Collaborative AI in Sentiment Analysis: System Architecture, Data Prediction and Deployment Strategies
The advancement of large language model (LLM) based artificial intelligence technologies has been a game-changer, particularly in sentiment analysis. This progress has enabled a shift from highly specialized research environments to practical, widespread applications within the industry. However, in...
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Zusammenfassung: | The advancement of large language model (LLM) based artificial intelligence
technologies has been a game-changer, particularly in sentiment analysis. This
progress has enabled a shift from highly specialized research environments to
practical, widespread applications within the industry. However, integrating
diverse AI models for processing complex multimodal data and the associated
high costs of feature extraction presents significant challenges. Motivated by
the marketing oriented software development +needs, our study introduces a
collaborative AI framework designed to efficiently distribute and resolve tasks
across various AI systems to address these issues. Initially, we elucidate the
key solutions derived from our development process, highlighting the role of
generative AI models like \emph{chatgpt}, \emph{google gemini} in simplifying
intricate sentiment analysis tasks into manageable, phased objectives.
Furthermore, we present a detailed case study utilizing our collaborative AI
system in edge and cloud, showcasing its effectiveness in analyzing sentiments
across diverse online media channels. |
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DOI: | 10.48550/arxiv.2410.13247 |