An AI Agent for Exploratory Testing Guidance Using Historical Fault Data - A Case Study on Ericsson MINI-LINK
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Publicerad
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
Exploratory testing is effective at finding defects that scripted tests miss, but it
depends heavily on domain knowledge that is hard to transfer between testers.
In telecommunications, where systems have thousands of configurable parameters,
much of this knowledge stays locked in bug trackers and individual experience.
This thesis explores how AI can support exploratory testing by making historical
fault data searchable and actionable. The result is a conversational assistant, the
ETAgent, developed and evaluated at Ericsson for the MINI-LINK microwave product
family.
The system builds a knowledge base from over 4,000 trouble reports. Unsupervised
topic modelling discovers recurring fault patterns from verified reports, which are
summarised into actionable guides. A hybrid retrieval pipeline combining sparse and
dense search with cross-encoder reranking handles diverse query types, achieving
an MRR of 0.815. A LangGraph-based agentic architecture lets the model choose
retrieval strategies and synthesise guidance across multi-turn conversations.
In a blind evaluation, eleven domain experts preferred the ETAgent over both a
foundation model and an enterprise baseline in 72% of comparisons. The advantage
was clearest on diagnosis and knowledge queries, where retrieval-grounded answers
provide concrete ticket references that neither baseline can offer. The system’s value
lies in surfacing specific historical evidence rather than general test planning advice,
where the raw foundation model remains competitive.
Beskrivning
Ämne/nyckelord
agentic retrieval-augmented generation, exploratory testing, large language models, bug report mining, topic modelling, telecommunications
