14-09-2024, 01:17 PM
[center]
Data Science For Beginners (2024)
Published 9/2024
Duration: 48m | Video: .MP4, 1920x1080 30 fps | Audio: AAC, 44.1 kHz, 2ch | Size: 1.99 GB
Genre: eLearning | Language: English[/center]
Master the Foundations of Data Science: From Theory to Real-World Applications
What you'll learn
Understand the Data Science Process
Develop Foundational Skills in Data Manipulation and Visualization
Apply Machine Learning Algorithms
Implement Data Science Solutions in Real-World Scenarios
Requirements
Basic Knowledge of Mathematics and Statistics, Familiarity with Programming , Access to a Computer with Internet,Curiosity and Eagerness to Learn
Description
This comprehensive data science course is designed to build a solid foundation in both the theoretical and practical aspects of data science. Data science continues to be one of the most in-demand fields across industries, but many learners face challenges in grasping the theoretical underpinnings that are crucial for long-term success. This course bridges that gap by covering everything from fundamental concepts to advanced machine learning techniques, ensuring you gain both the knowledge and practical skills necessary to excel in the field.
Starting with an introduction to data science and its processes, the course moves into key topics like statistics, probability theory, data wrangling, and data visualization. You will explore machine learning essentials such as supervised and unsupervised learning, key algorithms, model evaluation, and selection. For those looking to dive deeper, the course delves into advanced topics like neural networks, deep learning, feature engineering, model tuning, and ensemble methods.
In addition to the technical content, you'll work through case studies and real-world applications, culminating in a capstone project where you'll apply your knowledge to solve a real-world data science problem. This hands-on experience, coupled with the theoretical depth, prepares you for a successful career in data science.
What You Will Learn
Introduction to Data Science and its applications across industries.
Core data science processes, including data collection, cleaning, and exploratory data analysis.
Theoretical foundations of statistics and probability theory in data science.
Hands-on data manipulation with Python libraries like Pandas.
Data visualization techniques using Matplotlib and Seaborn.
Machine learning fundamentals, including supervised and unsupervised learning with real-world examples.
Key algorithms: Linear Regression, Decision Trees, K-Nearest Neighbors (KNN), and Support Vector Machines (SVM).
Advanced machine learning techniques: Neural Networks, Deep Learning, Feature Engineering, and Model Tuning.
Practical applications of data science, ethics, and building a real-world data science project.
Preparation for a capstone project and final exam, demonstrating your skills in a real-world context.
Requirements
A laptop or PC with internet access.
Basic understanding of mathematics and statistics.
Willingness to learn and apply data science concepts.
Who Should Take This Course
Aspiring data scientists who want to build a solid foundation.
Professionals looking to switch to a career in data science.
Data science enthusiasts aiming to enhance their theoretical knowledge and practical skills.
Beginners who want to learn data science from scratch and gain real-world experience through projects.
Who this course is for
Data Scientists,Data Analysts and Software Engineers,Industry Professionals,
Homepage
Screenshots
Data Science For Beginners (2024)
Published 9/2024
Duration: 48m | Video: .MP4, 1920x1080 30 fps | Audio: AAC, 44.1 kHz, 2ch | Size: 1.99 GB
Genre: eLearning | Language: English[/center]
Master the Foundations of Data Science: From Theory to Real-World Applications
What you'll learn
Understand the Data Science Process
Develop Foundational Skills in Data Manipulation and Visualization
Apply Machine Learning Algorithms
Implement Data Science Solutions in Real-World Scenarios
Requirements
Basic Knowledge of Mathematics and Statistics, Familiarity with Programming , Access to a Computer with Internet,Curiosity and Eagerness to Learn
Description
This comprehensive data science course is designed to build a solid foundation in both the theoretical and practical aspects of data science. Data science continues to be one of the most in-demand fields across industries, but many learners face challenges in grasping the theoretical underpinnings that are crucial for long-term success. This course bridges that gap by covering everything from fundamental concepts to advanced machine learning techniques, ensuring you gain both the knowledge and practical skills necessary to excel in the field.
Starting with an introduction to data science and its processes, the course moves into key topics like statistics, probability theory, data wrangling, and data visualization. You will explore machine learning essentials such as supervised and unsupervised learning, key algorithms, model evaluation, and selection. For those looking to dive deeper, the course delves into advanced topics like neural networks, deep learning, feature engineering, model tuning, and ensemble methods.
In addition to the technical content, you'll work through case studies and real-world applications, culminating in a capstone project where you'll apply your knowledge to solve a real-world data science problem. This hands-on experience, coupled with the theoretical depth, prepares you for a successful career in data science.
What You Will Learn
Introduction to Data Science and its applications across industries.
Core data science processes, including data collection, cleaning, and exploratory data analysis.
Theoretical foundations of statistics and probability theory in data science.
Hands-on data manipulation with Python libraries like Pandas.
Data visualization techniques using Matplotlib and Seaborn.
Machine learning fundamentals, including supervised and unsupervised learning with real-world examples.
Key algorithms: Linear Regression, Decision Trees, K-Nearest Neighbors (KNN), and Support Vector Machines (SVM).
Advanced machine learning techniques: Neural Networks, Deep Learning, Feature Engineering, and Model Tuning.
Practical applications of data science, ethics, and building a real-world data science project.
Preparation for a capstone project and final exam, demonstrating your skills in a real-world context.
Requirements
A laptop or PC with internet access.
Basic understanding of mathematics and statistics.
Willingness to learn and apply data science concepts.
Who Should Take This Course
Aspiring data scientists who want to build a solid foundation.
Professionals looking to switch to a career in data science.
Data science enthusiasts aiming to enhance their theoretical knowledge and practical skills.
Beginners who want to learn data science from scratch and gain real-world experience through projects.
Who this course is for
Data Scientists,Data Analysts and Software Engineers,Industry Professionals,
Homepage
Screenshots
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