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Computer Science Opt Jobs in Colorado (NOW HIRING)

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What is a Computer Science OPT job?

A Computer Science OPT (Optional Practical Training) job is a temporary employment opportunity for international students on an F-1 visa who have completed or are pursuing a degree in computer science. It allows them to gain practical work experience related to their field of study in the U.S. OPT can be up to 12 months, with an additional 24-month extension for students in STEM fields. These jobs typically include roles like software development, data analysis, cybersecurity, and IT support. Employers hiring OPT candidates must comply with specific visa regulations.

What are the key skills and qualifications needed to thrive in the Computer Science Opt position, and why are they important?

To thrive as a Computer Science OPT (Optional Practical Training participant), you typically need a solid understanding of programming languages, algorithms, and data structures, usually demonstrated through a relevant degree in computer science or a related field. Familiarity with software development tools, version control systems like Git, and possibly certifications in specialized areas such as cloud computing or cybersecurity can be advantageous. Excellent problem-solving abilities, teamwork, adaptability, and strong communication skills make candidates stand out. These competencies enable you to contribute effectively to technical projects, smoothly integrate into diverse workplace environments, and adapt to rapidly evolving technology demands.

What types of projects or tasks can a Computer Science OPT typically expect to work on during their employment?

As a Computer Science OPT, you'll often be assigned to support ongoing software development, quality assurance, or data analysis projects under the guidance of experienced team members. Daily tasks may include coding, debugging, participating in code reviews, assisting with testing or deployments, and collaborating on technical documentation. Depending on the company's focus, you might also have the chance to work on web development, artificial intelligence, or cloud-based solutions. These experiences not only build your technical skills but also provide valuable exposure to real-world development cycles and team collaboration, enhancing your long-term career prospects in the tech industry.
What are the most commonly searched types of Computer Science Opt jobs in Colorado? The most popular types of Computer Science Opt jobs in Colorado are:
What job categories do people searching Computer Science Opt jobs in Colorado look for? The top searched job categories for Computer Science Opt jobs in Colorado are:
Infographic showing various Computer Science Opt job openings in Colorado as of May 2026, with employment types broken down into 92% Full Time, and 8% Part Time. Highlights an 92% In-person, and 8% Hybrid job distribution.
Engineer - MLOps & Scientific Platforms - Data Foundry

Engineer - MLOps & Scientific Platforms - Data Foundry

Eli Lilly and Company

Louisville, CO • On-site

Full-time

Posted 7 days ago


Eli Lilly and Company rating

8.8

Company rating: 8.8 out of 10

Based on 62 frontline employees who took The Breakroom Quiz

11th of 71 rated pharmaceutical


Job description

Job Summary:
Eli Lilly and Company is a global healthcare leader headquartered in Indianapolis, Indiana. They are seeking an Engineer - MLOps & Scientific Platforms - Data Foundry to operationalize scientific tools and analytical methods into actionable prototypes, ensuring reliability and scalability for both discovery scientists and AI agents.
Responsibilities:
• Build and maintain end-to-end ML deployment pipelines: experiment tracking, model versioning (MLflow, Weights & Biases), containerized model serving, and automated retraining triggers.
• Develop model registry infrastructure and feature engineering pipelines that enable computational scientists to access models.
• Implement monitoring and alerting for data pipelines, APIs, ML models, and agentic systems (LLMOps) to ensure system reliability and performance at scale.
• Build dashboards and metrics tracking for pipeline execution, API latency, token usage, model prediction quality, and system health
• Establish structured logging and tracing infrastructure for debugging and performance optimization across scientific data systems
• Deploy predictive and analytical methods from Methods4Insight (e.g. cheminformatics, structural biology, bioinformatics, reaction informatics) with versioning, structured error handling, and response-time guarantees that enable insight generation in agile manner. Productionize when and where needed in partnerships with Tech@Lilly.
• Build serving infrastructure supporting both synchronous (interactive scientist queries) and asynchronous (batch and agent-invoked) workloads in partnership with Tech@Lilly and Frontier AI.
• Define and implement API contracts, documentation standards, and testing frameworks that ensure scientific tools are analysis ready, robust and consumable by external teams including Frontier AI.
• Build and operate cloud-native model serving infrastructure (AWS, Azure, or GCP) using containers, Kubernetes, and infrastructure-as-code.
• Develop CI/CD pipelines for ML models: automated validation, A/B testing, canary deployments, and rollback procedures.
• Integrate model serving with Data Foundry’s data pipelines, ensuring models have access to properly formatted, versioned training and inference data.
• Partner with the Frontier AI team and Tech@Lilly to ensure Data Foundry’s scientific tools are exposed via well-defined interfaces (REST APIs, MCP-compatible endpoints) that agents can invoke programmatically.
• Collaborate on API performance requirements: latency targets, throughput guarantees, and graceful degradation under load.
• Work with Methods4Insight scientists to ensure deployed models include appropriate uncertainty quantification and confidence metrics.
Qualifications:
Required:
• B.S. or M.S. in Computer Science, Data Science, Machine Learning, Bioinformatics, Computational Biology, or related field.
• 3+ years of experience in MLOps, ML engineering, or scientific platform development.
• Qualified applicants must be authorized to work in the United States on a full-time basis. Lilly will not provide support for or sponsor work authorization or visas for this role, including but not limited to F-1 CPT, F-1 OPT, F-1 STEM OPT, J-1, H-1B, TN, O-1, E-3, H-1B1, or L-1.
Preferred:
• Pharmaceutical or biotech research industry experience.
• Strong Python skills; experience with ML frameworks (PyTorch, TensorFlow, scikit-learn) and ML lifecycle tools (MLflow, W&B, Kubeflow, or similar).
• Proven track record building and deploying production model serving infrastructure — containerized endpoints, RESTful/gRPC APIs, and operational monitoring.
• Working knowledge of cloud platforms (AWS, Azure, or GCP), Kubernetes, and CI/CD automation.
• Strong communication skills with ability to collaborate across computational scientists, software engineers, and partner teams.
• Experience operationalizing scientific or computational models (cheminformatics, bioinformatics, structural biology, QSAR, molecular simulations, PK/PD, systems biology, or ODE-based models).
• Hands-on experience with model monitoring, drift detection, and automated retraining systems.
• Familiarity with API gateway patterns, event-driven architectures, and service mesh technologies.
• Experience with feature stores, data versioning (DVC), or experiment tracking at scale.
• Exposure to AI agent frameworks (MCP, LangChain) or building APIs that AI systems invoke programmatically.
• Experience with C, C++, CUDA, or GPU-accelerated computing for optimizing model training/inference performance; familiarity with containerizing HPC workloads (Singularity/Apptainer).
Company:
We're a medicine company turning science into healing to make life better for people around the world. Founded in 1876, the company is headquartered in Indianapolis, USA, with a team of 10001+ employees. The company is currently Late Stage.

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About Eli Lilly

Sourced by ZipRecruiter

Eli Lilly, based in Indianapolis, IN, US, is one of the pioneers in the pharmaceutical industry with a rich history dating back to 1876. This global pharmaceutical company focuses on discovering, developing, manufacturing and selling pharmaceutical products in approximately 120 countries. The company's product categories include endocrinology, oncology, cardiovascular, neuroscience, and immunology. Having invested over $9 billion in research and development in the past decade, Eli Lilly is also committed to creating high-quality medicines that meet real needs. As a recipient of several awards and recognitions, Eli Lilly is known for its focus on life-saving research and drug development. Their mission is to make medicines that help people live longer, healthier, and more active lives.

Industry

Pharmaceutical product wholesalers

Company size

10,000+ Employees

Headquarters location

Indianapolis, IN, US

Year founded

1876