Amazon Monitron provides customers an end-to-end machine monitoring solution comprised of sensors, gateway, and machine learning service to detect abnormal equipment conditions that may require maintenance
Amazon Lookout for Equipment gives customers with existing equipment sensors the ability to use AWS machine learning models to detect abnormal equipment behavior and enable predictive maintenance
AWS Panorama Appliance enables customers with existing cameras in their industrial facilities with the ability to use computer vision to improve quality control and workplace safety
AWS Panorama Software Development Kit (SDK) allows industrial camera manufacturers to embed computer vision capabilities in new cameras
Amazon Lookout for Vision uses AWS-trained computer vision models on images and video streams to find anomalies and flaws in products or processes
Axis, ADLINK Technology, BP, Deloitte, Fender, GE Healthcare, and Siemens Mobility among customers and partners using new AWS industrial machine learning services
SEATTLE–(BUSINESS WIRE)–#AI–Today at AWS re:Invent, Amazon Web Services, Inc. (AWS), an Amazon.com company (NASDAQ: AMZN), announced Amazon Monitron, Amazon Lookout for Equipment, the AWS Panorama Appliance, the AWS Panorama SDK, and Amazon Lookout for Vision. Together, these five new machine learning services help industrial and manufacturing customers embed intelligence in their production processes in order to improve operational efficiency, quality control, security, and workplace safety. The services combine sophisticated machine learning, sensor analysis, and computer vision capabilities to address common technical challenges faced by industrial customers, and represent the most comprehensive suite of cloud-to-edge industrial machine learning services available. This is why more than a hundred thousand customers are using AWS for machine learning, and why customers of all sizes and across all industries are using AWS services to make machine learning core to their business strategy. To learn more about AWS’s new industrial machine learning services, visit https://aws.amazon.com/industrial/.
Companies are increasingly looking to add machine learning capabilities to industrial environments, such as manufacturing facilities, fulfillment centers, and food processing plants. For these customers, data has become the connective tissue that holds their complex industrial systems together. Industrial systems typically have numerous interdependent processes that operate with small tolerances for error, and even minor issues can have major ramifications. Being able to analyze data about the equipment operating in their facilities helps customers address this challenge, and many customers have embraced services like AWS IoT SiteWise as a way to collect data and generate real-time performance metrics from their industrial equipment. As customers have begun to use the cloud to collect and analyze industrial data, they have also asked for new ways to incorporate machine learning to help make sense of the data and further drive operational efficiency. In some cases, customers want to use machine learning to help them realize the promise of predictive maintenance to reduce costs and improve operational efficiency. In other cases, customers running in disconnected or latency-sensitive environments want to use computer vision at the edge to spot product defects and improve workplace safety. With these evolving needs and opportunities, industrial companies have asked AWS to help them leverage the cloud, the industrial edge, and machine learning together to get even more value from the vast amounts of data being generated by their equipment.
Amazon Monitron and Amazon Lookout for Equipment enable predictive maintenance powered by machine learning
A major challenge facing industrial and manufacturing companies today is the ongoing maintenance of their equipment. Historically, most equipment maintenance is either reactive (after a machine breaks) or preventive (performed at regular intervals to ensure a machine doesn’t break). Reactive maintenance can result in significant costs and downtime, while preventive maintenance can be costly, result in over-maintenance, or fail to prevent breakdown if not performed often enough. Predictive maintenance (the ability to foresee when equipment is likely to need maintenance) is a more promising solution. However, in order to make it work, companies have historically needed skilled technicians and data scientists to piece together a complex solution from scratch. This included identifying and procuring the right type of sensors for the use case and connecting them together with an IoT gateway (a device that aggregates and transmits data). Companies then had to test the monitoring system and transfer the data to on-premises infrastructure or the cloud for processing. Only then could the data scientists on staff build machine learning models to analyze the data for patterns and anomalies, or create an alerting system when an outlier was detected. Some companies have invested heavily in installing sensors across their equipment and the necessary infrastructure for data connectivity, storage, analytics, and alerting. But even these companies typically use rudimentary data analytics and simple modeling approaches that are expensive and often ineffective at detecting abnormal conditions compared to advanced machine learning models. Most companies lack the expertise and staff to build and refine the machine learning models that would enable highly accurate predictive maintenance. As a result, few companies have been able to successfully implement predictive maintenance, and those that have done it are looking for ways to further leverage their investment, while also easing the burden of maintaining their homegrown solutions. Here’s how the new AWS machine learning services can help:
AWS Panorama uses computer vision to improve industrial operations and workplace safety
Many industrial and manufacturing customers want to be able to use computer vision on live video feeds of their facility and equipment to automate monitoring or visual inspection tasks and to make decisions in real time. For example, customers routinely need to inspect high-speed processes to determine if adjustments are needed (e.g. fine milling or laser tooling), to monitor site and yard activity to ensure operating compliance (e.g. ensure pedestrians and forklifts remain in designated work zones), or to assess worker safety within their facilities (e.g. appropriate social distancing or use of PPE). However, the typical monitoring methods used today are manual, error prone, and difficult to scale. Customers could build computer vision models in the cloud to monitor and analyze their live video feeds, but industrial processes typically need to be physically located in remote and isolated places, where connectivity can be slow, expensive, or completely non-existent. This problem is even more difficult for industrial processes that involve manual review like quality checks on manufactured parts or security feeds. For example, if a quality issue emerges on a high throughput production line, customers want to know immediately because the costs of letting the problem persist is steep. This type of video feed could be automatically processed in the cloud using computer vision, but video feeds are high bandwidth and can be slow to upload. As a result, customers are required to monitor video feeds in real time, which is hard to do, error prone, and expensive. While there is a desire to use smart cameras that have enough processing power to run these models, getting low latency performance with good accuracy from these cameras can be challenging. Most customers end up running unsophisticated models that can’t be programmed to run custom code that integrates into the industrial machines. Here’s how AWS can now help:
To learn more about AWS Panorama, as well as supporting vendors and partners, visit https://aws.amazon.com/panorama.
Amazon Lookout for Vision offers automated fast and accurate visual anomaly detection for images and video at a low cost
One use case where AWS customers are excited to deploy computer vision with their cameras is for quality control. Industrial companies must maintain constant diligence to maintain quality control. In the manufacturing industry alone, production line shutdowns due to overlooked errors result in millions of dollars of cost overruns and lost revenue every year. The visual inspection of industrial processes typically requires human inspection, which can be tedious and inconsistent. Computer vision brings the speed and accuracy needed to identify defects consistently, but implementation can be complex and require teams of data scientists to build, deploy, and manage the machine learning models. Because of these barriers, machine learning-powered visual anomaly systems remain out of reach for the vast majority of companies. Here’s how AWS can now help these companies:
“Industrial and manufacturing customers are constantly under pressure from their shareholders, customers, governments, and competitors to reduce costs, improve quality, and maintain compliance. These organizations would like to use the cloud and machine learning to help them automate processes and augment human capabilities across their operations, but building these systems can be error prone, complex, time consuming, and expensive,” said Swami Sivasubramanian, Vice President of Amazon Machine Learning for AWS. “We’re excited to bring customers five new machine learning services purpose-built for industrial use that are easy to install, deploy, and get up and running quickly and that connect the cloud to the edge to help deliver the smart factories of the future for our industrial customers.”
Fender Musical Instruments Corporation is an iconic brand and the world’s foremost manufacturer of guitars, basses, amplifiers, and related equipment. “Over the past year we worked with AWS to help develop the critical but sometimes overlooked part of running a successful manufacturing business, knowing your equipment condition. For manufacturers worldwide, maintaining equipment uptime is the only way to remain competitive in a global market. Unplanned downtime is costly both in loss of production and labor due to the fire-fighting nature of breakdowns,” said Bill Holmes, Global Director of Facilities at Fender. “Amazon Monitron can give both large industry manufacturers as well as small ‘mom and pop shops’ the ability to predict equipment failures, giving us the opportunity to preemptively schedule equipment repairs.”
RS Components is a leading player in the industrial components and predictive maintenance space. “We are constantly trying to innovate how we serve the maintenance needs of our customers. With the emergence of IoT, we have seen our customers looking to bring real-time condition monitoring capabilities into the factory environment to reduce reactive maintenance and improve asset reliability,” said Richard Jeffers, Technical Director at RS Components. “We are excited to be working with AWS to bring Amazon Monitron to our customers because it allows them to deploy a cost effective, easy to use, continuously improving condition monitoring solution and enable predictive maintenance across a broader set of equipment in their asset base. Although we stock over 500,000 products from 2,500 different suppliers, this is the first end-to-end wireless vibration and temperature condition monitoring solution in our portfolio. We plan to make Amazon Monitron available to our customers via our e-commerce platform, and leverage it to deliver condition-based monitoring and reliability services through RS Monition, our data led, reliability services business. Working with AWS will enable us to support our customers’ efforts to adopt IoT and machine learning as emerging technologies and accelerate their Industry 4.0 strategies.”
GS EPS is a South Korean Industrial Conglomerate. “We have been generating data across our assets for over a decade now but have only been using physics and rules based methods to gain insights into our data,” said Kang Bum Lee, Executive Vice President of GS EPS. “Amazon Lookout for Equipment is enabling our plant operation teams to build models on our equipment with no ML expertise required. We are leading the transformation of our organization into a data-driven work culture with AWS and Amazon Lookout for Equipment.”
Doosan Infracore is a leading global manufacturer of heavy duty equipment and engines. “Leveraging AI is critical in advancing Doosan’s next generation equipment, so we are working with AWS to develop use cases where automated and scalable machine learning could be leveraged,” said Mr. Jae Yeon Cho, Vice President of Doosan Infracore. “Based on this, we are excited to continue to work with AWS to leverage Amazon Lookout for Equipment in our next generation IoT platform.”
OSIsoft is a manufacturer of application software for real-time data management, called the PI System. “Today, there are more than 2 billion sensor-based data streams inside OSIsoft PI Systems, and thousands of customers relying on the PI System daily to run their operations. These customers are constantly looking for methods to easily serve up insights for improving their competitiveness. OSIsoft products can be integrated with AWS services to help customers unlock additional value from their data. Amazon Lookout for Equipment expands the scope of services and insights available to customers by delivering automated machine learning built specifically for equipment monitoring,” said Michael Graves, Director of Strategic Alliances at OSIsoft.
“Every month, millions of trucks enter Amazon facilities so creating technology that automates trailer loading, unloading, and parking is incredibly important,” said Steve Armato, VP Middle Mile Production Technology at Amazon.com. “Amazon’s Middle Mile Products & Technology (MMPT) has begun using AWS Panorama to recognize license plates on these vehicles and automatically expedite entry and exit for drivers. This enables safe and fast visits to Amazon sites, ensuring faster package delivery for our customers.”
BP is a global energy company, providing customers with fuel for transport, energy for heat and light, lubricants to keep engines moving, and the petrochemicals products used to make everyday items as diverse as paints, clothes, and packaging. The organization has 18,000 service stations and more than 74,000 employees worldwide. “Our engineering teams here at bpx are working very closely with AWS to build an IoT and cloud platform that will enable us to continuously improve the efficiency of our operations,” said Grant Matthews, Chief Technology Officer at BP America. “One of the areas we have explored as part of this effort is the use of computer vision to help us further improve security and worker safety. We want to leverage computer vision to automate the entry and exit of trucks to our facility and verify that they have fulfilled the correct order. Additionally, we see possibilities for computer vision to keep our workers safe in a number of ways, from monitoring social distancing, to setting up dynamic exclusion zones, and detecting oil leaks. AWS Panorama offers an innovative approach to delivering all of these solutions on a single hardware platform with an intuitive user experience. Our teams are excited to work with AWS on this new technology and expect it to help us address many new use cases.”
Siemens Mobility offers intelligent and efficient mobility solutions for urban, interurban, and freight transportation. “Siemens Mobility has been a leader for seamless, sustainable, and secure transport solutions for more than 160 years. The Siemens ITS Digital Lab is the innovation team in charge of bringing the latest digital advances to the traffic industry and uniquely positioned to provide data analytics and AI solutions to public agencies,” said Laura Sanchez, Innovation Manager, Siemens Mobility ITS Digital Lab.
Contacts
Amazon.com, Inc.
Media Hotline
Amazon-pr@amazon.com
www.amazon.com/pr
Well-Capitalized Combined Company with Strong Financial Profile and 2023 Revenue of $246M, 28% from Recurring…
Chowis Co. Ltd. Skin, Hair and Scalp Solutions Provider Signs Agreement with Kolmar Korea to…
PORTLAND, OR / ACCESSWIRE / July 3, 2024 / Rose Villa Senior Living continues to…
Highlights:Total revenue of $9.9 million for Q1 2025, reflecting YoY growth of 31% from the…
Medical Device Developer & Investor Taps 4 Markets With Growth Projections of USD $39.1B by…
The round is led by Danish VC Dreamcraft, together with biotech investor Lundbeckfonden BioCapital and…