Deep learning using Tensorflow Lite on Raspberry Pi

Why take this course?
🚀 Course Title: Deep Learning using TensorFlow Lite on Raspberry Pi 🧠✈️
Course Headline: Power up your Embedded projects with Artificial Intelligence in Python using TF Lite
Course Workflow:
Embark on a journey to harness the power of Deep Learning on the Raspberry Pi 4, transforming it into an intelligent edge device. Throughout this course, you'll dive into hands-on projects with custom data, starting with approximating trigonometric functions and culminating in voice-controlled LEDs. 🎩✨
-
Trigonometric Functions Approximation: Generate random data to model and predict the Sin function using Python. This sets the foundation for understanding non-linear models. 📈
-
Visual Calculator: Create an application that takes image inputs, processes them through a Convolutional Neural Network (CNN) for categorical classification, and outputs mathematical results. 📷➡️🧮
-
Custom Voice-Controlled LEDs: Implement voice recognition to control LEDs. This project will introduce you to the intersection of AI, electronics, and hardware interaction using your own voice commands. 🎙️👉✨
-
Post Quantization & Model Optimization: Learn to apply Post Quantization techniques to TensorFlow models trained on Google Colab, reducing model size by up to 75% and speeding up inferencing to 0.03 seconds per input! 🔬⚡️
Sections:
- Non-Linear Function Approximation
- Visual Calculator
- Custom Voice-Controlled Led
Outcomes After this Course:
- Develop Deep Learning Projects on Embedded Hardware 🛠️🧠
- Convert your models into Tensorflow Lite models for efficient deployment
- Speed up Inferencing on embedded devices, making your projects more responsive
- Master Post Quantization to optimize TensorFlow models
- Utilize custom data for AI projects to tailor the learning process
- Create Hardware Optimized Neural Networks that fit into IoT applications
- Implement Computer Vision projects using OPENCV and Tensorflow Lite
- Deploy Deep Neural Networks with fast inferencing speed 🚀
Hardware Requirements:
- Raspberry Pi 4 (the brain of our embedded AI system)
- 12V Power Bank (to power our projects on the go)
- 2 LEDs (Red and Green) for visual feedback
- Jumper Wires and Bread Board (for prototyping circuits)
- Raspberry Pi Camera V2 (for computer vision tasks)
- RPI 4 Fan (to keep our hardware cool during intensive processing)
- 3D printed parts (custom components for your projects)
Software Requirements:
- Python3 (our tool for coding and scripting)
- A motivated mind ready to tackle a massive programming project (your most important asset)
👩💻🧙♂️
Before buying, take a look into this course's GitHub repository! Get a glimpse of the projects, code snippets, and resources that will guide you through the course. This is your chance to see what you'll be building and learning 🛠️✨
Join us on this AI adventure with TensorFlow Lite on Raspberry Pi, where cutting-edge technology meets practical application! 🎉🚀
Course Gallery




Loading charts...