Megan O’Brien | Content Strategist | July 30, 2024
Advances in software that automates financial management tasks are redefining the role that finance teams play inside companies. With finance automation technology handling previously manual tasks, such as data entry, invoice matching, and reconciliation, finance teams have the bandwidth to focus on strategic, value-added tasks.
With these automation tools, finance teams have more time to focus on analyzing areas such as what drove the past quarter’s revenue and profit and forecasting what the coming quarter looks like, since it takes them less time and effort to close the books and report the results. And AI shows potential to automate many more finance tasks and processes. As CFOs reimagine how the finance department operates, finance automation is a crucial step in creating a more autonomous function that can deliver more accurate results faster and provides greater visibility and understanding of the results—all while reducing costs.
Finance automation refers to the use of technology to complete processes that historically have been done manually. It allows for areas with time-consuming, repetitive tasks, such as accounts payable, accounts receivable, and payroll administration, to be automated with little to no need for human intervention. Companies embrace finance automation because it helps lower labor costs and can reduce errors due to manual data entry and calculations. It can also speed up processes, such as the financial close, by automating steps like account reconciliation. Using finance automation to get accurate data into the hands of business leaders sooner can help them to make better decisions around budgets, investments, hiring, cash management, and more.
Key Takeaways:
Finance automation uses advanced technology—such as ERP software, robotic process automation (RPA), artificial intelligence (AI), and machine learning (ML)—to automate time-consuming, manual processes within the finance department. Automating these finance processes encompasses setting up a series of tasks into what is called a workflow, which specifies the predefined steps needed to execute a task—such as paying a bill or checking that sales and inventory levels match. Finance automation software triggers each step in that workflow and executes it out so the entire process can be handled with limited or no human intervention.
The finance function is a prime area for automation because it has a lot of high-volume, repetitive processes, such as data entry, reconciliation, invoicing, and approvals. An example of an automated reconciliation could be a company’s software continually comparing product sales with inventory levels to spot any imbalances, which could suggest theft if inventory levels are lower than sales would dictate. Finance automation technology can handle these manual activities at a faster speed with fewer errors, allowing the finance team to focus on creating value and driving strategy for the organization. In our sales-and-inventory reconciliation example, finance teams could work with operations to root out the cause of any imbalance.
When thinking about which financial processes to automate, consider two big factors: What’s the benefit from automating, and how much of the process can be automated. Look for processes where the technology exists to run an entire process, or entire element within a process, with little or no human involvement. That level of automation will deliver on the main benefit measures: lower cost, faster output, and, possibly, greater accuracy. With that criteria in mind, here are six finance workflows ripe for automation with examples of how elements of that workflow can be automated.
Finance automation depends on software, including ERP applications that manage companies’ core financial data and help them automate manual processes in areas such as billing, procurement, account reconciliation, and financial reporting. At a more foundational level, here are some of the broad technologies used in finance automation.
CFOs and their teams have a long to-do list—and it just keeps growing. Companies still need their finance teams to complete important tasks, such as processing payments and closing the books, while also taking on more strategic, analytical, and advisory roles. Finance automation can help deliver the efficiency, visibility, and accuracy needed to thrive in this new reality. These are examples of some of the benefits.
Finance leaders must address the potential risks as well as benefits that come with finance automation. Failure to appropriately address these risks may result in companies making decisions based on inaccurate data or facing increased compliance risk. Here are some of the key areas to consider when assessing the potential risks.
Implementing financial automation can be a considerable undertaking—particularly for companies still using legacy systems. To get the most out of their investment, companies should follow a measured, thorough process that evaluates the setup already in place, identifies the resources required to update it, and details an implementation strategy. Even after implementation, companies will need to monitor, iterate, and improve upon automated processes to ensure everything is working as expected. Here’s a high-level roadmap to get you started.
Determining organizational readiness for finance automation is multifaceted and involves evaluating several areas. From a foundational level, it’s first important to determine whether your current IT infrastructure can support finance automation and what it would take resourcewise to upgrade if not.
Buy-in from key stakeholders—such as the C-suite, finance teams, and IT departments—around finance automation will be a critical success factor. There is a very real fear of automation replacing jobs, which may result in a culture that’s unreceptive to change. Leaders must invest time and resources into effective change management. They need to show staff how automation will make finance jobs more interesting and rewarding, as well as improve their career prospects.
From a talent perspective, leadership needs to evaluate whether they have the necessary skills, expertise, and resources to implement and manage automation initiatives. As automation fundamentally shifts the nature of work, an upskilling program will prove invaluable to help people move from more manual tasks to higher-level, analytical, and collaborative work.
Finally, from a practical standpoint, there are the critical questions around cost and who will provide the finance automation software. For instance, do the potential costs and benefits of automation align with your organization’s budget and priorities? Can you make a clear business case for investing in ERP systems that support finance automation? Have you found the right technology provider for your organization? Implementing finance automation isn’t a one-off task but rather a long-term transformation initiative. You want to be sure you have the right partner onboard.
The future of finance is here, and it’s already reshaping the competitive landscape for businesses. Organizations that don’t rethink their finance processes to incorporate advancing technologies face risks, including falling behind competitors, decreased talent attraction and retention, missed insights, inaccurate reporting, and reduced employee productivity. Investing in finance automation has a significant impact on an organization’s ability to make data-centric decisions and keep pace with continuous change in its industry and marketplace.
Oracle Fusion Cloud Enterprise Resource Planning (ERP) and Oracle Fusion Cloud Enterprise Performance Management (EPM) help companies automate and connect financial processes including receivables and payables, cash management, fixed assets, and reporting. AI capabilities in Oracle Fusion Cloud Applications include dynamic discounting to create customized supplier payment plans and cash forecasting to automatically generate weekly forecasts. Oracle Cloud Applications run on Oracle Cloud Infrastructure (OCI), providing a full suite of cloud applications on top of a next-generation cloud infrastructure specifically designed to run them. This unique combination lets organizations deploy powerful traditional and generative AI features embedded within Oracle Fusion Cloud Applications. The end result? Better data to work with and more time for the finance team to focus on putting that data to use.
Will finance be fully automated?
Automation’s impact on the finance department is significant, with Accenture estimating that up to 80% of the function’s transactional work could be automated. However, it’s unlikely finance professionals will ever be entirely replaced by automation. The finance profession will still need human involvement to provide human creativity, judgment, emotional intelligence, relationship building, and critical thinking. Automation will handle the manual, repetitive tasks that traditionally took up significant bandwidth, allowing for finance staff to focus on more complex analysis and strategic decision-making.
What is RPA in finance?
RPA, or robotic process automation, uses low-code software bots to handle recurring, time-consuming processes in finance. RPA is ideal for automating rule-based processes with structured data sets in finance that require little or no human decision-making. Some examples include extracting data, filling out forms, and routing approvals.
What is intelligent automation in finance?
Intelligent automation (IA), also known as intelligent process automation, combines several advanced technologies, including RPA, machine learning, natural language processing, and AI to deliver more advanced capabilities than RPA alone. Unlike RPA, which completes tasks by following rules defined by humans in software scripts, IA can adapt and learn from experience. IA can analyze structured and unstructured data, adapt to changing circumstances, and improve performance over time by identifying patterns and making decisions based on past experiences. This allows IA to handle complex, cognitive tasks that require human-like decision-making and problem-solving abilities. For instance, when it comes to invoices, RPA can process invoices that follow predefined rules and templates that consist of structured data in the form of numbers and values. However, IA can interpret and extract data from diverse invoice formats that include unstructured data, learning vendor-specific formats and adapting to deviations.