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Manufacturing is at an inflection point. Increasing demand for more sustainable practices while maintaining productivity, quality and profitability pushes manufacturers to be more creative in solving their top challenges. Emerging technologies like AI are becoming a preferred choice. In fact, according to a recent report by MarketsandMarkets, the global AI in manufacturing market is projected to increase at a compound annual growth rate (CAGR) of 45.6% until 2028, reaching $20.8 billion.

However, adopting AI is not without its challenges. I have seen these challenges firsthand through the eyes of an entrepreneur with multiple successful startups and currently as the CEO of ProcessMiner, a leading provider of AI-driven solutions for manufacturing. If you’re looking to navigate the complexities of AI adoption, this article will help guide you through the benefits and challenges, providing practical strategies to help you evaluate and integrate AI into your manufacturing strategy effectively.

Challenges Manufacturers Face In Adopting Advanced Technologies

Based on my experience working with corporate and plant managers, I am confident that few would argue against the potential benefits of advanced technologies—including, but not limited to, increased operational efficiency, enhanced product quality, reduced downtime and more efficient use of raw materials. With that said, why have so many industries been slow to embrace a technology-driven transformation?

This sluggishness can be attributed to several factors, establishing a dichotomy between risk and opportunity:

  • High initial costs: One of the primary barriers to adoption is the upfront implementation cost. Implementing new technologies often requires investment in equipment and restructuring existing processes and systems. These costs can be prohibitive for many manufacturers, particularly small- to medium-sized enterprises.
  • Complex integration: Manufacturing facilities often operate with a blend of old and new technologies. Integrating decades-old equipment with new technologies such as IoT devices, sensors, robotics, edge computing and AI is not always straightforward. Implementations can involve significant challenges in terms of compatibility and disruption to existing operations.
  • Skill gap: According to a report from Deloitte and The Manufacturing Institute, as of 2021, the manufacturing industry is expected to face a shortfall of 2.1 million skilled jobs by 2030. This gap is largely due to the rapidly advancing technology outpacing the current workforce’s technical skills and technology literacy. Addressing this challenge involves training existing employees and attracting new talent equipped with the necessary modern skills, which can be a slow and costly process.
  • Data challenges: Effective solutions often require large volumes of high-quality data. Many companies struggle with collecting, storing and analyzing data due to outdated systems or a lack of integrated data management strategies.
  • Cultural resistance: Long-established manufacturing operations often experience cultural inertia. Fear of the unknown, skepticism about the benefits, general resistance to change and impact on job security all play a role in slower-pace adoption.
  • Regulatory and compliance issues: Manufacturers must also navigate a complex landscape of regulations and compliance requirements, which can be daunting when considering integrating systems that continuously learn and evolve.

Getting Started With Smart Technology In Manufacturing

One of the biggest challenges driving a technological innovation strategy is deciding where to begin. I have personally seen the “Where should we start?” question derail technology strategy efforts in both small local companies and large global enterprises. While the actual answer is “it depends,” and strategies must be tailored to an organization’s unique processes and capabilities, the following are proven steps you should consider:

  • Assess your data: Ensure your data is clean, accurate and consistently collected. This foundational step is critical for a successful AI implementation.
  • Set clear objectives: Define specific goals such as enhancing product quality or operational efficiency. Clear goals are crucial for measuring the success of technology projects.
  • Think big, start small: Begin with a manageable project that allows for quick adjustments. This approach helps mitigate risks and builds a case for wider implementation.
  • Collaborate with experts: Partner with tech providers who integrate your team’s domain expertise into their solutions, ensuring technology complements existing processes.
  • Empower your team: Educate your employees about new technologies’ personal and professional benefits to garner support and facilitate smoother adoption.

Focusing on these steps can lay a strong foundation for integrating advanced technologies into your manufacturing processes, ensuring a strategic approach aligned with your business objectives. This preparation and initial implementation phase are critical to overcoming typical adoption barriers and achieving long-term success.

Overcoming Slow Adoption

Understanding to what degree the above challenges play in your specific organization is the first step to addressing them. Organizations must develop a clear vision for how technology can improve operations and align with their overall business strategy. In other words, it needs to be a strategic approach. The following is a blueprint we typically propose our clients follow to accelerate AI integration:

  • Phased implementation: Implement AI in phases with minimal impact on existing infrastructure to allow gradual integration, foster incremental successes and reduce risk.
  • Focus on education and training: Invest in training to bridge the skill gap and foster cultural adoption, emphasizing the personal benefits new technology brings to employees.
  • Leverage government and industry grants: Utilize grants from government and industry bodies designed to modernize manufacturing, particularly for sustainability-focused projects.
  • Partner with AI specialists: Work with AI technology firms that understand manufacturing’s unique needs and are committed to sharing the risks of new projects.
  • Prioritize data management: Develop a robust data management strategy, possibly involving infrastructure upgrades or new tools for better data handling and analysis.
  • Monitor and measure progress: Regularly monitor and evaluate the impact of new technology using key performance metrics, adjusting strategies based on feedback to optimize outcomes.
  • Build a case with ROI projections: Use detailed ROI projections to demonstrate potential benefits and secure stakeholder support at all levels.
  • Minimize the need for capital expenditure: Embrace cloud-based solutions and SaaS to reduce upfront costs and lower financial risks during early adoption stages.

By tackling these barriers head-on, manufacturers can better position themselves to harness the benefits of AI, leading to enhanced efficiency, reduced costs, and a stronger competitive edge in the market.

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This article was written by Karim Pourak from Forbes and was legally licensed through the DiveMarketplace by Industry Dive. Please direct all licensing questions to legal@industrydive.com.

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