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DIY Nvidia JetsonNano Development Learning Kit (JetBot)

SKU: TES-EV00007097
Regular price Rs. 23,707.70 Rs. 16,590.02 30% off
Unit price
per
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DIY Nvidia JetsonNano Development Learning Kit (JetBot)

The DIY Nvidia JetsonNano Development Learning Kit (JetBot) is a complete robotics platform built around the Nvidia Jetson Nano GPU-accelerated AI computer, designed for hands-on learning in autonomous robotics, computer vision, and edge AI applications. Roboticists, embedded systems engineers, computer science students, and AI researchers use this kit to develop real-world autonomous systems with GPU-accelerated deep learning capabilities on a compact, power-efficient platform. This kit solves the critical challenge of prototyping and deploying AI-powered robotic applications without requiring expensive server-grade hardware or cloud computing resources.

Product Overview

The JetBot is a fully-featured autonomous robot that leverages the Nvidia Jetson Nano's 128-core Maxwell GPU to perform real-time AI inference directly on the device. The platform integrates a dual-motor chassis with encoder feedback, a wide-angle camera module for computer vision tasks, and a comprehensive sensor suite including IMU and distance sensors. The Jetson Nano module runs Linux-based JetPack OS and supports popular deep learning frameworks like TensorFlow, PyTorch, and ONNX, enabling developers to deploy pre-trained models or train custom neural networks for object detection, image classification, and autonomous navigation tasks without relying on cloud connectivity.

What distinguishes the JetBot from other robotics platforms is its integration of enterprise-grade GPU computing in a DIY-friendly form factor. The kit includes detailed assembly instructions, Jupyter notebook-based tutorials, and pre-trained models for common computer vision tasks. The Jetson Nano operates at just 5 watts during typical inference workloads, making it suitable for battery-powered autonomous systems. The dual-motor drive system with encoder feedback enables precise motion control and odometry-based navigation, while the 160-degree field-of-view camera captures high-resolution video streams for real-time processing at 30+ fps with optimized inference pipelines.

Key Specifications

Specification Details
Product Type GPU-Accelerated Autonomous Robotics Development Kit
Brand Nvidia Official Partner Kit
Origin Original/Authentic
Warranty 7 days on manufacturing defects
Shipping 1-5 days from Bengaluru
Delivery 7-8 days across India
Support 24/7 via Email and WhatsApp
Jetson Nano Processor 128-core Maxwell GPU, 4-core ARM A57 CPU, 4GB LPDDR4 RAM
Power Consumption 5-10 watts during inference, 25 watts peak
Camera Module 160-degree wide-angle CSI camera, 5MP resolution, 30+ fps video capture
Drive System Dual brushed DC motors with magnetic encoders for odometry
Battery 5000mAh Li-ion battery pack with 4-6 hour runtime
Connectivity 802.11ac WiFi, Bluetooth 5.0, USB 3.0, Micro-USB

Key Features

  • GPU-Accelerated Deep Learning: 128-core Maxwell GPU enables real-time AI inference with 5-10 TFLOPS of performance for object detection and image classification tasks
  • Complete Sensor Suite: Integrated camera, IMU, motor encoders, and optional distance sensors provide multi-modal perception for autonomous navigation
  • Encoder-Based Odometry: Dual magnetic encoders on drive motors enable precise motion control and dead-reckoning navigation without external localization
  • Jupyter Notebook Tutorials: Pre-configured interactive notebooks for training custom models, implementing PID motor control, and deploying computer vision pipelines
  • Modular Expansion: Standardized GPIO, I2C, and SPI interfaces support additional sensors, actuators, and communication modules for custom applications
  • Lightweight Linux Environment: JetPack OS with CUDA toolkit pre-installed, enabling direct deployment of TensorFlow, PyTorch, and ONNX models

Applications and Use Cases

  • Autonomous Object Tracking: Deploy real-time object detection models using TensorFlow Lite to enable the robot to autonomously follow persons or specific objects with GPU-accelerated inference
  • Line Following and Maze Navigation: Implement computer vision-based line detection algorithms to enable autonomous path following with motor encoder feedback for precise steering control
  • Gesture Recognition Robotics: Train custom CNN models to recognize hand gestures and voice commands, enabling intuitive human-robot interaction without external computing
  • Edge AI Research: Prototype and benchmark deep learning model optimization techniques including quantization, pruning, and knowledge distillation on a real embedded GPU platform
  • Educational Robotics Curriculum: Teach computer vision, motor control, embedded systems, and AI concepts through hands-on assembly and programming in Python and CUDA

How to Use

Begin by assembling the JetBot chassis according to the provided step-by-step guide, ensuring the dual motors are properly aligned and the camera module is securely mounted with clear forward-facing orientation. Install the Jetson Nano module into the carrier board, connect the camera via CSI ribbon cable, and attach the motor encoder connectors to the GPIO pins as detailed in the wiring diagram. Power on the system and access the pre-configured Jupyter notebook environment via WiFi to run the included tutorials for camera calibration, motor control testing, and inference model deployment.

Once the hardware is validated, proceed with the software setup by installing required deep learning frameworks using the apt package manager or pip within the JetPack environment. Start with the beginner-level notebooks that demonstrate basic motor control using PWM signals and encoder feedback, then progress to computer vision tasks by loading pre-trained MobileNet or ResNet models for real-time object detection. For custom applications, train your own TensorFlow or PyTorch models on a desktop GPU, then convert and optimize the model using TensorRT for efficient inference on the Jetson Nano, achieving 10-50x speedup compared to CPU execution.

Frequently Asked Questions

Can the JetBot run multiple deep learning models simultaneously?

Yes, the Jetson Nano can run multiple inference models concurrently if their combined memory and compute requirements stay within the 4GB LPDDR4 RAM and 128-core GPU capacity. For example, you can run simultaneous object detection and pose estimation models, or cascade multiple classifiers for hierarchical decision-making. Memory usage depends on model size and batch processing; using quantized INT8 models and TensorRT optimization significantly reduces memory footprint and enables parallel inference pipelines.

What is the maximum battery runtime and can it be extended?

The standard 5000mAh Li-ion battery provides 4-6 hours of continuous runtime during active inference and motor operation. Runtime varies based on GPU utilization, motor duty cycle, and WiFi connectivity. You can extend runtime by upgrading to higher-capacity battery packs (10000mAh+ available), optimizing inference with quantized models to reduce power consumption, or implementing sleep modes during idle periods. The kit supports external power banks via Micro-USB for extended field testing.

How do I implement custom motor control algorithms like PID or trajectory planning?

The JetBot provides direct GPIO access to motor PWM pins and encoder feedback pins, allowing you to implement custom control algorithms in Python using the Jetson.GPIO library or ROS (Robot Operating System). The included Jupyter notebooks demonstrate basic PWM control; you can extend these with PID control loops using encoder feedback to achieve precise speed regulation and trajectory tracking. For advanced applications, implement Model Predictive Control (MPC) or reinforcement learning-based controllers that leverage the GPU for real-time computation.

When will I receive my order?

Orders are dispatched within 1-5 business days from our Bengaluru warehouse. Delivery takes 7-8 days to most locations across India.

What is your return and warranty policy?

We offer a 7-day return policy on manufacturing defects only. Contact support within 7 days of receipt for free replacement or full refund. Not applicable for user damage or misuse.

Are bulk discounts available?

Yes, wholesale pricing for orders of 10 or more units. Contact our sales team via WhatsApp or email for a customized bulk quote.

Why Buy from The Engineer Store

  • Genuine Products: Sourced directly from authorized distributors with authentication
  • Expert Team: Our technical team validates every product before listing
  • Fast Shipping: Dispatched within 1-5 days from our Bengaluru warehouse
  • Pan-India Delivery: 7-8 days to Mumbai, Delhi, Chennai, Hyderabad, Pune, Kolkata
  • Payment Options: COD, UPI, credit/debit cards, net banking, EMI available
  • Technical Support: 24/7 expert guidance via email and WhatsApp
  • Returns: 7-day return policy on manufacturing defects only

Buy DIY Nvidia JetsonNano Development Learning Kit (JetBot) Online in India

Purchase the DIY Nvidia JetsonNano Development Learning Kit (JetBot) online at The Engineer Store, India's trusted source for genuine electronics. We deliver across Bengaluru, Mumbai, Delhi, Chennai, Hyderabad, Pune, Kolkata, Ahmedabad, Jaipur, and Surat. Get the best price on DIY Nvidia JetsonNano Development Learning Kit (JetBot) with fast shipping and expert support.

Our team in Bengaluru is available 24/7 to support your journey from product selection to project completion.

Sale

DIY Nvidia JetsonNano Development Learning Kit (JetBot)

SKU: TES-EV00007097
Regular price Rs. 23,707.70 Rs. 16,590.02 30% off
Unit price
per
No Reviews
3-5 Working Days Dispatch
Availability
 
(0 in cart)
Shipping calculated at checkout.

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DIY Nvidia JetsonNano Development Learning Kit (JetBot)

The DIY Nvidia JetsonNano Development Learning Kit (JetBot) is a complete robotics platform built around the Nvidia Jetson Nano GPU-accelerated AI computer, designed for hands-on learning in autonomous robotics, computer vision, and edge AI applications. Roboticists, embedded systems engineers, computer science students, and AI researchers use this kit to develop real-world autonomous systems with GPU-accelerated deep learning capabilities on a compact, power-efficient platform. This kit solves the critical challenge of prototyping and deploying AI-powered robotic applications without requiring expensive server-grade hardware or cloud computing resources.

Product Overview

The JetBot is a fully-featured autonomous robot that leverages the Nvidia Jetson Nano's 128-core Maxwell GPU to perform real-time AI inference directly on the device. The platform integrates a dual-motor chassis with encoder feedback, a wide-angle camera module for computer vision tasks, and a comprehensive sensor suite including IMU and distance sensors. The Jetson Nano module runs Linux-based JetPack OS and supports popular deep learning frameworks like TensorFlow, PyTorch, and ONNX, enabling developers to deploy pre-trained models or train custom neural networks for object detection, image classification, and autonomous navigation tasks without relying on cloud connectivity.

What distinguishes the JetBot from other robotics platforms is its integration of enterprise-grade GPU computing in a DIY-friendly form factor. The kit includes detailed assembly instructions, Jupyter notebook-based tutorials, and pre-trained models for common computer vision tasks. The Jetson Nano operates at just 5 watts during typical inference workloads, making it suitable for battery-powered autonomous systems. The dual-motor drive system with encoder feedback enables precise motion control and odometry-based navigation, while the 160-degree field-of-view camera captures high-resolution video streams for real-time processing at 30+ fps with optimized inference pipelines.

Key Specifications

Specification Details
Product Type GPU-Accelerated Autonomous Robotics Development Kit
Brand Nvidia Official Partner Kit
Origin Original/Authentic
Warranty 7 days on manufacturing defects
Shipping 1-5 days from Bengaluru
Delivery 7-8 days across India
Support 24/7 via Email and WhatsApp
Jetson Nano Processor 128-core Maxwell GPU, 4-core ARM A57 CPU, 4GB LPDDR4 RAM
Power Consumption 5-10 watts during inference, 25 watts peak
Camera Module 160-degree wide-angle CSI camera, 5MP resolution, 30+ fps video capture
Drive System Dual brushed DC motors with magnetic encoders for odometry
Battery 5000mAh Li-ion battery pack with 4-6 hour runtime
Connectivity 802.11ac WiFi, Bluetooth 5.0, USB 3.0, Micro-USB

Key Features

  • GPU-Accelerated Deep Learning: 128-core Maxwell GPU enables real-time AI inference with 5-10 TFLOPS of performance for object detection and image classification tasks
  • Complete Sensor Suite: Integrated camera, IMU, motor encoders, and optional distance sensors provide multi-modal perception for autonomous navigation
  • Encoder-Based Odometry: Dual magnetic encoders on drive motors enable precise motion control and dead-reckoning navigation without external localization
  • Jupyter Notebook Tutorials: Pre-configured interactive notebooks for training custom models, implementing PID motor control, and deploying computer vision pipelines
  • Modular Expansion: Standardized GPIO, I2C, and SPI interfaces support additional sensors, actuators, and communication modules for custom applications
  • Lightweight Linux Environment: JetPack OS with CUDA toolkit pre-installed, enabling direct deployment of TensorFlow, PyTorch, and ONNX models

Applications and Use Cases

  • Autonomous Object Tracking: Deploy real-time object detection models using TensorFlow Lite to enable the robot to autonomously follow persons or specific objects with GPU-accelerated inference
  • Line Following and Maze Navigation: Implement computer vision-based line detection algorithms to enable autonomous path following with motor encoder feedback for precise steering control
  • Gesture Recognition Robotics: Train custom CNN models to recognize hand gestures and voice commands, enabling intuitive human-robot interaction without external computing
  • Edge AI Research: Prototype and benchmark deep learning model optimization techniques including quantization, pruning, and knowledge distillation on a real embedded GPU platform
  • Educational Robotics Curriculum: Teach computer vision, motor control, embedded systems, and AI concepts through hands-on assembly and programming in Python and CUDA

How to Use

Begin by assembling the JetBot chassis according to the provided step-by-step guide, ensuring the dual motors are properly aligned and the camera module is securely mounted with clear forward-facing orientation. Install the Jetson Nano module into the carrier board, connect the camera via CSI ribbon cable, and attach the motor encoder connectors to the GPIO pins as detailed in the wiring diagram. Power on the system and access the pre-configured Jupyter notebook environment via WiFi to run the included tutorials for camera calibration, motor control testing, and inference model deployment.

Once the hardware is validated, proceed with the software setup by installing required deep learning frameworks using the apt package manager or pip within the JetPack environment. Start with the beginner-level notebooks that demonstrate basic motor control using PWM signals and encoder feedback, then progress to computer vision tasks by loading pre-trained MobileNet or ResNet models for real-time object detection. For custom applications, train your own TensorFlow or PyTorch models on a desktop GPU, then convert and optimize the model using TensorRT for efficient inference on the Jetson Nano, achieving 10-50x speedup compared to CPU execution.

Frequently Asked Questions

Can the JetBot run multiple deep learning models simultaneously?

Yes, the Jetson Nano can run multiple inference models concurrently if their combined memory and compute requirements stay within the 4GB LPDDR4 RAM and 128-core GPU capacity. For example, you can run simultaneous object detection and pose estimation models, or cascade multiple classifiers for hierarchical decision-making. Memory usage depends on model size and batch processing; using quantized INT8 models and TensorRT optimization significantly reduces memory footprint and enables parallel inference pipelines.

What is the maximum battery runtime and can it be extended?

The standard 5000mAh Li-ion battery provides 4-6 hours of continuous runtime during active inference and motor operation. Runtime varies based on GPU utilization, motor duty cycle, and WiFi connectivity. You can extend runtime by upgrading to higher-capacity battery packs (10000mAh+ available), optimizing inference with quantized models to reduce power consumption, or implementing sleep modes during idle periods. The kit supports external power banks via Micro-USB for extended field testing.

How do I implement custom motor control algorithms like PID or trajectory planning?

The JetBot provides direct GPIO access to motor PWM pins and encoder feedback pins, allowing you to implement custom control algorithms in Python using the Jetson.GPIO library or ROS (Robot Operating System). The included Jupyter notebooks demonstrate basic PWM control; you can extend these with PID control loops using encoder feedback to achieve precise speed regulation and trajectory tracking. For advanced applications, implement Model Predictive Control (MPC) or reinforcement learning-based controllers that leverage the GPU for real-time computation.

When will I receive my order?

Orders are dispatched within 1-5 business days from our Bengaluru warehouse. Delivery takes 7-8 days to most locations across India.

What is your return and warranty policy?

We offer a 7-day return policy on manufacturing defects only. Contact support within 7 days of receipt for free replacement or full refund. Not applicable for user damage or misuse.

Are bulk discounts available?

Yes, wholesale pricing for orders of 10 or more units. Contact our sales team via WhatsApp or email for a customized bulk quote.

Why Buy from The Engineer Store

  • Genuine Products: Sourced directly from authorized distributors with authentication
  • Expert Team: Our technical team validates every product before listing
  • Fast Shipping: Dispatched within 1-5 days from our Bengaluru warehouse
  • Pan-India Delivery: 7-8 days to Mumbai, Delhi, Chennai, Hyderabad, Pune, Kolkata
  • Payment Options: COD, UPI, credit/debit cards, net banking, EMI available
  • Technical Support: 24/7 expert guidance via email and WhatsApp
  • Returns: 7-day return policy on manufacturing defects only

Buy DIY Nvidia JetsonNano Development Learning Kit (JetBot) Online in India

Purchase the DIY Nvidia JetsonNano Development Learning Kit (JetBot) online at The Engineer Store, India's trusted source for genuine electronics. We deliver across Bengaluru, Mumbai, Delhi, Chennai, Hyderabad, Pune, Kolkata, Ahmedabad, Jaipur, and Surat. Get the best price on DIY Nvidia JetsonNano Development Learning Kit (JetBot) with fast shipping and expert support.

Our team in Bengaluru is available 24/7 to support your journey from product selection to project completion.