Data Engineering Challenges in AI-Powered Business Intelligence Platforms
DOI:
https://doi.org/10.63282/3050-9246.IJETCSIT-V3I3P101Keywords:
Data Engineering, AI, Business Intelligence, Data Integration, Data Quality, ExplainabilityAbstract
Data engineering is essential for the successful implementation of AI-powered business intelligence platforms, yet it presents several challenges that organizations must navigate. One significant challenge is data integration and management, where businesses struggle to ingest and consolidate vast amounts of structured and unstructured data from diverse sources. This complexity is exacerbated by varying data formats and the need for reliable data pipelines, which are crucial for the scalability and performance of AI models. Another critical issue is data quality and cleansing. AI models depend heavily on clean and reliable data, but data engineering often involves dealing with incomplete or noisy datasets. Organizations must invest in advanced techniques, such as machine learning, to automate data cleaning processes and enhance overall data quality. Lastly, explainability and transparency pose significant hurdles. Many AI models generated through data engineering are difficult to interpret, making it challenging for businesses to validate their outputs. Ensuring that AI techniques are understandable and transparent is vital for fostering trust in the decisions derived from these models. In summary, while AI offers transformative potential for business intelligence, the interplay between data engineering challenges such as integration, quality assurance, and model explainability must be effectively managed to unlock this potential
Downloads
References
[1] Informatica. (n.d.). The synergy of data engineering and artificial intelligence: Unlock the power of intelligent systems. Retrieved from https://www.informatica.com/blogs/the-synergy-of-data-engineering-and-artificial-intelligence-unlock-thepower-of-intelligent-systems.html
[2] Softweb Solutions. (n.d.). Benefits of AI and data engineering. Retrieved from https://www.softwebsolutions.com/resources/benefits-of-AI-and-data-engineering.html
[3] CCS Learning Academy. (n.d.). Will AI replace data engineers? Retrieved from https://www.ccslearningacademy.com/willai-replace-data-engineers/
[4] Acceldata. (n.d.). Impact of AI on data engineering. Retrieved from https://www.acceldata.io/blog/impact-of-ai-on-dataengineering
[5] Intellectyx. (n.d.). What is data engineering: Common challenges and solutions. Retrieved from https://www.intellectyx.com/what-is-data-engineering-common-challenges-and-solutions/
[6] ResearchGate. (n.d.). Call for chapters: Data science for decision makers: Leveraging business analytics, intelligence, and AI for organizational success. Retrieved from https://www.researchgate.net/post/Call_for_Chapters_Data_Science_for_Decision_Makers_Leveraging_Business_Analytics_Intelligence_and_AI_for_Organizational_Success
[7] LakeFS. (n.d.). AI and data engineering. Retrieved from https://lakefs.io/blog/ai-data-engineering/
[8] ResearchGate. (n.d.). How can the application of generative artificial intelligence improve existing applications of big data analytics? Retrieved from
[9] Acceldata. (n.d.). Guide to business intelligence platforms to make data-driven decisions. Retrieved from https://www.acceldata.io/blog/guide-to-business intelligence-platforms-to-make-data-driven-decisions
[10] LANSA. (n.d.). Business intelligence platform. Retrieved from https://lansa.com/blog/business-intelligence/businessintelligence-platform/
[11] Salesforce. (n.d.). Business intelligence platforms. Retrieved from https://www.salesforce.com/uk/resources/articles/businessintelligence-platforms/?bc=HA
[12] Tableau. (n.d.). How to choose a BI platform. Retrieved from https://www.tableau.com/business-intelligence/how-to-choosebi-platform
[13] Mopinion. (n.d.). Business intelligence (BI) tools overview. Retrieved from https://mopinion.com/business-intelligence-bitools-overview/
[14] Atlassian. (n.d.). BI platform guide. Retrieved from https://www.atlassian.com/data/business-intelligence/bi-platform-guide
[15] Zapier. (n.d.). Business intelligence software. Retrieved from https://zapier.com/blog/business-intelligence-software/
[16] Gartner. (n.d.). Analytics and business intelligence platforms. Retrieved from https://www.gartner.com/reviews/market/analytics-business-intelligence-platforms
[17] Kasmo Digital. (n.d.). AI in business intelligence: A solution for complex data challenges. Retrieved from https://www.kasmodigital.com/ai-in-business-intelligence-a-solution-for-complex-data-challenges/
[18] IAEME. (n.d.). AI and scalable business intelligence. International Journal of Engineering and Technology Research, 9(2), Article 12. Retrieved from
https://iaeme.com/MasterAdmin/Journal_uploads/IJETR/VOLUME_9_ISSUE_2/IJETR_09_02_012.pdf
[19] Software AG. (n.d.). Data integration and scalable AI. Retrieved from https://www.softwareag.com/en_corporate/resources/data-integration/wp/data-integration-scalable-ai.html
[20] DCKAP. (n.d.). Data integration challenges. Retrieved from https://www.dckap.com/blog/data-integration-challenges/
[21] TechTarget. (n.d.). AI in business intelligence: Uses, benefits, and challenges. Retrieved from https://www.techtarget.com/searchbusinessanalytics/feature/AI-in-business-intelligence-Uses-benefits-and-challenges
[22] CloudFront. (2023, November). AI and ML in data integration. Retrieved from https://d3lkc3n5th01x7.cloudfront.net/wpcontent/uploads/2023/11/02034836/AI and-ML-in-data-integration1.svg?sa=X&ved=2ahUKEwjF35nsjJWLAxUeHbkGHemtL9sQ_B16BAgAEAI
[23] Debut Infotech. (n.d.). AI in data integration. Retrieved from https://www.debutinfotech.com/blog/ai-in-data-integration
[24] Alation. (n.d.). What is data integration? Types, use cases, and challenges. Retrieved from https://www.alation.com/blog/what-is-data-integration-types-use-cases-challenges/
[25] Alation. (n.d.). The importance of data governance in AI. Retrieved from https://www.alation.com/blog/importance-datagovernance-ai/
[26] Acceldata. (n.d.). How AI is transforming data quality management. Retrieved from https://www.acceldata.io/blog/how-ai-istransforming-data-quality management
[27] Datumo. (n.d.). Insight into data governance. Retrieved from https://datumo.com/en/blog/insight/data-governance/
[28] Soda. (n.d.). Beyond the hype: Real-world AI governance and data quality essentials. Retrieved from https://www.soda.io/guides/beyond-the-hype-real-world-ai-governance-and-data-quality-essentials
[29] Atlan. (n.d.). Data governance and business intelligence. Retrieved from https://atlan.com/data-governance-businessintelligence/
[30] Secoda. (n.d.). AI and data governance. Retrieved from https://www.secoda.co/blog/ai-data-governance
[31] Bismart. (n.d.). Artificial intelligence in data management. Retrieved from https://blog.bismart.com/en/artificial-intelligencedata-management
[32] Element61. (n.d.). Business intelligence, data governance, and data quality. Retrieved from https://www.element61.be/en/competence/business-intelligence-data-governance-data-quality