Archiv zpráv a událostí

Spolupráce FI MU s průmyslem

  • Obrázek

    IBM Guest Lecture: What is Agile in Practice?

    What is Agile in practice?

    As students reading Business Management degree with IT specialisation, it is highly likely that you will find yourself working in a large IT enterprise upon graduation. In this session we will share with you our experience how IT Operations have been evolved by advancements in Artificial Intelligence; Automation; and global adoption of Agile.

    These insights will help you to get better understanding on why Agile is more popular than ever before, why future jobs will look different as a direct result of technological advancements, and why ability to influence behavior is paramount in business transformation.

    Session is delivered by Charlotte & Nikita, core members of the IBM Enterprise Business Agility team for Europe, Middle East & Africa region.

    About lecturers:

    Charlotte Newton, IBM Agile Transformation Leader, Maturity & Adoption Lead

    Charlotte is based in the UK. She joined IBM in 2001 after 2.5 years as Corporate CIO in GlaxoWellcome, now GSK. Charlotte is a certified Strategy & Change consultant and Design Thinking coach, and for 12 years was Innovation Leader for IBM services in Switzerland. She is a core member of IBM's team leading Agile services transformation across Europe, Middle East & Africa. Her current focus is building a Digital Service Management capability based on Agile, Automation and Machine Learning, and on driving adoption with coaching and education.

    Nikita Glisanovs, IBM Agile Transformation Leader, Agile Accelerate

    Nikita is based in the UK, where he was employed by IBM ever since he has graduated from the university 6 years ago with BA Business Management degree. He is a core member of the IBM team that is leading an agile transformation across Europe, Middle East & Africa. His primary speciality is driving adoption of agile collaboration tools & ways of working through advanced usage of Artificial Intelligence & Machine Learning.


    Webová adresa
    Přílohy