Categories
Marketing & Advertising News

Tamoco’s Accurate US Segments Available In LiveRamp & Adsquare

Are location-based segments the answer for marketer’s identity crisis?

For marketers, the cookie is an essential way of understanding consumers, their interests, and how best to deliver them relevant and engaging content and ads. Whatever happens with the cookie, many marketers have agreed that moving towards people-based marketing is a direction that the industry is well advised to take.

That’s why at Tamoco, we’re focused on supporting a marketer’s ability to be better at people-based marketing. We believe that device location can help build distinct audience segments based on real-world locations that drive results.

Tamoco has been in the location space for a while now. We started by using beacons and other sensors to deliver push notifications to users. A lot has changed since those days, but we feel that there’s still a lot that needs to be done for marketers.

The power of location-based targeting has been proven, but we think we’ve built something that gives marketers better certainty when using location-based segments.

For us, this all comes down to accuracy. For consumers, there’s nothing worse than a lack of relevance in their advertising. We noticed that much of the location data that was being used to target consumers was simply inaccurate.

That’s why we built our visits product. It takes multiple device signals (such as movement type, acceleration, and altitude) over numerous data points to measure visits to real-world locations more accurately. Marketers can now be sure that the person they are targeting with their ads spent time inside a retail location, rather than just walked past.

But the best part for marketers is that we’re integrating this all directly into LiveRamp and Adsquare.

With Tamoco’s segments, marketers can accurately target consumers based on their behavior in the offline world. Tamoco offers hundreds of unique audiences, based on a detailed analysis of visits to real-world locations and points of interest. These segments run across multiple industries, from retail stores to restaurants, entertainment venues, and travel locations.

 

How to access Tamoco segments from within LiveRamp

Tamoco’s location based segments are available through the LiveRamp platform. Activate these segments today to target people and provide a better advertising experience for consumers.

Tamoco makes 70 pre-build segments available in the data store; these are split by POI category and refreshed monthly.

Our off the shelf segments can be found by following Tamoco > US > Location data > Verified visits > Month Year > Segment name. E.g. Tamoco > US > Location data > Verified visits > Month Year > QSR

Tamoco off the shelf segments are also automatically pushed to DV360 and available through their marketplace.

We can build custom segments (based on more tailored POI categories, brands, locations, smaller time windows) and push these to 198 Liveramp data partners; including Adobe Advertising Cloud, Amazon, Amobee, Facebook, Hulu, MediaMath, Roku, theTradeDesk, Verizon and Xandr.

For customized options, please get in touch here.

 

How to access from within Adsquare

Tamoco’s location based segments are available through the Adsquare platform. Activate these segments today to target people and provide a better advertising experience for consumers.

Tamoco makes pre-build segments and audience profiles available in Adsquare and these are also pushed to all public marketplaces; these are split by POI category and refreshed monthly.

Our off the shelf segments can be found by searching for Tamoco in the Adsquare platform or in any marketplace you use.

We can build custom segments (based on more tailored POI categories, brands, locations, smaller time windows) and push these to any of the social media platforms integrated with Adsquare including Adobe Advertising Cloud, ApNexus, Facebook, MediaMath, theTradeDesk, amongst others.

For customized options, please get in touch here.

Categories
Business

How Food Delivery Apps Benefit from Big Data Analytics

In the fast-paced world of food delivery, staying competitive is crucial for success. Food delivery apps have revolutionized how people order food, providing convenience, speed, and various options. The food delivery market is anticipated to experience a compound annual growth rate (CAGR) of 12.67% between 2023 and 2027, leading to an estimated market size of US$1.65 trillion by 2027.

 

App developers and businesses have turned to big data analytics to thrive in this industry, gain valuable insights and improve their services. This article will explore how food delivery apps benefit from leveraging big data analytics, enabling them to enhance customer experiences, optimize operations, and drive business growth.

 

Unlocking the Potential: Big Data Analytics and Its Impact on Food Delivery Apps

Personalized Recommendations and Customer Experience

One of the key advantages of using big data analytics in food delivery apps is the ability to provide personalized recommendations to customers. By analyzing vast amounts of data, including order history, customer preferences, and demographics, apps can offer tailored food suggestions that align with individual tastes and dietary requirements. This level of personalization enhances the customer experience by saving time and effort in selecting their desired meals.

 

For instance, customers who frequently order vegetarian dishes can be presented with a curated list of vegetarian options from various restaurants, streamlining the decision-making process. Such targeted recommendations increase customer satisfaction and drive repeat orders and customer loyalty.

Demand Prediction and Supply Optimization

Big data analytics plays a crucial role in helping food delivery apps predict demand patterns accurately. By analyzing historical data, weather conditions, local events, and other relevant factors, apps can anticipate peak hours, popular food choices, and high-demand areas. This insight enables app operators to optimize their delivery network, ensuring plenty of delivery personnel and a seamless customer delivery experience.

 

Additionally, by analyzing customer feedback and ratings, apps can identify restaurants that consistently receive positive reviews and have a high order volume. By partnering closely with such establishments, delivery apps can offer customers popular food options while supporting local businesses. Data-driven supply optimization ensures efficient operations, reduces delivery times, and minimizes the chances of order cancellations or delays.

Enhanced Operational Efficiency

Food delivery apps generate vast amounts of data at every stage of the delivery process, from order placement to delivery completion. Big data analytics empowers these apps to enhance operational efficiency, providing valuable insights into metrics such as average delivery time, driver performance, and order accuracy. By closely monitoring these metrics, app operators can identify bottlenecks and streamline processes, leading to an optimized and cost-effective delivery ecosystem.

 

For instance, if data analysis reveals specific periods when orders frequently face delays, app operators can strategically allocate additional delivery personnel during those peak hours to ensure timely deliveries. This proactive approach made possible through the implementation of big data analytics, allows apps to identify areas of improvement, optimize route planning, and streamline dispatching operations, which can be achieved through on-demand delivery mobile app development.

 

Fraud Detection and Prevention

Fraudulent activities, such as fake orders or unauthorized credit card use, pose a significant challenge for food delivery apps. Big data analytics can help identify suspicious patterns, unusual behaviors, and potential fraud incidents by analyzing transactional data and user behavior. Machine learning algorithms can detect anomalies and flag potentially fraudulent activities in real-time.

 

By leveraging big data analytics, food delivery apps can implement robust security measures to protect customers’ sensitive information and prevent financial losses. This enhances trust and reliability, reassuring customers that their transactions are secure, and further solidifies the app’s reputation.

Data-Driven Business Growth

Data analytics provides food delivery apps with valuable insights into market trends, customer preferences, and emerging patterns. By analyzing this data, businesses can make data-driven decisions, identify growth opportunities, and adapt their strategies accordingly. For example, suppose the data reveals a rising demand for vegan options in a specific area. In that case, apps can partner with vegan restaurants or encourage existing partners to expand their vegan menu offerings.

 

Moreover, big data analytics helps apps identify new target markets, refine their marketing strategies, and allocate resources effectively. App developers can create targeted marketing campaigns by understanding customer behavior and reaching the right audience with the right message at the right time. This approach increases customer acquisition, enhances brand awareness, and helps businesses grow online.

 

Furthermore, big data analytics allows food delivery apps to conduct competitive analysis by comparing their performance with industry benchmarks and identifying areas where they can outperform competitors. This insight enables them to differentiate themselves by offering unique features, improving service quality, or expanding their delivery network to gain a competitive edge.

Efficient Inventory Management

Food delivery apps often collaborate with numerous restaurants and food vendors, each with its inventory management systems. By leveraging big data analytics, these apps can gain insights into real-time inventory levels and make informed menu offerings and availability decisions.

 

Food delivery apps can optimize inventory management processes by analyzing data on ingredient usage, the popularity of certain dishes, and customer demand patterns. This includes reducing food waste by ensuring that restaurants order ingredients based on actual demand and adjusting menu options based on availability. This data-driven approach minimizes stockouts, improves order accuracy, and enhances the overall efficiency of the food delivery ecosystem.

 

By managing inventory through big data analytics, food delivery apps can maintain a seamless customer experience by offering various options and minimizing the chances of orders being canceled due to unavailability.

Conclusion

In the highly competitive food delivery industry, leveraging big data analytics is essential for app developers and businesses to thrive. By harnessing the power of data, food delivery apps can provide personalized recommendations, optimize their supply and delivery operations, enhance operational efficiency, detect and prevent fraud, and drive data-driven business growth. These benefits improve customer experiences, increase customer loyalty, and sustain business success.

 

As the food delivery landscape evolves, app developers should prioritize integrating robust data analytics capabilities into their platforms. By doing so, they can stay ahead of the competition, adapt to changing customer preferences, and continue to deliver exceptional service to their users.