Data Engineer with Mongo DB-7
Role summary
A full-time Data Engineer role focused on MongoDB expertise is available in Charlotte, NC, or Plano, TX. The position requires a minimum of 10 years of experience, with a primary focus on Data Engineering and secondary expertise in MongoDB. Key responsibilities include designing, implementing, and managing MongoDB architectures, building robust ETL/ELT pipelines, optimizing database performance, ensuring data integrity and security, and collaborating with cross-functional teams. Experience with cloud platforms (GCP, AWS, Azure), programming languages like Python, Java, or Node.js, and data pipeline tools such as Spark, Airflow, or Kafka is essential. The role also involves data modeling for NoSQL databases and troubleshooting data-related issues within the Banking and Payments domain.
Plano, Texas 75023 Posted March 29th, 2026
Looking for more job opportunities? Click here!
Job Type: Full Time
Job Category: IT
Job Description
Job Title : Data Engineer with Mongo DB
Location : Charlotte, NC/Plano, TX
Must Have Technical/Functional Skills
Primary Skill: Data Engineer
Secondary: Mongo DB
Experience: Minimum 10 years
Key Responsibilities:
- MongoDB Database Management:
Designing, implementing, and managing MongoDB database architectures, including schema design, indexing, replication, sharding, and performance optimization for large-scale data.
Data Pipeline Development:
Building and maintaining robust ETL/ELT (Extract, Transform, Load) pipelines for ingesting, transforming, and loading structured and unstructured data from diverse sources into MongoDB and other data platforms.
- Performance Optimization:
Optimizing MongoDB queries, aggregation pipelines, and overall database performance to ensure efficient data processing and retrieval.
- Data Integrity and Security:
Ensuring data integrity, quality, and security by implementing appropriate validation, monitoring, access controls, and encryption measures within MongoDB and related systems.
- Collaboration and Integration:
Working closely with application developers, data scientists, data analysts, and DevOps teams to understand data requirements, integrate MongoDB with other systems and cloud services (e.g., GCP, AWS, Azure), and support data-driven applications.
- Troubleshooting and Monitoring:
Monitoring data pipeline performance, troubleshooting issues, and implementing solutions to ensure data reliability and availability.
- Documentation:
Creating and maintaining documentation for data pipelines, database schemas, and data engineering processes.
Required Skills and Qualifications:
- Strong MongoDB Expertise:
In-depth knowledge of MongoDB's features, including document modeling, aggregation framework, indexing, sharding, and administration.
- Programming Proficiency:
Strong programming skills in languages like Python, Java, or Node.js, particularly with MongoDB drivers and related libraries.
- Data Pipeline Tools:
Experience with data pipeline tools and technologies such as Apache Spark, Airflow, Kafka, or cloud-native data services.
- Cloud Platform Experience:
Familiarity with cloud platforms (e.g., Google Cloud Platform, AWS, Azure) and their data-related services.
- Data Modeling and Design:
Ability to design efficient and scalable data models for NoSQL databases.
- Problem-Solving and Analytical Skills:
Strong aptitude for troubleshooting data-related issues and optimizing data systems.
- Communication and Teamwork:
Excellent communication and collaboration skills to work effectively with cross-functional teams.
Domain Knowledge: Banking and Payments
Required Skills
DEVOPS ENGINEER
SENIOR EMAIL SECURITY ENGINEER