I am a trained and certified Amazon Product Researcher specializing in Online Arbitrage for both the US and UK marketplaces. I focus on identifying profitable, low-risk products by analyzing key metrics such as sales rank, competition, pricing, and ROI using tools like SellerAmp and Keepa.
I have experience sourcing from various online retailers through methods like brand sourcing and storefront stalking, ensuring products meet profitability and eligibility requirements. I am committed to helping Amazon sellers make data-driven decisions that support consistent growth and long-term success.
Experience: Less than 6 months
As an Amazon Product Researcher, my primary role is to find profitable leads in online stores and other marketplaces and sells it on Amazon for a higher profit.
Experience: Less than 6 months
As an Amazon Product Researcher specializing in online arbitrage, I have experience sourcing from various online retailers through methods like brand sourcing, reverse sourcing, manual sourcing, newsletter sourcing and storefront stalking, ensuring products meet profitability and eligibility requirements.
Experience: Less than 6 months
Experienced in using Seller Amp SAS to evaluate product profitability, analyze ROI, and assess key metrics such as fees, competition, and sales performance.
Experience: Less than 6 months
Experienced in using Keepa to analyze Amazon product data and graph, including price history, sales rank trends, offers count or sellers status to make sure product is really profitable and avoid potential risks and other red flags.
Experience: Less than 6 months
Experience in tracking deals and organize product leads using google docs and google sheets for sourcing decisions.
Experience: 5 - 10 years
I was previously associated with a BPO company, I handled customer inquiry and technical support through voice calls and email.
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