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Graph Neural Networks Postdoctoral Jobs (NOW HIRING)

Postdoctoral Associate Apply now Back to search results Job no: 536282 Work type: Research Faculty ... Graph neural networks, including robust learning on graph-structured data, security and privacy ...

... a Postdoctoral Scholar beginning August 2026. The successful candidate will work with Professor ... Preference will be given to candidates that are proficient with graph neural networks and other ...

Senior, Data Scientist

Decatur, AR · On-site

$90K - $180K/yr

You will also help shape the next generation of fraud intelligence by leveraging Graph Neural Networks (GNNs), network-based modeling, and Generative AI (GenAI) techniques to enhance detection ...

Data Scientist III

Cassville, MO · On-site

$90K - $180K/yr

You will also help shape the next generation of fraud intelligence by leveraging Graph Neural Networks (GNNs), network-based modeling, and Generative AI (GenAI) techniques to enhance detection ...

Staff, Data Scientist

Johnson, AR · On-site

$110K - $220K/yr

You will also help shape the next generation of fraud intelligence by leveraging Graph Neural Networks (GNNs), network-based modeling, and Generative AI (GenAI) techniques to enhance detection ...

Data Scientist III

Bella Vista, AR · On-site

$90K - $180K/yr

You will also help shape the next generation of fraud intelligence by leveraging Graph Neural Networks (GNNs), network-based modeling, and Generative AI (GenAI) techniques to enhance detection ...

Senior Machine Learning Engineer

Houston, TX · On-site

$99K - $137K/yr

Deep Neural Networks (DNN): * Hands-on experience with CNN, RNN, Graph Neural Networks, and transformers. * Proficiency in hyperparameter optimization, autoencoders, model evaluation, and error ...

... ML / Graph Neural Networks (GNNs) Familiarity with RCA methodologies (FMEA, 5 Whys, fishbone diagrams) Experience with vector databases, RAG systems, or LLM-based reasoning Knowledge of MLOps ...

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Graph Neural Networks Postdoctoral information

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$25K

$59K

$83.5K

How much do graph neural networks postdoctoral jobs pay per year?

As of Jun 24, 2026, the average yearly pay for graph neural networks postdoctoral in the United States is $59,022.00, according to ZipRecruiter salary data. Most workers in this role earn between $49,000.00 and $66,500.00 per year, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as a Graph Neural Networks Postdoctoral researcher, and why are they important?

To thrive as a Graph Neural Networks Postdoctoral researcher, you typically need a PhD in computer science, applied mathematics, or a related field with a strong background in machine learning and deep learning. Expertise in Python, PyTorch or TensorFlow, and familiarity with graph libraries such as DGL or PyTorch Geometric are often required. Strong analytical thinking, creativity, and effective scientific communication are important soft skills for advancing research and collaborating with interdisciplinary teams. These capabilities are essential for developing novel research, publishing impactful papers, and contributing to cutting-edge advancements in graph-based AI.

What are Graph Neural Networks Postdoctoral positions?

Graph Neural Networks (GNN) Postdoctoral positions are advanced research roles for individuals who have recently earned a PhD and wish to specialize in the study and development of neural network models that operate on graph-structured data. These positions typically involve conducting original research, publishing papers, collaborating with other researchers, and sometimes teaching or mentoring students. GNN postdocs often work on problems such as social network analysis, molecule property prediction, or recommendation systems, leveraging advanced machine learning techniques. They are usually offered by universities, research institutes, or industry labs and last for one to three years. Applicants are expected to have a strong background in machine learning, deep learning, and graph theory.

What is the difference between Graph Neural Networks Postdoctoral vs Data Scientist?

AspectGraph Neural Networks PostdoctoralData Scientist
Required CredentialsPhD in Computer Science, Machine Learning, or related fieldBachelor's or Master's in Data Science, Computer Science, or related field; often a PhD is preferred
Work EnvironmentAcademic or research institutions, labs, universitiesCorporate, tech companies, startups, or consulting firms
Industry UsageResearch-focused, developing new algorithms and modelsApplying data analysis, modeling, and visualization to business problems
Common Search/ComparisonYesYes

The main difference between a Graph Neural Networks Postdoctoral and a Data Scientist lies in their focus and environment. The postdoctoral role is research-oriented, often in academia, emphasizing developing new algorithms. In contrast, data scientists typically work in industry, applying existing models to solve practical business problems. Both roles require strong analytical skills, but their career paths and daily tasks differ significantly.

What are some common challenges faced by a Graph Neural Networks Postdoctoral researcher when transitioning from traditional machine learning to GNN-based research?

As a Graph Neural Networks Postdoctoral researcher, one of the primary challenges is adapting to the unique data structures and representation methods required for graph-based learning, which differ significantly from traditional tabular or image data. Additionally, you may encounter difficulties in scaling GNN models to large, real-world graphs and ensuring efficient training and inference. Collaboration with interdisciplinary teams, such as domain experts in biology or social networks, is often crucial for designing meaningful experiments and interpreting complex results. Staying up-to-date with the rapidly evolving GNN literature and open-source tools is also essential for success in this role.
Infographic showing various Graph Neural Networks Postdoctoral job openings in the United States as of June 2026, with employment types broken down into 100% Full Time. Highlights an 86% In-person, and 14% Remote job distribution, with an average salary of $59,022 per year, or $28.4 per hour.
Postdoctoral Associate

$63K - $73K/yr

Full-time

Posted 26 days ago


Virginia Tech rating

7.8

Company rating: 7.8 out of 10

Based on 65 frontline employees who took The Breakroom Quiz

193rd of 539 rated colleges and universities


Job description

Postdoctoral Associate
Job no: 536282
Work type: Research Faculty
Senior management: College of Engineering
Department: Computer Science
Location: Blacksburg, Virginia
Categories: Engineering, Research / Scientific
Job Description
The Data Security and Privacy Lab at Virginia Tech invites applications for a Postdoctoral Associate position in the areas of AI for cybersecurity, and cybersecurity and privacy for AI. The position is intended for a highly motivated researcher interested in advancing the foundations and applications of secure, privacy-aware, and reliable AI systems.
The postdoctoral researcher will work closely with the lab director Dr. Kantarcioglu, students, and research collaborators on projects at the intersection of machine learning, AI, security, and privacy. The position offers the opportunity to contribute to both theoretical and applied research, publish in leading venues, and help shape new research directions in these areas.
The successful candidate is expected to contribute to one or more of the following areas:
• AI for cybersecurity, including the use of machine learning and large language models for cyber defense.
• Privacy for AI, including privacy-preserving machine learning, privacy risks in model training and deployment, data protection, and auditing or evaluation of privacy mechanisms.
• Graph neural networks, including robust learning on graph-structured data, security and privacy issues in GNNs, graph-based anomaly detection, and trustworthy graph machine learning.
Required Qualifications
• PhD in Computer Science, Computer Engineering, Electrical Engineering, or a closely related field.
• PhD must be awarded no more than four years prior to the effective date of appointment with a minimum of one year eligibility remaining.
• Strong research background in machine learning, cybersecurity, privacy, graph machine learning, or a related area.
• Demonstrated publication record in relevant peer-reviewed venues (e.g., CODASPY, Neurips, ICML, ICLR, VLDB, ICDE, SIGMOD, CCS, Usenix Security, NDSS ).
• Strong programming and experimental skills.
• Ability to work independently as well as collaboratively in a research group environment.
Preferred Qualifications
• Experience with large language models, trustworthy AI, adversarial machine learning, or privacy-preserving learning.
• Experience with graph neural networks and graph-based data analysis.
• Experience with cybersecurity applications such as intrusion detection, malware analysis, threat intelligence, or security operations.
• Interest in interdisciplinary and applied research with real-world impact.
Overtime Status
Exempt: Not eligible for overtime
Appointment Type
Restricted
Salary Information
$63,000-$73,000
Hours per week
40
Review Date
May 20, 2026
Additional Information
The successful candidate will be required to have a criminal conviction check.
About Virginia Tech
Dedicated to its motto, Ut Prosim (That I May Serve), Virginia Tech pushes the boundaries of knowledge by taking a hands-on, transdisciplinary approach to preparing scholars to be leaders and problem-solvers. A comprehensive land-grant institution that enhances the quality of life in Virginia and throughout the world, Virginia Tech is an inclusive community dedicated to knowledge, discovery, and creativity. The university offers more than 280 majors to a diverse enrollment of more than 36,000 undergraduate, graduate, and professional students in eight undergraduate colleges, a school of medicine, a veterinary medicine college, Graduate School, and Honors College. The university has a significant presence across Virginia, including Blacksburg, the greater Washington, D.C. area, the Health Sciences and Technology Campus in Roanoke, sites in Newport News and Richmond, and numerous Extension offices and research institutes. A leading global research institution, Virginia Tech conducts more than $650 million in research annually.
Virginia Tech endorses and encourages participation in professional development opportunities and university shared governance. These valuable contributions to university shared governance provide important representation and perspective, along with opportunities for unique and impactful professional development.
Virginia Tech does not discriminate against employees, students, or applicants on the basis of age, color, disability, sex (including pregnancy), gender, gender identity, gender expression, genetic information, ethnicity or national origin, political affiliation, race, religion, sexual orientation, or military status, or otherwise discriminate against employees or applicants who inquire about, discuss, or disclose their compensation or the compensation of other employees or applicants, or on any other basis protected by law.
If you are an individual with a disability and desire an accommodation, please contact Joseph Morgan at jmorgan99@vt.edu during regular business hours at least 10 business days prior to the event.
Advertised: April 29, 2026
Applications close:
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About Virginia Tech

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Virginia Tech, guided by its motto "Ut Prosim" (That I May Serve), embraces a hands-on, interdisciplinary approach to educate scholars as leaders and problem-solvers. As a comprehensive land-grant institution, it enriches the quality of life in Virginia and worldwide, fostering an inclusive community focused on knowledge, discovery, and creativity. With over 280 majors, the university serves a diverse student body of more than 36,000 across undergraduate, graduate, and professional programs. Virginia Tech's presence extends throughout Virginia, including campuses in Northern Virginia, Roanoke, Newport News, and Richmond, along with multiple Extension offices and research centers. As a prominent global research institution, it conducts over $500 million in research annually.

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Year founded

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