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oaslananka/README.md

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I build systems that work where connectivity fails, compute is scarce, and latency is measured in milliseconds.
Full stack from PCB bring-up to cloud ingestion to production ML inference.

Domains: seismic & structural monitoring · edge computer vision · agentic LLM infrastructure


Stack

Languages Python TypeScript Go C / C++ Node.js Bash SQL

AI / ML / Vision PyTorch TensorFlow OpenCV YOLO v5–v11 ONNX TFLite HuggingFace LangChain

Embedded & Hardware ESP32 (ESP-IDF) STM32 + FreeRTOS Raspberry Pi KiCad ADXL355 / IMU SPI / I2C / UART

IoT & Edge MQTT over TLS RTSP AWS IoT Core OTA Offline-tolerant pipelines Edge GPU inference

Backend & Data FastAPI Django REST WebSockets PostgreSQL Redis RabbitMQ InfluxDB MongoDB

DevOps & Observability Docker Linux / systemd GitHub Actions GitLab CI Grafana Prometheus


Focus Areas

Edge Computer Vision Real-time detection and classification pipelines with sub-100ms latency budgets. RTSP hardening for industrial conditions — lighting variance, motion blur, sensor noise. Multi-sensor fusion across camera, weight, barcode, and conveyor data streams.

Seismic & Structural Health Monitoring Signal processing and ML-based earthquake event detection. High-precision MEMS accelerometer arrays with device-to-cloud telemetry designed for reliability under field conditions. Vision Transformer approaches for P-wave magnitude estimation.

Embedded & IoT ESP32/STM32 firmware with watchdogs, fault recovery, and OTA. PCB prototyping from schematic through bring-up (KiCad). MQTT pipelines with offline tolerance and store-and-forward patterns for intermittent connectivity.

Agentic LLM Systems A2A Protocol runtime for multi-agent mesh architectures. Multi-LLM API gateways. MCP server tooling. Instrumenting agentic frameworks for production reliability.


Activity



Education

M.Sc. Civil & Structural Engineering Ege University, İzmir — AI-Driven Embedded Systems for SHM & Predictive Maintenance
B.Sc. Civil & Structural Engineering Ege University, İzmir
Exchange METU, Ankara

LinkedIn

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  1. kicad-mcp-pro kicad-mcp-pro Public

    Model Context Protocol server for KiCad PCB and schematic automation, exposing project setup, editing, validation gates, DFM/SI/PI helpers, simulation support, and manufacturing exports.

    Python 119 13

  2. kicad-studio kicad-studio Public

    VS Code extension that turns KiCad projects into an interactive workspace with schematic/PCB viewers, DRC/ERC diagnostics, BOM/netlist inspection, manufacturing exports, AI tools, and MCP integration.

    TypeScript 27 4

  3. a2a-mesh a2a-mesh Public

    Security-hardened TypeScript runtime and registry for Google A2A Protocol multi-agent systems, with adapters, auth, streaming, Redis discovery, observability, MCP bridge, and test tooling.

    TypeScript 5 1

  4. Airsim101_Yolov10 Airsim101_Yolov10 Public

    AirSim autonomous vehicle simulation using Astar pathfinding, Pure Pursuit control, distance sensors, and YOLO object detection for obstacle-aware navigation experiments.

    Python 22 5

  5. CamStreamAndroidToPython CamStreamAndroidToPython Public

    Android CameraX RTSP streaming app plus Python OpenCV/YOLO processor for real-time object detection, live preview, and short GIF capture from mobile camera feeds.

    Kotlin 7 4

  6. EQ_Magnitude_Estimation_VIT EQ_Magnitude_Estimation_VIT Public

    Real-time earthquake P-wave detection and magnitude estimation pipeline using CNN and Vision Transformer models over multi-device 3-axis accelerometer data.

    Python 3 1