Tag Archives: supervised learning

Data Science Coding | H2O in Python with Grid Search Cross Validation | IRIS Dataset

Data Science Coding | H2O in Python with Grid Search Cross Validation | IRIS Dataset H2O.ai is an open-source platform that provides a wide range of machine learning algorithms and tools for building, deploying, and managing models. It is written in Java and has APIs for several programming languages, including Python. Grid Search Cross Validation …

Data Science Coding | Keras and Tensorflow with Grid Search Cross Validation | IRIS Data | WACAMLDS

Keras and Tensorflow with Grid Search Cross Validation | IRIS Data Keras and TensorFlow are two powerful libraries that are used for building and training machine learning models. Keras is a high-level neural networks API, written in Python, that runs on top of TensorFlow. It is designed to make it easy to build and train …

Data Science Coding | SKLEARN XGBoost Classifier with Grid Search Cross Validation | WACAMLDS

SKLEARN XGBoost Classifier with Grid Search Cross Validation   XGBoost is a powerful and efficient implementation of the Gradient Boosting algorithm that is used to classify items into different categories. It is an ensemble method that combines the predictions of multiple weak models, such as decision trees, to make a final prediction. The technique uses …

SKLEARN Gradient Boosting Classifier with Monte Carlo Cross Validation

SKLEARN Gradient Boosting Classifier with Monte Carlo Cross Validation   Gradient Boosting Classifier is a machine learning technique used to classify items into different categories. It is an ensemble method that combines the predictions of multiple weak models, such as decision trees, to make a final prediction. The technique uses an iterative process where each …

SKLEARN Gradient Boosting Classifier with Grid Search Cross Validation

SKLEARN Gradient Boosting Classifier with Grid Search Cross Validation   Gradient Boosting Classifier is a machine learning technique used to classify items into different categories. It is an ensemble method that combines the predictions of multiple weak models, such as decision trees, to make a final prediction. The technique uses an iterative process where each …

IRIS Flower Classification using SKLEARN RandomForest Classifier with Monte Carlo Cross Validation

  In this Applied Machine Learning & Data Science Recipe (Jupyter Notebook), the reader will find the practical use of applied machine learning and data science in Python programming: IRIS Flower Classification using SKLEARN RandomForest Classifier with Monte Carlo Cross Validation.   Personal Career & Learning Guide for Data Analyst, Data Engineer and Data Scientist …

IRIS Flower Classification using SKLEARN Random Forest Classifier with Grid Search Cross Validation

IRIS Flower Classification using SKLEARN Random Forest Classifier with Grid Search Cross Validation   The IRIS flower is a popular example in the field of machine learning. It is a type of flower that has different variations, such as the setosa, virginica, and versicolor. In this blog, we will be discussing how to classify the …

IRIS Flower Classification using SKLEARN DecisionTree Classifier with Monte Carlo Cross Validation

IRIS Flower Classification using SKLEARN DecisionTree Classifier with Monte Carlo Cross Validation   The IRIS flower is a popular example in the field of machine learning. It is a type of flower that has different variations, such as the setosa, virginica, and versicolor. In this blog, we will be discussing how to classify the IRIS …

IRIS Flower Classification using SKLEARN DecisionTree Classifier with Grid Search Cross Validation

IRIS Flower Classification using SKLEARN DecisionTree Classifier with Grid Search Cross Validation     The IRIS flower is a popular example in the field of machine learning. It is a type of flower that has different variations, such as the setosa, virginica, and versicolor. In this blog, we will be discussing how to classify the …

End-to-End Machine Learning: Boston House Price Prediction in R

End-to-End Machine Learning: Boston House Price Prediction in R Boston House Price Prediction is a machine learning task that involves predicting the median value of owner-occupied homes in Boston, Massachusetts, based on certain characteristics such as the number of rooms, the crime rate, and the distance to employment centers. Understanding the value of houses can …