Data Analyst

Job Locations US-NJ-Jersey City
ID
2025-12232
Category
Information Technology
Position Type
Regular Full-Time

Overview

Imperial Dade, a leading North American distributor, has a Data Analyst role available ON-SITE in Jersey City, NJ! Join a strong and continuously evolving group, helping to continue to grow our business.

 

If you’re eager for your next opportunity, Imperial Dade is a great place to take that next step.

 

The Data Analyst within the D&A Data Quality team is tasked with optimizing data from 60+ different ERP systems, utilizing programming and tools to transform raw data into production data. Your work will enable faster data-driven decision-making for the organization

 

Salary: $80,000 to $90,000K

 

 

Imperial Dade is the leading independently owned and operated distributor of foodservice packaging and janitorial supplies in North America. As a provider of customized supply chain solutions, we serve customers in many business-to-business market segments including restaurants, grocery stores, healthcare, sports and entertainment, and cruise lines. Founded in 1935 and headquartered in New Jersey, Imperial Dade serves as a mission-critical partner to more than 120,000 customers through our footprint of 130+ branches.

 

**All correspondence will come directly from Imperial Dade and not a personal email address.*

Responsibilities

You will:

  • Perform exploratory and statistical data analysis to uncover actionable insights
  • Work end-to-end on datasets: acquire, clean, transform and preprocess data
  • Build, test, and maintain Python-based analytics scripts and models
  • Develop and manage simple CI/CD workflows to automate data tasks and reports
  • Use Git for version control and collaboration on data projects (branching, pull requests)
  • Own acquisition data onboarding projects - Validate, cleanse, map & aggregate incoming raw data
  • Collaborate with business teams to translate requirements into data solutions
  • Support the integration of analytics models into the production workflow

Qualifications

You have:

  • 2-4 years of relevant Data Analysis work experience
  • Bachelor’s degree in Data Science, Computer Science, Information Systems or related field of study 
  • Comfort with handling, cleaning, and analyzing structured and semi-structured datasets
  • Experience with SQL and working with relational databases
  • Strong proficiency in Python (Pandas, NumPy, Scikit-learn or similar libraries)
  • Basic understanding of CI/CD pipelines for automating workflows and deployments
  • Knowledge of cloud platforms (Azure, AWS, or GCP)
  • Exposure to data pipeline tools (Airflow, Prefect, or similar)
  • Experience working with APIs for data integration and BI tools (Tableau, Power BI, or Looker

 

 

 

 

We offer a dynamic environment for our more than 7,500 employees to work, learn, and grow professionally. We value our people and strive to create rewarding career opportunities by offering competitive salaries and benefits (medical, dental, vision), a 401(k) program with company match, life insurance, a generous paid time off package, educational reimbursement, paid family leave, and adoption assistance. We are excited to invite talented individuals with a passion for excellence to join our team.

 

Imperial Dade is an EEO Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, gender identity, sexual orientation, pregnancy, status as a parent, national origin, age, disability (physical or mental), family medical history, or genetic information, political affiliation, military service, or other non-merit-based factors.

 

Our company is a Fair Chance employer, committed to providing opportunities for qualified individuals with past justice system involvement. We believe in assessing candidates based on their skills and experience. A conditional offer of employment will be contingent upon the successful completion of a background check, consistent with applicable federal, state, and local laws.

Options

Sorry the Share function is not working properly at this moment. Please refresh the page and try again later.
Share on your newsfeed