Explore Big Data Analytics Applications and Opportunities: A Review
Abstract
:1. Introduction
2. Literature Review
2.1. Big Data and Analytics
2.2. Characteristics of Big Data
2.3. The Types of Data Analytics
- Descriptive
- Diagnostic
- Predictive
- Prescriptive
3. Big Data Analytics Opportunities and Applications
4. Big Data Applications Pre the COVID-19 Pandemic
4.1. Big Data in Healthcare
4.2. Big Data in Education
4.3. Big Data in Transportation
- First source of data which is the primary source is the direct physical sensing. Represented, in road-side static sensors such as LiDAR, microwave Radars, and sensors that measure speed, noise, and traffic flow known as acoustic sensors [100]. Other examples are the use of mobile phone technologies such as GPS, GSM, and Bluetooth [97].
- The third category of data source is urban sensing which is generated by transportation operators. In this category data captured can analyze urban mobility in terms of congestion and traffic flows [102]. This can be performed via credit cards and smart cards scanned through urban sensors from public transit, retail scanners and digital toll systems [97].
4.4. Big Data in Banking
5. Big Data Applications Peri the COVID-19 Pandemic
5.1. Big Data in Healthcare
5.2. Big Data in Education
5.3. Big Data in Transportation
5.4. Big Data in Banking
5.5. Big Data Analytics across Industry
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Field | Data Analytics Type | How BDA Has Been Utilized | Data Processing Models Used to Analyse Big Data | Reference |
---|---|---|---|---|
Healthcare | Descriptive and Predictive Data Analytics | Proactive actions and interventions based on predictive models to trigger any noncommunicable diseases. | Predictive models based on search engines and social media data. Smart phone applications tracking system to identify infection hot spots | [69,70] |
Perspective Data Analytics | Vaccine distribution | Sentiment analysis to reduce community resistance towards the vaccine. | [69,70,71] | |
Diagnostic and Predictive Data Analytics | Vaccine distribution | Machine learning models to prioritize the citizens’ need and urgency to the vaccine | ||
Diagnostic and Prescriptive Data Analytics | Monitoring live and frequent data on the spread of the disease Provide more personalized consultations by “virtual doctors” | Dashboards AI Chabot | [72,73] | |
Education | Descriptive Data Analytics | Enhance online educational platform experience | Analyzing data captured from online educational platforms can ease educators remote leaning experience | [69,74] |
Diagnostic Data Analytics | Bridge the gap of unemployment | Analysis of data captured from job portals | [69,75] | |
Transportation | Descriptive and Prescriptive Data Analytics | implementation of precautionary measures-Ensure social distancing in public transportation | Capturing relevant data and use machine learning techniques to detect incompliance actions | [76] |
Detect citizens’ commute route to store their travel history. | Use both AI and Big data applications to capture, track and predict valuable insights about citizens movement within and across cities and countries | [77] | ||
Banking | Fraud Detection | Use AI and ML techniques to describe and detect real-time abnormal activities and online transaction, and build ML models based on classification algorithims to predict any suspecious case. | [78] | |
Descriptive and Predictive Data Analytics | Risk Assessment | Use both diagnositic and prescriptuve data analytics models to analyze real-time data and asses the creditworthiness to customers. Consequenlty developing the appropriate cutomer portfolio and tailor clients needs to their services. Cossequently boosting customers’ satisfaction, loayality and enhance banks botom line records. | [78] |
Field | Opportunities | Description | Reference |
---|---|---|---|
Healthcare | Serve efficiently considering both value and costs to individual cases | BDA have powerful ability to highlight the correlation and patterns between different variables rather than finding the casual inference between them and serve individual patients’ cases. | [79,80,81,83,107] |
Education | Improve the learning process Provide real time feedback and construct development plans Construct a more personalized learning environment Enrich the learning environment Utilize BDA in marketing research purposes for institutions | BDA enables educational institutes and professionals to personalize the educational experience for students | [84,86,87,92,93,94,95,108] |
Transportation | The base for researchers, economists and regulators to analyze traffic flow, congestion and their social, economic and environmental impacts. Apply a combination of new methods of analysis such as AI approaches, to pave the way for predicting and providing innovative solutions for the future in the field of transportation. | BDA predictive capabilities and the incorporation of economic insights can exceed the ability to understand and analyze the past and real time data, to predict the optimal legislations for traffic congestion issues in smart cities. | [30,96,97,98,99,109] |
Banks | Detect fraud cases Ease the merge and acquisition operations Optimize banking supply chain performance Interpret clients’ behaviors. Provide valued and satisfactory services to clients. Analyze, predict, and visualize both external market conditions and internal clients’ trends and preferences Increase market share and enhance profitability. | BDA supported the introduction of digital banking operations and virtual banking systems | [103,105,106] |
Field in Charge | Application Name | Description | Reference |
---|---|---|---|
Health | Ebola Open Data Initiative | West Africa-data has been utilized to develop an open-source global model for tracking the cases of Ebola cases in in 2014 | [29,110,111] |
HealthMap | a platform used to visualize diseases trends and provides an early trigger on the proper response | [110,112] | |
Proactive listening, mobile phone-based system | Brazil-to govern the issue of bribes in the health services, and handle any related issues and take an immediate and effective action against corruption. | [110] | |
Education | ENOVA | Mexico, through the utilization of data and data analytics can analyze and predict students’ interactions. Consequently, boosts the educational strategies and enhances the used tools and techniques in the teaching-learning process. | [113,114] |
(PASS) Personalized Adaptive Study Success | The Open University Australia-Predicts course material, beside a more personalized studying environment. The predictive data analytics model is based on analyzing students, individual characteristics, beside other student related data captured from other systems. The main goal of the application is to develop a more customized environment that ensures students involvement, engagement, and retention in an e-learning environment. | [115] | |
Transportation | OpenTraffic platform | An application to support in urban infrastructure decisions, based on data captured from both vehicles and smartphones, to analyze it and visualize it into both historic and real-time traffic situations. | [110,116] |
Seoul, South Africa-the application is used to support night bus drivers to ease their journey from origin to destination. This will occur through capturing data from tremendous number of calls and text data points, as well as private and corporate taxi data sources. | [110] | ||
Banks | Avaloq, Finnova, SAP, Sungard and Temenos | OCBC is the largest bank in terms of market capitalization in Singapore. It operates in more than 15 countries globally. It is a success example of the utilization of BDA. For instance, the bank responded to customer actions, customers’ personalized events and their demographic profiles. Hence, OCBC Bank succeed in achieving higher customer engagement and increasing the level of customer satisfaction by 20% in comparison to a control group. These core banking applications, such as Avaloq, Finnova, SAP, Sungard or Temenos for example, were designed to handle large amounts of transactions in back-office processes for basic financial products and services, such as bank accounts, deposits, etc. | [104,117] |
Field | Data Analytics Type | How BDA Has Been Utilized | Method/Model | Reference |
---|---|---|---|---|
Healthcare | Descriptive and Predictive Data Analytics Models | Proactive actions and interventions based on predictive models to trigger any noncommunicable diseases. | Predictive models based on search engines and social media data. Smart phone applications tracking system to identify infection hot spots | [69,70] |
Perspective Data Analytics | Vaccine distribution | Sentiment analysis to reduce community resistance towards the vaccine. | [69,71] | |
Diagnostic and Predictive Data Analytics Models | Vaccine distribution | Machine learning models to prioritize the citizens’ need and urgency to the vaccine | ||
Diagnostic and Prescriptive Data Analytics Models | Monitoring live and frequent data on the spread of the disease Provide more personalized consultations by “virtual doctors” | Dashboards AI Chabot | [72,73] | |
Education | Descriptive Data Analytics Model | Enhance online educational platform experience | Analyzing data captured from online educational platforms can ease educators remote leaning experience | [69,74] |
Diagnostic Data Analytics Model | Bridge the gap of unemployment | Analysis of data captured from job portals | [69,75] | |
Transportation | Descriptive and Prescriptive Data Analytics Models | implementation of precautionary measures-Ensure social distancing in public transportation | Capturing relevant data and use machine learning techniques to detect incompliance actions | [76] |
Descriptive and Predictive Data Analytics Models | Detect citizens’ commute route to store their travel history. | Use both AI and Big data applications to capture, track and predict valuable insights about citizens movement within and across cities and countries | [77] | |
Banking | Fraud Detection | Use AI and ML techniques to describe and detect real-time abnormal activities and online transaction, and build ML models based on classification algorithims to predict any suspecious case. | [78] | |
Risk Assessment | Use both diagnositic and prescriptuve data analytics models to analyze real-time data and asses the creditworthiness to customers. Consequenlty developing the appropriate cutomer portfolio and tailor clients needs to their services. Cossequently boosting customers’ satisfaction, loayality and enhance banks botom line records. | [78] |
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Al-Sai, Z.A.; Husin, M.H.; Syed-Mohamad, S.M.; Abdin, R.M.S.; Damer, N.; Abualigah, L.; Gandomi, A.H. Explore Big Data Analytics Applications and Opportunities: A Review. Big Data Cogn. Comput. 2022, 6, 157. https://doi.org/10.3390/bdcc6040157
Al-Sai ZA, Husin MH, Syed-Mohamad SM, Abdin RMS, Damer N, Abualigah L, Gandomi AH. Explore Big Data Analytics Applications and Opportunities: A Review. Big Data and Cognitive Computing. 2022; 6(4):157. https://doi.org/10.3390/bdcc6040157
Chicago/Turabian StyleAl-Sai, Zaher Ali, Mohd Heikal Husin, Sharifah Mashita Syed-Mohamad, Rasha Moh’d Sadeq Abdin, Nour Damer, Laith Abualigah, and Amir H. Gandomi. 2022. "Explore Big Data Analytics Applications and Opportunities: A Review" Big Data and Cognitive Computing 6, no. 4: 157. https://doi.org/10.3390/bdcc6040157
APA StyleAl-Sai, Z. A., Husin, M. H., Syed-Mohamad, S. M., Abdin, R. M. S., Damer, N., Abualigah, L., & Gandomi, A. H. (2022). Explore Big Data Analytics Applications and Opportunities: A Review. Big Data and Cognitive Computing, 6(4), 157. https://doi.org/10.3390/bdcc6040157