The document discusses the current state and future of the Internet of Things (IoT). It notes that IoT allows devices to connect not just to the internet but also seamlessly to each other. It also discusses that high prices are currently a deterrent to consumer adoption of IoT products. Major players in IoT like Apple, Google, Samsung and Amazon are working to advance IoT technologies and make them more useful. The future of IoT is predicted to have a major impact on user experience design and businesses.
In part two of our RPA webinar series Eric Liebross, Auxis Senior VP of Back Office Optimization, presents “Diving into RPA”. This presentation focuses on:
• How to effectively identify, evaluate and prioritize the RPA opportunities in your organization?
• Who are the major software vendor providers in the market? How do they compare?
• What are the new skills and capabilities needed to implement and support RPA?
• What are your deployment model options? - internally vs. robotics as a service
• How to embrace your workforce?
We hope you find the highlighted information in this presentation useful for your RPA initiatives.
View the live demo here: https://www.auxis.com/rpa-demo
The document summarizes key information from a presentation on smart cities. It discusses:
1) The growing global population and increasing urbanization, highlighting the need for smarter infrastructure and services by 2050.
2) Elements of smart cities, including data collection and communication networks to improve livability, sustainability, and economic opportunities.
3) Steps cities can take to become smarter, such as assembling teams, creating visions and action plans, and implementing in stages with stakeholder engagement.
4) Ways the Smart Cities Council can help cities in their transformations, including readiness programs, workshops, and ongoing support.
This document discusses the evolution of machine learning tools and services in the cloud, specifically on Microsoft Azure. It provides examples of machine learning frameworks, runtimes, and packages available over time on Azure including Azure ML (2015) and the Microsoft Cognitive Toolkit (CNTK) (2015). It also mentions the availability of GPU resources on Azure starting in 2016 and limitations to consider for the Azure ML service including restrictions on programming languages and a lack of debugging capabilities.
This document presents a smart-city implementation reference model. It begins with background on the author and an agenda. It then discusses why an implementation reference model is needed given the complexity of a smart city as a socio-technical system. The reference model applies principles of enterprise architecture, including common capabilities, views across various domains and stakeholders, and a platform-based approach. The goal is to provide best practices and reusable solutions to help cities implement smart technologies and services in a standardized yet flexible manner.
Monetizing the iot by Sandhiprakash Bhide generic-01-24-2017sandhibhide
The document discusses opportunities for monetizing the Internet of Things (IoT). It begins by outlining the huge size of the IoT market and key growth areas such as industry, cities, healthcare, and retail. It then examines the IoT value chain and various business models for monetization, including hardware premiums, ecosystem building, data revenue, and service revenue from subscriptions and pay-per-use models. Challenges to monetization include the need for critical masses of connected devices and open APIs. Potential areas for mergers and acquisitions include analytics companies being acquired by systems integrators to gain efficiencies in solving customer problems.
This document discusses using Microsoft Azure for machine learning with R. It covers reading data from various sources into R like local files, web URLs, Azure Blob storage, and SQL server. It then discusses preprocessing data, feature engineering, training ML models with functions like glm(), and evaluating models with metrics like AUC. It notes challenges of data and ML evolving rapidly and the need to scale. It proposes using Apache Spark on Azure via services like HDInsight and R Server to allow distributed, scalable ML in the cloud with R for enterprises.
This document summarizes the evolution of machine learning tools in the cloud from 2015 to 2017. It describes how in 2015, major cloud providers like Azure, Amazon, and Google launched early machine learning services. From 2015 to 2016, these providers also released popular deep learning frameworks like TensorFlow as open source. During this time period, the providers began offering deep learning models and GPU computing as cloud services. The document argues that these developments have helped democratize artificial intelligence and machine learning.
[Webinar Slides] Robotic Process Automation 101 What is it? What can it mean ...AIIM International
Follow along with these webinar slides for an introductory overview of Robotic Process Automation (RPA) – what it is and what it can do for you.
Want to follow along with the webinar replay? Download it here for free: http://info.aiim.org/robotic-process-automation-101
The document discusses AI and IoT, highlighting several use cases and challenges. It notes that AI and IoT are transforming how people, devices, and data interact across many domains. Specifically, it provides examples of how Philips analyzes 15PB of patient data and how AI can connect disparate IoT data. Additionally, it outlines several common use cases for applying AI to IoT in various industries like manufacturing, energy, healthcare, and more. Finally, it contrasts bare IoT with AIoT, noting that AIoT involves intelligent data processing, self-learning, autonomous decision making that enhances IoT.
This document provides an overview of Cisco's proposed strategy to enter the smart city market. It discusses Cisco's mission, vision and objectives for its smart city initiatives. Some key points:
- Cisco's mission is to pioneer Internet of Everything (IoE) technologies to ensure citizen safety and increase energy efficiency in cities. Its vision is to be an industry leader in helping develop smart cities worldwide.
- Cisco sees opportunities to leverage its expertise in networking and partnerships to provide smart city solutions involving infrastructure, applications and technology. This could help cities improve services while reducing costs.
- The document outlines various strategies Cisco could take, such as expanding its partner network, acquiring emerging technology firms, and developing new business lines around smart
Smart City and Smart Government : Strategy, Model, and Cases of KoreaJong-Sung Hwang
Presentation file by Jong-Sung Hwang on Smart City and Smart Government. It was revised from an original presentation at FTTH New Zealand conference in May 2013. It explains different approaches to Smart City and the relationship between Smart City and Smart Government.
AI & Robotic Process Automation (RPA) to Digitally Transform Your EnvironmentCprime
This presentation will help you understand how to think about emerging technologies for your Business. You receive context and a simple framework for how to think about RPA as an enabler to transform your customer experience and business operations.
State of the market for IoT/IIoT and the cloud: What are the emerging opportunities for using interconnected devices and the cloud to provide enterprises with operational efficiencies and more effective mobility?
Build your First IoT Application with IBM Watson IoTJanakiram MSV
Watch this webinar to learn how to build your first connected application. I will walk you through the key steps involved in building your first IoT application in the cloud with IBM Watson IoT. At the end of the session, you will gain an understanding of registering devices and sending messages to the cloud via MQTT.
This document discusses the concept of smart cities and the role of the Internet of Things. It begins with an overview of smart city concepts and urban IoT architecture. It then describes an experimental study of the PADOVA smart city project in Italy. This includes details on the system architecture used in PADOVA and examples of data collected. The document concludes that IoT solutions are available for smart cities and emerging technologies are expanding the market for related products. It provides references on IoT for smart cities and convergence of technologies.
How do APIs and IoT relate? The answer is not as simple as merely adding an API on top of a dumb device, but rather about understanding the architectural patterns for implementing an IoT fabric. There are typically two or three trends:
Exposing the device to a management framework
Exposing that management framework to a business centric logic
Exposing that business layer and data to end users.
This last trend is the IoT stack, which involves a new shift in the separation of what stuff happens, where data lives and where the interface lies. For instance, it's a mix of architectural styles between cloud, APIs and native hardware/software configurations.
Яркие примеры, иллюстрирующие ключевые ошибки в анализе данных:
1/Опускать поправку на априорные распределения
2/ Использовать для анализа неслучайную выборку
3/ Неверная визуализация
4/ Считать корреляцию причинной связью
5/ Неверно выбранная целевая переменная
6/ Допускать переобучение модели
7/ Оставить выбросы и шумы в данных
8/ Неверно разделить исследование и оптимизацию
9/ Делать поспешные выводы
10/Выбор неправильного инструмента для анализа
Медицина, как и ожидалась, подходит к фазе "Платформизации" и "Цифровой экономики". Что меняется в ИТ инфраструктуре, какие решения и алгоритмы повлияют на применение инструментов BigData и BI при автоматизации в клинических и административных процессах ?
Video http://confhall.hse.ru/videos/video/824/ at 12 min
Monetizing the iot by Sandhiprakash Bhide generic-01-24-2017sandhibhide
The document discusses opportunities for monetizing the Internet of Things (IoT). It begins by outlining the huge size of the IoT market and key growth areas such as industry, cities, healthcare, and retail. It then examines the IoT value chain and various business models for monetization, including hardware premiums, ecosystem building, data revenue, and service revenue from subscriptions and pay-per-use models. Challenges to monetization include the need for critical masses of connected devices and open APIs. Potential areas for mergers and acquisitions include analytics companies being acquired by systems integrators to gain efficiencies in solving customer problems.
This document discusses using Microsoft Azure for machine learning with R. It covers reading data from various sources into R like local files, web URLs, Azure Blob storage, and SQL server. It then discusses preprocessing data, feature engineering, training ML models with functions like glm(), and evaluating models with metrics like AUC. It notes challenges of data and ML evolving rapidly and the need to scale. It proposes using Apache Spark on Azure via services like HDInsight and R Server to allow distributed, scalable ML in the cloud with R for enterprises.
This document summarizes the evolution of machine learning tools in the cloud from 2015 to 2017. It describes how in 2015, major cloud providers like Azure, Amazon, and Google launched early machine learning services. From 2015 to 2016, these providers also released popular deep learning frameworks like TensorFlow as open source. During this time period, the providers began offering deep learning models and GPU computing as cloud services. The document argues that these developments have helped democratize artificial intelligence and machine learning.
[Webinar Slides] Robotic Process Automation 101 What is it? What can it mean ...AIIM International
Follow along with these webinar slides for an introductory overview of Robotic Process Automation (RPA) – what it is and what it can do for you.
Want to follow along with the webinar replay? Download it here for free: http://info.aiim.org/robotic-process-automation-101
The document discusses AI and IoT, highlighting several use cases and challenges. It notes that AI and IoT are transforming how people, devices, and data interact across many domains. Specifically, it provides examples of how Philips analyzes 15PB of patient data and how AI can connect disparate IoT data. Additionally, it outlines several common use cases for applying AI to IoT in various industries like manufacturing, energy, healthcare, and more. Finally, it contrasts bare IoT with AIoT, noting that AIoT involves intelligent data processing, self-learning, autonomous decision making that enhances IoT.
This document provides an overview of Cisco's proposed strategy to enter the smart city market. It discusses Cisco's mission, vision and objectives for its smart city initiatives. Some key points:
- Cisco's mission is to pioneer Internet of Everything (IoE) technologies to ensure citizen safety and increase energy efficiency in cities. Its vision is to be an industry leader in helping develop smart cities worldwide.
- Cisco sees opportunities to leverage its expertise in networking and partnerships to provide smart city solutions involving infrastructure, applications and technology. This could help cities improve services while reducing costs.
- The document outlines various strategies Cisco could take, such as expanding its partner network, acquiring emerging technology firms, and developing new business lines around smart
Smart City and Smart Government : Strategy, Model, and Cases of KoreaJong-Sung Hwang
Presentation file by Jong-Sung Hwang on Smart City and Smart Government. It was revised from an original presentation at FTTH New Zealand conference in May 2013. It explains different approaches to Smart City and the relationship between Smart City and Smart Government.
AI & Robotic Process Automation (RPA) to Digitally Transform Your EnvironmentCprime
This presentation will help you understand how to think about emerging technologies for your Business. You receive context and a simple framework for how to think about RPA as an enabler to transform your customer experience and business operations.
State of the market for IoT/IIoT and the cloud: What are the emerging opportunities for using interconnected devices and the cloud to provide enterprises with operational efficiencies and more effective mobility?
Build your First IoT Application with IBM Watson IoTJanakiram MSV
Watch this webinar to learn how to build your first connected application. I will walk you through the key steps involved in building your first IoT application in the cloud with IBM Watson IoT. At the end of the session, you will gain an understanding of registering devices and sending messages to the cloud via MQTT.
This document discusses the concept of smart cities and the role of the Internet of Things. It begins with an overview of smart city concepts and urban IoT architecture. It then describes an experimental study of the PADOVA smart city project in Italy. This includes details on the system architecture used in PADOVA and examples of data collected. The document concludes that IoT solutions are available for smart cities and emerging technologies are expanding the market for related products. It provides references on IoT for smart cities and convergence of technologies.
How do APIs and IoT relate? The answer is not as simple as merely adding an API on top of a dumb device, but rather about understanding the architectural patterns for implementing an IoT fabric. There are typically two or three trends:
Exposing the device to a management framework
Exposing that management framework to a business centric logic
Exposing that business layer and data to end users.
This last trend is the IoT stack, which involves a new shift in the separation of what stuff happens, where data lives and where the interface lies. For instance, it's a mix of architectural styles between cloud, APIs and native hardware/software configurations.
Яркие примеры, иллюстрирующие ключевые ошибки в анализе данных:
1/Опускать поправку на априорные распределения
2/ Использовать для анализа неслучайную выборку
3/ Неверная визуализация
4/ Считать корреляцию причинной связью
5/ Неверно выбранная целевая переменная
6/ Допускать переобучение модели
7/ Оставить выбросы и шумы в данных
8/ Неверно разделить исследование и оптимизацию
9/ Делать поспешные выводы
10/Выбор неправильного инструмента для анализа
Медицина, как и ожидалась, подходит к фазе "Платформизации" и "Цифровой экономики". Что меняется в ИТ инфраструктуре, какие решения и алгоритмы повлияют на применение инструментов BigData и BI при автоматизации в клинических и административных процессах ?
Video http://confhall.hse.ru/videos/video/824/ at 12 min
Нейросетевые системы автоматического распознавания морских объектовNatalia Polkovnikova
Полковникова Н.А. Нейросетевые системы автоматического распознавания морских объектов // Эксплуатация морского транспорта. Гос. морской университет им. адмирала Ф.Ф. Ушакова, Новороссийск. – 2020, №1(94). – C. 207-219.
Для эффективной борьбы с большими данными одних технологий недостаточно. Необходим правильный настрой по отношению к ним, позволяющий видеть перспективы и особенности их использования. В данном рассказе предлагается точка зрения на совокупность проблем больших данных и их возможные пути разрешения. Рассказ построен на конкретных примерах из личной практики.
Целевая аудитория доклада, ее примерный уровень: аналитики, менеджеры ИТ, CTO.
Cовременные тенденции против устаревших стереотипов бизнеса1C-KPD
• Единое информационное поле вместо 2 кг макулатуры на рабочем столе
• Не так страшна «удаленка», как отсутствие инструментов для координации сотрудников
• Быстрые коммуникации в компании как конкурентное преимущество
Инсайдеры: стороны взаимодействия - Сергей КавунHackIT Ukraine
Презентация с форума http://hackit-ukraine.com/
Сергей Кавун
Зав. каф. ИТ, д.э.н., к.т.н., доц. / ХИБС УБС
Инсайдеры: стороны взаимодействия
О спикере: Основатель (с 2008) международной научно-технической конференции "Информационная и экономическая безопасность (INFECO)". Гл. редактор журналов “Information Security and Computer Fraud”, “American Journal of Information Systems”, “Journal of Computer Networks”. Опыт работы в сфере безопасности – 15 лет. Член оргкомитетов конференций: «Securіtatea іnformationala» (Молдова, с 2008), «European Intelligence and Security Informatics Conference (EISIC)» (Европа, с 2012), “Information Security - Today and Tomorrow” (Словения, с 2013), IEEE International Conference on Intelligence and Security Informatics (IEEE ISI, США, 2015). Имеет 13 публикаций в сфере безопасности за рубежом на англ. языке.
The document discusses automated machine learning (Auto ML) which aims to automate the process of applying machine learning. It allows non-experts to develop machine learning models by automating tasks like selecting optimal algorithms and hyperparameters. Popular Auto ML frameworks include auto-sklearn, AutoKeras, Google Cloud Auto ML, and Microsoft AutoML which use techniques like Bayesian optimization and neural architecture search to automate model training and selection. The document demonstrates how Auto ML tools like H2O AutoML and ML.NET can simplify and speed up applying machine learning for both cloud-based and on-premise scenarios.
Intelligent Banking: AI cases in Retail and Commercial BankingDmitry Petukhov
The document discusses the use of artificial intelligence in retail and commercial banking. It outlines several common applications of AI such as credit scoring and risk prediction, payments security, operational efficiencies, customer services, and personal finance management. For each application, it provides examples of specific AI tasks and cases used in banking. The document also discusses considerations for AI implementation including infrastructure requirements and deployment options.
This document discusses Infrastructure as a Service (IaaS), Platform as a Service (PaaS), and DevOps for data science. It provides an overview of Azure services for IaaS including virtual machines and GPU instances. It also discusses PaaS options like Azure Machine Learning for deploying models as web services. The document advocates for using Azure services like HDInsight, Data Factory and Machine Learning to build distributed and scalable data science systems following architectures like lambda architecture. It highlights pros and cons of different approaches for flexibility, scalability and using open source tools for data science workloads on Azure.
This document discusses using R with Microsoft Azure. It begins by outlining how Azure provides scalability, reliability and fault tolerance for moving models from prototyping to production. It then highlights several Azure services that support R, including HDInsight clusters, the Data Science VM, Azure Machine Learning, and SQL Server R Services. References are provided for learning more about using R with Azure Machine Learning and DistributedR.
Доклад посвящен экосистеме Cortana Analytics Suite, в т.ч. сервису предиктивной аналитики Azure Machine Learning. В demo-части доклада разбирается задача анализа тональности сообщений в социальных сетях.
Видео выступления и пояснения к demo-доклада доступно на http://0xcode.in/dev-camp
2. Говорят, что компьютерная программа обучается на основе опыта E по отношению к
некоторому классу задач T и меры качества P, если качество решения задач из T, измеренное
на основе P, улучшается с приобретением опыта E.
T.M. Mitchell. Machine Learning, 1997.
Машинное обучение — процесс, в результате которого машина (компьютер) способна
показывать поведение, которое в нее не было явно заложено (запрограммировано).
A.L. Samuel. Some Studies in Machine Learning Using the Game of Checkers, 1959.
Терминология
12. MachineHuman
Private cloud Public cloudHybrid cloud
Forget or Secure Store and share
Machine Intelligence Stack
Cost
Law? Ethics?
Black box?
13. Architecture: Data Flow Online
Real-time processing
Transactions stream
Risk score
Internal data
Transactions Log (WAY4),
customers/merchants CRMs,
black/white lists
External data
НБКИ, ФНС, ПФР, ФССП,
location & devices definition, social
graph, mobile provider score
1. Preprocessing data 2. Calculate statistics 3. Train model 4. Evaluate model
DetailsRaw Aggregates Model
Private data (152-ФЗ)
Payment data (PCI DSS)
0. Retrieve data
17. 1% женщин в возрасте 40 лет, участвовавших в регулярных обследованиях, имеют рак груди. 80% женщин с раком
груди имеют положительный результат маммографии. 9,6% здоровых женщин также получают положительный
результат (маммография, как любые измерения, не дает 100% результатов).
Женщина-пациент из этой возрастной группы получила положительный результат на регулярном обследовании.
Какова вероятность того, что она фактически больна раком груди?
Step 2: Calculate Statistics
18. Step 3: Train Model
Algorithm Selection Challenge
Algorithm Accuracy Speed Specifics
1. Logistic regression low fast linearly separable
2. Decision Tree low medium human-readable
3. Boosted Decision Tree high medium generalization ability
4. Neural Networks medium-high low pattern recognition
5. Deep Learning high very low magic AI
19. Step 4: Evaluate Model
Accur𝑎𝑐𝑦 =
𝑇𝑃 + 𝑇𝑁
𝑃 + 𝑁
𝑅𝑒𝑐𝑎𝑙𝑙
∗
=
𝑇𝑃
𝑇𝑃 + 𝐹𝑁
Challenges:
Imbalanced classes;
False Positive Penalty != False Negative Penalty;
Calculate business-metrics:
Direct and indirect losses;
Bonus:
if you change Threshold, you will change everything…
𝑃𝑟𝑒𝑐𝑖𝑠𝑖𝑜𝑛 =
𝑇𝑃
𝑇𝑃 + 𝐹𝑃
𝐹2 =
𝑝𝑟𝑒𝑐𝑖𝑠𝑖𝑜𝑛 ∙ 𝑟𝑒𝑐𝑎𝑙𝑙
𝑝𝑟𝑒𝑐𝑖𝑠𝑖𝑜𝑛 + 𝑟𝑒𝑐𝑎𝑙𝑙
Wikipedia
21. References
1. Bansal, M. Credit Card Fraud Detection Using Self Organised Map (2014) International Journal of Information & Computation Technology,
Volume 4, Number 13.
2. Chan, P.K., Fan, W., Prodromidis, A.L., Stolfo, S.J. Distributed data mining in credit card fraud detection (1999) IEEE Intelligent Systems and
Their Applications, 14 (6).
3. Grolinger, K., Hayes, M., Higashino, W.A., L'Heureux, A., Allison, D.S., Capretz, M.A.M. Challenges for MapReduce in Big Data (2014)
Proceedings of the 2014 IEEE World Congress on Services.
4. Khan, A., Akhtar, N., and Qureshi, M. Real-Time Credit-Card Fraud Detection using Artificial Neural Network Tuned by Simulated Annealing
Algorithm (2014) ACEEE, Proc. of Int. Conf. on Recent Trends in Information, Telecommunication and Computing, ITC 2014 Chandigarh,
India.
5. Lu, Q., Ju, C. Research on credit card fraud detection model based on class weighted support vector machine (2011) Journal of Convergence
Information Technology, 6 (1).
6. Mardani, S., Akbari, M.K., Sharifian, S. Fraud detection in Process Aware Information systems using MapReduce (2014) 2014 6th Conference on
Information and Knowledge Technology, IKT 2014.
7. Dmitry Petukhov, A. Tselykh. Web service for detecting credit card fraud in near real-time (2015) Proceedings of the 8th International
Conference on Security of Information and Networks.
Advanced References
1. Максим Федотенко. Как защищают банки: разбираем устройство и принципы банковского антифрода. Журнал Хакер, 2017.
2. Дмитрий Петухов. Цикл статей: Антифрод как сервис. Интернет-ресурс 0xCode.in, 2016.
23. Q&A
Now or later (see contacts below)
Stay connected
Facebook: @code.zombi
Habr: @codezombie
All contacts: http://0xCode.in/author
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