Skip to content
View KOPE-SOLUTION's full-sized avatar

Block or report KOPE-SOLUTION

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Maximum 250 characters. Please don’t include any personal information such as legal names or email addresses. Markdown is supported. This note will only be visible to you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
KOPE-SOLUTION/README.md

Kittisak Hanheam banner

πŸ‘‹ Hello, I'm Kittisak Hanheam

πŸ’‘ AIoT Full Stack Developer | Embedded Systems | System Integration, Security & Deployment

I enjoy building systems that connect hardware, sensors, networks, software, and deployment workflows to solve practical problems in the real world.

My background comes from industrial electronics, embedded development, IoT systems, and hands-on R&D work.
Right now, I am exploring and strengthening my path in IIoT, Rust, PLC, SCADA, and Industrial Automation step by step.


πŸ§‘β€πŸ’» About Me

My technical journey started from working with electronics, field devices, and environmental monitoring systems.

Over time, I moved deeper into IoT development, embedded systems, and practical system integration, with experience in areas such as:

  • Sensor integration
  • Microcontrollers
  • Embedded programming
  • Network connectivity
  • IoT dashboards and monitoring systems
  • Device deployment and field integration
  • Security-aware system design for connected environments

Even though I did not graduate directly from an engineering faculty, I have built my skills through real projects, practical work, R&D support, and continuous learning.


πŸŽ“ Education

Master’s Degree β€” Digital Technology
Sukhothai Thammathirat Open University (2024 – Present)

Bachelor’s Degree β€” Computer Science
Sukhothai Thammathirat Open University (2018 – 2023)

High Vocational Certificate β€” Industrial Electronics
Surin Technical College (2014 – 2016)


πŸ’Ό Work Experience

IoT Programmer β€” Enserv Powor Co., Ltd.

(2024 – Present)

  • Smart Farm related development
  • Sensor systems and research support tools
  • Web UI and full-stack support
  • ESP32 based automation prototypes
  • Raspberry Pi based detection experiments

IoT Project Engineer β€” eLOC8 Co., Ltd.

(2024)

  • IoT solution development using ESP32 and Arduino
  • LoRaWAN integration
  • Real-time dashboard support
  • Monitoring and tracking solutions

IoT Developer β€” Security Pitch Co., Ltd.

(2021 – 2024)

  • Embedded and IoT related R&D support
  • CCTV and access control integration
  • PCB design and embedded programming
  • Raspberry Pi / Jetson Nano deployment support

Electronics Design β€” 2S Tech (Thailand)

(2019 – 2021)

  • PCB design
  • BOM preparation
  • Hardware testing and integration

Technician β€” I&E Consultant Thailand

(2016 – 2018)

  • Environmental monitoring support
  • Air quality station maintenance
  • Sensor and instrument service work

🧰 Technical Skills

Embedded & Hardware

ESP32 β€’ Arduino β€’ Raspberry Pi β€’ PIC

Programming

C β€’ C++ β€’ Python β€’ JavaScript β€’ HTML β€’ CSS

Protocols & Connectivity

MQTT β€’ Modbus RTU β€’ RS-232 β€’ RS-485 β€’ Wi-Fi β€’ BLE β€’ HTTP β€’ WebSocket β€’ LoRaWAN

Databases

MySQL β€’ PostgreSQL β€’ SQLite β€’ MongoDB

Tools & Platforms

ESP-IDF β€’ Arduino IDE β€’ Docker β€’ Linux β€’ VS Code β€’ GitHub β€’ OpenProject β€’ Figma

AI / Computer Vision

YOLO β€’ MobileNet SSD β€’ ONNX β€’ ROS2 (basic / practical exposure)


🌱 Currently Exploring

I am currently exploring and improving in these areas:

  • IIoT concepts and architectures
  • Rust for systems and backend development
  • PLC and SCADA for industrial automation workflows
  • Industrial Automation and smarter monitoring systems
  • Practical system integration, deployment, and security-oriented thinking

I prefer to describe these as active growth areas, not as expert-level skills yet.


πŸ€– Interest Areas

Topics I enjoy exploring:

  • Embedded systems
  • AIoT and connected devices
  • Industrial IoT (IIoT)
  • Industrial monitoring systems
  • Smart farm and environmental sensing
  • System integration and deployment
  • Industrial automation and SCADA environments
  • Edge AI experiments

πŸ”¬ Example System Direction

A simple architecture direction I am interested in:

flowchart LR
Sensors --> MCU
MCU --> Gateway
Gateway --> MQTT
MQTT --> Cloud
Cloud --> Dashboard
Dashboard --> User
Loading

πŸ§ͺ Personal Projects / Lab Interests

  • Sensor testing and prototyping
  • ESP32 based monitoring systems
  • Raspberry Pi experiments
  • Dashboard and data visualization
  • Learning-focused Rust and PLC projects
  • Industrial integration practice and deployment experiments

⭐ Featured Project Ideas

  • ESP32 Smart Farm Controller
  • IoT Sensor Monitoring Dashboard
  • Edge AI Person Detection Experiment
  • Rust MQTT Learning Project
  • LoRaWAN Environmental Monitoring
  • PLC / SCADA Learning Integration Lab

These represent the kinds of projects I am building or studying toward.


πŸ“Š GitHub Statistics

GitHub Stats

Top Languages


πŸ“ˆ Contribution Activity

GitHub Activity Graph


πŸ‘€ Visitor Counter


πŸ“« Contact

πŸ“§ kittisak.hanheam@gmail.com

⭐ I believe engineering grows through practice, curiosity, and continuous improvement.

Pinned Loading

  1. rust-iot-ai-backend-roadmap rust-iot-ai-backend-roadmap Public

    A structured 90-day Rust roadmap for backend, IoT, data processing, and AI event pipeline development.

    Rust

  2. Coral-TPU-Person-Detection Coral-TPU-Person-Detection Public

    This project demonstrates a robust Person Detection system utilizing the Coral USB Edge TPU on a Raspberry Pi.

    Python

  3. edge-ai-two-stage-pipeline edge-ai-two-stage-pipeline Public

    Edge AI two-stage detection pipeline (SSD + Coral EdgeTPU to YOLO Pose) optimized for Raspberry Pi deployments.

    Python

  4. hazard-ai-edge-experiment hazard-ai-edge-experiment Public

    End-to-end YOLO Pose deployment to TensorFlow Lite INT8 and Coral Edge TPU on Raspberry Pi.

    Python