Data Science 101
Here’s an overview of what you might expect to learn in a Data Science 101 .
1. What is Data Science?:
- Introduction to the field of data science and its significance in various industries.
- Understanding the role of data scientists and data analysts.
2. Data Types and Sources:
- Different types of data: structured, semi-structured, and unstructured data.
- Sources of data, including databases, spreadsheets, web data, and more.
3. Data Collection and Preparation:
- Techniques for collecting, cleaning, and preprocessing data.
- Dealing with missing data and outliers.
4. Data Exploration and Visualization:
- Exploratory Data Analysis (EDA) techniques to understand data distributions and relationships.
- Creating visualizations using tools like Matplotlib, Seaborn, or ggplot2.
5. Basic Statistics:
- Key statistical concepts such as mean, median, variance, standard deviation, and probability.
- Descriptive statistics and summary measures.
6. Data Analysis:
- Introduction to statistical analysis and hypothesis testing.
- Using statistical tests to make data-driven decisions.
7. Introduction to Machine Learning:
- Overview of machine learning concepts and terminology.
- Understanding supervised and unsupervised learning.
8. Machine Learning Algorithms:
- Basic understanding of common machine learning algorithms, such as linear regression, logistic regression, decision trees, and clustering.
9. Model Evaluation:
- How to assess the performance of machine learning models using metrics like accuracy, precision, recall, and F1-score.
10. Data Visualization Tools: – Introduction to data visualization tools like Tableau, Power BI, or open-source alternatives. – Creating charts, graphs, and dashboards.
11. Case Studies and Projects: – Hands-on projects and case studies to apply what you’ve learned. – Solving real-world data analysis problems.
12. Ethics and Data Privacy: – Considerations related to data ethics, privacy, and responsible data handling.
13. Tools and Programming Languages: – Introduction to programming languages commonly used in data science, such as Python and R. – Basics of using Jupyter Notebooks for data analysis.
14. Resources and Further Learning: – Guidance on additional resources, books, courses, and communities for further learning in data science.
Data Science Training Demo Day 1 Video:
Conclusion:
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