Jonathan Wihl (jonwihl)

jonwihl

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Location:New York, NY

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Jonathan Wihl's repositories

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Arcade-VR

Arcade VR

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67-442

iOS Project written in swift

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FATS-2.0

In time-domain astronomy, data gathered from the telescopes is usually represented in the form of light-curves. These are time series that show the brightness variation of an object through a period of time (for a visual representation see video below). Based on the variability characteristics of the light-curves, celestial objects can be classified into different groups (quasars, long period variables, eclipsing binaries, etc.) and consequently be studied in depth independently. In order to characterize this variability, some of the existing methods use machine learning algorithms that build their decision on the light-curves features. Features, the topic of the following work, are numerical descriptors that aim to characterize and distinguish the different variability classes. They can go from basic statistical measures such as the mean or the standard deviation, to complex time-series characteristics such as the autocorrelation function. In this document we present a library with a compilation of some of the existing light-curve features. The main goal is to create a collaborative and open tool where every user can characterize or analyze an astronomical photometric database while also contributing to the library by adding new features. However, it is important to highlight that this library is not restricted to the astronomical field and could also be applied to any kind of time series. Our vision is to be capable of analyzing and comparing light-curves from all the available astronomical catalogs in a standard and universal way. This would facilitate and make more efficient tasks as modeling, classification, data cleaning, outlier detection and data analysis in general. Consequently, when studying light-curves, astronomers and data analysts would be on the same wavelength and would not have the necessity to find a way of comparing or matching different features. In order to achieve this goal, the library should be run in every existent survey (MACHO, EROS, OGLE, Catalina, Pan-STARRS, etc) and future surveys (LSST) and the results should be ideally shared in the same open way as this library.

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P4J

Periodic time series analysis tools based on information theory

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15-112-Final-Project

Fundamentals of Computing Final Project Spring 2016

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15-112-Fundamentals-of-Programming-

Fundamentals of Programming coursework Spring 2016

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15-110-Principles-of-Computing-Coursework

Coursework from Principles of computing class taken at Carnegie Mellon University Fall 2015

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67262

67262 Database Design and Development, Fall 2016

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introtoc

Coursework taken from Intro to C class taken at Columbia University Summer 2015

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