• =?utf-8?Q?Machine_Learning_Methods_for_Longitudinal_Data_with_Python_?= =?utf-8?Q?=E2=80=93_Online_Course_=286-9_May=29?=

    From info@physalia-courses.org@info@physalia-courses.org to comp.lang.python on Fri Feb 28 12:56:27 2025
    From Newsgroup: comp.lang.python


    Dear all,
    There are still 5 seats left for the upcoming Physalia course "Machine Learning Methods for Longitudinal Data with Python," which is taking place online from 6-9 May. This course will provide a comprehensive introduction to analyzing sequence data (repeated over time or space) when time and causation play a crucial role.

    This course will cover both classical statistical and modern machine learning approaches to handling time-dependent data. Participants will learn how to recognize and address temporal dependencies, disentangle cause-effect relationships, and apply appropriate modeling techniques for forecasting, survival analysis, and multi-omics data integration. Topics will include:
    Statistical and machine learning methods for sequence data
    Bias resolution: confounding, colliding, and mediator biases
    Time-series forecasting and predictive modeling
    Bayesian networks and graph models
    Applications in epidemiology, gene expression, and multi-omics
    The course combines lectures, hands-on exercises, and case studies to ensure participants gain practical skills for applying these methods to real-world biological data.


    To register or learn more, please visit [ https://www.physalia-courses.org/courses-workshops/longitudinal-data/ ]( https://www.physalia-courses.org/courses-workshops/longitudinal-data/ )

    Best regards,
    Carlo




    --------------------

    Carlo Pecoraro, Ph.D


    Physalia-courses DIRECTOR

    info@physalia-courses.org

    mobile: +49 17645230846

    [ Bluesky ]( https://bsky.app/profile/physaliacourses.bsky.social ) [ Linkedin ]( https://www.linkedin.com/in/physalia-courses-a64418127/ )



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