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Senior ML Data Engineer Jobs

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Senior Platform Engineer, ML Data Systems
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Join Khan Academy as a Senior Platform Engineer for ML Data Systems. Design and deploy scalable dataset management frameworks using Go, Python, and Airflow on GCP. Ensure clean, representative data for AI tutoring by collaborating with engineering and labeling teams. This remote-first role offers...
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United States , Mountain View
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137871.00 - 172339.00 USD / Year
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Khan Academy
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Until further notice
Senior ML Data Engineer
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Join our team as a Senior ML Data Engineer in Warsaw. Design and build scalable data pipelines for AI/ML models, including Generative AI and agentic workflows. Leverage your expertise in cloud tech, Python, Spark, and ML frameworks. Enjoy a flexible 4-day work week, remote allowance, and a focus ...
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Poland , Warsaw
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Awin Global
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Until further notice
Senior ML Data Engineer
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Join our team as a Senior ML Data Engineer and shape the future of AI. You will design scalable data pipelines for ML and Generative AI, working with cloud tech, Spark, and Python. Collaborate globally to build robust systems, enjoying a flexible 4-day work week and remote allowance.
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Awin Global
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Senior Staff Data Engineer- ML & AI Platform
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Lead the evolution of our ML & AI Platform in Amsterdam. Architect scalable solutions for both traditional ML and cutting-edge GenAI, including LLMs and RAG. Leverage 10+ years in Data Engineering and MLOps to build robust infrastructure and mentor senior engineers. Enjoy a competitive package wi...
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Netherlands , Amsterdam
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Adevinta
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Senior ML Data Engineer Jobs: Building the Foundational Infrastructure for AI and Machine Learning In the rapidly evolving landscape of artificial intelligence, Senior ML Data Engineers occupy a critical and highly specialized role. They are the architects and builders of the robust, scalable data infrastructure that powers machine learning models and AI applications. While data scientists focus on algorithms and model development, Senior ML Data Engineers ensure that the data feeding these models is reliable, accessible, and performant at scale. This profession sits at the intersection of data engineering, software engineering, and MLOps, demanding a unique blend of technical depth and strategic vision. Professionals in these roles are primarily responsible for designing, constructing, and maintaining the end-to-end data pipelines that transform raw, often messy data into curated, ML-ready datasets. This involves a comprehensive lifecycle: ingesting data from diverse sources, implementing complex ETL (Extract, Transform, Load) or ELT processes, and building systems for efficient data storage and retrieval. A key differentiator from traditional data engineering is the focus on the specific needs of machine learning. This includes building and managing feature stores—centralized repositories of pre-computed model inputs—and, increasingly, vector databases to handle embeddings for generative AI and large language models (LLMs). They productionize not just data, but entire ML workflows, ensuring models can be trained, deployed, monitored, and retrained reliably. Core responsibilities typically encompass ensuring data quality through validation and automated checks, implementing monitoring for data drift that can degrade model performance, and optimizing pipelines for cost, latency, and throughput. Senior ML Data Engineers collaborate closely with data scientists, ML engineers, and business stakeholders to translate model requirements into technical data solutions. They also play a crucial role in governance, embedding security, compliance, and ethical data handling practices into the infrastructure. As senior members of teams, they often lead projects, establish engineering best practices, and mentor junior engineers. The typical skill set for these jobs is extensive. A strong foundation in computer science, software engineering principles, and statistical understanding is essential. Proficiency in programming languages like Python and SQL is mandatory, alongside deep experience with big data technologies such as Apache Spark and cloud platforms (AWS, Azure, or GCP). Knowledge of workflow orchestration tools (e.g., Airflow, Prefect), data versioning, and MLOps frameworks (e.g., MLflow) is standard. As AI advances, familiarity with the operational needs of LLMs, generative AI, and agentic workflows is becoming a significant advantage. Beyond technical prowess, successful candidates demonstrate problem-solving acuity, a commitment to data quality, and excellent cross-functional communication skills to bridge the gap between data, models, and business value. For those seeking Senior ML Data Engineer jobs, the role offers the opportunity to build the foundational systems upon which transformative AI capabilities are built. It is a career path defined by technical challenge, continuous learning, and direct impact on an organization's ability to leverage its data for intelligent, automated decision-making.

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