1、Predictive AI in Food Safety&Quality ManagementBy:Sonny BrarAgenda Market Overview&Growth Potential Drivers of Predictive AI Adoption Core Technologies Key Use Cases AI Platforms Vanguards in Food Industry Strategic Value&ROI Risks and Barriers Implementation Roadmap Future Trends&Opportunities Q&A1
2、Market Size&GrowthGartner/BCC Research projections:AI in food safety&quality is projected to reach$13.7B by 2030(CAGR 30.9%).Broader AI in food processing markets also forecast significant expansion(machine learning,vision,automation).Why this matters for food manufacturing:Rapid growth signals inve
3、stment opportunity and competitive necessity.2Why Predictive AI Matters NowMarket drivers:Increasing foodborne illness Complex&globalized supply chains Consumer demand for traceability Regulatory pressures(FSMA&GFSI)Minimizing recalls3What Is Predictive AI in Food SafetyDefinition:AI systems that an
4、alyze historical+real-time data to anticipate risks before they occur,enabling proactive decision-making.Core capabilities:Predictive contamination risk models Spoilage and shelf-life forecasting Predictive maintenance of equipment Supply chain risk forecasting4Core Technologies Machine Learning&Dee
5、p Learning identify patterns&risks Computer Vision&Hyperspectral Imaging detect defects,contaminants IoT Sensors&Edge AI continuous monitoring(temp,humidity,pH)Cloud&Analytics Platforms data aggregation+predictive modeling5Use Case:Predictive Contamination&Foodborne Risk AI models predict growth of
6、pathogens(e.g.,Salmonella)faster than traditional methods.Integrates lab,sensor,and historical data to forecast contamination before it spreads.Improves proactive HACCP and reduces recall scope.6Use Case:Real-Time Quality Inspection Computer vision systems detect visual defects,foreign objects,packa