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growth through the market centric data layer
Data and AI

Enabling growth through the market-centric Data Layer

Financial services leaders face a daunting challenge: differentiation in a highly regulated industry.

Rates, fees, products, and compliance requirements often create a homogenous landscape where competitors blur together. According to Financial Brand “Shadow banking” allows non-banking entities like private equity firms to invest, raising concerns due to lack of oversight. McKinsey sees this as a threat to traditional banks.

Innovation in such a tightly regulated and commoditized market hinges on exceptional customer experience. Banks can do that by enhancing distribution channels to seamlessly integrate services into customers’ daily digital lives through technology and AI. Let’s consider the music industry, the shift that happened from Walkman to streaming services expanded the product beyond music content. It encompassed service elements integral to the user experience like personalized playlists, recommendations, and customer support, all of which enhance the music listening experience. The target experience moved from a product-centric model to a product-service integrated, client-centric model.

The same is true for banks that wants to integrate services into customer’s digital lives. Banks have to reimagine their contact centers with Data, technology, and AI at the center. This raises a crucial question “What approach should banks adopt regarding data and AI for contact centers as they reimagine and tailor their contact centers to provide a product-service integrated, client-centric experience for the future?”

Join Steve Jones (EVP- Chief Data Architect) and Chandramouli Venkatesan (VP- Portfolio Development Lead, Digital Front Office Transformation) as they delve into this topic of market-centric data layer that can help your organization push the boundaries of customer centricity and embrace a truly digital-driven future.

How important is the role of real-time data as its fusion with AI is reshaping business strategies and decision-making, guiding industries into the future of operational efficiency and strategic agility?

Steve Jones: In an era where the pace of organizational decisions keeps accelerating, the role of real-time operational data has evolved from supportive to absolutely necessary. Traditional, slower-paced data analytics are giving way to a dynamic new environment where data and AI support immediate decision-making and action. In the high-stakes world of finance, algorithmic trading acts as the perfect example where algorithms make split-second decisions based on real-time market data. Their success hinges on the accuracy and completeness of that data. Similarly, crafting exceptional customer experiences requires a data-driven approach that leverages real-time insights to personalize interactions and anticipate customer needs.

A market-centric data layer entails the acknowledgment within the business that decision-making information isn’t solely internal. Embracing this becomes a fundamental competency, ensuring standardized acquisition, universal availability, and transparent governance and accountability. The MCDL serves as a reflection of how the business is perceived in the world, ensuring decisions are made with external objectivity rather than internal subjectivity.

How is real-time data transforming decision-making and AI use in businesses today?

Steve Jones: We’re experiencing a shift in how companies manage and utilize data, with a growing emphasis on the integration of a real-time operational data layer. These systems are not just enhancing the speed and accuracy of decision-making processes but are also a must for the effective deployment of AI in business operations. The differentiation for organizations today is in the ability to react faster than other people operationally to make the right decision faster. That’s the mentality of the operational data pattern. It’s about having all the information to make a customer decision right there, in the moment. We call this “decision context.”

While businesses have traditionally recognized the need for accurate data, in the past, when projects went live, the first compromise often made was on data accuracy. This practice was okay in environments where it was acceptable if data processing was delayed by some time. However, when it comes to modern AI systems, which require immediate, precise data to function effectively – it’s the exact opposite.

Let me share an interesting example.

A while ago I booked a flight with one of the major American airlines. I was initially supposed to travel from Phoenix to Dallas and then to London and Stockholm. Due to a delay in Phoenix, the airline rebooked me via another city without coordinating with British Airways. Consequently, upon arriving in London, I discovered British Airways had cancelled their onward ticket to Stockholm because they were not informed of the changes, resulting in a four-hour delay. The problem here was that the decision context in which the American airline company made its decision wasn’t sufficient for the whole decision, and that’s where we need to think.

How do real-time, AI-driven data layers improve industry-wide decision-making?

Steve Jones: The adoption of robust market-centric data layer capable of supporting real-time, AI-driven decision-making is essential. The key here is replicating the success of algorithmic trading. Algorithmic trading relies on having the right decision context – all the necessary information – to make the right choice quickly. The success of algorithmic trading shows us we can extend this mentality to other areas of the business. Extending these data-driven decision-making frameworks to other business areas can enhance operational efficiency and strategic agility across various industries. Like for banks using the same core system (like Guidewire), differentiation comes from the decisions made within that system, not the system itself.

As businesses continue to evolve their data management strategies, there is a growing dialogue around the terminology used to describe market-centric data layers. The discussion often focuses on whether traditional terms adequately reflect the impact of these systems on user experience and operational efficiency. There is a push to adopt terminology that more accurately describes the functional and strategic use of data in business environments.

Let’s come to our original vision of creating a product-service integrated client centric experience in Banking. In this context let’s discuss the state of contact centers. There’s a wealth of data from websites, apps, and other interactions that’s simply not accessible to the agents or the channels. How do you assess this situation?

Steve Jones: The problem is every channel and division has its own data silo. However, we need to and consider the operational data view from the customer’s perspective. Instead of focusing on omnichannel from a business standpoint, we should build a customer-centric operational data layer. This is why we want to put it above the application data layer. This allows us to make better decisions and differentiate ourselves not through the channel itself, but through the ability to provide a consistent customer experience.

It’s the combination of internal and external data that’s crucial. Here’s where “market-centric data layer” (MCDL) becomes interesting. Traditionally, data systems are built around internal operations. The “market-centric data layer” (MCDL) emphasizes building data systems around the market, with the customer at its core. The customer is a key part of this market, and understanding customer behavior within that market context is crucial. This market-centric approach aligns perfectly with the concept of customer journey mapping, which emphasizes building journeys around the customer, not around products. A focus on product journeys often misses the mark on what customers truly want. So, the MCDL directly supports this customer-centric approach. This is the future of engagement: competing in the market of ideas for customers and doing so in an outbound way.

I think that the concept of “market-centric data layer” describes it well. You compete for the customer in the market and not on your back end. The company with the most accurate view on the customer can make the most accurate decisions and therefore be more competitive. And the customer is one of the most competitive and challenging market-centric data areas that you have as a business.

How do you see the future of this Market-centric data layer?

Steve Jones: I believe that the market of ideas is going to be immense. Imagine an avatar that’s available 24/7 and is designed for the role of a digital financial advisor, able to actively promote your brand. A person wondering about their life insurance in the middle of the night could ask it questions and get answers when the avatar collects the necessary data. Right after that, the avatar would be able to make changes in the policies.

The move towards Market-centric data layer represents a significant evolution in the way businesses manage and leverage data. This technology is set to become a fundamental element of business operations, driving innovation, enhancing decision-making accuracy, and ensuring operational agility in an increasingly data-driven world. As companies continue to realize the benefits of real-time data, the landscape of business decision-making will undoubtedly continue to transform, enabling businesses to respond more effectively to the challenges and opportunities of the digital age.

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      Meet our experts

      Steve Jones

      Expert in Big Data and Analytics
      ‘Steve is the founder of Capgemini’s businesses in Cloud, SaaS, and Big Data, a published author in journals such as the Financial Times and IEEE Software. He is also the original creator of the first unified architecture for Big Fast Managed data, the Business Data Lake. He works with clients on delivering large-scale data solutions and the secure adoption of AI, he is the Capgemini lead for Collaborate Data Ecosystems and Trusted AI.

      Chandramouli Venkatesan

      Vice President – Portfolio Development Lead – Digital Front Office Transformations | Banking and Capital Markets
      Chandra leads the Front Office transformation portfolio (marketing, sales and customer service) and serves banking and capital markets clients. He focuses his work on customer experience and helping financial institutions transform marketing, sales and customer service into more customer-centric organizations with an emphasis on experience strategy design, technology and data. Chandra has deep experience driving CX transformation for retail banks, payments companies, wealth management and capital markets firms.