Dynamic mission planning for drones with Azure Maps

Real-time location intelligence is critical for business operations. From getting real-time road data, to building asset-tracking solutions for navigating drone fleets. Today, we’re excited to highlight a customer, AirMap, whose software solutions rely on Azure Maps for real-time location intelligence in a new frontier of technology called dynamic mission planning for drones.

AirMap is the leading global airspace management platform for drones. AirMap’s Unmanned Traffic Management (UTM) platform enables the deployment and operations of safe, efficient, and advanced drone operations for enterprises and drone solution providers. Since 2017, AirMap has been part of the Microsoft Ventures portfolio and has chosen Microsoft Azure as its trusted cloud for its cloud-based UTM platform. AirMap offers open, standardized APIs and SDKs that make it easy for software developers to integrate AirMap’s intelligence services and capabilities into third party applications. This includes situational awareness of flight conditions, airspace advisories, and global airspace regulations. The AirMap developer platform also offers easy access to AirMap’s global network of airspace authorities, who offer notification, authorization, and more to drone operators on the AirMap UTM platform.

Figure 1: AirMap dynamically renders polygons representing different geographic areas subject to airspace regulations.

When faced with the decision of selecting location intelligence services, AirMap didn’t have to venture far with Azure Maps offering world-class geospatial capabilities natively in Azure. This allowed for seamless, secure, and scalable integration with AirMap’s existing Azure solution.

“The speed and performance of Azure Maps is a strong complement to AirMap’s safety-critical airspace intelligence services.”

– Andreas Lamprecht, Chief Technology Officer, AirMap

AirMap utilized the vector tile service (Figure 1) on Azure Maps to create an AirMap contextual airspace plugin for Azure Maps. This plugin allows users to view and interact with AirMap’s contextual airspace advisory layers, rendered on dynamic map tiles from Azure Maps. The Azure Maps custom vector tile service supported AirMap’s high performance needs of visualizing a large data set with custom data-driven styling. The Azure intelligent cloud platform provides the ideal infrastructure for operating AirMap’s complex and real-time tracking solutions. The AirMap widget for Azure Maps enables developers to include drone-specific data and capabilities into a variety of Azure solutions, which is critical for safe drone operation. Azure Maps developers can further enrich map visualization by adding imagery captured by drones using image layers. Other Azure Maps capabilities include satellite imagery, search, and routing which can be used to implement solutions for agriculture, construction sites, insurance firms, and many other industries that will increasingly leverage drone technology.

To get started, you can install the AirMap contextual airspace plugin for Azure Maps.
Quelle: Azure

Getting started with Cloud TPUs: An overview of online resources

The foundation for machine learning is infrastructure that’s powerful enough to swiftly perform complex and intensive data computation. But for data scientists, ML practitioners, and researchers, building on-premises systems that enable this kind of work can be prohibitively costly and time-consuming. As a result, many turn to providers like Google Cloud because it’s simpler and more cost-effective to access that infrastructure in the cloud.The infrastructure that underpins Google Cloud was built to push the boundaries of what’s possible with machine learning—after all, we use it to apply ML to many of our own popular products, from Street View to Inbox Smart Reply to voice search. As a result, we’re always thinking of ways we can accelerate machine learning and make it more accessible and usable.One way we’ve done this is by designing our very own custom machine learning accelerators, ASIC chips we call tensor processing units, or TPUs. In 2017 we made TPUs available to our Google Cloud customers for their ML workloads, and since then, we’ve introduced preemptible pricing, made them available for services like Cloud Machine Learning Engine and Kubernetes Engine, and introduced our TPU Pods.While we’ve heard from many organizations that they’re excited by what’s possible with TPUs, we’ve also heard from some that are unsure of how to get started. Here’s an overview of everything you might want to know about TPUs—what they are, how you might apply them, and where to go to get started.I want a technical deep dive on TPUsTo give users a closer look inside our TPUs, we published an in-depth overview of our TPUs in 2017 based on our in-datacenter performance analysis whitepaper.At Next ‘18, “Programming ML Supercomputers: A Deep Dive on Cloud TPUs” covered the programming abstractions that allow you to run your models on CPUs, GPUs, and TPUs, from single devices up to entire Cloud TPU pods. “Accelerating machine learning with Google Cloud TPUs” from O’Reilly AI Conference in September, also takes you through a technical deep dive on TPUs, as well as how to program them.And finally, you can also learn more about what makes TPUs fine-tuned for deep learning and hyperparameter tuning using TPUs in Cloud ML Engine.I want to know how fast TPUs are, and what they might costIn December, we published the MLPerf 0.5 benchmark results which measure performance for training workloads across cloud providers and on-premise hardware platforms. The findings demonstrated that a full Cloud TPU v2 pod can deliver the same result in 7.9 minutes of training time that would take a single state-of-the-art GPU 26 hours.From a cost perspective, the results also revealed revealed a full Cloud TPU v2 Pod can cost 38% less, than training the same model to the same accuracy on an n1-standard-64 Google Cloud VM with eight V100 GPUs attached, and can complete the training task 27 times faster. We also shared more on why we think Google Cloud is the ideal platform to train machine learning models at any scale.I want to I want to understand the value of adopting TPUs for my businessThe Next ‘18 session Transforming Your Business with Cloud TPUs can help you identify business opportunities to pursue with Cloud TPUs across a variety of application domains, including image classification, object detection, machine translation, language modeling, speech recognition, and more.One example of a business already using TPUs is eBay. Visual search is an important way eBay customers quickly find what they’re looking for. But with more than a billion product listings, eBay has found training a large-scale visual search model is no easy task. As a result, they turned to Cloud TPUs. You can learn more by reading their blog or watching their presentation at Next ’18.I want to quickly get started with TPUsThe Cloud TPU Quickstart sets you up to start using TPUs to accelerate specific TensorFlow machine learning workloads on Compute Engine, GKE, and Cloud ML Engine. You can also take advantage of our open source reference models and tools for Cloud TPUs. Or you can try out this Cloud TPU self-paced lab.I want to meet up with Google engineers and others in the AI community to learn moreIf you’re located in the San Francisco Bay Area, our AI Huddles provide a monthly, in-person place where you can find talks, workshops, tutorials, and hands-on labs for applying ML on GCP. At our November AI Huddle, for example, ML technical lead Lak Lakshmanan shared how to train state-of-the-art image and text classification models on TPUs. You can see a list of our upcoming huddles here.Want to keep learning? Visit our website, read our documentation, or give us feedback.
Quelle: Google Cloud Platform

HDInsight now supported in Azure CLI as a public preview

We recently introduced support for HDInsight in Microsoft Azure CLI as a public preview. With the addition of the new HDInsight command group, you can now utilize all of the features and benefits that come with the familiar cross-platform Azure CLI to manage your HDInsight clusters.

Key Features

Cluster CRUD: Create, delete, list, resize, and show properties for your HDInsight clusters.
Script actions: Execute script actions, list and delete persistent script actions, promote ad-hoc script executions to persistent script actions, and show the execution history of script actions on HDInsight clusters.
Operations Management Suite (OMS): Enable, disable, and show the status of OMS/Log Analytics integration on HDInsight clusters.
Applications: Create, delete, list, and show properties for applications on your HDInsight clusters.
Core usage: View available core counts by region before deploying large clusters.

Azure CLI benefits

Cross platform: Use Azure CLI on Windows, macOS, Linux, or the Azure Cloud Shell in a browser to manage your HDInsight clusters with the same commands and syntax across platforms.
Tab completion and interactive mode: Autocomplete command and parameter names as well as subscription-specific details like resource group names, cluster names, and storage account names. Don't remember your 88-character storage account key off the top of your head? Azure CLI can tab complete that as well!
Customize output: Make use of Azure CLI's globally available arguments to show verbose or debug output, filter output using the JMESPath query language, and change the output format between json, tab-separated values, or ASCII tables, and more.

Getting started

Install Azure CLI for Windows, macOS, or Linux. Alternatively, you can use Azure Cloud Shell to use Azure CLI in a browser.
Log in using the az login command.
Run az account show to view your currently active subscription.

If you want to change your active subscription, run az account set -s <Subscription Name>

Take a look at our reference documentation, “az hdinsight” or run az hdinsight -h to see a full list of supported HDInsight commands and descriptions and start using Azure CLI to manage your HDInsight clusters.

Try HDInsight now

We hope you will take full advantage of HDInsight support in Azure CLI and we are excited to see what you will build with Azure HDInsight. Read this developer guide and follow the quick start guide to learn more about implementing these pipelines and architectures on Azure HDInsight. Stay up-to-date on the latest Azure HDInsight news and features by following us on Twitter #AzureHDInsight and @AzureHDInsight. For questions and feedback, reach out to AskHDInsight@microsoft.com.

About HDInsight

Azure HDInsight is an easy, cost-effective, enterprise-grade service for open source analytics that enables customers to easily run popular open source frameworks including Apache Hadoop, Spark, Kafka, and others. The service is available in 27 public regions and Azure Government Clouds in the US and Germany. Azure HDInsight powers mission-critical applications in a wide variety of sectors and enables a wide range of use cases including ETL, streaming, and interactive querying.
Quelle: Azure

LG: V40 Thinq kostet 900 Euro

Bereits im Oktober 2018 hat LG sein neues Smartphone V40 Thinq vorgestellt, jetzt rückt der Hersteller auch mit einem Preis heraus: 900 Euro soll das Gerät mit insgesamt fünf Kameras in Deutschland kosten. Auch eine neue Smartwatch wird auf den Markt kommen. (LG, Smartphone)
Quelle: Golem