How to Win Wallet Share While Cutting Costs in Financial Institution Operations

How to Win Wallet Share While Cutting Costs in Financial Institution Operations

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How to Win Wallet Share While Cutting Costs in Financial Institution Operations

In a recession economy, it is imperative to cut costs and employ efficient strategies to grow operating income. Here’s what banking institutions can do to make marketing and sales teams more efficient, and achieve better returns.


Why You Need Fresh Insights

Why You Need Fresh Insights: Don’t Rely on Stale Data to Make Important Decisions - PDF

Article

Why You Need Fresh Insights: Don’t Rely on Stale Data to Make Important Decisions

Too many mid-sized financial services institutions rely on reporting modules from their banking cores to try and understand business performance and make strategic decisions. However, there are problems with this approach.


Unlocking the Value of Data Analytics: What Mid-Market Companies Need to Understand

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Unlocking the Value of Data Analytics: What Mid-Market Companies Need to Understand

Man working on code at desk with multiple monitorsMost mid-market companies make one mistake or another when investing in a data analytics platform, not understanding the many intricacies associated with preparing their data to get the best results. Some of the most common mistakes include:

  • Not realizing they need to build pipelines to get the data from their multiple data sources to the analytics platform
  • Tasking IT with implementing a data analytics solution, when the IT department does not have data science skillsets
  • Basing analytics on data that is riddled with errors, incomplete, or stale, which compromises quality of decision-making due to the inaccuracy and tardiness of the underlying data.
  • Relying on the reporting function of one data source and not taking into account data beyond that source for decision-making
  • Using dashboards that provide insights into the past only, and not the future – a gap that needs to be bridged to compete with larger enterprises

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Unlocking the Value of Data Analytics: What Mid-Market Companies Need to Understand

Article

Unlocking the Value of Data Analytics: What Mid-Market Companies Need to Understand

Man working on code at desk with multiple monitorsMost mid-market companies make one mistake or another when investing in a data analytics platform, not understanding the many intricacies associated with preparing their data to get the best results. Some of the most common mistakes include:

  • Not realizing they need to build pipelines to get the data from their multiple data sources to the analytics platform
  • Tasking IT with implementing a data analytics solution, when the IT department does not have data science skillsets
  • Basing analytics on data that is riddled with errors, incomplete, or stale, which compromises quality of decision-making due to the inaccuracy and tardiness of the underlying data.
  • Relying on the reporting function of one data source and not taking into account data beyond that source for decision-making
  • Using dashboards that provide insights into the past only, and not the future – a gap that needs to be bridged to compete with larger enterprises

It should also be noted that analytics requires massive storage and compute to mine data for actionable insights. Even in a cloud environment, which is less costly to maintain than on-premise servers, data analytics takes up a huge amount of compute to mine transactional data for AI-driven insights. Most data warehouses used by mid-market companies are not built for analytics, and their contracts with public cloud vendors for data storage often incur huge overage charges for compute spikes as millions of calculations are being completed for algorithms to converge for analytics results.  Data analytics needs a cloud built for analytics. The mid-market should demand a built-in analytics cloud from an analytics solution, without a third-party public cloud contract to make it work (or attempt to host it in their regular institution data storage).

Industry Knowledge is Key

One of the most important aspects to understand is that there is no one-size-fits-all when it comes to data analytics. The value lies in industry specific data models, which must be built with algorithms using salient data points for a specific industry and appropriately weighted for that industry. For example, to build customer revenue in financial services, mining transactional banking data is important to reveal if a customer is doing business with competing financial institutions so that action can be taken to win this business over. In manufacturing, comparing product inventory at various channels and channel or retail sales locations is important for discerning sales performance and growth opportunities. In healthcare, mining insurance reimbursement claims for underpayments to recapture lost revenue requires comparisons of contracted amounts and fee schedules for multiple private insurance companies, plan coverages, and more. The true business value of analytics lies in industry specific data models and the data enrichment made possible by deep learning and the generation of actionable insights.

The Importance of Having the Right Expertise

This brings us to the requirement for data scientists and business analysts, which assist with achieving powerful and current actionable insights that lead to AI-driven decision-making and better business outcomes. Data scientists build algorithms to detect trends, patterns and predictions based upon the data, to position an enterprise for the future. Business analysts are industry specific and connect the dots between the data points relevant for answering business questions in that particular industry. They also help to design dashboards and other data visualizations to ensure that the insights generated answer questions important to that industry using industry-specific terminology, and analyze analytics results in the context of industry knowledge to reveal growth drivers and other opportunities for driving revenue. Typical IT departments do not have these skill sets.

Data Analytics Platform Requirements

Consider these questions when evaluating a data analytics platform:

  • Which data sources are forming the basis for the insights: Is the analysis based upon only some of the data, leaving out important data sources? Do the analytics use the most important data points? Is too much data or the wrong data being used?
  • How is the data cleansed for accuracy: To judge the accuracy of the insights, know what is being done to eliminate errors in the underlying data being analyzed. Garbage in leads to exponential garbage out when data is turned over to AI. Can the data be trusted?
  • Which algorithms are being used to find insights: Is it a specialized or generic deep learning model? Is it optimized for the type of inquiry or result being sought? Is it tailored to a specific industry and weighted appropriately for that industry and the question posed? Can the results be trusted?
  • Are the analytics results providing actionable insights such as how to grow revenue, improve efficiency or achieve other business outcomes? Are the results tied to solving business challenges, and not just AI for the sake of being cool?

Side-by-Side Approach

Aunalytics partners with organizations to build analytics solutionsMost mid-market companies are not in the business of IT or data science. IT is a necessary administrative function for operating a business, but should not become the main focus of most non-tech mid-market companies. However, given the expertise needed to use and maintain most analytics solutions, and the cost of data expert professionals as FTEs, the cost of data management and analytics can quickly overtake mainline business COGS expenses. Given all the complexities and challenges associated with unlocking the true value of data analytics, a new approach is needed that mid-market businesses can afford, enabling them to leverage AI-driven analytics and more effectively compete.

A side-by-side service model offers an alternative that goes beyond most tools and platforms on the market by providing a data platform with built-in data management and analytics, as well as access to human intelligence in data engineering, machine learning, and business analytics. Ideally it should operate as a cloud-based platform with a subscription service that places the burden of the data engineering expertise, technical tooling, and building and maintaining the infrastructure on the data management provider.

While many companies offer tools, and many consulting firms can provide guidance in choosing and implementing the tools, integration of all the tools and expertise in one end-to-end solution built for non-technical business users is key for digital transformation success for midmarket businesses.


Daybreak Analytic Database

Aunalytics to Participate at Multiple Financial Services Events in September, Demonstrating How Advanced, AI-Driven Analytics Can Help Mid-Market Institutions Increase Their Competitive Position

Leading Data Management and Analytics Company to Showcase Daybreak for Financial Services; Vice President, Client Relationships Ryan Wilson to Present a Session at Fiserv’s Signature Conference

South Bend, IN (September 12, 2022) - Aunalytics, a leading data management and analytics company delivering Insights-as-a-Service for mid-market businesses, announced today it will participate in five financial services conferences in September. The company will showcase its DaybreakTM for Financial Services advanced data analytics solution and demonstrate how midmarket banks and credit unions can use artificial intelligence (AI)-powered data analytics to gain valuable customer and member intelligence to compete more effectively and strengthen their regional position.

September events include:

Daybreak for Financial Services enables midsize financial institutions to gain customer intelligence and grow their lifetime value, predict churn, determine which products to introduce to customers and when, based upon deep learning models that are informed by data. Built from the ground up, Daybreak for Financial Services is a cloud-native data platform that enables users to focus on critical business outcomes. The solution seamlessly integrates and cleanses data for accuracy, ensures data governance, and employs artificial intelligence (AI) and machine learning (ML) driven analytics to glean customer intelligence and timely actionable insights that drive strategic value.

“Customers expect personalized interactions with the companies they do business with, and mid-market banks in particular are accustomed to providing ‘white glove service’ to set themselves apart from their larger counterparts,” said Ryan Wilson, vice president, Client Relationships, Aunalytics. “The key to greater personalization in today’s digital world, however, is artificial intelligence (AI)-driven data analytics.”

“Financial institutions generate massive amounts of data that is typically siloed across many systems, leaving it untapped for a variety of uses, such as marketing. To unlock the value of this data, it needs to be aggregated, integrated, and cleansed - a significant challenge that can be difficult and time-consuming, if not nearly impossible,” Wilson continued. “But with the emergence of new business models that couple talent with technology, mid-market banks can afford to take advantage of these tools to increase their competitive position. We look forward to meeting with bankers and credit unions at multiple events in September, and showing how Daybreak for Financial Services can help them compete more effectively.”

 

Tweet this: .@Aunalytics to Participate at Multiple Financial Services Events in September, Demonstrating How Advanced, AI-Driven Analytics Can Help Mid-Market Institutions Increase Their Competitive Position #FinancialServices #Banks #CreditUnions #Dataplatform #DataAnalytics #Dataintegration #Dataaccuracy #AdvancedAnalytics #ArtificialIntelligence #AI #Masterdatamanagement #MDM #DataScientist #MachineLearning #ML #DigitalTransformation #FinancialServices

 

About Aunalytics

Aunalytics is a leading data management and analytics company delivering Insights-as-a-Service for mid-sized businesses and enterprises. Selected for the prestigious Inc. 5000 list for two consecutive years as one of the nation’s fastest growing companies, Aunalytics offers managed IT services and managed analytics services, private cloud services, and a private cloud-native data platform for data management and analytics. The platform is built for universal data access, advanced analytics and AI – unifying distributed data silos into a single source of truth for highly accurate, actionable business information. Its DaybreakTM industry intelligent data mart combined with the power of the Aunalytics data platform provides industry-specific data models with built-in queries and AI for accurate mission-critical insights. To solve the talent gap that so many mid-sized businesses and enterprises located in secondary markets face, Aunalytics’  side-by-side digital transformation model provides the technical talent needed for data management and analytics success in addition to its innovative technologies and tools. To learn more contact us at +1 855-799-DATA or visit Aunalytics at https://www.aunalytics.com or on Twitter and LinkedIn.

 

PR Contact
Denise Nelson
The Ventana Group for Aunalytics
(925) 858-5198
dnelson@theventanagroup.com


22 Community Bankers of Michigan Annual Conference

2022 Community Bankers of Michigan Annual Convention and Expo

September 28-30, 2022

2022 Community Bankers of Michigan Annual Convention & Expo

​Grand Traverse Resort & Spa, Acme, MI

Aunalytics Excited to Attend the 2022 CBM Annual Convention & Expo as a Platinum Sponsor

Aunalytics is excited to attend the 2022 Community Bankers of Michigan (CBM) Annual Convention as a Platinum Sponsor. Aunalytics will be demonstrating Daybreak™ for Financial Services, a cloud-native data platform which enables community banks to focus on critical business outcomes and make data-driven business decisions in order to compete with large financial institutions.

22 Community Bankers of Michigan Annual Conference

22 PACB Annual Convention

2022 Pennsylvania Association of Community Bankers Annual Convention

September 22-24, 2022

2022 Pennsylvania Association of Community Bankers (PACB) Annual Convention

​The Disney Grand Floridian Resort & Spa, Lake Buena Vista, FL

Aunalytics to Sponsor Entertainment at the 2022 PACB Annual Convention Gala

Aunalytics is excited to attend the 2022 Pennsylvania Association of Community Bankers (PACB) Annual Convention as a Gala Dinner Entertainment Sponsor. Aunalytics will be demonstrating Daybreak™ for Financial Services, a cloud-native data platform which enables midsized banks to focus on critical business outcomes and make data-driven business decisions in order to compete with large financial institutions.

22 PACB Annual Convention

22 Wisconsin Credit Union CONNECT

2022 Wisconsin Credit Union Connect

September 21-22, 2022

2022 Wisconsin Credit Union Connect

Madison Marriott West, Madison, WI

Rich Carlton, President & CRO of Aunalytics, to Speak at 2022 Wisconsin Credit Union Connect

Aunalytics is proud be a Gold Sponsor of Wisconsin Credit Union Connect. Aunalytics will be demonstrating Daybreak™ for Financial Services at their booth, and Rich Carlton, President & CRO of Aunalytics, will presenting a talk entitled “Enhance the Customer Experience and Increase Market Share with AI-Driven Personalized Interactions” at 10:30am on Thursday, 9/22. Daybreak enables credit unions to more effectively identify and deliver new services and solutions to their members so they can better compete with large national financial institutions.

22 Wisconsin Credit Union CONNECT

22 Fiserv Signature Conference

2022 Fiserv Signature Conference

September 18-21, 2022

2022 Fiserv Signature Conference

Disney's Yacht Club Resort, Lake Buena Vista, FL

Ryan Wilson of Aunalytics to Speak at 2022 Fiserv Signature Conference

Aunalytics is proud to participate in the 2022 Fiserv Signature Conference as a Platinum Sponsor. Aunalytics will be demonstrating Daybreak™ for Financial Services at Booth 103, and Ryan Wilson, VP Sales at Aunalytics, will presenting a talk entitled “Enhance the Customer Experience and Increase Market Share with AI-Driven Personalized Interactions” at 9:45am on Wednesday, 9/21. Daybreak enables community banks and credit unions to more effectively identify and deliver new services and solutions to their customers and members so they can better compete with large national financial institutions.

22 Fiserv Signature Conference