Top 5 Finance and Accounting Industry Trends for 2023

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Rose Report: Issue 59

By Ted Rose, President and CEO, Rose Financial Solutions

As we close out 2022 and look ahead to 2023, the lingering effects of the pandemic will continue to influence the business world. The current economic downturn, unpredictable workforce trends, and supply chain challenges are driving companies to implement transformative changes to their operations, including how they manage their finance and accounting functions. Technology will take center stage in the upcoming year, influencing each of the top five trends in the finance and accounting industry.

Implementing Technology

The area of technology has seen the most substantial advancements in the past year, and this trend will continue through 2023. Businesses that invest in finance and accounting technology will have an advantage over their competitors in navigating today’s unpredictable economic climate. The finance and accounting profession is already embracing new technologies such as artificial intelligence (AI) and machine learning (ML), which will significantly impact how firms operate in the future. With automated procedures in place, AI and ML will code, route, and evaluate information and provide additional insight based on potential financial outcomes based on trends in market and company data. Businesses that want to lead their respective industries must develop an infrastructure that can capitalize on the potential of these technologies.

Financial Management

While compliance and maintaining records are essential accounting functions, in 2023, financial clarity and visibility into financial results will be critical. The current economic headwinds have created a paradigm shift that increases the importance of CFO services to overcome financial challenges, develop proactive strategies, and manage growth.  

Outsourcing Finance and Accounting Functions

With the effects of the pandemic, outsourcing has become increasingly popular for organizations struggling with employee shortages and rising hiring costs. In fact, according to Deloitte, 70% of businesses outsourced a portion of their accounting functions to reduce business costs in 2020. Outsourcing offers additional benefits, including an expanded team of skilled experts, reduced onboarding requirements, and improved delivery times. The movement to the next generation of finance and accounting outsourcing, Finance as a Service (FaaS), will continue to grow in 2023 as companies seek greater insight through the combination of cutting-edge technology and a team of finance and accounting professionals.

Data Security

Financial records are the lifeblood of any organization. As such, keeping them secure is an ongoing concern for CIO’s and CFO’s. That’s why the movement towards hardening access to corporate data through security measures such as multi-factor identification, encryption, and security awareness training will continue to be a top priority in 2023.

Simplifying Back-office Functions

As companies embrace digital transformation, they are moving towards connecting back-office functions into a comprehensive system that improves visibility, communications, and access. While this functionality has been traditionally limited to a full ERP implementation for larger enterprises, novel technologies are making this possible for smaller companies to eliminate tedious processes, improve efficiency, limit risks, and reduce human error.

These trends indicate that technology advancements will remain a priority in the finance and accounting industry in 2023. It is important to note, however, that technology will not replace accounting and finance professionals, but rather enable them to focus on higher level tasks such as financial analysis, process development, and strategic initiatives.

If you would like to learn more about these trends and how they can help your company succeed in 2023, please schedule an introductory meeting.

This content is for information purposes only and should not be considered legal, accounting, or tax advice or a substitute for obtaining such advice specific to your business.

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By Matthew Scroggs January 10, 2024
Issue 72 - Data Driven and AI Enablement Strategies for 2024
By Matthew Scroggs January 10, 2024
Recent findings from Pigment’s Office of the CFO 2024 survey highlight a critical issue for business leaders – the prevalent use of inaccurate data in their decision-making processes. The survey reveals that a staggering 89% of finance leaders are basing their decisions on incomplete or faulty data. The foundation of successful business strategies depends on the quality and accuracy of the decisions made. As businesses navigate expansion and heightened competition, the reliance on data-driven insights has become critical. Harnessing the transformative power of accurate, reliable data enables informed and effective decision-making. Businesses with financial clarity will outpace companies that struggle with flawed data. Financial visibility will help businesses avoid common pitfalls while shaping a future oriented strategic vision. Why Is Most Financial Data Flawed? Financial Data often ends up flawed due to several factors. Disparate systems and fragmented processes within an organization can cause increased inaccuracies over time. The lack of standardization of data within an organization introduces complexities and leads to inconsistencies in data handling. Nomenclature and connectivity issues further compound the problem, making it challenging to establish a framework for data organization. When these issues persist, they pave the way for flawed data, hindering accurate analysis and decision-making. Improving Financial Data with a “Single Source of Truth” Addressing the complexity of inaccurate financial data requires a strategic approach. Streamlining systems and processes and implementing standardized, data-oriented procedures across departments can mitigate inaccuracies stemming from disparate systems and fragmented processes. Moreover, establishing a unified nomenclature and resolving connectivity issues are pivotal to ensuring data integrity. By instituting a cohesive framework for data organization and management, businesses can tackle the root causes of flawed financial data. Establishing a single source of truth consolidates data into a single data structure. This allows for the streamlining of processes, reduction of complexity, standardization of nomenclature and improved connectivity. In essence, a single source of truth reduces errors by ensuring everyone in an organization refers to the same accurate information. This unified data hub speeds up decision making and lays the groundwork for integrating AI into future financial operations. Enter Easby, a system of engagement that standardizes financial activities and data while improving data integrity. As a CFO Co-Pilot, Easby streamlines data handling and reporting, allowing leaders to make better decision based on better information. Easby reduces administrative activity and promotes data-accuracy, improving decision-making and driving companies toward success in our competitive business environment. Easby connects with your accounting system of record to become a “single source of truth”, centralizing data and refining processes. By streamlining data collection and reporting, Easby empowers leaders to refocus their efforts on strategic growth initiatives. To discover how Easby can become your CFO Co-Pilot while fortifying the future of your organization, we invite you to schedule an introductory call with Rose Financial Solutions (ROSE). Schedule an Introductory Call
By Matthew Scroggs January 10, 2024
Technology, Data and Automation are transforming decision-making, especially with the democratization of Artificial Intelligence (AI). This transformation is especially pronounced within finance, where AI's emergence is influencing financial system strategies, placing a premium on structured data for AI-driven initiatives. However, the ability to utilize AI effectively heavily relies on data organization and security. Organizing data includes data consolidation, categorization, and tokenization. This organization can help establish the groundwork for your company to benefit from the full potential of a wide-range of AI-driven use-cases. Consolidating Diverse Data for Unified Insights Data consolidation includes merging and unifying diverse data sets from multiple sources into a single source of truth. Let’s consider a corporation that operates across various states. Each division might maintain financial and operational records, such as sales figures, payroll, operational expenses, and inventory in disparate systems. Data consolidation in this scenario involves merging these diverse datasets from different divisions into a singular, centralized system. For instance, combining sales data from different regions, integrating it with payroll and inventory records, and aligning financial reports across divisions creates a comprehensive overview of the company's overall performance. This consolidated data allows for better analysis of revenue streams, cost optimization strategies, and more accurate forecasting across the entire organization, aiding in strategic decision-making for the whole company. Enhancing AI Precision through Categorization Categorization involves sorting data into specific items or categories based on various parameters or attributes. It's about organizing and labeling data in a structured manner. For example, in accounting, data categorization refers to sorting expenses into a variety of dimensions, such as general ledger codes, department codes, project codes, etc. These codes are normally broken down into logical categories that help users and AI understand that certain vendors are related to travel and others are related to office supplies, or utilities. In AI-driven strategies, categorization is paramount for contextualizing and organizing information effectively. By classifying data into relevant categories or items, AI systems can understand the nuances of different data sets. This categorization allows for more precise analysis, facilitating the extraction of actionable insights and comparisons that are crucial for decision-making. Tokenization for Advanced Data Efficiency and Security Tokenization is the segmentation of complex data into smaller, more manageable units known as tokens, each representing individual pieces of data or information. This process primarily focuses on maintaining confidentiality when inputting data into AI systems. Its core objective is safeguarding sensitive data by substituting identifying information with distinct tokens or representations. By implementing tokenization, organizations create a protective barrier around sensitive information, like personal or financial data, thwarting AI from associating the data from a specific entity. Tokenization ensures that AI algorithms work with transformed data. For instance, tokenization involves converting sensitive data, like vendor names, into random tokens in financial transactions. This not only enhances security by safeguarding sensitive information but also streamlines data analysis by reducing the complexity of the dataset. In AI strategies, tokenization is a critical step. By segmenting data into tokens, AI algorithms can more effectively identify patterns, trends, and correlations within the information, ultimately enabling more accurate predictions and insights, all without providing the AI with sensitive information. Leveraging Integration Opportunities with AI Consider a company working to streamline its accounting processes. The organization creates a unified database through data consolidation and tokenization. The integration of AI technology allows for the use of machine learning to automate transaction coding, a move that significantly reduces manual workload while improving processing accuracy. Other examples of AI integration include automating graphic analysis and categorization creation. For instance, AI-driven tools can autonomously generate visual representations of complex datasets. Moreover, within categorization, AI systems excel at continuously refining and automating the sorting of diverse data sets into specific categories or segments, ensuring accuracy and efficiency in data handling. Finally, AI-driven tools leverage historical patterns to track and analyze financial behaviors. For instance, by examining past expenditures, these systems identify trends, anomalies, and potential cost-saving opportunities. This level of insight allows businesses to make more informed decisions regarding budget allocation, identifying areas for optimization and possible financial risks. Scaling Efficiently Through AI-Driven Strategies By merging AI-driven strategies with data management, businesses gain adaptability. This agility powers informed decisions, intelligent resource allocation, and proactive risk management. This approach isn't just about navigating competition; it's about efficient scaling and strategic growth, representing a shift towards growth while benefiting from financial clarity. This strategic combination empowers businesses to thrive, evolve, and seize opportunities in a constantly changing business environment. Schedule an introductory call with us today to explore how optimizing your data strategy can enhance your adaptability, drive informed decisions, and propel your business towards scalable growth. Schedule an Introductory Call
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