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ML Fundamentals
Neural networks, backpropagation, gradient descent — the maths behind AI
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Showing 623 reads from curated sources

Medium · Data Science
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Building a Rain Prediction Model for Abuja: From Raw Weather Data to a Production XGBoost…
A guide to predicting daily rain in Abuja using strict time-series feature engineering, walk-forward validation, and actionable evaluation… Continue reading on

Medium · Python
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Building Systems That Think Ahead
How I Started Treating Python Like an Automation Engine Instead of a Programming Language. Continue reading on Top Python Libraries »
Medium · Machine Learning
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Sınıflandırma Modelleri
Sınıflandırma, bir girdinin önceden tanımlanmış kategorilerden hangisine ait olduğunu belirleme görevidir. Continue reading on Medium »

Medium · Machine Learning
📐 ML Fundamentals
⚡ AI Lesson
1w ago
The Only Docker Tutorial Data Scientists Actually Need
A practical guide for data scientists who want to finally understand Docker and deploy anywhere. Continue reading on Medium »

Medium · Python
📐 ML Fundamentals
⚡ AI Lesson
1w ago
ATR-Based Major Levels and Volatility-Confirmed Breakouts
Breakout trading often looks simple on paper: price moves above resistance or below support, and the move is treated as significant. In… Continue reading on Med

Medium · Machine Learning
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Why I Chose AutoML Over Imagen for Precise Image Control
“A practical guide to building a custom image model on Google Cloud using AutoML Vision and Vertex AI.” Your data. Your labels. Your model. Continue reading on

Medium · Programming
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Abstract Base Classes and Properties in Python: A DRY Way to Enforce Validation
Python developers usually meet abstract base classes in a familiar role: define a contract, force subclasses to implement required methods… Continue reading on

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
CNNs Explained: How Image Classification Actually Works in Deep Learning
Understanding CNNs means understanding how models turn raw pixels into structured representations....

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Neural Network Optimization Challenges — Fixing Vanishing Gradients with Better Architecture Design
Vanishing gradients are one of the main reasons deep neural networks fail. If your deeper model...

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
How Neural Networks Actually Learn: Backpropagation, Gradients, and Training Loop (Developer Guide)
Learn how neural networks train using forward propagation, loss functions, and backpropagation. This...
Dev.to AI
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Multilayer Perceptron (MLP): A Practical Way to Understand Neural Networks
Multilayer Perceptrons (MLPs) are the foundation of deep learning. This guide explains MLP intuition, real-world usage, and when you should (and shouldn’t) use

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Multilayer Perceptron (MLP) — How Neural Networks Learn Representations, Probabilities, and Gradients
Multilayer Perceptron (MLP) is the simplest neural network worth learning deeply. It looks basic,...

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Regularization in Machine Learning — How to Actually Prevent Overfitting (L1, L2, Dropout)
What is regularization in machine learning, and how do you actually prevent overfitting in practice?...

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Optimization in Machine Learning — How Models Learn Parameters and What Actually Improves Training
Learn how optimization in machine learning works, from parameter learning and loss minimization to...

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Optimization vs Regularization — The Real Reason Your Model Overfits (and How to Fix It)
Most deep learning problems are not architecture problems. They are training...

Dev.to · Samuel Akopyan
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Logistic Regression on MNIST (0 vs 1) in PHP: A Simple Example
Want to get a real feel for machine learning in practice? Here’s a simple but powerful exercise:...

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Theoretical Foundations of Deep Learning (Why Neural Networks Actually Work)
Deep learning and neural networks work because of entropy, KL divergence, probability distributions,...

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Fundamentals of Neural Networks: How Simple Math Scales into Modern AI
Neural networks power modern AI—from image recognition to large language models. This guide breaks...

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Linear Models in Machine Learning: Why They Still Matter (Regression, Classification, Logistic Regression)
Linear models in machine learning are the foundation of regression, classification, and logistic...

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Model Complexity and Generalization: How to Actually Fix Overfitting
If you've ever trained a model that looked perfect during training but failed in production, you've...

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Machine Learning Tasks and Evaluation: How to Choose the Right Metrics and Avoid Common Pitfalls
Understand how different machine learning tasks require different evaluation strategies. Learn how to...

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
What Machine Learning Really Means: From Rules to Data-Driven Systems
Machine learning is the foundation of modern AI systems. Learn how models improve from data, optimize...

Dev.to · ROBERTO ALEMAN
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Why are efficient algorithms the true energy of the future?
In the age of modern computing, we have fallen into a dangerous trap of abundance. Hardware power has...

Dev.to · chunxiaoxx
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Integrating Model Context Protocol (MCP) into Nautilus
The Future of MCP on Nautilus The Model Context Protocol (MCP) is rapidly becoming the...

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Traditional Machine Learning in Practice: Learning Paradigms, Algorithm Families, and Evaluation Perspectives
Traditional machine learning is more than just algorithms. This guide explains how learning...

Dev.to · Rajan shukla
📐 ML Fundamentals
⚡ AI Lesson
1w ago
I built a free LeetCode visualizer. Here's what I learned making 207 problems animate line by line.
I spent months grinding LeetCode. I could read solutions. I could even explain them out loud. But the...

Dev.to · FORUM WEB
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Tavsiye Iste Uygulamaları - Detaylı Teknik Analiz Rehberi 2026
Tavsiye İste Uygulamaları: Tarihçe ve Gelişim Tavsiye iste uygulamaları, kullanıcıların ihtiyaç ve...

Dev.to · Pulsebit News Sentiment API
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Your Pipeline Is 28.6h Behind: Catching Machine Learning Sentiment Leads with Pulsebit
Your pipeline has just missed a crucial 24h momentum spike of -0.175 in the sentiment around machine...

Dev.to · Paperium
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Improving Variational Auto-Encoders using Householder Flow

Dev.to · shangkyu shin
📐 ML Fundamentals
⚡ AI Lesson
1w ago
Neural Network Learning Systems and Deep Learning: From Perceptrons to Representation Learning
Deep learning did not appear out of nowhere. It grew from a simple question: can a machine learn...
Dev.to AI
📐 ML Fundamentals
⚡ AI Lesson
2w ago
Weights & Biases — Deep Dive
Daily deep dive into Weights & Biases — covering W&B, ML experiment tracking, Model registry, Prompts, Weave. Latest News & Announcements CoreWeave
Dev.to AI
📐 ML Fundamentals
⚡ AI Lesson
2w ago
8 Things to Check Before You Hire MERN Stack Developers
Projects get over-budgeted, late and code that requires rewriting in a year is developed with a portfolio examination and a bid evaluation. The data that in fac
Dev.to AI
📐 ML Fundamentals
⚡ AI Lesson
2w ago
Word Embeddings — Deep Dive + Problem: Information Gain
A daily deep dive into ml topics, coding problems, and platform features from PixelBank . Topic Deep Dive: Word Embeddings From the NLP Fundamentals chapter Int
AWS Machine Learning
📐 ML Fundamentals
⚡ AI Lesson
2w ago
Reinforcement fine-tuning on Amazon Bedrock: Best practices
In this post, we explore where RFT is most effective, using the GSM8K mathematical reasoning dataset as a concrete example. We then walk through best practices

KDnuggets
📐 ML Fundamentals
⚡ AI Lesson
2w ago
5 Useful Python Scripts to Automate Boring Excel Tasks
Merging spreadsheets, cleaning exports, and splitting reports are necessary-but-boring tasks. These Python scripts handle the repetitive parts so you can focus
Towards AI
📐 ML Fundamentals
⚡ AI Lesson
2w ago
Building ML in the Dark: A Survival Guide for the Solo Practitioner
Author(s): Yuval Mehta Originally published on Towards AI. Photo by Boitumelo on Unsplash No GPU cluster. No data team. No ML platform. Here’s what actually shi
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
⚡ AI Lesson
2w ago
EAGLE: Edge-Aware Graph Learning for Proactive Delivery Delay Prediction in Smart Logistics Networks
arXiv:2604.05254v1 Announce Type: new Abstract: Modern logistics networks generate rich operational data streams at every warehouse node and transportation lane
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
⚡ AI Lesson
2w ago
TFRBench: A Reasoning Benchmark for Evaluating Forecasting Systems
arXiv:2604.05364v1 Announce Type: new Abstract: We introduce TFRBench, the first benchmark designed to evaluate the reasoning capabilities of forecasting system
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
⚡ AI Lesson
2w ago
Prune-Quantize-Distill: An Ordered Pipeline for Efficient Neural Network Compression
arXiv:2604.04988v1 Announce Type: cross Abstract: Modern deployment often requires trading accuracy for efficiency under tight CPU and memory constraints, yet c
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
⚡ AI Lesson
2w ago
PRIME: Prototype-Driven Multimodal Pretraining for Cancer Prognosis with Missing Modalities
arXiv:2604.04999v1 Announce Type: cross Abstract: Multimodal self-supervised pretraining offers a promising route to cancer prognosis by integrating histopathol
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
⚡ AI Lesson
2w ago
Learning Stable Predictors from Weak Supervision under Distribution Shift
arXiv:2604.05002v1 Announce Type: cross Abstract: Learning from weak or proxy supervision is common when ground-truth labels are unavailable, yet robustness und
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
⚡ AI Lesson
2w ago
YMIR: A new Benchmark Dataset and Model for Arabic Yemeni Music Genre Classification Using Convolutional Neural Networks
arXiv:2604.05011v1 Announce Type: cross Abstract: Automatic music genre classification is a major task in music information retrieval; however, most current ben
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
⚡ AI Lesson
2w ago
PCA-Driven Adaptive Sensor Triage for Edge AI Inference
arXiv:2604.05045v1 Announce Type: cross Abstract: Multi-channel sensor networks in industrial IoT often exceed available bandwidth. We propose PCA-Triage, a str
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
⚡ AI Lesson
2w ago
Dynamic Linear Coregionalization for Realistic Synthetic Multivariate Time Series
arXiv:2604.05064v1 Announce Type: cross Abstract: Synthetic data is essential for training foundation models for time series (FMTS), but most generators assume
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
⚡ AI Lesson
2w ago
CRAB: Codebook Rebalancing for Bias Mitigation in Generative Recommendation
arXiv:2604.05113v1 Announce Type: cross Abstract: Generative recommendation (GeneRec) has introduced a new paradigm that represents items as discrete semantic t
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
⚡ AI Lesson
2w ago
What Makes a Good Response? An Empirical Analysis of Quality in Qualitative Interviews
arXiv:2604.05163v1 Announce Type: cross Abstract: Qualitative interviews provide essential insights into human experiences when they elicit high-quality respons
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
⚡ AI Lesson
2w ago
Modality-Aware and Anatomical Vector-Quantized Autoencoding for Multimodal Brain MRI
arXiv:2604.05171v1 Announce Type: cross Abstract: Learning a robust Variational Autoencoder (VAE) is a fundamental step for many deep learning applications in m
ArXiv cs.AI
📐 ML Fundamentals
📄 Paper
2w ago
Curvature-Aware Optimization for High-Accuracy Physics-Informed Neural Networks
arXiv:2604.05230v1 Announce Type: cross Abstract: Efficient and robust optimization is essential for neural networks, enabling scientific machine learning model
DeepCamp AI