Step 1: Filter by Seller
Start with a seller you're interested in. Use the spreadsheet's filter or sort function to group all entries for that specific seller. This isolates their performance data from the rest.
Uncover long-term patterns to identify sellers with consistent quality and lower rejection rates.
For savvy shoppers using agent services like CSSBuy, Quality Control (QC) photos are a vital checkpoint. However, evaluating a single item only gives a snapshot. The true power lies in trend analysis. The shared CSSBuy QC spreadsheet, often maintained by communities, is a goldmine for informed decision-making. This guide will show you how to interpret its data to spot long-term patterns in seller performance.
A single rejection can be bad luck. Consistent patterns, however, tell the real story. The spreadsheet aggregates data over weeks or months, revealing what single photos cannot:
While formats may vary, most spreadsheets contain these critical columns. Learn to focus your analysis here.
Start with a seller you're interested in. Use the spreadsheet's filter or sort function to group all entries for that specific seller. This isolates their performance data from the rest.
For the filtered seller, count the total number of QC entries and the number of "RL""Exchange"Formula: (Number of RLs / Total QCs) * 100 = Rejection Rate %.
Look at the "QC Issues" column for that seller. Are the problems random, or is there a pattern?
Sort the seller's data by date. Has their rejection rate improved in the last month? A downward trend in RLs can signal a seller who has addressed issues. A sudden spike might warn of a problematic new batch.
Filter by a specific item (e.g., "Jordan 4 Military Blue"). Now compare the rejection rates and common issues across different sellers offering the same item. This reveals who has the best batch or most reliable sourcing for that specific