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emmanuel_tayie1

Emmanuel T

@emmanuel_tayie1
Nigéria
Inglês
Algumas informações são exibidas no idioma inglês.
Sobre mim
Human enterprise-Grade Data Processing for AI and Automation We deliver high-quality, time-sensitive image and video annotation services designed to accelerate your artificial intelligence initiatives. Leveraging a highly scalable, human-in-the-loop workforce, we efficiently process massive, enterprise-level datasets without compromising on accuracy. Backed by four years of specialized industry experience—including successful collaborations with leading firms like AI Workforce—we provide expert data labeling tailored to cutting-edge sectors. ... Saiba mais

Habilidades

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emmanuel_tayie1
Emmanuel T
offline • 
Tempo médio de resposta: 2 horas

Conheça meus serviços

Anotação e marcação de dados
I will do data annotation, image, video, map and label data polygon and object tracking
Anotação e marcação de dados
I will annotate by cvat, roboflow, labelbox, image annotation, polygon and bounding box

Portfólio

Experiência profissional

Atlas_Group

video labeler

Atlas Group • Meio período

Jan 2026 - Present6 mos

High-Precision Video Annotation: Specialized in labeling complex video datasets by identifying and tagging specific human and object actions frame-by-frame. Strict Guideline Adherence: Consistently followed detailed client rules and edge-case workflows to ensure 100% data consistency and eliminate annotation bias. Quality-First Approach: Prioritized absolute correctness over speed, maintaining a near-zero error rate to deliver pristine datasets ready for machine learning and deep learning algorithms. Platform Expertise: Efficiently utilized data labeling platforms (such as Atlas Capture) to handle time-sensitive, large-scale enterprise video projects.

AI_Medical Technology

Data annotation

AI Medical Technology • Meio período

Apr 2024 - Sep 20251 yr 5 mos

High-Precision Medical Annotation: Expertly annotated complex medical datasets—including X-rays, CT scans, MRIs, and ultrasound images—to train advanced computer vision and deep learning models. Strict Guideline Adherence: Consistently followed rigorous clinical protocols, anatomical guidelines, and edge-case workflows to ensure 100% accuracy and eliminate annotation bias. Advanced Segmentation Techniques: Specialized in semantic and instance segmentation to precisely outline tumors, lesions, organs, and tissue boundaries for diagnostic automation. Quality-First Approach: Prioritized absolute correctness and patient data integrity over speed, maintaining a near-zero error rate to deliver pristine datasets ready for healthcare AI initiatives.