Data Science

What Is Data Science? Definition, Examples, Jobs, and More

Data science is the study of data, much like marine biology is the study of sea-dwelling biological life forms. Data scientists construct questions around specific data sets and then use data analytics and advanced analytics to find patterns, create predictive models, and develop insights that guide business decision-making.

Real-world applications

Although data science is often concerned with making sense of abstract data points, its impact can be seen concretely throughout the world today. Here are some familiar examples of data science or data science-powered services found all around us: 

1. Advertising and marketing

Data science models are essential in modern advertising, from display advertisements on numerous websites to digital posters at airports.One of the most common ways that data science is employed in marketing is when you Google a term, and algorithms create relevant search results, including targeted ads related to your query. This application of data science is why you may see an online advertisement for data science training programmes, while someone else in the same region may see an advertisement for clothes. Businesses can customise them based on the user’s previous behaviour. This is why digital advertisements have a far higher CTR (call or click-through rate) than traditional advertising. Many marketing firms have taken advantage of data science to promote their offerings based on users’ interests and data relevance to enhance customer engagement. Companies like Amazon, Twitter, Google Play, Netflix, and others also adopt this strategy.

2. Health care

Data science applications are especially beneficial to health care, where it’s used for a wide range of purposes, including:

  • Medical image analysis

  • Genomics and genetics

  • Pharmaceutical research and development

  • Bots for health and virtual assistants

Even medical operations have benefited from data science innovations. Employing various methods and frameworks, such as MapReduce, data science is used to identify malignancies, artery stenosis, and organ demarcation. Support vector machines (SVM), content-based health care image indexing, and wavelet analysis are machine-learning approaches used to classify solid textures.

Genomics and genetics

Data science implementations also provide a better level of therapy customisation via genetics and genomics analysis. The goal is to identify particular molecular linkages between genetics, disorders, and pharmaceutical responses to understand better how DNA affects human health.

Pharmaceutical research and development

Data science techniques and artificial educational algorithms ease and streamline pharmaceutical R&D, giving a new perspective at every stage, from the initial screening of medicinal substances to forecasting the rate of success based on biological characteristics.

Besides “lab tests,” these algorithms use sophisticated mathematical modelling and simulations to forecast how a drug will react inside the body. Algorithmic drug development aims to create computational prediction models in the form of a biologically suitable network, making it easier to predict future outcomes with high precision.

Bots for health and virtual assistants

AI-powered mobile applications, such as chatbots, can give basic health care assistance. Simply describe your health concerns or ask any health-related questions, and you’ll receive critical information on your health status based on a large network of clinical symptoms and signs. 

3. E-commerce

Data science has impacted e-commerce in various ways, helping businesses identify their target market, anticipate goods and services, and optimise price formations. Natural language processing (NLP) and recommendation engines, in particular, have proven highly beneficial to e-commerce companies that employ these methodologies to analyse customer purchases and gain insight into potential growth strategies. Furthermore, NLP is used to analyse texts and online surveys, which helps businesses provide quality services to their customers.

4. Transportation

Data science has been at the centre of some of the most impactful innovations in transportation over the past two decades. While self-driving vehicles are likely the most eye-catching data science development in transportation, data scientists have also been foundational to producing fuel usage statistics, analysing driver conduct, and monitoring vehicular performance. By combining reinforcement learning with automation, car manufacturers may create smarter, safer vehicles with better logistical routes. Prominent ride-hailing apps like Ola use data science to optimise cost and completion routes by combining various elements like customer behaviour, location, economic data, and logistic providers. Airlines, meanwhile, use data science to predict delayed flights, choose which aircraft to purchase, plan routes, manage flight delays, and create loyalty programmes.

Job opportunities in data science

Many jobs are in the field of data science. Some of the most common positions include:

 

  1. Data analyst

  2. Machine learning engineer

  3. Data engineer

  4. Data scientist

  5. Database administrator

  6. Business analyst

  7. Product analyst

  8. Financial analyst

  9. Data system developer