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  • Northwestern University
  • Chicago, USA

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steveschulze/README.md

Hi there 👋

I am a scientist at the Department of Particle Physics & Astrophysics at the Weizmann Institute of Science. My research focuses on extragalactic transients (primarily core-collapse supernovae, but occasionally also GRBs) and their host galaxy demographics. This GitHub page contains data products from papers and tools for data reduction and analysis.

Data products from my papers

GRBs

ZTF alert filtering

Observing tools

Photometry tools

Pipelines

Notes on and tools for data reduction (FORS2, X-shooter, Swift, JWST, Prospector)

Popular repositories Loading

  1. Photometry Photometry Public

    Collection of tools to improve the astrometry of images, retrieve photometric catalogues and perform aperture photometry.

    Python 9 3

  2. kann_optical_afterglows kann_optical_afterglows Public

    MATLAB 4

  3. GRB_Eiso GRB_Eiso Public

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  4. bright_transient_survey bright_transient_survey Public

    Forked from adamamiller/bright_transient_survey

    Analysis for the ZTF Bright Transient Survey and RCF calculations

    Jupyter Notebook 1

  5. PracticalLombScargle PracticalLombScargle Public

    Forked from jakevdp/PracticalLombScargle

    Source for my paper, Understanding the Lomb-Scargle Periodogram

    Jupyter Notebook 1

  6. CRD2018emcee CRD2018emcee Public

    Forked from adamamiller/CRD2018emcee

    iPython notebook to demo emcee by fitting a line to data with uncertainties on both axes

    Jupyter Notebook 1