Recruitment and Staffing Soultion
Senior Associate, Data Platform
Location
California
Posted
100 days ago
Salary
0
Seniority
Senior
Job Description
Senior Associate, Data Platform
TWO95 International, Inc
• Strong experience with both Adobe Analytics • Experience in AA strategy and implementation expertise • Implementation experience with Adobe Launch • Understanding of web analytics tool basics: tags, cookies, variables. • Strong understanding of tag management systems: tags, rules, and variables • Experience in Vue.JS, JavaScript, jQuery, CSS and HTML skills, and able to be a leader in this area of expertise • Strong attention to detail and QA abilities • A solid understanding of advertising, marketing and strategic brand management and how to best leverage these in a digital environment • Experience presenting in front of groups, to clients, and via web conference • History of working with new business teams on requests for proposal/information and presenting analytics documentation demonstrating agency skillsets. • Experience in creating case studies, point of view documents or white papers in line with your job function in analytics. • Work with internal team to continually streamline processes and find efficiencies in the day-to-day work processes done by the data platforms team. • Experience working on testing, targeting and personalization projects with both targeting and optimization tools and data management platforms (DMP).
Job Requirements
- Strong experience with both Adobe Analytics
- Experience in AA strategy and implementation expertise
- Implementation experience with Adobe Launch
- Understanding of web analytics tool basics: tags, cookies, variables.
- Strong understanding of tag management systems: tags, rules, and variables
- Experience in Vue.JS, JavaScript, jQuery, CSS and HTML skills, and able to be a leader in this area of expertise
- Strong attention to detail and QA abilities
- A solid understanding of advertising, marketing and strategic brand management and how to best leverage these in a digital environment
- Experience presenting in front of groups, to clients, and via web conference
- History of working with new business teams on requests for proposal/information and presenting analytics documentation demonstrating agency skillsets.
- Experience in creating case studies, point of view documents or white papers in line with your job function in analytics.
- Work with internal team to continually streamline processes and find efficiencies in the day-to-day work processes done by the data platforms team.
- Experience working on testing, targeting and personalization projects with both targeting and optimization tools and data management platforms (DMP).
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