All roles

Remote Data Engineering Specialist – Big Data Pipelines & Cloud Infrastructure | $28/Hour

Remote · USA Full-time New today

Join careerzynith as a Remote Data Engineering Specialist – Build the Future of Intelligent Logistics Are you a passionate data professional who thrives on designing robust data pipelines, solving complex engineering challenges, and translating business needs into scalable technical solutions? careerzynith is looking for a talented and driven Remote Data Engineering Specialist to join our dynamic Dataworks division. If you are excited about working at the intersection of big data, cloud computing, and logistics innovation, this opportunity offers the perfect platform to elevate your career while earning a competitive $28 per hour . At careerzynith , we believe data is the lifeblood of modern business. Our mission is to harness the power of information to drive smarter decisions, faster deliveries, and more efficient operations across the globe. As a Remote Data Engineering Specialist, you will play a pivotal role in designing, building, testing, and maintaining enterprise-grade data pipelines that process massive volumes of information every single day. Whether you are an early-career engineer eager to learn or a seasoned professional ready to lead technical initiatives, we welcome candidates at all experience levels who bring curiosity, technical excellence, and a collaborative spirit. About careerzynith careerzynith is a forward-thinking organization operating at the forefront of logistics, data engineering, and digital transformation. Inspired by the best practices of global delivery and supply chain leaders, careerzynith has built a reputation for innovation, reliability, and customer-centric solutions. Our Dataworks platform serves as the central nervous system for data ingestion, transformation, and pipelining, supporting both internal stakeholders and external data products and services. Headquartered with a globally distributed workforce, careerzynith embraces remote work as a cornerstone of our talent strategy. We understand that great engineers can contribute from anywhere, and we have cultivated a culture that values outcomes over office presence. Our teams span multiple time zones, disciplines, and backgrounds, united by a shared commitment to engineering excellence and continuous learning.

Key Responsibilities

As a Remote Data Engineering Specialist at careerzynith , you will wear many hats — architect, builder, collaborator, mentor, and problem-solver. Your primary responsibilities will include, but are not limited to: Designing and Maintaining Data Pipelines: Support the design, construction, testing, and ongoing maintenance of data pipelines operating at massive scale. Ensure pipelines are efficient, reliable, and optimized for performance. Data Integration and Transformation: Assist in updating and integrating data from multiple sources, including batch processing of collected data. Match incoming data formats against stored schemas, ensuring data quality and consistency before processing and analysis. Optimization and Performance Tuning: Help maintain a streamlined, efficient data environment by monitoring standard performance metrics, identifying bottlenecks, and resolving data-related issues. Provide Level 3 (L3) technical support when escalations arise. Building Parsers, Validators, and Transformers: Implement parsers, validators, transformers, and correlators to reformat, update, and enrich data assets according to business and technical requirements. Strategic Recommendations: Provide recommendations on highly complex engineering problems, offering insight and direction to less senior team members. Cross-Functional Collaboration: Act as a "universal translator" between IT, business stakeholders, software engineers, and data scientists. Collaborate across multi-disciplinary teams to deliver tangible value. Code Reviews and Large-Scale Deployments: Participate actively in code reviews and contribute to large-scale production deployments, ensuring best practices in software engineering are followed. Scaling Beyond PC-Level Problems: Move from "PC scale" challenges to "cluster scale" problems, addressing both infrastructure and algorithmic complexities with confidence. Driving Data-Driven Insights: Collaborate with teams across the organization to generate data-driven operational insights that translate into high-value, optimized outcomes. Rapid Value Delivery: Deliver tangible business value quickly, working effectively with teams of varying backgrounds and disciplines. Reusable Patterns and Templates: Document best practices for future reuse as open, reusable Apply To This Job

Related roles