Insight generation using language models in enterprise settings - From retrieval to recursion: a comparative enterprise case study
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Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
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Sammanfattning
Recent improvements in generative AI, in particular Large Language Models (LLM)
have created a desire for organizations to utilize the technology to drive value cre
ation. One promising application of the technology is insight generation from inter
nal enterprise data. Despite rapid technological advancements, organizations face
substantial technical, organizational, and environmental challenges when trying to
implement such systems. The purpose of this thesis is to investigate insight gener
ation in enterprise settings, and which key aspects and challenges that influence a
successful implementation.
The study is conducted as a single-case design research project within a large enter
prise environment. Based on exploratory findings and requirement analysis, two lan
guage model based pipelines are designed, implemented, and evaluated: a Retrieval
Augmented Generation (RAG) pipeline with Chain-of-Thought prompting, and a
Recursive Language Model (RLM) inspired pipeline, using iterative reasoning and
content retrieval. Both pipelines are integrated into a chat-based prototype that al
lows users to query a large internal corpus, retrieving results with clear provenance.
The pipelines are evaluated using a combination of automated metrics and qual
itative expert assessments. The results indicate that while both approaches are
capable of generating insights from internal enterprise data, the RLM pipeline con
sistently produces more relevant, and insightful responses, while also being more
trustworthy. However, this increased performance comes at the cost of increased
computational overhead in the form of latency and token usage. Beyond model
accuracy, the findings suggest that successful enterprise adoption depends equally
on non-technical factors, including trust, transparency, organizational constraints,
and organizational readiness. These factors have to be addressed as requirements
and implemented into the solutions artifact to ensure a successful insight generation
system.
Beskrivning
Ämne/nyckelord
Large Language Models (LLMs), Recursive Language Models (RLM), Retrieval-augmented generation (RAG), AI Assistant, Insight Generation, Genera tive AI, Enterprise AI.
