IT Spending: Understanding Your Data Analytics Budget

data analytics budget

One thing we constantly learn in digital transformation is that nothing is as simple as it appears. Most of us learned the hard way that transforming our companies would take more than new technology. It would take new mindsets, new relationships, and new business models, as well. It should come as no surprise, then, that the issue of “analytics” is proving more complicated than most companies could have imagined. Namely: how to divvy up the data analytics budget in a way that is most beneficial to the customer and company alike.

First, I want to acknowledge that all companies will vary widely in terms of their IT budgets, as well as where they are in the digital transformation journey. Small and medium-sized businesses will be harder pressed to make hard decisions about how to break up the pie in terms of collection, analysis, people / staff, and programs simply because they have less to work with. That said, looking at your budget with a sense of purpose, rather than line items and buzz words, can help companies of any size or budget make better data analytics budget decisions. What works for your company will be unique to your own business goals. The following are a few options of how different IT departments are using their data analytics budget.

Data Analytics Budget: Time-Savings on Core Functions

Many companies, especially those in digital transformation infancy, may opt to focus the core of their budget on automation strategies and tech that could help save time on core business functions. This could be anything from digitization and managing financial records and timesheets to HR functions like hiring and employee engagement surveys. While this type of “analytics” is toward the low-end in terms of sophistication (think robotic process automation vs. machine learning) it can pay off huge in terms of creating time and headspace for employees to do more valuable work for their teams. If you’re in early digital transformation, this is a good place to start. What’s more, when you do it well, you will set yourself up for huge time and budget improvements down the line. (I’m sure some companies out there could give a testimony…)

Data Analytics Budget: Getting On Board with Business Goals

Similar to the above, an important area where it’s worth spending time and money in your data analytics budget is simply aligning and clarifying your business goals and how the data you are collecting will support those goals. There is truly no more wasted money than that spent to gather data that is never used or updated. Before throwing money to jump on the data train, use it to consult, organize, streamline, and communicate. Make sure everyone in the enterprise knows the business goals you are trying to accomplish with your data strategy. Skip this step, and your entire budget will be wasted.

Data Analytics Budget: Predictive Analytics

For some companies, such as tuition-based institutions, mortgage lenders, and other financial organizations, predictive analytics may prove to hold the most ROI for your budget. These companies may find that the most value comes in being able to determine who is most likely to enroll; to skip a payment on their mortgage; to benefit from certain financial training or services; or gain from certain course offerings or assistance. It can be used to score leads or indicate potential lifetime value. Most importantly: it can be used to replace data experts you may be paying to find these insights. If you have a small budget in terms of being able to hire and manage a full team of analysts, or even entice people to join your company, predictive might give you the biggest bang for your buck.

Of course, there are lots of other more complex use cases for analytics—personalization, cross-selling, omnichannel optimization. But if your company is still struggling to figure out exactly what to spend money on when it comes to your data analytics budget, I recommend starting with these foundational options. Chances are good that even companies far down the AI continuum have missed some or all of one of the steps above. The good thing is, with analytics, you can always re-write code, change course, and begin to do it the right way. You owe it to your customers—and your business—to understand your data analytics budget and how it can best work for all of you.

The original version of this article was first published on Converge.

Futurum Research provides industry research and analysis. These columns are for educational purposes only and should not be considered in any way investment advice. 

Author Information

Daniel is the CEO of The Futurum Group. Living his life at the intersection of people and technology, Daniel works with the world’s largest technology brands exploring Digital Transformation and how it is influencing the enterprise.

From the leading edge of AI to global technology policy, Daniel makes the connections between business, people and tech that are required for companies to benefit most from their technology investments. Daniel is a top 5 globally ranked industry analyst and his ideas are regularly cited or shared in television appearances by CNBC, Bloomberg, Wall Street Journal and hundreds of other sites around the world.

A 7x Best-Selling Author including his most recent book “Human/Machine.” Daniel is also a Forbes and MarketWatch (Dow Jones) contributor.

An MBA and Former Graduate Adjunct Faculty, Daniel is an Austin Texas transplant after 40 years in Chicago. His speaking takes him around the world each year as he shares his vision of the role technology will play in our future.

Related Insights
RegattaDB Arrives A Unified Engine Built for the Era of Read-Write AI
July 17, 2026

RegattaDB Arrives: A Unified Engine Built for the Era of Read-Write AI

Brad Shimmin, VP of Data Intelligence, Analytics, and Infrastructure at Futurum, explores Regatta's launch of RegattaDB. By unifying OLTP, OLAP, and vector workloads, this new architecture provides the low-latency core...
Apache Spark 4.2: A Leap Forward for AI and Analytics Integration
July 17, 2026

Apache Spark 4.2: A Leap Forward for AI and Analytics Integration

Apache Spark 4.2 introduces governed metrics and enhanced Python ecosystem integration, positioning the platform as essential for organizations demanding seamless AI-driven data management and real-time insights....
The Active Storage Revolution: VAST and Cloudera Team Up to Cure Enterprise GPU Starvation
July 15, 2026

The Active Storage Revolution: VAST and Cloudera Team Up to Cure Enterprise GPU Starvation

Brad Shimmin, VP and Practice Lead at Futurum, explores the new strategic partnership between VAST Data and Cloudera. By integrating the VAST AI OS with Cloudera data services, the vendors...
SaaS ERP Is Reshaping Data Access, But Can It Deliver on the Promise of Real-Time Insight?
July 11, 2026

SaaS ERP Is Reshaping Data Access, But Can It Deliver on the Promise of Real-Time Insight?

IT Convergence's SaaS ERP strategy capitalizes on enterprise modernization trends, with 84.5% of channel partners expecting AI-driven growth and the Channel Ecosystems market forecast to reach $41.8B by 2029....
Is Migrating from Synapse to Databricks the Shortcut to Unified AI-Ready Data?
July 10, 2026

Is Migrating from Synapse to Databricks the Shortcut to Unified AI-Ready Data?

Organizations are consolidating data infrastructure around unified platforms, with 73.6% planning to increase spending—signaling a shift toward AI-ready, simplified architectures that eliminate costly silos....
Can Biohub’s Open AI Models and Imaging Tools Redefine Biomedical Discovery?
July 10, 2026

Can Biohub’s Open AI Models and Imaging Tools Redefine Biomedical Discovery?

Biohub's AI integration in protein modeling and genomics marks a biomedical shift, yet adoption barriers—hallucination risk, data privacy, and unclear ROI—hinder clinical deployment....

Book a Demo

Welcome

The vision behind everything in Futurum’s Custom Research practice is this: research should show you what is happening, what comes next, and what to do about it. It should be personal to each audience, easy for people to grasp, and structured so LLMs can reason over it accurately. And it should be fast and turnkey; you want answers now, not another project to carry for quarters.

Whether you are defining business, channel, or go-to-market strategy; evaluating vendors or justifying ROI; or commissioning research to fill an emerging market need, we have your back, with a program that answers your questions with the objectivity and credibility to drive real decisions.

To do it, we bring unmatched data to bear: Futurum research, surveys, and market projections; validated market feeds; ETR’s 15 years of insight from 10,000 technology decision-makers; G2’s buyer and user data; and what our analysts hear every day. Add leading primary collection, from AI-moderated voice interviews to surveys and analyst-led interviews, all turnkey, and every project comes out credible, nuanced, and actionable.

And we don’t just drop the results in your lap. For internal work, we provide analyst-led sessions, interactive dashboards, and a range of formats. For market-facing work, Futurum delivers turnkey activation and amplification that actually gets seen, by people and by LLMs, through our media and share of voice. This is research that moves decisions and markets.

We will meet you wherever you are, from a fast-turn brief to a multi-year program, and shape the work to your goals, timeline, and budget. The right program for your moment.

If any of this is useful, I would love to talk.

Benjamin Brown, VP Custom Research, Futurum Research

Benjamin Brown

VP, Custom Research · The Futurum Group

Newsletter Sign-up Form

Get important insights straight to your inbox, receive first looks at eBooks, exclusive event invitations, custom content, and more. We promise not to spam you or sell your name to anyone. You can always unsubscribe at any time.

All fields are required






Thank you, we received your request, a member of our team will be in contact with you.