Data Science Lead

Purchase, New York
US$130000 - US$150000 per annum

Data Science Lead
Logistics & Supply Chain
New York City Metropolitan Area
$130,000 - $150,000 + Benefits

Are you passionate about adding value to an international enterprise that is a global leader within its niche market? A leading Logistics & Supply Chain company is looking for an experienced Data Science Lead to conduct advanced statistical analysis and implement Machine Learning models to meet business growth in Westchester, New York.


As Data Science Lead, you will spearhead the advanced statistical analyses of large amounts of data from various data sources as well as the creation of Machine Learning models to identify new business opportunities. You will be responsible for:

  • Using SQL to aggregate & query various types of data (i.e., 1st party, 3rd party, customer, survey)
  • Using Python and/or R to build various Machine Learning models and statistical models
  • Working with data warehouse and Analytics team to perform ongoing & fleet analysis
  • Using Tableau, Power BI, and/or Looker to build dashboards with data-driven recommendations


  • Progressive commercial Data Science, Machine Learning & Artificial Intelligence experience
  • Proficient in using SQL to extract data from data warehouses, and aggregate & query data
  • Proficient in using Python & R to build various advanced statistical models & predictive models
  • Proven commercial experience developing an array of Machine Learning (ML) models
  • Broad knowledge of Artificial Intelligence, Data Science & Natural Language Processing concepts
  • Proficient in Business Intelligence (BI) tools such as Tableau, Power BI, and/or Looker
  • Strong understanding of the broader Logistics, Shipping, Supply Chain & Transportation industry
  • Proven ability to lead & manage large-scale projects with cross-functional stakeholders
  • Strong verbal & written communication, negotiation & presentation skills across the business
  • Master's degree in Business Analytics, Computer Science, Data Science, Engineering, Mathematics, Physics, Predictive Analytics, Statistics, or related field; Ph.D. preferred


As Data Science Lead, you can expect to make up to $150,000 base salary (depending on experience).


Please register your interest by submitting your resume to George Little via the apply link on this page.


Data Science, Data Scientist, Advanced Analytics, Machine Learning (ML), Artificial Intelligence (AI), Natural Language Processing (NLP), Predictive Model, Predictive Analytics, Statistical Analysis, Statistical Model, Python, Pandas, R, SQL, Tableau, Power BI, Looker, Business Intelligence (BI), Logistics & Supply Chain, Supply Chain Analytics, Fleet Analysis, Data Warehouse, AWS, Azure, Google Cloud Platform (GCP), Logistic Regression, Linear Regression, Regression Model, Tree-Based Model, Neural Network, Decision Tree, Cluster Analysis, Clustering, Segmentation, Supervised Learning, Unsupervised Learning, Deep Learning, Trend Analysis, New York, Westchester, A/B Test, XGBoost Model, Time-Series Analysis

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Purchase, New York
US$130000 - US$150000 per annum
  1. Permanent
  2. Statistical Analyst

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Harnham blog & news

With over 10 years experience working solely in the Data & Analytics sector our consultants are able to offer detailed insights into the industry.

Visit our Blogs & News portal or check out our recent posts below.

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