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Research professor skills for your resume and career

Updated January 8, 2025
5 min read
Quoted experts
Dr. Jelena Sanchez Ph.D.,
Harriet Phinney Ph.D.
Below we've compiled a list of the most critical research professor skills. We ranked the top skills for research professors based on the percentage of resumes they appeared on. For example, 15.5% of research professor resumes contained research projects as a skill. Continue reading to find out what skills a research professor needs to be successful in the workplace.

15 research professor skills for your resume and career

1. Research Projects

Here's how research professors use research projects:
  • Managed 6 simultaneous research projects ranging from education interventions to charity giving.
  • Planned and executed research projects to address scientific dilemmas.

2. Public Health

Here's how research professors use public health:
  • Performed research to ascertain a needs assessment for developing public health curriculum.
  • Developed a new course, Geographic Information Systems and Public Health, which I taught for 10 semesters.

3. 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 research professors use data collection:
  • Involved in data collection and analysis with the mentor.
  • Led study and data collection, hired and managed teams ranging from 2-7 undergraduate research assistants (RAs).

4. Mathematics

Here's how research professors use mathematics:
  • Nominated as the best Instructor within the Mathematics Department.
  • Applied Mathematics Continued a numerical study of a model of blood flow through flexible arteries.

5. 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 research professors use python:
  • Machine learning and time series research High performance scientific computing in R, Python, SQL, and Matlab.
  • Collected magnetic data and estimated the critical exponents of Ni2MnGa system from extensive data analysis utilizing a purpose-written Python code.

6. Research Methods

Research methods are tools, strategies, processes, or techniques that are used to collect and analyze data to discover new information or better understand a topic. Developing a research method is an integral part of research design. There are different types of research methods that use different data collection tools. These can be qualitative, quantitative, or mixed.

Here's how research professors use research methods:
  • Teach the Scientific Research Methods Laboratory.

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7. Statistical Analysis

Here's how research professors use statistical analysis:
  • Conducted research including statistical analysis and authored economic papers.
  • Helped develop software for simulations and statistical analysis.

8. NIH

NIH stands for the National Institutes of Health. This organization oversees a series of research institutions, each focused on a different area of study involving anatomical systems or diseases. As the organization is affiliated with the government, a great deal of the funding institutions receive come from Congress.

Here's how research professors use nih:
  • Research support: National Institutes of Health (NIH RO1) and American Heart Association.
  • Co-authored grant proposals and grant reports to the NIH and DOE.

9. 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 research professors use r:
  • Conducted antibody screening via ELISA to test efficacy of a developing vaccine prototype and implemented database management platforms R and MATLAB
  • Drafted logistic regression report and variable explanation documents, which maximized professors' research capability Skills Used R programming Microsoft SQL Server

10. Organic Chemistry

Here's how research professors use organic chemistry:
  • Synthesized new anti-tuberculosis agents using synthetic organic chemistry methods.
  • Teach and evaluate students in general chemistry, organic chemistry, biochemistry, medicinal chemistry and chemistry capstones.

11. Algorithms

Here's how research professors use algorithms:
  • Research focused on design and implementation of applied mathematical algorithms to address physically relevant problems in materials science.
  • Developed algorithms and software for kinetic analysis and modeling.

12. Synthesis

Synthesis refers to the process of combining a number of things to become something new. Depending on the field of work, this may mean combining ideas, products, and new influences into a new service or product. Overall, the process is focused on reviewing and analyzing different data points to make something new.

Here's how research professors use synthesis:
  • Performed synthesis under ambient and inert atmospheres and used 1H-NMR for characterization.
  • Optimized and revised a novel total synthesis route to potential anti-cancer molecule, Paecilospirone.

13. Stata

STATA is a statistical software package used for data visualization, manipulation, statistics, and automated reporting. Individuals with experience in using other types of statistical software or a background in data science may find it easier to absorb the concepts of STATA quickly.

Here's how research professors use stata:
  • Produced accurate results in Stata using appropriate statistical tests and regression models for given dataset.
  • Collaborated with Columbia professor Justin Phillips in reviewing research surveys and compiling relevant data in Excel for import into STATA programming

14. Undergraduate Courses

Undergraduate courses usually refer to the first studies undertaken at university.

Here's how research professors use undergraduate courses:
  • Teach undergraduate courses in the Sustainable Urban Environments department, including: Urban Resilience, Urban Design & Natural Disasters.

15. C++

C++ is a general-purpose programming language that is used to create high-performing applications. It was invented as an extension to the C language. C++ lets the programmer have a high level of domination over memory and system resources. C++ is an object-oriented language that helps you implement real-time issues based on different data functions

Here's how research professors use c++:
  • Developed complex programming in C++ to calculate a function being optimized within a numerical optimization procedure and to deliver the results.
  • Designed effective and efficient big data clustering algorithms using Python and C++ for classification and anomaly detection in real-world data sets.
top-skills

What skills help Research Professors find jobs?

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

What skills stand out on research professor resumes?

Dr. Jelena Sanchez Ph.D.Dr. Jelena Sanchez Ph.D. LinkedIn profile

Assistant Professor of Spanish, North Central College

Currently, multilingual skills shine bright in resumes. Finally, the pandemic reality will validate the global currency of languages.

What soft skills should all research professors possess?

Harriet Phinney Ph.D.

Associate Professor, Seattle University

Understanding human diversity, effective communication (speaking and writing: the ability to convey complex ideas respectfully to a diverse audience) across differences, adept at working in groups, yet also independent thinkers.

What hard/technical skills are most important for research professors?

Harriet Phinney Ph.D.

Associate Professor, Seattle University

Empirical data collection: Research skills for collecting original data, analyzing the data, writing up the information collected, and presenting it in a professional manner.

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

Dr. Neal Palmer Ph.D.Dr. Neal Palmer Ph.D. LinkedIn profile

Chair, Associate Professor, Christian Brothers University

The answer to that question likely won't change from pre- to post-pandemic. Southern cities such as Nashville and Memphis were booming before the pandemic, and that will likely continue. These are good places to find jobs because the cost of living is relatively low, there are vibrant culture and entertainment, and there is not as much college-educated competition for jobs as in larger cities.

What type of skills will young research professors 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.

What technical skills for a research professor stand out to employers?

Employers value our graduates for their ability to independently solve complex problems, whether in or out of the lab. This skill has not and will not change regardless of instructional mode.

List of research professor skills to add to your resume

Research professor skills

The most important skills for a research professor resume and required skills for a research professor to have include:

  • Research Projects
  • Public Health
  • Data Collection
  • Mathematics
  • Python
  • Research Methods
  • Statistical Analysis
  • NIH
  • R
  • Organic Chemistry
  • Algorithms
  • Synthesis
  • Stata
  • Undergraduate Courses
  • C++
  • Remote Sensing
  • Research Proposals
  • Data Analysis
  • Research Paper
  • Molecular Biology
  • NSF
  • UV
  • Signal Processing
  • Journal Articles
  • III
  • RAN
  • IR
  • NMR
  • Nanoparticles
  • Analyze Data
  • DNA
  • PowerPoint
  • Biotechnology
  • LabVIEW
  • SEM
  • HPLC
  • Electrophoresis
  • IRB
  • Graduate Courses
  • Transistors
  • Elisa

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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