Data Analyst

Location US-
ID 2025-2056
Category
Information Technology
Position Type
Regular Full-Time
Remote
Yes

Overview

Workforce Opportunity Services (WOS) is a leading 501(c)(3) nonprofit dedicated to developing the skills of high-potential individuals who may not have access to career opportunities. Through strategic partnerships, WOS connects motivated talent with organizations seeking to expand their workforce with skilled professionals.

 

Utilizing a scientifically-based model derived from research conducted at Columbia University, we recruit, educate, train, and place high-potential talent with leading organizations around the world.


We're seeking a strategic, insights-driven Data Analyst to join our team and elevate our data capabilities beyond reporting dashboards. Positioned above a traditional Power BI Analyst, this role is responsible for translating complex data into actionable insights that influence key business decisions. You’ll work closely with stakeholders across departments to build scalable data models, drive data strategy, and develop advanced analytics that go beyond visualization.

Responsibilities

  • Develop and maintain robust data models that support business operations, forecasting, and performance monitoring using tools like Databricks, Snowflake, and relational databases.
  • Conduct deep-dive analyses to uncover trends, anomalies, and opportunities for growth or improvement.
  • Collaborate with stakeholders to understand business questions and translate them into data-driven insights.
  • Optimize and expand reporting infrastructure beyond Power BI — integrating SQL, Databricks notebooks, Snowflake queries, Python, R, or other tools to support scalable solutions.
  • Partner with Data Engineering and IT teams to ensure data integrity, availability, and automation of key data pipelines, particularly in cloud environments using Snowflake and Databricks.
  • Present clear, actionable insights to both technical and non-technical stakeholders.
  • Mentor junior analysts and contribute to data literacy across the organization.

Qualifications

Candidate Profile:

  • Bachelor's or Master’s degree in Data Science, Statistics, Computer Science, Business Analytics, or related field.
  • 3+ years of experience in data analytics, with proven success influencing business outcomes.
  • Proficiency in SQL and experience working with relational databases and cloud-native platforms like Snowflake.
  • Strong experience with Power BI and other BI tools (e.g., Tableau, Looker).
  • Familiarity with scripting languages (Python, R) for data analysis and automation is a plus.
  • Hands-on experience or working knowledge of Databricks for data preparation, pipeline development, and collaborative analytics workflows.
  • Understanding of data governance, ETL processes, and cloud platforms (e.g., Azure, AWS, GCP) is desirable.
  • Excellent communication and storytelling skills with the ability to translate data into business value.

Preferred Skills:

  • Experience in A/B testing, statistical modeling, or predictive analytics.
  • Exposure to CRM, ERP, or enterprise data systems.
  • Ability to manage multiple projects in a fast-paced environment.

Additional Information

Schedule:

  • Full-Time

Salary:

  • $35.00/Hour (Plus Benefits)

Location:

  • Remote
  • Preferred Location: Dallas, TX

Benefits

  • Low Cost Health Insurance (after 90 days Full Time) 
  • Paid Vacation (Accrual begins immediately - Available After 90 days Full Time) 
  • Paid Company Holidays 
  • Education (Tuition Assistance, Student Loan Reimbursement or Professional Development) 
  • Individual Mentor 

About Us

Our vision is to empower early-career professionals to achieve long-lasting professional success and financial independence while supporting companies in building workplaces that reflect and engage with the communities they serve. We are in the business of creating dynamic partnerships that transform lives.  

Pay Range

Up to USD $35.00/Hr.

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