Free Download Data Cleaning Frameworks And Techniques – Data Professionals
Published 3/2024
MP4 | Video: h264, 1920×1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 131.87 MB | Duration: 0h 30m
Mastering Precision and Reliability in Data: Advanced Data Cleaning Frameworks and Techniques for Data Professionals
What you’ll learn
Learn how to preprocess and clean datasets effectively before analysis.
Acquire skills to handle missing data, outliers, and inconsistencies.
Understand best practices for cleaning and preparing data for storage and analysis.
Explore tools and frameworks for building scalable and automated data cleaning pipelines.
Gain skills to ensure data quality and reliability for making informed business decisions.
Learn techniques to validate and clean data according to business rules.
Acquire knowledge on preparing datasets for machine learning models.
Understand the impact of data quality on model performance.
Learn strategies to clean and maintain data integrity within databases.
Understand how to handle anomalies and inconsistencies in stored data.
Acquire skills for cleaning and preparing datasets for research purposes.
Learn techniques to enhance the reliability of research findings.
Gain practical skills in data cleaning for personal or small-scale projects.
Understand common challenges and solutions in real-world data scenarios.
Develop an awareness of the impact of data quality on organizational decision-making.
Requirements
Basic Data Knowledge
Description
Welcome to an immersive learning experience designed to elevate your skills in data cleaning, precision, and reliability. In the rapidly evolving landscape of data, professionals like you play a pivotal role in ensuring the integrity and quality of information.Key Highlights:Foundational Techniques:Dive deep into essential data cleaning techniques, from handling missing values to addressing outliers and inconsistencies.Master the art of standardization and normalization to achieve uniformity and reliability in your datasets.Real-world Applications:Tackle complex, real-world datasets to hone your skills and develop a practical understanding of data cleaning challenges.Engage in hands-on projects and case studies that simulate scenarios encountered in professional data environments.Data Quality Assurance:Develop a robust understanding of data quality principles and validation techniques.Implement rules and strategies to assure the reliability and accuracy of your datasets.Advanced Frameworks:Explore cutting-edge data cleaning frameworks without direct tool mentions, emphasizing conceptual understanding.Understand the principles behind automated data cleaning pipelines and advanced data preparation processes.Industry Insights:Gain insights into industry best practices for data cleaning and quality assurance.Learn from real-world examples to understand the impact of clean data on organizational decision-making and analytics.Collaborative Learning:Engage with a community of fellow data professionals to share experiences and insights.Foster collaborative skills essential for efficient teamwork in data-focused environments.Who Should Enroll: Data professionals seeking to enhance their data cleaning skills, ensuring accuracy, reliability, and consistency in their datasets. Whether you’re a data scientist, analyst, engineer, or database administrator, this course is tailored to elevate your proficiency in preparing high-quality data for analysis and decision-making.Elevate your career by mastering advanced data cleaning frameworks and techniques. Enroll now to sharpen your expertise in ensuring data precision and reliability.
Overview
Section 1: Introduction
Lecture 1 Introduction to Data Cleaning and how significant it is
Lecture 2 What is Data Cleaning
Section 2: Key aspects of Data Cleaning
Lecture 3 Key aspects of Data Cleaning
Lecture 4 Data Profiling
Lecture 5 Methods of Data Cleaning
Lecture 6 Impact of Data Cleaning
Lecture 7 Where Data Cleaning is used
Section 3: Techniques of Data Cleaning
Lecture 8 Techniques of Data Cleaning
Lecture 9 Handling Missing Values
Lecture 10 Examples of Handling Missing Values
Data Analysts and Scientists: Individuals responsible for analyzing and extracting insights from data will benefit from learning data cleaning techniques,Data Engineers: Professionals involved in the design and construction of data architecture, pipelines, and systems,Database Administrators: Those responsible for managing databases can learn how to identify and address issues related to data quality, ensuring the integrity,Data Quality Managers: Professionals focused on maintaining and improving overall data quality within an organization,Data Governance Professionals: Those involved in implementing and enforcing data governance policies,Data Stewards: Individuals responsible for managing and curating specific datasets within an organization,Machine Learning and AI Engineers: Practitioners working on machine learning and artificial intelligence projects,Business Analysts: Professionals analyzing business data to make strategic decisions will find this course valuable for improving the accuracy,Researchers and Academics: Researchers and academics working with datasets in various fields can enhance the quality of their research
Homepage
www.udemy.com/course/data-cleaning-frameworks-and-techniques-data-professionals/
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