SlideShare a Scribd company logo
AI in Cloud Computing – Blend of
Two Growing Technologies
In order for a business to scale in today’s world, a tech-driven approach is required. The
combination of two popular technologies, Cloud and AI, has proven to be a potent source of
opportunity for companies looking to improve their IT operations.
In a nutshell, combining AI and cloud computing creates a large network capable of storing
massive quantities of data while also learning and improving.
According to MarketsAndMarkets, the cloud computing market size is estimated to reach $947
billion by 2026, double the size of the current market. While the AI market is expected to
increase more than fivefold to $309 billion, as per the study. The combination of cloud
computing with AI will enable users to not only store data, but also analyze and draw
conclusions from it.
Advantages of AI in Cloud Computing
The incorporation of artificial intelligence and machine learning capabilities in the cloud has
completely altered the cloud environment. Using machine learning algorithms, the cloud is
evolving into an intelligent cloud that can accomplish a lot of useful work effectively. Here are
some of the most significant advantages brought about by the combination of AI with cloud
computing:
More Economical
The elimination of costs associated with on-site data centers, such as hardware and
maintenance, is a significant benefit of cloud computing. With AI projects, those initial expenses
can be prohibitive. With the help of the cloud, organizations can quickly access these
technologies for a monthly subscription, making research and development costs more
reasonable. Furthermore, AI systems can extract insights from data and analyze it without
human participation.
Boost Productivity
Software management, developing production, and testing environment are a few of the tasks
for which the algorithms based on AI need significant time and effort. It gets eliminated by
using a centrally managed hybrid cloud, or a public cloud, allowing IT employees to focus on
routine activities.
Impactful Analytical Data
Analyzing a vast data set for evaluating customer trends and patterns is accomplished
effectively with AI. It compares past data to the most recent data, providing IT teams with well-
informed, data-backed information.
Furthermore, AI systems can do data analysis quickly, allowing businesses to respond to client
requests and issues immediately and efficiently. AI capabilities provide observations and vital
advice, resulting in faster and more accurate results.
Automation Intelligence
Integrating AI right into the cloud ecosystem can help in automating repetitive processes and
simplify work. AI tools are used in a hybrid cloud system to monitor, manage, and self-heal
individual public and private cloud components.
Advance Data Management
We can clearly see that AI plays a core role in data processing, management, and structuring.
Using reliable real-time data, we can improve marketing, customer service, and supply chain
data management. AI solutions simplify the process of ingesting, modifying, and managing data.
Downsides of AI in Cloud Computing
While the benefits are substantial, it is critical to have a thorough grasp of the subject before
making a judgment. As with every coin, there are two sides to every coin, and merging AI with
cloud computing can have certain drawbacks. For example, deploying AI may drastically reduce
costs, which is true, but there is a catch. AI is a complicated technology, and businesses will
require well-trained people to make the most use of such cutting-edge technology. Which will
eventually cost more money in terms of providing enough training and knowledge.
Here are some challenges that companies can face while using artificial intelligence in a cloud
computing environment:
Connectivity Crisis
The constant flow of internet access is imperative for cloud-based machine learning systems to
function smoothly. IT departments use the internet to deliver raw data to cloud services and
recover processed data. Poor internet connectivity can limit the benefits of cloud-based
machine learning algorithms.
While cloud computing is faster than traditional computing, there is a significant delay between
sending data to the cloud and obtaining results. It is a primary issue when utilizing machine
learning algorithms for cloud servers since prediction speed is a widespread concern.
Data Privacy Concerns
SaaS technology’s pay-as-you-go model enables thousands of businesses globally to make sense
of data, identify efficiencies in daily procedures, develop new products, and even grow into
other verticals.
As a result, companies run their customer, vendor, and market data through cloud applications
with little or no understanding of the public cloud’s security dangers. When AI processes data
provided into a SaaS service in a public cloud setting, it exponentially compounds these
hazards. When the processes and perimeters for AI algorithms are not established in a clear
manner, the chances of sensitive data getting exposed to a security breach increases.
To avoid such circumstances, enterprises need to focus on creating privacy policies and
protecting all the sensitive data while utilizing AI in a cloud computing environment.
Conclusion
AI has already made a dominating start in the tech world and is present in every industry. On
the other hand, almost every technology now includes cloud backup services. As a result, the
demand for cloud computing services appears to be increasing in the next years.
Although the usage of AI and cloud computing together is in its initial phases and few of the
leading companies take charge of investing huge amounts in AI-based cloud testing services.
We need to understand that both are growing technology that has a lot of potential to grow
and evolve more in the coming years.

More Related Content

Similar to AI in Cloud Computing (20)

PDF
Revealing the Potential and Risks From the Coming Together of IoT, AI, and C...
IndianAppDevelopers
 
PDF
The Role of Artificial Intelligence in Enhancing Cloud Application Performance
IRJET Journal
 
PDF
Makelink Innovation - cloud computing
makelinkak002
 
PDF
Cloud Computing And Software.pdf
Ciente
 
PDF
5 benefits that ai gives to cloud security venkat k - medium
usmsystem
 
PPTX
Unit 9 Technological trends in Information Technology By Sulav Acharya
AchSulav
 
PPTX
Unit 9 Technological trends in Information Technology By Sulav Acharya
AchSulav
 
PDF
leewayhertz.com-Use cases solution and implementation.pdf
alexjohnson7307
 
PDF
AI IN INFORMATION TECHNOLOGY: REDEFINING OPERATIONS AND RESHAPING STRATEGIES.pdf
StephenAmell4
 
PPTX
The Role of Artificial Intelligence in Modern Information Technology.pptx
Karpagamcollege
 
PDF
Exploring the Applications of Cloud Computing in the IT Industry.pdf
TechnoMark Solutions
 
PDF
Type cloud computing - Cloud based AI services
V2Soft2
 
PPTX
Ai and machine learning in cloud computing
makelinkak002
 
PPTX
Cloud Computing Trends 2019
Intelebee
 
PPTX
Embracing the Risk and Opportunity of AI & Cloud.pptx
Symptai Consulting Limited
 
PDF
Cloud computing Paper
Assem mousa
 
PDF
Cloud based AI services - cloud testing challenges
V2Soft2
 
PDF
gocareerguide-your on the go career guidance-www.gocareerguide.com
Carmor Bass
 
PDF
Businessimpactcloudcomputing 150825154809-lva1-app6891
Rodrigo Rivera Vidal
 
PDF
Machine Learning in IT Operations - Sampath Manickam
Sampath Manickam
 
Revealing the Potential and Risks From the Coming Together of IoT, AI, and C...
IndianAppDevelopers
 
The Role of Artificial Intelligence in Enhancing Cloud Application Performance
IRJET Journal
 
Makelink Innovation - cloud computing
makelinkak002
 
Cloud Computing And Software.pdf
Ciente
 
5 benefits that ai gives to cloud security venkat k - medium
usmsystem
 
Unit 9 Technological trends in Information Technology By Sulav Acharya
AchSulav
 
Unit 9 Technological trends in Information Technology By Sulav Acharya
AchSulav
 
leewayhertz.com-Use cases solution and implementation.pdf
alexjohnson7307
 
AI IN INFORMATION TECHNOLOGY: REDEFINING OPERATIONS AND RESHAPING STRATEGIES.pdf
StephenAmell4
 
The Role of Artificial Intelligence in Modern Information Technology.pptx
Karpagamcollege
 
Exploring the Applications of Cloud Computing in the IT Industry.pdf
TechnoMark Solutions
 
Type cloud computing - Cloud based AI services
V2Soft2
 
Ai and machine learning in cloud computing
makelinkak002
 
Cloud Computing Trends 2019
Intelebee
 
Embracing the Risk and Opportunity of AI & Cloud.pptx
Symptai Consulting Limited
 
Cloud computing Paper
Assem mousa
 
Cloud based AI services - cloud testing challenges
V2Soft2
 
gocareerguide-your on the go career guidance-www.gocareerguide.com
Carmor Bass
 
Businessimpactcloudcomputing 150825154809-lva1-app6891
Rodrigo Rivera Vidal
 
Machine Learning in IT Operations - Sampath Manickam
Sampath Manickam
 

More from Zoe Gilbert (20)

PDF
SAP HANA Implementation A Complete Guide.pdf
Zoe Gilbert
 
PDF
HIPAA Compliance Testing In Software Applications.pdf
Zoe Gilbert
 
PDF
Checklist For Modernizing Your Legacy Application.pdf
Zoe Gilbert
 
PDF
Ad Hoc Testing: Everything You Need To Know
Zoe Gilbert
 
PDF
Eliminate OTT Platform Flaws with Quality Engineering.pdf
Zoe Gilbert
 
PDF
Best Tools for Website Accessibility Testing in 2022.pdf
Zoe Gilbert
 
PDF
What are the Advantages and Disadvantages of Microservices?
Zoe Gilbert
 
PDF
Embedded Testing Vs Software Testing – Key Difference.pdf
Zoe Gilbert
 
PDF
Why is Low Code Automation Testing Gaining Popular.pdf
Zoe Gilbert
 
PDF
Logistics Automation to Strengthen Process Efficiency.pdf
Zoe Gilbert
 
PDF
Accelerating Digital Transformation in the BFSI Sector.pdf
Zoe Gilbert
 
PDF
Hyperautomation.pdf
Zoe Gilbert
 
PDF
What is the Right Approach to QA Outsourcing.pdf
Zoe Gilbert
 
PDF
Boast the Potential of DevOps with CI CD
Zoe Gilbert
 
PDF
What is Sanity Testing.pdf
Zoe Gilbert
 
PDF
Tackle Business Risks with Continuous Testing.pdf
Zoe Gilbert
 
PDF
Guide to Successful AI.pdf
Zoe Gilbert
 
PDF
Top Software Testing Models for Customer Satisfaction.pdf
Zoe Gilbert
 
PDF
Compliance testing or conformance testing
Zoe Gilbert
 
PDF
Agile digital transformation
Zoe Gilbert
 
SAP HANA Implementation A Complete Guide.pdf
Zoe Gilbert
 
HIPAA Compliance Testing In Software Applications.pdf
Zoe Gilbert
 
Checklist For Modernizing Your Legacy Application.pdf
Zoe Gilbert
 
Ad Hoc Testing: Everything You Need To Know
Zoe Gilbert
 
Eliminate OTT Platform Flaws with Quality Engineering.pdf
Zoe Gilbert
 
Best Tools for Website Accessibility Testing in 2022.pdf
Zoe Gilbert
 
What are the Advantages and Disadvantages of Microservices?
Zoe Gilbert
 
Embedded Testing Vs Software Testing – Key Difference.pdf
Zoe Gilbert
 
Why is Low Code Automation Testing Gaining Popular.pdf
Zoe Gilbert
 
Logistics Automation to Strengthen Process Efficiency.pdf
Zoe Gilbert
 
Accelerating Digital Transformation in the BFSI Sector.pdf
Zoe Gilbert
 
Hyperautomation.pdf
Zoe Gilbert
 
What is the Right Approach to QA Outsourcing.pdf
Zoe Gilbert
 
Boast the Potential of DevOps with CI CD
Zoe Gilbert
 
What is Sanity Testing.pdf
Zoe Gilbert
 
Tackle Business Risks with Continuous Testing.pdf
Zoe Gilbert
 
Guide to Successful AI.pdf
Zoe Gilbert
 
Top Software Testing Models for Customer Satisfaction.pdf
Zoe Gilbert
 
Compliance testing or conformance testing
Zoe Gilbert
 
Agile digital transformation
Zoe Gilbert
 
Ad

Recently uploaded (20)

PDF
CIFDAQ Market Wrap for the week of 4th July 2025
CIFDAQ
 
PDF
"AI Transformation: Directions and Challenges", Pavlo Shaternik
Fwdays
 
PDF
Agentic AI lifecycle for Enterprise Hyper-Automation
Debmalya Biswas
 
PPTX
Webinar: Introduction to LF Energy EVerest
DanBrown980551
 
DOCX
Cryptography Quiz: test your knowledge of this important security concept.
Rajni Bhardwaj Grover
 
PPTX
The Project Compass - GDG on Campus MSIT
dscmsitkol
 
PDF
July Patch Tuesday
Ivanti
 
DOCX
Python coding for beginners !! Start now!#
Rajni Bhardwaj Grover
 
PDF
Achieving Consistent and Reliable AI Code Generation - Medusa AI
medusaaico
 
PDF
Reverse Engineering of Security Products: Developing an Advanced Microsoft De...
nwbxhhcyjv
 
PDF
Go Concurrency Real-World Patterns, Pitfalls, and Playground Battles.pdf
Emily Achieng
 
PPTX
Designing Production-Ready AI Agents
Kunal Rai
 
PDF
Smart Trailers 2025 Update with History and Overview
Paul Menig
 
PPTX
Future Tech Innovations 2025 – A TechLists Insight
TechLists
 
PDF
Biography of Daniel Podor.pdf
Daniel Podor
 
PPTX
COMPARISON OF RASTER ANALYSIS TOOLS OF QGIS AND ARCGIS
Sharanya Sarkar
 
PPTX
AI Penetration Testing Essentials: A Cybersecurity Guide for 2025
defencerabbit Team
 
PDF
Building Real-Time Digital Twins with IBM Maximo & ArcGIS Indoors
Safe Software
 
PDF
The Rise of AI and IoT in Mobile App Tech.pdf
IMG Global Infotech
 
PPTX
AUTOMATION AND ROBOTICS IN PHARMA INDUSTRY.pptx
sameeraaabegumm
 
CIFDAQ Market Wrap for the week of 4th July 2025
CIFDAQ
 
"AI Transformation: Directions and Challenges", Pavlo Shaternik
Fwdays
 
Agentic AI lifecycle for Enterprise Hyper-Automation
Debmalya Biswas
 
Webinar: Introduction to LF Energy EVerest
DanBrown980551
 
Cryptography Quiz: test your knowledge of this important security concept.
Rajni Bhardwaj Grover
 
The Project Compass - GDG on Campus MSIT
dscmsitkol
 
July Patch Tuesday
Ivanti
 
Python coding for beginners !! Start now!#
Rajni Bhardwaj Grover
 
Achieving Consistent and Reliable AI Code Generation - Medusa AI
medusaaico
 
Reverse Engineering of Security Products: Developing an Advanced Microsoft De...
nwbxhhcyjv
 
Go Concurrency Real-World Patterns, Pitfalls, and Playground Battles.pdf
Emily Achieng
 
Designing Production-Ready AI Agents
Kunal Rai
 
Smart Trailers 2025 Update with History and Overview
Paul Menig
 
Future Tech Innovations 2025 – A TechLists Insight
TechLists
 
Biography of Daniel Podor.pdf
Daniel Podor
 
COMPARISON OF RASTER ANALYSIS TOOLS OF QGIS AND ARCGIS
Sharanya Sarkar
 
AI Penetration Testing Essentials: A Cybersecurity Guide for 2025
defencerabbit Team
 
Building Real-Time Digital Twins with IBM Maximo & ArcGIS Indoors
Safe Software
 
The Rise of AI and IoT in Mobile App Tech.pdf
IMG Global Infotech
 
AUTOMATION AND ROBOTICS IN PHARMA INDUSTRY.pptx
sameeraaabegumm
 
Ad

AI in Cloud Computing

  • 1. AI in Cloud Computing – Blend of Two Growing Technologies In order for a business to scale in today’s world, a tech-driven approach is required. The combination of two popular technologies, Cloud and AI, has proven to be a potent source of opportunity for companies looking to improve their IT operations. In a nutshell, combining AI and cloud computing creates a large network capable of storing massive quantities of data while also learning and improving. According to MarketsAndMarkets, the cloud computing market size is estimated to reach $947 billion by 2026, double the size of the current market. While the AI market is expected to increase more than fivefold to $309 billion, as per the study. The combination of cloud computing with AI will enable users to not only store data, but also analyze and draw conclusions from it.
  • 2. Advantages of AI in Cloud Computing The incorporation of artificial intelligence and machine learning capabilities in the cloud has completely altered the cloud environment. Using machine learning algorithms, the cloud is evolving into an intelligent cloud that can accomplish a lot of useful work effectively. Here are some of the most significant advantages brought about by the combination of AI with cloud computing: More Economical The elimination of costs associated with on-site data centers, such as hardware and maintenance, is a significant benefit of cloud computing. With AI projects, those initial expenses can be prohibitive. With the help of the cloud, organizations can quickly access these technologies for a monthly subscription, making research and development costs more reasonable. Furthermore, AI systems can extract insights from data and analyze it without human participation. Boost Productivity Software management, developing production, and testing environment are a few of the tasks for which the algorithms based on AI need significant time and effort. It gets eliminated by using a centrally managed hybrid cloud, or a public cloud, allowing IT employees to focus on routine activities. Impactful Analytical Data Analyzing a vast data set for evaluating customer trends and patterns is accomplished effectively with AI. It compares past data to the most recent data, providing IT teams with well- informed, data-backed information. Furthermore, AI systems can do data analysis quickly, allowing businesses to respond to client requests and issues immediately and efficiently. AI capabilities provide observations and vital advice, resulting in faster and more accurate results. Automation Intelligence Integrating AI right into the cloud ecosystem can help in automating repetitive processes and simplify work. AI tools are used in a hybrid cloud system to monitor, manage, and self-heal individual public and private cloud components. Advance Data Management
  • 3. We can clearly see that AI plays a core role in data processing, management, and structuring. Using reliable real-time data, we can improve marketing, customer service, and supply chain data management. AI solutions simplify the process of ingesting, modifying, and managing data. Downsides of AI in Cloud Computing While the benefits are substantial, it is critical to have a thorough grasp of the subject before making a judgment. As with every coin, there are two sides to every coin, and merging AI with cloud computing can have certain drawbacks. For example, deploying AI may drastically reduce costs, which is true, but there is a catch. AI is a complicated technology, and businesses will require well-trained people to make the most use of such cutting-edge technology. Which will eventually cost more money in terms of providing enough training and knowledge. Here are some challenges that companies can face while using artificial intelligence in a cloud computing environment: Connectivity Crisis The constant flow of internet access is imperative for cloud-based machine learning systems to function smoothly. IT departments use the internet to deliver raw data to cloud services and recover processed data. Poor internet connectivity can limit the benefits of cloud-based machine learning algorithms. While cloud computing is faster than traditional computing, there is a significant delay between sending data to the cloud and obtaining results. It is a primary issue when utilizing machine learning algorithms for cloud servers since prediction speed is a widespread concern. Data Privacy Concerns SaaS technology’s pay-as-you-go model enables thousands of businesses globally to make sense of data, identify efficiencies in daily procedures, develop new products, and even grow into other verticals. As a result, companies run their customer, vendor, and market data through cloud applications with little or no understanding of the public cloud’s security dangers. When AI processes data provided into a SaaS service in a public cloud setting, it exponentially compounds these hazards. When the processes and perimeters for AI algorithms are not established in a clear manner, the chances of sensitive data getting exposed to a security breach increases. To avoid such circumstances, enterprises need to focus on creating privacy policies and protecting all the sensitive data while utilizing AI in a cloud computing environment.
  • 4. Conclusion AI has already made a dominating start in the tech world and is present in every industry. On the other hand, almost every technology now includes cloud backup services. As a result, the demand for cloud computing services appears to be increasing in the next years. Although the usage of AI and cloud computing together is in its initial phases and few of the leading companies take charge of investing huge amounts in AI-based cloud testing services. We need to understand that both are growing technology that has a lot of potential to grow and evolve more in the coming years.