Applications Of Data Science
Understand and apply Data Science concepts & techniques across various industries with this course.
What you learn in Applications Of Data Science ?
About this Free Certificate Course
In this course, we are going to look into the various applications of Data Science across different domains. It broadly includes the implementation of various Data Science techniques used in the industry across different scenarios. Beginning with an introduction to data science, we will dive deep into different techniques with certain examples thereon, followed by the explanation of certain terminologies used throughout the course.
Course Outline
This module gives you a clear picture of Data Science and how it is connected to mining, deep learning, and big data.
In this module, you will learn about data sampling techniques, imaging & text processing techniques, and more.
With this course, you get
Free lifetime access
Learn anytime, anywhere
Completion Certificate
Stand out to your professional network
1.0 Hours
of self-paced video lectures
Frequently Asked Questions
What is Data Science? Give its Applications
Data science is a part of computer science that deals with information, collection, processing, applications, and maintenance. Marketing, banking, finance, healthcare, government offices, fraud detection, and others are data science applications.
How is data science used in real-life applications?
Data science is the most trending topic since it involves the applications that are the talk of today’s world, such as self-driven cars, healthcare, finance, marketing, etc. Data science is used to solve the data handling, capturing, processing, and maintaining information.
Where is Data Science Applied?
Data science is used in almost every industry today, such as education, marketing, finance, government sectors, transport, healthcare, and most everything else. Data is a crucial asset today. Handling data, collecting it, processing it, maintaining and using it has to be done with care.
Will I get a certificate after completing this Applications of Data Science free course?
Yes, you will get a certificate of completion for Applications of Data Science after completing all the modules and cracking the assessment. The assessment tests your knowledge of the subject and badges your skills.
How much does this Applications of Data Science course cost?
It is an entirely free course from Great Learning Academy. Anyone interested in learning the basics of Applications of Data Science can get started with this course.
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Applications of Data Science
Data science is an in-trend domain of computer science that applies advanced analytics techniques and scientific principles to process the information from the data. This data can then be used to make decisions, strategic planning, and others. It plays a vital role in businesses: The insight drawn from data science help organizations increase operational efficiency, recognize new business opportunities and improve marketing and sales programs with other benefits. It capably leads to competitive advantages over business competitors.
Data science integrates different disciplines, such as data engineering, data preparation, data mining, predictive analysis, machine learning, data visualization, statistics, mathematics, and software programming. Skilled data scientists are involved in these kinds of tasks, including lower-level data analysts. Organizations rely on citizen data scientists who include business intelligence (BI) professionals, business analysts, data-savvy business users, data engineers, and other professionals who aren’t from data science backgrounds.
Data Science Applications
1) Banking: Banking is the largest sector and is the most extensive application of Data Science. Big Data and Data Science help banks to excel in the competition. With Data Science, banks manage their resources efficiently. Furthermore, banks take smarter decisions through fraud detection, risk modeling, real-time predictive analytics, customer data management, customer segmentation, and others. Banks assess customer lifetime value allowing them to monitor their customers. It provides various predictions that business banks derive from their customers.
Banks allow organizations to detect fraud involving credit cards, insurance, and accounting in case of fraud detection. They capably analyze investment patterns and cycles of customers and suggest different offers that suit their needs and interests. Further, banks possess the ability to risk modeling through data science that can assist banks’ overall performance. They tailor personalized marketing to suit the requirements of their clients. Banks make use of machine learning algorithms to improve their analytical strategy in real-life predictive analytics.
2) Finance: Data Science has always played a crucial part in automating different financial tasks. Banks have automated risk analytics; likewise, finance industries use data science to automate financial tasks. They automate risk analytics to perform strategic decisions for the organizations. Machine learning aids in identifying, monitoring, and prioritizing risks. The machine learning algorithms enhance cost-efficiency and model sustainability by training on the huge customer data available; likewise, financial institutions also use machine learning algorithms for predictive analysis. It helps businesses to predict customer lifetime value and stock market activities. Data science also plays its part in algorithm trading. Financial institutions make data-driven decisions through rigorous analysis of data. It plays its role in making customer experiences better. Financial institutions create a personalized relationship with customers by extensive research of client experience and modifying preferences. This is further enhanced by real-time analytics of customers, increasing personalization. Social media interaction is also enhanced by using various customer sentiment analysis techniques and machine learning algorithms. It also enhances the feedback and analyzes customer reviews. Machine learning approaches like natural language processing and data mining contribute to the transformation of information from more competent governance.
3) Manufacturing: In the era of technology like today, data scientists are the new factory workers. They have acquired a prime position in the manufacturing industry. Data science is widely used in manufacturing industries to optimize production, reduce costs and increase profits. Advanced concepts such as the Internet of Things (IoT) and data science have helped businesses predict potential problems, monitor systems, and analyze the continuous stream of data. Industries can also monitor their energy costs and optimize production with data science. Data scientists can help various industries make good decisions and improve the quality of the products with a thorough analysis of customer reviews. Automation is another vital aspect of data science in the industries. Industries build autonomous systems that help in boosting the production of manufacturing lines with historical and real-time data. It removes the redundant job and introduces machines using machine learning technologies such as reinforcement learning.
4) Transport: Transport is an application of data science. Data science actively marks safer driving environments for the drivers. It plays a crucial role in optimizing vehicle performance and adds good autonomy to the drivers. Data science has increased its manifold with the introduction of self-driving cars in the transport sector. Driver behavior and active vehicle monitoring, through broad analysis of fuel consumption, have created a strong foothold in the transport sector. Self-driving cars are a trending topic in today’s world. Vehicle manufacturers make intelligent vehicles with the introduction of autonomy to automobiles through reinforcement learning. Data science also helps in creating better logistical routes. Variability like customer profile location, economic indicators, and logistics helps vendors to optimize delivery routes and give an accurate allocation of resources. Transportation businesses such as Uber use data science for price optimization and provide a better user experience. Powerful predictive analysis helps predict prices accurately based on weather patterns, availability of transport, customers, etc.
5) Healthcare: Data science makes great leaps in the healthcare industry. Various industries that use data science for different purposes include:
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Medical Image Analysis
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Genetics and Genomics
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Drug Discovery
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Predictive Modelling for Diagnosis
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Health bots or Virtual Assistants
6) E-Commerce: Industries such as e-commerce and retail have hugely benefited from data science. The ways in which data science has transformed e-commerce industries are listed:
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Data science is highly used to identify a potential customer base.
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Predictive analysis is used to forecast goods and services.
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Data science is used to identify styles of popular products and to predict their trends.
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Companies use data science to optimize the pricing structures for their customers.
Data science is used highly in collaborative filtering, and it makes the backbone of advanced recommendation systems. E-commerce platforms provide insights to customers based on their previous purchases made using this technique. This is a hybrid recommendation system consisting of collaborative and content-based filtering to help businesses offer better services to their customers. Companies also use sentiment analysis to analyze feedback given by customers. Natural language processing is used to analyze texts and online surveys.
Fraud detection is built based on machine learning, which plays a central role in detecting fraud merchants and wire transfers.
Conclusion
The free Applications of Data Science online certificate course offered by Great Learning will help you understand what Artificial Intelligence is and its various applications, such as healthcare, e-commerce, fraud detection, marketing, finance, etc. Data science is a domain of computer science that has created a vast impact on many applications. Since data science is a vast domain, its applications are also enormous. Every industry needs data to process and follow other processes, and therefore data science marks its substantial presence in almost every industry today. You will be able to analyze and understand different applications of data science. You will also apply data science concepts to various domains at the end of the free Applications of Data Science online certificate course. You can enroll in Free Data Science Project Course to have a better experience in data science. You will also earn a certificate after the successful completion of the course. Happy Learning!