Download PDFOpen PDF in browserEnhancing Supply Chain Insights with Generative AI- Driven Data Analytics and VisualizationEasyChair Preprint 1292517 pages•Date: April 6, 2024AbstractData analytics and visualization play a pivotal role in unraveling the complexities of modern supply chains, enabling organizations to make informed decisions and drive operational excellence. This abstract delves into the integration of generative AI techniques with advanced data analytics and visualization tools to gain deeper insights into supply chain data. Additionally, it explores the benefits of interactive dashboards, data-driven decision-making, and real-time monitoring facilitated by this integration. Generative AI techniques, characterized by their ability to synthesize data and simulate scenarios, offer a powerful tool for analyzing complex supply chain data. By generating synthetic datasets and simulating diverse scenarios, generative AI enables organizations to uncover hidden patterns, identify trends, and predict future outcomes with greater accuracy. Furthermore, generative AI-driven analytics facilitate proactive decision- making and risk management, empowering organizations to stay ahead in dynamic market environments. When combined with advanced data analytics and visualization tools, generative AI enhances the accessibility and usability of supply chain insights. Interactive dashboards powered by generative AI-driven analytics provide stakeholders with intuitive interfaces to explore and visualize complex data sets. Through dynamic visualization techniques such as heat maps, network diagrams, and trend analysis, stakeholders can identify opportunities, detect anomalies, and derive actionable insights in real-time. Moreover, generative AI-driven data analytics and visualization enable data-driven decision-making across all levels of the supply chain. Keyphrases: Data Analytics, Generative AI, data-driven, decision making, insights, interactive dashboards, supply chain, visualization
|