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Senior Machine Learning Engineer, Vice President

LinkedIn Citi Tampa, FL
Not Applicable Posted April 17, 2026 Job link
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Requirements
  • 5+ years of hands-on experience in Machine Learning Engineering, MLOps, or AI system development.
  • Minimum of 2 years of direct experience in engineering and deploying Generative AI/LLM solutions in production.
  • Technical Skills:
  • Deep proficiency in Python for production-grade ML development, with expertise in relevant libraries (scikit-learn, pandas, SpaCy, TensorFlow, PyTorch, Hugging Face Transformers).
  • Strong experience with PySpark for large-scale data processing and building robust data pipelines.
  • Proficiency in big data frameworks (Hadoop, Spark, Hive, Hue) and experience with streaming technologies.
  • Extensive experience with MLOps tools and practices (e.g., Docker, Kubernetes, MLflow, Airflow, CI/CD for ML).
  • Proven experience in designing, implementing, and deploying NLP and deep learning models to production.
  • Hands-on experience with Generative AI development, including engineering prompting strategies, RAG implementation, and LLM fine-tuning and integration (e.g., Langchain, LlamaIndex).
  • Familiarity with cloud platforms (AWS, Azure, GCP) and their ML services.
  • System Design & Architecture: Demonstrated ability to design scalable, fault-tolerant, and performant ML systems.
  • Problem-Solving: Exceptional analytical, interpretive, and problem-solving skills with a focus on engineering challenges and innovative solutions.
  • Communication: Excellent interpersonal, verbal, and written communication skills, with the ability to articulate complex technical concepts to both technical and non-technical audiences.
  • Autonomy & Leadership: Proven ability to work independently, drive projects to completion, and provide technical leadership and mentorship
Preferred Skills
  • Strong experience with PySpark for large-scale data processing and building robust data pipelines.
  • Extensive experience with MLOps tools and practices (e.g., Docker, Kubernetes, MLflow, Airflow, CI/CD for ML).
  • Good to have: Experience with graph neural networks, graph databases, or distributed systems for ML.