AWS Pricing Calculator unterstützt jetzt Windows Server und SQL Server-Workload-Kostenkalkulation

AWS Pricing Calculator unterstützt jetzt Windows Server und SQL Server-Workload-Kostenkalkulation. Die Workload-Kalkulation erfasst jetzt die Microsoft-Lizenzierung. Der Windows Server und SQL Server auf Amazon EC2-Rechner bietet eine Auswahl an Lizensierungsoptionen wie z. B. von AWS bereitgestellte Lizenzen mit License Included (LI)-Angeboten und bestehenden Lizenzen von Kunden mit bring your own license (BYOL)-Angeboten für optimale Kosteneinsparungen. Es erkennt auch eine geeignete Cloud-Tenancy und ein Kosteneinsparungs-Preismodell, basierend auf Lizensierungs- und Infrastruktur-Eingaben.
Quelle: aws.amazon.com

AWS CodeBuild ist jetzt in der Region Afrika (Kapstadt) verfügbar

AWS CodeBuild ist jetzt in der Region Afrika (Kapstadt) verfügbar. AWS CodeBuild ist ein vollständig verwalteter Service für die kontinuierliche Integration. Sie können damit Quellcode kompilieren, Tests ausführen und implementierbare Softwarepakete generieren. Dank CodeBuild brauchen Sie keine eigenen Entwicklungsserver mehr bereitzustellen, zu verwalten und zu skalieren. CodeBuild passt sich kontinuierlich der Arbeitslast an und kann auch mehrere Builds gleichzeitig verarbeiten. Keine Builds bleiben mehr in Warteschlangen hängen. Mit den vorkonfigurierten Build-Umgebungen gelingt der Einstieg leicht. Jedoch können Sie auch benutzerdefinierte Build-Umgebungen mit Ihren eigenen Entwicklungstools erstellen. Die für CodeBuild in Anspruch genommenen Rechenressourcen werden minutengenau abgerechnet.
Quelle: aws.amazon.com

Amazon Connect unterstützt jetzt die Freigabe von Anhängen im Chat

Sie können jetzt Anhänge direkt über Amazon Connect Chat versenden, was es einfacher denn je macht, die Anforderungen Ihres Kundenservice zu lösen. Ein Mitarbeiter kann beispielsweise eine Kopie einer aktuellen Hotelrechnung senden oder ein Kunde kann ein Foto eines beschädigten Produktes freigeben. Anhänge sind in das Chat-Transkript eingeschlossen, um sicherzustellen, dass der vollständige Kontext von der Konversation verfügbar ist, wenn ein Kontakt an einen anderen Agenten übertragen wird. Die Dateien werden auch in Ihrem S3-Bucket gespeichert, um den Zugriff von anderen Systemen wie Customer Relationship Management (CRM)- oder Fallverwaltungssysteme zu ermöglichen. Sie können Anhänge in der AWS-Konsole mit wenigen Klicks einschalten.
Quelle: aws.amazon.com

Ankündigung der allgemeinen Verfügbarkeit von Amazon Corretto 11 für Linux in ARM32 und für Windows in x86 (32-bit)

Amazon Corretto11 in ARM32 für Linux-Plattformen und x86 (32-bit) in Windows sind jetzt allgemein verfügbar. Mit unserer Entwicklung von ARM32, können Sie jetzt Corretto 11 in Linux-Distributionen auf 32bit ARMv7-Hardware ausführen. Unser x86 auf Windows-Built wird auf den gleichen unterstützten Versionen von Windows ausgeführt und die Nutzung von 32-bit-Bibliotheken ermöglichen. Diese sind voll funktionsfähige, vollständig unterstützte JDK 11-Builds. Jedes Problem zu unsem GitHub-Repository können Sie unter https://github.com/corretto melden.
Quelle: aws.amazon.com

A revolution is coming for data and the cloud: 6 predictions for 2021

Offering predictions can be a challenge, because specific predictions depend on specific timeframes. But looking at the trends that we’re seeing in cloud adoption, there are a few things I’ve seen in 2020 that imply changes we will be seeing in 2021. As someone who was a network engineer when the internet revolution happened, I can see the signs of another revolution—this time built around the cloud and data—and acting on the signs of change will likely tell the difference between the disruptors and the disrupted. Here’s what I see coming down the road, and what’s important to keep in mind as we head into a new year.1. The next phase of cloud computing is about the benefits of transformation (not just cost). In 2021, cloud models will start to include a governed data architecture, with accelerated adoption of analytics and AI throughout an organization. In the past, we’ve seen notable developments that have driven massive cloud adoption movements. The first wave of cloud migration was driven by applications as a service, which gave businesses the tools to develop more quickly and securely for specific applications, e.g. CRM. Then, the second generation saw a lot of companies modernizing infrastructure to move on from physical data center maintenance.  That’s all been useful for businesses, but with all that’s happened in 2020, the third phase—digital transformation—will arrive in earnest. As this happens, we’ll start to see the benefits that come from truly transforming your business. Positive outcomes include the infusion of data analytics and AI/ML into everyday business processes, leading to profound impacts across every industry and society at large.2. Compliance can’t just be an add-on item.The modern cloud model has to be one that can withstand the scrutiny around data sovereignty and accessibility questions. It’ll change how companies do business and how much of society is run. Even large, traditional enterprises are moving to the cloud to handle urgent needs, like increased regulations. The stakes are too high now for enterprises to ignore the critical components of security and privacy. One of the big reasons the cloud—and Google Cloud specifically—is so vital to better data analytics revolves around these questions of compliance and governance. Around the world, for businesses of every size, there’s an increased focus on security, privacy, and data sovereignty. So much of the digital transformation that we’ll see in 2021 will happen out of necessity, but today’s cloud is what makes it possible. Google Cloud is a platform built ground-up based on these foundational requirements, so enterprises can make the transition to the cloud with the assurance that data is protected.  3. Open infrastructure will reign supreme. By 2021, we’ll see 80% or more of enterprises adopt a multicloud or hybrid IT strategy. Cloud customers want options for their workloads. Open infrastructure and open APIs are the way forward, and the open philosophy is one you should embrace. No business can afford to have its valuable data locked into a particular provider or service. This emerging open standard means you’ll start to see multi-cloud and on-premises data sources coming together rapidly. With the right tools, organizations can use multiple cloud services together, letting them gain the specific benefits they need from each cloud as if it was all one infrastructure. The massive shift we’re seeing toward both openness and cloud also brings a shift toward stronger data assets and better data analytics. If you’ve been surprised over the past year about how many data sources exist for your company, or how much of it is gathered, you’re not alone. An open infrastructure will let you choose the cloud path that works best for your business. Data solutions like Looker and BigQuery Omni are specifically designed to work in an open API environment on our open platform to stay ahead of continually changing data sources.4. Harnessing the power of AI/ML will no longer require a degree in data science. Data science, with all of the expertise and specialized tools that have typically been involved, can no longer be the purview of just the privileged few. Teams throughout an organization need to have access to the power of data science, with capabilities like ML modeling and AI, without having to learn an entirely new discipline. For many of these team members, it’ll bring new life into their jobs and the decisions they need to make. If they haven’t been consuming data, they’ll start. With this capacity to give the whole team the power of analytics, businesses will be able to gather, analyze, and act on data far quicker than those who are still using the traditional detached data science model. This improves productivity and informed decision making by giving employees the tools to gather, sort, and share data on demand. It also frees up teams with data science experience that would normally be assembling, analyzing, and creating presentations to concentrate on tasks that are more suited to their abilities and training.  With Google Cloud’s infrastructure and our data and AI/ML solutions, it’s easy to move data to the cloud easily and start analyzing it. Tools like Connected Sheets, Data QnA, and Looker make data analytics something that all employees can do, regardless of whether they are certified data analysts or scientists. 5. More and more of the world’s enterprise data will need to be processed in real time. We’re quickly getting to the point where data residing in the cloud outpaces data residing in data centers. That’s happening as worldwide data is expected to grow 61% by 2025, to 175 zettabytes. That’s a lot of data, which offers a trove of opportunity for businesses to explore. The challenge is capturing data usefulness in the moment. Following past stored data can be informative, but more and more use cases require immediate information, especially when it comes to reacting to unexpected events. For example, identifying and stopping a network security breach in the moment, with real-time data and a real-time reaction, has enormous consequences for a business. That one moment can save untold hours and costs spent on mitigation.This is the same method that we use to help our customers overcome DDOS attacks, and if 2020 has taught us anything, it’s that businesses will need this ability to instantly respond to unexpected problems more than ever moving forward.While real-time data revolutionizes how quickly we gather data, perhaps the most unexpected yet incredibly useful source of data we’ve seen is predictive analytics. Traditionally, data is gathered only from the physical world, meaning the only way to plan for what will happen was to look at what could physically be tested. But with predictive models and AI/ML tools like BigQuery ML, organizations can run simulations based on real-life scenarios and information, giving them data on circumstances that would be difficult, costly, or even impossible to test for in physical environments.Related ArticleRead Article6. More than 50% of data lakes will span multiple clouds and on-premises. We know that aligning the right services to the right use cases can be complicated. And while the cloud opens up a ton of opportunities for better data options, the fact that so many businesses are moving to these cloud solutions means that organizations will need a strong digital strategy to stay competitive, and this extends down to their data storage. Lots of businesses are choosing multicloud for flexibility, especially with so many options available. In the cloud, data storage has taken the shape of either a data warehouse—which stores primarily structured data so that everything is easily searchable—or data lakes—which bring together all of a business’ data together, regardless of structure. We’ll see more of the trend we’ve already seen, starting with the line between lake and warehouse getting blurrier. Google Cloud has a variety of data lake modernization solutions that give organizations the ability to integrate unstructured data as well as use AI/ML solutions to make data lakes easier to navigate, driving insights and collaboration.What’s next for your business?Change is happening fast, and while it can be overwhelming, all these technology changes are really exciting. At the end of it, you’ll be able to respond in real-time to problems, help your business users get their data without delay, and know for sure the entire lifecycle of any of your data. Let’s get started.Check out our guide to building a modern data warehouse or see how data-to-value leaders succeed in driving results from their enterprise data strategy in the report by Harvard Business Review Analytic Services: Turning data into unmatched business value.
Quelle: Google Cloud Platform

In case you missed it: here’s what happened in data analytics in 2020

2020 was a tough year. As the global pandemic spread and impacted every country, industry, and individual, we turned to data and analytics to help guide us through the unknown. We used data and the cloud to help us understand the spread of COVID-19 while simultaneously digitally transforming industries to offer a safer way for the public to get what they need when they need it. Data and analytics became a critical tool for our essential workers and businesses as they navigated this trying time. Our data analytics team was hard at work to help organizations rethink their business strategy in order to deliver services to their customers.Everything we heard from customers this year and what we worked on here at Google Cloud reflects this new sense of urgency around using and sharing data across the digital world. Here’s a look back at the four major themes we focused on in 2020 and why they will be more relevant than ever in 2021.Beyond BI—do more with intelligent services The amount of data generated today is overwhelming, but an abundance of data doesn’t necessarily equate to useful information. Companies are already employing business intelligence (BI) to get insights from their data and achieve better business outcomes. Now, they can augment their current solutions with AI and machine learning (ML) to analyze massive datasets, recognize patterns, and gain insights that help define the past, the present—and the future.For example, Looker enables teams to go beyond traditional reports and dashboards to deliver modern BI, integrated insights, data-driven workflows, and custom applications using Looker Blocks. Users also benefit from real-time analytics and aggregate awareness capabilities to stream the most relevant data for high performance and efficient queries. You can use BigQuery ML to build custom ML models without moving data from the warehouse, including real-time AI solutions like anomaly detection. Additionally, the natural language interface Data QnA, announced at Next OnAir, empowers business users to analyze datasets conversationally without adding more work for BI teams.Related ArticleRead ArticleOpen platforms for choice, flexibility, and portabilityWith the proliferation of SaaS applications and a workload-at-a-time migration mentality, a majority of enterprise cloud architectures are being built with two or more public clouds. This allows enterprises to take advantage of the lowest storage and compute costs, use the most innovative AI and ML services, and provides freedom of portability if needed. That’s why we are committed to being open at Google Cloud.By 2021, over 75% of midsize and large organizations will have adopted a multicloud and/or hybrid IT strategy. Gartner PredictsWe’re breaking down silos across different environments to enable our customers to manage, process, analyze, and activate data—no matter where it is. This year, we introduced BigQuery Omni, our flexible, multi-cloud analytics solution that lets you analyze data in Google Cloud, AWS, and Azure (coming soon) without the need for cross-cloud data movement. In addition, Looker’s in-database architecture allows you to query data where it’s located to give you a consistent way to analyze data, even across multiple databases and clouds. We believe our vision of a multi-cloud, open data analytics future was reflected in this year’s brand-new Gartner Magic Quadrant for Cloud Database Management Systems (DBMS). Google was named a Leader among the furthest three positioned vendors on the completeness-of-vision axis. In 2020, we also helped organizations like Wayfair migrate their on-prem data analytics open source software to our open cloud. This type of portability allows them to take advantage of cloud scale and costs with Dataproc, while lowering the adoption barrier for their data analytics professionals familiar with Apache Spark, Presto, and Apache Hive.To strengthen our backup and DR capabilities across all of Google Cloud, Google recently acquired Actifio. Enterprises running critical workloads on Google Cloud, including hybrid scenarios, can prevent data loss and downtime due to external threats, network failures, human errors, and other disruptions.  Scale intelligently without losing controlData analytics are now mission-critical for many businesses, but how do you respond efficiently to rapid demand and put data into the right hands without driving up costs? Can you achieve flexibility and predictability? Over the past year, we heard from customers as they navigated the unprecedented jump to online shopping as brick-and-mortar retailers shut their doors. At the same time, they still had to plan for regular calendar events like Black Friday/Cyber Monday and product launches. We announced BigQuery Flex Slots to help them scale their cloud data warehouses up and down quickly while only paying for what they consumed. We also made it easier to optimize data processing and migration to the cloud with a new Dataflow change data capture (CDC) solution that focuses on ingesting and processing changed records, rather than all available data. In addition, we recognize that organizations are dealing with an increasing number of rich assets to meet the demands of a data-driven workforce. Data is now used by everyone in an organization—not just data analysts. To us, that means giving people smart tools to derive more value regardless of their roles, such as a data catalog for self-service data discovery or product recommendation reference patterns that make it easier to use data to improve customer experience.Making data analytics work for youDespite its challenges, 2020 was also a year of unimaginable growth, innovation, and inspiration. At Google Cloud, we learned a lot about what’s important to you and how you’re using data analytics to reach new milestones. We heard stories from KeyBank and Trendyol Group as they migrated to BigQuery cloud data warehouse, learned how Procter & Gamble uses cloud analytics to personalize their consumer experience, and helped ThetaLabs partner with NASA to deliver more engaging streaming video. Major League Baseball (MLB) used Google Cloud to derive better insights from baseball data that helps broadcasters and content generators tell better stories and drive fan engagement. Conrad Electric selected Looker to gain visibility into product performance and unlock insights to optimize them accordingly. And Blue Apron embedded smart analytics across the entire customer journey, from recipe recommendations and improving the quality of their supply chain to streamlining packaging workflows. But perhaps the most inspiring leaps have been the ways smart analytics can be leveraged to help in the face of crisis. For instance, Commonwealth Care Alliance (CCA) used data analytics from Google Cloud to help clinicians and care managers prioritize care for high-risk patients. Reliable data and an easy way to get answers has made it possible for them to keep pace with changing factors and ensure they could provide the best care for their members.Get ready for 2021 Google Cloud data analytics training for all skill levels gives you the confidence to build a data cloud and take advantage of our open, flexible, and intelligent platform. Learn more about our smart analytics solutions at Google Cloud. On behalf of Google, we’d like to thank you for being on this journey with us. We wish you the warmest of holiday seasons and can’t wait to see what we’ll build together in 2021. Gartner, Magic Quadrant for Cloud Database Management Systems, November 23, 2020, Donald Feinberg, Adam Ronthal, Merv Adrian, Henry Cook, Rick GreenwaldGartner does not endorse any vendor, product or service depicted in its research publications and does not advise technology users to select only those vendors with the highest ratings or other designation. Gartner research publications consist of the opinions of Gartner’s research organization and should not be construed as statements of fact. Gartner disclaims all warranties, expressed or implied, with respect to this research, including any warranties of merchantability or fitness for a particular purpose.Related ArticleMost popular public datasets to enrich your BigQuery analysesCheck out free public datasets from Google Cloud, available to help you get started easily with big data analytics in BigQuery and Cloud …Read Article
Quelle: Google Cloud Platform