Impact of Predictive AI on Various Industries
Impact of Predictive AI on Various Industries

Impact of Predictive AI on Various Industries

Subscribe to our weekly newsletter to unlock valuable research from peers, tech buyers, and industry experts. Don't keep these insights to yourself— be sure to share them with your colleagues! Connect with us and ensure your product/serviceresonates with your target audience.

____________________________________________________________________________________

Just like GenAI, Predictive AI is also another subset of Artificial Intelligence (AI). It uses various statistical strategies and machine learning algorithms to identify patterns and trends in the data. Correspondingly, it predicts future outcomes based on the wide range of available data insights. This is very different from what GenAI does.

[Meanwhile, to understand the core difference between them, check out our blog here.]

Now let’s move on to today’s discussion on the impact of Predictive AI.

It’s noteworthy that predictive AI’s ability to adapt to the changing demands of various industries makes it a valuable tool for diverse business operations.

Consequently, nearly one-quarter of surveyed C-suite executives say they are using predictive AI for a range of purposes, like:

  • Data-Informed Decisions.
  • Optimizing Operations.
  • Risk Identification.
  • And Detecting Early Warnings.

Talking of which, allow me to walk you through the details of it.

How does Predictive AI work?

It operates on the same concept as big data analytics-greater amounts of data facilitate more advanced predictive models. This model considers thousands or millions of datasets prepared in the past for ML algorithms to make forecasts.

However, in contrast to descriptive and prescriptive analytics (which provides reports on past events and suggestions) Predictive AI anticipates future outcomes only.

Now, let me provide you a simplified explanation of how Predictive AI works:

Data Collection

The process begins by gathering relevant data from various sources. It includes sources like:

  • Historical and real-time data.
  • IoT sensor readings (RFiD, Flow Sensors e.t.c)
  • Social media activities.
  • Customer transactions.

Notably, the quality and quantity of data collected in this process play a crucial role in the accuracy of predictions.

Data Preprocessing

Once the data is collected, it undergoes preprocessing to clean and prepare it for analysis. This involves:

  • Removing duplicates,
  • Handling missing values,
  • Standardizing formats,
  • Transforming variables as needed.

This step ensures that the data is consistent and suitable for analysis.

Feature Selection and Engineering

In this step, relevant features or variables that are most predictive of the outcome are selected or engineered. Feature selection involves identifying the subset of features that contribute the most to the predictive power of the model. On the other hand, feature engineering may involve creating new features or transforming existing ones to improve model performance.

Model Training

After preprocessing the data and selecting relevant features, the next step is to train the predictive model.

This involves,

  • feeding the historical data into the machine learning algorithm to learn patterns of the input variables.
  • After that, the model adjusts its parameters iteratively to minimize the difference between predicted and actual outcomes.

Model Evaluation

Once the model has undergone training, it requires evaluation to assess its performance and generalization ability.

This evaluation typically involves using a separate dataset, called a validation or test set, which the model hasn’t seen before.

Deployment and Prediction

After successfully evaluating it, deploy the predictive model into production environments, where it makes predictions on new and unseen data. These predictions drive decision-making processes, automate tasks, and provide actionable insights to users.

According to TheCodeWork’s study of last year’s report, 149 predictive models were launched, more than the double launched in 2022. Therefore, it’s a clear indication that the rise of predictive models will continue to surge at a rapid pace. In essence, businesses should adopt Predictive AI at the earliest.

So, you can headstart with a massive competitive advantage.

Need some assistance with the step-by-step implementation? You may give us a call.

Benefits of Predictive AI Across Industries

Now, in the following section, allow me to walk you through the amazing benefits you can reap from Predictive AI. We primarily chose healthcare, finance, education, and logistics, to begin with, because of the severe impact in these areas.

Moving on,

Healthcare

You can consider COVID-19, to be a catalyst for the rapid surge of predictive AI in healthcare. The crisis necessitated rapid responses and adaptations in the healthcare sector and consequently, predictive AI emerged victorious to meet those challenges. Since then, health tech companies like GE Healthcare, Zebra and Wipro have been using it for a wide range of purposes.

This surge continues to have a lasting impact on the future of healthcare. As the pandemic has demonstrated its ability to manage health crises and improve patient care during such crucial times.

Here’s how:

  • Early Disease Detection

The algorithms analyze electronic health records (EHRs), medical imaging data, genetic information, and patient-reported symptoms to identify individuals at risk. By detecting subtle patterns and correlations in the data, it provides early warnings for conditions such as Cancer, Diabetes, Heart disease, and Neurological disorders.

  • Proactive Healthcare Management:

Proactive healthcare management becomes possible due to its ability to predict disease progression and identify patients at high risk. For example, it can forecast a patient’s likelihood of health deterioration. Accordingly, it allows healthcare providers to intervene early with preventive measures.

  • Drug Discovery and Development:

In addition to clinical applications, it also improves the drug discovery and development process. Because it analyzes vast datasets of chemical compounds, biological targets, and clinical trial data to identify promising drug candidates.

As predictive AI continues to advance, it holds the immense promising aspects of improving patient outcomes and reducing healthcare costs. Thus, healthcare businesses must consider tapping into this opportunity to get the best results.

Meanwhile, let us know if we can be of any help.

Education

Reports indicate that the current workload of teachers can be reduced by 20% — 40%, with the implementation of Predictive AI. As a result, it will help educators to study vast amounts of data, to identify patterns and trends in student performances. Additionally, It will also shed light on the external factors like behavioral and psychological that influence students’ performance and behavior.

Now, let me show you how it greatly benefits the education sector:

  • Predictive Analytics for Student Success:

By analyzing data and student performance trends, it predicts graduation rates, course completion rates, and academic achievement levels. This information will help you in strategic planning, resource allocation, and intervention strategies to enhance your student success and retention rates. Also, it allows educators to identify effective teaching practices and interventions that positively impact student outcomes.

  • Early Intervention and Student Support:

It analyzes students’ academic records, assessment scores, and attendance patterns, to identify students at risk of academic underachievement or dropout.

  • Adaptive Assessment and Feedback:

With student responses to assessment questions, these algorithms adapt the difficulty level and content based on individual performance. This ensures that assessments are challenging yet manageable for each student, leading to more accurate results.

  • Resource Allocation and Planning:

Assists you in optimizing your educational resource allocation and planning. This allows you to allocate your assets more efficiently while optimizing class schedules, and anticipating changes in demand for educational programs.

In three years, 47% of learning management tools will be powered by such predictive algorithms. Pearson, Carnegie Learning, and Coursera are highly invested in enhancing their student experience with the power of this AI tool. Hence, it’s evident that implementing Predictive AI should be your first priority to stay ahead in the education sector.

Furthermore, you can seek out our EduTech experts to assist you in the implementation.

To check out the impact on Logistics and Finance industries, Check out the full article here.

_____________________________________________________________________________________

Don't miss a beat! Explore all of our resources to stay up to date on market trends that will change the way you build a future-proof business. Contact us to see how we can help your tech and business objectives.

Tom Brouillette

Strategic Response to Continuous Disruption @ NCS Partners | Supply Network Transformation

10 个月

Both GenAI and Predictive AI require a significant amount of accurate and validated data in order to be successful. I'm glad that you point this out in your discussion! I think another great blog topic is the importance of collecting and maintaining the data. Not only must is be collected into a data model for AI, but it must be continuously evaluated to ensure additional and new data requirements are captured and the supply chain changes. I look to AI to provid the ability to sense disruption and perhaps most important the ability to analyze possible response scenarios!

回复

要查看或添加评论,请登录

TheCodeWork的更多文章

社区洞察

其他会员也浏览了