Ai Engineer
United States of America, Wisconsin, Milwaukee

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职位详情

就业类型: 

Full-Time

地点:

United States of America, Wisconsin, Milwaukee

职位类别:

Innovation & Technology

职位编号:

WD30274340

Johnson Controls制胜行为

我们专注于真正重要的事

我们作为同一个团队共创佳绩

我们对结果负责

我们每天都在进步

职位描述

Build your best future with the Johnson Controls team 

Johnson Controls, a global leader in thermal management, mission-critical building systems, energy efficiency, and decarbonization, helps customers use energy more productively, reduce carbon emissions, and operate with the precision and resilience required in rapidly expanding industries such as data centers, healthcare, pharmaceuticals, advanced manufacturing, and higher education. 

 
For more than 140 years, Johnson Controls has delivered performance where it really matters. Backed by advanced technology, lifecycle services and an industry-leading field organization, we elevate customer performance, turn goals into real-world results and help move society forward. 

What we offer: 

  • Competitive salary 

  • Paid vacation/holidays/sick time 

  • Comprehensive benefits package including 401K, medical, dental, and vision care 

  • On the job/cross training opportunities 

  • Encouraging and collaborative team environment 

  • Dedication to safety through our Zero Harm policy

Johnson Controls International (JCI) is seeking an AI Engineer to join our innovative and impact-driven Data Science and Analytics team. This role is ideal for an engineer who combines solid software, data, and ML engineering skills with hands-on Generative AI experience—and a data scientist's curiosity for how models behave. You build the pipelines, tooling, and applications that turn AI and LLM models into dependable production software. 

As an AI Engineer, you will independently own the end-to-end delivery of defined AI projects—from data pipeline through deployed application. You will make sound technical decisions within your scope, partner directly with cross-functional stakeholders, and guide junior engineers on specific problems as you deliver measurable business value. 

How you will do it 

 

Generative AI Systems & Applications 

  • Develop and deploy Generative AI systems and LLM-powered applications (e.g., GPT, Claude, LLaMA) for use cases such as enterprise search, document summarization, and conversational AI. 

  • Apply prompt engineering, fine-tuning, and orchestration techniques to adapt foundation models for domain-specific applications. 

  • Build agentic workflows and task-specific AI agents—using Palantir AIP or the Microsoft Agent Framework—that orchestrate tools, retrieval, and reasoning. 

  • Evaluate and improve model outputs for accuracy, relevance, latency, and cost, applying data science techniques to measure and validate performance. 

 

Data, ML & Software Engineering 

  • Build and maintain the data pipelines that feed AI systems—ingestion, transformation, and ETL across structured and unstructured sources (e.g., Snowflake, Azure). 

  • Develop and operate ML pipelines and MLOps workflows—training, evaluation, deployment, and monitoring—using CI/CD, containerization (Docker), and model serving. 

  • Build reusable components, services, and APIs around AI models that help the team ship features faster. 

  • Implement retrieval and embedding workflows (RAG, vector databases) for scalable, accurate knowledge retrieval. 

  • Apply software engineering best practices—testing, version control, and code review—across your projects. 

 

Business Impact & Stakeholder Communication 

  • Partner with cross-functional stakeholders to translate business challenges into AI solutions. 

  • Support workshops and proofs-of-concept that demonstrate the value of LLM and agent use cases across business units. 

  • Translate model outputs, data findings, and technical tradeoffs into clear insights for non-technical audiences. 

 

Mentorship & Collaboration 

  • Guide junior engineers on specific technical problems and code quality. 

  • Contribute to design discussions and technical decisions within the team. 

  • Share knowledge and help raise the bar on engineering and data science practices. 

 

Qualifications & Experience 

  • Education in Computer Science, Software Engineering, Data Engineering, Data Science, or a related technical or quantitative discipline. 

  • 2–5 years of experience in software, data, ML engineering, or data science, including hands-on work with LLMs or generative AI. 

  • Demonstrated success delivering data or ML pipelines and AI/ML solutions to production. 

  • Experience with data science fundamentals—exploratory analysis, statistical modeling, or classic ML (classification, regression, forecasting). 

  • Experience with cloud AI platforms such as Azure OpenAI/Azure ML, AWS SageMaker/Bedrock, or Google Cloud Vertex AI. 

 

Technical Expertise 

  • Strong proficiency in Python and SQL, with good software engineering habits—testing, version control, and clean code. 

  • Hands-on experience with the Generative AI stack: prompt engineering, fine-tuning (e.g., LoRA), LLM orchestration, and agent frameworks (LangChain, Semantic Kernel, Microsoft Agent Framework). 

  • Experience building ETL and ML pipelines and applying MLOps practices (CI/CD, Docker, model serving). 

  • Familiarity with data science libraries and workflows—pandas, scikit-learn, and model evaluation and experimentation. 

  • Experience with JCI's stack—or comparable platforms—including Palantir AIP, Azure ML, Microsoft Agent Framework, Power Automate, and Snowflake. 

  • Working knowledge of embeddings, vector databases, and retrieval systems. 

 

Soft Skills 

  • Ability to own projects and communicate progress, risks, and tradeoffs clearly. 

  • Strong collaboration skills across product, engineering, and business teams. 

  • Comfortable presenting technical and analytical work to both technical and non-technical stakeholders. 

  • Self-directed problem solver who manages priorities independently. 

 

Preferred Qualifications 

  • Experience with IoT, edge analytics, or smart building systems. 

  • Familiarity with LLMOps, LangChain, Semantic Kernel, or similar orchestration frameworks. 

  • Data science depth—statistical modeling, experimentation, or deep learning (forecasting, computer vision, or NLP). 

  • Experience with the Microsoft ecosystem (Microsoft 365 Copilot, SharePoint, Power Platform, Snowflake). 

  • Knowledge of data privacy and governance considerations for enterprise LLM usage. 

Additional Information 

Work Location & Arrangement: Glendale, WI, hybrid

Sponsorship: Johnson Controls will not sponsor applicants for work visas or provide immigration-related employment sponsorship for this position, now or in the future. 

HIRING SALARY RANGE: $85,000 - $110,000 (Salary to be determined by the education, experience, knowledge, skills, and abilities of the applicant, internal equity, location and alignment with market data.) The posted salary range reflects the target compensation for this role. However, we recognize that exceptional candidates may bring unique skills and experiences that exceed the typical profile. If you believe your background warrants consideration beyond the stated range, we encourage you to apply. To support an efficient and fair hiring process, we may use technology assisted tools, including artificial intelligence (AI), to help identify and evaluate candidates. All hiring decisions are ultimately made by human reviewers.  This position includes a competitive benefits package. For details, please visit the About Us tab on the Johnson Controls Careers site at https://jobs.johnsoncontrols.com/about-us

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