What Is The Need Of Finance-governed Analytics?

The Quintessential Technology Source for Corporate Financial Professionals

What Is The Need Of Finance-governed Analytics?

CFO Tech Outlook | Friday, July 10, 2020

The ideal champion to create governed analytics strategies is CFO. They make strategies that extend planning and reporting capabilities beyond finance into sales, marketing, and HR.

FREMONT, CA: It has become complicated to survive and thrive in the current volatile economy. Finance teams and line-of-business executives are required to have steady access to detailed operational metrics and financial results. Analytics software is evolving day by day, but it fails to provide accurate information, rather often give only a partial image of the business.

Several firms’ financial and operational data silos are comprised of fragmented business intelligence (BI), analytics, and corporate performance management (CPM) tools. They have to struggle to combine financial and operational plans and results, which leads to multiple versions of the truth. This usually hinders decision making and can deter leaders from collaborating.

Stay ahead of the industry with exclusive feature stories on the top companies, expert insights and the latest news delivered straight to your inbox. Subscribe today.

Here are some steps companies can take to move towards finance-governed analytics:

Let finance take a strategic lead

Generally, finance teams and CFO delivers trusted and accurate financial results. It makes them the ideal internal champions to enable strategies of governed analytics that expand reporting and planning capabilities beyond finance into sales, marketing, operations, and HR. Finance teams can also earn the trust they need to become the go-to business partner for strategic, financial, and operational decision support by providing timely, accurate financial and operational insights to decision-makers. As per the survey done by FSN, top capabilities for future finance systems comprise built-in analytical tools, the capability to expand the data set, and the ability to grip unlimited amounts of information. 

Select an integrated platform that combines data, processes

To strengthen the finance team to become more strategic and provide the enterprise with finance-governed analytics, a unified technology platform is required for the companies. It is much better to depend on a unified platform rather than relying on fragmented software. Because an integrated platform can bring both financial and operational data sources together in an environment that’s comprehensive, controlled, and consumable for users. All the organizations migrate from spreadsheets, standalone BI tools, and legacy finance systems, so a platform approach is necessary that’s capable of unifying core finance processes such as financial close, budgeting, reporting, forecasting, and governed analytics.

Here are some advantages to taking an integrated platform approach: 

• By leveraging one platform for planning, reporting, and analytics across finance, sales, HR, and line-of-business operations, it removes fragmented tools and reduces the total cost of ownership (TCO).

• It can also eliminate that data latency and replication. Generally, fragmented BI tools cause data latency and replication to make sure that decision-makers are providing timely and accurate information for strategic, financial, and operational decision-making. 

Strengthen users with self-service reporting and analysis tools

To understand what type of information is required by the organization and to support their decisions and to provide them with the tools that best meet their needs. It is necessary to assess the target users in each department. Almost all the managers and executives prefer dashboards and visualizations that allow them to spot key business trends with the ability to go through the underlying details to answer business questions quickly. Other people might prefer Microsoft Excel spreadsheets as their primary reporting and analytic tool.

Governed analytics in action

More than $8 billion professional services organizations leverage governed analytics with nightly creation of more than 500 million rows of data to make a unified analytic view of book-of-record financial data and daily operational insights. Now finance and executive leaders have a logical explanation to analyze and review financial statements and dig through to customer, project, and employee-specific analytics all within a single data model.

While getting prepared to make the right decisions despite a volatile economy, a company can save significant time and costs by providing a software platform to the finance team that allows governed analytics and also enable them to provide in-depth business insight.

See Also: Top FinTech Solution Companies

More in News

Fraud detection has become a vital component of security systems across industries such as banking, e-commerce, and healthcare, as fraudulent schemes grow increasingly sophisticated and widespread. With the surge in digital transactions, traditional rule-based methods are no longer sufficient. To keep pace, organizations must adopt advanced technologies and data-driven strategies that can identify patterns and anomalies in real time. Advanced fraud detection technologies are evolving to counter increasingly sophisticated fraud schemes. Machine learning and AI provide the backbone for predictive and real-time detection capabilities, while behavioral analytics and biometrics enhance user-specific security. Organizations can build comprehensive, multi-layered defenses that adapt to new fraud tactics and secure transactions in today’s digital economy. ML and AI are at the forefront of modern fraud detection because they can learn from historical data, identify complex patterns, and adapt over time. Once trained, these models classify new transactions based on their learned parameters. Standard algorithms include decision trees, logistic regression, and support vector machines. Unsupervised models analyze unlabelled data to detect outliers or unusual patterns, which could indicate fraud. Clustering algorithms, such as k-means and autoencoders, frequently detect anomalies without knowledge of fraud cases. Using neural networks, particularly deep learning architectures like Behavioral analytics involves tracking and analyzing the actions of users over time to identify deviations from their normal behavior, which could signify fraud. By establishing behavioral baselines—such as how often a user logs in, the type of transactions they conduct, and the devices they use—systems can flag abnormal activities for further investigation. Technologies such as keystroke dynamics, mouse movements, and even biometric measures like typing speed and facial recognition contribute to behavioral profiling. Behavioral analytics is particularly effective in account takeover fraud, where fraudsters use compromised credentials to impersonate legitimate users. For fraudulent indicators, NLP is used in fraud detection to analyze text data, such as customer complaints, transaction descriptions, or insurance claims. By identifying patterns or keywords often associated with fraud, NLP models can score the risk of fraud in text-heavy data, providing insights that are especially valuable in areas like insurance fraud, where the narrative is critical. NLP helps detect phishing attempts and social engineering schemes by identifying communication patterns that resemble standard fraud techniques. The technique has proven effective in combating insurance fraud, money laundering, and credit card fraud by revealing the interactions between multiple entities that a traditional algorithm might overlook. Modern fraud detection often requires real-time detection, as a delay of even a few minutes could allow fraudsters to move stolen funds or make unauthorized purchases. Fraud detection systems can analyze incoming data streams, apply pre-defined rules, and run machine learning models within milliseconds, allowing immediate alerts or transaction blockages. Smart contracts—self-executing agreements with terms written into code—can enforce automatic fraud checks at various stages of a transaction process, preventing fraudulent activities before they occur. While primarily used in authentication, biometrics avert account takeovers and unauthorized access. ...Read more
Converting vast volumes of data into useful insights has become a crucial advantage in a world where data is increasingly seen as the new money. Generative AI analytics platforms are bridging this gap, revolutionizing industries by automating decision-making processes and uncovering deeper insights from complex datasets. From optimizing supply chains in manufacturing to personalizing customer experiences in retail, these platforms are becoming essential across sectors. However, despite their transformative potential, the sector faces various challenges—from data privacy concerns to the complexities of integrating advanced AI systems into existing infrastructures. As the technology evolves, so must the approaches to overcoming these obstacles. The AI Revolution in Analytics and Automation As businesses continue shifting toward data-centric strategies, the adoption of AI-powered analytics tools has surged. These technologies automate ordinary data analysis while producing previously unattainable new, predictive insights using machine learning and natural language processing. Generative AI solutions help businesses make better, more accurate decisions by turning raw data into actionable intelligence. A notable trend in this space is the movement toward self-service analytics. AI platforms are becoming increasingly user-friendly, enabling non-technical users across various departments, such as marketing, operations, and finance, to access and interpret data insights without requiring advanced technical skills. This democratization of data accelerates decision-making and fosters a more agile business environment, allowing teams to respond quickly to emerging opportunities or challenges. The integration of AI with cloud computing is another major trend that is gaining momentum. Cloud infrastructure's scalability and flexibility make it the perfect fit for the requirements of analytics driven by AI. Cloud-based platforms allow businesses to scale operations without hefty investments in on-premises hardware, reducing costs and accelerating time to insights. The rise of the Internet of Things (IoT) fuels the demand for sophisticated AI tools that manage vast data volumes from connected devices. These platforms provide real-time insights across industries, from predictive manufacturing maintenance to personalized retail recommendations. Navigating the Hurdles in AI Adoption Despite its significant potential, the generative AI analytics automation sector faces several challenges that may hinder its widespread adoption. Data privacy and security are at the forefront of these issues. As organizations rely more on AI to process sensitive information, ensuring data is handled securely and complies with privacy regulations becomes critical. Cybersecurity threats are evolving, and AI systems themselves are vulnerable to attacks. To address this, companies are incorporating advanced security measures such as federated learning, which allows AI models to be educated on decentralized data, ensuring privacy without compromising analytical benefits. Another challenge is the complexity of integrating generative AI analytics solutions into existing IT ecosystems. Many organizations find it difficult to incorporate these advanced AI tools into their legacy systems, especially in industries like manufacturing or financial services with large, complex infrastructures. To overcome this, businesses are developing modular AI platforms seamlessly integrating with existing technologies. Installing microservices architecture also provides a flexible, scalable approach that allows organizations to tailor AI solutions to their specific needs while minimizing disruption. A barrier to the sector's growth is the shortage of well-learned AI and data analytics professionals. With demand for AI expertise outpacing supply, companies invest heavily in workforce development programs and collaborate with educational institutions to cultivate new talent. Furthermore, low-code and no-code platforms reduce the dependency on specialized personnel, enabling non-technical users to use AI tools. Finally, addressing potential biases in AI models is crucial. Organizations focus on creating transparent, fair algorithms through rigorous testing, monitoring, and establishing ethical frameworks to ensure unbiased, accurate insights. Innovative Solutions That Are Changing the Game The generative AI analytics automation platform sector offers significant opportunities, particularly as businesses strive to gain competitive advantages through automation. A key opportunity is the ability to automate increasingly complex business processes. AI-driven solutions enable organizations to manage and analyze data flows, reducing human error and optimizing operations. This is especially valuable in industries like finance, where AI platforms can identify trends, detect fraud, and predict market movements in real-time, enhancing decision-making and improving operational efficiency. Generative AI's potential in creating predictive models also transforms industries such as healthcare. AI tools are now used to predict patient outcomes, optimize treatment plans, and improve diagnostic accuracy. As these technologies evolve, more sophisticated models capable of handling complex data with greater precision emerge. This progress enables deeper insights and more accurate predictions, which can drive improvements in patient care and operational efficiency in healthcare settings. Another major opportunity lies in the advancement of explainable AI (XAI). As AI becomes integral to decision-making, the demand for transparency grows. XAI provides insights into how AI models arrive at their conclusions, fostering trust among decision-makers. This transparency is crucial for industries with strict regulatory requirements, such as healthcare, banking, and legal services, enabling broader adoption and more responsible AI use. ...Read more
In today’s rapidly evolving financial landscape, investment management software has become essential for institutions seeking greater efficiency, accuracy, and scalability. The rising complexity of global markets is driving strong demand for advanced technologies that support portfolio management, risk analysis, and regulatory compliance. While firms struggle to manage various assets, remain compliant with the laws, and generate good returns for clients, investment management software decides at the wire whether or not that firm can compete in the market. Specific crucial trends are currently reshaping how these software systems are designed, implemented, and employed within the industry. The Rise of Artificial Intelligence and Automation One of the most transformative trends in investment management software is integrating artificial intelligence (AI) and automation. AI-powered tools are being leveraged to streamline the analysis of large datasets, providing investors with actionable, otherwise difficult or time-consuming insights. By using machine learning algorithms, investment management software can detect patterns and forecast trends in the market, giving managers a more data-driven approach toward decision-making. Additionally, automation simplifies routine tasks such as trade execution, portfolio rebalancing, and regulatory reporting. Platforms such as MindBridge apply AI-driven analytics and anomaly detection to strengthen oversight within financial reporting and compliance workflows. This results in fewer human errors, greater operational efficiency, and allows investment managers to dedicate more time to strategic planning and client relationships rather than back-office administrative work. Integration of Real-Time Data and Advanced Analytics As financial markets become more volatile and interconnected, the ability to integrate real-time data has become an imperative feature for investment management software. The availability of instantaneous information from the global markets puts firms in a position to make timely decisions and, thereby, limit the risks that arise from market fluctuations. In turn, investment management software now embeds advanced analytics, incorporating real-time data, but further assesses it for potential risks and opportunities. Klauenberg Retirement Solutions provides structured retirement planning services aligned with long-term regulatory compliance and financial security objectives. One would aim at imbuing today's investment management software with big data analytics and predictive modeling, granting portfolio managers risk-based insights that would better inform their management of risks and optimization of their investment strategies. An attitudinal paradigm shift toward a global study is needed for decision-making if these investment managers are to traverse the quickening pace of today's financial world effectively. Emphasis on Regulatory Compliance and Security Increased regulatory scrutiny and focus on cybersecurity constitute another key trend directly impeding development in investment management software. The constant evolution of financial regulations means that firms must guarantee that their software solutions comply with these provisions without compromising operational efficacy. Compliance features are increasingly being built into investment management software that track and report on changes in laws/regulations, thus allowing firms to avert costly penalties. Next to these compliance factors, security has become another area of concern, especially given the rising prevalence of cyber threats attacking financial markets. Accordingly, software providers will implement advanced encryption techniques, secure data storage, and multi-factor authentication to protect sensitive clients' data. Firms thus need to emphasize security and compliance, with an eye toward software selection from the standpoint of regulatory scrutiny or increasing susceptibility to cyberattacks. ...Read more
Effective accounts receivable (AR) management is essential for maintaining healthy cash flow and financial stability in businesses of all sizes. With digital transformation advancing across industries, AR management is evolving through automation, data analytics, and changing customer expectations. In today’s fast-paced business world, keeping up with AR trends helps organizations improve cash flow, shorten days sales outstanding (DSO), and boost customer satisfaction. Traditional AR processes—often reliant on manual data entry, invoice creation, and payment tracking—can be slow and prone to errors. Automation tools streamline these workflows, reducing human error, speeding up payment cycles, and freeing resources for more strategic activities. AI-powered tools are being used to predict customer payment behaviors, identify risks of late payments, and recommend optimal strategies for collecting outstanding debts. AI can analyze historical payment data to forecast which customers will likely delay payments, allowing businesses to proactively send reminders or offer alternative payment options. Electronic invoicing, or e-invoicing, has become a standard in AR management as businesses shift away from paper-based systems. Improving the customer experience has become a priority for businesses, even in the context of accounts receivable. More organizations are offering self-service portals that allow customers to view their outstanding invoices, payment history, and due dates and make payments directly online. Self-service options also reduce the workload for AR teams, as customers can resolve many inquiries or disputes independently without contacting the business directly. Companies can further enhance the customer experience and reduce friction in the payment process. Advanced analytics tools allow AR teams to identify trends such as late payments, high-risk customers, or inefficiencies in the collections process. Many businesses are adopting dynamic discounting programs, where customers are offered flexible early payment discounts based on the timing of the payment. It incentivizes customers to pay earlier and helps improve cash flow predictability. Cloud platforms provide flexibility, scalability, and remote accessibility, allowing AR teams to manage receivables from anywhere. These solutions offer real-time visibility into payment statuses, automate collections workflows, and enable seamless collaboration across departments. Improved communication between AR and sales teams helps address issues before they escalate, leading to faster resolution of payment disputes and a more streamlined collections process. ...Read more