Course Outline

Introduction to TinyML in Agriculture

  • Understanding TinyML capabilities
  • Key agricultural use cases
  • Constraints and benefits of on-device intelligence

Hardware and Sensor Ecosystem

  • Microcontrollers for edge AI
  • Common agricultural sensors
  • Energy and connectivity considerations

Data Collection and Preprocessing

  • Field data acquisition methods
  • Cleaning sensor and environmental data
  • Feature extraction for edge models

Building TinyML Models

  • Model selection for constrained devices
  • Training workflows and validation
  • Optimizing model size and efficiency

Deploying Models to Edge Devices

  • Using TensorFlow Lite for microcontrollers
  • Flashing and running models on hardware
  • Troubleshooting deployment issues

Smart Agriculture Applications

  • Crop health assessment
  • Pest and disease detection
  • Precision irrigation control

IoT Integration and Automation

  • Connecting edge AI to farm management platforms
  • Event-driven automation
  • Real-time monitoring workflows

Advanced Optimization Techniques

  • Quantization and pruning strategies
  • Battery optimization approaches
  • Scalable architectures for large deployments

Summary and Next Steps

Requirements

  • Familiarity with IoT development workflows
  • Experience working with sensor data
  • A general understanding of embedded AI concepts

Audience

  • Agritech engineers
  • IoT developers
  • AI researchers
 21 Hours

Number of participants


Price Per Participant (Exc. Tax)

Provisional Courses

Related Categories