AI in Industrial Design Market to Hit USD 38.3 billion by 2033

Yogesh Shinde
Yogesh Shinde

Updated · Jul 19, 2024

SHARE:

Market.us Scoop, we strive to bring you the most accurate and up-to-date information by utilizing a variety of resources, including paid and free sources, primary research, and phone interviews. Learn more.
close
Advertiser Disclosure

At Market.us Scoop, we strive to bring you the most accurate and up-to-date information by utilizing a variety of resources, including paid and free sources, primary research, and phone interviews. Our data is available to the public free of charge, and we encourage you to use it to inform your personal or business decisions. If you choose to republish our data on your own website, we simply ask that you provide a proper citation or link back to the respective page on Market.us Scoop. We appreciate your support and look forward to continuing to provide valuable insights for our audience.

Introduction

According to Market.us, The Global AI in Industrial Design Market is projected to experience substantial growth over the forecast period from 2024 to 2033. The market size is expected to increase from USD 3.7 billion in 2023 to approximately USD 38.3 billion by 2033, with a compound annual growth rate (CAGR) of 26.2%.

The AI in Industrial Design market is experiencing significant growth due to several factors. First, the integration of AI technologies in industrial design processes enhances efficiency and innovation, allowing designers to create smarter and more complex products with improved functionalities. AI tools help in automating routine tasks, predicting design outcomes, and providing deeper insights through data analysis, which in turn speeds up the design process and reduces costs.

However, this market also faces challenges, such as the high initial investment required for implementing AI solutions and the need for skilled professionals who can effectively merge AI with design principles. There’s also a continuous requirement for updating these AI systems to keep up with the latest technologies, which can be both costly and time-consuming. Furthermore, AI offers opportunities for design customization and personalization. By leveraging AI algorithms, designers can create products that are tailored to individual needs and preferences. This level of customization can lead to increased customer satisfaction and loyalty.

AI in Industrial Design Market

Key Takeaways

  • The AI in Industrial Design market is projected to reach USD 38.3 Billion by 2033, demonstrating a robust CAGR of 26.2% throughout the forecast period.
  • In 2023, the Software segment dominated the AI in Industrial Design market, securing over 72.7% of the market share.
  • The Cloud-Based segment also held a commanding position in 2023, capturing more than 67.6% of the market share.
  • Additionally, the Automotive segment was a key player in 2023, accounting for over 33.7% of the market share.
  • Leading the market in 2023, the Asia-Pacific region achieved a substantial share exceeding 34.7%, driven by the presence of major technology firms and significant investments in research and development.

AI in Industrial Design Statistics

  • The Artificial Intelligence Market is projected to reach approximately USD 2,745 billion by 2032, up from USD 177 billion in 2023, exhibiting a robust CAGR of 36.8% over the forecast period from 2024 to 2033.
  • Similarly, the Industrial Design Market is expected to grow from USD 48.72 billion in 2023 to around USD 77.86 billion by 2033, with a CAGR of 4.8% during the forecast period from 2024 to 2033.
  • Around 30% of industrial companies are either evaluating or already integrating AI as part of their digital transformation efforts. AI in manufacturing is forecasted to grow significantly, reaching approximately USD 17 billion by 2025. By the same year, revenue from AI software in industrial applications is expected to climb to USD 10.4 billion.
  • The global manufacturing industry is anticipated to have 28% AI adoption by 2025. AI is predicted to boost productivity in the industrial sector by up to 20%. Furthermore, the application of industrial AI could lead to annual savings of USD 500 billion for manufacturers through predictive maintenance.
  • In addition, 40% of manufacturing firms plan to implement AI-driven process automation within the next five years, and by 2024, 50% of manufacturing supply chains are projected to have invested in AI. By 2030, AI in the industrial sector is expected to contribute a staggering USD 15.7 trillion to global economic growth.
  • Lastly, 92% of senior manufacturing executives believe that the advent of Smart Factories will enhance productivity and improve supply chain satisfaction.

Benefits of AI Implementation in Industrial Design

  • Enhanced Efficiency: AI can automate routine and repetitive tasks in the design process, such as drafting and basic modeling. This automation speeds up the design process, allowing designers to focus more on creative and complex tasks.
  • Improved Accuracy: AI technologies can analyze vast amounts of data to predict potential design flaws and suggest improvements. This leads to higher accuracy in designs, reducing the time and cost associated with revisions and error corrections.
  • Customization at Scale: AI enables the customization of products to individual preferences without significantly increasing production costs. This is particularly valuable in industries like automotive and consumer electronics, where customers increasingly expect products tailored to their specific needs.
  • Sustainability: AI can help in designing more sustainable products by optimizing material use and reducing waste. It can also simulate how a product will perform over its lifecycle, aiding in the creation of designs that minimize environmental impact.
  • Innovation and Creativity: By handling routine aspects of design, AI frees up designers to focus on innovation and creativity. AI can also suggest unconventional and novel design alternatives by combining elements in new ways, pushing the boundaries of traditional design practices.

Emerging Trends

  • Extended Reality (XR) Integration: Extended Reality is revolutionizing industrial design by enhancing the visualization and engagement with 3D models during the design process. This trend is expanding its application from just marketing to becoming a vital tool in the prototyping stages, providing a dynamic and efficient approach to product development​​.
  • AI-Driven Automation and Efficiency: AI is significantly improving design processes by automating tasks such as typography selection and enhancing creativity through generative design. This leads to faster iteration and exploration of design possibilities, reshaping how products are designed and reducing time-to-market​​.
  • Biophilic Design: Incorporating natural elements into design to enhance user well-being and connection to nature. This trend is becoming popular in creating more sustainable and user-friendly spaces, reflecting a growing consumer desire for eco-friendly and health-enhancing products​​.
  • Personalized User Experiences: AI algorithms are enabling the creation of customized designs that adapt to individual user preferences, significantly enhancing customer satisfaction and loyalty. This trend is visible across various sectors including retail and consumer electronics, where products and interfaces are tailored to individual needs​.
  • AI-enhanced Realism and Consistency: The application of AI is improving the consistency and quality of character designs in digital media, ensuring uniformity across various platforms and media. This is critical in maintaining brand and design integrity, especially in graphic design and character modeling​​.

Top Use Cases of AI in Industrial Design

  • Automotive Design: AI is increasingly used in automotive design to streamline processes, from drafting and modeling to simulation and testing, enhancing both the efficiency and creativity of automotive engineers and designers​​.
  • Interior and Architectural Design: AI tools are being utilized to simulate and visualize architectural and interior designs, allowing for more precise planning and customer engagement through virtual walkthroughs​​.
  • Product Design: AI’s generative capabilities are enabling designers to rapidly prototype and iterate on product designs, often with improved functionality and aesthetics. This includes everything from everyday consumer goods to high-tech devices.
  • Graphic Design: AI is transforming graphic design by automating routine tasks and enabling more complex and creative work, such as logo creation and brand visual identity development.
  • Healthcare and Therapeutic Design: In healthcare, AI is used to design tools and devices tailored to individual patient needs, as well as therapeutic environments that enhance patient care and treatment outcomes.

Major Challenges

  • Talent and Skill Deficits: There’s a notable lack of skilled professionals capable of effectively utilizing AI in industrial design, which hinders the broader adoption and scaling of AI technologies​.
  • Data Management: Many organizations struggle with inadequate data quality, integration, and governance, which complicates the development and implementation of AI-driven solutions​​.
  • Integration with Existing Systems: Compatibility issues between AI technologies and existing manufacturing systems present significant hurdles in deploying AI solutions effectively​.
  • Ethical and Transparency Concerns: AI systems often lack transparency, making it difficult for users to understand how decisions are made. This opacity can lead to mistrust and ethical concerns, particularly regarding accountability and bias​​.
  • High Expectations and Unrealistic Promises: There’s a tendency to set high expectations for AI’s capabilities, which can lead to disappointment when the technology fails to deliver as anticipated or is more complex than expected​​.

Market Opportunities

  • Speed and Efficiency in Design Processes: AI significantly reduces the time required for the design cycles, enhancing speed and efficiency in bringing products from concept to market​​.
  • Sustainable and Inclusive Design: AI enables the development of more sustainable and accessible products by incorporating principles of sustainable consumption and inclusive design early in the product development process​​.
  • Advanced Customization and Personalization: AI’s ability to handle complex data sets allows for deeper customization and personalization of designs, meeting specific customer needs more effectively​​.
  • Enhanced Creativity and Innovation: AI facilitates more innovative design processes by leveraging computational design and metamaterials to push the boundaries of what’s possible in industrial design​.
  • Operational and Production Efficiency: AI applications in industrial design extend to improving operational efficiency, enhancing product quality, and reducing waste, thus leading to cost savings and better resource utilization​​.

Recent Developments

Autodesk Inc.

  1. AI for Design and Make Platform (November 2023): Autodesk launched new AI capabilities in its Design and Make Platform. This includes tools for automating project documentation and drawings, and AI-powered CNC toolpath creation, which significantly reduces programming time. Additionally, Autodesk introduced AI-enhanced capabilities for Revit, Civil 3D, and AutoCAD to assist designers with instant feedback and support within the products.
  2. Acquisition of Blank.AI (2023): Autodesk acquired Blank.AI, a generative AI technology that augments the work of industrial designers by pulling from their historical library of design work and using AI to generate new concepts. This technology is set to debut in their Automotive Design Studio​​.

Dassault Systèmes SE

  • AI-Driven Generative Design (2023): Dassault Systèmes enhanced its 3DEXPERIENCE platform with AI-driven generative design tools. These tools help designers explore a wide range of design alternatives quickly and efficiently, optimizing for various constraints such as weight, strength, and materials​​.

Siemens AG

  • AI Integration in NX Software (2023): Siemens integrated AI capabilities into its NX software, enhancing generative design and simulation tools. This integration allows for more efficient design processes by automating routine tasks and providing intelligent design recommendations​​.

NVIDIA Corporation

  • AI-Powered Omniverse Platform (2023): NVIDIA expanded its Omniverse platform with new AI tools to aid in industrial design. These tools facilitate real-time collaboration and simulation, allowing designers to create and iterate on designs more efficiently​​.

PTC Inc.

  • Creo Generative Design Extension (2023): PTC introduced a generative design extension in its Creo software. This AI-powered extension helps designers generate optimized designs that meet specific criteria, such as minimizing material usage while maintaining structural integrity​.

Ansys Inc.

  • AI-Powered Simulation Tools (2023): Ansys launched new AI-driven simulation tools that enhance the accuracy and speed of complex simulations. These tools leverage machine learning algorithms to predict and optimize design performance​​.

Hexagon AB

  • AI-Enhanced Manufacturing Intelligence (2023): Hexagon integrated AI into its manufacturing intelligence solutions, providing predictive analytics and optimization tools for industrial design and production processes​​.

Altair Engineering Inc.

  • AI-Driven Design Optimization (2023): Altair introduced AI-driven design optimization features in its HyperWorks platform, enabling designers to explore a vast array of design possibilities and select the most efficient solutions​​.

Bentley Systems Incorporated

  • AI in Infrastructure Design (2023): Bentley Systems incorporated AI into its infrastructure design tools, enhancing the ability to predict project outcomes and optimize designs for performance and sustainability​​.

MathWorks

  • AI-Powered MATLAB Updates (2023): MathWorks updated MATLAB with new AI capabilities, allowing engineers to automate complex design and analysis tasks, thereby improving efficiency and accuracy in industrial design.

Conclusion

The AI in Industrial Design market is poised at the intersection of technology and creativity, offering transformative possibilities for the industry. Despite facing challenges such as skill gaps, data management issues, and integration complexities, the sector stands to gain immensely from AI’s ability to streamline design processes, enhance customization, and foster innovation. As the industry moves forward, focusing on ethical AI use and managing expectations will be crucial in fully realizing AI’s potential in industrial design. Embracing these technologies can lead to significant advancements in how products are designed and produced, meeting modern-day demands for efficiency and sustainability.

Discuss your needs with our analyst

Please share your requirements with more details so our analyst can check if they can solve your problem(s)

SHARE:
Yogesh Shinde

Yogesh Shinde

Yogesh Shinde is a passionate writer, researcher, and content creator with a keen interest in technology, innovation and industry research. With a background in computer engineering and years of experience in the tech industry. He is committed to delivering accurate and well-researched articles that resonate with readers and provide valuable insights. When not writing, I enjoy reading and can often be found exploring new teaching methods and strategies.

Latest from the featured industries
Request a Sample Report
We'll get back to you as quickly as possible