Abstract
In the rapidly evolving landscape of data engineering, leveraging cloud platforms has become crucial for organizations aiming to manage and process vast amounts of data efficiently. Azure, Microsoft's cloud computing service, offers a comprehensive suite of tools and services tailored for modern data engineering workflows. This abstract explores the contemporary steps involved in data engineering with Azure as of 2019.Key components include Azure Data Factory for data integration and orchestration, Azure Databricks for advanced analytics and machine learning, and Azure Synapse Analytics (formerly SQL Data Warehouse) for data warehousing and big data processing. These tools enable seamless data ingestion, transformation, storage, and analysis, facilitating scalable and cost-effective solutions for enterprises of all sizes. Moreover, the abstract discusses best practices and considerations for implementing data engineering solutions on Azure, such as optimizing data pipelines, ensuring data quality and security, and harnessing Azure's scalability and elasticity. It also highlights the integration of Azure services with existing on-premises infrastructure and third-party applications, emphasizing Azure's role as a versatile and robust platform for modern data engineering initiatives. Ultimately, this abstract aims to provide insights into leveraging Azure effectively for data engineering purposes in 2019, addressing both technical capabilities and strategic advantages for organizations navigating the complexities of big data processing and analytics in the cloud.
Downloads
Similar Articles
- K. Anand, K. Tamilmannan, P. Sathiya, Optimization Process Parameter for Friction Welding of Incoloy 800h Using Taguchi-Desirability Approach , International Journal of Science and Engineering Invention: Vol. 2 No. 02 (2016)
- Mohammad Anwar Zainudini, Analysis of River Damen Rate of flow and Rainfall Data for Flood Management from Makoran Iranshahr in the South East Iran , International Journal of Science and Engineering Invention: Vol. 2 No. 03 (2016)
- Zainab M. Gwoma , Kayode A. Popoola, Sunusi S. Adamu, M. Buhari, A Review of Torque Ripple Minimization Strategies in Switched Reluctance Machines , International Journal of Science and Engineering Invention: Vol. 9 No. 02 (2023)
- Chaitanya, Enhancing Financial Reporting Accuracy through Oracle NetSuite ERP Implementation , International Journal of Science and Engineering Invention: Vol. 8 No. 02 (2022)
- Ganiyu Adedayo Ajenikoko, Olayinka Titilola T, Effect of Real Power Loss Allocation on the Transfer Bus with Zero Injection Power , International Journal of Science and Engineering Invention: Vol. 2 No. 12 (2016)
- Ganiyu Adedayo Ajenikoko, Olakunle, Elijah Olabode, Optimal Power Flow with Reactive Power Compensation for Cost and Loss Minimization on Nigerian Power Grid System , International Journal of Science and Engineering Invention: Vol. 2 No. 12 (2016)
- Giuliana Vinci, Mattia Rapa, Federico Roscioli, Sustainable Development in Rural Areas of Mexico through Beekeeping , International Journal of Science and Engineering Invention: Vol. 4 No. 06 (2018)
- Sai krishna Chaitanya Tulli, Evaluating the Effectiveness of Supply Chain Analytics in Inventory Management , International Journal of Science and Engineering Invention: Vol. 10 No. 07 (2024)
- Adnan Haider Zaidi, U-GRNN: A Unified Graph Reinforcement Neural Network for Cross-Domain Energy Optimization in Earth based Smart Grids and Space Systems , International Journal of Science and Engineering Invention: Vol. 11 No. 04 (2025)
- Daniel N. Ihuoma, Macauley T Lilly, Morrison V. Ndor, The Impact of Quality Control for Profitability in a Car Brake Pad Manufacturing Industry: A Case Study , International Journal of Science and Engineering Invention: Vol. 4 No. 12 (2018)
You may also start an advanced similarity search for this article.
Copyrights & License

This work is licensed under a Creative Commons Attribution 4.0 International License.