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Top 9 Data Science Trends to Keep you On Trend

Data Science
Data is a vital resource in today's world. It is used to power the websites and apps we use daily, provides the information we require to make decisions, and informs us of our world's current state and where it is heading. Data can predict future trends and behaviors, and without it, our world would be a much different place.
Top 9 Data Science Trends to Keep you On Trend

The world has changed in many ways over the years. Technologies have advanced, politics have shifted, and populations have grown. But one thing that has remained constant is the importance of data. Data has helped humans navigate the world, discover new things, and improve the quality of life for billions of people.

Moreover, the data science market was valued at USD 31.05 billion in 2020, expected to reach USD 230.80 billion by 2026, registering a CAGR of 39.7 % during the forecast period, 2021-2026.

Why Is Data Important?

Data. It’s the lifeblood of our modern world. Without data, our phones would be nothing more than dumb hunks of plastic. We wouldn’t find the fastest route to our destination or identify the best place to take our family on vacation.

With the world becoming increasingly digital, the importance of data has never been greater. Data is the foundation for the most advanced technologies, the basis for the most sophisticated algorithms, and the backbone of the most exciting innovations.

Data is the starting point for the most critical decisions and the key to the most impressive accomplishments. No organization can succeed without data, and no strategy can succeed without understanding how to use data in the right ways.

Emerging Trends of Data

Data has become an integral part of our lives. From the moment we wake up, we are bombarded with data in the form of news updates, emails, text messages, and a variety of other pieces of information. Our days are filled with data in the form of conversations, interactions, and experiences. When we sleep at night, we often intend to be better prepared for the day ahead, which usually involves more data.

So, let’s dive right into what are the emerging trends in the world of Data and how you can catch the bandwagon of technology:

The growth of the Internet of Things (IoT):

It will significantly impact the way data is used. The IoT refers to the collection of devices connected to the Internet. According to Mordor Intelligence, the IoT market reached $761.4 billion in 2020 and is expected to reach $1.39 trillion by 2026.

The IoT is expected to grow significantly over the next decade and will offer numerous benefits, including the ability to improve the way data is used. One of the most significant ways the IoT will impact the way data is used is by collecting data from a variety of devices.

**Big Data & Cloud Computing: **

Over the next decade, the biggest trend in data will be the continued growth of “Big Data” on a cloud-based infrastructure. Today's biggest challenge in the data industry is the storage of “Big Data.” As the amount of “Big Data” increases, the number of storage increases along with it. This creates a challenge for using “Big Data” to make better decisions. The Big Data market size is projected to grow from USD 162.6 billion in 2021 to 273.4 USD billion in 2026, at a Compound Annual Growth Rate (CAGR) of 11.0% Cloud computing has become an essential part of data infrastructure. Cloud computing refers to using a network of computers that are accessible via the Internet. The term “cloud” is often used to describe the services provided by data stored on a cloud. Big data refers to the large volume of data stored in a cloud.

**Emphasis on Actionable Data: **

The ability to provide actionable data will be the differentiating factor for data providers. Actionable data is data that can be used to make decisions. For example, actionable data can be used to determine whether or not to greenlight a project or fire an employee. Actionable data refers to data that is analyzed in a way that allows for the effective use of the data. For example, actionable data can improve the way products are sold. Actionable data can also be used to improve the way marketing is carried out. Data must be used to make decisions, but it must also be used to take action. This shift in focus toward actionable data will impact the design of data-driven systems. For example, a data-driven transportation system may use data to decide the most efficient way to route a bus. Still, a person may determine the final decision on the bus rather than a computer.

**Hyper-Automation: **

Hyper-automation refers to using complex algorithms and automation to help streamline processes and analyze data. Hyper-automation will help reduce the amount of human intervention required to process and analyze large volumes of data. This will allow data to be used to make better decisions, which will increase the efficiency of data-driven systems.

**Use of A.I and M.L: **

The use of artificial intelligence (AI) and Machine Learning will continue to increase over the next decade. The use of AI and machine learning has already become common in many industries, with the legal sector expected to be one of the first to utilize these technologies extensively. The use of AI and machine learning will continue to increase over the next decade, with a shift toward hyper-automation. AI and machine learning characterize this shift to perform tasks that humans once performed.

**Focus on Edge Intelligence: **

The future of data will be defined by the ability to provide edge intelligence. Edge intelligence refers to the processing and analyzing data as close to the source as possible. This will allow data to be used to make decisions closer to real-time, which will increase the effectiveness of data-driven systems. The focus over the next decade will be on edge intelligence, which will allow data to be used to make decisions that have a significant impact on the outcome of a system. It refers to the locations where a network is used most heavily. This will allow for the increased use of data at the locations where it is needed most.

**Increased Used of Natural Language Processing: **

The future of data is moving toward the use of natural language processing. Natural language processing is an area of artificial intelligence that allows computers to process and analyze human language. Much of the growth of natural language processing over the next decade will be due to the increasing use of artificial intelligence to analyze human language. NLP refers to the analysis of how people communicate using language. Over the next decade, NLP will become more prevalent as companies use it to process vast amounts of text for more effective communication. The NLP market is predicted to be almost 14 times larger in 2025 than in 2017, increasing from around three billion U.S. dollars in 2017 to over 43 billion in 2025.

**Blockchain In Data Science: **

Over the next decade, the biggest data trend will be the increasing use of blockchain in data science. Blockchain can be called a digital ledger that can be used to store data securely. Over the next decade, the use of blockchain in data science will increase as companies utilize it to store large volumes of data. This will allow data to be used to make decisions that are further along in the decision-making process, which will increase the effectiveness of data-driven systems. Blockchain is an innovative technology initially developed to support the digital currency bitcoin. However, blockchain has since been adapted for use in various industries, with data science being one of the fastest-growing industries utilizing blockchain. The use of blockchain in data science will allow for the secure storage of data while providing a decentralized platform for data scientists to share their work.

**Python for Programming: **

Python is an interpreted programming language that is well suited for data science. It is also easy to learn and popular for beginner data scientists. The continued focus on developing the python programming language will allow data scientists to learn a popular language well suited for data science without learning a framework specific to that language.

Connecting the Data Points

The use of data in the future will continue to increase as more and more data becomes available to organizations. The focus over the next decade will be on the continued development of data science, which will allow data to be used to make decisions that have a significant impact on the outcome of a system. This will result in an increased ability for companies to become data-driven, which will lead to an increase in the effectiveness of data-driven systems. The use of data in the future will continue to be driven by the continued innovation of data science. But are you equipped to join the trend of the future? Prepare yourself with the latest gadgets; technologies and learn the right way with a student-centric platform developed for future data scientists like YOU! Join the revolution with AlmaBetter.

Arpit Mehar
Content Developer Associate at AlmaBetter

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