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Feature Engineering in Machine Learning

Pickl AI

EDA, imputation, encoding, scaling, extraction, outlier handling, and cross-validation ensure robust models. Feature Engineering enhances model performance, and interpretability, mitigates overfitting, accelerates training, improves data quality, and aids deployment. What is Feature Engineering?

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Artificial Intelligence Using Python: A Comprehensive Guide

Pickl AI

This section explores the essential steps in preparing data for AI applications, emphasising data quality’s active role in achieving successful AI models. Importance of Data in AI Quality data is the lifeblood of AI models, directly influencing their performance and reliability.

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AI in Time Series Forecasting

Pickl AI

This step includes: Identifying Data Sources: Determine where data will be sourced from (e.g., Ensuring Time Consistency: Ensure that the data is organized chronologically, as time order is crucial for time series analysis. Making Data Stationary: Many forecasting models assume stationarity. databases, APIs, CSV files).

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Basic Data Science Terms Every Data Analyst Should Know

Pickl AI

Key Components of Data Science Data Science consists of several key components that work together to extract meaningful insights from data: Data Collection: This involves gathering relevant data from various sources, such as databases, APIs, and web scraping.

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Large Language Models: A Complete Guide

Heartbeat

It is therefore important to carefully plan and execute data preparation tasks to ensure the best possible performance of the machine learning model. It is also essential to evaluate the quality of the dataset by conducting exploratory data analysis (EDA), which involves analyzing the dataset’s distribution, frequency, and diversity of text.