Product Researcher – Fashion Niche (US Market) – 35 Products per Week

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TYPE OF WORK

Part Time

SALARY

N/A

HOURS PER WEEK

10

DATE UPDATED

Mar 2, 2026

JOB OVERVIEW

We are looking for an experienced dropshipping product researcher in the fashion niche.

Our focus is the American market. We are not looking for someone who sends random AliExpress listings. We want structured, data driven research based on clear criteria.

Your job is to find 35 qualified products per week that meet our testing standards.

This is not beginner work. You must understand what makes a fashion product scalable in paid ads.

???? Your Responsibilities

• Research 35 test ready products per week
• Focus on US market demand
• Validate products using clear data signals
• Provide structured reports in Google Sheets
• Include competitor links and proof of active advertising
• Explain briefly why each product qualifies

???? What We Expect From You

You must have experience with:

Facebook Ad Library research
• TikTok ad research
• Competitor store analysis
• Google Trends
• Basic understanding of margins and AOV
• Identifying problem solving or strong desire based products

You must understand:

• What makes a product suitable for paid traffic
• Why some fashion products scale and others fail
• How to evaluate saturation properly

???? This Is NOT For You If

• You copy products from generic “winning product” lists
• You cannot explain your research strategy
• You only search AliExpress best sellers
• You do not understand US consumer psychology

???? Position Details

• Target output: 35 qualified products per week
• Long term opportunity
• Performance based bonuses for products that scale
• Weekly reporting structure

???? IMPORTANT – To Apply

To be considered, answer the following questions carefully.

Low effort applications will be ignored.

???? Initial Screening Questions

Describe your exact product research process step by step.
From idea generation to final validation. Be specific.

When researching fashion products for the US market, what signals tell you a product has scaling potential?

How do you check if a product is oversaturated versus validated?

What tools do you use daily for research and why?

What minimum criteria must a product meet before you send it to a client?

Give one real example of a fashion product you found that scaled.
Why did it work?

How do you evaluate margins and price positioning in fashion?

If we reject 10 of your product suggestions, what would you adjust in your process?


At the top of your application, write the word “SCALER” and explain in 5 to 7 sentences what separates a 10k per month product from a 100k per month product in fashion dropshipping.

Anyone who does not follow this instruction is automatically rejected.

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