In addition to internal knowledge, AI Agents can also use diverse data such as market trends to autonomously carry out predictive modeling, determine parameters to use, and apply current market conditions to past material price data to determine appropriate prices.
■Current Status
Due to the soaring prices of materials, investigating past estimates is increasingly becoming a poor point of reference, making fair price determination difficult. Actually, company assessments show a wide divergence between these prices and those provided by the supplier side, and managers struggle with the adjustments. We receive a large number of consultations regarding the influence on price negotiations and procurement processes as a whole. In addition, specialized knowledge related to each type of material is essential for price prediction, and because the number of people who can handle this work is limited, efficient procurement judgment is difficult, and the inability to procure materials with the appropriate timing causes problems.
■After AI Agent Utilization
Through the use of market condition data in addition to past estimates, validity of pricing can be evaluated based on both past transactions and market trends (such as raw material price fluctuations, exchange rates, and supply conditions), enabling real-time calculating of appropriate pricing. Also, AI Agents can autonomously select the market condition data and price prediction model parameters to use for each material, streamlining the optimum price prediction process.
In addition, an abnormality detection model can be used to catch potential supplier delivery delays and supply risks in advance. By analyzing past delivery records and supply conditions and predicting supplier performance, these risks can be prevented.