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Chris Rackauckas

Showing results (1-10 of 8) with videos related to

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Patterns (New York, N.Y.)|November 23, 2020
A Machine Learning-Aided Global Diagnostic and Comparative Tool to Assess Effect of Quarantine Control in COVID-19 SpreadRaj Dandekar, Chris Rackauckas, George Barbastathis
Frontiers in Systems Biology|August 14, 2025
Uncertainty quantified discovery of chemical reaction systems via Bayesian scientific machine learningEmily Nieves, Raj Dandekar, Chris Rackauckas
Health Data Science|November 21, 2022
Implications of Delayed Reopening in Controlling the COVID-19 Surge in Southern and West-Central USARaj Dandekar, Emma Wang, George Barbastathis, et al.
Plos Computational Biology|June 13, 2022
Differential methods for assessing sensitivity in biological modelsRachel Mester, Alfonso Landeros, Chris Rackauckas, et al.
Plos Computational Biology|October 18, 2023
Catalyst: Fast and flexible modeling of reaction networksTorkel E Loman, Yingbo Ma, Vasily Ilin, et al.
Biorxiv : the Preprint Server for Biology|November 14, 2023
Increasing spectral DCM flexibility and speed by leveraging Julia's ModelingToolkit and automated differentiationDavid Hofmann, Anthony G Chesebro, Chris Rackauckas, et al.
Plos Computational Biology|June 12, 2025
Correction: Catalyst: Fast and flexible modeling of reaction networksTorkel E Loman, Yingbo Ma, Vasily Ilin, et al.
Imaging Neuroscience (Cambridge, Mass.)|August 13, 2025
Increasing spectral DCM flexibility and speed by leveraging Julia's ModelingToolkit and automated differentiationDavid Hofmann, Anthony G Chesebro, Chris Rackauckas, et al.
Pageof 1

Showing results (1-10 of 8) with videos related to

Sort By:
Pageof 1
Patterns (New York, N.Y.)|November 23, 2020
A Machine Learning-Aided Global Diagnostic and Comparative Tool to Assess Effect of Quarantine Control in COVID-19 SpreadRaj Dandekar, Chris Rackauckas, George Barbastathis
Frontiers in Systems Biology|August 14, 2025
Uncertainty quantified discovery of chemical reaction systems via Bayesian scientific machine learningEmily Nieves, Raj Dandekar, Chris Rackauckas
Health Data Science|November 21, 2022
Implications of Delayed Reopening in Controlling the COVID-19 Surge in Southern and West-Central USARaj Dandekar, Emma Wang, George Barbastathis, et al.
Plos Computational Biology|June 13, 2022
Differential methods for assessing sensitivity in biological modelsRachel Mester, Alfonso Landeros, Chris Rackauckas, et al.
Plos Computational Biology|October 18, 2023
Catalyst: Fast and flexible modeling of reaction networksTorkel E Loman, Yingbo Ma, Vasily Ilin, et al.
Biorxiv : the Preprint Server for Biology|November 14, 2023
Increasing spectral DCM flexibility and speed by leveraging Julia's ModelingToolkit and automated differentiationDavid Hofmann, Anthony G Chesebro, Chris Rackauckas, et al.
Plos Computational Biology|June 12, 2025
Correction: Catalyst: Fast and flexible modeling of reaction networksTorkel E Loman, Yingbo Ma, Vasily Ilin, et al.
Imaging Neuroscience (Cambridge, Mass.)|August 13, 2025
Increasing spectral DCM flexibility and speed by leveraging Julia's ModelingToolkit and automated differentiationDavid Hofmann, Anthony G Chesebro, Chris Rackauckas, et al.
Pageof 1