What is Data Science: Lifecycle, Applications condition and Tools. Intro To Data Science
Khaled Hasan Prince
CS @AIUB | NLP | Machine Learning | SQL | Blog Writer | Seeking Research Opportunities |
Data science is the domain of study that deals with vast volumes of data using modern tools and techniques to find unseen patterns, derive meaningful information, and make business decisions. Data science uses complex?machine learning algorithms?to build predictive models. The data used for analysis can come from many different sources and presented in various formats. Now that you know what data science is, let’s see the data science lifestyle
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The Data Science Lifecycle
Now that you know what is data science, next up let us focus on the data science lifecycle. Data science’s lifecycle consists of five distinct stages, each with its own tasks:
Data Science condition
Here are some of the technical concepts you should know about before starting to learn what is data science.
1. Machine Learning: Machine learning is the backbone of data science. Data Scientists need to have a solid grasp of ML in addition to basic knowledge of statistics.
2. Modeling: Mathematical models enable you to make quick calculations and predictions based on what you already know about the data. Modeling is also a part of?Machine Learning?and involves identifying which algorithm is the most suitable to solve a given problem and how to train these models.
3. Statistics:?Statistics?are at the core of data science. A sturdy handle on statistics can help you extract more intelligence and obtain more meaningful results.
4. Programming: Some level of?programming?is required to execute a successful?data science project. The most common programming languages are Python, and R. Python is especially popular because it’s easy to learn, and it supports multiple?libraries for data science and ML.
5. Database: A capable data scientist needs to understand how databases work, how to manage them, and how to extract data from them.
Who Oversees the Data Science Process?
1. Business Managers:?The business managers are the people in charge of overseeing the data science training method. Their primary responsibility is to collaborate with the data science team to characterize the problem and establish an analytical method. A data scientist may oversee the marketing, finance, or sales department, and report to an executive in charge of the department. Their goal is to ensure projects are completed on time by collaborating closely with data scientists and IT managers.
2. IT Managers:?Following them are the IT managers. If the member has been with the organization for a long time, the responsibilities will undoubtedly be more important than any others. They are primarily responsible for developing the infrastructure and architecture to enable data science activities. Data science teams are constantly monitored and resourced accordingly to ensure that they operate efficiently and safely. They may also be in charge of creating and maintaining IT environments for data science teams.
3. Data Science Managers:?The data science managers make up the final section of the tea. They primarily trace and supervise the working procedures of all data science team members. They also manage and keep track of the day-to-day activities of the three data science teams. They are team builders who can blend project planning and monitoring with team growth.
What is a Data Scientist?
If learning what is data science sounded interesting, understanding what does this job roles is all about will me much more interesting to you. Data scientists are among the most recent analytical data professionals who have the technical ability to handle complicated issues as well as the desire to investigate what questions need to be answered. They're a mix of mathematicians, computer scientists, and trend forecasters. They're also in high demand and well-paid because they work in both the business and IT sectors. On a daily basis, a data scientist may do the following tasks:
What Does a Data Scientist Do?
You know what is data science, and you must be wondering what exactly is this job role like - here's the answer. A?data scientist?analyzes business data to extract meaningful insights. In other words, a data scientist solves business problems through a series of steps, including:
Why Become a Data Scientist?
You learnt what is data science. Did it sound exciting? Here's another solid reason why you should pursue data science as your work-field. According to Glassdoor and Forbes, demand for data scientists will increase by 28 percent by 2026, which speaks of the profession’s durability and longevity, so if you want a?secure career, data science offers you that chance.?So, if you’re looking for an exciting career that offers stability and generous compensation, then look no further! Read more:?Data Scientist Salary In Bangladesh and US
Uses of Data Science
Where Do You Fit in Data Science?
Now that you know the uses of Data Science and what is data science in general, let's see all the opportunity that this field offers to focus on and specialize in one aspect of the field. Here’s a sample of different ways you can fit into this exciting, fast-growing field.
Data Scientist
Data Analyst
Data Engineer
Data Science Tools
The data science profession is challenging, but fortunately, there are plenty of?tools?available to help the data scientist succeed at their job. And now that we know what is data science, it's lifecycle and more about the role in general, let us dig into it's tools.
Applications of Data Science
There are various applications of data science, including
1. Healthcare
Healthcare companies are using data science to build sophisticated medical instruments to detect and cure diseases.
2. Gaming
Video and computer games are now being created with the help of data science and that has taken the gaming experience to the next level.
3. Image Recognition
Identifying patterns is one of the most commonly known applications of data science. in images and detecting objects in an image is one of the most popular data science applications.
4. Recommendation Systems
Next up in the data science and its applications list comes Recommendation Systems. Netflix and Amazon give movie and product recommendations based on what you like to watch, purchase, or browse on their platforms.
5. Logistics
Data Science is used by logistics companies to optimize routes to ensure faster delivery of products and increase operational efficiency.
6. Fraud Detection
Fraud detection comes the next in the list of applications of data science. Banking and financial institutions use data science and related algorithms to detect fraudulent transactions.??
7. Internet Search
Internet comes the next in the list of applications of data science. When we think of search, we immediately think of Google. Right? However, there are other search engines, such as Yahoo, Duckduckgo, Bing, AOL, Ask, and others, that employ data science algorithms to offer the best results for our searched query in a matter of seconds. Given that Google handles more than 20 petabytes of data per day. Google would not be the 'Google' we know today if data science did not exist.
8. Speech recognition
Speech recognition is one of the most commonly known applications of data science. It is a technology that enables a computer to recognize and transcribe spoken language into text. It has a wide range of applications, from virtual assistants and voice-controlled devices to automated customer service systems and transcription services.
9. Targeted Advertising
If you thought Search was the most essential data science use, consider this: the whole digital marketing spectrum. From display banners on various websites to digital billboards at airports, data science algorithms are utilized to identify almost anything. This is why digital advertisements have a far higher CTR (Call-Through Rate) than traditional marketing. They can be customized based on a user's prior behavior. That is why you may see adverts for Data Science Training Programs while another person sees an advertisement for clothes in the same region at the same time.
10. Airline Route Planning
Next up in the data science and its applications list comes route planning. As a result of data science, it is easier to predict flight delays for the airline industry, which is helping it grow. It also helps to determine whether to land immediately at the destination or to make a stop in between, such as a flight from Delhi to the United States of America or to stop in between and then arrive at the destination.
11. Augmented Reality
Last but not least, the final data science applications appear to be the most fascinating in the future. Yes, we are discussing something other than augmented reality. Do you realize there's a fascinating relationship between data science and virtual reality? A virtual reality headset incorporates computer expertise, algorithms, and data to create the greatest viewing experience possible. The popular game Pokemon GO is a minor step in that direction. The ability to wander about and look at Pokemon on walls, streets, and other non-existent surfaces. The makers of this game chose the locations of the Pokemon and gyms using data from Ingress, the previous app from the same business.
Example of Data Science
Here are some brief example of data science showing data science’s versatility.
FAQs
1. What is data science in simple words?
Data science, in simple words, is the field of study that involves collecting, analyzing, and interpreting large sets of data to uncover insights, patterns, and trends that can be used to make informed decisions and solve real-world problems.
2. What is data science used for?
Data science is used for a wide range of applications, including predictive analytics, machine learning, data visualization, recommendation systems, fraud detection, sentiment analysis, and decision-making in various industries like healthcare, finance, marketing, and technology
3. What’s the difference between data science, artificial intelligence, and machine learning?
Artificial Intelligence makes a computer act/think like a human. Data science is an AI subset that deals with data methods, scientific analysis, and statistics, all used to gain insight and meaning from data. Machine learning is a subset of AI that teaches computers to learn things from provided data.
4. What does a Data Scientist do?
A data scientist analyzes business data to extract meaningful insights.
5. What kinds of problems do data scientists solve?
Data scientists solve issues like:
6. Do data scientists code?
Sometimes they may be called upon to do so.