Announcements
-
This course starts on Tuesday September 1, 2020.
- Please see the course prerequisites here.
CLASS MEETS:
Time: TUE/THU 4:50PM - 6:10PM
(Please note the change of time)
Place: ONLINE @Zoom
(Calendar invitations with link sent individually)
PEOPLE:
Instructor: Leman Akoglu
- Email: invert (andrew.cmu.edu @ lakoglu)
- Online office hour: Friday 8:30PM-9:30PM EST; also, by appointment
Teaching Assistants:
Xiaobin Shen
- Email: invert (andrew.cmu.edu @ xiaobins)
- Online office hour: Thursdays @9:30AM EDT
|
Lingxiao Zhao
- Email: invert (andrew.cmu.edu @ lingxia1)
- Online office hour: Tuesdays @8:30PM EDT
|
Please find the Zoom links to office hours on Canvas.
COURSE DESCRIPTION:
The rate and amount of data being generated in today's world by both humans and machines are unprecedented. Being able to store, manage, and analyze large-scale data has critical impact on business intelligence, scientific discovery, social and environmental challenges.
The goal of this course is to equip students with the understanding, knowledge, and practical skills to develop big data / machine learning solutions with the state-of-the-art tools, particularly those in the Spark environment, with a focus on programming models in MLlib, GraphX, and SparkSQL. See the
syllabus for more details. Students will also gain hands-on experience with MapReduce and Apache Spark using real-world datasets.
This course is designed to give a graduate-level student a thorough grounding in the technologies and best practices used in big data machine learning. The course assumes that the students have the understanding of basic data analysis and machine learning concepts as well as basic knowledge of programming (preferably in Python or Java). Previous experience with Hadoop, Spark or distributed computing is NOT required.
Learning Objectives
By the end of this class, students will
- gain understanding of the MapReduce paradigm and Hadoop ecosystem
- understand scalability challenges for common ML tasks
- study distributed machine learning algorithms
- understand details of SparkSQL, GraphX, and MLlib (Spark's ML library)
- implement distributed pipelines in Apache Spark
using real datasets
RECOMMENDED TEXTBOOKS:
There is no official textbook for the course. I will post all the lecture notes and several readings on course website.
Below you can find a list of recommended reading.
-
Scaling up Machine Learning: Parallel and Distributed Approaches, Cambridge University Press
Ron Bekkerman,
Mikhail Bilenko,
John Langford
-
Learning Spark, O'Reilly
Holden Karau, Andy Konwinski, Patrick Wendell, and Matei Zaharia
-
Advanced Analytics with Spark, O'Reilly
Sandy Ryza, Uri Laserson, Sean Owen, Josh Wills
BULLETIN BOARD and other info
- We will use the Canvas for course materials, homework deposits, announcements, and grades.
- We will use Piazza for questions and discussions.
- Carnegie Mellon 2019-2020 official academic
calendar
MISC - FUN:
Joke-1 Joke-2
Joke-3