Manager of Advanced Analytics

Boston, Massachusetts
US$140000 - US$175000 per year

Manager of Advanced Analytics
CPG Organization
$140,000-$175,000
Greater Boston Area

Are you a well-developed manager looking to expand your leadership capabilities by overseeing a team of Data Analysts? If so, I have the perfect role for you! My client is looking for a strong analyst with expertise in SQL and Python or R. In this role you will bring about a hands-on approach whilst guiding junior data analysts in order to best understand customers and their habits.

THE COMPANY:

This company is one of the leading CPG organizations in the world. They made over $1.6bn in 2018 and they are looking to continue their y-o-y growth through best understanding their market, and how to switch consumers from physically going to stores and purchasing their items to going online and subscribing for delivery systems.

THE ROLE:

As a Manager of Advanced analytics focusing on customer conversion, there are multiple hands on responsibilities that will be handed off to you and your team. You will:

  • Oversee a team of analysts that are going to work directly under your guidance and support
  • Actively use SQL and Python or R to best understand the current in-house data
  • Derive data and build predictive models that portray your findings by helping to understand what will convert to the online subscription basis and which customers will not
  • You will help this organization understand customer behavior: why would someone convert vs why would they chose to continue to physically purchase these items
  • Understanding how to reduce churn and actively relay that information over to candidates

YOUR SKILLS AND EXPERIENCE:

  • Master's degree or equivalent in a STEM related field
  • Previous experience leading a team of analysts
  • Expertise in SQL and Python or R
  • Can accordingly derive insights and translate/communicate the information over to other departments such as the marketing team.
  • Proven extensive experience in a customer marketing and analysis role
  • Have experience heading out an entire sector in the analytics field

BENEFITS:

  • Highly competitive salary of $140,000-$175,000 depending on experience level
  • 401K package
  • Paid Days off and Vacation days
  • Travel assistance
  • Health and Dental insurance
  • Tuition reimbursement

HOW TO APPLY:
Please register your interest by sending your CV to Gamou Ngom via the link provided on this page

KEYWORDS:
SQL, Python, R, Data Science, Data Scientist, Data Analyst, Analytics Manager, CPG organization, Analytics, churn, modeling, statistical modeling, optimizing, machine learning, visualization, models, conversion

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62468/GN
Boston, Massachusetts
US$140000 - US$175000 per year
  1. Permanent
  2. Customer Insight

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