What will you learn in Data Science Training Course
-
Master Python, R, and SQL for data analysis, machine learning, and statistical modeling
-
Explore data visualization tools like Tableau, Power BI, and Python libraries (Matplotlib, Seaborn)
-
Build machine learning and deep learning models using Scikit-learn, TensorFlow, and Keras
-
Handle big data using Hadoop, Spark, and real-time streaming tools like Kafka
-
Apply data science to real-world business problems with end-to-end projects
-
Prepare for top industry certifications and job roles in data science and AI
Program Overview
Module 1: Python for Data Science
⏳ 2 weeks
-
Topics: Python basics, data structures, libraries like NumPy and Pandas
-
Hands-on: Perform exploratory data analysis and build Python-based data scripts
Module 2: Statistics & Probability
⏳ 2 weeks
-
Topics: Descriptive stats, inferential stats, probability distributions
-
Hands-on: Analyze datasets using statistical tests and confidence intervals
Module 3: Machine Learning with Scikit-learn
⏳ 3 weeks
-
Topics: Supervised, unsupervised learning, model evaluation
-
Hands-on: Build classification, regression, and clustering models
Module 4: Deep Learning with TensorFlow & Keras
⏳ 3 weeks
-
Topics: Neural networks, CNNs, RNNs, activation functions
-
Hands-on: Train and evaluate deep learning models on image/text data
Module 5: R Programming for Data Science
⏳ 2 weeks
-
Topics: Data frames, dplyr, ggplot2, statistical modeling
-
Hands-on: Perform data analysis and visualization using R
Module 6: SQL for Data Science
⏳ 1.5 weeks
-
Topics: Joins, aggregations, subqueries, window functions
-
Hands-on: Query structured data for analysis and reporting
Module 7: Data Visualization with Tableau & Power BI
⏳ 2 weeks
-
Topics: Dashboards, filters, charts, calculated fields
-
Hands-on: Build interactive business dashboards from raw data
Module 8: Big Data & Spark for Data Science
⏳ 2 weeks
-
Topics: Hadoop ecosystem, Spark RDDs, Spark MLlib
-
Hands-on: Process and analyze large datasets using PySpark
Module 9: Capstone Project
⏳ 2 weeks
-
Topics: End-to-end data science case study involving real-world datasets
-
Hands-on: Apply data science lifecycle: data wrangling, modeling, evaluation, visualization
Get certificate
Job Outlook
-
Data Scientists are among the most sought-after professionals globally
-
Career roles include Data Scientist, Machine Learning Engineer, and AI Specialist
-
Salaries range from $100,000 to $160,000+ in top markets
-
Strong demand in sectors such as healthcare, fintech, e-commerce, and consulting
Explore More Learning Paths
Advance your data science skills with these carefully selected courses designed to deepen your understanding of data analysis, tools, and methodologies for real-world applications.
Related Courses
-
Foundations of Data Science Course – Build a strong foundation in data analysis, statistics, and programming essentials to prepare for advanced data science projects.
-
Tools for Data Science Course – Learn to work with key data science tools and technologies to efficiently process, analyze, and visualize data.
-
Data Science Methodology Course – Understand structured approaches and methodologies to solve complex data science problems effectively.
Related Reading
-
What Does a Data Engineer Do? – Explore the role of data engineers in managing, structuring, and optimizing data pipelines that support data science workflows.