Research directions for principles of data management (abridged)

Serge Abiteboul, Diego Calvanese, Benny Kimelfeld, Filip Murlak, Marcelo Arenas, Claire David, Leonid Libkin, Frank Neven, Pablo Barceló, Richard Hull, Wim Martens, Magdalena Ortiz, Meghyn Bienvenu, Eyke Hüllermeier, Tova Milo, Thomas Schwentick, Julia Stoyanovich, Jianwen Su, Dan Suciu, Victor VianuKe Yi

    Research output: Contribution to journalArticle

    Abstract

    A community of researchers working in the area of Principles of Data Management (PDM) joined in a workshop at the Dagstuhl Castle in Germany in April 2016. The workshop was organized jointly by the Executive Committee of the ACM Symposium on Principles of Database Systems (PODS) and the Council of the International Conference on Database Theory (ICDT). PDM played a foundational role in the relational database model, with the robust connection between algebraic and calculus-based query languages, the connection between integrity constraints and database design, key insights for the field of query, optimization, and the fundamentals of consistent concurrent transactions. The Dagstuhl workshop highlighted two important trends that have been accelerating in the PDM community over the past several years. The first is the increasing embrace of neighboring disciplines, including especially Machine Learning, Statistics, Probability, and Verification, both to help resolve new challenges, and to bring new perspectives to them. The second is the increased focus on obtaining positive results that enable the use of mathematically based insights in practical settings. The centrality of data management across numerous application areas is an opportunity both for PDM researchers to embrace techniques and perspectives from adjoining research areas, and for researchers from other areas to incorporate techniques and perspectives from PDM.

    Original languageEnglish (US)
    Pages (from-to)5-17
    Number of pages13
    JournalSIGMOD Record
    Volume45
    Issue number4
    DOIs
    StatePublished - Dec 1 2016

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    Information management
    Query languages
    Learning systems
    Statistics

    ASJC Scopus subject areas

    • Software
    • Information Systems

    Cite this

    Abiteboul, S., Calvanese, D., Kimelfeld, B., Murlak, F., Arenas, M., David, C., ... Yi, K. (2016). Research directions for principles of data management (abridged). SIGMOD Record, 45(4), 5-17. https://doi.org/10.1145/3092931.3092933

    Research directions for principles of data management (abridged). / Abiteboul, Serge; Calvanese, Diego; Kimelfeld, Benny; Murlak, Filip; Arenas, Marcelo; David, Claire; Libkin, Leonid; Neven, Frank; Barceló, Pablo; Hull, Richard; Martens, Wim; Ortiz, Magdalena; Bienvenu, Meghyn; Hüllermeier, Eyke; Milo, Tova; Schwentick, Thomas; Stoyanovich, Julia; Su, Jianwen; Suciu, Dan; Vianu, Victor; Yi, Ke.

    In: SIGMOD Record, Vol. 45, No. 4, 01.12.2016, p. 5-17.

    Research output: Contribution to journalArticle

    Abiteboul, S, Calvanese, D, Kimelfeld, B, Murlak, F, Arenas, M, David, C, Libkin, L, Neven, F, Barceló, P, Hull, R, Martens, W, Ortiz, M, Bienvenu, M, Hüllermeier, E, Milo, T, Schwentick, T, Stoyanovich, J, Su, J, Suciu, D, Vianu, V & Yi, K 2016, 'Research directions for principles of data management (abridged)', SIGMOD Record, vol. 45, no. 4, pp. 5-17. https://doi.org/10.1145/3092931.3092933
    Abiteboul S, Calvanese D, Kimelfeld B, Murlak F, Arenas M, David C et al. Research directions for principles of data management (abridged). SIGMOD Record. 2016 Dec 1;45(4):5-17. https://doi.org/10.1145/3092931.3092933
    Abiteboul, Serge ; Calvanese, Diego ; Kimelfeld, Benny ; Murlak, Filip ; Arenas, Marcelo ; David, Claire ; Libkin, Leonid ; Neven, Frank ; Barceló, Pablo ; Hull, Richard ; Martens, Wim ; Ortiz, Magdalena ; Bienvenu, Meghyn ; Hüllermeier, Eyke ; Milo, Tova ; Schwentick, Thomas ; Stoyanovich, Julia ; Su, Jianwen ; Suciu, Dan ; Vianu, Victor ; Yi, Ke. / Research directions for principles of data management (abridged). In: SIGMOD Record. 2016 ; Vol. 45, No. 4. pp. 5-17.
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