Data Analytics & Engineering - Data Engineer IV- REMOTE

American IT Systems
Atlanta, United States of America
4 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior
Compensation
$ 129K

Job location

Remote
Atlanta, United States of America

Tech stack

Adobe Analytics
Query Performance
Agile Methodologies
Artificial Intelligence
Airflow
Data analysis
Bash
Big Data
Google BigQuery
Continuous Integration
Information Engineering
Data Governance
ETL
Data Visualization
Data Warehousing
Database Queries
Dimensional Modeling
Google Analytics
Hive
Python
Machine Learning
Meta-Data Management
Performance Tuning
Salesforce
SQL Databases
Data Streaming
Tableau
Web Analytics
Workflow Management Systems
Scripting (Bash/Python/Go/Ruby)
Large Language Models
Snowflake
Prompt Engineering
Spark
Generative AI
GIT
Infrastructure Automation Frameworks
Data Lineage
Data Analytics
Kafka
Spark Streaming
Dynamic Data
Presto
Tools for Reporting
Virtual Agents
Looker Analytics
Software Version Control
Data Pipelines
Programming Languages

Job description

We're seeking a data engineer with a strong technical background in data engineering and AI enablement, combined with functional expertise in customer experience insights-specifically in customer support and operations. To excel in this role, you'll need to be passionate about data, adept at managing multiple projects simultaneously, and thrive in a fast-paced environment. You should also possess excellent organizational and presentation skills, be able to build and maintain strong relationships with internal partners and stakeholders, and demonstrate a proven ability to work effectively within cross-functional teams. Data Engineer IV Responsibilities Data Engineering & Architecture - 40% Design, develop, integrate, launch, and maintain scalable data pipelines (batch and streaming) that support multiple use cases across PSO Build and optimize ETL/ELT workflows, data models, and data warehouse architectures to facilitate efficient development of data artifacts Implement data quality frameworks including validation, monitoring, alerting, and lineage tracking to ensure data reliability Develop and manage orchestration workflows (e.g., Airflow, Dataswarm) for scheduling and dependency management of data pipelines Optimize query performance, pipeline efficiency, and storage costs across large-scale data infrastructure Analytics & Visualization - 20% Create interactive and dynamic data visualizations that communicate complex insights to stakeholders Work with various data sources-including customer interactions, feedback, behavioral data, and operational logs-to integrate and build reports that identify pain points and trends Develop and track key performance indicators to measure the effectiveness of customer experience initiatives AI Enablement & Automation - 40% Enable AI/ML-powered analytics by building and maintaining feature pipelines, curated datasets, and model-ready data assets Leverage large language models (LLMs) and generative AI tools to automate data workflows, accelerate insight generation, and enhance self-service capabilities for stakeholders Develop and maintain prompt engineering frameworks, AI-assisted reporting tools, and intelligent automation solutions that scale team productivity Partner with engineering and data science teams to integrate AI/ML model outputs into dashboards and operational workflows Evaluate and implement emerging AI tools and techniques to continuously improve the team's analytics and data engineering capabilities Cross-Functional Partnership Work closely with customer service and operations, product, and engineering teams to integrate data insights into business decisions and drive customer experience improvements Champion data literacy and AI enablement across the organization through documentation, training, and best practice sharing

Requirements

8+ years of experience doing quantitative and operational analyses in a 8+ customer support/service, e-commerce, or order management 8+ organization Strong data engineering skills: experience designing and building production-grade data pipelines, data models, and ETL/ELT processes at scale Proficiency in SQL (complex queries, performance tuning, window functions) and at least one programming language (Python preferred) Experience with data warehousing platforms (e.g., Hive, Presto, Spark, Snowflake, or BigQuery) Experience with workflow orchestration tools (e.g., Airflow, Dataswarm, or equivalent) Experience with data visualization tools such as Tableau, Looker, or equivalent for creating self-service dashboards Demonstrated experience with data quality frameworks, data governance, and data modeling best practices (dimensional modeling, star/snowflake schemas) Hands-on experience with AI/ML enablement-such as building feature pipelines, working with LLM-based tools, or implementing AI-assisted analytics workflows Analytics experience manipulating large datasets to formulate insights and drive solutions Track record of operating independently, managing ambiguity, and delivering results Strong communication skills with experience articulating issues to both technical and non-technical audiences Cross-functional experience, including leading or influencing change through data-driven insights Preferred Qualifications Experience with generative AI tools and frameworks (e.g., prompt engineering, RAG architectures, LLM APIs, or AI agent workflows) Familiarity with version control (Git), CI/CD for data pipelines, and infrastructure-as-code practices Experience with streaming data technologies (e.g., Kafka, Spark Streaming) Knowledge of metadata management, data cataloging, and data lineage tools Background and knowledge of CX/CS operations and metrics Familiarity with customer support platforms (e.g., Salesforce) Experience with digital analytics tools (e.g., Google Analytics, Adobe Analytics) Experience with scripting for automation (Python, Bash) and building internal tooling Familiarity with agile development methodologies Experience working in the high-volume consumer electronics industry Experience working with operations functions, preferably in the customer experience or customer support operations space

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