20 Best Predictive Analytics Software for Data-driven Insights

Whether you're a small startup looking for data analytics tools for free or an established enterprise, these best predictive analytics software will provide the best data-driven insights to make informed decisions.
Last Updated on : March 28, 2024
best predictive analytics software

Predictive analytics software is increasingly vital to modern business operations. By crunching data, predictive analysis software, with the help of AI, can identify trends and patterns in customer behavior and market fluctuations. Read More

Best Predictive Analytics Software for Improved Decision-Making in 2024

11.

Google Cloud

Google Cloud

Visit Google Cloud:

About Arrow

Still tight on budget? Fret not, because Google Cloud provides data analytics free tools that support predictive analytics and data-driven decisions within organizations through its free trial. The platform offers data services such as BigQuery, Data Studio, and Cloud Dataprep for data engineering, Machine Learning APIs for data mining, and much more.

These capabilities allow you to create fool-proof predictive analysis of critical KPIs. The AI Platform provides a suite of data analysis tools, data processing services, and engineering solutions for predictive analytics businesses.

Why we picked it? Arrow

12.

Tableau

Tableau

Visit Tableau:

About Arrow

Are you looking for software that provides accessible predictive analytics and data analytic tools for data visualization? Tableau is an option, and it comes with a popular data analytics tools list to generate data visualization. With its drag-and-drop interface, users can easily do visuals and calculations. Even those who don't know about analytics can understand data with this platform. Users can create dashboards and worksheets with Tableau to produce data analysis and visualization.

Why we picked it? Arrow

13.

SAS Advanced Analytics

SAS Advanced Analytics

Visit SAS Advanced Analytics:

About Arrow

You can consider SAS Advanced Analytics as a data analytics tool in your best predictive analytics tools list. SAS Advanced Analytics provides users with statistical analysis, predictive modeling capabilities, and data mining functions that can be used to analyze data from structured and unstructured sources. 

Examples of SAS Advanced Analytics products include Base SAS, SAS/STAT, SAS Studio, and SAS/GRAPH. Thus, data scientists and analysts can easily access data, discover insights, combine data sources, and develop models with the help of this data analytics tool.

Why we picked it? Arrow

14.

KNIME

KNIME

Visit KNIME:

About Arrow

While looking for data analytics software tools with predictive modeling capabilities, the KNIME data analytics platform certainly deserves a place in the best data analytical software list. KNIME is an open-source data platform for data preparation and machine learning. 

It supports data scientists, engineers, IT operators, and business analysts & ensures data security & scalability of the models with flexible deployment options from cloud to on-premise usage. Additionally, data scientists can take advantage of automation & reuse capabilities to reduce data preparation time and increase their efficiency in data exploration.

Why we picked it? Arrow

15.

Amazon Forecast

Amazon Forecast

Visit Amazon Forecast:

About Arrow

You can also consider Amazon Forecast predictive analytics models software that uses machine learning to deliver accurate forecasts. Thus, creating accurate estimates for businesses can be quickly done with the help of these data analytics software tools. It uses historical data (price, promotions, economic performance metrics) from web services, and data from IoT devices to create predictive models for businesses. On top of that, data scientists can take advantage of data visualization for data exploration & data modeling with Amazon Forecast.

Why we picked it? Arrow

16.

Adobe Analytics

Adobe Analytics

Visit Adobe Analytics:

About Arrow

Adobe Analytics is a cutting-edge predictive analytics software renowned for its advanced capabilities in delivering actionable insights from vast data sets. As a part of the Adobe Experience Cloud, it empowers businesses by giving detailed predictions of future outcomes. Executives can assess these predictions to make data-driven decisions, optimize customer experiences, and enhance overall performance.

This predictive software leverages Adobe Sensei integration to unlock the core capabilities of Big Data at unprecedented speeds. This predictive analytics platform uses high-end AI and machine learning algorithms to uncover future scenarios with past patterns. 

Why we picked it? Arrow

17.

JMP Pro

JMP Pro

Visit JMP Pro:

About Arrow

JMP’s predictive analytics tools are not your everyday Joe that just fulfills your basic needs. Their predictive software uses deep knowledge of AI/ML to create solutions that propel your decision-making game.

JMP’s predictive and data analytics software tools (JMP pro) use modern techniques like regression, neural networks, and decision trees that allow you to create better models and make better decisions. The software also uses many machine learning methods and algorithms to enable a simple and effective model that generates insights faster. 

Why we picked it? Arrow

18.

Minitab Statistical Software

Minitab Statistical Software

Visit Minitab Statistical Software:

About Arrow

In the conversation of predictive analytics solutions, we have to include Minitab Statistical Software. This one of the best tools for predictive analytics analyze current and past data to uncover trends, predict patterns, unravel anomalies and identify hidden relationships between variables. Minitab Statistical Software leverages open-source languages like R or Python to ensure future scalability and integrate ML algorithms such as Classification, Regression, and Decision trees to boost your capabilities further. 

Why we picked it? Arrow

19.

Oracle Crystal Ball

Oracle Crystal Ball

Visit Oracle Crystal Ball:

About Arrow

Oracle is a company everybody knows. Whether you're an IT enthusiast or not, Oracle is a name that is hard to avoid. Just as the company has taken almost every aspect of computer technology under its wing, predictive analytics has followed suit. 

Oracle Crystal Ball is a spreadsheet-based predictive analytics solution delivering forecasting, simulation, and optimization services. The predictive software features a decision optimizer that allows users to generate insights based on past data and make strategic business decisions. You can get a glimpse of the Oracle Crystal Ball with a free trial.

Why we picked it? Arrow

20.

FICO Predictive Analytics

FICO Predictive Analytics

Visit FICO Predictive Analytics:

About Arrow

Want scalability of open source and the quality of a patented AI technique? If yes, then FICO Predictive Analytics is the one for you. The predictive analytics platform by FICO develops and deploys predictive models that promote data-driven decision-making with intelligent and reliable insights. 

FICO Predictive Analytics features a rich patent portfolio to create state-of-the-art machine learning models. Moreover, it also enables you to perform What-if analysis and simulations to forecast outcomes so that you can take necessary actions.

Why we picked it? Arrow

What is Predictive Analytics Software?

Predictive analytics software is a sophisticated tool that uses AI and ML algorithms to study historical data patterns and forecast future outcomes. Predictive software ingests pools of data (structured and unstructured data) from various sources and processes it via complex statistical and machine-learning models.

Why Use Predictive Analytics Solutions?

There are several reasons for using predictive analysis tools for your business. Businesses need to think ahead and to do that, they first need to evaluate the past to study patterns and trends that can give insight into the future. This is exactly where predictive analytics benefits the organization. Let’s explore some reasons for using predictive analytics for better automation and insight generation -

1. Time-Saving

The traditional method of finding patterns and forecasting outcomes was mainly manual. Which meant these activities were time-consuming and were largely based on guesswork. Predictive tools take significantly less time for these activities. Moreover, the predictions generated through Predictive Analytics Software are backed by data.

2. Reduce chances of errors

It's no secret that manual data inputs and analyses are prone to errors and unreliability. Whereas, with automated predictive analytics software, executives become free of the menial tasks of data entry into a system to draw out conclusions. Predictive software leverages the capabilities of digital automation and predefined tools to generate clear and reliable results.

3. Risk Management and Fraud Detection

Predictive analytics is largely beneficial in identifying potential risks and detecting fraudulent activities in real-time, enabling businesses to mitigate risks and enhance security measures. These programs can analyze the behavior and purchase patterns of a customer and detect any suspicious activity which might be considered an anomaly. Fraud detection with predictive analytics is widely popular in banking and finance.

Who Uses Predictive Analytics Software?

With the benefits and use cases of predictive analytics and AI increasing every passing day, the applications of such software are also spanning across industries, departments, and countries. Today, organizations use predictive analytics in a nearly endless number of ways. Below are some of the sectors and departments where predictive analytics proves its worth -

  • Finance and banking
  • Healthcare  
  • Marketing and Advertising
  • Retail and E-commerce
  • Hospitality 
  • Manufacturing and Supply Chain
  • Pharmaceuticals 

Kinds of Predictive Analytics Software

Predictive analytics uses different methods and techniques to deliver compelling results viable to businesses. Here are some of the kinds of predictive analytics that are largely used in the industry -

  • Regression Analysis: Regression is a widely used analysis technique that examines the relationship between dependent and independent variables. It finds key patterns in big data sets and determines how one variable can influence the movement of an asset. Regression Analysis is used to predict numerical outcomes and quantify the strength of dependency between variables.
  • Decision trees: Decision trees refer to a schematic, tree-shaped diagram that defines a course of action or shows a statistical probability. As the name suggests, a decision tree has a tree-like structure, with each branch depicting a choice between several alternatives. It helps us choose the best path by evaluating different factors at each step. If we’re talking about predictive analytics, decision trees work by analyzing data and creating a tree-like structure of decisions based on specific features.
  • Neural networks: Neural networks are powerful techniques capable of modeling extremely complex relationships. These powerful algorithms are revolutionizing the field of predictive analytics by mimicking the brain's ability to learn, adapt, and make complex decisions. Through "deep learning," neural networks can automatically learn intricate patterns and correlations within massive datasets. The more data they're fed, the smarter these networks become.
  • Time Series Analysis: Time series analysis aims to analyze data sets collected over time to identify patterns and trends. It is commonly used for forecasting future values based on historical data.

Potential Issues with Predictive Analytics Software

No good thing is only good. The same goes for predictive analytics also. Despite the mountains of benefits that AI technology offers its clients, some drawbacks still make executives question their capabilities for a moment. Let’s explore some of the limitations of predictive analytics.

  • Bias and Fairness: Predictive analytics can perpetuate biases present in historical data, leading to unfair and discriminatory outcomes.
  • Data Quality: Inaccurate or incomplete data can adversely impact the accuracy and reliability of predictions.
  • Overfitting: Overfitting occurs when models perform well on training data but fail to generalize to new data, resulting in poor predictions.
  • Interpretability: Complex predictive models like neural networks usually lack transparency. Thus, making it challenging to explain their decisions.
  • Privacy Concerns: Predictive analytics may involve sensitive data, raising privacy and security issues if mishandled or accessed by unauthorized individuals.

Summing Up

In summary, predictive analytics is now a necessity more than a preferred tool to have in your grasp. With market dynamics always changing, predictive analytics allows you to gaze into the future and evaluate your options to make decisions backed by statistical data. Predictive analytics is being used more and more every day. Even after the debate of business intelligence vs. predictive analytics is still going over the engineers, the benefits of predictive analytics software cannot be overlooked anymore.

Moreover, besides understanding what is predictive analytics, business owners also need to consider their business needs & budget as they decide on the right data analytics software tools for their business. 

If you are a developer, a company, or someone with a finished product or have a soon-to-be-released app, send an email to MobileAppDaily, and list your product by exceptionally talented app experts. Visit our website to see all the new and intriguing content we publish daily. Sign up for our newsletters to learn more about MobileAppDaily.

We hope this overview of popular data analytical software tools can help you make the best decision for your business!

Boost Your Product's Visibility on mobileAppDaily

And get the attention of the right audience with our Strategic Marketing Solutions.

General FAQ

How much does predictive analytics software cost?
What is predictive analytics?
What is the difference between Business intelligence vs Predictive analytics?
What's the difference between predictive analytics and machine learning?
Why is predictive analytics important?

Manish

Sr. Content Strategist

Meet Manish Chandra Srivastava, the Strategic Content Architect & Marketing Guru who turns brands into legends. Armed with a Masters in Mass Communication (2015-17), Manish has dazzled giants like Collegedunia, Embibe, and Archies. His work is spotlighted on Hackernoon, Gamasutra, and Elearning Industry.

Beyond the writer’s block, Manish is often found distracted by movies, video games, AI, and other such nerdy stuff. But the point remains, If you need your brand to shine, Manish is who you need.

Fill in the details, and our team will get back to you soon.

Contact Information
+ =