Educational Kits

Image Part Number Description / PDF Quantity Rfq
DFR0712

DFR0712

DFRobot

WIRELESS CHARGING MODULE 5V/2A

83

FIT0703

FIT0703

DFRobot

WIRELESS CHARGING MODULE 12V/3A

57

KIT0130

KIT0130

DFRobot

MICRO:BIT GO (ON-THE-GO STARTER

0

KIT0122

KIT0122

DFRobot

CURIENEURONS KIT - A NEURAL NETW

0

DFR0363

DFR0363

DFRobot

WIRELESS CHARGING MODULE 5V/300M

0

FIT0702

FIT0702

DFRobot

WIRELESS CHARGING MODULE 5V/5A

53

KIT0126

KIT0126

DFRobot

BONE CONDUCTION KIT

2

TOY0086

TOY0086

DFRobot

BOSON STARTER KIT FOR MICRO:BIT(

18

DFR0124

DFR0124

DFRobot

RGB LED MODULE (UNASSEMBLED KIT)

0

KIT0003

KIT0003

DFRobot

ECODUINO - AN AUTO PLANTING KIT

7

KIT0111

KIT0111

DFRobot

GRAVITY STARTER KIT FOR ARDUINO

13

KIT0018

KIT0018

DFRobot

GRAVITY STARTER KIT FOR ARDUINO

13

DFR0362

DFR0362

DFRobot

WIRELESS CHARGING MODULE 5V/1A

0

KIT0011

KIT0011

DFRobot

GRAVITY SENSOR KIT FOR ARDUINO

15

KIT0112

KIT0112

DFRobot

GRAVITY SENSOR KIT LATTEPANDA

2

TOY0060

TOY0060

DFRobot

LIGHT CHASER ROBOT

3

TOY0136

TOY0136

DFRobot

BOSON SCIENCE DESIGN KIT

0

DFR0359

DFR0359

DFRobot

ECLIP - PROGRAMMING FIXTURE

7

MBT0034

MBT0034

DFRobot

ENVIRONMENT SCIENCE EXPANSION BO

40

KIT0103

KIT0103

DFRobot

KIT FOR RASP PI WINDOWS IOT CORE

0

Educational Kits

1. Overview

Educational Kits refer to modular learning systems combining hardware and software components for STEM (Science, Technology, Engineering, Mathematics) education. These kits enable hands-on experimentation and prototyping, fostering technical literacy and innovation skills. Their importance in modern education stems from bridging theoretical knowledge with practical implementation, aligning with Industry 4.0 requirements for digital literacy and system integration.

2. Main Types & Functional Classification

TypeFunctional FeaturesApplication Examples
Electronic Prototyping KitsMicrocontrollers, sensors, breadboards, and circuit modulesArduino Starter Kits for robotics projects
Mechanical Engineering KitsGears, linkages, motor drivers, and structural componentsVEX Robotics Competition systems
Programming & AI KitsSingle-board computers, ML accelerators, vision modulesRaspberry Pi AI Vision Kits
STEM Foundation KitsBasic electronics, simple machines, and measurement toolsLEGO Education Simple & Powered Machines

3. Structure & Components

Typical educational kits contain: - Core Controller: Microcontroller (Arduino Uno, ESP32) or SBC (Raspberry Pi) - Peripheral Modules: Sensors (temperature, light, motion), actuators (motors, servos), and display units - Structural Elements: Laser-cut acrylic panels or 3D-printable components - Power System: Battery packs and voltage regulation circuits - Software Suite: IDEs (Arduino IDE, Scratch), firmware libraries, and simulation tools

4. Key Technical Specifications

ParameterDescriptionImportance
Component CompatibilityStandardized interfaces (I2C, SPI, GPIO)Enables system expansion and third-party integration
Processing PowerClock speed (16MHz-1.5GHz), RAM (256KB-4GB)Determines complexity of programmable tasks
Sensor ResolutionAnalog/digital precision (8-16bit)Affects measurement accuracy and control granularity
Power RequirementsOperating voltage (3.3V-12V)Dictates safety classification and peripheral selection
Educational StandardsNGSS (Next Gen Science Standards) alignmentEnsures curriculum relevance and pedagogical effectiveness

5. Application Fields

Primary sectors include: - K-12 Education: Classroom STEM labs with LEGO Mindstorms or Codey Rocky - Higher Education: Engineering prototyping using NI myRIO devices - Maker Spaces: Community workshops with open-source hardware platforms - Corporate Training: Industrial automation simulation with Festo Didactic systems

6. Leading Manufacturers & Products

ManufacturerFlagship ProductKey Features
ArduinoArduino Education Starter KitModular electronics with Tinkercad integration
Raspberry Pi FoundationRaspberry Pi 400 KitKeyboard computer with Python programming environment
MakeblockMakeblock Ultimate 2.010-in-1 robotics platform with mechanical/electronic components
ParallaxParallax ActivityBotPropeller multicore processor with robotics curriculum

7. Selection Recommendations

Key considerations: - Educational Objectives: Match complexity to learning outcomes (basic electronics vs. AI) - User Proficiency: Choose age-appropriate abstraction levels (Scratch vs. C++) - Budget Constraints: Balance performance with cost (entry-level vs. professional kits) - Scalability: Verify expansion options through available shields/accessory modules - Support Ecosystem: Evaluate documentation quality and community resources

Case Study: A university engineering department adopted the Texas Instruments MSP432 LaunchPad for embedded systems courses due to its industry-grade ARM Cortex-M4F processor and integration with MATLAB/Simulink for control system modeling.

Industry Trends Analysis

Emerging developments: - AI Integration: Embedded machine learning modules (Google Coral TPU integration) - Web-Based Platforms: Browser-accessible IDEs with real-time collaboration - Cross-Disciplinary Focus: Biotechnology kits merging electronics with living systems - Sustainability Emphasis: Recyclable components and energy efficiency monitoring - Cloud Connectivity: IoT-enabled kits with AWS/GCP integration for remote data analysis

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