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Ai Coder Jobs in Wisconsin (NOW HIRING)

Senior AI Engineer

Brookfield, WI · Remote

$97K - $134K/yr

This is not a low/vibe-code automation role. Instead, you will build and operationalize a secure, governed, Azure-hosted AI platform layer-supporting LLM/RAG and agentic patterns-integrated with ...

Senior Advanced AI Research Engineer

Milwaukee, WI · On-site

$103K - $141K/yr

You write research artefacts and production code in the same week, and you understand why both matter. The Work: Applied Research & Innovation: * Investigate active innovation frontiers in agentic AI ...

Software Engineer AI/ML

Waukesha, WI

$114K - $137K/yr

Lean/Agile/XP , CI/CD, automated testing, secure coding, scalability patterns, documentation-as-code, refactoring, and performance engineering * Implement monitoring and observability for AI/ML ...

Assess incoming AI needs and determine the right solution approach, including whether a problem calls for low-code tooling, pro-code development, or something in between * Serve as a knowledgeable ...

Contribute to AI-driven prototype development through coding and validation. * Assist in the integration of AI features into engineering tools and systems by collaborating with domain experts. * Help ...

Contribute to AI-driven prototype development through coding and validation. * Assist in the integration of AI features into engineering tools and systems by collaborating with domain experts. * Help ...

You'll play a key role in identifying automation opportunities, building AI-driven workflows, and enabling teams to work smarter through modern low-code solutions. How You Will Make an Impact:

Contribute to AI-driven prototype development through coding and validation. * Assist in the integration of AI features into engineering tools and systems by collaborating with domain experts. * Help ...

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Ai Coder information

See Wisconsin salary details

$16

$27

$43

How much do ai coder jobs pay per hour?

As of Jun 15, 2026, the average hourly pay for ai coder in Wisconsin is $27.75, according to ZipRecruiter salary data. Most workers in this role earn between $19.18 and $34.95 per hour, depending on experience, location, and employer.

Can AI do coding jobs?

AI coding tools and models can automate certain programming tasks, assist in code generation, and improve productivity for AI coders. However, human oversight is still essential for complex problem-solving, debugging, and designing software systems. AI is a tool that complements human coders rather than fully replacing them.

How do I become an AI coder?

To become an AI coder, you should develop strong programming skills in languages like Python, learn machine learning frameworks such as TensorFlow or PyTorch, and gain knowledge of algorithms and data structures. Pursuing a degree in computer science, data science, or related fields and working on AI projects or internships can also help build practical experience.

What is a $900000 AI job?

A $900,000 AI job typically refers to a high-paying position in artificial intelligence, such as senior AI engineer, machine learning director, or AI research scientist, often requiring advanced skills in programming, data analysis, and deep learning. These roles usually involve leadership responsibilities, extensive experience, and may be found in large tech companies or specialized research organizations.

What types of projects do AI Coders typically work on, and how does project collaboration usually happen?

AI Coders are often involved in developing machine learning models, creating data pipelines, and integrating AI solutions into existing products. Collaboration is a key part of the role, with AI Coders working closely with data scientists, software engineers, and product managers to translate business needs into technical solutions. Most teams use agile methodologies, daily stand-ups, and collaborative platforms like GitHub or Jira to coordinate tasks and track progress. This structure ensures that AI Coders receive frequent feedback and can contribute ideas throughout the development cycle.

What are AI Coders?

AI Coders are professionals who develop, implement, and maintain artificial intelligence (AI) systems and applications. They use programming languages such as Python, Java, and R to write code that enables machines to perform tasks that typically require human intelligence, such as learning, reasoning, and problem-solving. AI Coders often work with machine learning models, neural networks, and large datasets to create intelligent solutions for various industries. Their work can range from building chatbots and recommendation systems to designing complex algorithms for automation.

How much do AI coders make?

AI coders, also known as artificial intelligence programmers, typically earn between $80,000 and $150,000 annually, depending on experience, location, and skill level. Senior AI developers with specialized knowledge in machine learning and deep learning can earn higher salaries, especially in tech hubs or companies requiring advanced expertise.

What is the difference between Ai Coder vs Data Scientist?

AspectAi CoderData Scientist
Required CredentialsProgramming skills, knowledge of AI frameworks, certifications in AI/MLStatistics, programming, data analysis certifications
Work EnvironmentSoftware development teams, AI research labsData analysis teams, research environments
Employer & Industry UsageTech companies, AI startups, R&D departmentsFinance, healthcare, marketing, tech firms

While both roles involve working with data and algorithms, Ai Coders primarily focus on developing AI models and coding AI solutions, whereas Data Scientists analyze data to extract insights and inform business decisions. Ai Coders are more involved in software development, while Data Scientists emphasize statistical analysis and data interpretation.

What are the key skills and qualifications needed to thrive as an AI Coder, and why are they important?

To thrive as an AI Coder, you need strong programming skills (especially in Python), a solid understanding of machine learning concepts, and typically a degree in computer science or a related field. Familiarity with AI frameworks like TensorFlow or PyTorch, as well as experience with version control systems such as Git, is essential. Strong problem-solving abilities, attention to detail, and effective communication help you collaborate with teams and explain complex solutions. These skills and qualities are crucial for developing, optimizing, and maintaining reliable AI models that address real-world challenges.
What are popular job titles related to Ai Coder jobs in Wisconsin? For Ai Coder jobs in Wisconsin, the most frequently searched job titles are:
What cities in Wisconsin are hiring for Ai Coder jobs? Cities in Wisconsin with the most Ai Coder job openings:
Senior AI Engineer

Senior AI Engineer

MLG Capital

Brookfield, WI • Remote

$97K - $134K/yr

Other

Posted 11 days ago


Job description

Description

 About MLG Capital 

MLG Capital is a private real estate investment manager that has been operating since 1987. The firm is focused on delivering long-term, tax-efficient, risk-adjusted returns through diversified real estate strategies across the U.S.  


As the firm scales, AI is becoming a core platform capability, not a set of experiments. This role is critical to building production-grade AI systems that operate securely, governably, and at enterprise scale across investment, asset management, investor operations, finance, and marketing. 


Role Overview 

We are seeking a Senior AI Engineer to lead the technical design, development, and scaling of enterprise AI systems across MLG Capital, with core experience anchored in the Microsoft AI stack (Azure AI Foundry / Azure OpenAI Service, Azure Machine Learning where applicable, Microsoft Fabric, Microsoft Purview, Microsoft Graph, and Microsoft Entra ID). 


This is not a low/vibe-code automation role. Instead, you will build and operationalize a secure, governed, Azure-hosted AI platform layer-supporting LLM/RAG and agentic patterns-integrated with enterprise identity, data, and observability standards. 

  • Org-wide AI architectures 
  • Agentic systems and orchestration 
  • Secure AI + data integrations using Microsoft-native services (Entra ID, Purview, Fabric/OneLake, Graph, and Azure networking patterns) 
  • Production deployment, evaluation, and governance of LLM-based systems 

You will partner closely with the Organizations Operating Committee, SVP Data, Data Engineering, BI, Security, Legal/Compliance, and business users to move the current AI roadmap from ideas to pilots to durable enterprise infrastructure. 


Core Responsibilities 


Enterprise AI Platform Architecture 

  • Design and evolve MLG's enterprise AI platform layer on Azure that connects models, data, tools, and permissions into a secure, scalable system of intelligence (RBAC/ABAC via Microsoft Entra ID, network isolation, and auditability). 
  • Build foundational patterns for retrieval-augmented generation (RAG) and agentic workflows that enable natural-language interaction over governed enterprise data (Fabric/OneLake, SharePoint/Teams content via Microsoft Graph) with lineage and classification enforced through Microsoft Purview. 
  • Establish architectural standards that allow AI capabilities to compound over time (reusable services, shared prompt/context patterns, and repeatable deployment via infrastructure-as-code and CI/CD across dev/test/prod), rather than exist as isolated point solutions. 

AI-Ready Data & Context Engineering 

  • Partner with Data Engineering to ensure centralized, AI-ready data foundations in the Microsoft data estate (Fabric/OneLake, lakehouse/warehouse patterns), including structured, semi-structured, and unstructured data. 
  • Implement robust retrieval, context assembly, and permission-aware access strategies (Entra ID-backed authorization and Purview-aligned governance) so AI systems return accurate, explainable, and compliant outputs. 
  • Design systems that blend internal performance data, historical decisions, and market intelligence into unified AI context pipelines.  

Workflow Automation ? Predictive ? Autonomous Systems 

  • Build AI systems that move beyond automation into:  
  • Intelligence-assisted workflows 
  • Predictive insights and early-warning signals 
  • Semi-autonomous execution with human-in-the-loop controls 
  • Design architectures that support progressive maturity, allowing workflows to evolve from copilots to decision-support engines and, where appropriate, autonomous agents.  

Agentic Systems & Orchestration 

  • Architect and implement agent-based systems capable of:  
  • Multi-step reasoning 
  • Tool invocation across enterprise systems 
  • Coordinated execution across specialized agents 
  • Balance agent autonomy with deterministic controls, cost ceilings, and auditability to ensure enterprise reliability and trust. 
  • Establish reusable agent frameworks that can be extended across acquisitions, asset management, portfolio management, investor operations, and finance.  

Governance, Security & Permissioning by Design 

  • Embed model, context, and permission controls directly into AI system architecture (Entra ID-based authentication/authorization, policy enforcement, and end-to-end audit logging). 
  • Partner with Compliance, Legal, and Security to ensure AI systems respect:  
  • Data classification and access controls 
  • Regulatory and SEC-aligned constraints 
  • Responsible AI principles 
  • Design AI systems where what the user can ask and what the system can do are explicitly governed, not implied.  

Platform Observability, Evaluation & ROI Discipline 

  • Implement enterprise evaluation and monitoring frameworks (offline evals + online monitoring) using Azure-native observability (Azure Monitor / Application Insights / Log Analytics) to measure: 
  • Accuracy, groundedness, and reasoning quality 
  • Drift, latency, and reliability over time 
  • Cost, usage, and adoption patterns 
  • Accuracy and reasoning quality 
  • Drift and reliability over time 
  • Cost, usage, and adoption patterns 
  • Support leadership in understanding where AI delivers durable ROI versus aspirational or experimental value. 
  • Ensure AI systems are observable, debuggable, and measurable as enterprise platforms-not black boxes.  

Partnership-Driven Delivery 

  • Operate within MLG's hub-and-spoke AI model, acting as the central technical owner of AI frameworks while partnering deeply with business lines. 
  • Work alongside internal teams and external partners, ensuring all solutions integrate cleanly into MLG's Microsoft-centric ecosystem. 
  • Help translate business intent into repeatable technical primitives, enabling scale without bespoke engineering per use case. 

Requirements


  • 4+ years AI/software engineering experience, with 2+ years building and operating production AI / LLM systems at enterprise scale (multi-environment deployments, CI/CD, observability, and security controls) 
  • Strong experience deploying AI systems that handle:  
  • Concurrency 
  • Failure modes 
  • Observability 
  • Scalability 
  • Deep understanding of modern LLMs and tradeoffs across model providers 
  • Advanced proficiency in:  
  • Python 
  • APIs 
  • Cloud-native development (Azure preferred) 
  • Experience integrating AI with enterprise data, workflows, and systems, not just standalone apps 

Preferred / Differentiating Experience 

  • Hands-on experience with:  
  • Azure AI Foundry / Azure OpenAI Service (plus Azure AI Search and Azure Machine Learning as needed) 
  • Microsoft Fabric/ Microsoft Purview 
  • Microsoft Graph APIs 
  • Experience with agent frameworks  
  • Strong intuition for when not to use AI, and how to blend deterministic systems with probabilistic reasoning 
  • Familiarity with:  
  • Vector databases and hybrid search 
  • Evaluation and tracing tools for LLM systems 
  • Experience operating AI in regulated or compliance-sensitive environments 

Mindset & Working Style 

  • Builder mentality with strong system design instincts 
  • Comfortable operating in ambiguity while driving towards production outcomes 
  • High ownership, able to move from concept to deployed system 
  • Strong collaborator across technical and business teams 
  • Pragmatic, security-minded, and cost-aware 

Additional Notes: 


Physical Requirements: Ability to operate office machinery; including but not limited to: telephone, computer, copy machine, fax machine, printer, and mobile phone. Ability to sit for extended periods (up to 4 hours) and use a computer for up to 8 hours per day. Ability to lift up to 10 pounds on an occasional basis.


Working Conditions: Open office workstation environment, quiet to moderate noise levels.


SEC Compliance: As MLG has a subsidiary Registered Investment Adviser, many employees are subject to SEC-mandated compliance requirements. As part of these requirements, employees must disclose personal brokerage accounts and financial holdings, for themselves and any household members whose investment activities they influence.


This information is collected solely for regulatory compliance and conflict of interest monitoring. All disclosures are handled with strict confidentiality and are accessible only to the Chief Compliance Officer and designated compliance personnel when a business or SEC related need arises


All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, age, disability, sexual orientation, national origin or any other category protected by law.


In compliance with the Americans with Disabilities Act, a "reasonable accommodation" will be made for an individual with a known physical or mental limitation unless it would require an action of significant difficult causing undue hardship.


This document covers the most significant duties performed but does not exclude other occasional work assignments not mentioned.