at Google
Location
New York, NY, USA; Chicago, IL, USA
Compensation
$142k–$207k USD
Type
full time
Posted
1 weeks ago
Market range · company + function + seniority
p25 · target · p75 · n=389
Posted $207k · in the market band
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As a Principal Data Transformation Lead (DTL), you will be at the forefront of a major shift, helping some of the world's most innovative tech companies revolutionize their approach to marketing through the strategic adoption of AI. You won't just be implementing solutions; you'll be shaping the future of marketing for these industry leaders. You will partner with cross-functional teams, including sales, data science, and engineering, to drive the adoption of innovative AI-powered marketing strategies. You will act as a trusted advisor, translating client needs into technical roadmaps and ensuring successful implementation. You'll play a pivotal role in defining best practices and influencing the broader industry, making a real impact on the success of our clients and Google's growth. You'll also be responsible for fostering excellent relationships with C-level executives, guiding them through the strategic implications of AI and data-driven marketing.
Google's Large Customer Sales (LCS) teams are strategic partners and industry thought leaders for the world's leading brands and agencies. We partner with clients to navigate industry shifts and drive significant business performance. You will have the opportunity to sell at the forefront of technology, collaborating with executives, influencing market-shaping strategies, and delivering measurable results that significantly impact major global businesses.
Individual pay is determined by factors including job-related skills, experience, and relevant education or training.
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