Postdoctoral Research Associate in AI/Machine Learning

Lincoln University

Jefferson City, MO

JOB DETAILS
SKILLS
Agricultural Science, Agriculture, Amazon Web Services (AWS), Analysis Skills, Artificial Intelligence (AI), Cloud Computing, Computer Systems, Content Delivery/Distribution, Data Analysis, Data Modeling, Data Science, Data Sets, Environmental Sciences, Farming, Focus Groups, Forestry, Kernel Programming, Machine Learning, Mentoring, Model Validation, Modeling Languages, Natural Language Processing (NLP), Neural Networks, Physical Demands, Predictive Modeling, Programming Languages, Publications, Python Programming/Scripting Language, R Programming Language, Scholarship, Social Sciences, Statistical Modeling, Statistics, Statistics Software, Support Vector Machines, Technical Writing, Training/Teaching, United States Department of Agriculture (USDA), Weighting, Willing to Travel, Writing Skills
LOCATION
Jefferson City, MO
POSTED
30+ days ago

PURPOSE

The Postdoctoral Research Associate in AIMachine Learning AIML will lead advanced analytical AIML and data science components of a USDA-funded forest farming project. The position will develop and apply state-of-the-art AIML methods to survey data to improve understanding of farmer behavior, forest farming adoption, and network development, and will contribute to capacity-building and outreach activities that strengthen data-driven forest farming and agroforestry decision-making at Lincoln University and across Missouri.

ESSENTIAL JOB FUNCTIONS

DUTIES & RESPONSIBILITIES

List essential job functions, duties & responsibilities for the role. Try to be as detailed as possible.

Design implement and validate machine learning models, random forests, support vector machines, neural networks, for survey nonresponse response propensity estimation and weighting adjustments using statewide farmer landowner and stakeholder survey data.

Build AINatural Language Processing NLP pipelines, including large language models, to analyze open-ended survey and focus group data and predict farmer knowledge attitudes and adoption willingness.

Apply multivariate and dimensionality-reduction techniques, PCA, Kernel-PCA, feature selection, to complex mixed-type datasets.

Integrate quantitative survey data, Likert-scale, categorical, and continuous variables with qualitative and text-derived features to build predictive models of forest farming adoption, perceived barriers, and support needs among socially disadvantaged and resource-limited farmers.

Translate analytical findings into outreach strategies, educational materials, economic analysis inputs, and policy recommendations.

Prepare technical documentation, reproducible pipelines, and interpretation reports for technical and non-technical audiences.

Develop and deliver educational modules, short courses, and training materials on AIML data science and cloud-based analytics, Google Cloud, no-code ML tools, for non-coding students, extension professionals, and farmers, with a strong emphasis on agriculture- and agroforestry-relevant applications.

Contribute to evaluation metrics and grant deliverables reports, model portfolios, AINLP frameworks, outreach summaries, policy documents.

Lead or co-author peer-reviewed papers, conference presentations, and extension publications.

Mentor graduate and undergraduate students on survey, qualitative, and data science tasks.

QUALIFICATIONS

List mandatory qualifications.

Ph.D. in Statistics, Data Science, Agricultural or Environmental Data Science, Quantitative Social Science, or a closely related field.

Experience in developing and applying machine learning models, such as random forests, support vector machines, and neural networks, to empirical datasets.

Experience with handling survey or social science data, e.g., Likert scales, categorical responses, mixed methods, and performing statistical modeling or ML-based analysis.

Demonstrated competence in at least one major programming language used for data science, R, or Python, and in statistical ML software workflows.

Record of peer-reviewed publications.

Eligibility to work in the United States for the duration of the appointment.

PREFERRED QUALIFICATIONS

List any preferred optional qualifications for this role.

Prior research experience in agriculture, forestry, agroforestry, environmental science, or related fields, especially projects involving farmers or landowners.

Experience applying AIML methods to survey data for nonresponse adjustment, propensity weighting, or behavioral prediction.

Background in NLP or text analytics, including work with open-ended survey responses, interviews, or focus group transcripts.

Experience designing or delivering educational content on AIML data science or cloud computing, e.g., short courses, workshops, online modules, for non-coding or mixed-expertise audiences.

Familiarity with cloud computing platforms, Google Cloud, AWS, for data analysis and ML model deployment, including use of no-code or low-code tools and AutoML services.

Demonstrated interest or experience in community-engaged scholarship, extension, or citizen science, especially with underserved or socially disadvantaged farming populations.

PHYSICAL DEMANDS

List physical demands as necessary.

If none, describe the environment the employee will be working in, i.e., This position will work in an office environment with minimal exposure to physical work. This position will work primarily in an office environment. Occasional travel may be required for project meetings, workshops, field days, or outreach events at Lincoln University facilities, partner institutions, and community sites across Missouri.

This job description is not intended to be a complete list of all responsibilities, duties, or skills required for the job and is subject to review and change at any time with or without notice in accordance with the needs of Lincoln University.

About the Company

L

Lincoln University