Water shortage and wasteful irrigation are still serious issues in the agricultural industry. With rising food demand around the world and a growing threat from climate change, there is an immediate need to shift away from conventional methods of farming to intelligent, resource-based systems. This study introduces an end-to-end solution that employs Artificial Intelligence (AI) and Internet of Things (IoT) sensors to facilitate sustainable farming and precision irrigation. The suggested system combines real-time environmental information e.g., soil moisture, temperature, humidity, and weather forecast gathered via IoT sensors. The data is utilized to train machine learning algorithms, e.g., Support Vector Machines (SVM), Decision Trees, KNearest Neighbors (KNN), and Advanced Naive Bayes, that calculate dynamic optimal irrigation schedules and water needs for different crops and soil types. Besides predictive modeling, the research investigates the application of data warehousing, data mining, and structured software engineering practices to provide the system's scalability, maintainability, and long-term efficiency. Experimental results show water savings of 35-45% over traditional irrigation methods, with similar or better crop yields. The study also engages with vital concerns like cyber security, marketization, and socioeconomic effects of installing intelligent technologies in rural agriculture settings. Through embedding stringent test protocols and pre-emptive cyber security practices, the system guarantees technological dependability and moral viability. This research adds to the increasing number of studies on agri-tech innovation by suggesting an AI and IoT-based irrigation system. Potential future directions include scaling up the system using big data analytics, improving decision-making using market-conscious models, and closing the divide between traditional and digital agriculture. The results emphasize the revolutionary promise of AI to create smart, sustainable, and resilient agricultural systems.
Artificial Intelligence (AI), Internet of Things (IoT), Smart Irrigation, Precision Agriculture, Machine Learning, Predictive Analytics, Soil Moisture Forecasting, Water Conservation, Sustainable Farming, Decision Tree, Support Vector Machine (SVM), K-Nearest Neighbors (KNN), Naive Bayes Classifier, Data Mining, Big Data Analytics, Software Engineering in Agriculture, Cybersecurity in Smart Farming, Digital Agriculture Systems