AI Engineer
Location
Mexico
Posted
32 days ago
Salary
0
Seniority
Mid Level
No structured requirement data.
Job Description
AI Engineer
Globalli
Role Description We’re looking for a highly skilled AI Engineer to help us design, build, and scale intelligent systems across our next-generation global HR Tech platform. As an early-stage startup, we’re looking for someone who thrives in dynamic environments, is passionate about automation and AI-driven innovation, and brings hands-on experience developing AI/ML solutions within enterprise-grade SaaS platforms. This role reports directly to the Head of Engineering. - Design and implement machine learning models to solve HR-specific challenges (e.g., intelligent automation, anomaly detection, personalized experiences) - Collaborate with product managers and engineers to bring AI features to life across the platform - Develop and optimize data pipelines to support model training and inference - Research and apply NLP, LLMs, and other AI/ML technologies to streamline and improve HR workflows - Monitor model performance and retrain/improve based on feedback and usage - Build scalable AI solutions using cloud-native tools (preferably AWS) - Contribute to data governance, ethical AI use, and compliance Qualifications - 4–6+ years of experience as an AI/ML Engineer or Data Scientist, ideally with startup or SaaS exposure - Strong understanding of supervised/unsupervised learning, NLP, neural networks, and generative AI - Proficiency with Python and ML frameworks like TensorFlow, PyTorch, Hugging Face, or similar - Experience deploying models in production using cloud platforms like AWS Sagemaker, GCP Vertex AI, or Azure ML - Experience with data versioning, MLOps, and model lifecycle management - Ability to work autonomously and thrive in a startup environment - Familiarity with HR tech, payroll, or workforce data is a plus
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