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A leading technology firm is seeking a Machine Learning Engineering Manager to drive the lifecycle of AI development, from research to production. The ideal candidate will have over 5 years of experience in Machine Learning and a strong background in leading teams. Responsibilities include managing ML projects, collaborating with cross-functional teams, and implementing MLOps best practices. Strong programming skills in Python and knowledge of cloud platforms are essential. Join us to make a measurable impact with AI initiatives.
Location: Remote - LATAM
Schedule: Full-time (8 hrs / day) — must have 4 hrs overlap with PST
We’re looking for a hands‑on Machine Learning Engineering Manager to lead cross‑functional teams in designing, training, and deploying large‑scale ML and LLM systems.
You’ll drive the full lifecycle of AI development — from research and experimentation to distributed training and production deployment — while mentoring top‑tier engineers and partnering closely with product, research, and infra leaders.
This role blends deep ML / MLOps expertise with strong leadership and execution, ensuring all AI initiatives translate into measurable business impact.
Lead and mentor ML engineers, data scientists, and MLOps professionals.
Manage end‑to‑end ML / LLM project lifecycle: data pipelines, training, evaluation, deployment, and monitoring.
Provide technical direction for distributed training, large‑scale model optimization, and system architecture.
Collaborate with Research, Product, and Infrastructure teams to define objectives, milestones, and KPIs.
Implement MLOps best practices: experiment tracking, CI / CD, model governance, observability.
Manage compute resources, cloud budgets, and enforce Responsible AI + data security standards.
Communicate technical progress, blockers, and results clearly to leadership and stakeholders.
5+ years of experience in Machine Learning, NLP, and Deep Learning (Transformers, LLMs).
2+ years leading teams delivering ML / LLM systems in production.
Strong proficiency in Python and frameworks like PyTorch, TensorFlow, Hugging Face, DeepSpeed.
Experience with distributed training, GPU / TPU optimization, and cloud platforms (AWS, GCP, Azure).
Knowledge of MLOps tools (MLflow, Kubeflow, Vertex AI, etc.).
Excellent leadership, communication, and cross‑functional collaboration skills.
Bachelor's / Master’s in Computer Science, Engineering, or related field (PhD preferred).
Experience training or fine‑tuning foundation models.
Knowledge of Responsible AI practices, bias mitigation, and model interpretability.