People

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Alumni (MIDS 2023)

Mechanical Engineer looking to develop the skills necessary to make data driven solutions and convey results in a logical and easily consumable...
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Alumni (MIDS 2022)

Software engineer focused on expanding data science skills to improve outcomes in finance and tech
Zach Day

Alumni (MIDS 2019)

TBD
Jorge Dayer

Alumni (MIDS 2022)

Data Science in Supply Chain/Manufacturing
"Mad Dog" Jim De La Torre

Alumni (MIDS 2019)

Machine Learning and finding signals in data
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Alumni (MIMS 2022)

UX Design and Research
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Lecturer
Alumni (MIDS 2020)

I'm particularly interested in NLP, Machine Learning at Big Scale, and Financial Data. Data Scientist at FINRA
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Alumni (MIDS 2023)

Leveraging knowledge on long short term memory neural networks coupled with additive decomposition models to develop hybrid time series forecasting...
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Alumni (MIDS 2022)

Data Science, Machine Learning, Development of Predictive Models Using Analytical Tools
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Alumni (MIDS 2020)

I am interested in bioinformatics and genomics.
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Alumni (MIMS 2020)

Data Science
Ernesto Del Valle MIDS Data Science Scientist Whiterock AI Credibly Fig Loans Balyasny Point72 Credit Suisse

Alumni (MIDS 2020)

Data Scientist with past experience in Investment Management. Curious about solving challenging problems for the betterment of society.
Luis Delgado

Alumni (MIDS 2023)

To make Data Science a focus of Non-data native Corporate/Government decision making.
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Alumni (MIDS 2019)

In the MIDS program, I want to focus on Machine Learning, Time Series Analysis, Natural Language Processing, and Big Data Analytics.
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Alumni (MICS 2023)

Software Engineer and Rising Information Security Professional - Focusing Technical Kills and Exploring Management and Risk Management Aspects of...
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Alumni (MIDS 2017)

Interested in applying DevOps principles (transparency, repeatability, testability) to Data Science processes and results.

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