fbpx

Expertise Areas

Our areas of subject expertise

Mathematics

  • Pre-algebra
  • Algebra
  • Basic math skills
  • Pre-calculus
  • Calculus I
  • Calculus II
  • Multivariable Calculus
  • Differential Equations
  • Discrete Mathematics
  • Geometry
  • Trigonometry
  • Liberal Arts Math
  • Linear Algebra

Statistics

  • Statistics
  • Business Statistics
  • Advanced Statistics

Biology

  • Biology I & II

Physics

  • Physics (algebra- and calculus-based)

Chemistry

  • General chemistry I & II
  • Organic chemistry I & II

Anatomy

  • Introductory human anatomy & physiology (A&P)

Accounting

  • Auditing
  • Advanced accounting
  • Corporate tax
  • Cost accounting I & II
  • Governmental/not-for-profit
  • accounting
  • Individual income tax
  • Introductory accounting
  • Financial accounting I
  • Managerial accounting I
  • Intermediate accounting I & II
  • Payroll accounting

Economics

  • Principles of macroeconomics
  • Principles of microeconomics
  • Essentials of economics

Finance

  • Introductory finance

Statistics

  • Business statistics

Programming

  • C
  • C++
  • C#
  • Java
  • Python
  • SQL

Web development

  • Introductory web development
  • CSS
  • HTML

Computer science

  • Introductory computer science

Operating systems

  • Windows® 7/10
  • Linux

Microsoft® Office applications

  • Access
  • Excel®
  • PowerPoint®
  • Word

Adobe® Creative Suite® applications

  • Illustrator
  • InDesign
  • Photoshop ®

Academic writing review

  • Writing review for all subjects

Math Courses

  • College Algebra
  • General Calculus I
  • General Calculus II
  • Introduction to Statistics
  • Introductory Algebra
  • Precalculus
  • Quantitative Reasoning

Business Courses

  • Accounting I
  • Accounting II
  • Business Communication
  • Business Ethics
  • Business Law
  • Business Statistics
  • Financial Accounting
  • Introduction to Business
  • Macroeconomics
  • Managerial Accounting
  • Microeconomics
  • Organizational Behavior
  • Personal Finance
  • Principles of Management

Science Courses

  • Anatomy & Physiology I
  • Anatomy & Physiology I Lab
  • Anatomy & Physiology II
  • Anatomy & Physiology II Lab
  • General Chemistry I
  • General Chemistry I Lab
  • General Physics I
  • General Physics I Lab
  • Introduction to Biology
  • Introduction to Biology Lab
  • Introduction to Environmental Science
  • Introduction to Nutrition
  • Microbiology
  • Microbiology Lab
  • Introduction to Environmental science

IT Courses

  • CompTIA A+ Certification Training
  • CompTIA Network+ Certification Training
  • Introduction to Programming in C++
  • Introduction to Programming in Java
  • Introduction to Programming in Python
  • Information Technology Fundamentals

Introductory Statistics

  • Introduction to Data Literacy
  • Introductory Statistics for College Credit
  • Statistics 1 – Probability and Study Design
  • Statistics 2 – Inference and Association
  • Statistics 3 – ANOVA and Regression

Analytics

  • Customer Analytics in R
  • Discrete Choice Modeling and Conjoint Analysis
  • Financial Risk Modeling
  • Forecasting Analytics
  • Integer and Nonlinear Programming and Network Flow
  • Interactive Data Visualization with Tableau
  • Introduction to Data Literacy
  • Introduction to Design of Experiments
  • Introduction to Network Analysis
  • Mapping in R
  • Optimization with Linear Programming
  • Persuasion Analytics and Targeting
  • Predictive Analytics – Project Capstone
  • Predictive Analytics 1 – Machine Learning Tools
  • Predictive Analytics 1 – Machine Learning Tools with Python
  • Predictive Analytics 1 – Machine Learning Tools with R
  • Predictive Analytics 2 – Neural Nets and Regression
  • Predictive Analytics 2 – Neural Nets and Regression with Python
  • Predictive Analytics 2 – Neural Nets and Regression with R
  • Predictive Analytics 3 – Dimension Reduction, Clustering, and Association Rules
  • Predictive Analytics 3 – Dimension Reduction, Clustering, and Association Rules with Python
  • Predictive Analytics 3 – Dimension Reduction, Clustering, and Association Rules with R
  • Predictive Analytics for Healthcare
  • Python for Analytics
  • Recorded Webinar on Content Optimization with Multi-Armed Bandits & Python
  • Responsible Data Science
  • Risk Simulation and Queuing
  • Spatial Statistics for GIS Using R
  • Statistical and Machine Learning Methods for Analyzing Clusters and Detecting Anomalies

Machine Learning

  • Introduction to NLP and Text Mining
  • NLP and Deep Learning
  • Predictive Analytics – Project Capstone
  • Predictive Analytics 1 – Machine Learning Tools with Python
  • Predictive Analytics 1 – Machine Learning Tools with R
  • Predictive Analytics 2 – Neural Nets and Regression with Python
  • Predictive Analytics 2 – Neural Nets and Regression with R
  • Predictive Analytics 3 – Dimension Reduction, Clustering, and Association Rules with Python
  • Predictive Analytics 3 – Dimension Reduction, Clustering, and Association Rules with R
  • Predictive Analytics for Healthcare
  • Responsible Data Science

Using Python

  • Introduction to NLP and Text Mining
  • Introduction to Python Programming
  • Persuasion Analytics and Targeting
  • Predictive Analytics 1 – Machine Learning Tools with Python
  • Predictive Analytics 2 – Neural Nets and Regression with Python
  • Predictive Analytics 3 – Dimension Reduction, Clustering, and Association Rules with Python
  • Python for Analytics

Using R

  • Bayesian Statistics in R
  • Customer Analytics in R
  • Introduction to R Programming
  • Mapping in R
  • Modeling in R
  • Predictive Analytics 1 – Machine Learning Tools with R
  • Predictive Analytics 2 – Neural Nets and Regression with R
  • Predictive Analytics 3 – Dimension Reduction, Clustering, and Association Rules with R
  • Predictive Analytics for Healthcare
  • R Programming – Intermediate
  • R Programming – Introduction Part 2
  • Spatial Statistics for GIS Using R
  • Structural Equation Modeling (SEM) Using R
  • Visualization in R with ggplot2

Operations Research

  • Financial Risk Modeling
  • Integer and Nonlinear Programming and Network Flow
  • Optimization with Linear Programming
  • Risk Simulation and Queuing

Biostatistics

  • Biostatistics 1 – For Medical Science and Public Health
  • Biostatistics 2 – For Medical Science and Public Health
  • Biostatistics for College Credit
  • Clinical Trials – Pharmacokinetics and Bioequivalence
  • Designing Valid Statistical Studies
  • Epidemiologic Statistics
  • Independent Data Monitoring Committees in Clinical Trials
  • Introduction to Statistical Issues in Clinical Trials
  • Meta Analysis 1
  • Meta Analysis 2
  • Meta Analysis in R
  • Sample Size and Power Determination
  • Survival Analysis

Statistical Modeling

  • Bayesian Statistics in R
  • Bootstrap Methods
  • Categorical Data Analysis
  • Generalized Linear Models
  • Introduction to Bayesian Hierarchical and Multi-level Models
  • Introduction to Bayesian Statistics
  • Introduction to MCMC and Bayesian Regression via rstan
  • Introduction to Resampling Methods
  • Introduction to Structural Equation
  • Modeling (SEM)
  • Matrix Algebra
  • Maximum Likelihood Estimation
  • Mixed and Hierarchical Linear Models
  • Modeling Count Data
  • Modeling in R
  • Multivariate Statistics
  • Principal Components and Factor Analysis
  • Regression Analysis
  • Sample Size and Power Determination
  • Spatial Statistics for GIS Using R
  • Statistical and Machine Learning Methods for Analyzing Clusters and Detecting Anomalies
  • Structural Equation Modeling (SEM) Using R
  • Survival Analysis