Big Data And Cloud Computing: A Perfect Combination

Navdeep Garg
Big Data And Cloud Computing

Introduction

While Big Data is responsible for data storage and processing, the cloud provides a reliable, accessible, and scalable environment for Big Data systems to function. Big Data is defined as the quantity of digital data produced from different sources of technology, for example, sensors, digitizers, scanners, numerical modelling, mobile phones, the Internet,  videos, social networks. Cloud Computing and Big Data are complementary to each other. Rapid growth in Big Data is regarded as a problem. Clouds are evolving and providing solutions for the appropriate environment of Big Data while traditional storage cannot meet the requirements for dealing with Big Data, in addition to the need for data exchange between various distributed storage locations. Cloud Computing provides solutions and addresses problems with Big Data. 

The Cloud Computing environment is expanding to be able to absorb big amounts of data as it follows the policy of data splitting, that is, to store data in more than one location or availability area. Cloud Computing environments are built for general-purpose workloads and resource pooling is used to provide flexibility on demand. Therefore, the Cloud Computing environment seems to be well suited for Big Data. 

Big Data processing and storage require expansion as the cloud provides expansion through virtual machines and helps Big Data evolve. This is a consistent relationship between them. For the cloud environment to fit with Big Data, the Cloud Computing environment must be modified to suit data and cloud work together. Many changes are required to be made on the cloud: CPUs to handle Big Data and others. 

Big Data and Cloud Computing are among the most important stages of IT development. Information privacy and security are some of the most important issues for the cloud because of its open environment with very limited user control. Security and privacy influence Big Data storage and processing because there is a vast use of third party services and the infrastructure used to host important data or to perform operations as growing data and application growth bring challenges. 

There are multiple benefits of Big Data analytics in Cloud:

  • Improved analysis- With the advancement of Cloud technology, Big Data analysis has been upgraded causing better results. Hence, companies prefer to perform Big Data analysis in the Cloud. Moreover, Cloud helps to integrate data from numerous sources.
  • Simplified Infrastructure- Big Data analysis is a tremendous strenuous job on infrastructure as the data comes in large volumes with varying speeds, and types that traditional infrastructures usually cannot keep up with. As Cloud Computing provides flexible infrastructure, which we can scale according to the needs at the time, it is easy to manage workloads.
  • Lowering the cost- Both Big Data and Cloud technology delivers value to organizations by reducing ownership. Cloud allows customers for Big Data processing without large-scale Big Data resources. Hence, both Big Data and Cloud technology are driving the price down for enterprise purposes and bringing value to the enterprise.
  • Security and Privacy- Data security and privacy are two major concerns when dealing with enterprise data. Moreover, when your application is hosted on a Cloud platform due to its open environment and limited user control security becomes a primary concern. Hence, nowadays the system integrators bring in a Private Cloud Solution that is Elastic and Scalable. Furthermore, it also leverages Scalable Distributed Processing.

Big Data and Cloud Computing constitute an integrated model in the world of distributed network technology. The development of  Big Data and its requirements is a factor that motivates service providers in the cloud for continuous development because the relationship between them is based on the product, storage and processing as a common factor. Big Data represents the product and the cloud represents the container. Cloud computing represents an environment of flexible distributed resources that use high techniques in the processing and management of data and yet reduce the cost. All these characteristics show that cloud computing has an integrated relationship with big data.  Both are moving towards rapid progress to keep pace with progress in technology requirements and users.

Big Data And Cloud Computing: A Perfect Combination

While Big Data is responsible for data storage and processing, the cloud provides a reliable, accessible, and scalable environment for Big Data systems to function. Big Data is defined as the quantity of digital data produced from different sources of technology, for example, sensors, digitizers, scanners, numerical modelling, mobile phones, the Internet,  videos, social networks. Cloud Computing and Big Data are complementary to each other. Rapid growth in Big Data is regarded as a problem. Clouds are evolving and providing solutions for the appropriate environment of Big Data while traditional storage cannot meet the requirements for dealing with Big Data, in addition to the need for data exchange between various distributed storage locations. Cloud Computing provides solutions and addresses problems with Big Data. 

The Cloud Computing environment is expanding to be able to absorb big amounts of data as it follows the policy of data splitting, that is, to store data in more than one location or availability area. Cloud Computing environments are built for general-purpose workloads and resource pooling is used to provide flexibility on demand. Therefore, the Cloud Computing environment seems to be well suited for Big Data. 

Big Data processing and storage require expansion as the cloud provides expansion through virtual machines and helps Big Data evolve. This is a consistent relationship between them. For the cloud environment to fit with Big Data, the Cloud Computing environment must be modified to suit data and cloud work together. Many changes are required to be made on the cloud: CPUs to handle Big Data and others. 

Big Data and Cloud Computing are among the most important stages of IT development. Information privacy and security are some of the most important issues for the cloud because of its open environment with very limited user control. Security and privacy influence Big Data storage and processing because there is a vast use of third party services and the infrastructure used to host important data or to perform operations as growing data and application growth bring challenges. 

There are multiple benefits of Big Data analytics in Cloud:

  • Improved analysis- With the advancement of Cloud technology, Big Data analysis has been upgraded causing better results. Hence, companies prefer to perform Big Data analysis in the Cloud. Moreover, Cloud helps to integrate data from numerous sources.
  • Simplified Infrastructure- Big Data analysis is a tremendous strenuous job on infrastructure as the data comes in large volumes with varying speeds, and types that traditional infrastructures usually cannot keep up with. As Cloud Computing provides flexible infrastructure, which we can scale according to the needs at the time, it is easy to manage workloads.
  • Lowering the cost- Both Big Data and Cloud technology delivers value to organizations by reducing ownership. Cloud allows customers for Big Data processing without large-scale Big Data resources. Hence, both Big Data and Cloud technology are driving the price down for enterprise purposes and bringing value to the enterprise.
  • Security and Privacy- Data security and privacy are two major concerns when dealing with enterprise data. Moreover, when your application is hosted on a Cloud platform due to its open environment and limited user control security becomes a primary concern. Hence, nowadays the system integrators bring in a Private Cloud Solution that is Elastic and Scalable. Furthermore, it also leverages Scalable Distributed Processing.

Big Data and Cloud Computing constitute an integrated model in the world of distributed network technology. The development of  Big Data and its requirements is a factor that motivates service providers in the cloud for continuous development because the relationship between them is based on the product, storage and processing as a common factor. Big Data represents the product and the cloud represents the container. Cloud computing represents an environment of flexible distributed resources that use high techniques in the processing and management of data and yet reduce the cost. All these characteristics show that cloud computing has an integrated relationship with big data.  Both are moving towards rapid progress to keep pace with progress in technology requirements and users.

Frequently Asked Questions

Our testing processes place a high priority on data security. To ensure the security of sensitive information, we adhere to a number of protocols, including the anonymization, encryption, and control of access to data. During testing, we use secure environments and data that mimic real-world scenarios without exposing sensitive information. We adhere to best practices for data protection and comply with industry standards and regulations including GDPR and HIPAA. As part of our security testing process, we employ a variety of tools and methodologies to identify and rectify security vulnerabilities.

To ensure the quality and reliability of your software solutions, we employ a comprehensive range of testing methodologies and cutting-edge tools. Our testing approach includes:

  • Manual Testing: We use structured test cases to identify usability, functionality, and design issues.
  • Automated Testing: Automated testing streamlines processes, improves efficiency, and ensures consistency.
  • Unit Testing: JUnit, NUnit, and PyUnit are unit testing frameworks we use to validate the functionality of code units.
  • Integration Testing: We verify the seamless interaction of various system components using tools such as Selenium, Appium, and Postman.
  • Performance Testing: To assess system responsiveness and scalability, we employ tools like JMeter, LoadRunner, and Gatling.
  • Security Testing: Our security testing includes vulnerability assessments and penetration testing using tools like OWASP ZAP and Nessus.
  • User Acceptance Testing (UAT): We collaborate closely with your team to ensure that the software aligns with your end-users’ expectations.

You can count on us to improve the visibility of your website on search engines by using our SEO services. On-page and technical SEO best practices are implemented by our team, content is optimized, and search engine optimization strategies are provided to improve the search engine rankings of your website.

We adhere rigorously to project timelines and deadlines at our software development company. To ensure on-time delivery, we use meticulous project management, agile methodologies, and clear communication. Depending on the scope, complexity, and your specific requirements, we conduct a comprehensive analysis and planning phase. Our project managers then track progress continuously using agile frameworks. We maintain regular status updates and transparent communication channels. Whenever changes need to be made, we let you know promptly while keeping you updated.

We specialize in a wide range of technologies and programming languages, including but not limited to Blockchain, .Net, JavaScript, C#, Ruby, PHP, Wordpress. Our expertise covers web development frameworks like React, Angular, and Vue.js, as well as mobile app development for React Native, Flutter, iOS and Android. We also have experience with cloud platforms such as AWS, Azure, and Google Cloud, and are proficient in database systems like MySQL, PostgreSQL, MongoDB, and more. Additionally, we are well-versed in DevOps tools and practices to ensure seamless deployment and ongoing maintenance of the software we develop.

Our company offers a wide range of development services, including:

  • Web Development: We specialize in creating custom websites, web applications, e-commerce platforms, and content management systems.
  • Mobile App Development: We develop mobile apps for iOS and Android platforms, from concept to deployment.
  • Software Development: Our software development services cover desktop applications, business software, and cloud-based solutions.
  • Blockchain Development: We have expertise in blockchain technology, including smart contract development and decentralized application (DApp) creation.
  • IoT Development: Our Internet of Things (IoT) development services encompass connecting physical devices to the digital world.

Navdeep Garg
Article written by

Navdeep Garg

I'm founder and CEO of Revinfotech Inc. I traits in leadership and brilliant practitioner in the Financial Services and FinTech. I helped ban in connecting to the FinTech ecosystem through payment acceptance in blockchain as a service and even help i... read more

Do you have an exciting mobile app idea in mind?

We can help you to build a mobile app on an affordable budget. Contact us!






    Leave a Reply

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

    This site uses Akismet to reduce spam. Learn how your comment data is processed.