-Present

Predicting car service requirements from car and engine data, with CarForce.
2017

Kaggle Competitions, kaggle.com/nhirons
2017


Experience

Machine Learning at Berkeley, Member Development Officer
2017-Present

Goldman Sachs, Equity Research Analyst (Energy and Utilities)
2016-2017

University of Melbourne, Research Assistance (Finance)
2015

Apex Tuition Australia, Director and Owner
2014-Present


Service

Red Dust Role Models, Role Model and Volunteer
2011-Present


Languages/Proficiencies

Python (numpy, pandas, sklearn, keras), SQL. Machine Learning fundamentals. Optimization, probability, linear algebra.