Skip to content

09 Oct 2025

T Dao

09 Oct 2025

Gain more insights from NTQ.

Global manufacturers have long been integrating new technologies to maximize efficiency in mass production, meeting the growing demand for large quantities of high-quality products to supply the industries. The entrance of AI technology has shaken the manufacturing industry by offering greater power of automation, from gathering & analyzing data to conducting repeatable processes with accuracy & accelerated speed, as well as automatically alerting device status and scheduling maintenance. 

However, many factories still rely on legacy manufacturing systems – aging software, dated machinery controls, and siloed processes built decades ago. These legacy setups have long been the backbone of operations, but they are increasingly a roadblock in the era of AI in Manufacturing. In this article, we will cover: 

  • The common obstacles of legacy systems.
  • Why proactive AI adoption matters.
  • A practical roadmap to integrate AI solutions for legacy systems effectively.

Obstacles To Transforming into an AI-Ready System

Adopting AI in manufacturing is not as simple as installing new software on old infrastructure. Legacy systems present several common obstacles that hinder AI transformation:

  • Incompatibility & Integration Issues: In most cases, legacy manufacturing systems were never designed to work with modern AI technologies or large data workloads. They often have rigid, monolithic architectures and outdated interfaces that can’t readily integrate with new AI tools or IoT devices.
  • Data Silos and Poor Data Quality: Data is the fuel of AI, but many legacy environments have fragmented and siloed data. Different departments or machines each store data in incompatible formats (or even on paper), preventing a unified view. As a result, companies struggle with inconsistent, low-quality data that undermines AI accuracy.
  • Limited Scalability and Flexibility: Legacy manufacturing software often struggles to scale up or adapt to new requirements. They might handle a single production line well but falter when asked to incorporate new processes, additional lines, or advanced analytics.
  • High Costs & Disruption Fears: Moving away from legacy systems can seem daunting and expensive. Legacy systems create a false illusion of cost-saving – they appear cheaper since they’re already in place, but they “quietly drain resources” through inefficiencies and increasing difficulty adapting to market changes. In short, sticking with legacy is often the slowest, most expensive way to fall behind.
  • Workforce Skills Gap & Culture Resistance: According to the World Economic Forum, about 40% of the core skills in the manufacturing and supply chain sectors will change in the next 3-5 years and, as a result, more than 54% of incumbent workers will need additional training by 2030. This upskilling requirement can be a hurdle if companies are not prepared to retrain staff.
  • Security and Compliance Risks: Many legacy systems also have outdated security measures and are not equipped to handle modern cybersecurity threats. Older software might not receive security patches and can become a weak link, exposing the factory to breaches or ransomware. In manufacturing, a cyber attack can halt production or compromise product safety. 

In summary, legacy systems pose technical, data, cost, workforce, and security challenges that collectively slow down AI adoption in manufacturing. It’s no surprise that in a recent global survey of 500 manufacturers by NTT Data, 92% acknowledged that outdated legacy technologies hinder their AI initiatives. Knowing these obstacles is the first step; the next is understanding why overcoming them is worthwhile.

Why Manufacturers Should Embrace AI Proactively

Despite the challenges above, forward-thinking manufacturers are opening their minds (and factories) to AI – and reaping significant rewards. The case for proactively embracing AI in manufacturing is compelling, backed by real-world results and data:

  • Proven Gains in Efficiency and Cost Reduction: AI technologies have demonstrated the ability to streamline production and reduce waste, including automating route tasks, minimizing idle machine time, and optimizing schedules. Statistics from US National Association of Manufacturers (NAM) indicate that 72% of surveyed manufacturers report reduced costs and improved operational efficiency after deploying AI. 
  • Improved Visibility, Quality, and Decision-Making: According to the same NAM survey, 51% of manufacturers reported improved operational visibility and responsiveness after implementing AI. This transparency means issues can be detected and addressed sooner. Quality control also benefits – AI vision systems and predictive models catch defects or maintenance issues early, improving product quality. In automotive manufacturing. 
  • Reduced Downtime and Maintenance Costs: Studies from Deloitte show that companies adopting predictive maintenance can reduce machine breakdowns by up to 70% and lower maintenance costs by 25%. By monitoring machine sensor data and learning patterns, AI algorithms forecast when a part is likely to fail and alert teams to service it beforehand. This prevents unplanned downtime, which is a major source of lost production in legacy-run facilities. 
  • Supply Chain Optimization and Agility: AI is enabling smarter supply chain and inventory management, which is crucial for modern production. AI-driven forecasting and planning can improve supply chain efficiency, leading to faster response times and inventory reductions. AI can analyze thousands of variables (supplier data, logistics, weather, market trends) far faster than any manual process, enabling proactive adjustments. NTT Data’s global survey revealed 95% of manufacturers believe AI is improving efficiency and bottom-line performance, especially in supply chain management.
  • Staying Competitive in a Rapidly Evolving Market: AI might potentially help manufacturers produce at lower cost, adapt quickly, and offer higher quality – capturing market share. As of 2025, an overwhelming majority of manufacturers have at least begun their AI journey. It’s telling that more than 80% of manufacturers said they plan to increase AI use in the next two years. The train is leaving the station – proactive adoption ensures you’re on it, rather than playing a costly game of catch-up later.

In fact, AI has already amplified the efficiency values across various stages of the process. According to McKinsey & Company’s recent publication, AI has contributed a significant improvement across various tasks, with 10-20% inventory decrease in supply chain planning, 40-140% throughput increase in process optimization, and 30-40% increase in first pass yield during quality & testing phase. 

Leading enterprises & giants maximize impact through this change. For example, Unilever has automated inventory replenishments using a model trained on data such as previous-day sales/orders, stock target, capacity constraint, and regulated product material availability. Aramco predicts the remaining useful life of reactors through analysis of more than 140,000 data points per reactor to minimize corrosion and optimize maintenance.

McKinsey’s demonstration of AI efficiency across different stages of manufacturing process

In summary, embracing AI in manufacturing leads to higher efficiency, better quality, less downtime, and greater agility, all of which improve profitability. It also future-proofs the business in a technology-driven era. The data and success stories make a strong case that the sooner manufacturers adopt AI (and address their legacy hurdles), the better positioned they will be.

Roadmap for Integrating AI into Legacy Systems

Recommended Roadmap

Knowing the why is important – now we turn to the how. Transforming a legacy-laden factory into an AI-powered smart manufacturer is a journey. It doesn’t happen overnight, and it doesn’t necessarily require throwing out all old equipment at once. Here is a practical roadmap to adopt AI solutions for legacy systems in a way that is effective and minimizes risk:

  1. Assess Infrastructure & Data Readiness
  • Audit legacy applications, machines, and data silos. 
  • Identify gaps in data quality, consistency, and volume. 
  • Invest in data cleaning or integration (e.g., consolidating databases, digitizing records). 
  • Strong, reliable data is the foundation for every AI in Manufacturing project. 
  1. Establish a Unified Data Infrastructure
  • Create a central platform or data lake to aggregate information. 
  • Use IoT gateways to capture data from legacy equipment. 
  • Adopt metadata standards and strong governance. 
  • Ensure AI models access high-quality, consistent data – the “single source of truth.” 
  1. Start with Small, High-Impact Pilots
  • Focus on clear, valuable use cases: defect detection, predictive maintenance, and demand forecasting. 
  • Keep the scope narrow to prove ROI quickly. 
  • Integrate AI tools into existing workflows (e.g., AI camera stations, scheduling models). 
  • Use results to build internal buy-in and momentum for broader adoption. 
  1. Modular Integration – Wrap Legacy Systems
  • Apply APIs, middleware, or microservices instead of replacing systems entirely. 
  • Deploy edge devices to process data locally on legacy machines. 
  • This incremental approach reduces risk, allowing AI functionality to grow step by step. 
  1. Build Scalable, Cloud-Ready Infrastructure
  • Upgrade systems that limit AI performance. 
  • Use cloud or hybrid setups for scalability in processing and storage. 
  • Strengthen connectivity (industrial Ethernet, 5G) for real-time operations. 
  • Plan ahead so successful pilots can be scaled factory-wide. 
  1. Upskill Workforce & Manage Change
  • Train engineers and operators in data analysis, AI oversight, and digital tools. 
  • Position AI as a tool to augment workers, not replace them. 
  • Establish internal champions and build a culture of openness to technology. 
  1. Collaborate with the Right Partners
  • Work with providers specializing in AI Manufacturing solutions. 
  • Leverage proven frameworks for retrofitting legacy systems. 
  • Choose partners experienced in manufacturing and phased digital adoption. 
  1. Iterate and Scale
  • Expand pilots to multiple lines or sites once the value is proven. 
  • Track KPIs like downtime reduction, yield improvements, and cost savings. 
  • Gradually replace outdated systems with IoT-enabled infrastructure. 
  • Maintain a long-term roadmap: vision inspection → predictive maintenance → AI scheduling, and beyond.

Conclusion

The pathway from legacy systems to an AI-driven, smart manufacturing operation is certainly challenging, but it is a journey worth embarking on for any manufacturer that aims to remain competitive in the modern era. Legacy systems may feel comfortable, yet as we’ve seen, they carry hidden costs and limitations that hold factories back

On the other hand, adopting AI in manufacturing unlocks new levels of efficiency, quality, and agility that simply weren’t possible before. The key is to approach this transformation proactively and strategically – address the known obstacles (technical, data, cost, and people issues) with careful planning and incremental improvements. Many manufacturers have already proven that even with legacy environments, it’s possible to integrate AI and achieve impressive results, from double-digit efficiency gains to drastic reductions in downtime

By following a clear roadmap and fostering a culture open to innovation, factories can modernize legacy manufacturing systems into intelligent systems. The end result is not just a tech upgrade, but a more resilient and competitive business. In the coming years, AI for smart manufacturing will increasingly separate industry leaders from laggards. The question for factory owners and manufacturing CEOs is no longer if AI should be adopted, but how soon and how smartly it can be done. Those who start the transformation now – learning, iterating, and improving – will pave the way and set the pace in the new era of intelligent manufacturing.

Tag: AI in Manufacturing; Artificial Intelligence; Legacy Manufacturing System; Legacy System; Manufacturing

Gain more insights from NTQ.