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Friedrich-Alexander-Universität Chair of Computer Science 6 CS6
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    1. Friedrich-Alexander-Universität
    2. Technische Fakultät
    3. Department Informatik
    Friedrich-Alexander-Universität Chair of Computer Science 6 CS6
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    Chair of Computer Science 6

    Data Management

    In page navigation: Research
    • Finished Research Projects
    • Publications
    • Evolutionary Information Systems
    • Data Quality
    • Data Integration
    • Process Management
    • Database Systems
      • REAPER: A Framework for Materializing and Reusing Deep-Learning Models
      • Data Stream Application Manager
      • Know Your Queries!
      • Assessment of Data Management Systems
      • Query Optimisation and Near-Data Processing on Reconfigurable SoCs for Big Data Analysis
      • Query Optimisation and Near-Data Processing on Reconfigurable SoCs for Big Data Analysis (Phase II)
      • Schema Inference and Machine Learning
      • Architecture of Non-Multiple Autoencoders for Non-Lossy Information Agglomeration (working title, preliminary)
    • Datastream Systems
    • Data Management in the Digital Humanities
    • Modern Database Systems

    Architecture of Non-Multiple Autoencoders for Non-Lossy Information Agglomeration (working title, preliminary)

    Architecture of Non-Multiple Autoencoders for Non-Lossy Information Agglomeration (working title, preliminary)

    (Own Funds)

    Overall project:
    Project leader: Klaus Meyer-Wegener
    Project members: Dominik Probst
    Start date: 02/01/2020
    End date: 19/09/2022
    Acronym: ANANIA
    Funding source:
    URL:

    Abstract

    The compression of data has played a decisive role in data management for a long time. Compressed data can be permanently stored in a more space-saving manner and sent over the network more efficiently. However, the ever-increasing volumes of data mean that the importance of good compression methods is growing all the time.

    Within the scope of project Anania (Architecture of Non-Multiple Autoencoders for Non-Lossy Information Agglomeration), we are investigating to what extent classical compression methods in relational databases can be supplemented and improved using methods from machine learning.

    The project focuses on autoencoders that can recognize semantic connections in relations when applied tuple-wise and thus promise further improvement in the compression of relational data. Combinations of autoencoders and classical compression methods are also a possible focus of the project.

    Side note: The name of the project "Anania" was chosen in reference to the butterfly "Anania funebris". In its stylized form, an autoencoder strongly resembles the silhouette of a butterfly with outstretched wings, which made the choice of this acronym seem fitting.

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      Chair of Computer Science 6 (Data Management)
      Friedrich-Alexander-Universität Erlangen-Nürnberg

      Martensstraße 3
      91058 Erlangen
      Germany
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