ml service
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- Europe > Italy > Calabria > Catanzaro Province > Catanzaro (0.04)
Development of an Edge Resilient ML Ensemble to Tolerate ICS Adversarial Attacks
Yao, Likai, Shi, Qinxuan, Yang, Zhanglong, Shao, Sicong, Hariri, Salim
Deploying machine learning (ML) in dynamic data-driven applications systems (DDDAS) can improve the security of industrial control systems (ICS). However, ML-based DDDAS are vulnerable to adversarial attacks because adversaries can alter the input data slightly so that the ML models predict a different result. In this paper, our goal is to build a resilient edge machine learning (reML) architecture that is designed to withstand adversarial attacks by performing Data Air Gap Transformation (DAGT) to anonymize data feature spaces using deep neural networks and randomize the ML models used for predictions. The reML is based on the Resilient DDDAS paradigm, Moving Target Defense (MTD) theory, and TinyML and is applied to combat adversarial attacks on ICS. Furthermore, the proposed approach is power-efficient and privacy-preserving and, therefore, can be deployed on power-constrained devices to enhance ICS security. This approach enables resilient ML inference at the edge by shifting the computation from the computing-intensive platforms to the resource-constrained edge devices. The incorporation of TinyML with TensorFlow Lite ensures efficient resource utilization and, consequently, makes reML suitable for deployment in various industrial control environments. Furthermore, the dynamic nature of reML, facilitated by the resilient DDDAS development environment, allows for continuous adaptation and improvement in response to emerging threats. Lastly, we evaluate our approach on an ICS dataset and demonstrate that reML provides a viable and effective solution for resilient ML inference at the edge devices.
- North America > United States > North Dakota > Grand Forks County > Grand Forks (0.14)
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- North America > United States > Mississippi (0.04)
- North America > United States > Massachusetts > Suffolk County > Boston (0.04)
- Information Technology > Security & Privacy (1.00)
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- Government > Regional Government > North America Government > United States Government (0.46)
A Cyber Manufacturing IoT System for Adaptive Machine Learning Model Deployment by Interactive Causality Enabled Self-Labeling
Ren, Yutian, He, Yuqi, Zhang, Xuyin, Yen, Aaron, Li, G. P.
Machine Learning (ML) has been demonstrated to improve productivity in many manufacturing applications. To host these ML applications, several software and Industrial Internet of Things (IIoT) systems have been proposed for manufacturing applications to deploy ML applications and provide real-time intelligence. Recently, an interactive causality enabled self-labeling method has been proposed to advance adaptive ML applications in cyber-physical systems, especially manufacturing, by automatically adapting and personalizing ML models after deployment to counter data distribution shifts. The unique features of the self-labeling method require a novel software system to support dynamism at various levels. This paper proposes the AdaptIoT system, comprised of an end-to-end data streaming pipeline, ML service integration, and an automated self-labeling service. The self-labeling service consists of causal knowledge bases and automated full-cycle self-labeling workflows to adapt multiple ML models simultaneously. AdaptIoT employs a containerized microservice architecture to deliver a scalable and portable solution for small and medium-sized manufacturers. A field demonstration of a self-labeling adaptive ML application is conducted with a makerspace and shows reliable performance.
- Information Technology > Smart Houses & Appliances (0.70)
- Energy > Oil & Gas > Upstream (0.30)
The NCI Imaging Data Commons as a platform for reproducible research in computational pathology
Schacherer, Daniela P., Herrmann, Markus D., Clunie, David A., Höfener, Henning, Clifford, William, Longabaugh, William J. R., Pieper, Steve, Kikinis, Ron, Fedorov, Andrey, Homeyer, André
Background and Objectives: Reproducibility is a major challenge in developing machine learning (ML)-based solutions in computational pathology (CompPath). The NCI Imaging Data Commons (IDC) provides >120 cancer image collections according to the FAIR principles and is designed to be used with cloud ML services. Here, we explore its potential to facilitate reproducibility in CompPath research. Methods: Using the IDC, we implemented two experiments in which a representative ML-based method for classifying lung tumor tissue was trained and/or evaluated on different datasets. To assess reproducibility, the experiments were run multiple times with separate but identically configured instances of common ML services. Results: The AUC values of different runs of the same experiment were generally consistent. However, we observed small variations in AUC values of up to 0.045, indicating a practical limit to reproducibility. Conclusions: We conclude that the IDC facilitates approaching the reproducibility limit of CompPath research (i) by enabling researchers to reuse exactly the same datasets and (ii) by integrating with cloud ML services so that experiments can be run in identically configured computing environments.
- North America > United States > Massachusetts > Suffolk County > Boston (0.04)
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- North America > United States > Pennsylvania (0.04)
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- Health & Medicine > Therapeutic Area > Oncology (1.00)
- Health & Medicine > Diagnostic Medicine (1.00)
- Information Technology > Sensing and Signal Processing (1.00)
- Information Technology > Cloud Computing (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.68)
- Information Technology > Artificial Intelligence > Machine Learning > Performance Analysis > Accuracy (0.46)
Amazon Machine Learning (AI/ML) Services - CouponED
AWS has many advanced and useful ML/AI services. If you would like to get a general understanding of AWS ML/AI services, this course is for you. The course starts with a high-level understanding of ML, AI, Computer Vision, and Robotics. Then, you will get a high-level overview of many AWS ML services. You will learn about these services with the help of diagrams and key use cases.
The Full Guide to AI and ML Services
This guide will provide you with a complete overview of the different AI and ML services that are available on the market today. It will also give you some insight into how these services work, as well as what their main applications are. It is worth mentioning that there is no single AI or ML service that can be used in all cases, which is why we have created this guide to help you make an informed decision about which service would best suit your needs. Artificial intelligence and machine learning are changing the way we live our lives. It is no longer just a matter of having the latest smartphone or computer.
EasyMLServe: Easy Deployment of REST Machine Learning Services
Neumann, Oliver, Schilling, Marcel, Reischl, Markus, Mikut, Ralf
Various research domains use machine learning approaches because they can solve complex tasks by learning from data. Deploying machine learning models, however, is not trivial and developers have to implement complete solutions which are often installed locally and include Graphical User Interfaces (GUIs). Distributing software to various users on-site has several problems. Therefore, we propose a concept to deploy software in the cloud. There are several frameworks available based on Representational State Transfer (REST) which can be used to implement cloud-based machine learning services. However, machine learning services for scientific users have special requirements that state-of-the-art REST frameworks do not cover completely. We contribute an EasyMLServe software framework to deploy machine learning services in the cloud using REST interfaces and generic local or web-based GUIs. Furthermore, we apply our framework on two real-world applications, i. e., energy time-series forecasting and cell instance segmentation. The EasyMLServe framework and the use cases are available on GitHub.
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- Europe > Germany > Baden-Württemberg > Karlsruhe Region > Karlsruhe (0.04)
- Education (1.00)
- Information Technology > Services (0.35)
Celebrate over 20 years of AI/ML at Innovation Day
Be our guest as we celebrate 20 years of AI/ML innovation on October 25, 2022, 9:00 AM – 10:30 AM PT. The first 1,500 people to register will receive $50 of AWS credits. Over the past 20 years, Amazon has delivered many world firsts for artificial intelligence (AI) and machine learning (ML). ML is an integral part of Amazon and is used for everything from applying personalization models at checkout, to forecasting the demand for products globally, to creating autonomous flight for Amazon Prime Air drones, to natural language processing (NLP) on Alexa. And the use of ML isn't slowing down anytime soon, because ML helps Amazon exceed customer expectations for convenience, cost, and delivery speed.
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- Asia > Middle East > Jordan (0.05)
The growth stage of applied AI and MLOps
Applied artificial intelligence tops the list of 14 most influential technology trends in McKinsey & Company's "Technology Trends Outlook 2022" report. For now, applied AI (which might also be referred to as "enterprise AI") is mainly the use of machine learning and deep learning models in real-world applications. A closely related trend that also made it to McKinsey's top-14 list is "industrializing machine learning," which refers to MLOps platforms and other tools that make it easier to train, deploy, integrate, and update ML models in different applications and environments. McKinsey's findings, which are in line with similar reports released by consulting and research firms, show that after a decade of investment, research, and development of tools, the barriers to applied AI are slowly fading. Large tech companies, which often house many of the top machine learning/deep learning scientists and engineers, have been researching new algorithms and applying them to their products for years.
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