
Machine Learning Engineer
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Evaluating your skill match against the job requirements…
Assessing your cultural and operational fit
Cimri
Data Scientist
June 29, 2026 – Present
vl2det
December 29, 2025 – December 29, 2025
Adaptation of VL2Lite framework to detection.
View Projectdeep-ml-challenge
July 20, 2024 – July 25, 2024
This repo contains my solutions for deep-ml code challenges.
View Projectvideo-object-remover
June 1, 2023 – June 22, 2023
A tool that remove objects from video with a simple painting using FGT and Siam Mask models.
View Projectpaillier-voting
November 25, 2022 – December 27, 2022
paillier-voting — GitHub repository
View Projecturban-sound-classifier
October 2, 2022 – October 5, 2022
Classification of sounds in cities using UrbanSounds8K dataset. This project is done while Deep Learning bootcamp in Global AI Hub program.
View Projectncbi-disease-classifier
August 29, 2022 – August 30, 2022
Disease word classifier model comparison with different types of neural networks (CNN, GRU, LSTM) using ncbi_disease dataset
View ProjectWorkspace-Determination-Scara-Robotic-Arm
May 15, 2022 – May 21, 2022
This project is made in ETE 3007 Fundamentals of Robotics Course for term project.
View ProjectCultural Fit Analysis
The candidate's projects are primarily personal and demonstrate a strong interest in data science and machine learning. The current role as a Data Scientist at Cimri aligns well with the target role. However, the experience level is listed as 0, which contradicts the current employment, suggesting a potential data discrepancy or very recent entry into the role. The diversity of projects (video processing, NLP, sound classification, robotics) indicates a broad technical curiosity, but the lack of team-based or collaborative project descriptions makes it difficult to assess cultural fit beyond individual initiative.
Soft Skills & Operational Fit
Insufficient data to assess soft skills and operational fit. The psychometric test score is 0, providing no insights.