semantic techniques
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2021 ◽  
Vol 11 (24) ◽  
pp. 11932
Author(s):  
Dieter De Paepe ◽  
Sander Vanden Hautte ◽  
Bram Steenwinckel ◽  
Pieter Moens ◽  
Jasper Vaneessen ◽  
...  

Companies are increasingly gathering and analyzing time-series data, driven by the rising number of IoT devices. Many works in literature describe analysis systems built using either data-driven or semantic (knowledge-driven) techniques. However, little to no works describe hybrid combinations of these two. Dyversify, a collaborative project between industry and academia, investigated how event and anomaly detection can be performed on time-series data in such a hybrid setting. We built a proof-of-concept analysis platform, using a microservice architecture to ensure scalability and fault-tolerance. The platform comprises time-series ingestion, long term storage, data semantification, event detection using data-driven and semantic techniques, dynamic visualization, and user feedback. In this work, we describe the system architecture of this hybrid analysis platform and give an overview of the different components and their interactions. As such, the main contribution of this work is an experience report with challenges faced and lessons learned.


Author(s):  
Simon St.Laurent

In the late 1990s, multiple groups had plans to transform the technology world, and especially the World Wide Web, with semantic techniques. Over the last two decades, however, semantics seem less and less eager to present themselves as markup.


2021 ◽  
Author(s):  
Flavio Jaime Pol Gonçalves ◽  
Vinicius Cleves de Oliveira Carmo ◽  
Vinicius Toquetti de Melo ◽  
Rodrigo da Silva Cunha ◽  
Ismael H. F. Santos ◽  
...  

Abstract This paper presents a computing pipeline architecture for semantic search in the domain of Offshore Engineering. The proposed system combines modules such as document retriever, passage retriever, and answer extractor to produce textual responses to queries in natural language such as: “What FPSO motion is mostly affected by viscous damping?” Such responses are often needed in Offshore Engineering activities, and linguistic techniques such as those based on inverted indexes with a syntactic focus tend to perform poorly. Instead, this research explores semantic techniques that take into account the meaning of words in the domain of Offshore Engineering. This paper describes a Linguistic QA pipeline architecture built that provides a way to retrieve answers instantly from a collection of 13,000 unstructured technical documents about Offshore Engineering, reports the achieved results and future work. This paper also presents additional modules under construction that exploit Neural Networks and ontologies approaches for semantic search in the domain of Offshore Engineering.


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