Technology Careers
HDFC Data Digits HDFC ERGO Technocrat Kotak Mahindra Bank-PGP in Full Stack Software Engineering CSB Bank-Digital Transformation Skills Program FreeCharge by Axis Bank - FinTech Engineering Program Post Graduate Program in Full Stack Software Engineering
Banking and Finance Careers
Axis Bank – Priority Banking Program Axis Bank Young Bankers Program HDFC - Relationship Manager Axis Bank - Virtual Sales & Relationship Management Program Excelerate - Wealth Manager Program HDFC - Certification in Virtual Relationship Management HDFC- Trade Finance Operations IndusInd Bank – Banking Sales and Business Development Bajaj Finserv – Beyond Program
Add To Bookmark

5 Tips To Improve Your Productivity As A Data Scientist


By NIIT Editorial

Published on 09/11/2021

8 minutes

Even though everyone seems to jump on the hype train of Data Science, it is vital to determine whether it is a subject you enjoy studying in any of the best data science courses online or you acquired plain knowledge from an online data analyst course algorithm as yet another fascination.

In both cases, you must be wary of the fact that Data science aims to extract knowledge and insights from both structured and unstructured data using scientific methods, processes, algorithms, and systems. It is associated with big data, analytics, and machine learning. Statistical analysis, data analysis, and associated methodologies are unified in data science to understand and analyze actual phenomena.

To achieve the desired possible outcomes, every data scientist must focus on both technical aspects and mental aspects. In this article, we will talk about the fifteen tips that might help you get an insight into data science and assist in taking the first step to becoming a Data Scientist. 

Students will benefit from following the steps mentioned in this article to achieve top-notch results and improve themselves to become more knowledgeable data scientists in the future. Moreover, as a current Data Scientist, you could aim to procure more ideation and enhance your productivity in the field of Data Science. 

Let's dive into these concepts and understand the tips and tricks one by one once being wary of the basics and a realistic expectation of the post's goals.

How can you improve your productivity as a Data Scientist

1. Reduce The Time To Iterate

Your efficiency is primarily determined by how fast you can iterate. The length of the feedback cycle has a direct relationship with stress levels, bugs, and code quality. It is possible to speed up iteration time by any means. An excellent method is to treat every iteration as an experiment. The scientific method requires observing, formulating a question, experimentation, and analyzing to gain valuable insights systematically.

When monitoring your iterations, monitor the duration and determine the moments when you are "sitting waiting.” Once you have identified those moments and understood the tips and tricks, you can analyze them. 

Get to know the things that consume your time and get rid of them. It may be possible to break them down into shorter steps if that isn't possible. You can even learn them from some of the best data science certifications, or explore your choice from the online data analyst course algorithms.

2. Data Manipulation

Working with and improving data will probably take up roughly two-thirds of your time as a data scientist. Even after considering every other process, it is likely that you will spend a lot of this time waiting for others. Making the most of your time and reducing the blocked waiting period can be achieved by getting organized.

Predict the data you'll need as much as possible and collect it ahead of time. You can expose application dependencies using data dependency graphs. Apart from getting organized, you can also develop a tool that will automate the analysis phase and a domain-specific toolkit that will allow you to generate everything you will need for future analyses.

3. Improve Your MLOps and Software Engineering Skills With End-To-End Projects

It is strongly recommended that engineers get a lot of experience in complementary fields and become a "jack of all trades.” In the end, these efforts can effectively help you deliver value faster without relying on anyone else. 

You must write production-ready code and deploy that code into an environment where users can see it first before it's polished. That will significantly decrease the chances of project failure.

You can always get started with the best data science courses online, or look for the data science certification to get an understanding and develop experiential knowledge gradually. If you're looking for a training program that provides software-focused practical workshops, is free, and comes with a selection of online videos, these certification courses are an optimal choice. Machine learning operations (MLOps) is an emerging paradigm for development and deployment that will become huge in the future. 

MLops, according to experts, can facilitate real-world adoption of machine learning and help create a reactive development process that can cause a handful of measurable values, increasing your efficiency and effectiveness.

4. Be specific with your learning and knowledge for the Job

A data scientist should never be "jacks-of-all-trades" but "masters of none.” It is in your best interest to become an expert in your job and take the time to learn whatever you need to complete your duties more efficiently. 

Don't waste time learning skills you will not need. Let your work guide what you need to learn. Predict the additional skills you would most likely need for your future success. The technology industry is undergoing rapid and unavoidable change, which is why Forbes strongly recommends staying on top of the latest trends and innovations. 

Besides improving your field's foresight, you will also be able to take advantage of the inevitable shifts in the future. Develop new skills by learning new technologies, languages, and techniques.

5. Keep The Soft Stuff In Mind

It has been long since working long hours was perceived as a sign of dedication and efficiency or taken as a testament to productivity. Those notions are gradually being questioned. 

Verizon Connect cited a study that showed you could be just as productive by working for 50 instead of 70 hours - it is all about working smarter, not harder. Remember to take regular breaks between tasks and to set a schedule. 

You can't consider staring at your computer screen a break if you're just looking at it. Go to a different location - or, at the very least, stand up and stretch from time to time. Maintain a balance between work and personal life and schedule some time for hobbies and exercise.



Advanced PGP in Data Science and Machine Learning (Full Time)

Become an industry-ready StackRoute Certified Data Science professional through immersive learning of Data Analysis and Visualization, ML models, Forecasting & Predicting Models, NLP, Deep Learning and more with this Job-Assured Program with a minimum CTC of ₹5LPA*.

Job Assured Program*

Practitioner Designed

Top