Postdoctoral Fellow - Atomistic Simulations and AI for Materials Design
Baltimore, MD, 21218
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Johns Hopkins University
Johns Hopkins, founded in 1876, is America's first research university and home to nine world-class academic divisions working together as one universityDescription
The AtomGPTLab, led by Dr. Kamal Choudhary at Johns Hopkins University, invites applications for a Postdoctoral Fellow position in the fields of atomistic simulations, machine-learned force fields, and artificial intelligence (AI). The successful candidate will lead the development of a computational platform that unifies first-principles methods, classical molecular simulations, and cutting-edge AI techniques including graph neural networks (GNNs) and large language models (LLMs) to accelerate experimental design and discovery of novel materials.
The research spans quantum mechanics, statistical physics, and deep learning, and aims to enable AI-guided predictions of synthesizable and functional materials such as superconductors, catalysts, semiconductors, and energy-relevant compounds. The position is embedded in an interdisciplinary and collaborative environment with active interactions across experimental groups and national laboratories.
Qualifications
Basic Qualifications or Specialized Certifications
- A PhD in Materials Science, Physics, Chemistry, Chemical Engineering, Computer Science, or a related field.
- Demonstrated experience in one or more of the following: Density Functional Theory (DFT), machine-learned force fields (MLFF), graph neural networks (GNNs), or large language models (LLMs).
Extensive Knowledge In:
- First-principles simulations with packages such as VASP, Quantum ESPRESSO, GPAW.
- Machine-learned interatomic potentials (e.g., ALIGNN-FF).
- Structure-property prediction using GNNs (e.g., ALIGNN,).
- LLM fine-tuning and prompt engineering (e.g., HuggingFace, OpenAI, AtomGPT).
Working Knowledge Of:
- Workflow tools (e.g.,JARVIS-Tools, ASE) and HPC environments.
- Software development in Python, Git-based version control, and Conda packaging.
- Data integration and surrogate modeling using experimental and computational datasets.
- Interdisciplinary collaboration and mentoring of students or junior researchers.
Specific Duties & Responsibilities
- Conduct high-throughput DFT calculations and manage large-scale materials datasets.
- Develop GNN architectures for predicting materials properties from atomic graphs.
- Train and deploy machine-learned force fields for MD simulations and rapid screening.
- Fine-tune or pre-train LLMs for generation and analysis of materials structures, synthesis protocols, and characterization outputs.
- Build pipelines for combining experimental and simulated data for inverse design.
- Provide real-time computational feedback to experimental collaborators for synthesis and characterization.
- Lead manuscript writing, conference presentations, and contributions to open-source repositories.
- Mentor undergraduate and graduate students, and participate in grant proposal development.
Additional Opportunities
- Collaborate as Co-PI on interdisciplinary proposals.
- Engage with experimental groups, national labs, and industry partners.
- Participate in the development of open cyberinfrastructure (e.g., AtomGPT.org).
- Attend international conferences and contribute to global research communities.
- Access to cutting-edge computing clusters and experimental characterization tools.
Application Instructions
Applicants should submit a curriculum vitae and three recent publications. Review of applications will begin in mid-August 2025.
Equal Employment Opportunity Statement
Salary Range
The referenced salary range represents the minimum and maximum salaries for this position and is based on Johns Hopkins University's good faith belief at the time of posting. Not all candidates will be eligible for the upper end of the salary range. The actual compensation offered to the selected candidate may vary and will ultimately depend on multiple factors, which may include the successful candidate's geographic location, skills, work experience, internal equity, market conditions, education/training and other factors, as reasonably determined by the University.
Total Rewards
Johns Hopkins offers a total rewards package that supports our employees' health, life, career and retirement. More information can be found here: https://hr.jhu.edu/benefits-worklife/.
Equal Opportunity Employer
The Johns Hopkins University is committed to equal opportunity for its faculty, staff, and students. To that end, the university does not discriminate on the basis of sex, gender, marital status, pregnancy, race, color, ethnicity, national origin, age, disability, religion, sexual orientation, gender identity or expression, veteran status or other legally protected characteristic. The university is committed to providing qualified individuals access to all academic and employment programs, benefits and activities on the basis of demonstrated ability, performance and merit without regard to personal factors that are irrelevant to the program involved.
Pre-Employment Information
If you are interested in applying for employment with The Johns Hopkins University and require special assistance or accommodation during any part of the pre-employment process, please contact the HR Business Services Office at jhurecruitment@jhu.edu. For TTY users, call via Maryland Relay or dial 711. For more information about workplace accommodations or accessibility at Johns Hopkins University, please visit accessibility.jhu.edu.
Background Checks
The successful candidate(s) for this position will be subject to a pre-employment background check including education verification.
EEO is the Law:
https://www.eeoc.gov/sites/default/files/2023-06/22 088_EEOC_KnowYourRights6.12ScreenRdr.pdf
Diversity and Inclusion
The Johns Hopkins University values diversity, equity and inclusion and advances these through our key strategic framework, the JHU Roadmap on Diversity and Inclusion.
Vaccine Requirements
Johns Hopkins University strongly encourages, but no longer requires, at least one dose of the COVID-19 vaccine. The COVID-19 vaccine does not apply to positions located in the State of Florida. We still require all faculty, staff, and students to receive the seasonal flu vaccine. Exceptions to the COVID and flu vaccine requirements may be provided to individuals for religious beliefs or medical reasons. Requests for an exception must be submitted to the JHU vaccination registry. This change does not apply to the School of Medicine (SOM). SOM hires must be fully vaccinated with an FDA COVID-19 vaccination and provide proof of vaccination status. For additional information, applicants for SOM positions should visit https://www.hopkinsmedicine.org/coronavirus/covid-19-vaccine/ and all other JHU applicants should visit https://covidinfo.jhu.edu/health-safety/covid-vaccination-information/.
The following additional vaccine requirements may apply, depending upon your campus. Please contact the hiring department for more information.
The pre-employment physical for positions in clinical areas, laboratories, working with research subjects, or involving community contact requires documentation of immune status against Rubella (German measles), Rubeola (Measles), Mumps, Varicella (chickenpox), Hepatitis B and documentation of having received the Tdap (Tetanus, diphtheria, pertussis) vaccination. This may include documentation of having two (2) MMR vaccines; two (2) Varicella vaccines; or antibody status to these diseases from laboratory testing. Blood tests for immunities to these diseases are ordinarily included in the pre-employment physical exam except for those employees who provide results of blood tests or immunization documentation from their own health care providers. Any vaccinations required for these diseases will be given at no cost in our Occupational Health office.
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
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