Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Welcome to Introduction to PySpark, a short course strategically crafted to empower you with the skills needed to assess the concepts of Big Data Management and efficiently perform data analysis using PySpark. Throughout this short course, you will acquire the expertise to perform data processing with PySpark, enabling you to efficiently handle large-scale datasets, conduct advanced analytics, and derive valuable insights from diverse data sources.
During this short course, you will explore the industry-specific applications of PySpark. By the end of this course, you will be able to:
1. Attain a basic understanding of the introduction of big data, including its characteristics, challenges, and importance in modern data-driven environments.
2. Familiarize with Spark architecture and its components, such as Spark Core and Spark SQL.
3. Familiarize with distributed computing concepts and how they apply to Spark's parallel processing model.
4. Explore PySpark and big data concepts to solve data-related challenges.
5. Write PySpark code to solve real-world data analysis and processing tasks.
This short course is designed for Data Analysts, Data Engineers, Data Scientists, and Big Data Developers seeking to enhance their skills in utilizing PySpark for data processing and analysis.
Prior experience with Python and Hadoop is beneficial but not mandatory for this course.
Join us on this journey to enhance your PySpark skills and elevate your analytical and design capabilities.