Let’s explore the basics of AI and how finance teams can use it to optimize decision making and efficiency.
Artificial intelligence (AI) is rapidly transforming how we work — and finance teams are no exception.
When AI is added to corporate performance management (CPM) processes, it can be a game-changer for finance professionals. That said, not all CPM software applies AI in the same way and not all AI has the same impact.
Let’s explore the basics of AI and how finance teams can use it to optimize decision making and efficiency.
This article will breakdown:
- The benefits of AI in finance
- What AI can do for CPM processes
- Examples of how finance can use AI in their CPM processes
- What to look for in AI-based CPM solutions
The benefits of AI in finance
All the benefits and abilities that AI can add to CPM processes can be boiled down to serving two purposes:
- Improved efficiency: AI can automate repetitive processes, which allows finance teams to work faster.
- Improved decision-making: AI can make deep connections between diverse data points and provide finance with access to data trends that would be otherwise inaccessible. Finance can then use these insights to guide decision making when forming strategy and plans.
In a nutshell, AI helps finance teams be more efficient while improving their access to performance trends that can inform decision-making. In doing so, AI has the power to transform the very fabric of finance and how teams operate from day-to-day.
As Deloitte writes:
“Artificial Intelligence is reshaping how finance operates, makes decisions, communicates, and drives enterprise value. Finance functions that embrace AI as a collaborator can enhance human capabilities and unlock untapped potential for growth, resilience, and innovation.”
Types of AI
AI is an umbrella term for a few technologies.
Machine learning
Machine learning is an artificial intelligence that learns from data sets to recognize and apply patterns with minimal human intervention via algorithms and computational methods. In simpler terms, machine learning teaches computers to learn from experience. The remarkable thing about machine learning is that it not only recognizes and applies patterns, but it can create its own algorithms and can apply feedback to refine its algorithms.
Generative AI
Generative AI is a type of artificial intelligence that uses algorithms to generate complex, creative content, like audio, images, videos, and text. For example, you could ask Generative AI a question about Q2 budget variance, and it will use sophisticated linguistic models to extract information from a large data set and prepare it as a graph, ready for you to analyze.
Of all the different types of AI, Generative AI has the potential to elevate the way finance teams work. Deloitte writes, “We are on the cusp of an ‘iPhone moment’ — a major revolution in our personal and business lives. For corporations, GenAI has the potential to transform end-to-end value chains — from customer engagement and new revenue streams to exponential automation of back-office functions such as finance.
Natural language processing
Natural language processing takes real-world input and translates it into a language computers can understand. Just as humans have ears, eyes, and a brain to understand the world, computers have programs to process audio, visual, and textual data to understand information.
Finance and AI: What AI can do for CPM processes
Now that we’ve covered different types of AI, let’s explore what AI does for CPM processes at a functional level.
Completes repetitive tasks
Repetitive tasks like data collection, anomaly detection, and transaction matching are relatively menial, but they consume the valuable time and brain space of finance teams. AI can automate these data-centered repetitive tasks. It can organize data from multiple sources, dimensions, and types for analysis, identify outliers in large datasets, and reconcile information on behalf of finance teams. Machines are far better at identifying errors in spreadsheets with thousands of cells than the hardworking teams that have been staring at those numbers all day.
Data exploration
AI can mine strategic insights out of large bodies of information. By spotting unusual patterns and identifying correlating trends, AI can identify both risks and opportunities in performance data.
What’s more, AI can handle volume in a way human methods cannot. Human-identified data trends tend to be linear and one-dimensional in scope. For example, you could determine the trajectory of sales in a quarter. AI-identified data trends go much deeper. AI can identify correlations between diverse data types at a much more sophisticated level of analysis. For example, the AI could tell you the trajectory of sales and identify the factors driving sales in that direction and show you how to change drivers to influence the trajectory of sales.
Data quality
AI can spot anomalies in your data, bringing to your attention outliers and subtle human errors. This is incredibly valuable to leadership teams because AI can prevent mistakes and bad information from propagating into reports, plans, and decision-making. AI-scanned data tends to result in a more reliable foundation for analysis.
Visualizing data and trends
AI, specifically Generative AI, can generate complex, creative content, like music, images, videos, and text. Generative AI has advanced to the point where it can extend its creative power to data visualization, preparing the results of its data exploration in graphs, charts, and tables.
Now, we’re seeing AI’s data exploration get so sophisticated, AI can use natural language processing to understand finance’s questions, via voice or text, and provide visual answers from within a dataset. Just like you can ask your Google Home for today’s weather, you can ask CPM AI to prepare a report on this week’s sales for a specific product.
Predictive analytics
Using its deep data exploration capabilities, AI can accurately make predictions based on large, complex datasets. Using traditional methods, forecasts are straightforward. You can project figures, but you can’t account for curve balls, and you’re stuck within the limits of time-based financial data.
With predictive analytics, however, your forecasts become more accurate because a wide variety of financial, non-financial, and market data is considered in every projection. You can get a prediction for a complex question like, what will the impact of a 5% employment rate be on revenue? What about impacts to EBITDA? And how can we counter these effects?