CrawlJobs Logo
Briefcase Icon
Category Icon

AI Engineer - Instrumentation United States, San Juan Jobs

1 Job Offers

Filters
AI Data Engineer
Save Icon
Seeking an AI Data Engineer in San Juan to design and implement cloud platforms for big data exploration. You will deploy data science solutions, build CI/CD pipelines, and optimize costs using AWS, Kubernetes, and Python. This role requires strong DevOps skills and collaboration with data scienc...
Location Icon
Location
United States , San Juan
Salary Icon
Salary
Not provided
https://www.hpe.com/ Logo
Hewlett Packard Enterprise
Expiration Date
Until further notice
Explore cutting-edge AI Engineer - Instrumentation jobs and launch your career at the forefront of intelligent system development. An AI Engineer specializing in Instrumentation is a critical role in the modern AI ecosystem, focused on building the observability, measurement, and control frameworks that allow complex AI systems to function reliably, safely, and at scale. This profession sits at the intersection of software engineering, data science, and systems architecture, dedicated to instrumenting AI models and agents to make their internal processes transparent, measurable, and improvable. Professionals in these roles are responsible for designing and implementing the telemetry and monitoring infrastructure for AI applications. This typically involves creating robust pipelines to collect, process, and analyze metrics on model performance, data quality, and system behavior in real-time. A core duty is developing frameworks to detect and mitigate issues like model drift, hallucination in generative AI, or agent reasoning failures. They build the feedback loops—often leveraging techniques from reinforcement learning—that enable autonomous systems to learn from outcomes and self-correct. Ensuring these AI systems adhere to stringent compliance, security, and governance standards through automated checks and audit trails is also a fundamental responsibility. The typical skill set for AI Engineer - Instrumentation jobs is multifaceted. A strong foundation in software engineering is paramount, with proficiency in Python and experience with AI/ML frameworks like PyTorch or TensorFlow. Expertise in cloud platforms (AWS, Azure, GCP) and containerization (Docker, Kubernetes) is essential for deploying scalable instrumentation. Deep understanding of MLOps principles and tools is critical, as the role revolves around automating the CI/CD, monitoring, and lifecycle management of AI models. Knowledge of specific observability platforms, logging suites, and dashboarding tools is highly valued. Furthermore, a solid grasp of core AI concepts—including large language models (LLMs), retrieval-augmented generation (RAG), and agent-based architectures—is necessary to instrument them effectively. Soft skills like analytical problem-solving, clear communication for articulating system health, and cross-functional collaboration are equally important. Typical requirements for these positions often include a degree in Computer Science, Engineering, or a related quantitative field, coupled with hands-on experience in building production-grade AI systems. Candidates are expected to demonstrate a proven ability to translate theoretical AI capabilities into robust, observable, and maintainable production services. If you are passionate about creating the foundational tools that make advanced AI trustworthy and operational, exploring AI Engineer - Instrumentation jobs is your pathway to a impactful career shaping the future of autonomous technology.

Filters

×
Countries
Category
Location
Work Mode
Salary