• Corpus ID: 2652769

Towards A Process View on Critical Success Factors in Big Data Analytics Projects

@inproceedings{Gao2015TowardsAP,
  title={Towards A Process View on Critical Success Factors in Big Data Analytics Projects},
  author={Jing Gao and Andy Koronios and Sven Selle},
  booktitle={AMCIS},
  year={2015}
}
The research tries to identify factors that are critical for a Big Data project’s success. [] Key Method The process model is divided into separate phases. In addition to a description of the tasks to fulfil, the identified success factors are assigned to the individual phases of the analysis process. Finally, this thesis provides a process model for Big Data projects and also assigns success factors to individual process stages, which are categorized according to their importance for the success of the…

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