E-commerce Ads Specialist (Meta & Google Ads)
Mukti And Kavith Casa LLP is hiring an E-commerce Ads Specialist to manage performance marketing campaigns in the fashion and luxury sector. The role involves creating and optimizing campaigns across Meta and Google platforms while tracking key performance metrics like ROAS and CAC. Candidates must have direct experience in fashion e-commerce and hands-on proficiency with essential tracking and advertising tools. This position reports into the e-commerce team and requires close collaboration with creative and content units.
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Experience
2-5 years
Function
Marketing
Work mode
Onsite, India
Company
Tier 2
What you will work on
Mukti And Kavith Casa LLP is hiring an E-commerce Ads Specialist to manage performance marketing campaigns in the fashion and luxury sector. The role involves creating and optimizing campaigns across Meta and Google platforms while tracking key performance metrics like ROAS and CAC. Candidates must have direct experience in fashion e-commerce and hands-on proficiency with essential tracking and advertising tools. This position reports into the e-commerce team and requires close collaboration with creative and content units.
TAL's take
Mid-tier fashion retail brand offering a standard performance marketing role with clearly defined responsibilities.
The JD provides a highly detailed list of responsibilities across both Meta and Google Ads platforms for a specific fashion brand context.
Must haves
- 2-4 years experience in Meta Ads and Google Ads
- Experience with fashion, apparel, luxury, or lifestyle brands
- Strong understanding of e-commerce and performance marketing
- Hands-on experience with Meta Business Manager, Google Ads, Analytics, and Tag Manager
- Ability to manage large ad budgets efficiently
Tools and skills
Nice to have: shopify.
About the company
unfamiliar company, default mid-tier
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