COMMUNITYAskapro

Traffic generation for an application; Reducing the CRR

CRR reflects the effectiveness of campaigns with the predictive model, and helps increase the client's profit; Optimizing the CPA for the order; Increasing the LTV of attracted users. This can be achieved by increasing the frequency of orders per user or increasing the value of the average bill Tools: Accumulating 30,000 installs, among them — at least 40% with conversion; Making recommendations for the client on unmarked events on the event map; Collecting additional raw data on the Push API and getting a key for sending s2s events; Creating a tree of user behavior; Training the model and splitting users into clusters by LTV; Starting to send a Smart Event. In July created test campaign optimized for a predictive event; Updating the settings and enriching the Smart Event with additional information Results: Optimized campaigns using Smart Event. The CRR for them became lower than the CRR of conventional campaigns; By 25% reduced CRR for the period from October 2021 to February 2022 compared to conventional campaigns; By 23% lowered CPO; 4 times increased budget of predictive ad campaigns from October to February and reduced the share of regular promotion

Gregory worked on this case as the CPO at Go Predicts.
CPO
Development
Product management
Cloud service
Design
Firm Software
Driver software
Marketing
Consulting
The USA
Growth
Dominos Pizza
Cross-platform mobile app
Python
JS
Go
Haskell
B2C
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Gregory

CPO at Lemon AI

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