National Institute of Standards and Technology (NIST)
Gaithersburg, Maryland, United States
(on-site)
Job Type
Postdoctoral Experiences
Job Duration
1-2 Years
Salary
$72,000.00 - $102,415.00
Min Experience
None
Min Education
Ph.D.
Required Travel
0-10%
Salary - Type
Yearly Salary
Job Function
Biochemical
Entry Level
Yes
DNA/RNA, Machine Learning, Ensemble Quantification, Postdoc Position
DNA/RNA, Machine Learning, Ensemble Quantification, Postdoc Position
Description
POSTDOCTORAL RESEARCH ASSOCIATE – Interpretable DNA/RNA Ensemble Quantification (molecular dynamics, machine learning, measurement analysis). Biophysical and Biomedical Measurement Group (Microsystems and Nanotechnology Division) National Institute of Standards and Technology (NIST) – Gaithersburg, MD
The Biophysical and Biomedical Measurement Group at NIST (Gaithersburg, MD) is seeking a postdoctoral research associate to advance a theory/computation project focused on classifying DNA and RNA ensembles using secondary-structure-based distance metrics and clustering.
A central goal is to build hierarchical, interpretable ensemble representations that connect simulation-derived clusters to experimental measurements/observables and statistical-physics interpretation (e.g., energetic barriers and kinetic pathways).
What you will do: - Develop, test, and extend secondary-structure representations for DNA/RNA derived from molecular dynamics (MD) trajectories or experiment - Implement and optimize secondary-structure distance metrics based on base-pair reorganization, with careful handling of topology assumptions (e.g., consistent knot topology within clusters; extensions/generalizations to knotted and/or pseudoknotted structures as necessary) - Build scalable clustering and model-selection workflows for large MD datasets (e.g., k-means, hierarchical clustering, density-based clustering) and evaluate robustness (e.g., stability analyses and other diagnostics) - Analyze large nucleic-acid MD datasets via trajectory coarse-graining and secondary-structure time series; connect clustering outputs to kinetics and free-energy landscape interpretation, including energetic barriers relevant to hybridization disruption/reorganization - Develop well-documented, reproducible research software (version control, testing, packaging, interfaces) and publish/present results - Collaborate with experimental and device-focused teams to connect theory outputs to measurement needs
Requirements
Required qualifications (please be specific in your application about these): - Ph.D. in physics, chemistry, biophysics, computational biology, applied mathematics, computer science, or a closely related field - Demonstrated experience with biomolecular simulation and/or trajectory analysis (strong preference for nucleic acids: DNA/RNA) - Experience with coarse-grained nucleic-acid models, e.g., oxDNA/oxRNA or closely related CG frameworks - Strong scientific programming (Python expected; NumPy/SciPy; data handling; plotting; performance optimization) and ability to write maintainable, version-controlled code - Practical understanding of clustering/unsupervised learning and distance-metric design, including how choices affect outcomes and validation/robustness - Strong communication skills (written and oral)
Highly desired (one or more): - Experience extracting secondary structure from 3D structures/MD (base-pair detection, hydrogen-bond criteria, contact maps; secondary-structure time series) - Experience with MD packages and analysis tools (e.g., LAMMPS/NAMD/GROMACS and related) - High-performance computing experience (batch systems; parallel processing; profiling/optimization) - Background in statistical mechanics / polymer physics / stochastic processes; free-energy or kinetic modeling of conformational ensembles - Experience analyzing experimental data from single-molecule and ensemble techniques
U.S. citizenship is preferred; for some appointment mechanisms, eligibility depends on citizenship.
To apply: Email (i) a CV, (ii) a brief statement describing your technical fit for this specific project (please highlight relevant methods/tools and your role in developing or applying them), and (iii) names/contact info for 2–3 references.
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