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Building an R interface to use volesti for financial applications
The project will implement an R interface to represent financial data and regulatory constraints using geometric objects and notions. Then, it will construct those objects using R volesti tools. The interface will be also able to call volesti's routines (i.e. preprocessing, sampling) for the constructed geometric objects.
The interface will have to be based on standard R packages that handle financial data. Thus, it will follow a similar paradigm of package-user interaction (i.e. use similar data structures to read and store the data). Then, from those structures the contributor will have to construct the corresponding geometric objects (e.g. convex polytopes, ellipsoids, etc).
- Required: R, Basic applied math and computational geometry background
- Preferred: Experience with financial software is a plus
The projects will provide GeomScale with an R interface toward a new R package in computational and quantitative finance.
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Bachelard Cyril <Cyril.Bachelard at olz.ch> He is a Senior Quantitative Research Analyst in OLZ AG since 2011. He is an expert on Quantitative Research, risk forecasting, and optimization models. He is also a Ph.D. student in Algorithmic Sampling and Portfolio Optimization at the University of Lausanne. He holds a master's degree in economics and has further completed studies in mathematics, statistics, and computer science.
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Apostolos Chalkis <tolis.chal at gmail.com> is an expert in statistical software, computational geometry, and optimization, and has previous GSoC student experience (2018 & 2019) and mentoring experience with GeomScale (2020 & 2021).
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Vissarion Fisikopoulos <vissarion.fisikopoulos at gmail.com> is an international expert in mathematical software, computational geometry, and optimization, and has previous GSOC mentoring experience with Boost C++ libraries (2016-2017) and the R-project (2017).
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Elias Tsigaridas <elias.tsigaridas at inria.fr> is an expert in computational nonlinear algebra and geometry with experience in mathematical software. He has contributed to the implementation, in C and C++, of several solving algorithms for various open-source computer algebra libraries and has previous GSOC mentoring experience with the R-project (2019) and GeomScale (2020 & 2021).
Students, please contact the mentors after completing at least one of the tests below.
Students, please do one or more of the following tests before contacting the mentors.
- Easy: Compile and run volesti in R. Use the R extension to visualize sampling in a polytope.
- Medium: Sample approximate uniformly points from a randomly generated polytope using the implemented in
volesti
random walks, for various walk lengths. For each sample compute the PSRF and report on the results. - Hard: Use R volesti to sample from the set of long-only portfolios with 5 regulatory constraints defined by you.
Students, please post a link to your test results here.
- EXAMPLE STUDENT 1 NAME, LINK TO GITHUB PROFILE, LINK TO TEST RESULTS.
STUDENT 1 AGILAN S, https://github.com/Agi7an, https://github.com/Agi7an/VolEsti/blob/main/setup.r
STUDENT 2 Ioannis Iakovidis, https://github.com/iakoviid/, https://github.com/iakoviid/volesti/tree/gsoc2022
STUDENT 3 HUSSAIN LOHAWALA, https://github.com/H9660/Volesti-/blob/main/setup.r
STUDENT 4 Huu Phuoc Le, https://github.com/huuphuocle, https://github.com/huuphuocle/sampling_correlation_matrices