Skip to content

Mr Thomas Collett

Senior Research Fellow

  1. Data availability statement for 'Automated lensing learner - I: an automated strong lensing identification pipeline'.

    Avestruz, C. (Creator), Li, N. (Creator), Lightman, M. (Creator), Mr Thomas Collett (Creator), Luo, W. (Creator), IOP Publishing, 24 May 2019

    Dataset

  2. Data availability statement for 'Automated lensing learner: automated strong lensing identification with a computer vision technique'.

    Avestruz, C. (Creator), Li, N. (Creator), Zhu, H. (Creator), Lightman, M. (Creator), Mr Thomas Collett (Creator), Luo, W. (Creator), IOP Publishing, 24 May 2019

    Dataset

  3. Data availability statement for 'First cosmological results using type Ia supernovae from the Dark Energy Survey: measurement of the Hubble Constant'.

    Macaulay, E. R. M. (Creator), Professor Bob Nichol (Creator), Dr David Bacon (Creator), D'Andrea, C. B. (Creator), Avila Perez, S. J. (Creator), Mr Thomas Collett (Creator), Elizabeth Samantha Swann (Creator), Professor Daniel Thomas (Creator), Oxford University Press, 9 Apr 2019

    Dataset

  4. Data availability statement for 'Model-independent determination of H0 and ΩK0 from strong lensing and type Ia supernovae'.

    Mr Thomas Collett (Creator), Montanari, F. (Creator), Rasanen, S. (Creator), American Physical Society, 31 Oct 2019

    Dataset

  5. Data availability statement for 'Serendipitous discovery of a strong-lensed galaxy in integral field spectroscopy from MUSE'.

    Galbany, L. (Creator), Mr Thomas Collett (Creator), Méndez-Abreu, J. (Creator), Sanchez, S. F. (Creator), Anderson, J. P. (Creator), Kuncarayakti, H. (Creator), Oxford University Press, 1 Sep 2018

    Dataset

  6. Data availability statement for 'The impact of microlensing on the standardisation of strongly lensed Type Ia supernovae'.

    Max Foxley-Marrable (Creator), Mr Thomas Collett (Creator), Vernardos, G. (Creator), Goldstein, D. A. (Creator), Dr David Bacon (Creator), Oxford University Press, 17 May 2018

    Dataset

ID: 1736708