1

Nano Science Internship Jobs (NOW HIRING)

$16.50 - $21.50/hr

AND POSITION REQUIREMENTS The Materials Science and Applications (MSA) Division in the Applied ... Device fabrication utilizing novel nanofabrication techniques * Material characterization using ...

$16.50 - $21.50/hr

AND POSITION REQUIREMENTS The Materials Science and Applications (MSA) Division in the Applied ... S. citizen to apply.) Student engineering interns typically work 5-10 hours per week during the ...

Algorithm Development Engineer

Milpitas, CA ยท On-site

$130K - $221K/yr

Our expert teams of physicists, engineers, data scientists and problem-solvers work together with ... Interns are eligible for some of the benefits listed. Our pay ranges are determined by role, level ...

next page

Showing results 1-20

Nano Science Internship information

See salary details

$2.1K

$6.4K

$7.8K

How much do nano science internship jobs pay per month?

As of Jul 1, 2026, the average monthly pay for nano science internship in the United States is $6,439.50, according to ZipRecruiter salary data. Most workers in this role earn between $4,416.67 and $7,666.67 per month, depending on experience, location, and employer.

What is the difference between Nano Science Internship vs Nano Research Assistant?

AspectNano Science InternshipNano Research Assistant
Required CredentialsUndergraduate or graduate student in science/engineeringGraduate degree or higher in nanotechnology or related field
Work EnvironmentLaboratories, research centers, industry settingsAcademic labs, research institutions, industry projects
Employer & Industry UsageCompanies, universities, research institutesUniversities, research labs, industry R&D
Common Search & ComparisonInternship opportunities, entry-level nanotech rolesResearch roles, advanced nanotechnology projects

In summary, a Nano Science Internship is typically an entry-level position for students gaining practical experience, while a Nano Research Assistant usually requires higher qualifications and involves more independent research responsibilities. Both roles are vital in nanotechnology research but differ in experience level and scope.

What is a Nano Science Internship?

A Nano Science Internship is a temporary work placement designed for students or recent graduates interested in the field of nanoscience, which focuses on the study and application of materials and devices at the nanoscale (typically less than 100 nanometers). During the internship, participants gain hands-on experience in research, laboratory techniques, and instrumentation relevant to nanotechnology. Interns work alongside experienced scientists and researchers, often contributing to real-world projects in areas such as medicine, electronics, materials science, and energy. These internships provide valuable exposure to cutting-edge technology, help build professional networks, and can enhance future career prospects in academia or industry.

What are the key skills and qualifications needed to thrive as a Nano Science Intern, and why are they important?

To thrive as a Nano Science Intern, you need foundational knowledge in chemistry, physics, and materials science, typically supported by ongoing or completed coursework in related STEM fields. Familiarity with laboratory equipment, nanofabrication techniques, and analysis software such as SEM or AFM is highly beneficial. Strong analytical thinking, attention to detail, and effective teamwork are crucial soft skills for contributing to research projects. These skills enable interns to conduct precise experiments, interpret results, and collaborate productively in cutting-edge nanoscience environments.

What types of projects and hands-on experiences can I expect during a Nano Science Internship?

As a Nano Science Intern, you will typically engage in laboratory-based research projects, such as synthesizing nanomaterials, characterizing their properties using advanced instruments (like electron microscopes or spectroscopy tools), and analyzing data alongside experienced researchers. You may also participate in interdisciplinary team meetings, contribute to experimental design, and assist in maintaining lab safety protocols. This hands-on exposure provides practical skills in cutting-edge techniques and fosters collaboration, which is essential for both academic and industry career paths in nanotechnology.
More about Nano Science Internship jobs
What cities are hiring for Nano Science Internship jobs? Cities with the most Nano Science Internship job openings:
What states have the most Nano Science Internship jobs? States with the most job openings for Nano Science Internship jobs include:
Graduate Intern - AI-Assisted Autonomous Electron Microscopy

Graduate Intern - AI-Assisted Autonomous Electron Microscopy

The National Renewable Energy Laboratory (NREL)

Golden, CO โ€ข On-site

Full-time

Medical, Dental, Vision, Retirement

Posted 17 days ago


Job description

Posting Title
Graduate Intern - AI-Assisted Autonomous Electron Microscopy
Location
CO - Golden
Position Type
Intern (Fixed Term)
Hours Per Week
40
Working at NLR
NLR is located at the foothills of the Rocky Mountains in Golden, Colorado is the nation's primary laboratory for energy systems research and development.
Join the National Laboratory of the Rockies (NLR), where world-class scientists, engineers, and experts are accelerating energy innovation through breakthrough research and systems integration. From our mission to our collaborative culture, NLR stands out in the research community for its commitment to an affordable and secure energy future. Spanning foundational science to applied systems engineering and analysis, we focus on solving complex challenges to deliver advanced, secure, reliable, and cost-effective energy solutions. Our work helps strengthen U.S. industries, support job creation, and promote national economic growth.
At NLR, you'll find a mission-driven environment supported by state-of-the-art facilities, multidisciplinary research teams, and strong collaborations with industry, academia, and other national laboratories. We offer robust professional development opportunities, and a competitive benefits package designed to support your career and well-being.
Job Description
The DTSW at the National Laboratory of the Rockies (NLR) has an opening for a graduate intern to contribute to a cutting-edge project at the intersection of autonomous instrumentation, computer vision, and large language models (LLMs) for materials characterization.
This project offers a unique opportunity to advance the "self-driving" capabilities of electron microscopes by codifying expert experimental protocols into robust, executable algorithms. The intern will develop Python-based scripting routines to automate image acquisition, elemental analysis, and real-time experimental adjustments - enabling intelligent, adaptive operation across a range of materials relevant to energy, microelectronics, and power technologies.
Working alongside experienced researchers in materials science and data science, the intern will integrate LLMs to enhance natural language processing of microscope commands, automate reporting workflows, and guide experimental decision-making. The project further explores how machine learning and computer vision can enable autonomous region-of-interest detection, defect identification, and compositional mapping at the nanoscale.
Responsibilities include:
  • Develop and validate automated Python scripting routines for electron microscope control, including image acquisition, stage manipulation, and adaptive data collection workflows.
  • Build and test computer vision pipelines (e.g., segmentation, defect detection) for real-time analysis of scanning transmission electron microscopy (STEM) and scanning electron microscopy (SEM) images.
  • Integrate large language model (LLM) interfaces for natural language command processing, automated report generation, and AI-guided experimental planning.
  • Apply machine learning methods to grain analysis, particle characterization, and compositional mapping using STEM, SEM, and associated spectroscopic datasets.
  • Collaborate with research staff to evaluate and iterate on autonomous workflows for throughput, reproducibility, and scientific fidelity.
  • Document code, prepare technical summaries, and contribute to reports and publications as appropriate.

Basic Qualifications
Minimum of a 3.0 cumulative grade point average.
Undergraduate: Must be enrolled as a full-time student in a bachelor's degree program from an accredited institution.
Post Undergraduate: Earned a bachelor's degree within the past 12 months. Eligible for an internship period of up to one year.
Graduate: Must be enrolled as a full-time student in a master's degree program from an accredited institution.
Post Graduate: Earned a master's degree within the past 12 months. Eligible for an internship period of up to one year.
Graduate + PhD: Completed master's degree and enrolled as PhD student from an accredited institution.
Please Note:
โ€ข Applicants are responsible for uploading official or unofficial school transcripts, as part of the application process.
โ€ข If selected for position, a letter of recommendation will be required as part of the hiring process.
โ€ข Must meet educational requirements prior to employment start date.
* Must meet educational requirements prior to employment start date.
Additional Required Qualifications
  • Proficiency in Python programming, including experience with scientific libraries (NumPy, SciPy, Pandas, scikit-image, OpenCV, or equivalent).
  • Experience applying machine learning or computer vision methods to image-based data (segmentation, classification, detection, or related tasks).
  • Strong analytical and problem-solving skills, with attention to precision in experimental or computational workflows.
  • Excellent written and verbal communication skills; ability to document and present technical work clearly.

Preferred Qualifications:
  • Prior hands-on experience analyzing microscopy images (SEM, TEM, optical, or equivalent), including grain analysis, particle segmentation, or defect characterization.
  • Familiarity with large language model (LLM) APIs or frameworks (e.g., LangChain, OpenAI API, Hugging Face Transformers).
  • Experience working with industrial or laboratory datasets in a research or applied context.
  • Background in computational mathematics, data science, or a related quantitative field.
  • Coursework or experience in materials characterization, electron microscopy, or related experimental methods is a plus but not required.

Preferred Qualifications
Job Application Submission Window
The anticipated closing window for application submission is up to 30 days and may be extended as needed.
Annual Salary Range (based on full-time 40 hours per week)
Job Profile: / Annual Salary Range: $44,500 - $71,200
NLR takes into consideration a candidate's education, training, and experience, expected quality and quantity of work, required travel (if any), external market and internal value, including seniority and merit systems, and internal pay alignment when determining the salary level for potential new employees. In compliance with the Colorado Equal Pay for Equal Work Act, a potential new employee's salary history will not be used in compensation decisions.
Benefits Summary
Benefits include medical, dental, and vision insurance; 403(b) Employee Savings Plan with employer match*; and sick leave (where required by law). NLR employees may be eligible for, but are not guaranteed, performance-, merit-, and achievement- based awards that include a monetary component. Some positions may be eligible for relocation expense reimbursement. Internships projected to be less than 20 hours per week are not eligible for medical, dental, or vision benefits.
* Based on eligibility rules
Badging Requirement
NLR is subject to Department of Energy (DOE) access restrictions. All employees must also be able to obtain and maintain a federal Personal Identity Verification (PIV) card as required by Homeland Security Presidential Directive 12 (HSPD-12), which includes a favorable background investigation. Intern assignments extending beyond six months will be subject to this requirement.
Drug Free Workplace
NLR is committed to maintaining a drug-free workplace in accordance with the federal Drug-Free Workplace Act and complies with federal laws prohibiting the possession and use of illegal drugs. Under federal law, marijuana remains an illegal drug.
If you are offered employment at NLR, you must pass a pre-employment drug test prior to commencing employment. Unless prohibited by state or local law, the pre-employment drug test will include marijuana. If you test positive on the pre-employment drug test, your offer of employment may be withdrawn.
Submission Guidelines
Please note that in order to be considered an applicant for any position at NLR you must submit an application form for each position for which you believe you are qualified. Applications are not kept on file for future positions. Please include a cover letter and resume with each position application.
Equal Opportunity Employer
All qualified applicants will receive consideration for employment without regard basis of age (40 and over), color, disability, gender identity, genetic information, marital status, domestic partner status, military or veteran status, national origin/ancestry, race, religion, creed, sex (including pregnancy, childbirth, breastfeeding), sexual orientation, and any other applicable status protected by federal, state, or local laws.
Reasonable Accommodations
E-Verify www.dhs.gov/E-Verify For information about right to work, click here for English or here for Spanish.
E-Verify is a registered trademark of the U.S. Department of Homeland Security. This business uses E-Verify in its hiring practices to achieve a lawful workforce.