Senior Manager - Supply Chain Optimization

Boston, Massachusetts
US$125000 - US$140000 per year + Benefits

Senior Manager - Supply Chain Optimization
E-Commerce Company
$125,000- $140,000 + Benefits
Greater Boston Area

Are you a master of analyzing rich data to optimize processes within business operations and logistics? Are you looking to combine your entrepreneurial mindset with advanced analytics to create methodologies that results in optimized supply chain and better customer service? Do you have a statistical background using SQL, Python and R to build models that optimize logistics? If you answered yes then continue reading as I have the perfect role for you!

THE COMPANY:

This company has one of the largest e-commerce presences in the world with over 10 million active customers and needs your help and guidance on how to properly leverage their data to optimize supply chain operations using advanced analytics!

THE ROLE:

As the Senior Manager of Supply Chain Optimization, you will be leading a team of Data Scientists to deliver dynamic plans for inventory optimizations within warehouses across multiple regions. In addition to you will

  • Identify potential risks within supply chain routes and help the organization to mitigate these risks.
  • Work with data across multiple areas of the business to understand areas for improvement and optimization and then creating plans to implement strategies that solve these inefficiencies.
  • Utilizing R, Python and SQL to create statistical models that identify areas of improvement in order to improve business logistics and improve path around the warehouse.
  • Create container load plans for optimal transport routes.

YOUR SKILLS AND EXPERIENCE:

The successful Senior Manager of Supply Chain Optimization will be/have:

  • 3+ years experience in Product Management
  • 1+ years managing Product Managers
  • 2+ years of commercial experience building statistical models using R or Python
  • Knowledge and ability to use and SQL
  • BA / BS in a relevant field including Mathematics, Statistics, Computer Science or equivalent experience

BENEFITS:

  • Competitive salary of $125,000 - $140,000

HOW TO APPLY:

Please register your interest by sending your CV to Brandon Shteyman via the link provided on this page

KEYWORDS: Supply Chain, Product, SQL, Python, R, Analytics, Strategy, Data Science, Product, Retail, eCommerce Advanced Analytics, Business, Time-Series, Regression, Statistical Analysis, Predictive Analytics, Model, Modell, Modeling, Modelling, Senior, Manage, Manager

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64610/BS
Boston, Massachusetts
US$125000 - US$140000 per year + Benefits
  1. Permanent
  2. Statistical Analyst

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