Explainable Graph-based Search for Lessons-Learned Documents in the Semiconductor Industry
Hasan Abu-Rasheed, Christian Weber, Johannes Zenkert, Roland Krumm,, Madjid Fathi

TL;DR
This paper presents an explainable, graph-based search system for lessons-learned documents in the semiconductor industry, enhancing knowledge retrieval and understanding from unstructured failure reports to support chip design engineers.
Contribution
It introduces a knowledge graph and an explainable search engine tailored for unstructured failure data, improving access and insights for domain experts.
Findings
Enhanced search results beyond keyword matches
Improved knowledge linking through graph relations
Interactive interface with user feedback optimization
Abstract
Industrial processes produce a considerable volume of data and thus information. Whether it is structured sensory data or semi- to unstructured textual data, the knowledge that can be derived from it is critical to the sustainable development of the industrial process. A key challenge of this sustainability is the intelligent management of the generated data, as well as the knowledge extracted from it, in order to utilize this knowledge for improving future procedures. This challenge is a result of the tailored documentation methods and domain-specific requirements, which include the need for quick visibility of the documented knowledge. In this paper, we utilize the expert knowledge documented in chip-design failure reports in supporting user access to information that is relevant to a current chip design. Unstructured, free, textual data in previous failure documentations provides a…
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Taxonomy
TopicsSemantic Web and Ontologies · Software Engineering Research · Machine Learning in Materials Science
