Importance of Data Science Training
The capacity to evaluate data and draw actionable conclusions is essential in today’s data-driven environment. People who complete this training will be prepared to handle data challenges in the real world. Given data science’s critical role in decision-making processes, it opens doors to opportunities across a wide range of industries. Through proficiency in Python and sophisticated data science methodologies, individuals can significantly augment their professional opportunities and foster creativity and effectiveness in their establishments.
Data Science Training Course Outline
Total Duration: Variable
- Foundational Topics:
- Introduction to Data Science (4 Hours)
- Overview of Data Science
- Role of a Data Scientist
- Data Science Process
- Python Programming (4 Hours)
- Python Basics (Variables, Data Types, Control Structures)
- Functions and Modules
- Object-Oriented Programming
- Statistics for Data Science (4 Hours)
- Descriptive Statistics
- Inferential Statistics
- Probability Distributions
- Hypothesis Testing
- Data Wrangling (4 Hours)
- Data Acquisition
- Data Cleaning
- Data Transformation
- Data Storage
- Data Visualization (4 Hours)
- Introduction to Visualization Tools
- Exploratory Data Analysis
- Creating Informative Visuals
- Interactive Dashboards
- Introduction to Data Science (4 Hours)
- Advanced Topics:
- Machine Learning (4 Hours)
- Supervised Learning
- Unsupervised Learning
- Model Evaluation and Tuning
- Deep Learning (4 Hours)
- Neural Networks
- Convolutional Neural Networks
- Recurrent Neural Networks
- Big Data Technologies (4 Hours)
- Machine Learning (4 Hours)