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Best things to look at in a VPS web hosting – Techiexpert.com – TechiExpert.com

The use of VPS to run your website is one of the significant decisions you need to make. Once you have decided, the next step is to choose the right VPS website host to help you.

Getting the right VPS provider is not such difficult if you know the things to look at. Below are the things to look at

RAM

This is the servers memory capacity, and it is one of the essential things you need to consider on your VPS host. The RAM capacity affects the servers speed, the power it uses while running and how fast your website will load.

If you have various websites you want to run, then it means that you need a VPS that has a huge RAM to support them. To ensure you have the best RAM inquire if their servers support Burstable or do backup RAM. HostArmada VPS uses the servers that backup using cloud hosting.

Platform

It is good to know if you need a Linux-based system or window-based platform system. However, you can go the extra mile and seek VMware or any advanced management systems that allow you to do more with your VPS.

Control panel

The control panel is right when you need the admin to access your website. Various control panel options are user-friendly; some are WHM, cPanel, and Plesk. The system is sound because if you are new on the website, the admin can help you solve the problems you might be facing.

Customer support

The customer support that you receive from any web hosting is very vital. When something wrong happens to your server, your website might crash. And when the problem is reoccurring now and again, it might cost you so much.

From this, customer support becomes essential because they will help to come in and solve the problem.

Before you choose the VPS host, email, or phone them to determine their response, note, note how long they take to reply to you. The service you receive here will indicate how they will attend to you once you choose them as our VPS host.

Flexibility

The VPS hosts flexibility isone amongthe simplestbelongings yougot tocheck outwhen choosing your company. Are youready toupgrade or downgrade your website with resources whenthe necessityarises?check outhow flexiblethe corporateis to your server.Alwaysattempt toinquire how easyitsto varyyour services wheneveryou would liketo try to tosoand the waylongitlltake.thanks tothe variedparameters,itsgoodto settle onthe VPS hostthatsflexible.this mayallow youto formsome changeswhich willboost your business.

Final thoughtThe use of VPS web hostingmay be agreat idea. VPS web hosting isone amongthe simplestweb hostingthatswithin themarket. Youneed toskillsto settle onthe simplesthostwhich willenable youto understandyour goal.

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Global Cloud Based Collaboration Software Market : Industry Analysis and Forecast (2020-2027) By Deployment Type, Service, Solution, Enterprise Size,…

Global Cloud Based Collaboration Software Market was valued at US$ XX Bn in 2019 and is expected to reach US$ XX Bn by 2027, at a CAGR of XX% during a forecast period.

Cloud-based collaboration software rises the workforce productivity as the documents can be easily accessible from anytime and anywhere. Cloud-based collaboration software plays an important role in the software industry, as it is especially popular with software developers supporting source code and holding formatting of several kinds of programming languages.

The report study has analyzed revenue impact of covid-19 pandemic on the sales revenue of market leaders, market followers and disrupters in the report and same is reflected in our analysis.

The objective of the report is to present a comprehensive assessment of the market and contains thoughtful insights, facts, historical data, industry-validated market data and projections with a suitable set of assumptions and methodology. The report also helps in understanding cloud-based collaboration software market dynamics, structure by identifying and analyzing the market segments and project the global market size.

Further, report also focuses on competitive analysis of key players by product, price, financial position, product portfolio, growth strategies, and regional presence. The report also provides PEST analysis, PORTERs analysis, SWOT analysis to address questions of shareholders to prioritizing the efforts and investment in near future to emerging segment in cloud-based collaboration software market.

The driving factors of the global cloud-based collaboration software market are the increasing the number of enterprises that are implementing services of cloud-based collaboration software which includes software-as-a-service. Another factor is that it ensures that the complete documentation is reserved in the same place so that the track of different versions of attachments is kept. Low cost and workforce productivity are also fuelling the growth of the market positively. However, high internet dependency and lack of data security are hampering the market growth.

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Unified communication & collaboration is expected to boost the growth of the forecast period. Unified communication & collaboration software helps to keep the documents at the same workplace, which decreases the users work to keep a track on these documents at various workplace. It allows the employees, clients, suppliers and various other users to coordinate task and share information in real time including fax, SMS, and email.

Hybrid cloud is the fastest growing segment in the forecast period. Hybrid cloud usages the features of both private and public cloud. Hybrid cloud aids in decreasing the deployment cost. Agility, security, and compliance are some of the key benefits of hybrid cloud. Startups and small to medium scale businesses adopt hybrid cloud for data recovery and for backups. Small to medium scale businesses are usually using cloud-based collaboration software which encourages their growth in the market.

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Asia Pacific countries such as China, Japan, and India accounted for the fastest growing market of cloud-based collaboration software in 2017. Increasing demand for cloud servers and policies such as BYOD among enterprises aids in stimulating the growth of cloud-based collaboration software market in Asia Pacific. In Europe, the market of cloud-based collaboration software is increasing exponentially as there is rise in technology penetration and enterprises are focusing to offer better customer experience to gain competitive benefit.Scope of the Global Cloud Based Collaboration Software Market

Global Cloud Based Collaboration Software Market by Deployment Type

Public Cloud Private Cloud Hybrid CloudGlobal Cloud Based Collaboration Software Market by Service

SaaS PaaS ConsultingGlobal Cloud Based Collaboration Software Market by Solution

Unified Communication & Collaboration Document Management System Project & Team Management & Enterprise Social CollaborationGlobal Cloud Based Collaboration Software Market by Enterprise Size

Small and Medium Enterprises Large enterprisesGlobal Cloud Based Collaboration Software Market by Vertical

IT and Telecom BFSI Retail Government OthersGlobal Cloud Based Collaboration Software Market by Geography

North America Europe Asia-Pacific Middle East & Africa South AmericaKey Players operating in the Global Cloud Based Collaboration Software Market

Microsoft Corp. Google Slack Technologies Inc. Salesforce.com Inc. Jive software Inc. Mitel Networks Corporation Box Inc. Aspect software Cisco systems Oracle

Major Table Cloud Based Collaboration Software Market of Contents Report

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Bringing the power of embedded analytics to your apps and services with Amazon QuickSight – idk.dev

In the world we live in today, companies need to quickly react to changeand to anticipate it. Customers tell us that their reliance on data has never been greater than what it is today. To improve your decision-making, you have two types of data transformation needs: data agility, the speed at which data turns into insights, and data transparency, the need to present insights to decision makers. Going forward, we expect data transformation projects to become a centerpiece in every organization, big or small.

Furthermore, applications are migrating to the cloud faster than ever. Applications need to scale quickly to potentially millions of users, have global availability, manage petabytes of data, and respond in milliseconds. Such modern applications are built with a combination of these new architecture patterns, operational models, and software delivery processes, and allow businesses to innovate faster while reducing risk, time-to-market, and total cost of ownership.

An emerging area from these two trends is to combine the power of application modernization with data transformation. This emerging trend is often called embedded analytics, and is the focus of this post.

Applications generate a high volume of structured and unstructured data. This could be clickstream data, sales data, data from IoT devices, social data, and more. Customers who are building these applications (such as software-as-a-service (SaaS) apps or enterprise portals) often tell us that their end-users find it challenging to derive meaning from this data because traditional business intelligence (BI) approaches dont always work.

Traditional BI tools live in disparate systems and require data engineering teams to provide connectivity and continous integration with the application, adding to complexity and delays in the overall process. Even after the connectivity is built, you must switch back and forth between your application and the BI tool, causing frustration and decreasing the overall pace of decision-making. Customers tell us that their development teams are constantly looking for new ways to delight their users, and embedding the BI capability directly into their applications is one of the most requested asks from their end-users.

Given the strategic importance of this capability, you can use this to differentiate and up-sell as a new service in their applications. Gartner research demonstrates that 63% of CEOs expect to adopt a product-as-a-service model in the next two years, making this a major market opportunity. For example, if you provide financial services software, you can empower users to perform detailed analysis of portfolio performance trends. An HR solution might enable managers to visualize and predict turnover rates. A supply chain management solution could embed the ability to slice and dice KPIs and better understand the efficiency of logistics routes.

The approach to building an embedded analytics capability needs to deliver on the requirements of modern applications. It must be scalable, handle large amounts of data without compromising agility, and seamlessly integrate with the applications user experience. Choosing the right methodology becomes especially important in the face of these needs.

You can build your own embedded analytics solution, but although this gives you maximum control, it has a number of disadvantages. You have to hire specialized resources (such as data engineers for building data connectivity and UX developers for building dashboards) and maintain dedicated infrastructure to manage the data processing needs of the application. This can be expensive, resource-intensive, and complex to build.

Embedding traditional BI solutions that are available in the market has limitations as well, because theyre not purpose-built for embedding use cases. Most solutions are server-based, meaning that theyre challenging to scale and require additional infrastructure setup and ongoing maintenance. These solutions also have restrictive, pay-per-server pricing, which doesnt fully meet the needs of end-users that are consuming applications or portals via a session-based usage model.

At AWS re:Invent 2019, we launched new capabilities in Amazon QuickSight that make it easy to embed analytics into your applications and portals, empowering your customers to gain deeper insights into your applications data. Unlike building your own analytics solution, which can be time-consuming and hard to scale, QuickSight allows you to quickly embed interactive dashboards and visualizations into your applications without compromising on the ability to personalize the look and feel of these new features.

QuickSight has a serverless architecture that automatically scales your applications from a few to hundreds of thousands of users without the need to build, set up, and manage your own analytics infrastructure. These capabilities allow you to deliver embedded analytics at hyperscale. So, why does hyperscale matter? Traditional BI tools run on a fixed amount of hardware resources, therefore more users, more concurrency, or more complex queries impact performance across all users, which requires you to add more capacity (leading to higher costs).

The following diagram illustrates a traditional architecture, which requires additional servers (and higher upfront cost) to scale.

With QuickSight, you have access to the power and scale of the AWS Cloud. You get auto scaled, consistent performance no matter the concurrency or scale of the userbase, and a truly pay-per-use architecture, meaning you only pay when your users access the dashboards or reports. The following diagram illustrates how QuickSight scales seamlessly with its serverless architecture, powered by the AWS cloud.

Furthermore, QuickSight enables your users to perform machine learning based insights such as anomaly detection, forecasting, and natural language queries. It also has a rich set of APIs that allow you to programmatically manage your analytics workflows, such as moving dashboards across accounts, automating deployments, and managing access for users with single sign-on (SSO).

We recently announced the launch of additional embedding capabilities that allow you to do even more with QuickSight embedded analytics. QuickSight now allows you to embed dashboard authoring within applications (such as SaaS applications and enterprise portals), allowing you to empower your end-users to create their own visualizations and reports.

These ad hoc data analysis and self-service data exploration capabilities mean you dont have to repeatedly create custom dashboards based on requests from your end-users, and can provide end-users with even greater agility and transparency with their data. This capability helps create product differentiation and up-sell opportunities within customer applications.

With this launch, QuickSight also provides namespaces, a multi-tenant capability that allows you to easily maintain data isolation while supporting multiple workloads within the same QuickSight account. For example, if youre an independent software vendor (ISV), you can now assign dedicated namespaces to different customers within the same QuickSight account. This allows you to securely manage multiple customer workloads as users (authors or readers) within one namespace, and they can only discover and share content with other users within the same namespace, without exposing any data to other parties.

Without namespaces, you could set up your own embedded dashboards for hundreds of thousands of users with QuickSight. For example, see the following dashboard for our fictional company, Oktank Analytica.

With namespaces in place, you can extend this to provide ad-hoc authoring capabilities using curated datasets specific to each customer, created and shared by the developer or ISV. See the following screenshot.

For more information about these new features, see Embed multi-tenant analytics in applications with Amazon QuickSight.

Customers are already using embedded analytics in QuickSight to great success. In this section, we share the stories of a few customers.

Blackboard is a leading EdTech company, serving higher education, K-12, business, and government clients around the world.

The recent wave in digital transformation in the global education community has made it clear that its time for a similar transformation in the education analytics tools that support that community, says Rachel Scherer, Sr. Director of Data & Analytics at Blackboard. We see a need to support learners, teachers, and leaders in education by helping to change their relationship with data and informationto reduce the distance between information and experience, between informed and acting.

A large part of this strategy involves embedding information directly where our users are collaborating, teaching, and learningproviding tools and insights that aid in assessment, draw attention to opportunities learners may be missing, and help strategic and academic leadership identify patterns and opportunities for intervention. Were particularly interested in making the experience of being informed much more intuitivefavoring insight-informed workflows and/or embedded prose over traditional visualizations that require interpretation.

By removing the step of interpretation, embedded visualizations make insights more useful and actionable. With QuickSight, we were able to deliver on our promise of embedding visualizations quickly, supporting the rapid iteration that we require, at the large scale needed to support our global user community.

For more information about Blackboards QuickSight use case, see the AWS Online Tech Talk Embedding Analytics in your Applications with Amazon QuickSight at the 25:50 mark.

Syndication Insights (SI) enables Comcasts syndicated partners to access the same level of rich data insights that Comcast uses for platform and operational improvements.

The SI platform enables partners to gain deeper business insights, such as early detection into anomalies for users, while ensuring a seamless experience through embedded, interactive reports, says Ajay Gavagal, Sr. Manager of Software Development at Comcast. From the start, scalability was a core requirement for us. We chose QuickSight as it is scalable, enabling SI to extend to multiple syndicated partners without having to provision or manage additional infrastructure. Furthermore, QuickSight provides interactive dashboards that can be easily embedded into an application. Lastly, QuickSights rich APIs abstract away a lot of functionality that would otherwise need to be custom built.

For more information about how Comcast uses QuickSight, see the AWS Online Tech Talk Embedding Analytics in your Applications with Amazon QuickSight at the 38:05 mark.

Panasonic Avionics Corporation provides customized in-flight entertainment and communications systems to more than 300 airlines worldwide.

Our cloud-based solutions collect large amounts of anonymized data that help us optimize the experience for both our airline partners and their passengers, says Anand Desikan, Director of Cloud Operations at Panasonic Avionics Corporation. We started using Amazon QuickSight to report on in-flight Wi-Fi performance, and with its rich APIs, pay-per-session pricing, and ability to scale, we quickly rolled out QuickSight dashboards to hundreds of users. The constant evolution of the platform has been impressive: ML-powered anomaly detection, Amazon SageMaker integration, embedding, theming, and cross-visual filtering. Our users consume insights via natural language narratives, which allows them to read all their information right off the dashboard with no complex interpretation needed.

EHE Health is national preventive health and primary care Center of Excellence provider system.

As a 106-year-old organization moving toward greater agility and marketplace nimbleness, we needed to drastically upgrade our ability to be transparent within our internal and external ecosystems, says David Buza, Chief Technology Officer at EHE Health. With QuickSight, we are not constrained by pre-built BI reports, and can easily customize and track the right operational metrics, such as product utilization, market penetration, and available inventory to gain a holistic view of our business. These inputs help us to understand current performance and future opportunity so that we can provide greater partnership to our clients, while delivering on our brand promise of creating healthier employee populations.

QuickSight allowed our teams to seamlessly communicate with our clientsall viewing the same information, simultaneously. QuickSights embedding capabilities, along with its secure platform, intuitive design, and flexibility, allowed us to service all stakeholdersboth internally and externally. This greater flexibility and customization allowed us to fit the clients needs seamlessly.

Where data agility and transparency are critical to business success, embedded analytics can open a universe of possibilities, and we are excited to see what our customers will do with these new capabilities.

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Machine Learning Answers: Facebook Stock Is Down 20% In A Month, What Are The Chances It’ll Rebound? – Trefis

Facebook stock (NASDAQ: FB) reached an all-time high of almost $305 less than a month ago before a larger sell-off in the technology industry drove the stock price down nearly 20% to its current level of around $250. But will the companys stock continue its downward trajectory over the coming weeks, or is a recovery in the stock imminent?

According to the Trefis Machine Learning Engine, which identifies trends in the companys stock price data since its IPO in May 2012, returns for Facebook stock average a little over 3% in the next one-month (21 trading days) period after experiencing a 20% drop over the previous month (21 trading days). Notably, though, the stock is very likely to underperform the S&P500 over the next month (21 trading days), with an expected excess return of -3% compared to the S&P500.

But how would these numbers change if you are interested in holding Facebook stock for a shorter or a longer time period? You can test the answer and many other combinations on the Trefis Machine Learning Engine to test Facebook stock chances of a rise after a fall. You can test the chance of recovery over different time intervals of a quarter, month, or even just 1 day!

Question 1: Is the average return for Facebook stock higher after a drop?

Answer:

Consider two situations,

Case 1: Facebook stock drops by -5% or more in a week

Case 2: Facebook stock rises by 5% or more in a week

Is the average return for Facebook stock higher over the subsequent month after Case 1 or Case 2?

FB stock fares better after Case 2, with an average return of 2.4% over the next month (21 trading days) under Case 1 (where the stock has just suffered a 5% loss over the previous week), versus, an average return of 5.3% for Case 2.

In comparison, the S&P 500 has an average return of 3.1% over the next 21 trading days under Case 1, and an average return of just 0.5% for Case 2 as detailed in our dashboard that details the average return for the S&P 500 after a fall or rise.

Try the Trefis machine learning engine above to see for yourself how Facebook stock is likely to behave after any specific gain or loss over a period.

Question 2: Does patience pay?

Answer:

If you buy and hold Facebook stock, the expectation is over time the near term fluctuations will cancel out, and the long-term positive trend will favor you at least if the company is otherwise strong.

Overall, according to data and Trefis machine learning engines calculations, patience absolutely pays for most stocks!

For FB stock, the returns over the next N days after a -5% change over the last 5 trading days is detailed in the table below, along with the returns for the S&P500:

Question 3: What about the average return after a rise if you wait for a while?

Answer:

The average return after a rise is understandably lower than a fall as detailed in the previous question. Interestingly, though, if a stock has gained over the last few days, you would do better to avoid short-term bets for most stocks although FB stock appears to be an exception to this general observation.

FBs returns over the next N days after a 5% change over the last 5 trading days is detailed in the table below, along with the returns for the S&P500:

Its pretty powerful to test the trend for yourself for Facebook stock by changing the inputs in the charts above.

What if youre looking for a more balanced portfolio instead? Heres a high quality portfolio to beat the market, with over 100% return since 2016, versus 55% for the S&P 500. Comprised of companies with strong revenue growth, healthy profits, lots of cash, and low risk, it has outperformed the broader market year after year, consistently.

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Machine Learning in Education Market Incredible Possibilities, Growth Analysis and Forecast To 2025 – The Daily Chronicle

Latest Research Report: Machine Learning in Education industry

Machine Learning in Education Market report is to provide accurate and strategic analysis of the Profile Projectors industry. The report closely examines each segment and its sub-segment futures before looking at the 360-degree view of the market mentioned above. Market forecasts will provide deep insight into industry parameters by accessing growth, consumption, upcoming market trends and various price fluctuations.

This has brought along several changes in This report also covers the impact of COVID-19 on the global market.

Machine Learning in Education Market competition by top manufacturers as follow: , IBM, Microsoft, Google, Amazon, Cognizan, Pearson, Bridge-U, DreamBox Learning, Fishtree, Jellynote, Quantum Adaptive Learning

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Global Machine Learning in Education Market research reports growth rates and market value based on market dynamics, growth factors. Complete knowledge is based on the latest innovations in the industry, opportunities and trends. In addition to SWOT analysis by key suppliers, the report contains a comprehensive market analysis and major players landscape.The Type Coverage in the Market are: Cloud-BasedOn-Premise

Market Segment by Applications, covers:Intelligent Tutoring SystemsVirtual FacilitatorsContent Delivery SystemsInteractive WebsitesOthers

Market segment by Regions/Countries, this report coversNorth AmericaEuropeChinaRest of Asia PacificCentral & South AmericaMiddle East & Africa

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Proximity matters: Using machine learning and geospatial analytics to reduce COVID-19 exposure risk – Healthcare IT News

Since the earliest days of the COVID-19 pandemic, one of the biggest challenges for health systems has been to gain an understanding of the community spread of this virus and to determine how likely is it that a person walking through the doors of a facility is at a higher risk of being COVID-19 positive.

Without adequate access to testing data, health systems early-on were often forced to rely on individuals to answer questions such as whether they had traveled to certain high-risk regions. Even that unreliable method of assessing risk started becoming meaningless as local community spread took hold.

Parkland Health & Hospital System, the safety net health system for Dallas County, Texas, and PCCI, a Dallas-based non-profit with expertise in the practical applications of advanced data science and social determinants of health, had a better idea.

Community spread of an infectious disease is made possible through physical proximity and density of active carriers and non-infected individuals. Thus, to understand the risk of an individual contracting the disease (exposure risk), it was necessary to assess their proximity to confirmed COVID-19 cases based on their address and population density of those locations.

If an "exposure risk" index could be created, then Parkland could use it to minimize exposure for their patients and health workers and provide targeted educational outreach in highly vulnerable zip codes.

PCCIs data science and clinical team worked diligently in collaboration with the Parkland Informatics team to develop an innovative machine learning driven predictive model called Proximity Index. Proximity Index predicts for an individuals COVID-19 exposure risk, based on their proximity to test positive cases and the population density.

This model was put into action at Parkland through PCCIs cloud-based advanced analytics and machine learning platform called Isthmus. PCCIs machine learning engineering team generated geospatial analysis for the model and, with support from the Parkland IT team, integrated it with their electronic health record system.

Since April 22, Parklands population health team has utilized the Proximity Index for four key system-wide initiatives to triage more than 100,000 patient encounters and to assess needs, proactively:

In the future, PCCI is planning on offering Proximity Index to other organizations in the community schools, employers, etc., as well as to individuals to provide them with a data driven tool to help in decision making around reopening the economy and society in a safe, thoughtful manner.

Many teams across the Parkland family collaborated on this project, including the IT team led by Brett Moran, MD, Senior Vice President, Associate Chief Medical Officer and Chief Medical Information Officer at Parkland Health and Hospital System.

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Global Machine Learning Market Tends To Show Steady Growth Post Pandemic With Regional Overview and Top Key Players – Verdant News

The research study on Machine Learning Market added byReportspediapresents an extensive analysis of current Machine Learning Market size, drivers, trends, opportunities, challenges, as well as key market segments. In continuation of this data, the Machine Learning Market report covers various marketing strategies followed by key players and distributors.

During the estimated period, the report also mentions the predictable CAGR of the global Machine Learning Market. The report provides readers with accurate past statistics and predictions of the future. In order to get an in-depth overview of Global Machine Learning Market is valued at USD XX million in 2020 and is predictable to reach USD XX million by the end of 2027, growing at a CAGR of XX% between 2020 and 2027.

Free Sample PDF Copy Here @:

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Top Key Players:

Luminoso Technologies, Inc.Hewlett Packard Enterprise Development LPSAS Institute Inc.RapidMiner, Inc.Angoss Software CorporationAmazon Web Services Inc.TIBCO Software Inc.DataikuBigML, Inc.Oracle CorporationFractal Analytics Inc.Fair Isaac CorporationDomino Data Lab, Inc.TrademarkVisionGoogle, Inc.Alpine DataTeradataIBM CorporationDell Inc.Baidu, Inc.Intel CorporationKNIME.com AGSAP SEMicrosoft Corporation

The report on Machine Learning market is also provided, details of the company enclosed, SWOT analysis, and PESTEL, Porters five forces, and product life cycle. In the start, the report offers a basic introduction of the Machine Learning industry containing its definition, applications and production technique. Then, the report illustrates the international key Machine Learning industry players in detail.

Geographical Analysis of Machine Learning Market:

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Machine Learning Market Segmentation:

Machine Learning Market Segmentation By Type:

CloudOn-Premises

Machine Learning Market Segmentation By Application:

BFSIHealthcare and Life SciencesRetailTelecommunicationGovernment and DefenseManufacturingEnergy and Utilities

Global Machine Learning Market: Competitive Analysis

This section of the report identifies a variety of key manufacturers in the market. It helps the reader know the strategies and collaboration that players are focus on combat competition in the market. The wide-ranging report provides a major microscopic look at the market. The reader can discover the footprints of the manufacturers by knowing about the global revenue of manufacturers and sales by manufacturers during the forecast period of 2020 to 2027.

In this Machine Learning market study, the following years are considered to project the market footprint:

History Year:2014 2018

Base Year:2018

Estimated Year:2019

Forecast Year:2020 2027

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Machine Learning market research addresses the following queries:

Main points of the table of contents:

Chapter One: Report Overview

Chapter Two: Trends in Global Growth

Chapter Three: Market Share of Major Players

Chapter Four: Distribution by Type and Application

Chapter Five: United States

Chapter Six: Europe

Chapter Seven: China

Chapter Eight: Japan

Chapter Nine: Southeast Asia

Chapter Ten: India

Chapter Eleven: Central and South America

Chapter Twelve: Profiles of International Players

Chapter Thirteen: Market Forecast 2020-2027

Chapter Fourteen: Analyst Views / Findings

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PREDICTING THE OPTIMUM PATH – Port Strategy

A joint venture has seen the implementation of machine learning at HHLAs Container Terminal Burchardkai to optimise import container yard positioning and reduce re-handling moves.

The elimination of costly re-handling moves of import containers has recently been the focus of a joint project between container terminal operator HHLA, its affi liate Hamburg Port Consulting (HPC) and INFORM the Artificial Intelligence (AI) systems supplier. Machine learning sits at the heart of the system.

Dwell time is the unit of time used to measure the period in which a container remains in a container terminal with this typically running from its arrival off a vessel until leaving the terminal via truck, rail or another vessel.

For import containers there is often no specific information available on the pick-up time when selecting a storage slot in the container stack. This can lead to an inefficient container storage location in the yard generating, in turn, the requirement for additional shuffle moves that require extra resources including maintenance and energy consumption.

To mitigate this operational inefficiency, the project partners - HHLA, HPC and INFORM - have recently run a pilot project at HHLAs Container Terminal Burchardkai (CTB) focused on machine learning technology with this applied in order to predict individual import container dwell times and thereby reduce costly re-handling/shuffle moves.

As a specialist in IT software integration and terminal operations, HPC employed the deep learning approach to identify hidden patterns from historical data of container moves at HHLA CTB. This was undertaken over a period of two years and with the acquired information processed into high quality data sets. Assessed by the Syncrotess Machine Learning Module from INFORM and validated by the HPC simulation tool, the results show a significant reduction of shuffle moves resulting in a reduced truck turn time.

PRODUCTIVE IMPLEMENTATION

Dr. Alexis Pangalos, Partner at HPC discussing the project highlights notes: It was a productive implementation of INFORMs Artificial Intelligence (AI) solution for the choice of container storage positions at CTB. The Machine Learning (ML) Module was trained with data from CTBs container handling operations and the outcome from this is a system tailor-made for HHLAs operations.

HPC together with INFORM have integrated the Syncrotess ML Module into the slot allocation algorithms already running within CTBs terminal control system, ITS.

PREDICTING DWELL TIME

INFORMs AI solution predicts the dwell time (i.e., the time period the container is expected to be stored in the yard) and the outbound mode of transport (e.g., rail, truck, vessel) both of which are crucial criteria for selecting an optimised container storage location within the yard. A location that avoids unnecessary re-handling.

Utilising machine learning and AI and integrating these technologies into existing IT infrastructure are the success factors for reaching the next level of optimisations, says Jens Hansen, Executive Board Member responsible for IT at HHLA. A detailed analysis, and a smooth interconnectivity between all different systems, enable the value of improved safety while reducing costs and greenhouse gas emissions, he underlines.

DETAILED DOMAIN KNOWLEDGE

Data availability and data processing are key elements when it comes to utilising AI technology, says Pangalos. It requires a detailed domain knowledge of terminal operations to unlock greater productivity of the terminal equipment and connected processes.

The implementation is based on a machine learning assessment INFORM undertook in 2018 whereby it set out to determine if they could improve optimisation and operational outcomes using INFORMs broader ML algorithms developed for use in other industries such as finance and aviation.

As of 2019, system results indicated a prediction accuracy of 26% for dwell time predictions and 33% for outbound mode of transport predictions.

Dr. Eva Savelsberg, Senior Vice President of INFORMs Logistic Division notes: AI and machine learning allows us to leverage data from our past performance to inform us about how best to approach our future operations our ML Module gives our Operations Research based algorithms the best footing for making complex decisions about what to do in the future.

INFORMs Machine Learning Module allows CTB to leverage insights generated from algorithms that continuously learn from historical data."

Further Information: Matthew Wittemeier m.wittemeier@inform-software.com

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PREDICTING THE OPTIMUM PATH - Port Strategy

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AI/ML Remains The Most In-Demand Tech Skill Post COVID – Analytics India Magazine

The year 2020 has witnessed some massive transformations of the decade with countries going under lockdown and millions of professionals losing their jobs overnight. Post seven months of isolation, when things are now beginning to return to normal, businesses have started looking to survive the post-COVID era. With tech professionals becoming a critical asset amid this crisis, companies have started putting out their resources for recruiting the right tech talent to remain relevant. And, thus, there has been a gradual rise in demand for professionals with advanced technical skills.

While tech skills have always been sought after, some skills are expected to gain more traction than others in the post-COVID world. In fact, various reports and studies conducted at the beginning of year highlighted a rise in domains like artificial intelligence, deep learning, data analytics and machine learning. Despite the lockdown, these domains continued to develop at a steady pace.

According to a recent study done by Analytics India Magazine, it has been noted that open jobs for analytics professionals have the highest proportion at 33.7%, which is then followed by machine learning at 20.4% and cybersecurity at 15.4%. This could be attributed to the immense amount of data that is generated in every transaction across B2B and B2C segments. Such data also shows that despite the recession, there is still a requirement for data analysis and automation to reduce redundancies, and to safeguard critical data.

Also Read: Why Indian IT Professionals Are Looking To Upskill Themselves In Cloud Computing

To remain relevant in the era beyond COVID, businesses are critically looking for tech talent and skills that can help them adapt to the new change. And for that, artificial intelligence and machine learning have turned out to be the critical skills that are creating a buzz in the industry. Not only the technologies have vast use cases in the industry but are also helping in significant innovations for the post-pandemic world.

With businesses expected to automate their operations and primary manual roles, the requirement for AI and ML experts have been on the rise. As a matter of fact, LinkedIns job report for this year noted that the hiring growth for AI specialists has grown to 74% annually in the past few years. On the other hand, according to another job portal, Indeed, the average base salary of a machine learning engineer is $145,539 per year in the US and a median wage of 13.6 Lakhs in India.

The data show that in spite of the economic downturn, the requirement for AI and ML talents has to be steady without any decrease in their salaries. The report further noted that skills like TensorFlow, Python, Natural Language Processing are the highest in demand and thus will be critical for professionals to land on AI/ML jobs.

Agreeing to this, Ammar Jagirdar, Product Head at Qure.ai said, while the demand for skilled data scientists and engineers has always been strong, in the post COVID era, we appreciate the importance of adaptability. Our world has changed rapidly and may transform further, but well be ready for these challenges, said Jagirdar. At Qure, we are looking for candidates with experience in deep learning R&D and product deployment, specifically for healthcare. We are also presently hiring for data science positions as well as front-end and back-end engineering roles.

Even Lakshya Sivaramakrishnan, Program Lead at Google believes that machine learning and data science will be the tech skills that will massively gain traction in the post COVID era. This is because more and more companies will be looking for more adaptability and flexibility post the pandemic and would adapt to the required change to stay relevant. However, she also believes that businesses cannot keep building models without having professionals with engineering standpoint, and thats where mean stack developers come into play.

Indeed shared a recent report on top ten most in-demand tech jobs, which highlighted a 30% growth in tech jobs listings and how developers, systems integration engineers and SAS programmers are most coveted. It stated that the average annual salary of a software engineer manager has increased to $144,793 and a SAS ABAP developers highest salary earring is $139,920. These numbers highlight the increased requirement of these lucrative skills in the industry.

With that being said, no one can deny the importance of AI and ML in almost every industry, including healthcare, finance, retail, manufacturing, education, etc. When asked, Abhinav Tushar, Head of AI at Vernacular.ai, stated that, with machine learning gaining traction, there is more demand for work involving automated analysis of the text, audio and video media content. Therefore, I think ML for analysis on speech/text has overall been exceptionally high in demand in recent times.

Thus, the possibilities are endless, and one can apply machine learning skills to every requirement starting from developing chatbots for better customer service to improving workplace communication and enhancing cybersecurity. Thus professionals who are delving into the fields of AI and ML are definitely going to be most in-demand for the post-COVID world.

With such evidence in hand, it can be established that the post-COVID world will be way advanced than today with enterprises adopting emerging technologies like artificial intelligence and machine learning. Since AI and ML will be the new norm rather than the exception, it is critical for companies as well as professionals to look at their strategies and find ways to delve into these evolving fields to stay relevant post-COVID.

Sejuti currently works as Senior Technology Journalist at Analytics India Magazine (AIM). Reach out at sejuti.das@analyticsindiamag.com

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Cloud Computing Market Could Surpass $830 Billion Within 5 Years – ETF Trends

A report from MarketsAndMarkets noted that the global cloud computing market size is forecasted to grow from USD $371.4 billion in 2020 to USD $832.1 billion by 2025. Covid-19 put a heavier reliance on tech with cloud computing as one of the sub-sectors benefiting from the pandemic.

During the present global pandemic crisis, many companies (and governmental agencies) are utilizing cloud computing software services room booking services, a PR news release said. Meeting arrangement is considered as a routine activity in organizations, yet in these times, it can become problematical and time-consuming if there is not an efficient booking process.

Meeting organizers are tasked with gathering a group of executives together at the same time and place in a safe manner, the release added. This may involve communicating back and forth with attendees via email or phone. Fixing a corporate meeting can be thus, a tedious job. It requires multi-tasking wherein the organizer needs to focus on various factors such as making bookings for the meeting rooms and arranging a projector, and other audio-visual gadgets. According to Research Reports the Meeting Room Booking System Software market is growing at a steady rate and with the rising adoption of strategies by key players, the market is expected to rise over the projected horizon.

One exchange-traded fund to look at is theGlobal X Cloud Computing ETF (Nasdaq: CLOU). Seeking to track the Indxx Global Cloud Computing Index, the fund holds a basket of companies that potentially stand to benefit from the continuing proliferation of cloud computing technology and services.

The cloud computing industry refers to companies that (i) license and deliver software over the internet on a subscription basis (SaaS), (ii) provide a platform for creating software applications which are delivered over the internet (PaaS), (iii) provide virtualized computing infrastructure over the internet (IaaS), (iv) own and manage facilities customers use to store data and servers, including data center Real Estate Investment Trusts (REITs), and/or (v) manufacture or distribute infrastructure and/or hardware components used in cloud and edge computing activities.

CLOU data by YCharts

Another fund to consider is the WisdomTree Cloud Computing Fund (WCLD). The fund seeks to track the price and yield performance of the BVP Nasdaq Emerging Cloud Index, which is designed to track the performance of emerging public companies primarily involved in providing cloud computing software and services to their customers. It is non-diversified.

For more market trends, visit theETF Trends.

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Cloud Computing Market Could Surpass $830 Billion Within 5 Years - ETF Trends

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