Top Page | English | 简体中文 | 繁體中文 | 한국어 | 日本語
Thursday, 21 April 2022, 11:30 HKT/SGT
Share:
    

Source: Showa Denko K.K.
Showa Denko Introduces Machine Learning Operations into AI-based Prediction Systems for Accelerating Materials Development

TOKYO, Apr 21, 2022 - (ACN Newswire) - Showa Denko K.K. (SDK; TSE:4004) has introduced MLOps* (Machine Learning Operations) for efficient management of machine learning models deployed into Artificial Intelligence (AI) systems for materials design ahead of its competitors. Machine learning models can predict material properties based on formulations and manufacturing-process conditions of materials. This time, we automated input of the latest data into computers that develop machine learning models and data processing in those computers. This automation has reduced the time required to build and operate machine learning models from five days to one day per month. In addition, the introduction of MLOps enabled us to accelerate materials development by predicting material properties based on the latest data.

Machine learning process from model development to operation

SDK utilizes AI systems for efficient materials development, such as exploring the optimal material formulation. Machine learning models deployed into the AI systems predict material properties from formulations or suggest formulations that improve material properties. The machine learning process for managing the AI systems includes inputting the latest data, data processing, and continuous training of machine learning models. Previously, data scientists had to input and process the latest data for themselves. These steps accounted for about 80% of the time required for the entire machine learning process. In addition, machine learning models deployed into the AI systems are built specifically for each material. Therefore, before introducing MLOps, the development of machine learning models required a lot of time and effort due to the necessary work specialized for each material.

Aiming to address these issues caused by applying AI systems to the development of numerous materials in the Company and operating machine learning models efficiently, we have installed programs to automate the input of the latest data and data processing into our AI systems. Moreover, we have introduced technologies that enable data scientists responsible for building machine learning models and software engineers responsible for building AI systems to develop systems collaboratively even if there are differences in operating systems and programming languages they use. By introducing MLOps ahead of our competitors to manage machine learning models efficiently, we could reduce the time required to develop machine learning models and their operation, improve prediction accuracy, and stably operate dozens of AI systems. As a result, now we can propose ideal materials to our customers promptly.

The Showa Denko Group will apply the fruits of basic research in AI and computational science to materials development and quickly provide solutions that solve our customers' problems, thereby contributing to the development of a sustainable society.

*MLOps: The method and philosophy for integrating the development and operation of machine learning models. MLOps include continuous training of machine learning models, automating the machine learning process, and establishing tools and operational rules for collaborative development between data scientists and software engineers.

About Showa Denko K.K.

Showa Denko K.K. (SDK; TSE:4004, ADR:SHWDY) is a major manufacturer of chemical products serving from heavy industry to computers and electronics. The Petrochemicals Sector provides cracker products such as ethylene and propylene, the Chemicals Sector provides industrial, high-performance and high-purity gases and chemicals for semicon and other industries, the Inorganics Sector provides ceramic products, such as alumina, abrasives, refractory/graphite electrodes and fine carbon products. The Aluminum Sector provides aluminum materials and high-value-added fabricated aluminum, the Electronics Sector provides HD media, compound semiconductors such as ultra high bright LEDs, and rare earth magnetic alloys, and the Advanced Battery Materials Department (ABM) provides lithium-ion battery components. For more information, please visit www.sdk.co.jp/english/.

Media contact:
Showa Denko K.K., Public Relations Group, Brand Communication Department, Tel: 81-3-5470-3235


Topic: Press release summary
Source: Showa Denko K.K.

Sectors: Chemicals, Spec.Chem, Artificial Intel [AI]
http://www.acnnewswire.com
From the Asia Corporate News Network


Copyright © 2024 ACN Newswire. All rights reserved. A division of Asia Corporate News Network.



Showa Denko K.K.
Aug 4, 2022 14:00 HKT/SGT
Showa Denko Announces 2022 2Q Consolidated Financial Results
Aug 3, 2022 14:00 HKT/SGT
Showa Denko Revises Forecast of Consolidated Performance
June 29, 2022 12:00 HKT/SGT
Showa Denko Concludes MOU with SK Inc. to Give Consideration to a Plan to Cooperatively Produce High-Purity Gases for Semiconductors in North America
June 28, 2022 10:30 HKT/SGT
SDK and Microwave Chemical Start Joint Development of New Microwave-based Chemical Recycling Technology to Directly Transform Used Plastic into Basic Chemical Feedstock
May 26, 2022 14:00 HKT/SGT
Showa Denko Announces Record Date for Extraordinary Shareholders' Meeting
May 26, 2022 14:00 HKT/SGT
Showa Denko to Consider Simplified Absorption-type Company Split
May 26, 2022 11:00 HKT/SGT
Showa Denko Starts Shipment of Newly Developed HD Media for Record-breaking 26TB Near-line HDD
May 24, 2022 17:00 HKT/SGT
Showa Denko's Program for 8-inch SiC Wafers for the Next-generation Green Power Semiconductor selected for NEDO's Green Innovation Fund Projects
May 11, 2022 14:00 HKT/SGT
Showa Denko Announces 2022 First Quarter Financial Results
Apr 27, 2022 10:30 HKT/SGT
Showa Denko Decides to Raise Chloroprene Rubber Price
More news >>
 News Alerts
Copyright © 2024 ACN Newswire - Asia Corporate News Network
Home | About us | Services | Partners | Events | Login | Contact us | Privacy Policy | Terms of Use | RSS
US: +1 214 890 4418 | Beijing: +86 400 879 3881 | Hong Kong: +852 8192 4922 | Singapore: +65 6549 7068 | Tokyo: +81 3 6859 8575

Connect With us: