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Assistant research scientist skills for your resume and career

Updated January 8, 2025
5 min read
Quoted experts
Alexandra (Sasha) Ormond Ph.D.,
Alexandra (Sasha) Ormond Ph.D.
Assistant research scientist example skills
Below we've compiled a list of the most critical assistant research scientist skills. We ranked the top skills for assistant research scientists based on the percentage of resumes they appeared on. For example, 7.7% of assistant research scientist resumes contained research projects as a skill. Continue reading to find out what skills an assistant research scientist needs to be successful in the workplace.

15 assistant research scientist skills for your resume and career

1. Research Projects

Here's how assistant research scientists use research projects:
  • Audited commercial performance of government funded research projects and policy tools.
  • Collaborated with several students on different experiments/research projects.

2. Data Collection

Data collection means to analyze and collect all the necessary information. It helps in carrying out research and in storing important and necessary information. The most important goal of data collection is to gather the information that is rich and accurate for statistical analysis.

Here's how assistant research scientists use data collection:
  • Prepared for data collection, administered surveys and interviewed subjects in Fiji prior to data analysis.
  • Employed data collection, statistical analysis, and microscopes techniques for relevant experiments.

3. Data Analysis

Here's how assistant research scientists use data analysis:
  • Managed and trained research assistants on elements of experimental design, data analysis, and presentation.
  • Developed Excel spreadsheet skills focused on engineering problem solving, economics, data analysis and presentation.

4. Lab Equipment

Here's how assistant research scientists use lab equipment:
  • Utilized all lab equipment including microscopes, dissection tools, and sophisticated computer software.
  • Synthesize high molecular weight polymers and operate lab equipment (rotavaps, Schlenk lines, heated stirring baths).

5. Cell Culture

Here's how assistant research scientists use cell culture:
  • Assisted a graduate student with general lab techniques-gels, cell culture, and western blots.
  • Drug formulation, particle characterization & cell culture.

6. Chemistry

Chemistry is the branch of science that tells us about the composition, properties, and structure of elements and compounds. The processes these elements undergo and how they undergo change all come under the branch of chemistry.

Here's how assistant research scientists use chemistry:
  • Conducted internet and library-based ecological and environmental chemistry research.
  • Research involved collaboration between Electrical Engineering and Chemistry Departments.

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7. Laboratory Equipment

Here's how assistant research scientists use laboratory equipment:
  • Maintained laboratory equipment and stock supplies regularly.
  • Experienced in evaluating/solving issues with laboratory equipment.

8. Experimental Design

Experimental design is the process of researching in an objective and controlled manner to maximize precision and draw specific conclusions about a hypothesis statement. It is a concept used to efficiently organize, conduct, and interpret the results of experiments to ensure that as much useful information as possible is obtained by conducting a small number of trials. This minimizes the effects of the variables to increase the reliability of the results.

Here's how assistant research scientists use experimental design:
  • Result in enhanced scientific knowledge of experimental design and project development.
  • Research - Familiarity with hypothesis development and experimental design.

9. Python

Python is a widely-known programming language. It is an object-oriented and all-purpose, coding language that can be used for software development as well as web development.

Here's how assistant research scientists use python:
  • Designed part of our website UI in python with Flask.
  • Converted a C code into Python code.

10. PI

PI is the execution of all research's components such as preparation, conduction, and administration.

Here's how assistant research scientists use pi:
  • Work with the PI to set deadlines for accomplishing periodic goals.
  • Generate data analysis report and manuscript preparation by extensive literature review, and assisting the Lead PI for manuscript preparation.

11. Extraction

Here's how assistant research scientists use extraction:
  • Optimized compound extraction procedures and developed HPLC and LC/MS/MS methods for successful and efficient compound analysis.
  • Performed RE extractions and collected surface water and plant seeds.

12. Analyze Data

Analyze data or data analysis refers to the practice of studying, organizing, and transforming data to make it more useful. It also includes the cleansing of non-useful information which helps in better decision making regarding any particular matter. Analyze data is a practice that is used widely in the field of business, social sciences, and science.

Here's how assistant research scientists use analyze data:
  • Used both quantitative and qualitative methods to analyze data for research papers.
  • Utilize Watson LIMS system to track samples and analyze data.

13. Literature Reviews

Here's how assistant research scientists use literature reviews:
  • Conduct scientific or literature review & perform external computerized database search.
  • Navigate library databases to gather information to write literature reviews.

14. Statistical Analysis

Here's how assistant research scientists use statistical analysis:
  • Contributed towards standardization and documentation of data and statistical analysis procedures for increasing operational efficiency.
  • Conducted statistical analysis for research on adult development and aging working with senior researchers.

15. R

R is a free software environment and a language used by programmers for statistical computing. The R programming language is famously used for data analysis by data scientists.

Here's how assistant research scientists use r:
  • Drafted logistic regression report and variable explanation documents, which maximized professors' research capability Skills Used R programming Microsoft SQL Server
  • Conducted longitudinal data analysis, logistic regression data analysis and linear regression analysis for the biological experiments using R and SAS.
top-skills

What skills help Assistant Research Scientists find jobs?

Tell us what job you are looking for, we’ll show you what skills employers want.

What soft skills should all assistant research scientists possess?

Alexandra (Sasha) Ormond Ph.D.

Associate Professor of Chemistry, Director of Dual Degree Engineering, Meredith College

From what I've heard (from employers), companies look for employees that they can work with. I know that sounds silly, but companies want employees that are team players and work well with other individuals and in groups. These employees also need to work independently when asked to work on a project. They need to be organized, reliable, and trustworthy. Employees also need to be able to communicate well by writing and speaking. They must be able to follow directions.

What skills stand out on assistant research scientist resumes?

Alexandra (Sasha) Ormond Ph.D.

Associate Professor of Chemistry, Director of Dual Degree Engineering, Meredith College

When I help students revise their resumes, I have them focus on transferable skills that they gained through their experiences. It may not necessarily be what students do that is important to companies, but their learned experience that students can take and apply in their new job. Students need to add a metric to their descriptions and how they have made an impact on a project, a job position, an organization, etc.

What hard/technical skills are most important for assistant research scientists?

Alexandra (Sasha) Ormond Ph.D.

Associate Professor of Chemistry, Director of Dual Degree Engineering, Meredith College

This one is tough because it depends on the position! I think what is valuable for a chemist is being knowledgeable of working with instrumentation such as chromatography and mass spectrometry. Employees that are likely more attractive for a job position than another person have had the independent experience of working with instruments and can troubleshoot problems. Employees need to be able to explain the data that they obtained from an experiment and describe what the data mean. (Data is a plural term!) Problem-solving and critical thinking is very important for scientists.

What assistant research scientist skills would you recommend for someone trying to advance their career?

Lisa Cuchara Ph.D.

Professor of Biomedical Sciences, Quinnipiac University

The first and foremost would be Critical Thinking. We live in a world where facts can be easily acquired, sometimes even by asking Siri/Alexa/ChatGPT/Google/etc. But critical thinking is timeless and priceless. I can ask anyone on the street what xyz is and they can look it up, but can they provide advice or interpret.

Also being a good steward towards science and being willing and able to communicate not just with peers as we are trained, but also with the public, the politicians, the board members. John Holdren*, stated that Scientists should be tithing at least 10 percent of their time to public service ... including activism. In the ever growing science denialism that is happening in our country being able to communicate science with the public is important. As Peter Hotaz states, "Anti-science propaganda is "killing Americans in unprecedented numbers,""

*Holdren is an American scientist who served as the senior advisor to President Barack Obama on science and technology issues through his roles as assistant to the president for science and technology, director of the White House Office of Science and Technology Policy, and co-chair of the President's Council of Advisors on Science and Technology and a Research Professor in Harvard University's Kennedy School of Government

What type of skills will young assistant research scientists need?

David Cool Ph.D.David Cool Ph.D. LinkedIn profile

Professor, Pharmacology & Toxicology; Professor, Obstetrics & Gynecology, Wright State University

The skill sets that young graduates will need when they graduate and enter the workforce are similar to and vastly different from just 15-30 years ago. If they are working in a laboratory setting, then the standards are the same; accurate pipetting, the ability to make complex buffers, and understanding how all the necessary equipment in a lab works. However, that is not nearly enough nowadays. The equipment and instrumentation have been expanding exponentially to the point that you will be working with both expensive and complicated instruments to generate a more considerable amount of data than anyone ever thought possible. Standards for labs today will be using digital imaging devices to capture everything from microscopic images, to western blots, to automated living cell analysis using multi-well plates. Multiplexed assays for 27 to 50 to 1050 cytokines and proteins have replaced single marker ELISA. But knowing ELISA will allow you to be trained to do the multiplexed assays. Most pharmaceutical companies have a great need still for 'old-fashioned' HPLC techniques. Every student I have had in my research techniques class, that graduates and goes for a Pharma position, comes back and tells me they asked them if they could run an HPLC.
Some were even given a test to see if they understood the concept. This then leads to mass spectrometry, LCMS, MALDI-TOF, and even GCMS, and everything that has been developed around those basic techniques is now commonplace in most core facilities and Pharma. New methods for flow cytometry, FACS, are necessary for the higher throughput drug discovery types of labs. Molecular biology has evolved from simple PCR machines that could run 24 samples, just 25 years ago, to digital PCR machines that can run 384 pieces today and email the final data to you at home, while you sleep. Knowing how to calculate the PCR data is extremely critical, as it isn't intuitive, and people tend to take short cuts. Knowing how to do that will be vital. Cell culture and working with animals are still common ways to generate data in any lab, and people who have those skills will always have a job. What do all these techniques have in common? They all have evolved to the point that no one is an expert in every one of them. Labs focus and concentrate on the ones they need the most and make use of them over a long period. What a student should develop is what I call a big toolbox. Learn as many of these techniques as you can, and then use them. Understanding that these are all cyclic and that you may get rusty, or the technology will change. It doesn't matter. By being trained in any of these, it will mean that you can be prepared for other things, that you can catch up and learn and update your techniques in your toolbox. This is what any PI running a lab will be looking for, someone who can be trained, and can evolve and adapt to different technologies, know how they work and how they can be used, what the data looks like when it is working well, and what it looks like when it isn't. The people who have these skills will always be employable.

There is a greater need than ever for workers to analyze data and synthesize a reasonable idea about what it means. This means that they must understand their experiments at a deeper level than just pipetting buffers and timing reactions. They must know what is happening, and if there is a problem, first, they have a problem and then how to solve it. Bioinformatics has become one of the fastest-growing fields. The increased amount of data, whether from standard assays run in an ordinary lab or high throughput data, needs more crunching. The future researcher will not be able to get by just knowing how to use a computer stats program but will be required to understand how to run data in R or Python or whatever new data analysis package is coming next. This becomes even more critical as the data becomes more complex, i.e., 27 cytokines analyzed in 3 different tissues over three other times, from 14 different groups, 6 of which are controls, with the rest being toxin and then treatment groups and authorities. A simple two way ANOVA just doesn't cut it. For this, machine learning tools, pattern recognition, neural networks, topological data analysis (TDA), Deep Learning, etc., are becoming the norm and are being advanced and changed to give more and more substance to what the data means. Students who can operate instruments to generate data and run more complex types of analysis on this 'big data' are in great demand. Likewise, learning the computer-generated design of drugs 'in silico' is a growing field that is now required to screen tens of thousands of compounds before generating them in the lab. This will need someone who can think three-dimensionally; even though the software and advanced computers can do that, it helps if your brain is wired that way, at least a little.

Aside from instruments and complex data analysis, consider where the clinical research is headed. With COVID19, the need to quickly advance drugs from potential use to clinical application has undergone an exponential increase. Lives are being lost daily to the lack of a vaccine or medication that can attenuate to any level the impact the virus has on the human body. The future clinical researcher will need to understand how the instruments work and how tests are run, how a vaccine works, how the virus or disease manifests itself, and how to get it under control. This will only be possible if the researcher is familiar with much of what I wrote above. You won't need to be an expert on virtually everything, but you'll need to understand it so you can use it to synthesize new ideas that may be applicable in the clinical environment. COVID19 is a perfect example. One of the early struggles with this virus was how to test for it. Antibodies weren't developed for it in the very beginning, so an ELISA was out.

In contrast, PCR is one of the most sensitive methods to identify genetic material, such as viruses. So, early on, PCR primers were created that could be used to run a PCR to determine if a person had a live virus. However, the first such PCRs had high false negatives and positives. Further refinement led to the creation of PCR primer sets and protocols that allowed for a more accurate and faster test. An advantage that anyone who has been trained in biotechnology will know the basics of developing a test. If it is a PCR, then what goes into that. Suppose it is an ELISA, how it works, and what you need to set it up. Imagine a test strip similar to the one used for at-home pregnancy tests. This came about in much the same way, through experimentation and developing a way to lower the false negatives and positives, to allow a quick, 5-minute test that could determine if a particular hormone was in your urine at a stage of pregnancy when many women may not have realized there was a possibility they could be pregnant. The person entering the workforce that can think in these ways will be employable and will be able to move between jobs and continue with a very successful and enriching career.

List of assistant research scientist skills to add to your resume

Assistant research scientist skills

The most important skills for an assistant research scientist resume and required skills for an assistant research scientist to have include:

  • Research Projects
  • Data Collection
  • Data Analysis
  • Lab Equipment
  • Cell Culture
  • Chemistry
  • Laboratory Equipment
  • Experimental Design
  • Python
  • PI
  • Extraction
  • Analyze Data
  • Literature Reviews
  • Statistical Analysis
  • R
  • Sample Preparation
  • Research Findings
  • Informed Consent
  • Synthesis
  • Genotyping
  • SAS
  • Research Results
  • Method Development
  • Next-Generation Sequencing
  • SPSS
  • DNA
  • Research Assistants
  • Elisa
  • Research Studies
  • Protein Expression
  • Research Institute
  • CRISPR
  • Clinical Trials
  • GIS
  • HPLC
  • Molecular Biology Techniques
  • Western Blotting
  • Cell-Based Assays
  • RT-PCR
  • Research Proposals
  • Data Acquisition
  • C++
  • Biomarkers
  • Experimental Data
  • IRB
  • GEL Electrophoresis
  • Linux
  • Research Paper

Updated January 8, 2025

Zippia Research Team
Zippia Team

Editorial Staff

The Zippia Research Team has spent countless hours reviewing resumes, job postings, and government data to determine what goes into getting a job in each phase of life. Professional writers and data scientists comprise the Zippia Research Team.

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