Leveraging Azure Data Lake for Efficient Data Processing in Telematics

Authors

  • Ravi Kiran Pagidi Independent Researcher, Jawaharlal Nehru Technological University, Hyderabad, India,
  • Pramod Kumar Voola Independent Researcher, Osmania University, Hyderabad, India
  • Amit Mangal Independent Researcher, University of Phoenix, Tempe ,Bangalore North Bangalore Karnataka
  • Aayush Jain Independent Researcher, Vivekananda Institute of Professional Studies -Pitampura, Delhi
  • Prof.(Dr) Punit Goel Research Supervisor , Maharaja Agrasen Himalayan Garhwal University, Uttarakhand,
  • Dr S P Singh Independent Researcher ,Ex-Dean, Gurukul Kangri University, Haridwwar, Uttarakhand

DOI:

https://doi.org/10.36676/urr.v9.i4.1397

Keywords:

Azure Data Lake, telematics, data processing, scalability, real-time analytics, data storage, predictive analytics

Abstract

In the telematics industry, the continuous generation of large volumes of data presents significant challenges in terms of storage, processing, and analysis. Azure Data Lake, a scalable and secure data storage solution, offers an efficient platform to handle these massive datasets. This paper explores the application of Azure Data Lake in telematics for efficient data processing, focusing on its capacity to store vast amounts of structured and unstructured data while providing seamless integration with various analytics tools. By leveraging Azure Data Lake, organizations can enhance their data processing capabilities, improve decision-making, and reduce operational costs.

The study investigates how Azure Data Lake simplifies data management through its high availability and accessibility, allowing businesses to manage data from multiple sources with minimal complexity. Furthermore, the integration with Azure services like Azure Data Factory and Azure Databricks facilitates advanced analytics, enabling real-time insights and predictive analytics, which are crucial for the telematics sector. The findings suggest that adopting Azure Data Lake improves data processing efficiency, enhances scalability, and supports the development of innovative telematics applications such as fleet management and vehicle monitoring systems. The paper concludes by highlighting the potential of Azure Data Lake to revolutionize the telematics industry by enabling more agile and data-driven operations.

References

Ghosh, P., & Debnath, P. (2020). Optimizing telematics data processing using cloud-native services: A case study on Azure. International Journal of Cloud Computing and Services Science, 9(2), 71-83.

Huang, K., & Jiang, S. (2018). The role of cloud computing in big data analytics for vehicle telematics. Transportation Research Part C: Emerging Technologies, 90, 65-79.

Jain, A., & Kumar, R. (2017). A review on cloud computing in telematics and its future perspectives. International Journal of Computer Applications, 175(2), 13-20.

Khan, Z., Anjum, A., Soomro, K., & Tahir, M. (2017). Smart city data management: A framework for telematics-based cloud solutions. Journal of Smart Cities, 3(4), 219-230.

Lynn, T., Mooney, J. G., Rosati, P., & Cummins, M. (2018). A decision-making framework for cloud computing in telematics. Journal of Cloud Computing: Advances, Systems and Applications, 7(1), 1-17.

Patil, S., & Kulkarni, M. (2020). Big data processing for telematics: A comparative study of cloud platforms. Journal of Big Data, 7(1), 1-16.

Rajput, H., & Goel, A. (2020). Enhancing vehicle telematics through cloud-based analytics. International Journal of Vehicle Performance, 6(3), 269-284.

Sharma, M., & Chauhan, S. (2019). Improving fleet management with cloud computing: A telematics case study. Journal of Transport and Supply Chain Management, 13, 1-12.

Suryadevara, N. K., & Mukhopadhyay, S. C. (2019). Telematics and IoT: Real-time analytics using cloud platforms. Journal of Network and Computer Applications, 129, 49-60.

Xu, L., He, W., & Li, S. (2015). Cloud-based data analytics for telematics: Architecture and application. IEEE Transactions on Cloud Computing, 3(4), 384-395.

Zhang, H., & Zhou, X. (2020). Real-time data processing in telematics using cloud computing: A review. IEEE Transactions on Intelligent Transportation Systems, 21(1), 123-135.

Weng, J., & Wang, Y. (2019). Exploring the potential of big data in telematics for fleet management. Transportation Research Part E: Logistics and Transportation Review, 129, 122-134.

Azhar, M. N., & Khusainov, R. (2018). Leveraging cloud computing for intelligent transportation systems: A telematics perspective. Journal of Ambient Intelligence and Humanized Computing, 9(4), 1121-1133.

Kim, H., & Lee, J. (2018). Big data analytics in telematics: Opportunities and challenges. Journal of the Society for Information Display, 26(3), 192-200.

Shukla, A., & Gohil, D. (2020). A framework for cloud-based telematics data management: A case study on Azure. International Journal of Information Management, 51, 102020.

Zhao, J., & Sun, Y. (2019). Cloud computing and big data: A new era for telematics. Journal of Transportation Technologies, 9(4), 152-163.

Singh, S. P. & Goel, P. (2009). Method and Process Labor Resource Management System. International Journal of Information Technology, 2(2), 506-512.

Goel, P., & Singh, S. P. (2010). Method and process to motivate the employee at performance appraisal system. International Journal of Computer Science & Communication, 1(2), 127-130.

Goel, P. (2012). Assessment of HR development framework. International Research Journal of Management Sociology & Humanities, 3(1), Article A1014348. https://doi.org/10.32804/irjmsh

Goel, P. (2016). Corporate world and gender discrimination. International Journal of Trends in Commerce and Economics, 3(6). Adhunik Institute of Productivity Management and Research, Ghaziabad.

Eeti, E. S., Jain, E. A., & Goel, P. (2020). Implementing data quality checks in ETL pipelines: Best practices and tools. International Journal of Computer Science and Information Technology, 10(1), 31-42. https://rjpn.org/ijcspub/papers/IJCSP20B1006.pdf

"Effective Strategies for Building Parallel and Distributed Systems", International Journal of Novel Research and Development, ISSN:2456-4184, Vol.5, Issue 1, page no.23-42, January-2020. http://www.ijnrd.org/papers/IJNRD2001005.pdf

"Enhancements in SAP Project Systems (PS) for the Healthcare Industry: Challenges and Solutions", International Journal of Emerging Technologies and Innovative Research (www.jetir.org), ISSN:2349-5162, Vol.7, Issue 9, page no.96-108, September-2020, https://www.jetir.org/papers/JETIR2009478.pdf

Venkata Ramanaiah Chintha, Priyanshi, Prof.(Dr) Sangeet Vashishtha, "5G Networks: Optimization of Massive MIMO", IJRAR - International Journal of Research and Analytical Reviews (IJRAR), E-ISSN 2348-1269, P- ISSN 2349-5138, Volume.7, Issue 1, Page No pp.389-406, February-2020. (http://www.ijrar.org/IJRAR19S1815.pdf )

Cherukuri, H., Pandey, P., & Siddharth, E. (2020). Containerized data analytics solutions in on-premise financial services. International Journal of Research and Analytical Reviews (IJRAR), 7(3), 481-491 https://www.ijrar.org/papers/IJRAR19D5684.pdf

Sumit Shekhar, SHALU JAIN, DR. POORNIMA TYAGI, "Advanced Strategies for Cloud Security and Compliance: A Comparative Study", IJRAR - International Journal of Research and Analytical Reviews (IJRAR), E-ISSN 2348-1269, P- ISSN 2349-5138, Volume.7, Issue 1, Page No pp.396-407, January 2020. (http://www.ijrar.org/IJRAR19S1816.pdf )

"Comparative Analysis OF GRPC VS. ZeroMQ for Fast Communication", International Journal of Emerging Technologies and Innovative Research, Vol.7, Issue 2, page no.937-951, February-2020. (http://www.jetir.org/papers/JETIR2002540.pdf )

Eeti, E. S., Jain, E. A., & Goel, P. (2020). Implementing data quality checks in ETL pipelines: Best practices and tools. International Journal of Computer Science and Information Technology, 10(1), 31-42. https://rjpn.org/ijcspub/papers/IJCSP20B1006.pdf

"Effective Strategies for Building Parallel and Distributed Systems". International Journal of Novel Research and Development, Vol.5, Issue 1, page no.23-42, January 2020. http://www.ijnrd.org/papers/IJNRD2001005.pdf

"Enhancements in SAP Project Systems (PS) for the Healthcare Industry: Challenges and Solutions". International Journal of Emerging Technologies and Innovative Research, Vol.7, Issue 9, page no.96-108, September 2020. https://www.jetir.org/papers/JETIR2009478.pdf

Venkata Ramanaiah Chintha, Priyanshi, & Prof.(Dr) Sangeet Vashishtha (2020). "5G Networks: Optimization of Massive MIMO". International Journal of Research and Analytical Reviews (IJRAR), Volume.7, Issue 1, Page No pp.389-406, February 2020. (http://www.ijrar.org/IJRAR19S1815.pdf)

Cherukuri, H., Pandey, P., & Siddharth, E. (2020). Containerized data analytics solutions in on-premise financial services. International Journal of Research and Analytical Reviews (IJRAR), 7(3), 481-491. https://www.ijrar.org/papers/IJRAR19D5684.pdf

Sumit Shekhar, Shalu Jain, & Dr. Poornima Tyagi. "Advanced Strategies for Cloud Security and Compliance: A Comparative Study". International Journal of Research and Analytical Reviews (IJRAR), Volume.7, Issue 1, Page No pp.396-407, January 2020. (http://www.ijrar.org/IJRAR19S1816.pdf)

"Comparative Analysis of GRPC vs. ZeroMQ for Fast Communication". International Journal of Emerging Technologies and Innovative Research, Vol.7, Issue 2, page no.937-951, February 2020. (http://www.jetir.org/papers/JETIR2002540.pdf)

CHANDRASEKHARA MOKKAPATI, Shalu Jain, & Shubham Jain. "Enhancing Site Reliability Engineering (SRE) Practices in Large-Scale Retail Enterprises". International Journal of Creative Research Thoughts (IJCRT), Volume.9, Issue 11, pp.c870-c886, November 2021. http://www.ijcrt.org/papers/IJCRT2111326.pdf

Arulkumaran, Rahul, Dasaiah Pakanati, Harshita Cherukuri, Shakeb Khan, & Arpit Jain. (2021). "Gamefi Integration Strategies for Omnichain NFT Projects." International Research Journal of Modernization in Engineering, Technology and Science, 3(11). doi: https://www.doi.org/10.56726/IRJMETS16995.

Agarwal, Nishit, Dheerender Thakur, Kodamasimham Krishna, Punit Goel, & S. P. Singh. (2021). "LLMS for Data Analysis and Client Interaction in MedTech." International Journal of Progressive Research in Engineering Management and Science (IJPREMS), 1(2): 33-52. DOI: https://www.doi.org/10.58257/IJPREMS17.

Alahari, Jaswanth, Abhishek Tangudu, Chandrasekhara Mokkapati, Shakeb Khan, & S. P. Singh. (2021). "Enhancing Mobile App Performance with Dependency Management and Swift Package Manager (SPM)." International Journal of Progressive Research in Engineering Management and Science, 1(2), 130-138. https://doi.org/10.58257/IJPREMS10.

Vijayabaskar, Santhosh, Abhishek Tangudu, Chandrasekhara Mokkapati, Shakeb Khan, & S. P. Singh. (2021). "Best Practices for Managing Large-Scale Automation Projects in Financial Services." International Journal of Progressive Research in Engineering Management and Science, 1(2), 107-117. doi: https://doi.org/10.58257/IJPREMS12.

Salunkhe, Vishwasrao, Dasaiah Pakanati, Harshita Cherukuri, Shakeb Khan, & Arpit Jain. (2021). "The Impact of Cloud Native Technologies on Healthcare Application Scalability and Compliance." International Journal of Progressive Research in Engineering Management and Science, 1(2): 82-95. DOI: https://doi.org/10.58257/IJPREMS13.

Voola, Pramod Kumar, Krishna Gangu, Pandi Kirupa Gopalakrishna, Punit Goel, & Arpit Jain. (2021). "AI-Driven Predictive Models in Healthcare: Reducing Time-to-Market for Clinical Applications." International Journal of Progressive Research in Engineering Management and Science, 1(2): 118-129. DOI: 10.58257/IJPREMS11.

Agrawal, Shashwat, Pattabi Rama Rao Thumati, Pavan Kanchi, Shalu Jain, & Raghav Agarwal. (2021). "The Role of Technology in Enhancing Supplier Relationships." International Journal of Progressive Research in Engineering Management and Science, 1(2): 96-106. doi:10.58257/IJPREMS14.

Mahadik, Siddhey, Raja Kumar Kolli, Shanmukha Eeti, Punit Goel, & Arpit Jain. (2021). "Scaling Startups through Effective Product Management." International Journal of Progressive Research in Engineering Management and Science, 1(2): 68-81. doi:10.58257/IJPREMS15.

Arulkumaran, Rahul, Shreyas Mahimkar, Sumit Shekhar, Aayush Jain, & Arpit Jain. (2021). "Analyzing Information Asymmetry in Financial Markets Using Machine Learning." International Journal of Progressive Research in Engineering Management and Science, 1(2): 53-67. doi:10.58257/IJPREMS16.

Agarwal, Nishit, Umababu Chinta, Vijay Bhasker Reddy Bhimanapati, Shubham Jain, & Shalu Jain. (2021). "EEG Based Focus Estimation Model for Wearable Devices." International Research Journal of Modernization in Engineering, Technology and Science, 3(11): 1436. doi: https://doi.org/10.56726/IRJMETS16996.

Kolli, R. K., Goel, E. O., & Kumar, L. (2021). "Enhanced Network Efficiency in Telecoms." International Journal of Computer Science and Programming, 11(3), Article IJCSP21C1004. rjpn ijcspub/papers/IJCSP21C1004.pdf.

Downloads

Published

2022-12-30
CITATION
DOI: 10.36676/urr.v9.i4.1397
Published: 2022-12-30

How to Cite

Ravi Kiran Pagidi, Pramod Kumar Voola, Amit Mangal, Aayush Jain, Prof.(Dr) Punit Goel, & Dr S P Singh. (2022). Leveraging Azure Data Lake for Efficient Data Processing in Telematics. Universal Research Reports, 9(4), 643–674. https://doi.org/10.36676/urr.v9.i4.1397

Issue

Section

Original Research Article

Most read articles by the same author(s)

1 2 > >>