Master essential big data analytics tools like Apache Spark and R to analyze large-scale datasets, develop predictive models, and drive business decisions.
Master essential big data analytics tools like Apache Spark and R to analyze large-scale datasets, develop predictive models, and drive business decisions.
This comprehensive course, part of the Big Data MicroMasters program, equips learners with advanced skills in big data analytics. Students will master key technologies including Apache Spark and R for large-scale data analysis. The curriculum covers cloud-based analytics, predictive modeling, statistical analysis, and deep learning applications. Through hands-on practice with real-world datasets, learners will develop expertise in implementing machine learning algorithms, building classification models, and applying distributed computing techniques for big data problems. The course emphasizes practical applications and creative problem-solving approaches in data science.
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English
English
What you'll learn
Develop algorithms for statistical analysis of big data
Master key applications of big data analytics in business
Implement predictive analytics using fundamental principles
Apply appropriate techniques to large-scale data science problems
Use Apache Spark for distributed data processing
Build and evaluate machine learning models
Skills you'll gain
This course includes:
PreRecorded video
Graded assignments, Exams
Access on Mobile, Tablet, Desktop
Limited Access access
Shareable certificate
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There are 10 modules in this course
This comprehensive course covers advanced topics in big data analytics, focusing on practical applications using Apache Spark and R. Students learn essential techniques in statistical analysis, predictive modeling, and machine learning for large-scale data. The curriculum progresses from fundamental concepts like linear regression to advanced topics including deep learning and distributed computing. Key areas include data manipulation, classification models, supervised machine learning, and deep learning applications. The course emphasizes hands-on experience with real-world data analysis problems and industry-standard tools.
Simple linear regression
Module 1
Modelling data
Module 2
Many models
Module 3
Classification
Module 4
Getting bigger
Module 6
Supervised machine learning with sparklyr
Module 7
Deep learning
Module 8
Deep learning applications and scaling up
Module 9
Bringing it all together
Module 10
Fee Structure
Instructors

2 Courses
A Distinguished Statistician Bridging Theory and Real-World Applications
Simon (Jono) Tuke serves as Senior Lecturer in Statistics at the University of Adelaide's School of Mathematical Sciences, where he has established himself as an expert in statistical bioinformatics and network analysis. His unique career path began as a veterinarian before transitioning to mathematics and statistics, ultimately earning his PhD. His research spans multiple disciplines, with significant contributions to population genetics, medical statistics, and natural language processing. His collaborative work has led to groundbreaking discoveries, including research that demonstrated Aboriginal Australians' 50,000-year connection to country through genetic data. As an applied statistician, he has contributed to diverse projects ranging from analyzing ancient DNA to developing methods for social media trend analysis. His expertise extends to biostatistics and bioinformatics, where he develops statistical methods to model random networks and assess model fit. Through his work at the Adelaide Data Science Centre and as part of the ARC Centre of Excellence for Mathematical and Statistical Frontiers, he continues to bridge the gap between theoretical statistics and practical applications, from predicting Maori arrival patterns in New Zealand to analyzing post-operative behavior in cattle.

2 Courses
A Pioneer in Social Network Analysis and Data Science
Lewis Mitchell serves as Professor of Data Science at the University of Adelaide, where he has progressed from Lecturer to Professor since joining in 2014. After earning his PhD from the University of Sydney in 2012, he has established himself as a leading expert in computational social science and mathematical modeling of information flow across social networks. His research combines applied mathematics with data science to understand how information and misinformation spread online, developing tools for monitoring population-level trends and predicting real-world events. His work has attracted significant funding, including an ARC Discovery Project on mathematical modeling of information flow and an NHMRC Ideas Grant for improving medical device safety. As Chief Investigator in the ARC Centre of Excellence for Mathematical and Statistical Frontiers, he has contributed to groundbreaking research in social media analysis, disease outbreak prediction, and civil unrest forecasting. His innovative work includes developing open online tools for social media trend analysis and creating predictive models using Bayesian network approaches. Beyond research, Mitchell actively engages in science communication through media interviews, outreach events, and mentorship programs, while supervising numerous PhD students and postdoctoral researchers in areas ranging from healthcare analytics to illegal wildlife trade analysis.
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