Adopting effective IT solutions to stay competitive in today’s digitalized world is important, big data analytics lies at the heart of any organizations’ decision-making to drive innovations and further enhance their business performance. According to Forrester, data-driven organizations are 58 percent more likely to exceed sales targets than non-data-driven companies. The challenges of deploying big data analytics are in how to tackle with a lot of data efficiently to serve for both accurate and insightful decisions. AI and machine learning solutions can help organizations overcome these and turn their troves of data into actionable insights by leveraging techniques like algorithms and computer science, which make it as a very necessary implementation to maximize big data potential in analytics.
Various beneficial ways AI and machine learning applications can be leveraged for big data analytics
When it comes to big data analytics, businesses are facing problems of handling extraordinarily huge volumes of structured and unstructured data, which cannot be solved by using traditional approaches. Machine learning applications can efficiently translate big data into useful insights for business decision-making. Specifically, big data turns out to be advantageous for machine learning systems since the more data a system receives, the better it functions for analytics.
AI and Machine learning applications can now perform automation, which minimizes manual tasks and further mitigate the resources needed for an analytics process. Such tasks like building analytics models and making predictions and generating insights can be automated, which may take up weeks or months if leveraging traditional approaches. Machine learning automation can make your analytics get increasingly more accurate at prediction without being explicitly programmed to do so.
There are 3 techniques in machine learning to help you decipher valuable insights from the complexity of big data:
Use cases of machine learning in big data analytics
The primary role of Machine learning applications in big data analytics is to enhance its capabilities in delivering quicker and more accurate knowledge information for decision-making. Let’s look at some practical use cases of machine learning that bring in positive impacts on your business model:
Define the right direction for machine learning solution implementation
A strong corporate leadership is an essential element of machine learning solutions due to the first stage in a successful machine learning implementation is to identify business objectives and goals. Based on the business understanding and objectives, you can proceed to collect the right data for analytics. Be mindful that feeding your machine learning models with high data quality is critical, so good data management has to be in place for any advanced analytics projects. Essentially, developing a data-centric company culture among your employees can help you prevent your staff from formulating habits of acting on hunches, which can enable your business to consistently make data-driven decisions across your organizational functions and achieve the objectives of business growth as a result.
Machine learning applications are an important technology for big data analytics, which guides your business to attain revenue goals. Adnovum can help you qualify your big data management and successfully implement AI and machine learning solutions customized and compatible with your business demands and circumstances.
Wondering how to get started with machine learning? Register for a complimentary consultation to learn more.