Mohamed Rekik

Mohamed Rekik

Machine Learning Engineer
Germany
German, French, English, Arabic

About Me

Machine Learning Engineer based in Leipzig, Germany with experience in research work on time-series compression and projects in pose estimation and computer vision. Has worked with techniques and tools including compress…

Experience

TUNIDEX : Android App

Data Co-Lab
Feb 2020 - Present · 6 years 5 months

Scraping images from the net for 30 classes then cleaning and annotating them
Using Data Augmentation and Transfer Learning techniques to prevent overfitting and boost model's performance
Using the MobileNet architecture to perform real-time classification on mobile phones

Pose Estimation

Novel-Ti
Jul 2020 - Aug 2020 · 1 month

Building the OpenPose project on a Jetson Nano Card with Python and Tensorflow.
Fine-tuning the hyperparameters to meet some specific needs.
Writing an easy-to-follow guide for novices to reimplement my work.

TUNIDEX : Android App

Data Co-Lab
Feb 2020 - Feb 2020

Scraping images from the net for 30 classes then cleaning and annotating them.
Using Data Augmentation and Transfer Learning techniques to prevent overfitting and boost model's performance.
Using the MobileNet architecture to perform real time classification on mobile phones.

Pose Estimation

Novel-Ti
Jul 2020 - Aug 2020 · 1 month

Building the OpenPose project on a Jetson Nano Card with Python and Tensorflow
Fine-tuning the hyperparameters to meet some specific needs
Writing an easy-to-follow guide for novices to reimplement my work (check my GitHub account)

Time-Series Compression (Research Work)

HTWK of Leipzig
Mar 2021

Acquiring a basic knowledge on the Compressive Sensing field.
Analyzing and forecasting Time-Series data.
Trying several Artificial Intelligence techniques (AutoEncoders, RNNA, LSTM AutoEncoders...) to boost the efficiency of Compressive Sensing based systems.
Establishing a comparative study to illustrate the advantages and disadvantages of each approach.

Time-Series Compression (Research Work)

HTWK of Leipzig
Mar 2021

Acquiring a basic knowledge on the Compressive Sensing field
Analyzing and forecasting Time-Series data
Trying several Artificial Intelligence techniques (AutoEncoders, RNNA, LSTM AutoEncoders...) to boost the efficiency of Compressive Sensing based systems
Establishing a comparative study to illustrate the advantages and disadvantages of each approach

Skills

Computer Engineering Computer Programming Computer Science Computer Software Machine Learning Deep Learning Computer Vision Natural Language Processing Signal Processing Generative Adversarial Networks Problem-Solving Logical Thinking Thirst for learning Detail-Oriented Time Management Collaboration Tensorflow Image Processing in Python Reinforcement Learning Linux Unhatched 5G Smart Contracts Blockchain Basics Python Python Data Structures Programming for Everybody TensorFlow Linux Time Series Compressive Sensing ARIMA LSTM Autoencoders Extreme Learning Machine Embedded Systems Sensors OpenPose Jetson Nano Web Scraping Data Cleaning Data Augmentation Transfer Learning MobileNet TensorFlow Lite YOLO Image Processing Adaptive Thresholding CNN Histograms Blockchain
Report this Profile?