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Showing posts with the label Azure

AWS vs Azure vs GCP: Cloud Web Services Comparison in Detail

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  The following post focuses on AWS, MS Azure, and GCP in detail. Learn more about each cloud service and how to choose the best one for your business needs.  Digitalization is being embraced by all of us across the globe, especially cloud computing technology. Whether it's because of its scalability or security or reduced costs, cloud platforms have sprung up to a great extent over a few years. Gone are the days when businesses were confused about whether to choose a cloud service provider or not. Now the confusion surrounds the question of which cloud service provider to use. AWS, Azure, and Google Cloud are our top three contenders. Recently, I happen to stumble upon an informative post focusing on AWS Lambda vs Azure Functions. I must say this one was quite detailed and well-structured. Here they have successfully covered all the aspects that are essential and dominating while we compare lambda vs azure. And I am pretty sure considering both the posts together will act a...

Cloud Data Warehouse Comparison: Redshift vs. BigQuery vs. Azure vs. Snowflake for Real-Time Workloads

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  Data helps companies take the guesswork out of decision-making. Teams can use data-driven evidence to decide which products to build, which features to add, and which growth initiatives to pursue. And, such insights-driven businesses grow at an annual rate of over 30%. But, there’s a difference between being merely data-aware and insights-driven. Discovering insights requires finding a way to analyze data in near real-time, which is where cloud data warehouses play a vital role. As scalable repositories of data, warehouses allow businesses to find insights by storing and analyzing huge amounts of structured and semi-structured data. And, running a data warehouse is more than a technical initiative. It’s vital to the overall business strategy and can inform an array of future product, marketing, and engineering decisions. But, choosing a cloud data warehouse provider can be challenging. Users have to evaluate costs, performance, the ability to handle real-time workloads, and other...

The State of serverless computing 2021

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Serverless computing is redefining the way organizations develop, deploy, and integrate cloud-native applications. According to an industry report, market size of serverless computing is expected to reach 7.72 billion by 2021. A new and compelling paradigm for the deployment of cloud applications, serverless computing is at the precipice of enterprise shift towards containers and microservices. In the year 2021, serverless paradigm shift presents exciting opportunities to organizations by providing a simplified programming model for creating cloud applications by abstracting away most operational concerns. Major cloud vendors, Microsoft, Google, and Amazon are already in the game with their respective offering and there is no reason you shouldn’t aboard the train. 2021 is the year of FaaS All major providers of serverless computing offer several types and tiers of database and storage services to their customers. In addition, all major cloud player such as Amazon, Microsoft and Google ...

14 ways AWS beats Microsoft Azure and Google Cloud

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Microsoft Azure and Google Cloud have their advantages, but they don’t match the breadth and depth of the Amazon cloud. The reason is simple: AWS has built out so many products and services that it’s impossible to begin to discuss them in a single article or even a book. Many of them were amazing innovations when they first appeared and the hits keep coming. Every year Amazon adds new tools that make it harder and harder to justify keeping those old boxes pumping out heat and overstressing the air conditioner in the server room down the hall. For all of its dominance, though, Amazon has strong competitors. Companies like Microsoft, Google, IBM, Oracle, SAP, Rackspace, Linnode, and Digital Ocean know that they must establish a real presence in the cloud and they are finding clever ways to compete and excel in what is less and less a commodity business. These rivals offer great products with different and sometimes better approaches. In many cases, they’re running neck and neck wi...

Azure SQL Data Warehouse is now Azure Synapse Analytics

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On November fourth, we announced Azure Synapse Analytics, the next evolution of Azure SQL Data Warehouse. Azure Synapse is a limitless analytics service that brings together enterprise data warehousing and Big Data analytics. It gives you the freedom to query data on your terms, using either serverless on-demand or provisioned resources—at scale. Azure Synapse brings these two worlds together with a unified experience to ingest, prepare, manage, and serve data for immediate business intelligence and machine learning needs. With Azure Synapse, data professionals can query both relational and non-relational data using the familiar SQL language. This can be done using either serverless on-demand queries for data exploration and ad hoc analysis or provisioned resources for your most demanding data warehousing needs. A single service for any workload. In fact, it’s the first and only analytics system to have run all the TPC-H queries at petabyte-scale. For current SQL Data Warehouse custome...

Dremio 4.0 Data Lake Engine

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Dremio’s Data Lake Engine delivers lightning fast query speed and a self-service semantic layer operating directly against your data lake storage. No moving data to proprietary data warehouses or creating cubes, aggregation tables and BI extracts. Just flexibility and control for Data Architects, and self-service for Data Consumers. This release, also known as Dremio 4.0, dramatically accelerates query performance on S3 and ADLS, and provides deeper integration with the security services of AWS and Azure. In addition, this release simplifies the ability to query data across a broader range of data sources, including multiple lakes (with different Hive versions) and through community-developed connectors offered in Dremio Hub. Read full article >>>

How companies adopt and apply cloud native infrastructure

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Survey results reveal the path organizations face as they integrate cloud native infrastructure and harness the full power of the cloud. Driven by the need for agility, scaling, and resiliency, organizations have spent more than a decade moving from “trying out the cloud” to a deeper, more sustained commitment to the cloud, including adopting cloud native infrastructure. This shift is an important part of a trend we call the Next Architecture, with organizations embracing the combination of cloud, containers, orchestration, and microservices to meet customer expectations for availability, features, and performance. To learn more about the motivations and challenges companies face adopting cloud native infrastructure, we conducted a survey of 590 practitioners, managers, and CxOs from across the globe.[1] Key findings from the survey include: Nearly 50% of respondents cited lack of skills as the top challenge their organizations face in adopting cloud native infrastructure. ...

Azure HDInsight brings next generation Apache Hadoop 3.0

Preview of Apache Hadoop 3.0 in Azure HDInsight 4.0 Led by Hortonworks, Apache Hadoop 3.0 represents over 5 years of work across the community since the last major update to the Hadoop stack. Enterprises can now realize their data lake vision while efficiently incorporating deep learning frameworks in to their applications all on the same Hadoop stack that they are comfortable with. Some of the key enhancements include: With ACID semantics enabled by default, Apache Hive 3.0 becomes more like a traditional database, making it easier for customers to build LOB applications on top of very large data sets. Apache Druid is an open source data store with indexing/caching capabilities on top of a column-oriented storage layout. With Apache Hive and Apache Druid (now available by default), customers can do near real time exploratory analytics on incoming data. With Tensorflow, available by default, and GPU support, Apache Hadoop 3.0 squarely targets the machine learning...

Processing streams of data with Apache Kafka and Spark

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Data Data is produced every second, it comes from millions of sources and is constantly growing. Have you ever thought how much data you personally are generating every day? Data: direct result of our actions There’s data generated as a direct result of our actions and activities: Browsing twitter Using mobile apps Performing financial transactions Using a navigator in your car Booking a train ticket Creating an online document Starting a YouTube live stream Obviously, that’s not it. Data: produced as a side effect For example, performing a purchase where it seems like we’re buying just one thing – might generat...