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Performance Marketer, Paid Acquisition

AI EngineerMachine Learning EngineerFull TimeRemoteJuniorTeam 1-10H1B No SponsorCompany SiteLinkedIn

Location

Canada

Posted

10 days ago

Salary

0

Seniority

Junior

Bachelor Degree1 yr expEnglish

Job Description

Performance Marketer, Paid Acquisition

Atomic - Remote Jobs

• You'll manage and scale paid campaigns across Meta, TikTok, and Google — and help expand into newer channels like Reddit, Snapchat, and Quora. • Day to day that means setting up and optimizing campaigns, translating performance data into creative briefs, keeping reporting accurate and up to date, and flagging what's working and what isn't. • If you study ads while scrolling, save hooks that catch your eye, and naturally think about why certain creatives convert — this role was built for you.

Job Requirements

  • 1–5 years of hands-on paid campaign management experience
  • Strong working knowledge of at least one major platform — Meta, TikTok, or Google
  • Background in B2C digital products, consumer apps, or subscription businesses (dating, wellness, DTC, or social are strong signals)
  • Comfortable with performance metrics: CAC, ROAS, CPA, CTR, CVR
  • Familiarity with tracking tools like Voluum or GA4
  • Fluent English and solid remote discipline
  • Bonus: agency background, experience in sensitive verticals, adult/NSFW channel exposure, or managing budgets at $10K+/month per channel.

Benefits

  • 20 days PTO
  • $100/month health & wellness allowance + unlimited therapy sessions
  • Learning & development budget
  • Co-working budget, company laptop, and monitor budget
  • Premium AI tools access
  • Annual in-person team gathering

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