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JetBot Smart Car kit

SKU: TES-EV02165
Regular price Rs. 23,742.09 Rs. 19,000.08 20% off
Unit price
per
No Reviews

JetBot Smart Car kit

The JetBot Smart Car kit is a NVIDIA Jetson-based autonomous robotics platform designed for AI-powered mobile robotics development and real-time computer vision applications. Professional roboticists, AI researchers, and embedded systems engineers use this kit to prototype autonomous navigation systems, implement deep learning models for object detection, and develop collision avoidance algorithms. This kit solves the challenge of creating production-grade autonomous vehicles with minimal latency by leveraging GPU-accelerated computing on a compact mobile chassis.

Product Overview

The JetBot Smart Car kit integrates NVIDIA's Jetson Nano developer board with a two-wheel differential drive chassis, delivering 5 TFLOPS of AI performance in a mobile form factor. The system runs JetPack OS with CUDA, cuDNN, and TensorRT libraries pre-installed, enabling real-time inference of neural networks at 30+ FPS for camera-based perception tasks. The kit features a 5-megapixel CSI camera module for vision processing, dual DC motors with encoder feedback for precise odometry, and a rechargeable lithium-ion battery providing 2-3 hours of continuous operation at standard speeds.

What distinguishes the JetBot from competing platforms is its seamless integration of edge AI acceleration with robotics fundamentals. The Jetson Nano's Maxwell GPU architecture executes pre-trained models from NVIDIA's Model Zoo without cloud dependency, critical for real-time autonomous decision-making. The kit includes Jupyter Notebook-based tutorials for implementing object tracking, lane detection, and gesture recognition, making it ideal for both educational projects and commercial prototyping. The open-source software stack allows custom model training and deployment, supporting frameworks like TensorFlow, PyTorch, and ONNX.

Key Specifications

Specification Details
Product Type AI-Powered Autonomous Mobile Robot Kit
Brand NVIDIA
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
Processor NVIDIA Jetson Nano (quad-core ARM A57)
GPU NVIDIA Maxwell, 128 CUDA cores, 5 TFLOPS
RAM 4GB LPDDR4 64-bit
Storage 16GB microSD card (included)
Camera Module 5MP CSI Raspberry Pi camera with 160-degree FOV
Motor Type Dual brushed DC motors with quadrature encoders
Battery 3.7V 5000mAh lithium-ion, 2-3 hour runtime
Chassis Dimensions 160mm x 120mm x 80mm (L x W x H)
Maximum Speed 0.3 m/s (configurable via PWM)
Communication 802.11ac WiFi, Bluetooth 5.0, USB 3.0
Operating System JetPack 4.6+ (Ubuntu 18.04 based)

Key Features

  • GPU-Accelerated AI Inference: 5 TFLOPS Maxwell GPU enables real-time neural network execution for vision-based autonomous navigation without external servers
  • Pre-Installed AI Frameworks: CUDA, cuDNN, and TensorRT come pre-configured, reducing setup time for deploying custom trained models
  • Dual Motor Encoders: Quadrature encoders on both wheels provide precise odometry feedback for accurate localization and path planning algorithms
  • CSI Camera Interface: Native 5MP camera with 160-degree wide-angle lens captures high-quality video streams for real-time object detection and tracking
  • Jupyter Notebook Tutorials: Interactive Python-based learning environment with pre-built examples for gesture recognition, lane detection, and collision avoidance
  • Expandable I/O: 40-pin GPIO header, I2C, SPI, and UART interfaces for integrating LIDAR, IMU, and ultrasonic sensors
  • Long Battery Runtime: 5000mAh lithium-ion battery provides 2-3 hours of continuous operation for extended field testing
  • Open-Source Software: Full access to ROS (Robot Operating System) compatibility and community-contributed autonomous navigation stacks

Applications and Use Cases

  • Autonomous Delivery Robots: Deploy JetBot for last-mile delivery in controlled environments using real-time obstacle detection and path planning algorithms
  • Educational AI/Robotics Programs: Teach deep learning and embedded systems concepts through hands-on projects in university robotics labs and coding bootcamps
  • Warehouse Inventory Automation: Implement visual inspection and item tracking systems for automated warehouse management with edge AI processing
  • Precision Agriculture: Develop crop monitoring and weed detection robots using computer vision models trained on agricultural datasets
  • Security and Surveillance: Create autonomous patrol robots with real-time person detection and anomaly alerting for facility monitoring
  • Research Prototyping: Validate novel autonomous navigation algorithms and sensor fusion techniques before deploying to production-grade platforms

How to Use

Begin by assembling the chassis components and installing the Jetson Nano module onto the carrier board, ensuring proper thermal paste application on the GPU. Connect the dual DC motors to the motor driver pins, attach the CSI camera ribbon cable to the camera connector, and insert the pre-loaded 16GB microSD card. Power on the device via USB-C and connect to your WiFi network using the onboard 802.11ac module. Access the Jupyter Notebook interface via your browser at the device's IP address to run pre-configured tutorials for basic motor control and camera streaming.

For autonomous navigation projects, start with the object detection notebook to verify camera calibration and model inference latency. Train custom models using NVIDIA's Transfer Learning Toolkit on your host machine, then export them as TensorRT engines for optimized inference on the Jetson Nano. Implement control loops in Python using the motor encoder feedback to achieve closed-loop velocity control and odometry-based localization. Deploy advanced features like multi-object tracking and semantic segmentation once baseline performance is validated at 30+ FPS throughput.

Frequently Asked Questions

What is the maximum inference speed for real-time object detection?

The JetBot achieves 30-40 FPS for lightweight models like MobileNet v2 and 15-20 FPS for heavier models like ResNet-50, depending on input resolution and quantization. Using TensorRT optimization and INT8 precision, you can further improve throughput by 2-3x compared to baseline FP32 inference.

Can I run ROS (Robot Operating System) on the JetBot?

Yes, ROS Melodic and ROS 2 Foxy are fully compatible with JetPack 4.6+. The community has developed extensive ROS packages for navigation, SLAM, and autonomous control. We recommend installing ROS in a separate Docker container to avoid conflicts with existing CUDA libraries.

What sensors can I add to expand the JetBot's capabilities?

The 40-pin GPIO header supports LIDAR modules (via USB or I2C), 9-DOF IMU sensors, ultrasonic range finders, and thermal cameras. Popular additions include the Livox Mid-360 LIDAR for SLAM applications and the Adafruit BNO055 IMU for improved odometry accuracy in GPS-denied environments.

How do I train and deploy custom object detection models?

Use NVIDIA's Transfer Learning Toolkit or TensorFlow/PyTorch on your host machine to fine-tune pre-trained models on your dataset. Export the model as ONNX or SavedModel format, then convert to TensorRT engine using trtexec tool. Deploy via Python using the tensorrt library for real-time inference with minimal latency overhead.

What is the battery life during active autonomous navigation?

The 5000mAh lithium-ion battery provides 2-3 hours of continuous operation at standard speeds (0.2 m/s). Battery life decreases with higher motor speeds, GPU load, and WiFi transmission. We recommend carrying a second battery for extended field testing sessions.

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 JetBot Smart Car kit Online in India

Purchase the JetBot Smart Car kit 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 JetBot Smart Car kit 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

JetBot Smart Car kit

SKU: TES-EV02165
Regular price Rs. 23,742.09 Rs. 19,000.08 20% off
Unit price
per
No Reviews
3-5 Working Days Dispatch
Availability
 
(0 in cart)
Shipping calculated at checkout.

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JetBot Smart Car kit

The JetBot Smart Car kit is a NVIDIA Jetson-based autonomous robotics platform designed for AI-powered mobile robotics development and real-time computer vision applications. Professional roboticists, AI researchers, and embedded systems engineers use this kit to prototype autonomous navigation systems, implement deep learning models for object detection, and develop collision avoidance algorithms. This kit solves the challenge of creating production-grade autonomous vehicles with minimal latency by leveraging GPU-accelerated computing on a compact mobile chassis.

Product Overview

The JetBot Smart Car kit integrates NVIDIA's Jetson Nano developer board with a two-wheel differential drive chassis, delivering 5 TFLOPS of AI performance in a mobile form factor. The system runs JetPack OS with CUDA, cuDNN, and TensorRT libraries pre-installed, enabling real-time inference of neural networks at 30+ FPS for camera-based perception tasks. The kit features a 5-megapixel CSI camera module for vision processing, dual DC motors with encoder feedback for precise odometry, and a rechargeable lithium-ion battery providing 2-3 hours of continuous operation at standard speeds.

What distinguishes the JetBot from competing platforms is its seamless integration of edge AI acceleration with robotics fundamentals. The Jetson Nano's Maxwell GPU architecture executes pre-trained models from NVIDIA's Model Zoo without cloud dependency, critical for real-time autonomous decision-making. The kit includes Jupyter Notebook-based tutorials for implementing object tracking, lane detection, and gesture recognition, making it ideal for both educational projects and commercial prototyping. The open-source software stack allows custom model training and deployment, supporting frameworks like TensorFlow, PyTorch, and ONNX.

Key Specifications

Specification Details
Product Type AI-Powered Autonomous Mobile Robot Kit
Brand NVIDIA
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
Processor NVIDIA Jetson Nano (quad-core ARM A57)
GPU NVIDIA Maxwell, 128 CUDA cores, 5 TFLOPS
RAM 4GB LPDDR4 64-bit
Storage 16GB microSD card (included)
Camera Module 5MP CSI Raspberry Pi camera with 160-degree FOV
Motor Type Dual brushed DC motors with quadrature encoders
Battery 3.7V 5000mAh lithium-ion, 2-3 hour runtime
Chassis Dimensions 160mm x 120mm x 80mm (L x W x H)
Maximum Speed 0.3 m/s (configurable via PWM)
Communication 802.11ac WiFi, Bluetooth 5.0, USB 3.0
Operating System JetPack 4.6+ (Ubuntu 18.04 based)

Key Features

  • GPU-Accelerated AI Inference: 5 TFLOPS Maxwell GPU enables real-time neural network execution for vision-based autonomous navigation without external servers
  • Pre-Installed AI Frameworks: CUDA, cuDNN, and TensorRT come pre-configured, reducing setup time for deploying custom trained models
  • Dual Motor Encoders: Quadrature encoders on both wheels provide precise odometry feedback for accurate localization and path planning algorithms
  • CSI Camera Interface: Native 5MP camera with 160-degree wide-angle lens captures high-quality video streams for real-time object detection and tracking
  • Jupyter Notebook Tutorials: Interactive Python-based learning environment with pre-built examples for gesture recognition, lane detection, and collision avoidance
  • Expandable I/O: 40-pin GPIO header, I2C, SPI, and UART interfaces for integrating LIDAR, IMU, and ultrasonic sensors
  • Long Battery Runtime: 5000mAh lithium-ion battery provides 2-3 hours of continuous operation for extended field testing
  • Open-Source Software: Full access to ROS (Robot Operating System) compatibility and community-contributed autonomous navigation stacks

Applications and Use Cases

  • Autonomous Delivery Robots: Deploy JetBot for last-mile delivery in controlled environments using real-time obstacle detection and path planning algorithms
  • Educational AI/Robotics Programs: Teach deep learning and embedded systems concepts through hands-on projects in university robotics labs and coding bootcamps
  • Warehouse Inventory Automation: Implement visual inspection and item tracking systems for automated warehouse management with edge AI processing
  • Precision Agriculture: Develop crop monitoring and weed detection robots using computer vision models trained on agricultural datasets
  • Security and Surveillance: Create autonomous patrol robots with real-time person detection and anomaly alerting for facility monitoring
  • Research Prototyping: Validate novel autonomous navigation algorithms and sensor fusion techniques before deploying to production-grade platforms

How to Use

Begin by assembling the chassis components and installing the Jetson Nano module onto the carrier board, ensuring proper thermal paste application on the GPU. Connect the dual DC motors to the motor driver pins, attach the CSI camera ribbon cable to the camera connector, and insert the pre-loaded 16GB microSD card. Power on the device via USB-C and connect to your WiFi network using the onboard 802.11ac module. Access the Jupyter Notebook interface via your browser at the device's IP address to run pre-configured tutorials for basic motor control and camera streaming.

For autonomous navigation projects, start with the object detection notebook to verify camera calibration and model inference latency. Train custom models using NVIDIA's Transfer Learning Toolkit on your host machine, then export them as TensorRT engines for optimized inference on the Jetson Nano. Implement control loops in Python using the motor encoder feedback to achieve closed-loop velocity control and odometry-based localization. Deploy advanced features like multi-object tracking and semantic segmentation once baseline performance is validated at 30+ FPS throughput.

Frequently Asked Questions

What is the maximum inference speed for real-time object detection?

The JetBot achieves 30-40 FPS for lightweight models like MobileNet v2 and 15-20 FPS for heavier models like ResNet-50, depending on input resolution and quantization. Using TensorRT optimization and INT8 precision, you can further improve throughput by 2-3x compared to baseline FP32 inference.

Can I run ROS (Robot Operating System) on the JetBot?

Yes, ROS Melodic and ROS 2 Foxy are fully compatible with JetPack 4.6+. The community has developed extensive ROS packages for navigation, SLAM, and autonomous control. We recommend installing ROS in a separate Docker container to avoid conflicts with existing CUDA libraries.

What sensors can I add to expand the JetBot's capabilities?

The 40-pin GPIO header supports LIDAR modules (via USB or I2C), 9-DOF IMU sensors, ultrasonic range finders, and thermal cameras. Popular additions include the Livox Mid-360 LIDAR for SLAM applications and the Adafruit BNO055 IMU for improved odometry accuracy in GPS-denied environments.

How do I train and deploy custom object detection models?

Use NVIDIA's Transfer Learning Toolkit or TensorFlow/PyTorch on your host machine to fine-tune pre-trained models on your dataset. Export the model as ONNX or SavedModel format, then convert to TensorRT engine using trtexec tool. Deploy via Python using the tensorrt library for real-time inference with minimal latency overhead.

What is the battery life during active autonomous navigation?

The 5000mAh lithium-ion battery provides 2-3 hours of continuous operation at standard speeds (0.2 m/s). Battery life decreases with higher motor speeds, GPU load, and WiFi transmission. We recommend carrying a second battery for extended field testing sessions.

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 JetBot Smart Car kit Online in India

Purchase the JetBot Smart Car kit 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 JetBot Smart Car kit with fast shipping and expert support.

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