Title :
Industrial Analytics Pipelines
Author :
Harper, Karl Eric ; Jiang Zheng ; Jacobs, Sam Ade ; Dagnino, Aldo ; Jansen, Anton ; Goldschmidt, Thomas ; Marinakis, Adamantios
Author_Institution :
ABB Corp. Res., Raleigh, NC, USA
fDate :
March 30 2015-April 2 2015
Abstract :
Decreasing cost and increasing capabilities of instrumentation, networks and data repositories have pervaded the industrial automation and power markets and opened the door for large scale collection and analysis of data. There are a variety of technology stacks that can be applied to these types of activities. However, no single infrastructure or architecture fits all the scenarios. With limited data science training and experience, it is difficult and time consuming for highly specialized domain experts to choose the optimal approach. In this paper, we introduce an architectural pattern for the design of a flexible core analytics platform which is extensible using different pipelines. The pipeline pattern provides an accelerated start to implementing industrial analytics applications. The platform enables domain experts to compose pipelines in series and in parallel at scale with the right quality attribute trade-offs to deliver significant business value. Our use of the proposed platform is illustrated with real-world industrial applications, which necessitate various data handling and processing capabilities. These examples show the importance of the platform to non-data experts: reducing the learning curve for applying data science, providing a systematic rating process for choosing the pipeline types, and lowering the barriers for industrial businesses to leverage analytics.
Keywords :
data analysis; data analysis; data collection; data handling; data processing; data science; flexible core analytics platform; industrial analytics pipelines; systematic rating process; Big data; Business; Computer architecture; Pipelines; Real-time systems; Reliability; Scalability; architecture patterns; data science; industrial analytics; product line architectures;
Conference_Titel :
Big Data Computing Service and Applications (BigDataService), 2015 IEEE First International Conference on
Conference_Location :
Redwood City, CA
DOI :
10.1109/BigDataService.2015.38