Amplifying Manufacturing Excellence with DI
Chris Andrassy
Supply Chain AI Enablement | CEO at Astral Insights | Keynote Speaker | Early-stage Investor
In the era of big data and advanced analytics, the manufacturing industry is at a crossroads. While Artificial Intelligence (AI) has been a driving force in harnessing data for improved operational efficiency, the advent of Decision Intelligence (DI) is poised to redefine what it means to be truly data informed. DI represents a paradigm shift from being purely data-centric to a business outcome-centric approach. This transformative perspective is not merely an incremental improvement but a fundamental reimagining of how decisions, powered by data, can directly influence business health and growth. Hint: this ensures that investments in AI actually translate into a better bottom line!?
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From Data-Centric to Outcome-Centric: The Heart of DI?
Traditional AI systems in manufacturing have been data-centric, focused on the acquisition, processing, and interpretation of data. The goal has been to identify patterns and anomalies, monitor trends, and automate repetitive tasks. However, this approach often falls short when it comes to translating these insights into tangible business outcomes, especially for more strategic decisions.?
Decision Intelligence changes the game by anchoring every model, data set, and resulting insight to a desired business outcome. It places the emphasis on the strategic objectives of a manufacturing operation - be it cost reduction, efficiency improvement, or product quality enhancement - and then works backward to determine the data and AI tools and methods required to achieve these outcomes.?
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"Ultimately, the value of your company is just the sum of decisions made and executed. The ability to make faster, more consistent, more adaptable and higher-quality decisions at scale defines the performance of your entire business."
Dr. Dominik Dellerman
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DI in Context?
In a manufacturing context, an outcome-centric approach through DI means decisions are not just reactive responses to data patterns but proactive steps towards predefined goals. This approach is vital for a multitude of reasons:?
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Making it Happen?
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Conclusion?
As the AI hype cycle reaches fever pitch, it is critical that manufacturing leaders adopt an outcome-centric approach implementation. This DI approach ensures that AI investments translate into better decisions, rapid technology adoption by business users, and a healthier bottom line. As the sheer volume of data to harness and process grows, the ability to separate the signal from the noise and pinpoint specific data for decision support is paramount. This not only reduces the cost of data management and processing, but also expedites speed-to-value across the organization.?
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Get Started?
Contact an Expert today to discuss how decision intelligence can support your AI transformation goals in 2024.?
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About the Author?
Chris Andrassy ?is an entrepreneur and managing partner at?Astral Insights , focused on transforming data into sustainable business value on a global scale. He began his career at?PwC?in New York City, supporting the digital transformation of mature organizations struggling to innovate in a hyper-competitive world. After experiencing the limitations of traditional analytics practices, he decided to begin a new chapter alongside colleagues and industry veterans. His departure from New York marked the inception of Astral Insights, a Raleigh-based AI & analytics solutions firm helping mid-market and enterprise clients transform data into profit. Chris is also an investor focused on innovative technologies including synthetic biology, sustainable energy, and artificial intelligence. Outside of work, he is an avid musician, skier, traveler, and fitness enthusiast.?