Fighting Dashboard Fatigue

While restaurant owners now have a plethora of data at their fingertips, a key challenge is learning to filter through all the metrics to pinpoint the most actionable ones,  particularly as it relates to the delivery process. 

In this Q&A, Modern Restaurant Management (MRM) magazine speaks with Bites Founder and CEO Bala Subramaniam about the current delivery ecosystem touching on topics including data clarity, combating dashboard fatigue, fragmented customer relationships, pricing transparency, and more. 

With all the data available at an operator's fingertips, how can they best determine what metrics they have to pay attention to in order to be more efficient and responsive to their guests? 

The challenge today is not a lack of data, it’s a lack of clarity. Most restaurants are looking at fragmented data across multiple systems without a clear view of what actually drives guest behavior. 

The most important metrics are still relatively simple and include frequency of orders, customer lifetime value, and what drives repeat behavior. The issue is that many restaurants don’t have direct access to that data, especially when orders come through third-party platforms. 

The challenge today is not a lack of data, it’s a lack of clarity.

Until restaurants own the customer relationship and the data tied to it, they’re optimizing around incomplete information. The focus should shift from tracking everything to understanding who the customer is, how often they come back, and what drives that decision.

How can restaurants move away from "dashboard fatigue" and toward "prescriptive AI" that tells a manager what to do in real time? 

We’ve reached a point where dashboards are no longer the solution, but instead a part of the problem. Operators don’t need more data, they need direction. 

The role of AI is not to monitor every metric, but to translate data into action. That could mean identifying when staffing needs to change, when a menu item is underperforming, or when a guest is likely to churn. 

The key is moving from reporting to decision-making. When AI is connected directly into the systems that power the restaurant, it can start to recommend what to do in real time instead of just showing what already happened. That’s where the real operational value comes from. 

In what ways do POS-connected, open ordering networks enable restaurants to retain customer relationships, data, and more of their revenue? 

Today’s delivery ecosystem was built as a parallel layer on top of restaurant infrastructure, which is why it’s so expensive and why restaurants don’t own the customer relationship. The core issue is that orders flow through intermediaries instead of directly into the restaurant’s system. 

Until restaurants own the customer relationship and the data tied to it, they’re optimizing around incomplete information.

With POS-connected infrastructure, that changes. Orders flow directly into the restaurant’s existing system with no re-platforming or data loss. That means the customer relationship stays intact, restaurants know who their guests are, not a third party, and first-party data is preserved to support loyalty and personalization across dine-in and takeout. 

It also fundamentally shifts the economics. Instead of paying commissions or layering on markups, restaurants can operate in a model that preserves margin while still capturing demand. The long-term opportunity is to build open, POS-connected networks where restaurants are included by default and retain both the customer relationship and the economics of the transaction. 

This is the broader shift we’re seeing, from renting customers through marketplaces to owning those relationships directly again. 

What are the key challenges in the delivery landscape now and how do you see it evolving over the next few years? 

The core issue is structural. The third-party marketplace model is built on a high-cost “middleman tax” between restaurants and their own customers, and that cost continues to rise. This drives up prices, compresses restaurant margins, and fragments the guest relationship, creating a system that is increasingly misaligned for both sides. 

The path forward is not to keep adjusting fees, it’s to simplify the model.

Over the past decade, marketplaces solved the discovery problem, but they did so by inserting themselves between the restaurant and the customer. That model has become more expensive and harder to sustain over time. 

Looking ahead, we’ll see a shift from app-centric marketplaces to more direct, AI-native models. Conversational interfaces will begin to replace traditional apps, allowing guests to order more naturally while connecting directly to restaurant systems. The model that wins will be open, POS-connected networks where ordering happens through AI agents, but fulfillment, data, and economics stay with the restaurant.

With guests complaining about all the fees they pay with delivery and in the current tipping model, how can operators meet guest needs without breaking the bank? 

The frustration around fees and tipping is really a symptom of how the system is structured. Today’s delivery model relies on multiple intermediaries, which creates an inefficient cost structure where fees, markups, and confusion get passed along to the customer. 

The path forward is not to keep adjusting fees, it’s to simplify the model. Removing unnecessary intermediaries eliminates hidden fees and inflated prices, and allows pricing to better reflect the actual cost of the service. 

When ordering flows directly through the restaurant’s infrastructure, there’s no need to mark up prices 20–30 percent just to make the economics work. That creates room for more transparent pricing while still protecting restaurant margins. 

Ultimately, the industry doesn’t need to choose between guest affordability and restaurant profitability. With more direct, AI-powered ordering models, you can deliver both.