15 の - 翻訳

For beginners in data science, it's essential to start with foundational concepts before diving into more advanced topics. Here are some key data science topics that are suitable for beginners:

Introduction to Data Science:

Overview of what data science is and its applications.
Understanding the data science lifecycle.
Statistics Basics:

Descriptive statistics (mean, median, mode).
Probability basics.
Introduction to Programming:

Basics of a programming language (e.g., Python, R).
Variables, data types, and basic operations.
Data Manipulation and Analysis:

Introduction to libraries like Pandas for data manipulation.
Basic data cleaning techniques.
Data Visualization:

Creating simple plots and charts.
Interpretation of visualizations.
Introduction to Machine Learning:

Understanding the difference between supervised and unsupervised learning.
Basic concepts like features, labels, and models.
Linear Algebra Basics:

Understanding vectors, matrices, and basic operations.
Introduction to SQL:

Basic database concepts.
Simple queries for data retrieval.
Exploratory Data Analysis (EDA):

Techniques for exploring and summarizing datasets.
Introduction to Big Data:

Basics of handling large datasets.
Introduction to Cloud Computing:

Overview of cloud platforms and their role in data science.
Data Ethics and Privacy:

Understanding ethical considerations in data handling.
Jupyter Notebooks:

Using Jupyter notebooks for interactive coding and documentation.
https://www.sevenmentor.com/da....ta-science-classes-i