Graph databases come with the power of discovering relations hard to find. Here, Neo4j is a cool graph database. As … More
Category: Machine Learning
Tech Stack Recommendations for Face Recognition
Determining the architecture is a significant stage for production driven purposes. Herein, a facial recognition pipeline comes with wide product … More
Deep Face Recognition with Redis
Key value databases come with a high speed and performance where we mostly cannot reach in relational databases. Herein similar … More
Deep Face Recognition with Relational Databases and SQL
A face recognition task requires to store multidimensional array and make calculations over it. This task is not mostly matching … More
Deep Face Recognition with Hadoop and Spark
Large scale face recognition is always a challenging task. Nowadays, hadoop based approaches become a de-facto standard for solutions. This … More
Deep Face Recognition with Cassandra
We mostly need the power of map reduce of no sql databases when the data becomes really big and massive. … More
Deep Face Recognition with mongoDB
Face recognition is mainly based on similarity search on facial embeddings. Researches mostly focus on storing vector representations on memory. … More
Feature Importance in Logistic Regression for Machine Learning Interpretability
Feature importance is a common way to make interpretable machine learning models and also explain existing models. That enables to … More
Deep Face Recognition with ArcFace in Keras and Python
ArcFace is developed by the researchers of Imperial College London. It is a module of InsightFace face analysis toolbox. The … More
A Gentle Introduction to ROC Curve and AUC in Machine Learning
Model evaluation is very important stage of a machine learning pipeline to understand the robustness. Herein, ROC Curves and AUC … More
