Hire IQ by HackerEarth is a new initiative in which we speak with recruiters, talent acquisition managers, and hiring managers from across the globe, and ask them pertinent questions on the issues that ail the tech recruiting world.
Next up in this edition is Ashutosh Kumar, Director of Data Science, at Epsilon India.
We had a long chat about hiring for niche roles like data science and data analysts, whether there will still be a need for such roles post this layoff phase, and expert tips that developers can make use of to excel in these roles.
Dive in!
P.S. If you missed the previous edition of HireIQ where we sat down with Patricia Gatlin, Diversity Lead/Talent Sourcing Specialist, at Johns Hopkins, you can read it here 🙂
Ashutosh: I have been a part of recruitment in the data science field for nearly 14 years of my career and have recruited for successful startups (seed to Series D) and MNCs across levels (entry, junior, mid and senior management) and profiles including data analysts, data scientist, ML engineers, full stack developers, and DevOps/MLOps. I’ve also been part of campus recruitments in premier colleges (IITs, NITs, IIMs, and ISB) for roles in data science profiles, as well as the lateral hiring processes for experienced candidates for almost all my previous employers.
Ashutosh: Mass layoffs depend on the health of a company and its measures to keep itself up and running and have less to do with any specific roles. Companies can cut all types of roles when it comes to survivability, but domains like data science and technology are some of the last ones to be axed since these are business-critical roles.
For instance, several of our clients, who are facing the pressures of recession, have been turning to data science to gather data-based insights on how to increase their revenue and save costs. Data science plays an important role in helping companies navigate and weather the recession storm.
We are a data-driven world, and data science will continue to be an in-demand domain. The demand for data science and data analysis professionals may fluctuate depending on economic conditions and the specific needs of individual organizations. It is important for professionals in these fields to stay up to date with the latest technologies and techniques, and to be proactive in seeking out new opportunities for growth and development.
Also read: Inside The Mind Of A Data Scientist
Ashutosh: Firstly, focusing only on interviews and theoretical questions instead of looking for hands-on coding experience is a big mistake. The industry needs people who can not only understand algorithms but who can also code. It’s fairly easy to get a theoretical understanding of all data science algorithms from the internet without writing a single line of code, and we need to ensure we hire people who can actually build solutions.
Secondly, giving importance to degrees and background over expertise. Today, there’s a plethora of online degrees which require little effort for a diploma or master’s degree in data science – one can get a degree from Indian or international colleges for ~USD 4000. Some of the best data science professionals we’ve worked with have unrelated degrees and have learned everything by themselves – either from online courses, Kaggle, blogs, or self-training.
Lastly, every data-related skill cannot be equated with data science and AI. The latter’s expanse is wide and complex – from simpler tasks like data entry, to intermediate ones like analysis, visualization, and insights, and to the more advanced machine learning models and AI algorithms. Often, roles are clubbed as ‘data scientist’ simply because of such loose definitions of these terms. You don’t need to hire a data scientist when you may actually need a data analyst.
Ashutosh: AI, machine learning, and quantum computing are all rapidly advancing technologies that have a significant impact on data science. AI and machine learning are enabling data scientists to develop more advanced algorithms and models that can analyze and interpret data more effectively, while quantum computing is providing the computing power necessary to process and analyze large amounts of data quickly and accurately. These technologies are also helping automate many of the tasks that were previously done manually, which is making data analysis more efficient and accessible. Overall, these new technologies are helping drive significant advances in the field of data science and are likely to continue to do so in the future.
Also, read: How AI Is Transforming The Talent Acquisition Process In Tech
Ashutosh: As a data scientist, it is important to continually upskill and stay current with the latest developments in the field. Here are a few ways data scientists can upskill themselves:
Ashutosh: To excel in data analytics, developers should have a strong foundation in math and statistics, as well as programming skills. They should be proficient in using tools and technologies for data manipulation, visualization, and analysis, such as SQL, Python, and R. In addition, they should have strong communication and problem-solving skills, as they will often be working with large and complex datasets and will have to clearly present their findings and recommendations to stakeholders.
Here are my top 3 tips for developers interested in pursuing a career in data analytics:
Ashutosh: As a recruiter or hiring manager for data science roles, it can be helpful to use specialized tools and platforms to identify and evaluate candidates. Some options may include:
Also, read: 10 Tech Recruiting Strategies To Find The Best Tech Talent
In terms of markers of skills, there are a few key areas to focus on when evaluating candidates for data science roles:
To improve their own understanding of the domain, recruiters can seek out training and education opportunities, such as online courses or industry conferences. They can also stay up to date on the latest developments and best practices in data science by reading articles and publications in the field.
About Ashutosh Kumar:
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