Senior Manager, Advanced Analytics

New York
US$150000 - US$165000 per annum

Senior Manager, Advanced Analytics

Life Sciences

$140,000 - 165,000

New York/New Jersey/Remote, United States

A renowned Life Sciences enterprise is looking to add multiple resources to a new and exciting division under their BI and Analytics umbrella. If you are proficient in Python/SQL/Tableau and have no problem being customer-facing in an individual contributor capacity, then this can be a great opportunity for you!

THE ROLE- Senior Manager, Advanced Analytics

In this capacity, you will be responsible for driving the predictive initiatives for an organization that is an all-encompassing conglomerate within the Life Sciences vertical. You will ultimately be tasked with aiding the BI/Analytics division in becoming more predictive and prescriptive in nature while also helping them to understand the broad sense of the market from an insights perspective. You will be well versed in both Data Science and Advanced Analytics principles to draw these particular insights while simultaneously being customer-facing to grow sales organically.

YOUR SKILLS AND EXPERIENCE:

  • Bachelor's degree in Mathematics, Statistics, Computer Science, or related field. Master's preferred.
  • 7+ years in a commercial Insights-driven/BI role required.
  • Experience with advanced statistical modeling, primarily using SQL, Python, or R needed.
  • Deep understanding of using raw data to draw insights, including the entirety of the Data & Analytics landscape.
  • Great communication skills (customer-facing) and the ability to communicate trend analysis to both technical and non-technical audiences.
  • Ample experience with ThoughtSpot or similar Query-based BI tools.
  • Exposure to multiple Machine Learning and Advanced Analytics initiatives.

BENEFITS - Senior Manager, Advanced Analytics

As a Senior Manager of Advanced Analytics, you can expect to earn up to $165,000 (depending on experience) + highly competitive benefits

HOW TO APPLY?:

Please register your interest by sending your Resume to Greffen George via the Apply link on this page

KEYWORDS:

Python, R, SQL, Health Care, Agriculture, Tableau, PowerBI, Trend Analysis, Analytics, Insights, Statistics, Quantitative, Machine Learning, Data Science, Regression, Thoughtspot

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101278/GG15
New York
US$150000 - US$165000 per annum
  1. Permanent
  2. Customer Insight

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