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Projects

Some of the research projects that I am currently involved in are listed below.
You can also check out my research through my INSPIRE-HEP account.
Please feel free to contact me if you want to learn more or provide feedback.

PEREGRINE: Sequential simulation based inference for gravitational waves

Uddipta Bhardwaj, James Alvey, Benjamin Kurt Miller, Samaya Nissanke, Christoph Weniger

The current and upcoming generations of gravitational wave experiments represent an exciting step forward in terms of detector sensitivity and performance. For example, key upgrades at the LIGO, Virgo and KAGRA facilities will see the next observing run (O4) probe a spatial volume around four times larger than the previous run (O3), and design implementations for e.g. the Einstein Telescope, Cosmic Explorer and LISA experiments are taking shape to explore a wider frequency range and probe cosmic distances. In this context, however, a number of very real data analysis problems face the gravitational wave community. For example, it will be crucial to develop tools and strategies to analyse (amongst other scenarios) signals that arrive coincidentally in detectors, longer signals that are in the presence of non-stationary noise or other shorter transients, as well as noisy, potentially correlated, coherent stochastic backgrounds. With these challenges in mind, we develop peregrine, a new sequential simulation-based inference approach designed to study broad classes of gravitational wave signal. In this work, we describe the method and implementation, before demonstrating its accuracy and robustness through direct comparison with established likelihood-based methods. Specifically, we show that we are able to fully reconstruct the posterior distributions for every parameter of a spinning, precessing compact binary coalescence using one of the most physically detailed and computationally expensive waveform approximants (SEOBNRv4PHM). Crucially, we are able to do this using only 2% of the waveform evaluations that are required in e.g. nested sampling approaches. Finally, we provide some outlook as to how this level of simulation efficiency and flexibility in the statistical analysis could allow peregrine to tackle these current and future gravitational wave data analysis problems.

 
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AMICO galaxy clusters in SDSS
(in collaboration with ITA, Heidelberg University)

Uddipta Bhardwaj, Matteo Maturi et al. (IN PREP.)

We present the first catalogue of galaxy cluster candidates derived from the sixteenth data release of the Sloan Digital Sky Survey (SDSS-DR16). The catalogue has been produced using the Adaptive Matched Identifier of Clustered Objects (AMICO) algorithm from 13489.6 square degrees of the SDSS-IV footprint using the luminosity, spatial distribution, and photometric redshift of
galaxies. We do not perform any selection based on the colours of galaxies, which minimizes the dependence of the selection function on the detectability or absence of the red sequence of clusters.

 The catalogue contains 174049 cluster detections down to a signal-to-noise ratio of 3.0 of which 96351 candidates are detected with a signal-to-noise threshold of 3.5 in the redshift range 0.05 ≤ z ≤ 1.00. In addition, a catalogue of galaxies with their probabilistic association with the cluster candidates has also been produced.

The catalogue completeness, purity, and uncertainties in position, redshift, and richness have been quantified through mock galaxy catalogues simulated using the data with the SinFoniA algorithm. This makes the selection function independent of any assumptions employed within numerical simulations or semi-analytical models.

 
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