Skip to content

prateekmlg-1907/IBM-Data-Science-Professional-Certificate

Repository files navigation

About the Course ℹ️

The IBM Data Science Professional Certificate is a comprehensive program offered by Coursera in collaboration with IBM. This certificate program is designed to equip individuals with the skills and knowledge needed to pursue a career in data science. Through a series of hands-on projects and interactive lessons, participants learn essential concepts, techniques, and tools used in data science.

Benefits of the Course 🌟

  • Industry-Relevant Curriculum: The course curriculum is designed in collaboration with industry experts from IBM, ensuring that participants learn the most up-to-date and relevant skills in data science.
  • Hands-On Projects: Participants have the opportunity to work on real-world projects, allowing them to apply theoretical concepts to practical scenarios and build a strong portfolio.
  • Flexible Learning: The course is available online through Coursera, providing flexibility for participants to learn at their own pace and schedule.
  • IBM Credential: Upon completion of the program, participants receive the IBM Data Science Professional Certificate, which is recognized by employers globally and can enhance career prospects.

Skills Gained 🚀

  1. What is Data Science?

    • Introduction to the field of data science
    • Understanding the role and importance of data scientists
    • Exploring various applications and domains of data science
  2. Tools for Data Science

    • Proficiency in using essential tools for data science, such as Jupyter Notebooks, GitHub, and Watson Studio
    • Understanding version control with Git and GitHub
    • Familiarity with IBM Cloud services for data science projects
  3. Data Science Methodology

    • Learning the data science methodology for tackling data science projects
    • Understanding the lifecycle of a data science project, including problem definition, data preparation, modeling, evaluation, and deployment
  4. Python for Data Science, AI & Development

    • Mastery of Python programming language for data science and AI applications
    • Understanding data structures, control flow, functions, and object-oriented programming in Python
    • Proficiency in using libraries such as NumPy, Pandas, and scikit-learn for data manipulation and machine learning
  5. Python Project for Data Science

    • Application of Python programming skills to real-world data science projects
    • Experience in solving data science problems using Python libraries and tools
    • Developing critical thinking and problem-solving skills through project-based learning
  6. Databases and SQL for Data Science with Python

    • Proficiency in working with databases and SQL for data analysis
    • Understanding database management systems (DBMS) and relational database concepts
    • Learning SQL queries for data manipulation, querying, and management
  7. Data Analysis with Python

    • Advanced data analysis techniques using Python
    • Exploratory data analysis (EDA) methods for understanding data distributions, correlations, and patterns
    • Statistical analysis and hypothesis testing using Python libraries such as SciPy and StatsModels
  8. Data Visualization with Python

    • Mastery of data visualization techniques using Python libraries like Matplotlib, Seaborn, and Plotly
    • Creating informative and visually appealing plots, charts, and graphs to communicate insights from data effectively
    • Understanding principles of data visualization design and best practices
  9. Machine Learning with Python

    • Understanding fundamental concepts of machine learning algorithms and techniques
    • Hands-on experience in building and evaluating machine learning models using Python
    • Knowledge of supervised and unsupervised learning methods, model evaluation, and hyperparameter tuning
  10. Applied Data Science Capstone

    • Integration of knowledge and skills acquired throughout the program in a real-world data science project
    • Experience in problem formulation, data collection, data cleaning, exploratory data analysis, modeling, and presentation of results
    • Collaboration and teamwork in a capstone project environment

For more information and enrollment, visit the IBM Data Science Professional Certificate page on Coursera.

About

All Notes, Assignments and Documents

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published