1

Machine Learning Researcher Jobs in Oklahoma (NOW HIRING)

As a Machine Learning Engineer, you will prepare datasets, train and optimize models, and maintain ... You will learn and apply new techniques from open source packages and research publications, and ...

About Us We are AI researchers and builders who understand how to curate data and RL environments ... deep learning proficiency (PyTorch preferred; familiar with training loops, optimizers, mixed ...

About Us We are AI researchers and builders who understand how to curate data and RL environments ... deep learning proficiency (PyTorch preferred; familiar with training loops, optimizers, mixed ...

About Us We are AI researchers and builders who understand how to curate data and RL environments ... deep learning proficiency (PyTorch preferred; familiar with training loops, optimizers, mixed ...

About Us We are AI researchers and builders who understand how to curate data and RL environments ... deep learning proficiency (PyTorch preferred; familiar with training loops, optimizers, mixed ...

next page

Showing results 1-20

Machine Learning Researcher information

See Oklahoma salary details

$27.7K

$104.4K

$151.9K

How much do machine learning researcher jobs pay per year?

As of Jun 21, 2026, the average yearly pay for machine learning researcher in Oklahoma is $104,431.00, according to ZipRecruiter salary data. Most workers in this role earn between $61,900.00 and $142,200.00 per year, depending on experience, location, and employer.

What are some common challenges Machine Learning Researchers face when transitioning from academic research to industry roles?

Machine Learning Researchers often find that transitioning to industry involves adapting to faster project timelines, collaborative workflows, and a focus on scalable, real-world solutions rather than theoretical advances alone. In industry, you'll likely work closely with cross-functional teams, such as software engineers and product managers, to ensure models are both practical and maintainable. Balancing innovation with business objectives, handling production constraints, and communicating complex findings to non-technical stakeholders are some of the key challenges you may encounter.

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

To thrive as a Machine Learning Researcher, you need deep expertise in mathematics, statistics, programming (typically Python), and a strong academic background in computer science or related fields. Familiarity with frameworks like TensorFlow or PyTorch and experience with tools for data analysis and model development are standard, often supported by advanced degrees or relevant certifications. Critical thinking, creativity, and effective communication are vital soft skills for developing novel solutions and collaborating across interdisciplinary teams. These skills enable researchers to design innovative algorithms, validate models rigorously, and contribute impactful advancements in the field.

What is the difference between Machine Learning Researcher vs Data Scientist?

AspectMachine Learning ResearcherData Scientist
Required CredentialsAdvanced degrees in CS, ML, or related fields; research experienceDegree in CS, statistics, or related; strong analytical skills
Work EnvironmentResearch labs, academia, R&D departmentsBusiness environments, tech companies, consulting
Employer & Industry UsageUniversities, research institutions, tech firmsCorporations, startups, finance, healthcare
Common Search & ComparisonFocus on theoretical ML advancementsFocus on data analysis & business insights

While both roles involve working with data and algorithms, Machine Learning Researchers primarily focus on developing new algorithms and advancing ML theory, often in research or academic settings. Data Scientists apply these techniques to analyze data, generate insights, and support business decisions in industry environments.

What does a Machine Learning Researcher do?

A Machine Learning Researcher designs, develops, and tests algorithms and models that allow computers to learn from and make decisions based on data. They often work on advancing the field by exploring new methods, improving existing algorithms, and publishing their findings. These researchers collaborate with engineers and data scientists to apply their research to practical problems in areas like computer vision, natural language processing, and robotics. Their work typically involves a combination of mathematics, statistics, programming, and experimentation.
What are the most commonly searched types of Machine Learning Researcher jobs in Oklahoma? The most popular types of Machine Learning Researcher jobs in Oklahoma are:
What are popular job titles related to Machine Learning Researcher jobs in Oklahoma? For Machine Learning Researcher jobs in Oklahoma, the most frequently searched job titles are:
What job categories do people searching Machine Learning Researcher jobs in Oklahoma look for? The top searched job categories for Machine Learning Researcher jobs in Oklahoma are:
Sr. Machine Learning Researcher, Domain-Aware Modeling & Scientific Machine Learning

Sr. Machine Learning Researcher, Domain-Aware Modeling & Scientific Machine Learning

Bayer Global

Tulsa, OK • On-site

$85K - $108K/yr

Other

Medical, Dental, Vision, Retirement, PTO

Posted 7 days ago


Bayer rating

8.1

Company rating: 8.1 out of 10

Based on 65 frontline employees who took The Breakroom Quiz

32nd of 71 rated pharmaceutical


Job description

Sr. Machine Learning Researcher, Domain-Aware Modeling & Scientific Machine Learning

At Bayer we're visionaries, driven to solve the world's toughest challenges and striving for a world where 'Health for all Hunger for none' is no longer a dream, but a real possibility. We're doing it with energy, curiosity and sheer dedication, always learning from unique perspectives of those around us, expanding our thinking, growing our capabilities and redefining 'impossible'. There are so many reasons to join us. If you're hungry to build a varied and meaningful career in a community of brilliant and diverse minds to make a real difference, there's only one choice.

We are seeking a Sr. Machine Learning Researcher with strong expertise in the mathematical foundations of machine learning and scientific computing to develop next-generation domain-aware models for agriculture. This role sits at the intersection of applied mathematics, domain-aware modeling, and deep learning, with the goal of building models that respect and encode the underlying structure of biological and environmental systems. You will design principled, interpretable, and generalizable AI architectures that integrate scientific knowledge from genetics to crop physiology to environmental dynamics into data-driven frameworks. Your work will directly enable transformative applications in genomic selection and genome editing target identification, accelerating the development of improved crop varieties worldwide.

Your Tasks and Responsibilities

The primary responsibilities of this role are:

  • Scientific ML Model Development: Design, build, and validate domain-aware machine learning models (e.g., biology-informed, and hybrid mechanistic-statistical architectures) that incorporate prior scientific knowledge into learning algorithms for agricultural and genomic applications.
  • Mathematical Framework Design: Develop novel architectures and loss functions that embed biological constraints, conservation laws, symmetry properties, or known functional relationships into neural network training, ensuring physically and biologically consistent predictions.
  • Genomic Selection & Editing Enablement: Architect models that leverage high-dimensional genomic, phenomic, and environmental data to predict complex trait outcomes, identify causal genetic variants, and prioritize genome editing targets with quantified uncertainty.
  • Uncertainty Quantification: Implement rigorous uncertainty quantification frameworks (Bayesian deep learning, ensemble methods, probabilistic surrogate models) to provide decision-makers with calibrated confidence estimates on model predictions.
  • Interdisciplinary Collaboration: Partner with geneticists, plant biologists, agronomists, environmental scientists, and software engineers to translate domain expertise into model architecture decisions and validate model outputs against biological ground truth.
  • Scalable Deployment: Work with engineering and IT teams to transition research prototypes into production-grade models integrated within breeding and discovery pipelines, ensuring reproducibility, scalability, and maintainability.
  • Research Contribution: Contribute to publications in leading venues, participate in the internal scientific community, and stay at the frontier of scientific machine learning methodology.
  • Documentation & Communication: Prepare comprehensive technical documentation, present findings to both technical and non-technical stakeholders, and build organizational trust in AI-driven decision-making.

Who You Are

Bayer seeks an incumbent who possesses the following:

Required:

  • PhD in one of the following or closely related fields:
    • Machine Learning / Deep Learning
    • Applied Mathematics
    • Computational Science & Engineering
    • Physics
    • Chemical, Mechanical, or Biomedical Engineering
    • Computer Science (with scientific computing or numerical methods focus)
    • Statistics / Probabilistic Modeling
    • Another related quantitative discipline with demonstrated depth in mathematical modeling
  • Demonstrated research output (publications, thesis work, or applied projects) in scientific machine learning, numerical methods for differential equations, or data-driven modeling of physical/biological systems.
  • Proficiency in modern deep learning frameworks (PyTorch, JAX, or TensorFlow) and scientific computing libraries.
  • Experience formulating and solving problems involving high-dimensional, structured, or multi-modal data.
  • Strong communication skills and willingness to collaborate across disciplines.

Preferred:

  • 5+ years post-PhD relevant experience
  • Demonstrated experience with one or more of the following domain-aware modeling paradigms:
    • Physics-Informed Neural Networks (PINNs)
    • Biology-Informed Neural Networks (BINNs) / Visible Neural Networks (VNNs)
    • Neural Ordinary/Partial Differential Equations (Neural ODEs/PDEs)
    • Operator learning methods (e.g., DeepONet, Fourier Neural Operator)
    • Hybrid mechanistic–data-driven models
  • Experience with Bayesian inference, Gaussian processes, hierarchical models, or probabilistic programming.
  • Familiarity with nonlinear dynamics, dynamical systems theory, or systems biology modeling.
  • Background in surrogate modeling, model reduction, or multi-fidelity methods.
  • Exposure to genomics data structures (e.g., variant matrices, linkage disequilibrium, population genetics) or quantitative genetics (e.g., genomic BLUP, marker-effect models) - not required, but valued.
  • Experience deploying ML models into production environments (MLOps, containerization, cloud-based HPC).
  • Experience collaborating in interdisciplinary research teams spanning experimental and computational scientists.
  • Familiarity with ensemble methods, gradient-boosted models, kernel methods, or classical statistical learning as complementary tools.

Employees can expect to be paid a salary of approximately $120k-170k. Additional compensation may include a bonus or incentive program (if relevant). Additional benefits include health care, vision, dental, retirement, PTO, sick leave, etc.. This salary (or salary range) is merely an estimate and may vary based on an applicant's location, market data/ranges, an applicant's skills and prior relevant experience, certain degrees and certifications, and other relevant factors.

This posting will be available for application until at least 6/26/26.


What Bayer employees say

Pay

Benefits

Hours and flexibility

Workplace

Get the full story on Breakroom


Bayer logo

About Bayer

Sourced by ZipRecruiter

Bayer is a global enterprise with core competencies in the life science fields of healthcare and nutrition. We design our products and services to help people and planet thrive by supporting efforts to address the unprecedented global challenges presented by a growing and aging global population. At Bayer, we’re committed to drive sustainable development and generate a positive impact with our businesses. Through bold ideas and unprecedented insights, we’re pioneering new possibilities that advance life for all of us. That means reimagining how we care for ourselves and one another by empowering everyday health, improving approaches to patient care, and finding better ways to nourish our communities around the world.

Industry

Agriculture

Company size

10,000+ Employees

Headquarters location

Whippany, NJ, US