Podtail
    • Top Podcasts
    • Episodit
    • Podcastit
    • Kirjaudu sisään
    • Luo käyttäjätili
    • Tietoja Podtailista
    • FAQ
    • Partners
    • Copyright Policy
    • Ehdotetut podcastit
    Kokeile Podimoa ilmaiseksi 30 päivää! 🙌
    Kuuntele laatupodcasteja ja tuhansia äänikirjoja 30 päivää ilmaiseksi.
    Distributed Data Management (WT 2019/20) - tele-TASK

    Distributed Data Management (WT 2019/20) - tele-TASK

    Kenia · Dr. Thorsten Papenbrock

    • Education
    • Courses

    The free lunch is over! Computer systems up until the turn of the century became constantly faster without any particular effort simply because the hardware they were running on increased its clock speed with every new release. This trend has changed and today's CPUs stall at around 3 GHz. The size of modern computer systems in terms of contained transistors (cores in CPUs/GPUs, CPUs/GPUs in compute nodes, compute nodes in clusters), however, still increases constantly. This caused a paradigm shift in writing software: instead of optimizing code for a single thread, applications now need to solve their given tasks in parallel in order to expect noticeable performance gains. Distributed computing, i.e., the distribution of work on (potentially) physically isolated compute nodes is the most extreme method of parallelization.

    Big Data Analytics is a multi-million dollar market that grows constantly! Data and the ability to control and use it is the most valuable ability of today's computer systems. Because data volumes grow so rapidly and with them the complexity of questions they should answer, data analytics, i.e., the ability of extracting any kind of information from the data becomes increasingly difficult. As data analytics systems cannot hope for their hardware getting any faster to cope with performance problems, they need to embrace new software trends that let their performance scale with the still increasing number of processing elements.

    In this lecture, we take a look a various technologies involved in building distributed, data-intensive systems. We discuss theoretical concepts (data models, encoding, replication, ...) as well as some of their practical implementations (Akka, MapReduce, Spark, ...). Since workload distribution is a concept which is useful for many applications, we focus in particular on data analytics.

    • Tilaajat Lopeta tilaaminen
    • Jaa
    • Listen on Apple Podcasts
    • Jaksot 27
    • Liittyvä
    • Tilaajat 1
    • Apple Podcasts
    • RSS
    • Verkkosivusto

    Tilaajat

    • 13 782 tilausta

      Podtail

    Podtail
    • Tietoja Podtailista
    • FAQ
    • Contact
    • Partners
    • Privacy Settings
    • Svenska
    • English
    • Norsk
    • Français
    • Suomi
    • Español
    • Deutsch
    • Dansk
    • Português (Portugal)
    • Português (Brasil)
    • Русский
    • Türkçe
    • 日本語
    • Nederlands
    • Italiano

    © Podtail 2025

       
    Update Required To play the media you will need to either update your browser to a recent version or update your Flash plugin.