Data science is a multidisciplinary field that combines statistical methods, computational techniques, and domain knowledge to extract valuable insights from data. As organizations increasingly rely on data to inform decision making, understanding the fundamentals of data science has become essential for professionals across industries. This training program provides an overview of the core concepts, tools, and processes in data science. It introduces participants to the data science workflow, including data collection, cleaning, analysis, and visualization, to foster a foundational understanding of the field.
Analyze the principles and applications of data science.
Recognize the steps involved in the data science workflow.
Identify key tools and techniques used in data analysis.
Examine the role of data visualization in presenting insights.
Explore the ethical considerations in data science practices.
Professionals interested in leveraging data for decision making.
IT and analytics professionals exploring the field of data science.
Definition and scope of data science.
Differences between data science, analytics, and AI.
Area of applications of data science across industries.
Key skills and roles in data science.
The importance of data in modern decision-making.
Types of data including structured and unstructured.
Sources of data and methods of collection.
Techniques for cleaning and preprocessing data.
How to handle missing, inconsistent, or noisy data.
Data storage and management principles.
Objectives and importance of EDA in data science.
Descriptive statistics and summary measures.
Key steps used for identifying patterns, trends, and relationships in data.
Tools for visualizing and summarizing data.
Common challenges in EDA and how to address them.
Overview of programming languages used in data science.
Introduction to libraries for data manipulation and analysis.
Basics of machine learning algorithms and models.
The role of statistical techniques in data science.
Overview on cloud based platforms for data science projects.
Visualization principles supporting clarity, accuracy, and interpretability.
Structured use of visualization tools and dashboard platforms.
Data storytelling frameworks for insight communication to stakeholders.
Institutional standards for presenting analytical findings.
Ethical boundaries and integrity controls in data representation.