Sale!

Nip + Fab Dragon’s Blood Fix Plumping Serum for Face with Hyaluronic Acid, Pro-Age Serum, Hydrating, Moisturizing for Fine Lines and Wrinkles, 50 ml

Original price was: £19.95.Current price is: £11.90.

Description


Price: £19.95 - £11.90
(as of Jul 12, 2024 13:02:55 UTC – Details)



A lightweight serum that delivers an instant shot of moisture to dehydrated skin. Hyaluronic acid and delicate velvet flower blend together for an intensive hydrating effect that leaves skin feeling comforted and looking plumper with the appearance of fine lines and wrinkles reduced.
Is discontinued by manufacturer ‏ : ‎ No
Product Dimensions ‏ : ‎ 3.56 x 3.56 x 13.21 cm; 90 g
Manufacturer ‏ : ‎ NIP+FAB LTD
ASIN ‏ : ‎ B00OYT1G3I
Item model number ‏ : ‎ SKDBSRM50

INTENSIVE HYDRATION – Nip + Fab Dragon’s Blood Fix Plumping Serum is formulated for intensive hydration. An extremely hydrating and moisturizing serum for face, use it to illuminate the skin
PLUMPING AND MOISTURIZING FEATURES – Specially formulated Dragon’s Blood plumping serum for face that plumps while it moisturizes, A great Pro-Age serum, to deliver an instant shot of moisture to the skin
COMBAT FINE LINES AND WRINKLES – This intensive hydrating face serum will leave your skin feeling smooth and looking plumper to combat the appearance of fine lines and wrinkles
MOISTURE-BOOSTING HYALURONIC ACID – Moisture-boosting face serum with hyaluronic acid for skin hydration, Excellent water retention capabilities to keep skin soft, plump, and hydrated
FOR A FRESH, DEWY LOOK – 50 ml dragon’s blood facial serum. The cactus flower in the formula softens skin for a silky feel, Use morning and evening before your moisturiser for a fresh and dewy look

Customers say

Customers like the weight, performance, and absorption of the skin serum. For example, they mention it glides across the skin, works plumping, and absorbs very fast. They’re also happy with the effect on skin, quality, and value. That said, some complain about the pump. Opinions are mixed on scent.

AI-generated from the text of customer reviews