Data science named among the fastest growing business in 2020 and rated Data Scientist the best business in the United States. Now is the time to start thinking about it as a profession, not a business, a corporate culture, not an action plan, a strategy, and a company strategy, not a platform as a key capability and not as a course and way of doing things, not as a goal. Now that the digital data revolution is in full swing, the number of jobs and the number of vacancies for data researchers are exploding. Such a requirement brings payroll salaries and employment bonuses.

Although there are great candidates for these jobs, there are also a lot of progressives. The recruit (who has been trying to hire a great number of data scientists for a client for a year) stated that it was a disappointment – many candidates they spoke to usually lack the basic skills and abilities of data scientists. In terms of statistics, programming, computer skills, data management, data management, data processing, databases, machine learning, data processing, visualization, communication, scientific curiosity, scientific training, and field expertise.

Data Science as a Profession…!

Should computer science become a profession? Should regulations be adopted governing the application of data science and who should enforce them? Information technology must become a profession for the same reasons that medical practice and law have become: everyone needs special education, training, and skills, which need ethics and personal lapses. Choosing specialized products can have serious negative consequences. Therefore, all areas of educational standards and ethics are needed to ensure public expertise.

Today, the field of data science is full of unconditional practitioners. There is confusion in the market regarding the definition of data science and the skills required by a data scientist. Many analysts have used their professional titles as “data scientists” to take advantage of market instability and try to achieve unlimited positions and pay increases. It creates competition between “expert” and “ordinary workers” and harms those who are truly skilled.

These issues encourage the widespread need to establish specific data processing programs for bachelors and masters and to establish minimum requirements for the data registration and data science Bootcamp system. The data science society was established to develop scientific disciplines, define and improve standards for data science education, and establish a code of ethics, with the primary goal of improving the lives, businesses, and governments of advanced computer technologies.

It is also good to remember that raw databases – large and small – are not objective. They are selected, collected, filtered, organized, and analyzed according to human design. What is recommended, in what way, by what means, and for what purposes? What is not recommended and why? Was the product in the hand measured only because its importance could not be measured? What was the quality of the data? It is frustrating that many researchers refuse to disclose raw data and data collection methods.

People then interpret the meaning of data in different ways. Scientists with data can see the same amount of data and draw different conclusions. Naked and hidden prejudices in the selection, collection, compilation, and analysis of data are serious risks. How we choose to share data and what we focus on or ignore affects the types and quality of measurements.

For data processing professionals, there is a risk that data researchers will mislead customers and employers, leading to poor business and policy decisions that could be detrimental to individuals and institutions. However, data scientists must learn from academics and researchers and avoid validation when validating biases, or if there is a risk that information technology will lose credibility.

Many people get a discount that harms their customers or employers. Just as the confusion between signal and noise can lead to tragedy, so the confusion of professional scientists with companies and data analysts can lead organizations to disaster. For the above reasons, data science must become an industry. What you can do depends a lot on your work, but if you have data analysis skills, you can almost always add value in some way.

Why Is There A Worldwide Demand For Data Science Professionals?

The main reasons are:

  • Talent differences: Talents created in data science are hard to find. People who understand and can use data to gain business benefits are a rare gem. Demand for analysts and researchers are declining.
  • Data reduction: For organizations around the world, managing hard-to-reach data is very difficult, and an even greater challenge is how to deal with explosively outdated future databases.
  • Long and varied skills are required: Being a professional in the field of data is just as demanding as ordinary programming or programming knowledge. Also, you should be well trained in mechanical engineering, programming, and statistical modeling. It is very difficult to find all these abilities in one person.
  • Access to professionals who do not know related topics: Access is almost limited to professionals or students not involved in computer science, engineering, mathematics/statistics, and general sciences. It is an interdisciplinary field and requires knowledge from one of the above areas.
  • Good salary: There is no doubt about it! The salary is amazing! But there are benefits to becoming an IT professional in your company.

Who Can Use Data Science?

You can. And, of course, your employer can do the same. They greet you with open arms when they realize that you are brave and capable enough to click on a wave of unstructured, semi-structured, and structured data and use the data to drive change. Of course, these changes should have measurable results. After all, every job wants to secure its job, right? Now we want to help you be a person that a large science data company or a fast-growing company would be happy to hire. So – how to enter in the world of data science? Some involve going through the magical “Data Science Leviathan” passage, others help you secure a data science career through less complicated paths.