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Tech News

3711 Articles
article-image-kubernetes-1-10-released
Vijin Boricha
09 Apr 2018
2 min read
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Kubernetes 1.10 released

Vijin Boricha
09 Apr 2018
2 min read
Kubernetes has announced their first release of 2018: Kubernetes 1.10. This release majorly focuses on stabilizing 3 key areas which include storage, security, and networking. Kubernetes is an open-source system, initially designed by Google and at present is maintained by the Cloud Native Computing Foundation, which helps in automating deployment, scaling, and management of containerized applications. Storage - CSI and Local Storage move to beta: In this version, you will find: The Container Storage Interface (CSI) moves to beta. One can install new volume plugins similar to deploying a pod. This helps third-party storage providers to develop independent solutions outside the core Kubernetes codebase. Local storage management has also progressed to beta, enabling locally attached storage available as a persistent volume source. This assures lower-cost and higher performance for distributed file systems and databases. Security - External credential providers (alpha): Complementing the Cloud Controller Manager feature added in 1.9 Kubernetes has extended its feature with the addition of External credential providers in 1.10. This enables Cloud providers and other platform developers to release binary plugins to handle authentication for specific cloud-provider Identity Access Management services. Networking - CoreDNS as a DNS provider (beta): Kubernetes now provides the ability to switch the DNS service to CoreDNS during installation. CoreDNS is a single process that can now supports more use cases. To get a complete list of additional features of this release visit the Changelog. Check out other related posts: The key differences between Kubernetes and Docker Swarm Apache Spark 2.3 now has native Kubernetes support! OpenShift 3.9 released ahead of planned schedule
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article-image-windows-launches-progressive-web-apps
Richard Gall
09 Apr 2018
2 min read
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Windows launches progressive web apps... that don't yet work on mobile

Richard Gall
09 Apr 2018
2 min read
Progressive web apps are now available on the Microsoft store. But just when you thought Microsoft was taking a step to plug the 'app gap' and catch up with the competition... This first wave of progressive web apps won't actually work on Windows mobile. One of the central problems with the new Windows progressive web apps is that they do not have service workers implemented for Edge mobile - that means they aren't able to send push notifications. This is bad news generally for the Windows 10 mobile platform. It's possible that Microsoft might add further updates for progressive web apps on mobile, but it nevertheless sends signals that Microsoft just doesn't have the hunger to commit to their mobile project. As we've seen just a few days ago, the company more broadly appears to be moving towards infrastructure and cloud projects. The issues around progressive web apps might well just be symptomatic of this broader organizational shift. For TechRadar, this is a misstep by Microsoft. "There’s very little evidence out there that Microsoft is willing to put in the massive effort needed to get back on terms with iOS and Android devices, even in the enterprise sector, so the future doesn’t look too rosy at the moment." However, while disappointment is understandable, there's a chance that these issues will be corrected. It wouldn't actually take that much for Microsoft to fix the problem. Development teams could then deploy updates to their respective applications pretty easily, without having to go through the rigmarole of submitting to the app store once again. The list of companies who have PWAs available are, we should note, pretty impressive. It's clear that some big players in a number of different fields want to get involved: Skyscanner Asos Ziprecruiter Oyster StudentDoctorNetwork What this means for the future of Windows mobile isn't clear. It certainly doesn't look great from Microsoft's perspective, and you could say this has been a bit of a missed opportunity. But all is not lost, and they could quickly recover to use PWAs to redefine the future of its mobile offering. Check out other latest news: Verizon launches AR Designer, a new tool for developers Leap Motion open sources its $100 augmented reality headset, North Star
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article-image-is-comet-the-new-github-for-artificial-intelligence
Pravin Dhandre
09 Apr 2018
2 min read
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Is Comet the new Github for Artificial Intelligence?

Pravin Dhandre
09 Apr 2018
2 min read
Comet.ml, is one of the infrastructure-agnostic machine learning (ML) platforms which is simple, fast and free for open source projects. It launched the first platform for data science and machine learning users to track, monitor and optimize their machine learning models. Comet allows data science teams to track their code, experiments, and results on machine learning projects. The newly launched platform allows users to optimize their machine learning and artificial intelligence models and twist hyperparameters of their demonstrations. The platform also provides dashboards which help in collaboration of codes of the ML research and results. It allows researchers to view results with an intuitive graph and compare various aspects and versions of the machine learning experiments. Comet also functions on popular Machine Learning libraries such as Keras, TensorFlow, PyTorch, scikit-learn, and Theano. The platform allows teammates to collaborate real-time without affecting the mobility and adaptability of the datasets and production models. Key Features of Comet: Single-line Tracking - Start tracking with just a single line into your training code. It works on any machine and with any type of model. Compare Experiments - Compare different experiments and observe the code differences, hyper-parameters, and various other data points. Integration with Git - Comet allows to integrate with Github and other git service providers. After finalizing  the experiment, it automatically generates a pull request with the model with the best accuracy to the Github repository. Collaboration - Share multiple projects with team members and stakeholders along with visibility and insights into project team performance. Documentation -  Provides Notes section allowing you to add and manage documentation for all projects and training experiments. Comet is already adopted by more than 30 industry leaders and research universities with more than 6000 large-scale machine learning models. Check out the video to know more about the platform functionality: https://www.youtube.com/watch?v=LlsRMQjV__c&feature=youtu.be Other latest news for a quick read: Deeplearning4j 1.0.0-alpha arrives! How greedy algorithms work?  
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article-image-verizon-launches-ar-designer-new-ar-tool-for-developers
Richard Gall
09 Apr 2018
2 min read
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Verizon launches AR Designer, a new tool for developers

Richard Gall
09 Apr 2018
2 min read
Verizon's AR creative studio Envrmnt has launched an app for creating augmented reality applications: AR Designer. According to Verizon, it's an easy to use tool that allows developers and even non-technical creatives create augmented reality experiences for mobile apps. This might just be the thing to establish augmented reality in the mainstream. AR Designer makes adding AR capabilities to apps easy Ease of use is one of the key features of AR Designer. This was something T.J. Vitolo, the director of Product Management and Development at Verizon was keen to make clear: "Today’s mobile-first users expect brands, public services, and even their employers to evolve to meet their changing technology expectations for interacting with them,AR Designer enables anyone to build virtual experiences and incorporate them into their mobile application without having to hire a full development team. With AR Designer, app publishers can quickly and easily deploy a diverse set of AR experiences which can result in sales growth, a more informed public, or more effective employees." Watch this video to find out more: https://www.youtube.com/watch?v=thedlHq2fFM AR Designer is debuting at the NAB Show in Las Vegas this week. It will then be available for use to the wider public, following early trial periods with a number of Verizon's key partners. It will be interesting to see how quickly organizations move to integrate the AR Designer SDK into their mobile applications. It could be said that the tool represents a clear example of a common trend for software development tools to be built with ease of use in mind. The team at Verizon have identified that there's a lot of potential in lowering the bar of access to technical tools. How this impacts the way creative and development teams work together in the future will also be interesting to watch. Check the news page for other latest news on this topic: Windows launch progressive web apps… that don’t yet work on mobile Leap Motion open sources its $100 augmented reality headset, North Star  
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article-image-aws-greengrass-machine-learning-edge
Richard Gall
09 Apr 2018
3 min read
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AWS Greengrass brings machine learning to the edge

Richard Gall
09 Apr 2018
3 min read
AWS already has solutions for machine learning, edge computing, and IoT. But a recent update to AWS Greengrass has combined all of these facets so you can deploy machine learning models to the edge of networks. That's an important step forward in the IoT space for AWS. With Microsoft also recently announcing a $5 billion investment in IoT projects over the next 4 years, by extending the capability of AWS Greengrass, the AWS team are making sure they set the pace in the industry. Jeff Barr, AWS evangelist, explained the idea in a post on the AWS blog: "...You can now perform Machine Learning inference at the edge using AWS Greengrass. This allows you to use the power of the AWS cloud (including fast, powerful instances equipped with GPUs) to build, train, and test your ML models before deploying them to small, low-powered, intermittently-connected IoT devices running in those factories, vehicles, mines, fields..." Industrial applications of machine learning inference Machine learning inference is bringing lots of advantages to industry and agriculture. For example: In farming, edge-enabled machine learning systems will be able to monitor crops using image recognition  - in turn this will enable corrective action to be taken, allowing farmers to optimize yields. In manufacturing, machine learning inference at the edge should improve operational efficiency by making it easier to spot faults before they occur. For example, by monitoring vibrations or noise levels, Barr explains, you'll be able to identify faulty or failing machines before they actually break. Running this on AWS greengrass offers a number of advantages over running machine learning models and processing data locally - it means you can run complex models without draining your computing resources. Read more in detail on the AWS Greengrass Developer Guide. AWS Greengrass should simplify machine learning inference One of the fundamental benefits of using AWS Greengrass should be that it simplifies machine learning inference at every single stage of the typical machine learning workflow. From building and deploying machine learning models, to developing inference applications that can be launched locally within an IoT network, it should, in theory, make the advantages of machine learning inference more accessible to more people. It will be interesting to see how this new feature is applied by IoT engineers over the next year or so. But it will also be interesting to see if this has any impact on the wider battle for the future of Industrial IoT. Further reading: What is edge computing? AWS IoT Analytics: The easiest way to run analytics on IoT data, Amazon says What you need to know about IoT product development
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article-image-microsoft-commits-5-billion-iot-projects
Richard Gall
06 Apr 2018
2 min read
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Microsoft commits $5 billion to IoT projects

Richard Gall
06 Apr 2018
2 min read
Microsoft has announced that it will pour $5 billion into IoT over the next 4 years. To date, Microsoft has spent $1.5 billion, so this moves could be viewed as a step change in the organization's commitment to IoT. This makes sense for Microsoft. The company has fallen behind in the consumer technology race. It appears to be moving towards cloud and infrastructure projects instead. Azure has given it a strong position, but with AWS setting the pace in the cloud field, Microsoft needs to move quickly if it is to position itself as the frontrunner in the future of IoT. Julia White, CVP of Azure said this: "With our IoT platform spanning cloud, OS and devices, we are uniquely positioned to simplify the IoT journey so any customer—regardless of size, technical expertise, budget, industry or other factors—can create trusted, connected solutions that improve business and customer experiences, as well as the daily lives of people all over the world. The investment we’re announcing today will ensure we continue to meet all our customers’ needs both now and in the future." The timing of this huge investment has not gone unnoticed. At the end of March, Microsoft revealed that it was reorganizing to allow itself to place greater strategic attention on the 'intelligent cloud and intelligent edge'. It's no coincidence that the senior member set to leave is Terry Myerson, the man who has been leading the Windows side of the business since 2013. However, the extent to which this announcement from Microsoft is really that much of a pivot is questionable. In The Register, Simon Sharwood writes: "Five billion bucks is a lot of money. But not quite so impressive once you realise that Microsoft spent $13.0bn on R&D in FY 2017 and $12bn in each of FY 16 and 15. Five billion spread across the next four years may well be less than ten per cent of all R&D spend." The analysis from many quarters in the tech media is that this is a move that marks what many have been thinking - managing Windows' decline in favour of Microsoft's move into the cloud and infrastructure space. It's pretty hard to see past that - but it will be interesting to see how Microsoft continues to respond to competition from the likes of Amazon.
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article-image-polaris-gps-rubriks-new-saas-platform-for-data-management-applications
Savia Lobo
06 Apr 2018
2 min read
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Polaris GPS: Rubrik's new SaaS platform for data management applications

Savia Lobo
06 Apr 2018
2 min read
Rubrik, a cloud data management company launched Polaris GPS, a new SaaS platform for Data Management Applications. This new platform helps businesses and individuals to manage their information spread across the cloud. Polaris GPS delivers a single control and policy management console across globally distributed business applications that are locally managed by Rubrik’s Cloud Data Management instances. Polaris GPS SaaS Platform This new SaaS platform forms a unified system of record for business information across all enterprise applications running in data centers and clouds. The system of record includes native search, workflow orchestration, and a global content catalog, which are exposed through an open API architecture. Developers can leverage these APIs to deliver high-value data management applications for data policy, control, security, and deep intelligence. These applications can further address challenges of risk mitigation, compliance, and governance within the enterprise. Some key features of Polaris GPS : Connects all applications and data across data center and cloud with a uniform framework. No infrastructure or upgrades required. One can leverage the latest features immediately. With Polaris GPS, one can apply the same logic throughout to any kind of data and focus on business outcomes rather than technical processes. Provides faster on-demand broker services with the help of API-driven connectivity. Helps mitigate risk with automated compliance. This means one can define policies and Polaris applies these globally to all your business applications. Read more about Polaris GPS, on Rubrik’s official website.
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article-image-netflix-releases-flamescope
Richard Gall
06 Apr 2018
2 min read
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Netflix releases FlameScope

Richard Gall
06 Apr 2018
2 min read
Netflix has released FlameScope, a visualization tool that allows software engineering teams to monitor performance issues. From application startup to single threaded execution, FlameScope will provide real time insight into the time based metrics crucial to software performance. The team at Netflix has made FlameScope open  source, encouraging engineers to contribute to the project and help develop it further - we're sure that many development teams could derive a lot of value from the tool, and we're likely to see many customisations as its community grows. How does FlameScope work? Watch the video below to learn more about FlameScope. https://youtu.be/cFuI8SAAvJg Essentially, FlameScope allows you to build something a bit like a flame graph, but with an extra dimension. One of the challenges that Netflix identified that flame graphs sometimes have is that while they allow you to analyze steady and consistent workloads, "often there are small perturbations or variation during that minute that you want to know about, which become a needle-in-a-haystack search when shown with the full profile". With FlameScope, you get the flame graph, but by using a subsecond-offset heat map, you're also able to see the "small perturbations" you might have otherwise missed. As Netflix explains: "You can select an arbitrary continuous time-slice of the captured profile, and visualize it as a flame graph." Why Netflix built FlameScope FlameScope was built by the Netflix cloud engineering team. The key motivations for building it are actually pretty interesting. The team had a microservice that was suffering from strange spikes in latency, the cause a mystery. One of the members of the team found that these spikes, which occurred around every fifteen minutes appeared to correlate with "an increase in CPU utilization that lasted only a few seconds." CPU frame graphs, of course, didn't help for the reasons outlined above. To tackle this, the team effectively sliced up a flame graph into smaller chunks. Slicing it down into one second snapshots was, as you might expect, a pretty arduous task, so by using subsecond heatmaps, the team was able to create flamegraphs on a really small scale. This made it much easier to visualize those variations. The team are planning to continue to develop the FlameScope project. It will be interesting to see where they decide to take it and how the community responds. To learn more read the post on the Netflix Tech Blog.
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article-image-google-employees-protest-against-the-use-of-artificial-intelligence-in-military
Amey Varangaonkar
06 Apr 2018
3 min read
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Google Employees Protest against the use of Artificial Intelligence in Military

Amey Varangaonkar
06 Apr 2018
3 min read
Thousands of Google employees have raised their concerns regarding the use of Artificial Intelligence for military purposes. The employees, which included many senior engineers as well, have signed a petition requesting Google CEO Sundar Pichai to pull Google out of Project Maven - a Pentagon-backed project harvesting AI to improve the military technology. Pichai was also urged by employees to establish and enforce strict policies which keep Google and its associated subsidiaries from indulging in ‘the business of war’. What does the petition say? The letter, signed by over 3000 Google employees, argues that collaborating with the government to work on military projects is strictly against Google’s core ideology that technology must be used for welfare and not for destruction of mankind. It argues that backing the military could backfire tremendously by creating a negative image of Google in the minds of customers, and also affect potential recruitment. The concerned employees are of the opinion that since Google is currently engaged in a serious competition with many other companies to hire the best possible talent, some candidates could be put off by Google’s military connections with the government. What is Project Maven? Project Maven is a Pentagon-backed initiative which was announced in May 2017. The main purpose of this project was to integrate Artificial Intelligence with various defense programs to make them smarter. Backed with Google’s technology, this program aims to improve the image and video processing capabilities of drones to accurately pick out human targets for strikes, while identifying innocent civilians to reduce or prevent their accidental killing. Google have declared their participation in this program in a ‘non-offensive capacity’, and have maintained that their products or technology would not be used to create autonomous weapons that operate without human intervention. Connections with the Pentagon It is also interesting to note that some of Google’s top executives are connected to Pentagon in some capacity. Eric Schmidt, the former executive chairman of Google who is still a member of the executive board of Google’s parent company Alphabet, serves in the Defense Innovation Board, a Pentagon advisory body. Milo Medin, Vice President of Access Services, Google Capital is also a part of this body. What about Amazon and Microsoft? When it comes to connections with the Pentagon, Google aren’t the only ones involved. Amazon has collaborated with the Department of Defense through the Amazon Rekognition API for image recognition. Also, Microsoft announced their collaboration with the US government by providing IaaS (Infrastructure as a Service) and PaaS (Platform as a Service) capabilities to meet the data storage and security needs of the government. The news related to the dispute and the subsequent petition was initially reported by Gizmodo earlier this March. Considering the project is expected to cost close to $70 million in its first year, the petitioners are aiming to discourage Google from getting into more lucrative contracts as the demand for AI in defense and military applications grows.
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article-image-cockroachdb-2-0-is-out
Sunith Shetty
05 Apr 2018
2 min read
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CockroachDB 2.0 is out!

Sunith Shetty
05 Apr 2018
2 min read
CockroachDB has announced a new version 2.0 with notable features in their armory. This breakthrough version has brought them one step closer to making data accessible to everyone. CockroachDB is an open source, cloud-native SQL database, which allows you to build global, large, and resilient cloud applications. They automatically scale, recover and repair things allowing the database to survive critical disasters. It has an excellent support with popular orchestration tools such as Kubernetes and Mesosphere DC/OS to simplify and automate operations.     Some of the noteworthy changes available in CockroachDB 2.0 : Re-adjustment to customer’s changing requirements: CockroachDB 2.0 support for JSON has bought more flexibility and consistency. You will be able to handle both structured and semi-structured data, thus allowing you to use multiple data models within the same database. Better project handling to cope up with changing customer requirements and rapid prototyping for large-scale systems. Now you can perform in-place transactions and inverted indices to accelerate queries on large volumes of data using CockroachDB 2.0’s Postgres-compatible JSON. Performance and scalability Improvements: Developers prefer an agile methodology while building real-world applications. CockroachDB 2.0 offers better scalability standards and performance measures to deal with increasing amount of data and application needs. New operators to handle growing amount of user request volume with ease. Managing multi-regional workloads: CockroachDB 2.0 has bolstered their efficiency in managing multi-regional data to deliver low latency applications New cluster dashboard helps you visualize globally distributed clusters. This means you can keep a close watch on performance bottlenecks and stability problems. You can now perform excellent customer service by adapting to multi-regional needs. Now you can bind the data to respective customers in the data centers in that same region using a compelling new feature called Geo-partitioning. For the full list of updates, you can refer the release notes.
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article-image-paper-in-two-minutes-attention-is-all-you-need
Sugandha Lahoti
05 Apr 2018
4 min read
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Paper in Two minutes: Attention Is All You Need

Sugandha Lahoti
05 Apr 2018
4 min read
A paper on a new simple network architecture, the Transformer, based solely on attention mechanisms The NIPS 2017 accepted paper, Attention Is All You Need, introduces Transformer, a model architecture relying entirely on an attention mechanism to draw global dependencies between input and output. This paper is authored by professionals from the Google research team including Ashish Vaswani, Noam Shazeer, Niki Parmar,  Jakob Uszkoreit, Llion Jones, Aidan N. Gomez, Łukasz Kaiser, and Illia Polosukhin. The Transformer – Attention is all you need What problem is the paper attempting to solve? Recurrent neural networks (RNN), long short-term memory networks(LSTM) and gated RNNs are the popularly approaches used for Sequence Modelling tasks such as machine translation and language modeling. However, RNN/CNN handle sequences word-by-word in a sequential fashion. This sequentiality is an obstacle toward parallelization of the process. Moreover, when such sequences are too long, the model is prone to forgetting the content of distant positions in sequence or mix it with following positions’ content. Recent works have achieved significant improvements in computational efficiency and model performance through factorization tricks and conditional computation. But they are not enough to eliminate the fundamental constraint of sequential computation. Attention mechanisms are one of the solutions to overcome the problem of model forgetting. This is because they allow dependency modelling without considering their distance in the input or output sequences. Due to this feature, they have become an integral part of sequence modeling and transduction models. However, in most cases attention mechanisms are used in conjunction with a recurrent network. Paper summary The Transformer proposed in this paper is a model architecture which relies entirely on an attention mechanism to draw global dependencies between input and output. The Transformer allows for significantly more parallelization and tremendously improves translation quality after being trained for as little as twelve hours on eight P100 GPUs. Neural sequence transduction models generally have an encoder-decoder structure. The encoder maps an input sequence of symbol representations to a sequence of continuous representations. The decoder then generates an output sequence of symbols, one element at a time. The Transformer follows this overall architecture using stacked self-attention and point-wise, fully connected layers for both the encoder and decoder. The authors are motivated to use self-attention because of three criteria.   One is that the total computational complexity per layer. Another is the amount of computation that can be parallelized, as measured by the minimum number of sequential operations required. The third is the path length between long-range dependencies in the network. The Transformer uses two different types of attention functions: Scaled Dot-Product Attention, computes the attention function on a set of queries simultaneously, packed together into a matrix. Multi-head attention, allows the model to jointly attend to information from different representation subspaces at different positions. A self-attention layer connects all positions with a constant number of sequentially executed operations, whereas a recurrent layer requires O(n) sequential operations. In terms of computational complexity, self-attention layers are faster than recurrent layers when the sequence length is smaller than the representation dimensionality, which is often the case with machine translations. Key Takeaways This work introduces Transformer, a novel sequence transduction model based entirely on attention mechanism. It replaces the recurrent layers most commonly used in encoder-decoder architectures with multi-headed self-attention. Transformer can be trained significantly faster than architectures based on recurrent or convolutional layers for translation tasks. On both WMT 2014 English-to-German and WMT 2014 English-to-French translation tasks, the model achieves a new state of the art.  In the former task the model outperforms all previously reported ensembles. Future Goals Transformer has only been applied to transduction model tasks as of yet. In the near future, the authors plan to use it for other problems involving input and output modalities other than text. They plan to apply attention mechanisms to efficiently handle large inputs and outputs such as images, audio and video. The Transformer architecture from this paper has gained major traction since its release because of major improvements in translation quality and other NLP tasks. Recently, the NLP research group at Harvard have released a post which presents an annotated version of the paper in the form of a line-by-line implementation. It is accompanied with 400 lines of library code, written in PyTorch in the form of a notebook, accessible from github or on Google Colab with free GPUs.  
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article-image-introducing-mapd-cloud-the-first-analytics-platform-with-gpu-acceleration-on-cloud
Pravin Dhandre
05 Apr 2018
2 min read
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Introducing MapD Cloud, the first Analytics Platform with GPU Acceleration on Cloud

Pravin Dhandre
05 Apr 2018
2 min read
California-based Big Data Analytics provider MapD Technologies announced MapD Cloud, a SAAS based analytics platform providing data scientists and big data buddies with one-click access to visual analytics with GPU acceleration. The platform is built and engineered for high scalability and speedy operations on hefty volumes of structured data sets. Backed with its enterprise technology MapD Core and NVIDIA GPUs, the cloud platform equips users with the capability of mining billions of datasets in just few milliseconds. No more waiting to get a real-time experience of analytics. Capabilities and Offerings of MapD Cloud: Multisource Dashboards & Multi Layer Geo charts Cross Filtering Geospatial Context Dashboard Auto refresh Advanced Security High Availability & Distributed Scale-out API Access to Apache Sqoop™, Apache Kafka® Import, Apache Thrift™ API, ODBC/JDBC and DB-API Apart from this, the cloud platform keeps you updated with its upgrades and changing innovations from time to time. With MapD Cloud, you no longer need heavy GPU hardware for your machine learning and deep learning initiatives. The platform provides complete security for your sensitive and rich datasets with 24/7 non-stop cloud availability. The co-founder of the world's largest software registry firm, npm Inc adds, “With more than 18 billion downloads per month and doubling every 9 months, we have a ton of data to sift through to spot trends and diagnose problems. MapD Cloud lets us answer questions about our community and explore trends in all the different dimensions of our data in real time. We're excited about MapD Cloud, which will give us all that power in a convenient, scalable way.” The MapD Cloud is available for all users with different price points offering subscription as low as $150 a month, for almost 10 million-row structured data sets. Moreover, it also allows users a free two-week trial period for almost 100 million rows of data. To know more about MapD Cloud, visit the MapD website.
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article-image-coinbase-commerce-api-launches
Richard Gall
05 Apr 2018
2 min read
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Coinbase Commerce API launches

Richard Gall
05 Apr 2018
2 min read
Coinbase announced the launch of their Coinbase Commerce API on April 3rd. This represents an interesting step in the cryptocurrency world as it will allow eCommerce merchants to accept multiple cryptocurrencies in a "user controlled wallet". This means that those stores that want to accept cryptocurrencies will no longer have to expend energy developing their own payment platform. With platforms like Stripe recently ending its support for Bitcoin payments, it'ss a chance for Coinbase to position itself as an essential component in the continued growth of cryptocurrency. A number of well-established eCommerce platforms, including Shopify, will have Coinbase Commerce integration. The Coinbase team explained in a post on Medium: Starting today, instead of manually creating payment buttons or hosted pages to accept cryptocurrency payments, you can dynamically generate them using our API... Coinbase Commerce and Reddit However, this product launch hasn't been straightforward for Coinbase. The social media platform Reddit announced at the end of March that it would cease using Bitcoin as a means of paying for premium membership. This was revealed to be, in part, due to the launch of the new product. On Reddit, admin emoney04 said: "Yup that’s right. The upcoming Coinbase change, combined with some bugs around the Bitcoin payment option that were affecting purchases for certain users, led us to remove Bitcoin as a payment option." However, while this news may be frustrating for Coinbase, Reddit is open to accepting bitcoin payments again. emoney04 went on to say that "we're going to take a look at demand and watch the progression of Coinbase Commerce before making a decision on whether to reenable". Community misgivings about Coinbase Commerce However, as an article on BTCManager notes, there are some misgivings within the community that Coinbase Commerce represents a move away from the original peer to peer philosophy behind cryptocurrency. BTCManager quoted Reddit user Bitcoin-Yoda: "A purely peer-to-peer version of electronic cash would allow online payments to be sent directly from one party to another without going through a financial institution. Any intermediary between your BTC payment and the merchant is violating the definition of Bitcoin and your privacy." How to get started with Coinbase Commerce You can learn more about Coinbase Commerce here. There's also developer documentation provided if you want to take a look a bit more closely at how you can get started.
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Richard Gall
05 Apr 2018
2 min read
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SurveyJS leaves beta

Richard Gall
05 Apr 2018
2 min read
The SurveyJS team have announced in a post on Hackernoon that it is now out of beta. The JavaScript library for building surveys features a number of updates and improvements that JavaScript developers tasked with developing surveys will love. First released to the public back in September 2015, SurveyJS 1.0 showcases a JavaScript library that has has been developed with a close attention to the needs and interests of its community of users. New SurveyJS features Here are some of the new features announced: Panels let developers put questions into a conditionally visible panel (so you don't just have to be a new page). Dynamic panels to tackle some of the problems with dealing with lists. Custom widgets held in a dedicated GitHub repository. The ability to create timed quizzes. SurveyJS themes and Bootstrap 4 support - although the team were planning on waiting for Bootstrap 4 to be officially released to integrate it, the team note in the post that the amount of interest in Bootstrap 4 from the SurveyJS community was so great that they went ahead anyway. The team have also added support for Web Content Accessibility Guidelines 2.0. This move underlines the growing popularity of the project and the need for it to respond to the needs of increasingly professionalized use within the corporate and enterprise world. What is SurveyJS? In case your scratching your head and wondering what SurveyJS is, here's a quick primer. it's essentially a JavaScript library that lets you develop, run, and analyze surveys. There are three different components: The survey library - allows you to build an integrate a survey into a webpage on your site The survey builder - a tool for developing the survey UI. The survey service - pieces together the survey UI and data collection making it easier for you to process and analyze data.  Go to the the SurveyJS project site to find out more.
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article-image-aws-sydney-summit-2018-is-all-about-iot
Savia Lobo
05 Apr 2018
2 min read
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AWS Sydney Summit 2018 is all about IoT

Savia Lobo
05 Apr 2018
2 min read
AWS is all set to spill its IoT beans at the Australian AWS Summit in Sydney on 11th and 12th April 2018 at Sydney’s International Convention Centre. AWS looks forward to shedding light on cloud technologies and how it can help businesses lower costs, improve efficiency and innovate at scale. Customer will also realize the potential for IoT in the real world, and in industrial use cases, says AWS. Highlights of AWS Sydney Summit 2018 The AWS Sydney Summit will have one session dedicated to IoT. (Intelligence of Things: IoT, AWS DeepLens, and Amazon SageMaker) The summit would also showcase the capabilities of AWS Greengrass in delivering IoT edge intelligence with integration to other services such as Amazon Rekognition and AWS Machine Learning solutions. The summit will also highlight how customers can leverage the power of Amazon SageMaker, which is a fully managed end-to-end machine learning tool that enables users to quickly build, train and deploy machine learning models. The team will demonstrate how to deploy different machine learning models down to an AWS DeepLens device — a custom built HD video camera designed to run complex machine learning models for video and object recognition — in just a few clicks. This summit will also talk about the latest AWS IoT Core and the AWS IoT Button. AWS IoT Core is a platform that enables one to connect devices to AWS Services and other devices. It ensures secure data and interactions and also enables applications to interact with devices even when they are offline. The AWS IoT Button is a programmable button based on the Amazon Dash Button hardware. It is a simple Wi-Fi device, which is easy to configure and designed for developers to get started with AWS IoT Core, AWS Lambda, Amazon DynamoDB, Amazon SNS, and many other Amazon Web Services without writing device-specific code. For further highlights and the complete agenda of the summit, visit the AWS Website.  
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