Business-centric AI: A New Perspective for Your Company

Business, Model, and Data centric AI

Coping with the challenge of integrating AI into your business? You’re not alone. Many companies struggle to find the right approach to AI, often getting lost in technical details or data management issues. However, there’s a solution that transcends these common pitfalls: Business-centric AI. This transformative strategy is the perfect way to align your core business values and goals with AI.

In this article, we’ll explore the benefits of employing a business-centric AI strategy and compare it to other approaches like model-centric AI and data-centric AI.

Business-centric AI Explained

Business-centric AI should be the industry standard when embracing AI in any company. Think of it like starting a new department that needs the right information to perform well and, in return, deliver impactful outputs. 

This method is about fitting AI into your business pipeline, business processes, and company culture. This approach involves asking key questions such as, ‘How can AI help me fulfill my mission?’ or ‘Can I adjust how I make a certain decision based on the new opportunities AI provides?’

By embracing this approach, your entire organization shifts towards a mindset where AI is not just an add-on but a driving force for continuous improvement and innovation across all business facets.

FREE eBook: How to transform your business with AI

Download our eBook and discover the most common pitfalls when implementing AI projects and how to prevent them.

Send me the eBook

Model-centric AI Explained

Model-centric AI is a common approach in academia and machine learning courses, with a strong focus on the modeling component. This approach assumes that the data is already prepared and doesn’t require much change. The central part is creating and fine-tuning the AI model. 

You can identify someone with a model-centric perspective when they ask questions like, “Is this a classification model?” or “Should I use a neural network or a decision tree?

Data-centric AI Explained

Data-centric AI focuses on improving the quality of the data used by AI models. When trying to fix or improve a predictive problem, the focus isn’t on having a better model but a better dataset to feed the model. 

This means ensuring the data is accurate, clean, and comprehensive, possibly by adding more detailed data or looking at different data sources. The increase in performance you can gain from having better data outweighs the marginal increase you can get from changing the model.

Why Choose Business-Centric AI Over Model-centric AI and Data-centric AI

Opting for business-centric AI over model-centric or data-centric approaches offers a more holistic integration of AI into your company’s fabric. This approach ensures that AI becomes a key driver of business goals, whether enhancing customer experience, boosting efficiency, or fostering innovation. 

Business-centric AI delivers more sustainable and impactful results, making it a comprehensive choice for companies looking to fully leverage AI capabilities. 

Conclusion

In conclusion, while model-centric and data-centric AI have their place, the business-centric approach will revolutionize your company’s AI integration. Remember, the future of AI is business-centric. Embrace this strategy and unlock AI’s full potential in your company’s growth. 

For a more in-depth exploration of how to harness the transformative power of AI in your business, check out our e-book, “How to Transform your Business with AI.” This comprehensive guide provides practical insights to help you navigate and implement AI effectively. Download your copy today for free and begin your journey towards a smarter, AI-driven future for your business.

Like this story?

Subscribe to Our Newsletter

Special offers, latest news and quality content in your inbox once per month.

Signup single post

Consent(Required)
This field is for validation purposes and should be left unchanged.

Recommended Articles

Article
Can Your Business Optimize AI Predictive Models?

Predictive models are transforming the AI landscape. They can forecast future events, identify past occurrences, and even predict present situations. However, building a successful predictive model is not as simple as it seems. To achieve an effective predictive model, you need to consider three crucial moments: the prediction time, the prediction window, and the data […]

Read More
Article
Is Your Business Ready for Generative AI Risks?

Generative AI is a powerful tool that many companies are rushing to incorporate into their operations. However, it’s crucial to understand the possible risks associated with this technology. In this article, we’ll discuss the top nine risks that could impact your business’s readiness for AI integration. Stay ahead of the curve, and make sure you’re […]

Read More
Article
Can the STAR Framework Streamline Your AI Projects?

As a manager dealing with AI projects, you may often find yourself overwhelmed. The constant addition of promising projects to the backlog can lead to a mounting technical debt within your team, forcing you to neglect the core aspects of your business. Here at NILG.AI, we have a solution for this challenge: the STAR framework. […]

Read More