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May 13, 2024
Training, validation, and test datasets. What is the difference?

In the world of machine learning (ML) datasets play a fundamental role in building, training, and validating models. These data collections are not just assortments of information – they are carefully curated sets that fuel the algorithm learning process. Essentially, they serve as the foundation from which insights are derived, patterns are discerned, and predictions are generated.

April 19, 2024
What Is Training Data? Complete Guide

Training data is used in the field of Artificial Intelligence (AI) to advance machine learning (ML) models. This data is essential for ML algorithms to improve their learning abilities and drive progress in AI technology. Training Datasets in Machine Learning  The concept of AI training data Training data consists of input-output pairs, where the input, […]

April 17, 2024
Who is a Data Annotator and What is their Role in ML and AI?

In this guide, we will describe all the fundamentals of the data annotation process and the role of annotators: tasks, responsibilities, challenges they face, and skills required for this position.

April 15, 2024
Data Annotation Types: The Complete Guide

You open up a dataset for the machine learning model you’re building, and your heart sinks. The data is all over the place – inconsistent formats, missing labels, duplicate records. How will your algorithms make sense of this mess? Before you can train accurate models, you need clean, structured data. That’s where data annotation comes in.

April 11, 2024
Why Is Data Labeling Important? A Complete Guide

You’ve probably heard about data labeling and its importance if you’re at all involved in AI. But what is it, really? And why should you care? In this complete guide, we’ll break down exactly what data labeling is, why it’s so critical for AI and machine learning models, and how it actually works.

March 20, 2024
Data types in machine learning – what data can ML use

Machine Learning (ML) has revolutionized how we engage with technology. It serves as a crucial element in propelling innovation across industries. From tailored recommendations on streaming platforms to self-driving cars and advanced diagnostic tools in healthcare – ML’s influence is significant and widespread.

March 20, 2024
Labeled vs unlabeled data: everything you need to know

What is the difference between labeled and unlabeled data? Understanding the differences is a groundbreaking factor in the area of technological advancement. As AI survives on vast amounts of data, categorizing it helps transfer actionable intelligence for the model to learn and develop. In this article, we have dived deeper into the exploration of labeled vs unlabeled data covering everything you need to know to navigate the complexities of machine learning models and AI development.