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Merge pull request #90 from vepadulano/agc-roofit-2024
Project: implement statistical inference with RooFit in the AGC
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name: Statistical treatment of the AGC results with RooFit | ||
postdate: 2024-04-04 | ||
categories: | ||
- Analysis tools | ||
- Open science | ||
durations: | ||
- 3 months | ||
experiments: | ||
- CMS | ||
- HLLHC | ||
skillset: | ||
- Python | ||
- C++ | ||
status: | ||
- Available | ||
project: | ||
- IRIS-HEP | ||
location: | ||
- Any | ||
commitment: | ||
- Full time | ||
program: | ||
- IRIS-HEP fellow | ||
shortdescription: Implement estimation of physics model parameters of the AGC with RooFit | ||
description: > | ||
The IRIS-HEP Analysis Grand Challenge (AGC) is a realistic environment for | ||
investigating how high energy physics data analysis workflows scale to the | ||
demands of the High-Luminosity LHC (HL-LHC). The project offers a blueprint | ||
for HEP analysis applications that can be implemented using different tools | ||
and approaches. One of the implementations offered is done with ROOT, the tool | ||
for storing, processing and data analysis used by LHC experiments. In | ||
particular, it demonstrates usage of the RDataFrame high-level interface for | ||
data analysis in the CMS ttbar OpenData application. At the same time, it | ||
lacks the final steps of the AGC workflow, which involve the estimation of | ||
physics model parameters from the output histograms using the maximum | ||
likelihood method. The objective of this project is adding those steps via | ||
RooFit, the tool provided by ROOT for statistical analysis and advanced | ||
fitting, showcasing the use of such tool in a Python environment. | ||
contacts: | ||
- name: Jonas Rembser | ||
email: [email protected] | ||
- name: Alexander Held | ||
email: [email protected] | ||
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mentees: |