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Lam Research AI Study Identifies Game-Changing Development Approach for Speeding Up, Slashing Cost of Chip Innovation

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Lam Research Corp (Nasdaq: LRCX) has published a study in Nature highlighting the potential of integrating artificial intelligence in chip fabrication processes. As the semiconductor market is projected to approach $1 trillion by 2030, the study emphasizes a 'human first, computer last' approach that can significantly reduce development costs by 50% and speed up innovation. The research revealed that while human engineers are adept at solving complex problems, the collaboration with AI can streamline tedious tasks in process engineering. This new strategy could lead to substantial cost savings and improve efficiency, marking a significant advancement in semiconductor manufacturing. The study will be featured in the April 13, 2023 edition of Nature.

Positive
  • Study shows AI can cut semiconductor process development costs by 50%.
  • Potential for improved efficiency in chip fabrication processes.
  • The semiconductor market is projected to reach $1 trillion by 2030.
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  • None.

FREMONT, Calif., April 10, 2023 /PRNewswire/ -- In a new study, Lam Research Corp. (Nasdaq: LRCX) examined the potential for the use of artificial intelligence (AI) in process development for chip fabrication, today a human-driven step that is essential for the mass production of every new advanced semiconductor in the world. As the semiconductor market progresses towards $1 trillion in annual revenue by 20301 according to experts, the study, recently published in the journal Nature, identifies an opportunity to address two grand challenges facing the industry: reducing development costs and accelerating the pace of innovation to meet the increasing demand for next-generation chips. The study found that a "human first, computer last" approach can reach process engineering targets dramatically faster and at half the cost compared to today's approach.

Lam Research study in Nature points to new AI-human approach for the hardest part of chip development; costs cut by 50%.

"New approaches in innovation are needed to enable the industry to scale fast enough to meet the data-driven world's evolving demand for next-generation chips," said Tim Archer, president and chief executive officer at Lam Research. "The opportunity for greater collaboration between talented engineers and machines in process engineering highlighted in Lam's study in Nature is a potential game-changer for our customers and our industry at large. This research is a testament to Lam's more than 40-year heritage of industry leadership and semiconductor manufacturing innovation. I congratulate the Lam team on this exciting work."

The rising complexity of next-generation chips continues to drive process development to be more challenging and expensive. Seeking a more efficient approach, researchers at Lam put talented process engineers head-to-head against AI-enabled computer algorithms in the study.

To manufacture every chip or transistor designed, experienced and skilled engineers must first create a specialized recipe that outlines the specific parameters and permutations needed for each process step. Hundreds of steps are required to build these nanometer-sized devices on a silicon wafer. Process steps typically include multiple instances of depositing thin layers of materials onto silicon wafers and etching away excess material with atomic-scale precision. This essential phase of semiconductor development is currently done by human engineers, largely using their intuition and a "trial and error" approach. With every recipe unique to the chip design and more than 100 trillion possible options to incorporate, process development can be laborious, time-intensive, and costly – increasingly slowing down the time needed to achieve the next technology breakthrough.

In the Lam study, machine and human participants competed to create a targeted process development recipe at the lowest cost, weighing a variety of factors associated with test batches, metrology and overhead expenses. The study concluded that while humans excelled in solving challenging and out-of-the-box problems, a hybrid human first, computer last strategy can help address the tedious aspects of process development and, ultimately, speed up process engineering innovation.

"Although critical to the creation of each and every chip produced, the plasma physics of process engineering has been for decades rooted in the same scientific approach that Thomas Edison used: trial and error," said Rick Gottscho, executive vice president and strategic advisor to the CEO – Innovation Ecosystem at Lam Research and co-author of the study. "Our research showed that while engineering talent remains essential to innovation, process engineering costs can be reduced by 50 percent by integrating AI at the right stage and with the right data. The study provides a prescriptive approach for bringing together the best of human-led engineering and the best of what data science and machines offer to create a combination that performs better than either one alone. If realized, this hybrid approach can lead to significant savings in both dollars and engineering time for the industry."

Lam is currently incorporating the key learnings from the study into its development operations. The Lam study provides initial guidance on how to successfully integrate human knowledge, skill and experience with AI's ability to rapidly assess numerous possible combinations in process engineering.

"By complementing engineering expertise with AI using the human first, computer last approach, the tedious and laborious aspects of design are alleviated for engineers, freeing them up to focus on the creative areas of development and explore innovations that may have been out of reach either due to bandwidth or cost," said Keren Kanarik, technical managing director of Lam Research, lead author of the research paper and a former process engineer. "While the application of AI in process engineering is still in its infancy and human expertise and domain knowledge is essential for the foreseeable future, the results point us to a path to foundationally change the way processes are developed for manufacturing chips."

The study will be featured in the April 13, 2023 print edition of the journal Nature, and is currently also available on Nature.com.

Media Resources: Visit the Lam Newsroom to download the full study, "Human-machine collaboration for improving semiconductor process development," an infographic and additional media resources.

About Lam Research

Lam Research Corporation is a global supplier of innovative wafer fabrication equipment and services to the semiconductor industry. Lam's equipment and services allow customers to build smaller and better performing devices. In fact, today, nearly every advanced chip is built with Lam technology. We combine superior systems engineering, technology leadership, and a strong values-based culture, with an unwavering commitment to our customers. Lam Research (Nasdaq: LRCX) is a FORTUNE 500® company headquartered in Fremont, Calif., with operations around the globe. Learn more at www.lamresearch.com.

1-  Source: McKinsey and Co., "The semiconductor decade: A trillion-dollar industry," April 1, 2022

Caution Regarding Forward-Looking Statements

Statements made in this press release that are not of historical fact are forward-looking statements and are subject to the safe harbor provisions created by the Private Securities Litigation Reform Act of 1995. Such forward-looking statements relate to, but are not limited to: the size of the semiconductor market in the future, the scope of the opportunity addressed by the human first, computer last approach, the potential savings or other benefits (if any) of that approach, the number of options possible in a recipe as well as the necessity of performing that analysis in every recipe and the potential economic cost or benefits of research related to semiconductor process development. Some factors that may affect these forward-looking statements include: technology changes that affect the manufacturing and process development of semiconductors; changes in the economic, business, political and/or regulatory conditions in the consumer electronics industry, the semiconductor industry and the overall economy; the actions of our customers and competitors may be inconsistent with our expectations; and their impacts on our business, results of operations and financial condition, all of which are evolving and are highly uncertain and unpredictable; as well as the other risks and uncertainties that are described in the documents filed or furnished by us with the Securities and Exchange Commission, including specifically the Risk Factors described in our annual report on Form 10-K for the fiscal year ended June 26, 2022 and our quarterly report on Form 10-Q for the fiscal quarter ended December 25, 2022. These uncertainties and changes could materially affect the forward-looking statements and cause actual results to vary from expectations in a material way. The Company undertakes no obligation to update the information or statements made in this release.

Company Contacts:
Laura Bakken
Media Relations
(510) 572-9021
publicrelations@lamresearch.com

Ram Ganesh
Investor Relations
(510) 572-1615
investor.relations@lamresearch.com

Source: Lam Research Corporation, (Nasdaq: LRCX)

 

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SOURCE Lam Research Corporation

FAQ

What did the Lam Research study published in Nature reveal about AI?

The study found that a hybrid 'human first, computer last' approach can cut chip development costs by 50% and accelerate innovation.

When will the study on AI and chip development by Lam Research be published?

The study will be featured in the April 13, 2023 edition of the journal Nature.

What is the projected value of the semiconductor market by 2030?

The semiconductor market is projected to approach $1 trillion by 2030.

What company is behind the study on AI in semiconductor process development?

The study was conducted by Lam Research Corp (Nasdaq: LRCX).

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