AI/ML Research

10 Common Misconceptions About Large Language Models

Large language models (LLMs) have rapidly integrated into our daily workflows.

5 months ago

Multi-Agent Systems: The Next Frontier in AI-Driven Cyber Defense

The increasing sophistication of cyber threats calls for a systemic change in the way we defend ourselves against them.

5 months ago

7 Scikit-learn Tricks for Optimized Cross-Validation

Validating machine learning models requires careful testing on unseen data to ensure robust, unbiased estimates of their performance.

5 months ago

ROC AUC vs Precision-Recall for Imbalanced Data

When building machine learning models to classify imbalanced data — i.

5 months ago

A Gentle Introduction to Batch Normalization

Deep neural networks have drastically evolved over the years, overcoming common challenges that arise when training these complex models.

5 months ago

Small Language Models are the Future of Agentic AI

This article provides a summary of and commentary on the recent paper

6 months ago

10 Python One-Liners Every Machine Learning Practitioner Should Know

Developing machine learning systems entails a well-established lifecycle, consisting of a series of stages from data preparation and preprocessing to…

6 months ago

3 Ways to Speed Up and Improve Your XGBoost Models

Extreme gradient boosting ( XGBoost ) is one of the most prominent machine learning techniques used not only for experimentation…

6 months ago

5 Key Ways LLMs Can Supercharge Your Machine Learning Workflow

Experimenting, fine-tuning, scaling, and more are key aspects that machine learning development workflows thrive on.

6 months ago

How to Decide Between Random Forests and Gradient Boosting

When working with machine learning on structured data, two algorithms often rise to the top of the shortlist: random forests…

6 months ago