Sunday, February 28, 2021
  • Setup menu at Appearance » Menus and assign menu to Top Bar Navigation
Advertisement
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News
No Result
View All Result
NikolaNews
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News
No Result
View All Result
NikolaNews
No Result
View All Result
Home Data Science

Impact of Hybrid Cloud on the AI Driven Future Enterprise

October 18, 2019
in Data Science
Impact of Hybrid Cloud on the AI Driven Future Enterprise
593
SHARES
3.3k
VIEWS
Share on FacebookShare on Twitter

The cloud is one of the quickest and most rapidly growing deployment options for businesses around the globe. With the recent surge toward intelligent enterprises, we’re seeing a lot of businesses move to the cloud for better management of IT computing resources. Businesses focusing on analytics are looking to leverage the cloud to improve the efficiency of their analytics processes and develop new advanced capabilities, and to make sure that their organizations gets the type of business intelligence they require. 

You might also like

The Time-Series Ecosystem – Data Science Central

The Education Industrial Complex: The Hammer We Have

Increasing Adoption of Informatics will Promote Growth of Data Analytics Outsourcing Market

With heightened interest toward efficiency in analytics management, the hybrid cloud can very well act as the factor that differentiates organizations in the times to come. Not only is the cloud extremely important for your AI development and transformation, but it is also necessary for looking at and highlighting the business problems that you want to solve. As an Exasol partner, Ronald van Loon got to speak with higher-ups from Exasol about this matter. As part of his partnership with the organization, Ronald recent spoke to Helena Schwenk, the Market Intelligence Specialist at Exasol, and Mathias Golombek, the Chief Technology Officer for Exasol. 

Cloud is a Tool to Accelerate Business Goals 

The advent of and greater reliance upon analytics has meant that our business goals and objectives are changing over time. With the change in business goals, it is only sensible for us to also change the way we progress toward achieving these business goals. 

The hybrid version of cloud integrates all your processes together to achieve seamless progression toward your end goals. Every organization currently wants to be future-ready, and the hybrid cloud can deliver just that through the following means: 

  • By saving costs that you would have otherwise incurred. 
  • By increasing the agility and/or pace at which you work. 
  • By ensuring enhanced security. 
  • By improving compliance. 
  • By improving the control of data within your organization. 
  • By making data portable across developments. 

“With all these benefits, organizations would want to build their future applications on a hybrid cloud. Customers are on a journey toward the hybrid cloud; the rate, level of cloud adoption and the end goal will vary with vertical, company size and geographical factors playing a key part. There is no one answer when it comes to determining how and where data should be managed in these scenarios, especially as the choice depends on an organization’s view to data sovereignty, sensitivity and gravity, plus their cloud adoption maturity and the types of workloads they are looking to support. Above all, a hybrid cloud gives organizations the flexibility to extend and augment their existing on-premises data workloads while supporting different cloud data workloads and use cases,” believes Helena Schwenk from Exasol. 

Navigating Challenges and Opportunities

The move to the hybrid cloud isn’t clear of all hindrances. Not only will you have to make sure that your organization is optimally positioned within the public cloud, but you will also want to stop any security breaches from impacting your progress. 

Many companies around the globe are uneasy when it comes to migrating their sensitive data to the cloud. Not only do these companies have to avert and consider all security risks, they also have to work toward minimizing the downtime that can occur during the shift. However, this is a concern for public clouds.

Private or on-premise clouds, both of which are options that are part of the hybrid cloud setup, are much more secure, positioning hybrid as a great option for those concerned with data security.

If you’re new to the cloud, you might also find the early operational costs to be on the expensive side and a bit hard to manage for starters. But, once you are settled and have started progressing with the cloud, you will find the journey easier. 

Some of the challenges you might face when you first jump on the cloud are: 

  • Organizational challenges, where your whole data structure will change. 
  • Culture changes, as employees will now have to go through an entirely different process for data management. 
  • Shifting the line of work. 
  • Security challenges, where you need to ensure that the security on your cloud platform is top-notch. You have sensitive data present on the cloud, and the responsibility to protect it falls on your shoulders. 

You need to be aware of the costs that will be incurred during the process. Have an experienced person on your team guide you on what the costs could be. The unpredictability of costs involved in the process is one of the major reasons why companies may fail in migrating to the cloud. Beware of what costs you will incur during the process, and plan accordingly. 

“Understand your data gravity, data flows and use cases before thinking about migration to the cloud. Ensure you select hybrid cloud deployment architectures that align with specific use-case requirements. Maximize the potential of modern cloud technologies including pay as you go, scalability etc.,” mentions Helena Schwenk. “Security and privacy concerns still prevail. Many cloud migration projects fail due to complexity and costs. Indeed, market data indicates that the costs associated with migration and unpredictability of costs are among the top concerns.”

“Cloud is tactical, not strategic—it’s more about agile processes. Cloud can only be a facilitator, not the solution itself,” Mathias Golombek further added.

Real Time Decisions for Real Time Actions 

The AI and ML solutions presented through the cloud allow companies to extract and analyze real-time data on a real-time basis. 

The processes that were once performed with delay through legacy systems are now being handled in an efficient manner through the use of the cloud. 

“Sandboxing through dedicated, stateless clusters/instances might be one option, or powerful systems that can handle many applications in parallel. A multi-Cluster solution that can separate workloads, but provide single transactional view on all your data, can work here,” believes Mathias Golombek, the CTO at Exasol. 

Once real time data is coming in, organizations can take decisions without any hindrances whatsoever. This will eventually improve agility and make the organization of the future better prepared for handling the complexities in the future. This agility will eventually lead to modern Business Intelligence or BI. 

Mathias Golombek, the CTO, believes that the potential aspects for modern BI are: 

  • Tuning free for empowering agility (forget about the technology).
  • Sheer performance to cope with future requirements/growth/applications/growing user base.
  • Two-tier approach (data storage/data lake) and operational analytics layer (in-memory).
  • Automated data integration framework (e.g. metadata driven, company wide data catalogue) for easy, agile and scalable data delivery factory. 
  • Unifying BI and Data Science (not replacing, but operationalization of AI in a trusted environment, leveraging AI through SQL views/reports, and applying the models on large data sets).

Be Ahead of the Curve

The hybrid cloud can truly help you remain ahead of the curve and get the competitive advantage that you require. Data and analytics help companies to remain relevant and deliver what their customers want. 

24% of all respondents in a MicroStrategy survey mentioned that cloud computing is a technology that they would want to incorporate with their analytics initiatives in the future. The world is progressing toward the hybrid cloud—make sure that you are ready for it. 


Credit: Data Science Central By: Ronald van Loon

Previous Post

How blockchain is being put to work in the energy grid

Next Post

Cryptocurrency executives charged with running $11 million Ponzi scheme

Related Posts

The Time-Series Ecosystem – Data Science Central
Data Science

The Time-Series Ecosystem – Data Science Central

February 28, 2021
The Education Industrial Complex: The Hammer We Have
Data Science

The Education Industrial Complex: The Hammer We Have

February 27, 2021
Increasing Adoption of Informatics will Promote Growth of Data Analytics Outsourcing Market
Data Science

Increasing Adoption of Informatics will Promote Growth of Data Analytics Outsourcing Market

February 27, 2021
The Ethereum Virtual Machine (EVM)
Data Science

The Ethereum Virtual Machine (EVM)

February 27, 2021
Levels of Measurement (Nominal, Ordinal, Interval, Ratio) in Statistics
Data Science

Levels of Measurement (Nominal, Ordinal, Interval, Ratio) in Statistics

February 27, 2021
Next Post
Cryptocurrency executives charged with running $11 million Ponzi scheme

Cryptocurrency executives charged with running $11 million Ponzi scheme

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Recommended

Plasticity in Deep Learning: Dynamic Adaptations for AI Self-Driving Cars

Plasticity in Deep Learning: Dynamic Adaptations for AI Self-Driving Cars

January 6, 2019
Microsoft, Google Use Artificial Intelligence to Fight Hackers

Microsoft, Google Use Artificial Intelligence to Fight Hackers

January 6, 2019

Categories

  • Artificial Intelligence
  • Big Data
  • Blockchain
  • Crypto News
  • Data Science
  • Digital Marketing
  • Internet Privacy
  • Internet Security
  • Learn to Code
  • Machine Learning
  • Marketing Technology
  • Neural Networks
  • Technology Companies

Don't miss it

Can Java be used for machine learning and data science?
Machine Learning

Can Java be used for machine learning and data science?

February 28, 2021
These four new hacking groups are targeting critical infrastructure, warns security company
Internet Security

These four new hacking groups are targeting critical infrastructure, warns security company

February 28, 2021
The Time-Series Ecosystem – Data Science Central
Data Science

The Time-Series Ecosystem – Data Science Central

February 28, 2021
Accurate classification of COVID‐19 patients with different severity via machine learning – Sun – 2021 – Clinical and Translational Medicine
Machine Learning

Accurate classification of COVID‐19 patients with different severity via machine learning – Sun – 2021 – Clinical and Translational Medicine

February 28, 2021
Privacy Commissioner asks for clarity on minister’s powers in Critical Infrastructure Bill
Internet Security

Privacy Commissioner asks for clarity on minister’s powers in Critical Infrastructure Bill

February 28, 2021
Top Master’s Programs In Machine Learning In The US
Machine Learning

Top Master’s Programs In Machine Learning In The US

February 28, 2021
NikolaNews

NikolaNews.com is an online News Portal which aims to share news about blockchain, AI, Big Data, and Data Privacy and more!

What’s New Here?

  • Can Java be used for machine learning and data science? February 28, 2021
  • These four new hacking groups are targeting critical infrastructure, warns security company February 28, 2021
  • The Time-Series Ecosystem – Data Science Central February 28, 2021
  • Accurate classification of COVID‐19 patients with different severity via machine learning – Sun – 2021 – Clinical and Translational Medicine February 28, 2021

Subscribe to get more!

© 2019 NikolaNews.com - Global Tech Updates

No Result
View All Result
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News

© 2019 NikolaNews.com - Global Tech Updates