Machine Learning
Machine Learning is the field of study that gives computers the capability to learn without being explicitly programmed. ML is one of the most exciting technologies that one would have ever come across. As it is evident from the name, it gives the computer that makes it more similar to humans: The ability to learn. Machine learning is actively being used today, perhaps in many more places than one would expect.

Recent Articles on Machine Learning !
- Getting Started with Machine Learning
- An Introduction to Machine Learning
- What is Machine Learning ?
- Introduction to Data in Machine Learning
- Demystifying Machine Learning
- ML – Applications
- Best Python libraries for Machine Learning
- Artificial Intelligence | An Introduction
- Machine Learning and Artificial Intelligence
- Difference between Machine learning and Artificial Intelligence
- Agents in Artificial Intelligence
- 10 Basic Machine Learning Interview Questions
- Introduction to Data in Machine Learning
- Understanding Data Processing
- Python | Create Test DataSets using Sklearn
- Python | Generate test datasets for Machine learning
- Python | Data Preprocessing in Python
- Data Cleansing
- Feature Scaling – Part 1
- Feature Scaling – Part 2
- Python | Label Encoding of datasets
- Python | One Hot Encoding of datasets
- Handling Imbalanced Data with SMOTE and Near Miss Algorithm in Python
- Dummy variable trap in Regression Models
- Getting started with Classification
- Basic Concept of Classification
- Types of Regression Techniques
- Classification vs Regression
- ML | Types of Learning – Supervised Learning
- Multiclass classification using scikit-learn
- Linear Regression :
- Introduction to Linear Regression
- Gradient Descent in Linear Regression
- Mathematical explanation for Linear Regression working
- Normal Equation in Linear Regression
- Linear Regression (Python Implementation)
- Simple Linear-Regression using R
- Univariate Linear Regression in Python
- Multiple Linear Regression using Python
- Multiple Linear Regression using R
- Locally weighted Linear Regression
- Generalized Linear Models
- Python | Linear Regression using sklearn
- Linear Regression Using Tensorflow
- A Practical approach to Simple Linear Regression using R
- Linear Regression using PyTorch
- Pyspark | Linear regression using Apache MLlib
- ML | Boston Housing Kaggle Challenge with Linear Regression
- Python | Implementation of Polynomial Regression
- Softmax Regression using TensorFlow
- Logistic Regression :
- Understanding Logistic Regression
- Why Logistic Regression in Classification ?
- Logistic Regression using Python
- Cost function in Logistic Regression
- Logistic Regression using Tensorflow
- Naive Bayes Classifiers
- ML | Types of Learning – Unsupervised Learning
- Supervised and Unsupervised learning
- Clustering in Machine Learning
- Different Types of Clustering Algorithm
- K means Clustering – Introduction
- Elbow Method for optimal value of k in KMeans
- Random Initialization Trap in K-Means
- ML | K-means++ Algorithm
- Analysis of test data using K-Means Clustering in Python
- Mini Batch K-means clustering algorithm
- Mean-Shift Clustering
- DBSCAN – Density based clustering
- Implementing DBSCAN algorithm using Sklearn
- Fuzzy Clustering
- Spectral Clustering
- OPTICS Clustering
- OPTICS Clustering Implementing using Sklearn
- Hierarchical clustering (Agglomerative and Divisive clustering)
- Implementing Agglomerative Clustering using Sklearn
- Gaussian Mixture Model
- Introduction to Dimensionality Reduction
- Introduction to Kernel PCA
- Principal Component Analysis(PCA)
- Principal Component Analysis with Python
- Low-Rank Approximations
- Overview of Linear Discriminant Analysis (LDA)
- Mathematical Explanation of Linear Discriminant Analysis (LDA)
- Generalized Discriminant Analysis (GDA)
- Independent Component Analysis
- Feature Mapping
- Extra Tree Classifier for Feature Selection
- Chi-Square Test for Feature Selection – Mathematical Explanation
- ML | T-distributed Stochastic Neighbor Embedding (t-SNE) Algorithm
- Python | How and where to apply Feature Scaling?
- Parameters for Feature Selection
- Underfitting and Overfitting in Machine Learning
- Introduction to Natural Language Processing
- Text Preprocessing in Python | Set – 1
- Text Preprocessing in Python | Set 2
- Removing stop words with NLTK in Python
- Tokenize text using NLTK in python
- How tokenizing text, sentence, words works
- Introduction to Stemming
- Stemming words with NLTK
- Lemmatization with NLTK
- Lemmatization with TextBlob
- How to get synonyms/antonyms from NLTK WordNet in Python?
- Introduction to Artificial Neutral Networks | Set 1
- Introduction to Artificial Neural Network | Set 2
- Introduction to ANN (Artificial Neural Networks) | Set 3 (Hybrid Systems)
- Introduction to ANN | Set 4 (Network Architectures)
- Activation functions
- Implementing Artificial Neural Network training process in Python
- A single neuron neural network in Python
- Introduction to Deep Q-Learning
- Implementing Deep Q-Learning using Tensorflow
- Rainfall prediction using Linear regression
- Identifying handwritten digits using Logistic Regression in PyTorch
- Kaggle Breast Cancer Wisconsin Diagnosis using Logistic Regression
- Python | Implementation of Movie Recommender System
- Support Vector Machine to recognize facial features in C++
- Decision Trees – Fake (Counterfeit) Coin Puzzle (12 Coin Puzzle)
- Credit Card Fraud Detection
- NLP analysis of Restaurant reviews
- Applying Multinomial Naive Bayes to NLP Problems
- Image compression using K-means clustering
- Deep learning | Image Caption Generation using the Avengers EndGames Characters
- How Does Google Use Machine Learning?
- How Does NASA Use Machine Learning?
- 5 Mind-Blowing Ways Facebook Uses Machine Learning
- Targeted Advertising using Machine Learning
- How Machine Learning Is Used by Famous Companies?
- Pattern Recognition | Introduction
- Calculate Efficiency Of Binary Classifier
- Logistic Regression v/s Decision Tree Classification
- R vs Python in Datascience
- Explanation of Fundamental Functions involved in A3C algorithm
- Differential Privacy and Deep Learning
- Artificial intelligence vs Machine Learning vs Deep Learning
- Introduction to Multi-Task Learning(MTL) for Deep Learning
- Top 10 Algorithms every Machine Learning Engineer should know
- Azure Virtual Machine for Machine Learning
- 30 minutes to machine learning
- What is AutoML in Machine Learning?
- Confusion Matrix in Machine Learning
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