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Neural Engineering Jobs in Georgia (NOW HIRING)

Senior Machine Learning Engineer

Atlanta, GA

$117K - $155K/yr

... neural networks and deep learning techniques using PyTorch for appropriate use cases alongside scikit-learn-based classical approaches. * Write robust, production-ready code following engineering ...

Industrial Technologies Engineer

Lagrange, GA · On-site

$62K - $84K/yr

... g position. o Experience with various ML learning techniques including neural networks, clustering, and classification. o Experience with automated controls technologies is beneficial but not ...

Preferred but not required: o Experience in a Network or IT Engineering position. o Experience with various ML learning techniques including neural networks, clustering, and classification. o ...

Senior Machine Learning Engineer

Atlanta, GA · On-site +1

$117K - $155K/yr

... neural networks and deep learning techniques using PyTorch for appropriate use cases alongside scikit-learn-based classical approaches. * Write robust, production-ready code following engineering ...

Implement and secure machine learning models, neural networks, and AI techniques to enhance threat ... Provide technical leadership and mentorship to junior engineers in AI and machine learning. Ensure ...

... deep neural networks, support vector machines, boosting algorithms, random forest etc. preferred * Experience conducting advanced feature engineering and data dimension reduction in Big Data ...

In this role at PwC, you will apply data, algorithms, and software engineering to build and deploy ... Applying deep learning techniques and neural networks to improve predictive analytics ...

... rapid-fire engineering, precision-measured outcomes, and relentless grit into mission-ready ... Apply data science techniques - regression, NLP, clustering, neural networks, deep learning, image ...

... rapid-fire engineering, precision-measured outcomes, and relentless grit into mission-ready ... Apply data science techniques - regression, NLP, clustering, neural networks, deep learning, image ...

Senior AI/ML Engineer

Atlanta, GA

$100K - $138K/yr

... neural classifiers) for record linkage across the US adult population * Build candidate blocking ... Perform prompt engineering and evaluation for structured data extraction from unstructured inputs ...

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Neural Engineering information

See Georgia salary details

$9

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How much do neural engineering jobs pay per hour?

As of Jun 14, 2026, the average hourly pay for neural engineering in Georgia is $16.31, according to ZipRecruiter salary data. Most workers in this role earn between $13.61 and $17.64 per hour, depending on experience, location, and employer.

How much are neural engineers paid?

Neural engineers typically earn a median annual salary of around $80,000 to $120,000, depending on experience, education, and location. Entry-level positions may start lower, while experienced professionals with advanced skills in neurotechnology and programming can earn higher salaries, especially in research or industry settings.

What is neural engineering?

Neural engineering is a multidisciplinary field that combines engineering, neuroscience, and computational approaches to understand, repair, enhance, or interface with the nervous system. Neural engineers develop devices such as brain-computer interfaces, neural prosthetics, and neurostimulation systems to restore or improve neural function. This field plays an important role in advancing treatments for neurological disorders and in creating technologies that bridge the gap between machines and the human brain.

What engineers make $500,000?

Senior neural engineers, especially those with extensive experience, advanced degrees, and expertise in machine learning, neurotechnology, or biomedical applications, can earn salaries approaching or exceeding $500,000 annually. These roles often require specialized skills, leadership responsibilities, and work in high-demand industries such as healthcare, research, or tech companies. Compensation varies based on location, company size, and individual credentials.

What are the key skills and qualifications needed to thrive as a Neural Engineer, and why are they important?

To thrive as a Neural Engineer, you need a strong background in neuroscience, biomedical engineering, and signal processing, typically supported by an advanced degree in a related field. Familiarity with programming languages (such as MATLAB or Python), neuroimaging tools, and hardware platforms used for neural interfacing is essential. Excellent problem-solving skills, collaboration, and clear communication set standout professionals apart in this multidisciplinary environment. These skills are crucial for developing innovative neural technologies and translating research into effective clinical or commercial solutions.

What can you do with a neural engineering degree?

A neural engineering degree prepares individuals for careers in developing brain-computer interfaces, neuroprosthetics, and neural signal processing. Graduates often work in research, healthcare, or technology companies, utilizing skills in neuroscience, engineering, and programming to innovate medical devices and neural systems.

What is the salary of a neuroengineer?

The salary of a neuroengineer typically ranges from $70,000 to $130,000 annually, depending on experience, education, location, and the specific employer. Entry-level positions may start lower, while experienced professionals with advanced skills in neural interfaces and computational modeling can earn higher salaries.

What Are Jobs in Neural Engineering?

Jobs in neural engineering focus on helping research and design biomedical devices like prosthetic limbs and artificial organs. In these roles, you may determine the best way to implement designs for each situation, figure out the best way to link mechanical systems to the human brain, and find the most cost-effective ways to build devices. Neural engineering differs from engineering regular prosthetic limbs in that they receive instructions directly from the brain and often send information back, rather than simply being attached to the body. This often involves programming specialized software and figuring out how to make devices that can teach the brain how to use them. In recent years, neural engineering has started to move out of the medical realm, and there may be more jobs of that nature in the future. Neural engineering is a specific type of biomedical engineering, but should not be confused with jobs in the broader category.

What are some common interdisciplinary challenges faced by neural engineers when collaborating with clinicians and data scientists?

Neural engineers frequently work on teams that include clinicians, data scientists, and hardware specialists, which can present unique interdisciplinary challenges. Effective communication is essential, as team members often have different technical backgrounds and priorities—clinicians focus on patient outcomes, while data scientists emphasize analytical accuracy. Bridging the gap between clinical needs and technical feasibility requires adaptability, openness to feedback, and a willingness to learn new concepts. Building strong collaborative relationships and participating in regular cross-functional meetings can help ensure that project goals are clearly understood and met by all stakeholders.
What are popular job titles related to Neural Engineering jobs in Georgia? For Neural Engineering jobs in Georgia, the most frequently searched job titles are:
What cities in Georgia are hiring for Neural Engineering jobs? Cities in Georgia with the most Neural Engineering job openings:
Infographic showing various Neural Engineering job openings in Georgia as of June 2026, with employment types broken down into 100% Full Time. Highlights an 100% In-person job distribution, with an average salary of $33,922 per year, or $16.3 per hour.
Machine Learning Research Engineer (Scientific & Engineering AI)

Machine Learning Research Engineer (Scientific & Engineering AI)

Optimal Inc.

Embry Hills, GA

Full-time

Posted 2 days ago


Job description

Machine Learning Research Engineer (Scientific & Engineering AI)
Urgent Hiring Requirement

Minimum Qualification: PhD in a relevant technical field.

This is an urgent requirement with an anticipated start date within 2 weeks. Priority will be given to candidates who can interview promptly and begin within two weeks of selection.

Job Summary

We are seeking a highly motivated Machine Learning Research Engineer (Scientific & Engineering AI) with strong expertise in Machine Learning, Deep Learning, Computer Vision, and AI research. This role is intended exclusively for PhD graduates or candidates near completion from reputable universities.

Candidates with a strong academic research background in Machine Learning, Artificial Intelligence, Computer Vision, Data Science, Scientific Computing, Mechanical Engineering, Materials Science, Manufacturing Engineering, Applied Physics, Computational Engineering, or related fields are encouraged to apply.

Ideal candidates will combine strong ML/DL expertise with domain knowledge in mechanical engineering, materials science, manufacturing systems, physical systems, scientific computing, or simulation-driven engineering applications.

Research experience gained during a PhD program will be considered equivalent to professional industry experience.

This is an urgent hiring requirement, and we are actively seeking candidates who can start within the next 2 weeks.

Education Requirement
PhD in Computer Science, Computer Engineering, Electrical Engineering, Artificial Intelligence, Machine Learning, Data Science, Mechanical Engineering, Materials Science, Manufacturing Engineering, Applied Physics, Computational Engineering, or a related technical field.
Candidates currently pursuing a PhD with anticipated graduation within the next 3-6 months are also encouraged to apply.
Only PhD candidates will be considered for this role.
Candidates with only a Master's degree will not be considered.
Key Responsibilities
Design, develop, train, and optimize Machine Learning and Deep Learning models for real-world applications.
Own the complete ML lifecycle including data collection, annotation, preprocessing, model training, fine-tuning, evaluation, optimization, and deployment.
Develop and deploy advanced deep learning architectures including CNNs, LSTMs, ConvLSTMs, Graph Neural Networks (GNNs), Reinforcement Learning, and Transformer-based models.
Conduct experiments, evaluate model performance, and drive continuous algorithmic improvements.
Work with large-scale datasets for model training, validation, and testing.
Optimize and deploy AI models for scalable and efficient real-world applications.
Translate research concepts into scalable, production-ready AI systems.
Collaborate with cross-functional engineering and research teams to integrate ML models into real-world applications.
Document methodologies, experimental findings, and technical solutions.
Contribute to technical innovation initiatives and advanced AI research activities.


Required Qualifications
Strong PhD research background in Machine Learning, Deep Learning, Artificial Intelligence, Computer Vision, Data Science, Scientific Machine Learning, Computational Engineering, Applied Physics, Materials Informatics, or related areas.
Strong programming experience with Python and C++.
Hands-on experience with PyTorch, TensorFlow, Keras, Scikit-learn, or similar ML frameworks.
Strong understanding of Machine Learning, Deep Learning, Neural Networks, Computer Vision, and AI algorithms.
Experience developing and training advanced deep learning models and architectures.
Solid mathematical foundation in linear algebra, probability, statistics, optimization, and applied machine learning.
Experience working with Linux environments, Git, Docker, and modern development workflows.
Demonstrated research experience through publications, thesis work, academic research projects, or equivalent research contributions.
Strong ability to independently research, prototype, and deploy AI solutions.
Experience applying machine learning or deep learning techniques to engineering, manufacturing, materials science, physical systems, scientific computing, simulation, or industrial applications is highly desirable.


Preferred Qualifications
Publications in leading AI, Machine Learning, Computer Science, Scientific Computing, Computational Engineering, Materials Science, or Applied Physics conferences and journals.
Experience transitioning AI/ML models from research environments into production systems.
Experience with CUDA, GPU acceleration, distributed computing, high-performance computing (HPC), or parallel computing environments.
Experience handling large-scale, real-world datasets.
Familiarity with Physics-Informed Machine Learning (PIML), Physics-Informed Neural Networks (PINNs), scientific foundation models, digital twins, simulation-driven AI, or engineering optimization techniques.
Experience working with data generated from CAD, CAE, CFD, FEA, multiphysics simulations, manufacturing processes, materials characterization, laboratory testing, or other engineering and scientific workflows.


Technical Skills
Python, C++
PyTorch, TensorFlow, Keras, Scikit-learn
Machine Learning and Deep Learning
Computer Vision
Reinforcement Learning
Graph Neural Networks (GNNs)
Transformer Architectures
Linux, Git, Docker
CUDA and GPU Computing
Scientific Computing and Optimization
Physics-Informed Machine Learning (Preferred)
Engineering and Scientific Data Analysis (Preferred)