How to Prevent AI Model Drift: Continuous Retraining for Image Classification Systems
AI models, especially those used for image classification, face performance degradation—also known as model drift—when deployed in real-world environments. Accuracy can decline by up to 15% within just three months, leading to major operational and economic setbacks. In this session, we explore how modern convolutional neural networks (CNNs)—from AlexNet to EfficientNetV2—are affected by model drift, and what strategies can prevent it. You'll learn how leading organizations are implementing continuous retraining pipelines, using selective data sampling, adaptive triggers, and validation protocols to: • Extend model life by 42% • Reduce retraining costs by over 60% • Maintain over 92% of peak performance with only partial retraining • Cut false positive rates by 43% Whether you're working in healthcare, manufacturing, or any AI-powered domain, this talk will provide practical, scalable retraining strategies to ensure your models stay accurate, reliable, and production-ready. ⚡Download Sharp Rewards Wallet to earn Rewards: (200 bonus on using this link) http://invite.sharpplatform.com/VirtualConf 📺 CSharp TV - Dev Streaming Destination http://csharp.tv 🌎 C# Corner - Community of Software and Data Developers https://www.c-sharpcorner.com