Is Data Science a Dying Profession? (2024)

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Is Data Science a Dying Profession?, Some of the articles discussed ML engineers will take the position of data scientists in the future years.

The majority of businesses, according to some of the recent articles, used data science to address very similar business issues. As a result, data scientists wouldn’t need to devise brand-new techniques for resolving issues.

Recent articles state that in the majority of data-driven enterprises, only fundamental data science knowledge was needed to tackle issues.

A machine learning engineer, who is familiar with data science algorithms and has experience installing ML models, may readily take over this position.

Data science is described as a “dying field” that will soon be supplanted by positions like data engineering and ML operations in some articles, while it is described as being replaced by tools like AutoML in others.

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In light of our experience working closely with many data industry pillars, We’d like to share our thoughts on the matter and respond to the following queries:

Will there still be a need for data scientists in the upcoming years, or is the field in decline?

Will data scientists lose their jobs due to automated tools?

Is data science oversaturated, and will emerging job categories soon take their place?

Do businesses find data scientists to be profitable? What value do they provide to businesses?

Do We Need Data Scientists?

The workflow for data science is quite consistent across most firms. To address related business issues, several organizations employ data scientists. The majority of the models created don’t call any creative thinking on your part.

You can find inspiration from the vast amount of internet resources for the majority of the ways you will employ to solve data-driven problems at these firms.

Predictive modeling has become much simpler as a result of the development of automated technologies like AutoML and DataRobot.

We find DataRobot to be a really useful tool for several corporate use-cases. In order to produce the most highly accurate model possible, it iterates through a wide range of values and selects the ideal parameters for your model.

Why then do businesses still need data scientists if predictive modeling has become simpler over time?

Why don’t they just handle their entire data science workflow using a combination of automated technologies and ML engineers?

The solution is easy:

First off, data science has never been about creating novel algorithms or reinventing the wheel.

A data scientist’s job is to use data to improve an organization. And just a very small percentage of this in most businesses entails creating machine learning algorithms.

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Second, issues that cannot be resolved by automated technologies will always exist.

You can only choose from a predetermined selection of algorithms with these tools, thus you will have to tackle any problems that call for a combination of methods manually.

Although it doesn’t happen frequently, it still does, so as a company you need to select individuals who are qualified to handle this.

Additionally, data pre-processing and other labor-intensive tasks that come before model development are not possible with tools like DataRobot.

A Person’s Touch

Typically, you are given a dataset and a business challenge. You must determine how to use client data to the company’s advantage in order to increase sales.

This implies that a data scientist needs more than simply technical and modeling skills. You must make a connection between the data and the current issue.

You must choose the outside data sources that will help you optimize your solution.

Data pre-processing takes time and effort since, in addition to requiring excellent programming skills, you must experiment with various variables and determine which ones are relevant to the current challenge.

You must link a statistic like conversion rate to the model accuracy.

The approach doesn’t necessarily involve creating models. To complete a task like a customer ranking, sometimes a straightforward computation is all that is necessary.

Only a small percentage of problems require you to really make a forecast.

The ability to apply data to practical use cases is ultimately what gives a data scientist value to a business.

There is no actual benefit to a company from developing a segmentation model, a recommendation system, or assessing client potential unless the results are understandable.

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Summary

The position of data scientist will endure as long as one can use data to solve issues and fill the gap between technical and business skills.

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Is Data Science a Dying Profession? (2024)

FAQs

Is Data Science a Dying Profession? ›

Long story short, we still need data scientists. Though, the role will probably change in the next future. It will focus more on the algorithms and the data science process, rather than on programming. At that, low code tools will make the implementation of the whole process even more approachable and faster.

Is data science a dying industry? ›

As long as there are problems to solve and insights to glean, data science will remain relevant. As data collection and analysis become more pervasive, ethical concerns come to the forefront. Data privacy, bias mitigation, and transparency are critical issues that demand ongoing attention.

Are data science jobs declining? ›

It seems like the “data science” role is quickly disappearing from the job market. We looked at job posting data over the last 18 months and noticed a 26% drop year over year from October 2021 to October 2022 in the number of data scientist job openings.

Is data science dead in 2024? ›

Forecast: Continued Demand for Data Science Skills

So, for the foreseeable future, we continue to see increasing demand for data science and related skills, even as Generative AI continues to reshape how we do data science and analytics.

Does data science have a future? ›

‍The data science and its impact on big data in the future is becoming increasingly significant with the proliferation of devices and the surging internet usage. By 2025, it is projected that there will be 180 zettabytes of data globally, highlighting the expanding scope in data science.

Will AI replace data scientists? ›

The Unique Value of Human Data Scientists

While AI is automating more data science tasks, human data scientists still provide unique value AI cannot currently replicate: Domain Expertise - Data scientists often have deep domain knowledge because of their industry, letting them better contextualize data insights.

Will ChatGPT replace data scientists? ›

1. Can ChatGPT completely replace Data Scientists? No, ChatGPT cannot fully replace Data Scientists and while it can perform certain routine tasks like data cleaning and generating insights, it lacks the expertise, experience, and creative thinking that human Data Scientists can bring to their jobs.

Will data science exist in 10 years? ›

This vast amount of data calls for a significant number of Data Scientists to manage, interpret and analyze it. In conclusion, the application of Data Science is expected to grow significantly over the next 10 years as more organizations recognize its importance in today's digital world.

Why are data scientists quitting? ›

Low employee engagement is a leading cause of employee turnover for tech organizations. Low employee engagement means that your data scientists have low levels of enthusiasm and dedication to your company and their job. They do not feel the impact of their roles or care about their performance in a job.

Will data science fade away? ›

The Need For Data Science Has Not Decreased Or Been Replaced

If you don't know much about data science, you might guess that companies can simply “automate” this work, or even go without. But if you know anything about the actual tasks data scientists do, you understand that the job is, currently, irreplaceable.

Will data science jobs become obsolete? ›

Data science will not become obsolete; instead, the field is predicted to grow in the near future.

Where will data science be in 5 years? ›

In the end, the trajectory of Data Science suggests a strong and promising future. The demand for skilled professionals in this field will likely remain and intensify over the next five years.

Is data science dead with AI? ›

Do we still need data scientists? Despite the advancements in AI, data scientists remain essential. The role of data scientists may evolve, focusing more on the algorithms and the data science process rather than programming.

Is data science becoming saturated? ›

Yes the field is oversaturated. But that doesn't mean it's not difficult to hire good Data Scientist's & Machine Learning Engineers.

Is data science going to last? ›

Long story short, we still need data scientists. Though, the role will probably change in the next future. It will focus more on the algorithms and the data science process, rather than on programming. At that, low code tools will make the implementation of the whole process even more approachable and faster.

Which is better, AI or data science? ›

If you're looking to analyze data for insights and make strategic decisions based on them, choose data science. If you need systems that mimic human behavior, like learning from experiences, you should use artificial intelligence, particulary deep learning algorithms. That's the difference between AI and data science.

Is data science becoming obsolete? ›

It's difficult to foresee the future with absolute confidence, but it's reasonable to assume that data science will keep developing and changing to accommodate new technology. As more sectors adopt digital transformation and data-driven strategies, there will probably always be a need for qualified data scientists.

Is data science fading? ›

The short answer is no. A lot of the hype around data science has in recent years drifted to peripheral job titles like data engineer, machine learning engineer, and BI (business intelligence) analyst.

Is a data scientist still in demand? ›

The demand for data scientists is so high that, according to the World Data Science Initiative, around 80% of firms are focused on building robust in-house data practices. So you can see that the job market for data scientists is hot, and demand for data skills isn't just reserved to the tech industry, either.

Is data science still in demand in 2025? ›

Data science technology growth

The increasing demand largely fuels this growth for data to drive decision-making across industries, along with other latest trends in data science. By 2025, there will be 181 zettabytes of data, which is way above what an average consumer can imagine (Source ).

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