Full Text

Research Article

Implementing Cloud-Based Automation Tools by Leveraging AI And ML for Enhanced Efficiency and Innovation


Abstract
The research paper has explained the implementation of cloud-based automation tools. In order to do this the report has explained the concept of AI and ML for enhancing efficiency and innovation. In addition to this, the study has elaborated on the challenges and future trends of AI integration. In order to support these arguments, the research paper has elaborated about cloud-based automation and its benefits.


Keywords:
AI, ML, Cloud-based automation

1. Introduction
In the 21st century cloud automation has become one of the most important apparatus of business management. Generally, automation tools that emphasize cloud automation are virtual machines, performance monitors, workload deployment processes etc. Oftentimes, it has been noticed that cloud automation is an important parameter of efficient DevOps workflow. Artificial Intelligence and machine learning are extremely important in automation. These components help to analyse large data sets and identify patterns. After this process is completed, the software technology is able to perform decision-making. The entire idea of artificial intelligence revolves around this mechanism. It helps to modify software tendencies to incorporate humanisation. The incorporation of AI and ML helps to maintain competitive advantage and reduce costs in contemporary business operations. It helps in optimising and streamlining processes of business for prolonged financial stability. The scope of this research is to understand cloud-based automation tools in artificial intelligence and machine learning for enhanced efficiency and innovation.

2. Understanding Cloud-Based Automation
The basic concepts of cloud with automation are auto-scaling, deployment pipelines, resource provisioning, configuration management and security automation. With the help of these concepts, business entities in the 21st century are able to eliminate human error in their operations[1]. Additionally, these techniques also provide IT optimisation and efficiency. Besides these concepts, which can also be perceived as benefits of cloud automation, cost savings, flexibility, standardization and better Infrastructure as Code (IaC) are other benefits of cloud automation.

Considering the popularity of cloud automation, multiple organisations have innovated their processes to incorporate cloud automation in their services. Amazon is the biggest example of cloud automation with their AWS CloudFormation. Apart from this, Terraform, Puppet, SaltStack, and Azure Resource Manager are other worthy examples of cloud automation services. Cloud automation is contemporarily used in multiple industries to enhance consumer satisfaction[2]. The healthcare industry uses cloud automation in the form of predictive analytics for early disease detection. They also continuously used automated patient data processing methods to maintain a strong database of patient information.

Other than this banking and financial industry uses cloud automation for fraud detection and risk management. Regulatory compliance automation is another aspect of cloud computing practised by the banking sector. Manufacturing and supply chain uses Robotic Process Automation (RPA). Retail and e-commerce industries use cloud automation for inventory management and personalized marketing[3]. In addition to this, AI-powered customer service through chatbots is also continuously used to ensure consumer support and satisfaction (Figure 1).

Figure 1: Components of cloud-automation.

3. Role Of AI And ML in Cloud Automation
Artificial Intelligence and Machine Learning are created in a form that can emulate simple human functions. In this pursuit, they are able to understand data analytics for pattern recognition. In addition to this, they can also conduct extensive adaptive learning through Natural Language Processing (NLP). Artificial Intelligence is relatively new in the market especially because of its superior user interface. The basic difference between traditional automation and Artificial Intelligence-related automation is the provision of flexibility and efficiency[4]. Another difference between traditional automation and AI-driven automation is the possibility of anomaly detection, predictive analysis and intelligent decision-making. The availability of these methods of automation helps entities to reduce costs and enhance profitability (Figure 2). For example, Netflix uses artificial intelligence to optimise content delivery and predict future user preferences. This helps them improve streaming quality and gain consumer satisfaction. Amazon's use of Artificial Intelligence is basically seen in their warehouse. They use artificial intelligence to optimise their inventory management methods by ensuring the implementation of real-time market data.

What Is AWS CloudFormation? | Contino | Global Transformation Consultancy

Figure 2: AWS CloudFormation.

4. Benefits of AI/ML-Driven Cloud Automation

The basic benefits of AI/ML-driven cloud automation are as follows:

· Operational efficiency: With the help of AI and ML, business entities are able to work faster because work processes get simplified along with the reduction of human error.

· Cost savings: Due to AI intervention, business entities can save costs and invest in other departments because human capital recruitment is often reduced[5].

· Innovation: Innovation is another advantage of AI and ML cloud automation. It helps organisations to motivate their individuals through innovative work processes that help in profit optimisation.

· Security regulation: AI-driven cyber security is very strong and significant in the contemporary business sector because of its multifaceted work dimension.

· Scalability: The implementation of AI and ML in business entities helps to incorporate soft skills like adaptability.

5. Challenges in Implementing AI/ML-Based Cloud Automation
Lack of education is one of the most arising challenges of AI integration. In addition to this, data privacy concerns are also basic problems of Artificial Intelligence and machine learning. It denotes the differences in operational management organisations[6]. The inability to implement proper practices is another challenge because of the lack of technological infrastructure and resources.


6. Future Trends for Implementing AI/ML-Driven Cloud Automation
In the future, Artificial Intelligence can achieve maximum levels of integration in every organisation. Starting from healthcare to education, artificial intelligence integration will successfully solidify its application[7]. In addition, it will also help in signifying and enhancing consumer satisfaction and profitability.


7. Conclusion
In conclusion, it can be stated that Artificial Intelligence and machine learning have the capacity to become a leading trend in the contemporary business landscape. AI and ML integration can help business organisations to achieve profitability and enhance their market share. In addition to this, it can be stated that cloud automation is also beneficial regarding cyber security concerns and data protection regulations.

7.1. Abbreviations and acronyms

7.2. Units

7.3. Equations

 

8. References

  1. https://www.tandfonline.com/doi/full/10.1080/09585192.2020.1871398
  2. https://www.nber.org/system/files/chapters/c14006/c14006.pdf      
  3. https://link.springer.com/article/10.1007/s10796-021-10186-w?trk=public_ post_comment-text
  4. https://www.sciencedirect.com/science/article/pii/S2199853122002761?via%3Dihub
  5. Berente N, Gu B, Recker J and Santhanam R. “Managing Artificial Intelligence,” MIS Quarterly, 2021;45: 1433-1450.
  6. https://www.sciencedirect.com/science/article/pii/S004016252031218X?via%3Dihub  
  7. Mikalef P and Gupta M. “Artificial intelligence capability: Conceptualization, measurement calibration, and empirical study on its impact on organizational creativity and firm performance,” Information & Management, 2021;58: 103434.