Data Science for All was an amazing experience that I was fortunate enough to participate in. Considering that it was the first cohort to enter the program, the fact that there were only a few problems with the program is a testament to the dedication and forethought that the program leaders have for this endeavor.
NOTE:
Since we were the first cohort, we were the guinea pigs, and we tried different things during the program. Certain aspects might have and wil...
Data Science for All was an amazing experience that I was fortunate enough to participate in. Considering that it was the first cohort to enter the program, the fact that there were only a few problems with the program is a testament to the dedication and forethought that the program leaders have for this endeavor.
NOTE:
Since we were the first cohort, we were the guinea pigs, and we tried different things during the program. Certain aspects might have and will change (for example, they now have a python self-paced mini boot camp before the actual program, as opposed to during the first few weeks of the program), so please refer to the program website and leaders to find the most up-to-date information.
MY BACKGROUND:
I graduated with a math degree in 2017, and I took two intro-to-computer-science and a data structures course. However, I forgot most of what I was taught, and spend most of 2020 trying to relearn everything, with an emphasis in python. It was during this time that I learned about DS4A.
APPLICATION PROCESSI don't remember the application process that well but what I can say the following:
- The initial application didn't take too long. They're interested in why you want to join the program, and what prior experience/education you have. They also want to know more about your experience as an underrepresented individual.
- The assessment involves a lot of statistical terms that I wasn't used to. However, in context you can understand what the question is asking you and what the different responses mean. A review of statistical terms isn't necessary, but it wouldn't hurt.
- The interview was a lot shorter than I thought it would be. They go over some of the questions that you answered in the initial application and they let you elaborate more. They check to see if you pass some minor technical requirements you might have (more on this later). They also ask about you're current employment status, and whether you'd be available to consider certain job opportunities that come through the program (note: You don't need to be unemployed or looking for a new job to enter the program. I knew multiple people who had no intention of leaving their job, but rather wanted to upgrade their skillset)
I heard roughly 2-3 weeks later that I had been accepted into the program.
TECHNICAL REQUIREMENTS
The only real technical requirement that we had for the program was that our computer have at least
8gb of ram. This is so they can use a program called Docker, which to put simply, sets up a mini computer within your current computer. You'll be running the software for the program through Docker.
Even if you didn't have 8gb of ram, people were still able to participate, but it just makes troubleshooting a bit hard in the long run.
THE INSTRUCTORS/ADMINISTRATORS (will talk about TA's and Mentors later)
The main instructor for the program is Professor Natesh Pillai, professor of Statistics at Harvard University. However, you'll know him better as DJ Tesh. Natesh is an absolutely wonderful and amazing individuals, and within seconds of hearing him speak, I was able to relax and I knew I was in good hands. Not only is he passionate about data science, but he's also passionate about the mission of DS4A and teaching. He brought a lot of energy and kept everyone engaged and focused.
Sometimes other individual's would come in to teach certain parts of the program, and I felt really bad for them since they were always compared to the powerhouse that is Natesh. However, they were also great teachers, and tried their best to make sure that they explained everything as clear as possible.
The rest of of Correlation One crew was also amazing. One thing that surprised me was not only the speed of their response, but also the sincerity they had. They worked with participants to make the program better and were very willing to admit and change mistakes they might have made.
SATURDAY CLASSES AND CASE STUDIES
Classes started at 7am PST, and usually had case studies from 7:10-ish to about 12 pst. Almost everything you'll learn will be through the case studies, which has real world situations. A majority of the case studies do a great job of teaching the concept at hand, and I would refer to them multiple times during the program. During the case study, if you had questions you could ask the presenter directly through the Slack channel or ask your TA's who were on standby to answer questions. Some of the concepts or tools we learned were
- Python
- Pandas
- SQL
- Data Cleaning
- Data visualization
- Hypothesis testing
- and much more!
One thing about the classes, though, was that the pacing was never perfect, and that because the skill level of all the participants varied widely. Some individuals had prior experience with coding, like myself, and so we could follow along well enough. Other with no coding experience struggled a bit during the first couple of cases. However, they are making changes to fix this, such as having a python bootcamp before the actual program. and experimenting with recording the lessons and having TA's go over the recording within their groups. Another Issue was the timing of some concepts. For example, I personally would have liked learning more about the statistical aspects of data science much sooner, since it would have helped with our project. However, I think this is a minor issues that can be easily fixed for future cohorts.
The rest of the day was usually filled with a mixture of another case study, some community event, an invited speaker sharing their experiences, TA meetings, or free time to work on your projects. One thing I'll say was that the speakers they had were amazing, and I think it's safe to say that everyone looked forward to hearing these individuals.
TAS AND MENTORSRoughly 50 participants will be assigned to a pair of TA's and they're one of the first individuals you'll contact when you have questions or problems regarding the material or your project. They answer questions during the lectures and have office hours on Saturday and during the week to help you out with your studies. From what I heard from friends in different TA groups was that most if not all of the TA's were very helpful and friendly. I can say that my TA's were great, and one TA in particular went above and beyond when our group was having major problems with our project.
The Mentors are individuals who you'll contact roughly once every 2 weeks. They'll mentor you with regards to your project and your future career goals. From my personal experience our mentorship didn't go smoothly, but that more of an error on our part and due to circumstances outside of our control. I heard most mentorships were really great and that people were able to learn a lot from them.
ASSIGNMENTS AND THE PROJECT We had 3 assignments we had to turn in for my cohort. You'll get credit and receive you certificate if you at least make an effort to finish it, but in order to receive a certificate with distinction, you'll need to a score of 90(?) or more on at least 2 of the assignments.
These assignments were not easy, and I would highly advise against starting them the night before. However, they're not impossible to do. You might need to do a little extra research in order to answer certain questions or to use certain tools, but it wasn't anything impossible. You're also allowed to work with others (so long as you didn't copy their work word for word), so these assignments usually lead to creating friendships with people who were struggling along with you.
The project was the most important part of the program, and in my opinion the hardest. You'll be working on it starting the first week or two, and roughly every other week you'll be turning in a certain part of the project. You'll be working with 4 other individuals, and the idea is that the 5 of you together will have all the skills and knowledge necessary to finish this project. The projects aren't graded, per say, but rather they want to see that you applied what you've learned and made an honest attempt to answer a question.
JOB ASSISTANCE
During and after the program ends, there will be career fairs where a good amount of companies will present a bit about who they are, what they do, and how they're using data science in their organization. They'll share what positions they have available and would be open to questions. One issue multiple people had was that a lot of the organizations at first were looking for either people with a lot of experience or people with masters/PhDs. However, this is more of a problem with the companies that presented and less of a problem with Correlation One. They told us they were actively working to make companies lower or drop their educational requirements where possible and to give DS4A participants a chance, and there has been a notable difference from those first presentations to now. I'm hoping that as knowledge of who DS4A is and what their mission is, that even more opportunities will come.
They also have a platform called C1-connect, where you can share your portfolio and your job preferences, and during certain times of the year they would match companies with you to go through the application process. However, I haven't gone through the whole process yet, so I can't say much about it for now.
SUMMARY
This program is an amazing opportunity to learn about data science and enter the field, despite the few problems it has an especially considering that its free. It isn't easy and requires dedication, but by doing so you'll be better prepared for life after the program. It doesn't teach you everything about the data science field, but I feel that it gave me the head start as well as the tools to continue further in this path.
I'm glad I applied, and I'm sure you will too.