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Регистрация: 11.02.2026

Lalu Rizal Pratama

Специализация: Junior Computer Vision
— Data scientist and junior AI engineer with strong hands-on experience in computer vision, face recognition systems, deep learning, and production-grade AI pipelines. — Currently working on client-facing AI products with a focus on practical, real-world deployments. — Hands-on working experience with Python, TensorFlow, PyTorch, FastAPI, and GPU-based systems, with a strong emphasis on applied learning and iterative development. — Actively preparing for advanced roles in AI engineering and research-oriented industry positions. — Experience building AI systems intended for commercial clients. — Actively preparing for leadership and advanced engineering roles in AI. — Open to international and remote opportunities. — Naturally curious and enjoy learning and exploring new things, not limited to technology.
— Data scientist and junior AI engineer with strong hands-on experience in computer vision, face recognition systems, deep learning, and production-grade AI pipelines. — Currently working on client-facing AI products with a focus on practical, real-world deployments. — Hands-on working experience with Python, TensorFlow, PyTorch, FastAPI, and GPU-based systems, with a strong emphasis on applied learning and iterative development. — Actively preparing for advanced roles in AI engineering and research-oriented industry positions. — Experience building AI systems intended for commercial clients. — Actively preparing for leadership and advanced engineering roles in AI. — Open to international and remote opportunities. — Naturally curious and enjoy learning and exploring new things, not limited to technology.

Скиллы

Python, TensorFlow, PyTorch, Keras
Computer Vision
Video Analytics
Face Recognition Systems (ArcFace, InsightFace)
API Development for AI Systems (FastAPI)
Docker & Production Deployment
GPU / CUDA-based Inference Pipelines
Custom Object Detection Model Development (YOLO variants, CVAT)
Linux Environment & Basic Server Administration
Video Analytics
TensorFlow
PyTorch

Опыт работы

AI Engineer
с 04.2024 - По настоящий момент |PT Data Nusantara Adhikarya
Face Detection System, Face Recognition System, Vehicle Detection System, License Plate Recognition System, People Counting System, Vehicle Counting System, Cable–Label Detection System (Current Project).
AI / Computer Vision Engineer responsible for model integration, pipeline development, and system-level implementation.
AI ENGINEER
NDA
FastAPI, ArcFace-based, YOLO, OCR, FastAPI, PostgreSQL
Projects Face Detection System: ● Developed real-time face detection pipelines for video streams and image-based inputs. ● Integrated detection into FastAPI services for downstream analytics and recognition tasks. ● Optimized performance for GPU-based inference in Dockerized environments. Face Recognition System: ● Designed and implemented an end-to-end face recognition system using ArcFace-based embeddings. ● Integrated detection, tracking, and identity matching for real-world surveillance and access scenarios. ● Focused on robustness, scalability, and real-time performance. Vehicle Detection System: ● Built vehicle detection pipelines using YOLO-based models with GPU acceleration. ● Processed video streams and recorded footage with multithreaded frame handling. ● Prepared structured outputs for analytics and storage. License Plate Recognition System: ● Implemented license plate detection and OCR-based recognition pipelines. ● Applied validation logic to ensure plates are detected before storing vehicle data. ● Sent structured inference results to a backend service via FastAPI; downstream components handled persistence (CSV and PostgreSQL) and further processing. People Counting System: ● Developed people detection and tracking pipelines for estimating pedestrian volume and crowd density. ● Applied temporal aggregation to count people flow in urban environments. ● Used outputs to support traffic, footfall, and public space analysis use cases (e.g., streets in Jakarta). Vehicle Counting System: ● Developed vehicle detection and tracking pipelines for estimating traffic volume on urban streets. ● Applied tracking, filtering, and temporal aggregation for vehicle counting and flow analysis. ● Improved inference stability for long-running video streams used in continuous traffic monitoring (Jakarta streets). Cable-Label Detection System (Current Project): ● Currently developing a specialized object detection model for cable and label identification. ● Focused on industrial and inspection-oriented use cases. ● Working on dataset preparation, annotation strategy, and model optimization.

Образование

Data Science and AI Applications (Бакалавр)
2018 - 2023
University of Gunadarma

Языки

ИндонезийскийРоднойАнглийскийВыше среднегоНемецкийСредний