Data Profiling (Sommersemester 2017)
Dozent:
Prof. Dr. Felix Naumann
(Information Systems)
,
Tobias Bleifuß
(Information Systems)
Website zum Kurs:
https://hpi.de/naumann/teaching/current-courses/ss-17/data-profiling.html
Allgemeine Information
- Semesterwochenstunden: 4
- ECTS: 6
- Benotet:
Ja
- Einschreibefrist: 28.04.2017
- Lehrform: Vorlesung / Übung
- Belegungsart: Wahlpflichtmodul
Studiengänge, Modulgruppen & Module
- BPET: Business Process & Enterprise Technologies
- HPI-BPET-K Konzepte und Methoden
- BPET: Business Process & Enterprise Technologies
- HPI-BPET-S Spezialisierung
- BPET: Business Process & Enterprise Technologies
- HPI-BPET-T Techniken und Werkzeuge
- OSIS: Operating Systems & Information Systems Technology
- HPI-OSIS-K Konzepte und Methoden
- OSIS: Operating Systems & Information Systems Technology
- HPI-OSIS-S Spezialisierung
- OSIS: Operating Systems & Information Systems Technology
- HPI-OSIS-T Techniken und Werkzeuge
Beschreibung
Data profiling is the set of activities and processes to determine the metadata about a given dataset. Profiling data is an important and frequent activity of any IT professional and researcher.
It encompasses a vast array of methods to examine data sets and produce metadata. Among the simpler results are statistics, such as the number of null values and distinct values in a column, its data type, or the most frequent patterns of its data values. Metadata that are more difficult to compute usually involve multiple columns, such as inclusion dependencies or functional dependencies between columns. More advanced techniques detect approximate properties or conditional properties of the data set at hand. The first part of the lecture examines efficient detection methods for these properties.
Data profiling is relevant as a preparatory step to many use cases, such as query optimization, data mining, data integration, and data cleansing.
Many of the insights gained during data profiling point to deficiencies of the data. Profiling reveals data errors, such as inconsistent formatting within a column, missing values, or outliers. Profiling results can also be used to measure and monitor the general quality of a dataset, for instance by determining the number of records that do not conform to previously established constraints. The second part of the lecture examines various methods and algorithms to improve the quality of data, with an emphasis on the many existing duplicate detection approaches.
Literatur
See website (linked soon)
Lern- und Lehrformen
Lectures and exercises
Leistungserfassung
- Successful participation in exercises and presentation of at least one solution
- Oral or written exam at end of course
Termine
See website (linked soon)
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