Chicago, March 20, 2023 (GLOBE NEWSWIRE) -- Digital Technologies have advanced more rapidly than any innovation. Digital transformation is all about using technology to achieve goals, and technologies such as AI/ML, IoT, 5G, Blockchain, Digital Twin, Additive Manufacturing, Robotics, Connected Systems etc. are at the core of accelerating this shift. The shift towards digitalization across industries is accelerating the adoption of the above enabling technologies, with AI at the forefront of the digital transformation. Let’s evaluate the application of AI across the manufacturing value chain, how companies should implement AI technologies during their digital transformation journey, and the impact of AI on business stakeholders (employees, vendors, and customers).

The figure below depicts the implementation of AI across the manufacturing industry value chain, including R&D phase, Designing and Engineering, Procurement, Production and Planning, Manufacturing, Logistics and Distribution, and Customer Services.

IMPLEMENTATION OF AI ACROSS THE MANUFACTURING INDUSTRY VALUE CHAIN

Source: MarketsandMarkets

For companies planning to embrace digitalization in manufacturing facilities, implementing AI across their sales and customer service business process would be a good starting point. This is because it mostly requires software integration and does not require high capital expenditure. AI software and platform could help the company analyze customer data, predict buying patterns, and provide personalized recommendations. This information can be used to adjust sales strategies, improve sales performance, and provide better customer service.

Secondly, the company should focus on implementing AI in the supply chain process. This will require the integration of AI-enabled Hardware, software, and analytics tools. AI can help manufacturers optimize inventory levels, manage shipping and logistics, and improve demand forecasting accuracy. The below figure depicts the step-by-step implementation of AI technology across the critical business processes/use cases in the manufacturing sector.

STEP-BY-STEP IMPLEMENTATION OF AI TECHNOLOGY ACROSS THE KEY BUSINESS PROCESS/USE CASES

Source: MarketsandMarkets analysis

It has been observed that predictive maintenance, quality control, and supply chain management are the top three use cases where the majority of the companies across the sectors have implemented AI solutions with a penetration are of 20%-30%. However, if the company needs to benefit from AI implementation, they should first focus on integrating AI across sales and customer services.

Now another question that arises for the companies is: what will be the impact of AI on different stakeholders (employees, vendors, and customers) and across the business functions (IT, HR, and Finance). Let’s analyze the impact of AI on:

Employees

Vendors

Customers

IT

HR

Finance

Conclusion

In conclusion, the implementation of AI for digital transformation in the manufacturing sector has the potential to revolutionize the industry. AI-powered technologies such as predictive maintenance, quality control, and supply chain management can help manufacturers streamline their operations, reduce costs, and improve efficiency. Furthermore, AI can help manufacturers respond quickly to changing market conditions and customer demands, improving their overall competitiveness. However, implementing AI in manufacturing requires careful planning and a significant investment of time and resources. Manufacturers must also consider the ethical implications of AI, such as data privacy and job displacement. Overall, with proper planning and implementation, AI can provide significant benefits to the manufacturing sector, transforming the industry for years to come.

Related Research Projects/Topics

AI in Manufacturing

Smart Manufacturing

Digital Twin

Industry 4.0

Industrial IoT