Johnson Controls International (JCI) is seeking a Senior Data Scientist to join our innovative and impact-driven Data Science and Analytics team. This role is ideal for a seasoned expert with a deep understanding of machine learning, AI, and cloud data platforms, and a strong grasp of the latest advancements in Generative AI and Large Language Models (LLMs).
As a Senior Data Scientist, you will lead the development and deployment of scalable AI solutions—including those powered by LLMs—to accelerate digital transformation across our products, operations, and customer experiences. You'll play a critical role in shaping JCI’s data science strategy, mentoring teams, and driving the use of AI to deliver measurable business value.
How you will do it
Advanced Analytics, LLMs & Modeling
· Design and implement advanced machine learning models including deep learning, time-series forecasting, recommendation engines, and LLM-based solutions (e.g., GPT, LLaMA, Claude).
· Develop use cases around enterprise search, document summarization, conversational AI, and automated knowledge retrieval using large language models.
· Fine-tune or prompt-engineer foundation models (e.g., OpenAI, Azure OpenAI, Hugging Face) for domain-specific applications.
· Evaluate and optimize LLM performance, latency, cost-effectiveness, and hallucination mitigation strategies for production use.
Data Strategy & Engineering Collaboration
· Work closely with data and ML engineering teams to integrate LLM-powered applications into scalable, secure, and reliable pipelines.
· Contribute to the development of retrieval-augmented generation (RAG) architectures using vector databases (e.g., FAISS, Azure Cognitive Search).
· Support the deployment of models using MLOps principles, ensuring robust monitoring and lifecycle management.
Business Impact & AI Strategy
· Partner with cross-functional stakeholders to identify opportunities for applying LLMs and generative AI to solve complex business challenges.
· Lead workshops or proofs-of-concept to demonstrate value of LLM use cases across business units.
· Translate complex model outputs, including those from LLMs, into clear insights and decision support tools for non-technical audiences.
Thought Leadership & Mentorship
· Act as an internal thought leader on AI and LLM innovation, keeping JCI at the forefront of industry advancements.
· Mentor and upskill data science team members in advanced AI techniques, including transformer models and generative AI frameworks.
· Contribute to strategic roadmaps for generative AI and model governance within the enterprise.
Qualifications & Experience
· Education in Data Science, Artificial Intelligence, Computer Science, or related quantitative discipline.
· 5+ years of hands-on experience in data science, including at least 1–2 years working with LLMs or generative AI technologies.
· Demonstrated success in deploying machine learning and NLP solutions at scale.
· Proven experience with cloud AI platforms—especially Azure OpenAI, Azure ML, Hugging Face, or AWS Bedrock.
Technical Expertise
· Proficiency in Python and SQL, including libraries like Transformers (Hugging Face), LangChain, PyTorch, and TensorFlow.
· Experience with prompt engineering, fine-tuning, and LLM orchestration tools.
· Familiarity with data storage, retrieval systems, and vector databases.
· Strong understanding of model evaluation techniques for generative AI, including factuality, relevance, and toxicity metrics.
Leadership & Soft Skills
· Strategic thinker with a strong ability to align AI initiatives to business goals.
· Excellent communication and storytelling skills, especially in articulating the value of LLMs and advanced analytics.
· Strong collaborator with a track record of influencing stakeholders across product, engineering, and executive teams.
What we look for:
· Experience with IoT, edge analytics, or smart building systems.
· Familiarity with LLMOps, LangChain, Semantic Kernel, or similar orchestration frameworks.
· Knowledge of data privacy and governance considerations specific to LLM usage in enterprise environments.