THE CRITICAL ROLE OF CENTRALIZED DATA MANAGEMENT IN GENERATIVE AI
Anthony G. Tarantino, PhD
Industry 4.0, Supply Chain, and Continuous Improvement SME and Consultant
CONTINUOUS IMPROVEMENT WITH TONY
Newsletter, Volume 9, June 15, 2024
Centralized data management is an essential component in navigating today’s global supply chains. Centralized data management facilitates the digitization of supply chain operations, creating a digital twin of physical operations. Without a digital twin, Smart Manufacturing and Industry 4.0 are not obtainable. Centralized data management involves aggregating and harmonizing data from various sources into a single, unified repository.
Centralized data management plays a critical role ?when it comes to leveraging generative AI (Gen AI). It is not just a necessity but also a catalyst for the successful deployment of Gen AI technologies. Here is why:
Data Quality: The old saying “garbage in, garbage out” holds true for Gen AI. The quality of the data fed into the system directly impacts the quality of the output. Robust data management practices ensure that the data used for training Gen AI models is accurate, reliable, and relevant.
Volume of Data: Gen AI systems, especially custom-trained models, require large amounts of data. Managing this sheer volume of data is essential. Off-the-shelf models may need less data, but custom training demands substantial amounts of data and significant processing power.
Energy Consumption: Generating AI models, such as creating images, can consume a considerable amount of energy. For instance, it’s estimated that Google’s AI-focused operations can consume as much energy as the entire country of Ireland. Efficient data management can help optimize energy usage.
Privacy and Security: Many Gen AI applications rely on sensitive data about individuals or companies. Personalizing communications, for example, requires having personal details about recipients. Ensuring privacy and security while handling such data is critical.
Transparency and Bias: Gen AI lacks the transparency of other predictive models. Understanding how and why specific outputs are generated can be challenging. Data management practices should address biases in training data to avoid ethical problems.
Data Integration: Most Gen AI applications need to synthesize information from various sources. For instance, a Gen AI system designed for market analysis might integrate data from social media, financial reports, news articles, and consumer behavior studies.[i]
Prediction
Data Silos may be the Achilles heel of Generative AI. Here’s why:
In summary, attacking data silos is essential for maximizing the potential of Generative AI in decision-making and operational processes. The good news is that generative AI algorithms, organizations can help transform disparate data sources into a unified format, making it easier to analyze and derive insights. ?
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Cheers, Tony
Anthony Tarantino, PhD
Six Sigma Master Black Belt, CPM (ISM), CPIM (APICS)
Adjunct Professor, Santa Clara University – Smart Mfg. & Industry 4.0
Author of Wiley's Smart Manufacturing, the Lean Six Sigma Way Amazon Links
Senior Advisor to IM Republic, ?https://imrepublic.com
?(562) 818-3275?? ?[email protected]? ?Anthony Tarantino
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