CrawlJobs Logo
Briefcase Icon
Category Icon

Senior AI Data Engineer Jobs (On-site work)

1 Job Offers

Filters
Senior Cybersecurity Engineer - AI Data
Save Icon
Join T-Mobile as a Senior Cybersecurity Engineer specializing in AI Data. Design and implement top-tier security standards for AI systems, focusing on data-layer controls and automation. Leverage 4-7 years of security experience, including hands-on work with Generative AI models and AI-SPM contro...
Location Icon
Location
United States , Frisco
Salary Icon
Salary
103400.00 - 186400.00 USD / Year
https://www.t-mobile.com Logo
T-Mobile
Expiration Date
Until further notice
Senior AI Data Engineer jobs represent a critical and rapidly evolving frontier at the intersection of data infrastructure, software engineering, and artificial intelligence. Professionals in this role are the architects and builders of the robust data pipelines and systems that power advanced AI and machine learning applications. Unlike traditional data engineers, a Senior AI Data Engineer specializes in creating scalable, production-ready environments specifically designed for the unique demands of training, deploying, and maintaining AI models. Their core mission is to bridge the gap between experimental data science and reliable, operational AI systems, ensuring that innovative algorithms have access to clean, reliable, and efficiently processed data. The typical responsibilities for someone in this senior position are multifaceted. Primarily, they design, construct, and maintain large-scale data pipelines that ingest, cleanse, transform, and aggregate data from diverse sources, making it usable for machine learning. This involves a deep focus on data quality, feature engineering, and creating reproducible data workflows. A key aspect of the role is implementing MLOps practices, which includes automating the machine learning lifecycle—from model training and validation to deployment, monitoring, and retraining in production. Senior AI Data Engineers often collaborate closely with data scientists to operationalize their models, with DevOps teams to ensure cloud infrastructure is optimized, and with business stakeholders to understand data needs. Leadership is a significant component, encompassing mentoring junior engineers, making strategic architectural decisions, and evaluating emerging technologies to keep the organization's AI capabilities at the cutting edge. The skill set required for Senior AI Data Engineer jobs is comprehensive. A strong foundation in programming, particularly Python and often SQL or Scala, is essential. Expertise in big data technologies like Apache Spark, Kafka, and Hadoop is common, coupled with extensive experience in cloud platforms such as AWS, Google Cloud, or Microsoft Azure and their specific AI/ML services (e.g., SageMaker, Vertex AI, Azure ML). Proficiency in data modeling, ETL/ELT processes, and containerization tools like Docker and Kubernetes is expected. Beyond technical prowess, a deep understanding of machine learning concepts, statistics, and software engineering best practices is crucial to build systems that are not only functional but also scalable, secure, and maintainable. Senior roles demand excellent problem-solving abilities, strategic thinking, and strong communication skills to translate complex technical challenges into business value. For those seeking to lead the charge in building the intelligent systems of tomorrow, exploring Senior AI Data Engineer jobs offers a challenging and impactful career path at the heart of technological innovation.

Filters

×
Countries
Category
Location
Work Mode
Salary