Vatsal Shah
Co-Founder + CEO
This article, provided as a contribution to Forbes, features original content from Forbes by Vatsal Shah, CEO and Co-founder at Litmus.
Industrial AI refers to the application of artificial intelligence technologies in the industrial sector, aimed at enhancing efficiency, productivity, and performance.
Artificial Intelligence (AI) has ceased to be just a buzzword and has substantially altered various industries across the globe. In the realm of manufacturing, the impact is profoundly transformative. Did you know that by incorporating Industrial AI, some manufacturers have reported a decrease in production costs by up to 20%?
Industrial AI refers to the application of artificial intelligence technologies in the industrial sector, aimed at enhancing efficiency, productivity, and performance. This post will guide you through the essence of Industrial AI, exploring its components, applications, benefits, challenges, and its potential future in industry reshaping.
Talk to an expert to see how you can use Industrial AI to transform your operations.
At its core, Artificial Intelligence is a branch of computer science involved in creating machines capable of performing tasks that would typically require human intelligence. These tasks include learning, reasoning, problem-solving, perception, language understanding, and more. AI systems are powered by algorithms, fueled by data, and improved through learning.
The evolution of AI in the industrial sector dates back to the mid-20th century but has gained significant traction over the past few decades due to advancements in machine learning, data processing capabilities, and connectivity. Initially used for automating simple tasks, AI's role has progressively advanced to include complex process optimizations and real-time decision making, giving rise to what we now term as Industrial AI.
Machine Learning (ML), a subset of AI, involves algorithms that parse data, learn from that data, and then apply what they have learned to make informed decisions. In an industrial setting, ML algorithms are typically trained on historical data to identify patterns and predict outcomes. For instance, they can predict when a piece of equipment is likely to fail, enabling proactive maintenance.
Industrial AI heavily relies on data analytics to extract meaningful insights from vast amounts of data generated in industrial operations. This component involves collecting, processing, and visualizing data to identify inefficiencies and areas for improvement in industrial processes. With advanced analytics, businesses can better understand their operations and make informed decisions that lead to optimized performance.
Perhaps the most innovative application of Industrial AI lies in the realm of collaborative automation, where it's not about supplanting human effort but augmenting it with intelligent support. For instance, AI-powered collaborative robots, or cobots, work alongside humans in assembly lines, offering adaptive assistance that evolves in real-time. These cobots can fine-tune their tasks based on immediate feedback from integrated AI systems, enhancing productivity and ensuring a seamless human-machine workflow.
Check out this playbook to scale AI in manufacturing.
Good AI needs good data – we have heard this from industry leaders every time we mentioned the transformative power of AI. However, implementing good AI presents a host of barriers that organizations must navigate to fully leverage technological advancements effectively.
The quality of data significantly impacts AI's performance. Inaccuracies or missing information, such as those arising from poorly calibrated sensors, can lead to unreliable AI predictions, especially in critical applications like predictive maintenance. High-quality, reliable data is essential for AI algorithms to accurately identify faults or maintenance needs, optimizing operational efficiency and prolonging equipment lifespan.
Ensuring consistency and completeness of data across diverse sources is a formidable challenge. Inadequate data governance practices contribute to these shortcomings, hampering AI's capability to deliver intended outcomes. A centralized approach to industrial data operations, emphasizing stringent data governance, is critical to managing this barrier.
AI systems require not just vast amounts of data but a diversity of it. A lack of diverse data sets can introduce biases into AI systems, undermining robust and equitable outcomes. Addressing this requires a holistic approach to data collection and validation that actively seeks to eliminate biases and ensure the representation of varied data points.
Without high-quality data, industrial companies face operational and strategic setbacks. These range from the efficiency of quality control processes, where AI systems identify defects or deviations, to supply chain optimization, relying on accurate data for forecasting and inventory management. Poor data quality can lead to significant losses, affecting customer satisfaction and the bottom line.
The integrity of data is not just an operational requirement but a linchpin of trust. As AI increasingly steers critical decisions in manufacturing and supply chain management, ensuring the reliability and quality of underlying data becomes paramount. This is essential for embedding responsibility and inclusivity in AI deployment, addressing the ethical and societal implications of these technologies.
With data being a central component of AI applications, securing this data while ensuring compliance with increasingly stringent regulations remains a top priority. Industries must implement robust cybersecurity measures to safeguard sensitive information from breaches and unauthorized access.
The sophisticated nature of AI technologies demands a workforce equipped with specialized skills. There is an ongoing challenge in bridging the skills gap as companies compete for talent capable of developing and managing these high-tech systems.
One of the standout applications of Industrial AI is predictive maintenance. This technique uses AI to predict equipment malfunctions and failures before they occur. Sensors installed in machinery monitor data constantly and feed it to AI systems that can detect anomalies signaling potential issues, thereby scheduling maintenance only when needed.
In quality control, Industrial AI systems can significantly enhance product quality and consistency. By using AI-powered visual recognition systems, industries are able to detect product anomalies or defects that might be imperceptible to the human eye, ensuring that only products meeting the strictest quality standards reach customers.
AI optimizes supply chain logistics by predicting market demands, thereby improving inventory management and reducing storage costs. AI systems analyze market data and consumer behavior to forecast product demands more accurately, enabling companies to optimize their production schedules and supply chain operations.
By automating and optimizing many of the routine and complex tasks, Industrial AI frees up human workers to focus on more strategic activities, thus increasing overall operational efficiency. This efficiency translates into faster production times, lower operational costs, and ultimately, higher profits.
AI-driven analytics provide deep insights into business operations, surfacing hidden patterns and dependencies that can influence strategic decisions. Armed with this data, decision-makers can predict future trends and make decisions that align more closely with predicted market developments, securing an advantage in the marketplace.
Adapting to Industrial AI not only improves efficiency and decision-making but also equips companies with the advanced capabilities necessary to outperform competitors. These capabilities can range from superior product quality to innovative products tailored to dynamic consumer preferences, maintaining a vital edge in volatile markets.
Emerging trends in Industrial AI include the integration of AI with Industrial IoT (Internet of Things) devices, the adoption of AI for environmental sustainability projects, and the increasing use of AI-powered simulation for product development. Technologies like Digital Twins, which create digital replicas of physical entities, are also gaining traction.
As Industrial AI technologies continue to evolve, their long-term impacts on the workforce and global industry landscapes are profound. We can anticipate a significant transformation in job roles and industry requirements, emphasizing the need for continuous learning and adaptation to new technologies.
Industrial AI is poised at the forefront of revolutionizing manufacturing, driven by advancements in machine learning, data analytics, and automation. It offers impressive benefits but also presents significant challenges. As industries continue to navigate its adoption, the influence of Industrial AI will undoubtedly expand, reshaping the operational landscapes of many sectors.
The expansion of AI's role in industrial settings, highlighted by the anticipated revolution in efficiency and productivity, is contingent on overcoming the barriers around data quality and governance. Focusing on improving data quality through better governance, diversity, and integrity is crucial. Moreover, adopting an outcome-focused approach that prioritizes data quality and aligns AI deployments with specific objectives can help navigate these barriers effectively. Ensuring good data quality is not merely a technical necessity in the AI era but a foundational element that underpins the operational reliability, ethical deployment, and societal acceptance of AI technologies.
Suranjeeta Choudhury
Director Product Marketing and Industry Relations
Suranjeeta Choudhury heads Product Marketing and Analysts Relations at Litmus.
Vatsal Shah
Co-Founder + CEO
This article, provided as a contribution to Forbes, features original content from Forbes by Vatsal Shah, CEO and Co-founder at Litmus.
Suranjeeta Choudhury
Director Product Marketing and Industry Relations
In the industrial sector, the advent of AI technology heralds a transformative potential like the most significant technological milestones in history. But there's an essential lesson to be drawn from the journey of Industry 4.0.
Suranjeeta Choudhury
Director Product Marketing and Industry Relations
This article aims to guide manufacturers on scaling AI use cases effectively. As the industry stands at a technological evolution's brink, understanding how to deploy and expand these technologies is crucial.