Unanswered [1] | Urgent [0]
  

Posts by gm1234
Name: Gautam Person
Joined: Feb 2, 2019
Last Post: Feb 2, 2019
Threads: 1
Posts: -  
From: United States
School: Columbia University

Displayed posts: 1
sort: Oldest first   Latest first  | 
gm1234   
Feb 2, 2019
Graduate / Data Science Masters - Columbia University Personal Statement [2]

Hi,

Please review my PS for MS in Data Science at Columbia University.

Comments/Questions :
I haven't made it as an autobiography as this is the only essay required in the application (made it more of a SOP style).

I am planning to start it as a Part time with job and later on moving to a Full time couse (after 4 foundational courses I would say), do I need to mention this fact or keep it out the Statement?

Another thing is I haven't found any faculty member to mention here. Shall I do more research and add a line for them at the end?

Thanks

Personal Statement


Describe how your professional and academic background has prepared you to pursue an advanced degree in the field of engineering or applied science at Columbia University.

Over the past six years, my work opportunities as a Software Engineer have largely involved Analytics in various domains like finance, healthcare, and online gaming. To understand the hidden patterns and parameters of the ever-growing data governing the complex market and business decisions, constant efforts are needed to develop advanced analytics on pace with the rapid growth of data. My robust, practical experience working as a Software Engineer has continuously affirmed my desire to shift my focus to data science. However, my experiences have also exposed my knowledge gaps and motivated me to pursue an advanced degree program to address my knowledge gaps and position myself to excel in the data science field. After comparing programs that I felt aligned with my professional aspirations, I believe that the Master of Science in Data Science (MSDS) degree offered by the Columbia University will provide me an opportunity to further move from the operational understanding of a Business Intelligence Engineer to the deeper modeling perspective of a Data Scientist.

As an undergraduate, although my focus was mainly Electronics and Communication Engineering, I amassed theoretical knowledge in essential subjects a software engineer needs to have such as computer organization and architecture, computer networks, data structures, computer engineering, and internet applications. I also took relevant courses such as mathematics-I, II, and III which emphasized core competencies in linear algebra, calculus, statistical methods, and operational research. I also independently learned C++; object-oriented programming concepts; algorithms and analysis; and secured a software engineer job during campus recruitment.

Currently, I work as a Business Intelligence Engineer at an asset management firm. There, I work on projects that revolve around programming, visual analytics, and data management. I am responsible for end-to-end development of analytics dashboards used by the Investment and Risk teams to make business decisions. Being a part of the analytics team has provided me with invaluable experience in supporting business users to help drive solution improvements, financial forecasting, and process development. As projects evolve and grow with complex market needs, I am eager to advance my knowledge in machine learning.

During the last two years, I gained substantial experience in Data Science by attending various NYC meetups and Machine Learning nights. In further relevance to my work, I have undertaken the Verified course and certification for The Analytics Edge by MIT from edX where I gained wider exposure to the use of ML techniques in different domains. I also attended a five-day immersive Data Science boot camp that covered the basics of ML algorithms, big data, a mix of theory, hands-on labs, and a Kaggle competition. I also fortified my knowledge of Computer Science by taking online courses and specializations focused on Data Analytics, Python, R, Tableau, and Machine Learning.

I am excited about the opportunities presented by the Data Science Institute at Columbia University that will help me acquire the requisite skills to establish myself in the data science field and eventually emerge as an industry leader. Courses such as Machine Learning, Deep Learning, and Natural Language Processing will expand my academic horizons and help me in using the available data precisely. After graduating from Columbia University, I would like to work as a Data Scientist, preferably in the finance or healthcare industry and have proficiency in designing experiments, interpreting the data, and inferring conclusions. Also, I would like to keep abreast of biases of the models and manage Data Science teams in the future.

I look forward to gaining a competitive edge by deepening my understanding of various statistical and analytical techniques and upgrading my technical skills through the well-structured curriculum at Columbia. Columbia University is one of the top-ranking schools for Computer Science and Statistics and it will be my privilege to study at such a prestigious institute. Learning through interaction with the renounced faculty, industry leaders, and data science peers will add to the exciting experience of graduating from Columbia University. I am positive that the course structure, curriculum and the real-world approach during the MSDS program offered at Columbia University will play a decisive role in my life, both as a student and as a professional.
Need Writing or Editing Help?
Fill out one of these forms:

Graduate Writing / Editing:
GraduateWriter form ◳

Best Essay Service:
CustomPapers form ◳

Excellence in Editing:
Rose Editing ◳

AI-Paper Rewriting:
Robot Rewrite ◳

Academic AI Writer:
Custom AI Writer ◳