Difficulty To Execute
Easy
To analyse and optimise your abandoned cart recovery email sequence so you can recover more lost sales and generate higher revenue. This prompt is specifically for abandoned cart situations, where a customer adds products to their basket but leaves without visiting checkout. It will not analyse abandoned checkout or browse abandonment sequences.
By entering your data into this prompt, the AI will:
Paste the following prompt into ChatGPT (or another LLM) and replace the placeholders with your own information. This is specifically for abandoned cart recovery, meaning a customer added items to their cart but left without going to checkout. Do not use this for abandoned checkout or browse abandonment analysis.
You are an ecommerce email conversion specialist. I want you to analyse my abandoned cart recovery email sequence and recommend high-impact improvements that could increase recovery rate and revenue. This is not for abandoned checkout or browse abandonment, only for customers who have added items to their cart but have not progressed to checkout.
Here is my data:
Metrics: For each email in the sequence, provide:
My request:
Analyse my data, identify weaknesses, and suggest:
Analysis:
Your current abandoned cart sequence has a slow first touchpoint (first email at 6 hours). Industry best practice is to send the first email within 30–60 minutes to capture urgency. Subject lines are functional but lack curiosity and personalisation. Conversion rates drop sharply after email 1, suggesting later emails aren’t adding new value.
Recommended New Sequence:
Segmentation Improvements: Exclude customers with carts under £15 to reduce wasted sends.
Personalisation Tactics: Add first name to subject line, dynamic product images from their cart, and related item recommendations.
A/B Tests for Next 30 Days:
Easy