Driving digital engagement and repeatable growth through marketing automation and accelerated by Publicis Sapient TALA: Test-and-Learn Marketing Automation
Test-and-Learn Automation (TALA) helps organizations like quick-service restaurants (QSRs) and other consumer-facing industries improve the impact of marketing campaigns. Within a few months, businesses get results that help them serve the best offer, content or recommendation to the right customer at the right time. Outside of marketing campaigns, TALA can also be used to improve the customer user experience on mobile apps and sites.
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Andre Engberts
Vp Technology, Publicis Sapient
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TALA Solutions
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The solution consists of five steps
Identify an initial small set of use cases. Select use cases that are core to the business and likely to improve key performance indicators (KPIs) such as customer retention, visit frequency or basket size. Use cases are obtained from a user experience to drive customer actions like downloading an app, converting to a transaction or redeeming a reward or offer. Businesses should select use cases that can be easily measured within the intended user experience.
Collect data for the use case. Data should be gathered through a new customer data platform (CDP) or a preexisting data platform.
Setup an analytics environment to:
Design and execute test-and-learn experiments. Designing experiments is both a quantitative and qualitative process that combines the knowledge of the business with data to generate test hypotheses that are qualified, prioritized and executable. TALA automates the final test design and preparation steps by generating audiences made up of test and control groups. It then connects these audiences to experiments. Once tests are executed, TALA automates the generation of test performance reports. Performance measurement reports confirm if tests should be scaled, pursued once modified or simply abandoned. Once tests show which offers work, those learnings can be scaled to larger campaigns.
Convert experiments into campaigns. Multiple tests are run simultaneously to create a repository of results to be used for planning campaigns. In return, campaign planning and performance monitoring generate their own set of questions that are quickly explored and answered. This collaboration generates growth at scale.
Identify an initial small set of use cases. Select use cases that are core to the business and likely to improve key performance indicators (KPIs) such as customer retention, visit frequency or basket size. Use cases are obtained from a user experience to drive customer actions like downloading an app, converting to a transaction or redeeming a reward or offer. Businesses should select use cases that can be easily measured within the intended user experience.
Collect data for the use case. Data should be gathered through a new customer data platform (CDP) or a preexisting data platform.
Setup an analytics environment to:
Design and execute test-and-learn experiments. Designing experiments is both a quantitative and qualitative process that combines the knowledge of the business with data to generate test hypotheses that are qualified, prioritized and executable. TALA automates the final test design and preparation steps by generating audiences made up of test and control groups. It then connects these audiences to experiments. Once tests are executed, TALA automates the generation of test performance reports. Performance measurement reports confirm if tests should be scaled, pursued once modified or simply abandoned. Once tests show which offers work, those learnings can be scaled to larger campaigns.
Convert experiments into campaigns. Multiple tests are run simultaneously to create a repository of results to be used for planning campaigns. In return, campaign planning and performance monitoring generate their own set of questions that are quickly explored and answered. This collaboration generates growth at scale.
TALA’s progressive approach creates a personalization strategy capable of avoiding pitfalls of mass marketing such as when customers receive irrelevant offers, content and recommendations, which may have potentially negative business implications. The solution’s toolset of integrated data, analytics and marketing activation capabilities is built on the Google Cloud Platform (GCP) and enables the five steps outlined above. TALA does not require a large investment to get started with an initial set of use cases. As an organization begins to see returns from campaigns, it can later expand experiments, campaigns and test-and-learn to use cases across all channels. With TALA, businesses learn which campaigns drive value for their audiences. It also identifies how and when to repeat those campaigns to keep customers coming back.
Data collection, curation, insights, activation, reporting and visualization
This chart depicts the flow of TALA, from the ingestion, processing and generation of insights to the creation and execution of test-and-learn experiments. Highlighted are the recommended data sources, machine learning models and applicable channels.
Customer behaviors are often unpredictable. Relying on AI alone to uncover trends in data risks the technology missing new behaviors. Test-and-learn, combined with AI, is more efficient for the following reasons:
A key learning example from test-and-learn came from a quick-service restaurant (QSR) testing the following hypothesis: If customers receive offers they like, will they spend more money? We learned that visitor frequency and number of items purchased generally increased. Interestingly, margins for high-value customers dropped slightly, and margins for customers just below that level went up. In other words, high-value customers would have ordered from the restaurant without offers, and the discount represented lost revenue.
Publicis Sapient’s deployment of TALA within various client environments and well-chosen case sets generated the following successful results within months:
In this diagram, the top row shows the quick start path to enable TALA, and the lower row explains how each activity scales up over time.
Accessible and affordable cloud data processing and machine learning technologies are enabling the development of personalized insights on large data sets. The deployment of data-driven analytics and marketing automation capabilities on cloud platforms like GCP can be done in a matter of weeks. Google offers a variety of analytics tools, including Looker and Vertex, which are directly integrated into their cloud data warehouse, BigQuery. GCP is also an environment for building applications and APIs, and Publicis Sapient is combining these native GCP features into the TALA platform for clients. The benefit of working with GCP is the simplicity of assembling its capabilities for a defined purpose and the deep level of security provided.
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Andre Engberts
Vp Technology, Publicis Sapient
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