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Remote Data Visualization Engineer Jobs in Pennsylvania

Data Engineer AI

North East, PA · On-site +1

$105K - $127K/yr

Engineering for Data Science: Build and maintain Feature Stores and specialized datasets optimized ... LI-TS1 #remote Sedgwickis an Equal Opportunity Employer and a Drug-Free Workplace. If you're ...

The CERT Division of the Software Engineering Institute (SEI) is seeking applicants for the role of ... Additionally, we work in generative AI and large language models, data visualization, security ...

... visualization tools. This competency ensures the manager can effectively handle complex data sets ... KR1 #LI-Remote The Hershey Company is an Equal Opportunity Employer. The policy of The Hershey ...

$92K - $200K/yr

Approval of remote and hybrid work is not guaranteed regardless of work location.For additional ... data-oriented programming languages and visualization software * Develop and apply algorithms and ...

Data Visualization: Skilled in creating clear, informative visualizations to communicate findings ... Programming: Proficiency in statistical software such as R, or SAS, for data analysis and ...

$115K - $173K/yr

For additional information on remote work at Penn State, seeNotice to Out of State Applicants. POSITION SPECIFICS We are searching for an Autonomy and Data Fusion Engineer to join the Advanced ...

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Remote Data Visualization Engineer information

What is the difference between Remote Data Visualization Engineer vs Data Analyst?

AspectRemote Data Visualization EngineerData Analyst
Required SkillsData visualization tools, programming (Python, SQL), data storytellingData manipulation, statistical analysis, reporting
Work EnvironmentCollaborates with data teams, software developers, and designers remotelyWorks with business teams, often in office or remote settings
Industry UsageTech, finance, marketing, and product companiesBusiness, healthcare, finance, and research sectors

The Remote Data Visualization Engineer focuses on creating visual representations of data using specialized tools and programming, often working closely with development teams. Data Analysts primarily interpret data, perform statistical analysis, and generate reports. While both roles require data skills, visualization engineers emphasize technical visualization expertise, whereas analysts focus on data interpretation and insights.

What are the most commonly searched types of Data Visualization Engineer jobs in Pennsylvania? The most popular types of Data Visualization Engineer jobs in Pennsylvania are:
What cities in Pennsylvania are hiring for Remote Data Visualization Engineer jobs? Cities in Pennsylvania with the most Remote Data Visualization Engineer job openings:
Data Engineer AI

Data Engineer AI

Sedgwick

North East, PA • On-site, Remote

$105K - $127K/yr

Other

Re-posted yesterday


Sedgwick rating

7.5

Company rating: 7.5 out of 10

Based on 315 frontline employees who took The Breakroom Quiz

191st of 281 rated insurance


Job description

By joining Sedgwick, you'll be part of something truly meaningful. It's what our 33,000 colleagues do every day for people around the world who are facing the unexpected. We invite you to grow your career with us, experience our caring culture, and enjoy work-life balance. Here, there's no limit to what you can achieve.

Newsweek Recognizes Sedgwick as America's Greatest Workplaces National Top Companies

Certified as a Great Place to Work

Fortune Best Workplaces in Financial Services & Insurance

Data Engineer AI

Role Overview

As a Senior Data Engineer within the Transformation Office, you are the hands-on architect of the data supply chain for our most advanced initiatives. You will be responsible for the "heavy lifting" required to fuel Data Science models and AI applications with high-fidelity data. Your mission is to build the pipelines that bridge our legacy on-prem systems (Mainframes, SQL Server, DB2) with our modern Snowflake environment and AWS/Azure AI stacks. You are a "day-one" builder who ensures that data is not just moved, but engineered for the specific requirements of model training, feature stores, and RAG-based AI systems.

Key Responsibilities

Hybrid Data Pipeline Execution: Design and implement robust ETL/ELT pipelines to ingest data from legacy on-prem sources, AWS (S3/RDS), and Azure (Blob/SQL), centralizing it for consumption in Snowflake and AI services.

Engineering for Data Science: Build and maintain Feature Stores and specialized datasets optimized for machine learning, ensuring Data Scientists have immediate access to clean, versioned, and statistically valid data.

Engineering for AI (RAG & LLMs): Develop the data pipelines required for Generative AI, including the automated extraction, chunking, and loading of unstructured data into vector stores across AWS and Azure.

Snowflake Power-User Execution: Act as the technical lead for our Snowflake data warehouse, implementing sophisticated data modeling, Snowpipe automation, and compute optimization to support high-concurrency AI workloads.

Legacy "Back-Reach" Engineering: Execute non-invasive data extraction patterns to unlock mission-critical data from decades-old on-premise systems without disrupting core business operations.

Multi-Cloud Orchestration: Manage complex, cross-platform data workflows using Airflow, Step Functions, or Azure Data Factory, ensuring the synchronization of data across our multi-cloud AI posture.

IT & Security Diplomacy: Partner directly with central IT, Database Administrators, and Security teams to solve connectivity hurdles (PrivateLink, IAM, firewalls) and secure "license to operate" for new data flows.

Data Quality for Model Integrity: Implement automated validation and observability layers to detect data drift and quality issues that could compromise the accuracy of production AI and Data Science models.

Cost & Performance Management: Drive the efficiency of our data stack by optimizing storage and query performance in Snowflake, AWS, and Azure to manage the ROI of the Transformation Office.

Direct Stakeholder Collaboration: Work as a dedicated engineering partner to MLOps and Data Science teams to rapidly iterate on data requirements for evolving AI use cases.

Qualifications

Education: Bachelor's degree in Computer Science, Data Engineering, or a related field is required. A Master's degree is highly desirable.

Proven Execution: 6+ years of hands-on data engineering experience, with a track record of building production-grade pipelines for Data Science and AI in multi-cloud environments.

Snowflake Mastery: Expert-level proficiency in Snowflake architecture, including data sharing, performance tuning, and the integration of Snowflake with external cloud AI services.

Multi-Cloud Proficiency: Advanced, hands-on knowledge of AWS (S3, Glue, Lambda) and Azure (Data Factory, Synapse) data services.

Technical Stack: Mastery of Python, SQL, and PySpark. Deep experience with data orchestration and containerization (Docker).

Legacy Expertise: Proven ability to interface with "old world" tech (on-premise SQL, Mainframe extracts, flat files) and transform it for modern cloud consumption.

AI/DS Fluency: A strong understanding of the specific data needs for Machine Learning (feature engineering) and Generative AI (vectorization and embedding pipelines).

Execution Mindset: A "get-it-done" attitude, capable of navigating enterprise bureaucracy and technical debt to ship code at the speed required by a Transformation Office.

#LI-TS1 #remote

Sedgwickis an Equal Opportunity Employer and a Drug-Free Workplace.

If you're excited about this role but your experience doesn't align perfectly with every qualification in the job description, consider applying for it anyway! Sedgwick is building a diverse, equitable, and inclusive workplace and recognizes that each person possesses a unique combination of skills, knowledge, and experience. You may be just the right candidate for this or other roles.

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