This research presents a feature-engineering-less machine learning model (fel-ml) for detecting malware on Internet of Things (IoT) devices, addressing the limitations of traditional deep learning methods that are computationally intensive. By using raw packet data as input, the proposed model improves classification speed and efficiency without requiring extensive memory or processing power. The study outlines the effectiveness of fel-ml compared to traditional feature-based detection methods, highlighting its suitability for resource-constrained IoT environments.