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Postdoctoral In Reinforcement Learning Jobs in Chicago, IL

This is an opportunity to contribute directly to cutting-edge work in large language models, reinforcement learning, long-context systems, and scalable AI infrastructure. Responsibilities * Develop ...

Research Scientist Senior

Chicago, IL · On-site +1

$101K - $129K/yr

... in highly regulated healthcare environments. * Develops scalable machine learning and reinforcement learning systems that improve healthcare outcomes, operational efficiency, and member experience ...

Research Scientist Senior

Chicago, IL · On-site +1

$101K - $129K/yr

... in highly regulated healthcare environments. * Develops scalable machine learning and reinforcement learning systems that improve healthcare outcomes, operational efficiency, and member experience ...

In this role, you will: * Collaborate with customer Analytics/BI teams and Braze colleagues on ... Work closely with the RL pipeline development team to refine and advance our reinforcement learning ...

An expert in machine learning: You have a solid grasp of machine learning, including a familiarity with reinforcement learning * Mar-tech savvy: You understand the marketing technology ecosystem and ...

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Postdoctoral In Reinforcement Learning information

See Chicago, IL salary details

$25.8K

$60.8K

$86K

How much do postdoctoral in reinforcement learning jobs pay per year?

As of Jun 23, 2026, the average yearly pay for postdoctoral in reinforcement learning in Chicago, IL is $60,801.00, according to ZipRecruiter salary data. Most workers in this role earn between $50,500.00 and $68,500.00 per year, depending on experience, location, and employer.

What is the difference between Postdoctoral In Reinforcement Learning vs Postdoctoral In Machine Learning?

AspectPostdoctoral In Reinforcement LearningPostdoctoral In Machine Learning
Required CredentialsPhD in Computer Science, AI, or related field; strong programming skills; research experience in reinforcement learningPhD in Computer Science, AI, or related field; strong programming skills; research experience in machine learning
Work EnvironmentAcademic labs, research institutions, industry R&D teams focused on reinforcement learning applicationsAcademic labs, research institutions, industry R&D teams working on various machine learning techniques
Industry UsagePrimarily in AI research, robotics, gaming, and autonomous systemsBroader applications including data analysis, predictive modeling, and AI research

Postdoctoral In Reinforcement Learning specializes in research related to decision-making algorithms and autonomous systems, whereas Postdoctoral In Machine Learning covers a wider range of AI techniques. Both roles require similar credentials but differ in focus and application areas.

What are the key skills and qualifications needed to thrive as a Postdoctoral Researcher in Reinforcement Learning, and why are they important?

To thrive as a Postdoctoral Researcher in Reinforcement Learning, you need a PhD in computer science or a related field, with deep expertise in machine learning, statistics, and algorithm development. Proficiency in programming languages such as Python, experience with deep learning frameworks (e.g., TensorFlow or PyTorch), and familiarity with reinforcement learning libraries are typically required. Strong analytical thinking, problem-solving ability, collaboration, and scientific communication skills help you excel in research teams and publish impactful work. These competencies are vital to advancing state-of-the-art research, developing novel algorithms, and contributing to the academic and industrial progress in AI.

What are some common challenges faced by postdoctoral researchers in reinforcement learning, and how can they be addressed?

Postdoctoral researchers in reinforcement learning often face challenges such as balancing independent research projects with collaborative work, staying up-to-date with rapidly evolving literature, and managing the pressure to publish in top conferences. Effective time management, regular engagement with the research community through seminars and workshops, and seeking mentorship from senior colleagues can help address these challenges. Additionally, collaborating with interdisciplinary teams can offer fresh perspectives and support, making it easier to navigate complex research problems.

What is a Postdoctoral Researcher in Reinforcement Learning?

A Postdoctoral Researcher in Reinforcement Learning is an individual who has completed a PhD and conducts advanced research in the field of reinforcement learning, a branch of artificial intelligence focused on how agents take actions in environments to maximize rewards. These researchers often work in academic, industrial, or governmental research settings, collaborating on projects that advance the theoretical foundations or practical applications of reinforcement learning. Their responsibilities may include designing experiments, developing algorithms, publishing papers, and mentoring graduate students.
What are popular job titles related to Postdoctoral In Reinforcement Learning jobs in Chicago, IL? For Postdoctoral In Reinforcement Learning jobs in Chicago, IL, the most frequently searched job titles are:
What job categories do people searching Postdoctoral In Reinforcement Learning jobs in Chicago, IL look for? The top searched job categories for Postdoctoral In Reinforcement Learning jobs in Chicago, IL are:
What cities near Chicago, IL are hiring for Postdoctoral In Reinforcement Learning jobs? Cities near Chicago, IL with the most Postdoctoral In Reinforcement Learning job openings:
Infographic showing various Postdoctoral In Reinforcement Learning job openings in Chicago, IL as of June 2026, with employment types broken down into 5% Locum Tenens, 75% Full Time, 10% Part Time, and 10% Nights. Highlights an 89% Physical, 5% Hybrid, and 6% Remote job distribution, with an average salary of $60,801 per year, or $29.2 per hour.
Staff Scientist - Post-Training and Reinforcement Learning for AI for Science

Staff Scientist - Post-Training and Reinforcement Learning for AI for Science

Argonne National Laboratory

Lemont, IL • On-site, Remote

Full-time

Posted 25 days ago


Job description

The Argonne Leadership Computing Facility (ALCF) is seeking a Staff Scientist in Post-Training and Reinforcement Learning for AI for Science to help advance the next generation of foundation models and learning systems for scientific discovery.


This is an opportunity to work at the frontier of AI for science and the Department of Energy Genesis mission, where large-scale machine learning, scientific data, simulation, and leadership-class supercomputers come together to enable new modes of discovery across physics, materials science, chemistry, biology, climate, energy, and related fields. We are looking for a creative and collaborative scientist who is excited to develop, scale, and evaluate post-training methods, including reinforcement learning, preference optimization, adaptation, and alignment techniques, for scientific AI models and workflows.


The successful candidate will conduct research on methods that improve the usefulness, reliability, and scientific performance of large-scale AI models after pretraining, while also advancing the systems and software needed to run these methods efficiently on cutting-edge supercomputers and emerging AI platforms. This role offers the opportunity to contribute both fundamental advances in machine learning and high-impact scientific applications while working in a multidisciplinary environment with experts in AI, simulation, computer science, applied mathematics, and domain science.


You will join the AI group - a highly collaborative, multidisciplinary environment and work alongside experts in AI, simulation, computer science, applied mathematics, and domain science. This role offers the chance to contribute both foundational advances and real-world scientific outcomes, with opportunities to publish in leading journals and conferences, engage with national and international collaborators, and influence AI and HPC for scientific research.

In this role you will:

  • Conduct research and development aligned with Argonne's strategic mission in computation, AI, and scientific discovery.
  • Develop, scale, and optimize post-training methods for scientific foundation models, including reinforcement learning, preference-based optimization, fine-tuning, alignment, and related approaches.
  • Advance techniques that improve the performance, controllability, reliability, and scientific utility of AI models for science applications.
  • Design and evaluate methods for applying reinforcement learning and post-training pipelines to large-scale scientific and data-intensive environments.
  • Develop and optimize workflows for training and post-training on leadership-class supercomputers and emerging AI-oriented architectures.
  • Partner with computational scientists, applied mathematicians, and domain researchers to apply foundation models and adaptive learning systems to challenging scientific problems with high impact.
  • Address algorithmic, systems, and data challenges associated with large-scale training and post-training, including performance, scalability, robustness, and usability.
  • Conduct original research in computational science and AI at scale, and communicate findings through publications, conference presentations, software, reports, and other research outputs.
  • Work closely with colleagues across national laboratories, universities, industry, and supercomputing centers on current and future systems for the AI for science mission.
  • Contribute to a team culture that values scientific excellence, collaboration, innovation, and inclusive professional growth.


This position qualifies as "Hybrid Remote Work - Mostly Onsite": which applies to employees regularly scheduled for some onsite and some remote days, with employees typically working up to 40% of their time remotely.

Position Requirements

Required Qualifications:

  • RD2: Bachelor's degree and 5+ years of experience, or a Masters and 3+ years of experience, or a PhD, or equivalent
  • Education in computer science, applied mathematics, statistics, computational science, or a related field
  • Demonstrated advanced knowledge in one or more of the following areas: machine learning, reinforcement learning, large-scale model training, post-training, optimization, data mining, or statistics
  • Strong background in mathematical optimization, linear algebra, or numerical methods
  • Advanced knowledge of and significant programming experience in one or more languages such as Python, C, or C++
  • Significant experience with machine learning frameworks such as PyTorch or JAX
  • Experience with large-scale training, distributed learning systems, or post-training workflows
  • Experience with software development practices and techniques for computational science and machine learning systems
  • Ability to work effectively in interdisciplinary teams involving mathematicians, computer scientists, and application scientists
  • Effective written and verbal communication skills
  • Ability to model Argonne's core values of impact, safety, respect, integrity, and teamwork

Preferred Qualifications:

  • Experience with reinforcement learning, policy optimization, bandits, preference learning, or related methods
  • Experience with post-training methods for large models, including supervised fine-tuning, reinforcement learning from feedback, direct preference optimization, reward modeling, or model adaptation
  • Experience with distributed training, large-scale optimization, and multi-node or multi-accelerator execution

Job Family

Research Development (RD)

Job Profile

Computer Science 2

Worker Type

Regular

Time Type

Full timeThe expected hiring range for this position is $94,486.00 - $147,398.94.

Please note that the pay range information is a general guideline only. The pay offered to a selected candidate will be determined based on factors such as, but not limited to, the scope and responsibilities of the position, the qualifications of the selected candidate, business considerations, internal equity, and external market pay for comparable jobs. Additionally, comprehensive benefits are part of the total rewards package.

Click here to view Argonne employee benefits!

As an equal employment opportunity employer, and in accordance with our core values of impact, safety, respect, integrity and teamwork, Argonne National Laboratory is committed to a safe and welcoming workplace that fosters collaborative scientific discovery and innovation. Argonne encourages everyone to apply for employment. Argonne is committed to nondiscrimination and considers all qualified applicants for employment without regard to any characteristic protected by law.

Argonne employees, and certain guest researchers and contractors, are subject to particular restrictions related to participation in Foreign Government Sponsored or Affiliated Activities, as defined and detailed in United States Department of Energy Order 486.1A. You will be asked to disclose any such participation in the application phase for review by Argonne's Legal Department.

All Argonne offers of employment are contingent upon a background check that includes an assessment of criminal conviction history conducted on an individualized and case-by-case basis. Please be advised that Argonne positions require upon hire (or may require in the future) for the individual be to obtain a government access authorization that involves additional background check requirements. Failure to obtain or maintain such government access authorization could result in the withdrawal of a job offer or future termination of employment.