Sean Mann

Sean Mann Email and Phone Number

Researcher @ HRT | MIT CS ‘23 @ Hudson River Trading
Sean Mann's Location
Cambridge, Massachusetts, United States, United States
Sean Mann's Contact Details

Sean Mann work email

Sean Mann personal email

n/a
About Sean Mann

I completed my MEng and SB in Computer Science (AI concentration) at MIT, working on time series modeling, causal inference, and recommendation systems at the Laboratory for Information & Decision Systems. I am generally interested in mathematical modeling of complex systems that enable efficient learning and inference, in both the data and computational perspectives.

Sean Mann's Current Company Details
Hudson River Trading

Hudson River Trading

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Researcher @ HRT | MIT CS ‘23
Sean Mann Work Experience Details
  • Hudson River Trading
    Algorithm Developer
    Hudson River Trading Aug 2023 - Present
    New York, Ny, Us
    HRT AI Labs
  • Massachusetts Institute Of Technology
    Teaching Assistant
    Massachusetts Institute Of Technology Sep 2022 - Jan 2023
    Cambridge, Ma, Us
    Teaching Assistant for 6.7810 Algorithms for Inference, a challenging graduate course focused on graphical models and inference, including variational and Monte Carlo methods. As one of three TAs serving around 80 students, I designed problem sets and exams and held recitations/office hours.
  • Hudson River Trading
    Algorithm Developer
    Hudson River Trading May 2022 - Aug 2022
    New York, Ny, Us
    HFT and deep learning rotations.
  • Massachusetts Institute Of Technology
    Undergraduate Researcher, Laboratory For Information & Decision Systems
    Massachusetts Institute Of Technology Feb 2022 - May 2022
    Cambridge, Ma, Us
    Performed time series analysis and forecasting on marketing data in heterogeneous regions and sales channels. Built prediction models based on state-space models and neural networks with the goal of creating counterfactual predictions. Devised statistical tests to rigorously evaluate the impact and quality of predictors, amidst a lack of longitudinal data causing high risk of overfitting. Advised by Prof. Devavrat Shah in the MIT Laboratory for Information & Decision Systems.
  • Algorand Foundation
    Consultant
    Algorand Foundation Dec 2021 - Jan 2022
    Singapore, Sg
    Blockchain-related data science and engineering consulting.
  • Algorand Foundation
    Data Intern
    Algorand Foundation Jun 2021 - Aug 2021
    Singapore, Sg
    Full-stack data work as the first data scientist of the curator of a rapidly growing blockchain, conceived by Prof. Silvio Micali. Developing a Python package for data retrieval, parsing, storage, and network analysis. Conducting statistical analyses to provide insight into economic questions of interest, and communicating findings to leadership. Contributed to a publication on the economics of Algorand's native cryptocurrency, the Algo.
  • Massachusetts Institute Of Technology
    Researcher, Romano Lab
    Massachusetts Institute Of Technology Mar 2020 - May 2021
    Cambridge, Ma, Us
    Developed an end-to-end differentiable photovoltaic (PV) simulator, based on the drift-diffusion model, using JAX, a growing scientific computation and automatic differentiation (AD) library. ∂PV enabled a ~100x reduction in number of PDE solutions, over typical gradient-free approaches, required to solve a PV optimization problem, which promises significant improvements in the cell design process. Manuscript published by Computer Physics Communications.
  • Intact
    Data Scientist
    Intact Jun 2020 - Aug 2020
    Toronto, Ontario, Ca
    Extracting valuable insights out of large amounts of noisy textual data with varying reliability, involving state-of-the-art transfer learning methods in NLP including pretrained models such as BERT, and down to simpler methods with word statistics and classification techniques. Aggregation of predictions with ensembling and boosting. Played a role since the beginning of the project — from problem statement, scope to data/ feature generation and modelling.
  • Mit Solar Electric Vehicle Team
    Operations Researcher
    Mit Solar Electric Vehicle Team Oct 2019 - May 2020
    Cambridge, Massachusetts, Us
    Strategy planning, global robust optimization with dynamic programming and risk analysis using a variety of data to produce a real-time dynamic race-planning system.
  • Fano Labs
    Software Engineer
    Fano Labs Dec 2019 - Jan 2020
    Hong Kong, Hong Kong, Hk
    Web development for automatic speech recognition applications, from frontend Javascript and HTML to server backend with MinIO.
  • Hkstp - Hong Kong Science And Technology Parks Corporation
    Robotics Engineer
    Hkstp - Hong Kong Science And Technology Parks Corporation Jun 2019 - Jul 2019
    Shatin, Hong Kong, Hk
    Independent design and development of quadraped robot using Solidworks and Arduino prototyping platform with C++.

Sean Mann Education Details

  • Massachusetts Institute Of Technology
    Massachusetts Institute Of Technology
    Computer Science
  • Massachusetts Institute Of Technology
    Massachusetts Institute Of Technology
    Computer Science And Engineering
  • Diocesan Boys' School
    Diocesan Boys' School
    High School Diploma

Frequently Asked Questions about Sean Mann

What company does Sean Mann work for?

Sean Mann works for Hudson River Trading

What is Sean Mann's role at the current company?

Sean Mann's current role is Researcher @ HRT | MIT CS ‘23.

What is Sean Mann's email address?

Sean Mann's email address is sm****@****mit.edu

What schools did Sean Mann attend?

Sean Mann attended Massachusetts Institute Of Technology, Massachusetts Institute Of Technology, Diocesan Boys' School.

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