Product Images Gze Pre After Wax Set

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Product Label Images

The following 3 images provide visual information about the product associated with Gze Pre After Wax Set NDC 83566-233 by Guangzhou Yilong Cosmetics Co.,ltd., such as packaging, labeling, and the appearance of the drug itself. This resource could be helpful for medical professionals, pharmacists, and patients seeking to verify medication information and ensure they have the correct product.

label - 001

label - 001

This is a description for a pre-wax spray product that cleanses the skin before waxing. It contains Centaurea Cyanus Flower Water, Glycerin, Aqua, and a Parfum. The directions of safe use instruct to spray the product on the areas that need waxing. It emphasizes the importance of stopping use if any allergies or abnormalities occur and seeking medical attention if needed. The manufacturer is Guangzhou Yilong Cosmetics Co., Ltd based in China. The product comes in a 100ml/3.38oz bottle.*

label - 002

label - 002

This text provides information about a post-wax oil product designed to hydrate, soothe the skin, and remove excess wax residue after waxing. The ingredients include Sunflower Seed Oil, Jojoba Seed Oil, Matricaria Flower Oil, and Tocopherol. The product is recommended for use after waxing by spraying onto the skin. It also contains cautions for allergic reactions and advice to seek medical attention if needed. The manufacturer is Guangzhou Yilong Cosmetics Co., Ltd in China.*

label - 003

label - 003

This is a description of a wax set that includes pre-wax and after-wax products. The pre-wax cleanser removes lotions and residues from the skin, preparing it for waxing. The after-wax oil hydrates and soothes the skin while helping to remove any wax residue. The set also includes directions for safe use and a caution to discontinue use in case of allergic reactions. The manufacturer is Guangzhou Yiong Cosmetics Co. Ltd.*

* The product label images have been analyzed using a combination of traditional computing and machine learning techniques. It should be noted that the descriptions provided may not be entirely accurate as they are experimental in nature. Use the information in this page at your own discretion and risk.