Back to Community feed

How to Simplify Data Integration Through Artificial Intelligence?

Data highly drive enterprises' decision-making to save valuable time, money, and resources and boost operations. The need to connect applications, systems, endpoints, and users delivers effective operations. And to accomplish the same, organizations have to integrate data effectively. However, the traditional method of data integration using RDBMS, CRM, and file systems is not enough in the big data world where sources like social media deliver massive data units. So, bringing artificial intelligence into data integration becomes necessary to summarize and form actional insights.


The main goal of data integration with AI capabilities is to leverage past information and predict upcoming challenges and opportunities by putting the collected data to proper usage. This article will explore How to Simplify Data Integration with Artificial Intelligence? Let us start by understanding the challenges that enterprises face while integrating data. 


 Drawbacks in traditional data integration simplification approaches


Do you know that 2.5 quintillion bytes of data are generated every day? Since the data sources are increasing where an organization collects data from sources like streaming services, social media content, and other valuable sources, the traditional mode of data integration cannot manage the data set effectively. The enterprises face the following challenges while in data integration without integrating artificial intelligence: 


  • Data sources are massively increasing, with more and more users connecting to enterprises through the internet. 
  • When the data sets increase, it is complex to categorize and manage the data. 
  • Businesses have to set multiple data handles to access, edit, and copy the data to further reach to deliver actionable insights. 
  • To work around data set enterprises, they must regularly invest resources to understand multiple access points. 
  • Different people working on multiple data sources sometimes lead to duplicity, increasing data loads. 


The above challenges require the power of Artificial intelligence to efficiently achieve efficiency to make data-driven decisions. Yet, before integrating Artificial intelligence, a few hindrances are associated with implementation. Let us examine these hindrances before understanding how AI can amplify data integration and decision-making for enterprises.


Hindrances in simplifying data integration with Artificial intelligence


There is no shortcut to implementing data integration with Artificial intelligence. AI demands resources, advanced approaches, infrastructure, and much more.


Determining the right datasets

We have seen how the data sources are increasing, and it is complex for traditional data management tools to determine the right datasets. However, traditional data management tools lack complex functionalities for data integration. Determining the right data sets stays a challenge while implementing while preparing AI-rich algorithms. To build effective AI-rich solutions, identifying and aggregating accurate training datasets are essential for better AI-based learning and driving decisions.


Data Security and Storage

Artificial intelligence works best when data sets are large to train the AI. With more data, AI can bring better predictions and patterns for enterprises. But, the challenge of storage restricts enterprises towards data integration using Artificial intelligence. The large volumes of data require a powerful storage device that can store the data without crashing. Further, the massive data sets increase the risk of security for the data while performing intelligent operations on the data. Embracing an efficient data management ecosystem assists enterprises in implementing data integration with AI.


Infrastructure Silos

A critical challenge while implementing AI-rich infrastructure is infrastructure silos. Since AI is in evolving stage, enterprises still have not focused on building AI infrastructure. Data integration through Artificial intelligence demands high computational speed and power for development, testing, and running the solutions. 91.5% of top-rated businesses invest in AI to boost efficiency in operations. Enterprises have to invest in the infrastructure from the GPU to CPU and storage devices, which becomes a strong challenge for new startups while implementing data integration into Artificial intelligence.


Utilizing and updating existing systems

Another major area where enterprises face challenges is using existing business resources and strategically updating them according to the requirements of AI while also saving costs. Integrating existing APIs and architecture becomes a serious challenge for enterprises who want to leverage the power of Artificial intelligence. However, the fact is that “75% of executives fear losing their businesses in 5 years if they don’t scale AI.”


Advanced algorithms and highly tested training models

AI involves extensive training models and intelligent algorithms. Why? Because an enterprise is teaching a computer how to think like a human, and it is only possible through advanced algorithms. And to achieve maximum accuracy, highly tested training models remain challenging for an organization.


Ways to simplify data integration through Artificial intelligence?

Data integration through artificial intelligence requires deliberate planning, preparation, and the right execution. Here is how to simplify it through AI.


Build a right big data storage infrastructure

The volume of data is massive due to the increasing data sources like social media and other content sites. A proper storage capacity with the right input/output operations per second and reliability will simplify data integration and support Artificial intelligence. For example, a gaming business must have a high-quality input-output operation per second to avoid latency and learn from the network patterns. Further, analyzing the amount of data an application will generate, performing post-processing, and monitoring the capacity is a key steps in simplifying the database.


AI-rich networking infrastructure for security

High bandwidth and low latency are important factors for making data-driven decisions. The learning algorithms demand a fast input-output of data to sample, analyze and process the insights. Automating most of the task always deliver efficiency in operations and powers software with machine learning capabilities to predict security threats on the networks and react in real-time.


 Ease the workloads

Adopt powerful computing in your enterprises. You need high-quality algorithms to manage the AI components and simplify the data integration. The right hardware for your AI workload is important because of the data arriving from multiple sources. Enterprises require an in-depth knowledge of modern AI, and it is better to take Data integration service from an Artificial intelligence service provider. AI can ease your data workload.


Build advanced and high data simplification algorithms

Artificial intelligence simplifies data integration, making storing, processing, and managing information easier. Data cleansing can be a powerful technique to filter the data and avoid duplicacy. Machine learning and artificial intelligence services or platforms can assist your enterprise in building intelligence algorithms to simplify your data integration.


AI-based Governance for data

Proper data access controls use to identify and access management to manage access to resources. Set proper labels and assignation of roles to the users. Data encryption is another instance of great data integration using artificial intelligence. Encrypt your sensitive information through machine learning while your advanced AI algorithms study the data and process it to prepare actionable insights.


Wrapping up Artificial intelligence, machine learning, data transformation

Artificial intelligence simplifies the data integration process. The increasing number of data sources is growing the need to build intelligent systems that collect, categorize, process, and analyze data on their own and deliver actionable insight to the business. However, entrepreneurs have several challenges when involving Artificial intelligence. Despite the challenges, enterprises can explore several Data Integration Tools and platforms or take Data Integration Services or artificial intelligence services if they want smooth and efficient business operations.

Articles — Other
ActiveCampaign
Sponsored
ActiveCampaign is a marketing and sales automation platform that helps growing businesses meaningfully connect and engage with their customers. Its SaaS platform enables businesses to create optimized customer experiences by automating many behind the scenes processes and communicating with their customers across channels with personalized messages.