ML Engineer Visa Sponsorship Jobs in Indiana
Indiana's ML engineer hiring is anchored by companies like Salesforce, Eli Lilly, and Cummins, with Indianapolis emerging as the state's primary tech hub. Purdue University and Indiana University supply a steady pipeline of machine learning talent, and several Indiana-based employers have established track records sponsoring H-1B visas for ML engineering roles.
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INTRODUCTION
Group 1001 is a consumer-centric, technology-driven family of insurance companies on a mission to deliver outstanding value and operational performance by combining financial strength and stability with deep insurance expertise and a can-do culture. Group1001’s culture emphasizes the importance of collaboration, communication, core business focus, risk management, and striving for outcomes. This goal extends to how we hire and onboard our most valuable assets – our employees.
Why This Role Matters:
We're building AI&ML-powered products that will transform how Group 1001 approaches pricing optimization, claims automation, and risk intelligence. To do this at scale, we need robust ML infrastructure—not just great models.
As a Staff ML Engineer, you'll focus on the MLOps and infrastructure layer that makes ML production-ready: model serving, feature pipelines, experiment tracking, and CI/CD for ML. You'll help shape our ML platform architecture, working alongside Platform Engineering teams to ensure ML workloads run reliably on our modern stack: Snowflake, Dagster, Coalesce, Palantir and AWS SageMaker.
This role is for engineers who are as passionate about infrastructure, deployment, and operationalizing ML as they are about the models themselves.
Please note, this position requires an in-person interview.
How You'll Contribute:
- Partner with Data & Platform Engineering to define how ML workloads integrate with our Snowflake-Dagster-Palantir ecosystem
- Evaluate and recommend tooling for the ML stack—balancing build vs. buy decisions against our scale and compliance needs
- Contribute to platform roadmap discussions, advocating for infrastructure investments that accelerate ML delivery
- Establish CI/CD pipelines for ML: automated testing, model validation, staged deployments, and rollback capabilities using SageMaker Pipelines, Step Functions, or similar orchestration
- Implement model monitoring and observability: drift detection, performance degradation alerts, and automated retraining triggers
- Architect ML workloads on AWS: SageMaker (Training Jobs, Processing, Endpoints), EC2/EKS for custom serving, S3 for artifact storage, and IAM for secure access patterns
- Optimize for cost and performance—right-sizing instances, spot instance strategies, auto-scaling endpoints, and efficient GPU utilization
- Integrate ML infrastructure with our Dagster orchestration layer for end-to-end pipeline visibility
- Mentor senior ML engineers and technical leads, developing the next generation of ML engineering leadership
What We're Looking For:
Technical Skills:
- MLOps & Model Serving: Hands-on experience with model serving frameworks (SageMaker Endpoints, Seldon Core, BentoML, Ray Serve, or TensorFlow Serving); building and operating inference infrastructure at scale
- CI/CD for ML: Building ML pipelines with SageMaker Pipelines, Kubeflow, Airflow, or Dagster; automated model testing, validation gates, and deployment automation
- AWS & Cloud Infrastructure: Strong AWS experience—SageMaker, EKS/ECS, Lambda, Step Functions, S3, IAM; infrastructure-as-code (Terraform, CDK, CloudFormation)
- Monitoring & Observability: Model monitoring, drift detection, alerting; tools like Evidently, WhyLabs, SageMaker Model Monitor, or custom solutions
- Core ML Fundamentals: Working knowledge of Python, ML frameworks (PyTorch, TensorFlow, scikit-learn), and model evaluation—enough to partner effectively with data scientists
- Feature Engineering Infrastructure: Experience with feature stores (SageMaker Feature Store, Feast, Tecton, or similar); designing feature pipelines for both batch and real-time serving
- Experiment Tracking & Registry: MLflow, Weights & Biases, SageMaker Experiments, or similar; establishing reproducibility and governance across ML projects
- Nice to Have: Palantir Foundry, Kubernetes, Bedrock, cost optimization strategies for ML workloads
Education:
- Bachelor's degree in Computer Science, Data Science, Engineering, or related field
- Master's degree or equivalent experience preferred
Experience:
- 7-10 years in ML engineering, MLOps, or platform engineering with a focus on productionizing ML systems
- Demonstrated experience building ML infrastructure that others build upon—serving layers, feature stores, or MLOps tooling
- Track record of improving ML delivery velocity through infrastructure and automation
- Proven ability to work cross-functionally with data scientists, platform engineers, and stakeholders
- Experience mentoring and developing senior engineers and technical leaders
- Strong executive presence with ability to influence stakeholders at all levels of the organization
Preferred Qualifications:
- Experience in insurance or financial services with deep understanding of industry challenges
- Recognized expertise through conference presentations, publications, or industry speaking engagements
- Experience with enterprise-scale systems and complex technical environments
- Proven ability to build consensus and drive alignment across multiple teams and stakeholders
Competencies and Soft Skills:
- Executive presence with ability to influence senior leadership and drive organizational change
- Strategic vision with ability to define long-term technical direction aligned with business goals
- Strong leadership skills with proven ability to develop and mentor senior technical talent
- Exceptional communication skills with ability to articulate technical strategy to executive audiences
- Political acumen with ability to navigate complex organizational dynamics and build consensus
Benefits Highlights:
Employees who meet benefit eligibility guidelines and work 30 hours or more weekly, have the ability to enroll in Group 1001’s benefits package. Employees (and their families) are eligible to participate in the Company’s comprehensive health, dental, and vision insurance plan options. Employees are also eligible for Basic and Supplemental Life Insurance, Short and Long-Term Disability. All employees (regardless of hours worked) have immediate access to the Company’s Employee Assistance Program and wellness programs—no enrollment is required. Employees may also participate in the Company’s 401K plan, with matching contributions by the Company.
Group 1001, and its affiliated companies, is strongly committed to providing a supportive work environment where employee differences are valued. Diversity is an essential ingredient in making Group 1001 a welcoming place to work and is fundamental in building a high-performance team. Diversity embodies all the differences that make us unique individuals. All employees share the responsibility for maintaining a workplace culture of dignity, respect, understanding and appreciation of individual and group differences.

INTRODUCTION
Group 1001 is a consumer-centric, technology-driven family of insurance companies on a mission to deliver outstanding value and operational performance by combining financial strength and stability with deep insurance expertise and a can-do culture. Group1001’s culture emphasizes the importance of collaboration, communication, core business focus, risk management, and striving for outcomes. This goal extends to how we hire and onboard our most valuable assets – our employees.
Why This Role Matters:
We're building AI&ML-powered products that will transform how Group 1001 approaches pricing optimization, claims automation, and risk intelligence. To do this at scale, we need robust ML infrastructure—not just great models.
As a Staff ML Engineer, you'll focus on the MLOps and infrastructure layer that makes ML production-ready: model serving, feature pipelines, experiment tracking, and CI/CD for ML. You'll help shape our ML platform architecture, working alongside Platform Engineering teams to ensure ML workloads run reliably on our modern stack: Snowflake, Dagster, Coalesce, Palantir and AWS SageMaker.
This role is for engineers who are as passionate about infrastructure, deployment, and operationalizing ML as they are about the models themselves.
Please note, this position requires an in-person interview.
How You'll Contribute:
- Partner with Data & Platform Engineering to define how ML workloads integrate with our Snowflake-Dagster-Palantir ecosystem
- Evaluate and recommend tooling for the ML stack—balancing build vs. buy decisions against our scale and compliance needs
- Contribute to platform roadmap discussions, advocating for infrastructure investments that accelerate ML delivery
- Establish CI/CD pipelines for ML: automated testing, model validation, staged deployments, and rollback capabilities using SageMaker Pipelines, Step Functions, or similar orchestration
- Implement model monitoring and observability: drift detection, performance degradation alerts, and automated retraining triggers
- Architect ML workloads on AWS: SageMaker (Training Jobs, Processing, Endpoints), EC2/EKS for custom serving, S3 for artifact storage, and IAM for secure access patterns
- Optimize for cost and performance—right-sizing instances, spot instance strategies, auto-scaling endpoints, and efficient GPU utilization
- Integrate ML infrastructure with our Dagster orchestration layer for end-to-end pipeline visibility
- Mentor senior ML engineers and technical leads, developing the next generation of ML engineering leadership
What We're Looking For:
Technical Skills:
- MLOps & Model Serving: Hands-on experience with model serving frameworks (SageMaker Endpoints, Seldon Core, BentoML, Ray Serve, or TensorFlow Serving); building and operating inference infrastructure at scale
- CI/CD for ML: Building ML pipelines with SageMaker Pipelines, Kubeflow, Airflow, or Dagster; automated model testing, validation gates, and deployment automation
- AWS & Cloud Infrastructure: Strong AWS experience—SageMaker, EKS/ECS, Lambda, Step Functions, S3, IAM; infrastructure-as-code (Terraform, CDK, CloudFormation)
- Monitoring & Observability: Model monitoring, drift detection, alerting; tools like Evidently, WhyLabs, SageMaker Model Monitor, or custom solutions
- Core ML Fundamentals: Working knowledge of Python, ML frameworks (PyTorch, TensorFlow, scikit-learn), and model evaluation—enough to partner effectively with data scientists
- Feature Engineering Infrastructure: Experience with feature stores (SageMaker Feature Store, Feast, Tecton, or similar); designing feature pipelines for both batch and real-time serving
- Experiment Tracking & Registry: MLflow, Weights & Biases, SageMaker Experiments, or similar; establishing reproducibility and governance across ML projects
- Nice to Have: Palantir Foundry, Kubernetes, Bedrock, cost optimization strategies for ML workloads
Education:
- Bachelor's degree in Computer Science, Data Science, Engineering, or related field
- Master's degree or equivalent experience preferred
Experience:
- 7-10 years in ML engineering, MLOps, or platform engineering with a focus on productionizing ML systems
- Demonstrated experience building ML infrastructure that others build upon—serving layers, feature stores, or MLOps tooling
- Track record of improving ML delivery velocity through infrastructure and automation
- Proven ability to work cross-functionally with data scientists, platform engineers, and stakeholders
- Experience mentoring and developing senior engineers and technical leaders
- Strong executive presence with ability to influence stakeholders at all levels of the organization
Preferred Qualifications:
- Experience in insurance or financial services with deep understanding of industry challenges
- Recognized expertise through conference presentations, publications, or industry speaking engagements
- Experience with enterprise-scale systems and complex technical environments
- Proven ability to build consensus and drive alignment across multiple teams and stakeholders
Competencies and Soft Skills:
- Executive presence with ability to influence senior leadership and drive organizational change
- Strategic vision with ability to define long-term technical direction aligned with business goals
- Strong leadership skills with proven ability to develop and mentor senior technical talent
- Exceptional communication skills with ability to articulate technical strategy to executive audiences
- Political acumen with ability to navigate complex organizational dynamics and build consensus
Benefits Highlights:
Employees who meet benefit eligibility guidelines and work 30 hours or more weekly, have the ability to enroll in Group 1001’s benefits package. Employees (and their families) are eligible to participate in the Company’s comprehensive health, dental, and vision insurance plan options. Employees are also eligible for Basic and Supplemental Life Insurance, Short and Long-Term Disability. All employees (regardless of hours worked) have immediate access to the Company’s Employee Assistance Program and wellness programs—no enrollment is required. Employees may also participate in the Company’s 401K plan, with matching contributions by the Company.
Group 1001, and its affiliated companies, is strongly committed to providing a supportive work environment where employee differences are valued. Diversity is an essential ingredient in making Group 1001 a welcoming place to work and is fundamental in building a high-performance team. Diversity embodies all the differences that make us unique individuals. All employees share the responsibility for maintaining a workplace culture of dignity, respect, understanding and appreciation of individual and group differences.
ML Engineer Job Roles in Indiana
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Search ML Engineer Jobs in IndianaML Engineer Jobs in Indiana: Frequently Asked Questions
Which companies in Indiana sponsor visas for ML engineers?
Salesforce, Eli Lilly, Cummins, and Anthem are among the Indiana-based employers that have sponsored H-1B visas for ML and data science roles. Indianapolis-area tech firms and life sciences companies are the most active sponsors. Checking DOL LCA disclosure data for Indiana employers is a reliable way to identify which specific organizations have a documented history of sponsoring ML engineers.
Which visa types are most common for ML engineer roles in Indiana?
The H-1B is the most commonly used visa category for ML engineers in Indiana, as the role typically qualifies as a specialty occupation requiring a bachelor's degree or higher in computer science, machine learning, or a related field. Applicants already holding OPT or STEM OPT can work while an H-1B petition is pending. Some employers also use the L-1B for intracompany transfers with specialized knowledge.
Which cities in Indiana have the most ML engineer visa sponsorship jobs?
Indianapolis accounts for the large majority of ML engineer sponsorship activity in Indiana, driven by its concentration of tech companies, financial services firms, and life sciences employers. Bloomington sees some activity tied to Indiana University's research partnerships, and West Lafayette has opportunities connected to Purdue University and nearby technology-oriented employers. Outside those three cities, ML engineer sponsorship postings in Indiana are relatively limited.
How to find ml engineer visa sponsorship jobs in Indiana?
Migrate Mate is built specifically for international job seekers and filters ML engineer roles in Indiana by visa sponsorship, so you're not sorting through listings from employers unwilling to sponsor. The platform surfaces positions from companies with a history of H-1B and other work visa filings. Filtering by Indiana and the ML engineer role category on Migrate Mate gives you a focused, sponsorship-verified list without the noise of general job boards.
Are there any Indiana-specific considerations for ML engineers seeking visa sponsorship?
Indiana's prevailing wage requirements for H-1B ML engineer roles are determined by the Department of Labor based on the specific work location, which means Indianapolis wages are calculated differently from smaller cities like Fort Wayne or Terre Haute. Employers must certify they are paying at least the prevailing wage on the Labor Condition Application. Purdue and Indiana University both produce strong ML graduate pipelines, which means competition for sponsored roles in Indiana can be meaningful despite the state having fewer openings than coastal tech markets.
What is the prevailing wage for sponsored ml engineer jobs in Indiana?
U.S. employers sponsoring a visa must pay at least the prevailing wage, which is what workers in the same role, area, and experience level typically earn. The Department of Labor sets this rate to make sure companies aren't hiring foreign workers simply because they'd accept lower pay than a U.S. worker. It varies by job title, location, and experience. You can look up current prevailing wage rates for any occupation and location using the OFLC Wage Search page.
See which ml engineer employers are hiring and sponsoring visas in Indiana right now.
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