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What Is The Field Of Data Engineering And Why Did It Emerge?

What Is The Field Of Data Engineering And Why Did It Emerge?

 Our Personal And Digital Lives Are Enclosed In The Realm Of Data That Is Constantly Being Generated. 

Therefore, it is not surprising that a field called data engineering has become one of the critical trends in the world of information technology; it is almost one of the most profitable jobs that experts familiar with artificial intelligence and data can achieve.
A field that directly focuses on data transfer, conversion, and storage.

In recent years, businesses have generated massive amounts of data. They need a data engineer who can collect, organize, store, and transform data into a format that makes big data analyzable.

This strategy plays a vital role in increasing the income level of companies.

The semantics of data engineering should be searched in its engineering section. In the same way that engineers are responsible for design and construction, data engineers also design processes and lines of data transmission so that data can be stored, transformed, and transmitted So that the information reaches data scientists in an optimal way and without problems and can be used.

Today, data is obtained from various sources and stored in a data warehouse to access information through a reliable data source. One of the essential differences is that data engineering, with other jobs in the IT field, is hidden in its dynamism.

Because the nature of information is constantly changing, the job description and the list of required skills of a data engineer are variable. Therefore, data engineers must be continually thinking about learning new skills.

Engineering that engineers data

A data engineer is an information technology specialist whose main task is to collect data for analytical or operational applications. While collecting data, these software engineers are responsible for building data transmission lines to collect data from different sources. They integrate, organize, and clean data for analytical applications. More precisely, they structure the data. Accordingly, data engineers are attracted to organizations with the aim of easy access to data and optimization of the extensive data ecosystem.

The amount of data an engineer works with depends on the field of work and the size or smallness of an organization. The larger the organization, the more complex the analytical architecture is, and the engineer is responsible for handling a larger volume of data. Specific industries, such as healthcare, retail, and financial services, are among the sectors that generate the highest volume of data. A data engineer attracted to such ambitions takes on a lot of responsibility and should be paid more.

Data engineering refers to skills and expertise that clarify data analysis to help businesses make reliable business decisions.

The role of a data engineer

Data engineers focus on collecting and preparing data to be used by data scientists and analysts. Typically, data engineers are recruited by organizations in the following three ways:

For example, a regional food delivery company may need a data pipeline project to make data scientists and analysts easily accessible to food delivery-related metadata. The company may want to know how far and how long it took to deliver food last month. Then, use this data in a predictive algorithm to see what strategy he can maintain and expand his business activities.

The databases that are supposed to be used in data-oriented projects have a complex architecture, and their design is done specially. In addition to creating the database, the data engineer is responsible for writing code that collects data from various sources, such as application-specific databases, and sends it to the analytical database.

Why was data engineering invented? 

In the last decade, almost all companies have experienced digital transformation in the sense that they are producing a massive amount of structured or unstructured data. Data has become more complex than before and is generated at high speed.

Typically, data scientists can only do their jobs properly if they understand the concept of data correctly and have access to classified and refined data. For a data scientist to be able to work with this data, an expert is needed to ensure the quality, reliability, and usability of the data so that patterns and analyses can be found.

When the concept of big data was first introduced to the world of information technology, the process of building data transmission buses was the responsibility of the data scientist, but because it was not considered one of the essential skills of data scientists, the process of data modeling was not done well.
This issue caused problems such as rework and data instability.

So, companies could not use data correctly, and some data-driven projects faced failure. The unimaginable increase of data by technologies such as the Internet of Things and the competition for data-centricity made companies need data engineers who have the necessary skills to design the infrastructure required for data projects so that data scientists can use data.

As we mentioned, the data engineer works on building the data transmission bus. In Figure 1, you can see an example of these data transmission buses. In this figure, you can see a simplified illustration of a data transfer pipeline. Along this line, data is obtained from various sources and entered into the data lake. An integrated data model is created, duplicate data is removed, the integrated data model is made once again, and finally,y it is entered into the product database.

Usually, data is obtained from various sources, the most important of which are the following:

 

What are the responsibilities of a data engineer?

Data engineers often work alongside data scientists as part of an analytics team. These professionals provide data in usable formats to data scientists who write dialogs and algorithms that can act on this information. Algorithms are used to provide predictive analysis, and it is possible to use them in machine learning and data mining programs.

In addition, data engineers are responsible for making the collected data available to managers, business analysts, and end users to analyze and make better business decisions.

In general, the field of data engineering deals with structured and unstructured data. Structured data is information that can be organized into a structured repository, such as a database.

Unstructured data such as text, images, audio, and video files do not conform to conventional data models. For this reason, professionals in this field must have a detailed understanding of data architecture and applications to manage both types of data.

What technologies and tools are data engineering mixed with?

Typically, data-driven disciplines such as data engineering are closely related to programming languages. As a result, specialists in this field must be able to work with programming languages ​​such as C#, Java, Python, R, Ruby, Scala, and SQL.

However, Python, R, and SQL are three important languages ​​widely used by professionals in this field. In addition to programming languages, complementary tools such as ETL and REST API should not be neglected. These tools simplify access to ready-made datasets for data analysts and business users. When data is received from various sources, it must be stored in places known as data warehouses and data lakes.

For example, Hadoop was developed to process and store enterprise data warehouses and helped data engineers keep big data in a structured way. One of the technologies that play a vital role in the field has data engineering,

Today, business intelligence (BI) platforms and their configurable capabilities play an essential role in data engineering. They have almost simplified the work of data engineers in this field. NoSQL databases and Apache Spark systems have become big players in this field. Of course, relational database systems such as MySQL and PostgreSQL are still used in this field. Fortunately, the Lambda architecture supports integrated data pipelines for batch and real-time processing.

Business intelligence platforms allow data engineers to connect data warehouses, lakes, and other data sources effectively.

For this reason, data engineers try to learn how to work with the interactive dashboards that business intelligence platforms provide, along with practical skills.

One of the essential topics raised around data engineering is whether there is a connection between data engineering and machine learning when machine learning is one of the skills that data scientists or machine learning engineers need.

A subtle point to note about data engineering is the platform the engineers use. The reality is that data engineers must have a good understanding of machine learning to prepare data for machine learning platforms. They need to know how to apply machine learning algorithms and get the insights required.

Typically, professional data engineers use Unix-based operating systems. Statistics show that Linux-based operating systems such as Ubuntu, Solaris, and similar examples perform better than Mac and Windows operating systems in this area. Linux distributions give the user more control over operating system monitoring, which is helpful for data engineers.

Certifications related to data engineering

Like most IT certifications, data engineering certifications are often based on a specific vendor’s products, and training and exams focus on using this software. Since the job of data engineer has become more attractive than in the past, companies like IBM have prepared specialized certifications for professionals in this field. Popular data engineer certifications include the following:

The critical thing to note is that certifications alone are not enough to get a data engineering job, and you need to have the necessary practical experience. Typically, data engineers use the following methods to gain experience:

last word

Data engineeringThey prepares and organize the data that companies have in databases and other formats. It defines data pipelines so that data scientists can easily access data. As you can see, data engineering is an essential skill that makes data engineers and data scientists work as a team on data-driven and machine-learning projects. Data scientists can only use data to analyze and complete tasks.

However, we should not lose sight of data scientists and engineers having different job descriptions. Data engineers strive to perfect their knowledge and skills in working with other technologies; Therefore, their focus on improving their skill level is not limited to one specific skill. In contrast, data scientists often focus on specialized areas. They must analyze the data accurately.

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