The fastest way to get help with homework assignments is to post your questions on Piazza. That way, not only our TAs and instructor can help, your peers can too.
If you prefer that your question addresses to only our TAs and the instructor, you can use the private post feature (i.e., check the "Individual Students(s) / Instructors(s)" radio box).
While we welcome everyone to share their experiences in tackling issues and helping each other out, but please do not post your answers, as that may affect the learning experience of your fellow classmates.
For special cases such as failed submissions due to system errors, missing grades, failed file uploads, emergencies that prevent you from submitting, personal issues, you can contact the staff using a private Piazza post.
TAs plan to hold office hours starting week 2, except on Georgia Tech holidays (e.g., thanksgiving, MLK day, spring break). Each office hour session will be run by at least one TA, and is 1 hour long. See GT’s academic calendar for the full list of holidays (https://registrar.gatech.edu/calendar). We will spread the office hours across weekdays, and across time of the day. We will announce the office hour times.
We will hold office hours via Slack, where the TA running the office hour will be responsive. We will share information about how to join the appropriate Slack group.
Please note that you are always welcome to ask questions on Piazza. Office hours supplement Piazza, and do not replace it.
Wk | Dates | Topics | Homework (HW) | Project | |
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1 | Jan | 6-10 | * Course Introduction * Analytics Building Blocks * Data Science Buzzwords |
HW1 out Fri, Jan 10 |
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2 | 13-17 | * Data Collection * SQLite * Data Cleaning * Class Project Overview * Code Back-up & Version Control |
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3 | 20-24 | * Data Integration * Data Analytics, Concepts and Tasks |
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4 | 27-31 | * Visualization 101 * Fixing Common Visualization Issues |
HW1 due Fri, Jan 31 (Sat, 06:59 ET) (Sat, 11:59 UTC) HW2 out Fri, Jan 31 |
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5 | Feb | 3-7 | * Data Visualization for Web (D3) | Form project teams by Fri, Feb 7 |
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6 | 10-14 | * Scalable Computing: Hadoop * Scalable Computing: Pig * Scalable Computing: Hive |
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7 | 17-21 | * Scalable Computing: Spark * Scalable Computing: HBase |
HW2 due Fri, Feb 21 HW3 out Fri, Feb 21 |
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8 | 24-28 | * Classification * Visualization for Classification |
Proposal Document due Fri, Feb 28 Proposal Presentation Slides and Video due Fri, Feb 28 |
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9 | Mar | 2-6 | * Introduction to Clustering | ||
10 | 9-13 | * Graph Analytics * Ensemble Method * Scaling up Algorithms with Virtual Memory |
HW3 due Fri, Mar 13 HW4 out Fri, Mar 13 |
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11 | 16-20 | [Work on Project] | |||
12 | 23-27 | [Work on Project] | Progress Report due Fri, Mar 27 (Sat, 07:59 ET) (Sat, 11:59 UTC) |
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13 | 30-3 | * Text Analytics | HW4 due Fri, Apr 3 |
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14 | Apr | 6-10 | [Work on Project] | ||
15 | 13-17 | [Work on Project] | Poster Presentation Video due Fri, Apr 17 Final Report due Fri, Apr 17 |
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16 | 20-24 | Wrap up peer assessment | Poster Presentation Video grading starts Mon, Apr 20 Poster Presentation Video grading due Fri, Apr 24 |
The amounts of time students spend on this class greatly vary, based on their backgrounds, and what they may already know. Some former students told us they spent about 40-60 hours on each homework assignment (we have 4 big assignments, and no exams), and some reported much less. For example, for the homework assignment about D3 visualization programming, students who are completely new to javascript, css, and html likely will spend significantly more time than their peers who have already tried them before. Some former students who do not have a computer science background found the homework assignments challenging, would take significant time and effort, but were rewarding, fun, and "do-able."
Students have at least 3 weeks to complete each homework assignment. Some students waited until the last week, and could not finish. It is critical to plan ahead and prepare for the significant time needed.
Some programming assignments involve high-level languages or scripting (e.g., Python, Java, SQL etc.). Some assignments involve web programming and D3 (e.g., Javascript, CSS, HTML). For example, an assignment on Hadoop and Spark may require you to learn some basic Java and Scala quickly, which should not be too challenging if you already know another high-level language like Python or C++. It is unlikely that you all know tools/skills needed in the programing tasks, so you are expected to learn many of them on the fly.
Basic linear algebra, probability and statistics knowledge is also expected.
The Office of Disability Services offers accommodations for students with disabilities. Please contact the office should you need help.
Academic support, and personal support: Office of the Dean of Students, Counseling Center, Health Serivces, Women's Resource Center, LGBTQIA Resource Center, Veteran's Resource Center, Georgia Tech Police.
All content and course materials can be accessed online. There is no textbook for this course.
All Georgia Tech students have FREE access to https://www.safaribooksonline.com, where you can find a huge number of highly rated and classic books (e.g., the "animal" books) from O'Reilly and Pearson covering a wide variety of computer science topics, including some of those listed below. Just log in with your official GT email address, e.g., jdoe3@gatech.edu.
None, but you should have taken courses similar to those listed in the next section, at Georgia Tech or at another school.
If you are an Analytics (OMS or campus) degree student, you should first take CSE 6040 and do very well in it; if necessary, please also first take CS 1301.
We thank Intel's support in curriculum development for the memory mapping module (scaling up algorithms with virtual memory).
We thank Amazon Educate for providing free cloud credit for Amazon Web Services. We are excited to be am AWS partner university and part of AWS Educate's private beta.
We thank Microsoft Azure's special grant for providing free cloud credit.
We thank Tableau for Teaching program's data visualization software.
Many thanks to my colleagues for sharing their course materials: