Search Engine Marketing Specialist - REMOTE

New York
US$90000 - US$110000 per annum

SEM Manager

New York or REMOTE

$90,000 - $110,000

Are you a curious, search marketing expert who wants to take ownership of the channel at a global, scale-up tech company? This is a fully remote opportunity to manage an 8 figure annual budget for the business's most critical marketing channel. The power will be totally in your control when it comes to budget, strategy, and execution of best in class Paid Search (PPC/SEM) campaigns.

The Company

A global D2C SaaS scale-up that operates in over 100 countries. They are sustainable and eco-conscious as a business and have achieved multiple rounds of investment so far.

The Role

As the SEM Manager, you will take the company's D2C paid search/search engine marketing campaigns to the next level. Applying your subject matter expertise of the Google Marketing suite (Google AdWords, Google Shopping), you will love getting your hands dirty and using data and analytics to drive paid media optimization. You'll have a 7-figure budget at your disposal, with the opportunity to grow the channel to the best of your ability.

In particular, you can expect to:

· Design and implement performance-driven paid search campaigns (using Google AdWords and Google Shopping)

· Deliver ground-breaking digital insights that will have an enormous impact on the business

· Leverage the best SEM and paid media platforms and tools, staying up to date with industry trends (Google AdWords, Yahoo, Bing Paid Search, Google Shopping, Kenshoo, Marin)

· Influence other channels including Paid Social (Facebook, Instagram)

· Analyze data and deliver insight on-site and media campaign performance

· Oversee analytics strategies across digital analytics tools (Google Analytics, Adobe Analytics)

Your Skills and Experience

· Bachelor's Degree required

· Working experience in a PPC or SEM position

· Working experience managing campaigns hands-on in Google AdWords/Google Shopping

· Deep knowledge of cross-channel digital marketing campaigns

· Ability to pitch findings and ideas to stakeholders

· Experience managing 7 figure paid search budgets

SALARY AND BENEFITS

The successful candidate will secure a salary of $90,000 - $110,000 and benefits depending on experience

HOW TO APPLY

Please click 'Apply Now' above.

KEYWORDS

Google Analytics, Adobe Analytics, Bing, AdWords, Excel, MS Excel, Insight, insights, shopper, Kenshoo analytics, technology, campaign, Tableau, DSP, database, acquisition, retention, marketing, digital, SEM, SEO, paid search, display, dashboard, Omniture, site catalyst, web analytics, CoreMetrics, webtrends, website, Google Tag Manager, Tag Manager, Dynamic Tag Manager, HTML, CSS, Java Script, Flash, JQuery

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LH3829
New York
US$90000 - US$110000 per annum
  1. Permanent
  2. Media Analyst & Adtech

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