2

Remote Data Analyst R Programming Jobs in Kentucky

Collaborate with data engineers, business analysts, and business stakeholders to translate business ... Ability to orchestrate and influence remote teams, ensuring successful implementation of complex ...

Remote/Hybrid Department: Revenue Operations | Team Periscope About the Role & Team Team Periscope ... Bachelor's degree in business, data analytics, data science, healthcare, engineering, or a related ...

Senior Analyst

Lexington, KY · On-site +1

$77K - $102K/yr

... remote sensing, data management, quality control, and project delivery teams. Work Environment ... Developers, IT, Project Management Professionals, and more. Geospatial Analysis and Product ...

Explain advanced analytic and modeling procedures in the language that audiences with no predictive ... Proficiency in statistical programming languages such as R, Python, SAS, or similar, alongside ...

New

Senior Analyst

Lexington, KY · On-site +1

$77K - $102K/yr

... remote sensing, data management, quality control, and project delivery teams. Work Environment ... fields, including Professional Engineers, Professional Land Surveyors, Architects ...

next page

Showing results 1-20

People also search for

Remote Data Analyst R Programming information

What are the key skills and qualifications needed to thrive as a Remote Data Analyst specializing in R Programming, and why are they important?

To thrive as a Remote Data Analyst specializing in R Programming, you need strong statistical analysis skills, proficiency in R, and a background in mathematics, statistics, or a related field. Experience with data visualization tools, databases (such as SQL), and familiarity with data science platforms or certifications like the Data Science Professional Certificate are commonly required. Effective communication, problem-solving abilities, and self-motivation are crucial soft skills for excelling in remote and collaborative environments. These skills ensure accurate data-driven insights, efficient workflow, and successful teamwork across distributed teams.

How does a Remote Data Analyst specializing in R Programming typically collaborate with team members across different locations?

As a Remote Data Analyst focused on R Programming, collaboration is often facilitated through digital communication tools such as Slack, Zoom, and project management platforms like Jira or Trello. Analysts regularly share scripts, data visualizations, and reports using version control systems like Git, ensuring code transparency and reproducibility. Team meetings and code reviews are scheduled to align on project goals, troubleshoot challenges, and maintain data integrity. Building strong communication skills and documenting code thoroughly are essential for effective teamwork in a remote environment.

What is the difference between Remote Data Analyst R Programming vs Remote Data Analyst Python?

AspectRemote Data Analyst R ProgrammingRemote Data Analyst Python
Required SkillsProficiency in R, data visualization, statistical analysisProficiency in Python, data manipulation, machine learning
Work EnvironmentRemote, data-focused roles in research, healthcare, financeRemote, data-driven roles in tech, e-commerce, finance
Common CertificationsR certifications, data analysis coursesPython certifications, data science courses

Both roles involve remote data analysis but differ mainly in programming language expertise. R-focused analysts excel in statistical analysis and visualization, often in research or healthcare sectors. Python analysts are versatile in data manipulation and machine learning, commonly working in tech or e-commerce. Understanding these differences helps job seekers target roles aligned with their skills and industry preferences.

What is a Remote Data Analyst R Programming?

A Remote Data Analyst R Programming is a professional who analyzes and interprets data using the R programming language while working from a remote location. Their primary responsibilities include collecting, cleaning, and visualizing data, as well as performing statistical analyses to help organizations make data-driven decisions. These analysts often collaborate with teams online and use R to automate processes, generate reports, and create predictive models. Remote work allows them flexibility and access to a wider range of employers, while R provides powerful tools for handling complex data tasks.
What are the most commonly searched types of Data Analyst R Programming jobs in Kentucky? The most popular types of Data Analyst R Programming jobs in Kentucky are:
What are popular job titles related to Remote Data Analyst R Programming jobs in Kentucky? For Remote Data Analyst R Programming jobs in Kentucky, the most frequently searched job titles are:
What job categories do people searching Remote Data Analyst R Programming jobs in Kentucky look for? The top searched job categories for Remote Data Analyst R Programming jobs in Kentucky are:
What cities in Kentucky are hiring for Remote Data Analyst R Programming jobs? Cities in Kentucky with the most Remote Data Analyst R Programming job openings:
Infographic showing various Remote Data Analyst R Programming job openings in Kentucky as of June 2026, with employment types broken down into 72% Full Time, and 28% Contract. Highlights an 100% Remote job distribution.
Senior Data Modeler

Senior Data Modeler

BrightSpring Health Services

Louisville, KY • Remote

$130K/yr

Full-time

Posted 16 days ago


BrightSpring Health Services rating

4.6

Company rating: 4.6 out of 10

Based on 61 frontline employees who took The Breakroom Quiz

213th of 228 rated social care providers


Job description

Overview

We are seeking a highly skilled Senior Data Modeler to join our Data Engineering & Architecture team. This role will play a critical part not only in designing, developing, and maintaining logical and physical data models, but also in architecting, building, and optimizing the data pipelines and platforms that power our enterprise data warehouse, analytics ecosystem, and business intelligence solutions. This position ensures that data assets are structured, engineered, and delivered in a scalable, high performance, and user-friendly manner across the organization.


Responsibilities

  • Design, implement, and optimize conceptual, logical, and physical data models to support enterprise reporting, analytics, and data science use cases.
  • Collaborate with data engineers, business analysts, and business stakeholders to translate business requirements into robust data structures.
  • Define and enforce data modeling standards, best practices, and naming conventions across the organization.
  • Develop and maintain data dictionaries, ER diagrams, and metadata documentation to ensure clarity and consistency.
  • Analyze existing data models and workflows to identify opportunities for improvement in performance, scalability, and maintainability.
  • Contribute to the development of enterprise data architecture patterns and reusable modeling frameworks.
  • Architect, build, and optimize scalable ETL/ELT pipelines using modern data engineering frameworks and cloud technologies.
  • Lead the design and development of distributed data processing workflows using Databricks, PySpark, Azure SQL and/or Azure Synapse.
  • Develop and optimize data ingestion frameworks (batch and streaming) from diverse sources including FHIR, APIs, files, databases, and event streams.
  • Ensure data pipelines meet enterprise standards for performance, reliability, observability, and recoverability.
  • Perform advanced SQL, PySpark, or Python optimization to maximize query speed and dataset availability for analytics and downstream applications.
  • Oversee data lake and data warehouse architecture, including partitioning strategies, delta lake management, schema evolution, and performance tuning.
  • Troubleshoot, diagnose, and resolve complex data engineering and pipeline issues across cloud environments.
  • Mentor junior engineers and modelers, influencing engineering patterns, coding standards, and architectural direction.
  • Collaborate with security teams to implement proper access controls, encryption, secrets management, and compliance processes.

Qualifications

  • Bachelor’s degree in Computer Science, Information Systems, Data Management, or related field (or equivalent experience).
  • 7–10 years of experience in data modeling, data engineering, dimensional modeling, or data architecture roles.
  • Strong knowledge of relational, dimensional, and NoSQL data modeling techniques.
  • Advanced SQL skills and experience designing for cloud data platforms (Databricks, Synapse, Azure SQL Databases, Redshift, BigQuery, or similar).
  • Expertise in building scalable ETL/ELT processes using modern data engineering tools (Azure Data Factory, Databricks, Synapse Pipelines, SSIS, etc.).
  • Strong proficiency with Python, PySpark, or Scala for data engineering and scripting.
  • Hands-on experience with Azure cloud data services: Azure Data Factory, Azure SQL Database, Azure Synapse Analytics, Azure Data Lake Storage Gen2, Databricks.
  • Experience designing and optimizing data lakes, delta lakehouse architectures, and large-scale distributed data systems.
  • Experience working with DevOps concepts—CI/CD pipelines, Git branching strategies, automated testing, and deployment.
  • Ability to orchestrate and influence remote teams, ensuring successful implementation of complex data solutions.
  • Detail-oriented with excellent organizational skills.
  • Effective working in a cross-functional, dynamic, and remote environment.
  • Strategic thinker with the ability to balance short-term deliverables with long-term platform evolution.

Preferred

  • Hands-on experience designing, building, and operationalizing unified data platforms, including semantic layers, ontologies, and knowledge graphs, to enable AI/ML product development.
  • Experience with enterprise-scale analytics environments and BI tools (Power BI, Qlik, Tableau, Databricks AI/BI Dashboards).
  • Exposure to data governance, data cataloging, and MDM practices.
  • Knowledge of data vault modeling, star schema, and snowflake modeling.
  • Experience designing real-time/streaming data pipelines (Kafka, Event Hubs, Spark Streaming, etc.).
  • Familiarity with API platforms and tools such as Postman or API gateways.
  • Experience tuning large-scale Spark workloads and optimizing cloud compute costs.
  • Strong communication and collaboration skills across both technical and non-technical teams.

Key Competencies

  • Analytical and meticulous mindset with a strong ability to solve complex data design and engineering challenges.
  • Ability to balance short-term deliverables with long-term enterprise strategy.
  • Strong documentation and communication skills for presenting technical concepts to non-technical audiences.
  • Leadership qualities with the ability to mentor and guide junior team members.
  • Ability to think holistically across data modeling, data engineering, and data architecture disciplines.

What BrightSpring Health Services employees say

Pay

Benefits

Hours and flexibility

Workplace

Get the full story on Breakroom