We are a team of statisticians and data scientists with more than 14 years of data analysis and data science experience. Our experience includes
- Statistical consulting and data mining of statistics in various fields such as social science, natural science and health, business, engineering, and industry,
- Working as a data science team with city hall and governmental organizations,
- Teaching and conducting workshops at universities and revising statistical parts of scientific papers.
The corresponding challenges in addition to increasing our statistical literacy and data science, have brought us a strong knowledge of the role of statistics and data in each of the above-mentioned fields and daily urban life.
Our Skills
Soft Skills
- Understanding the problems of a domain and then brainstorming on all possible solutions
- Imagining and experimenting new ideas, which came from the data of a domain
- Illustrating the benefits that data can bring to a business or an organization
Techincal Skills
- R and Python programming
- Querying and managing data via SQL
- Dashboarding via Tableau and R shiny
- Initial data mining by JMP
- SEM modeling by AMOS
- Data analysis and Statistical inference by SPSS and STATISTICA
- Hayes Process Macro by Process v4
- Reporting by Microsoft Office 2019 and R Markdown

Statistics, probability, and machine learning skills:
- Data Preprocessing: data cleaning, data transformation, data reduction, data scaling, data balancing, data reliability, and validity.
- Data Visualization: creating illustrative dashboards and highlighting features of data such as trends, patterns, cycles, and outliers.
- Probability concept and probability distributions: basic concepts of probability play an important role in machine learning.
- Sampling techniques: applying accurate sampling methods makes strong statistical inferences about the population.
- Statistical Inference: concluding about a population based on a sample through (point and interval) estimation and hypothesis testing.
- Machine Learning Technique
- Classification of balanced and imbalanced data; with common algorithms logistic regression, K-nearest neighbor, support vector machines (SVM), neural networks and decision trees/ random forest.
- Regression (Read more)
- Clustering; with common algorithms such as k-means clustering, hierarchal clustering, and density-based clustering algorithms.
- Factor Analysis; Principal Component Analysis (PCA), Principal Factor Analysis (PFA).
- Time Series Analysis with common statistical models such as Exponential Smoothing, Autoregressive Integrated Moving Average (ARIMA/SARIMA), Linear Regression with Time Series Components, and Autoregressive Distributed Lag (ARDL) Model.
- Time series Machine learning
- Time series clustering
- Time series classification
- Neural Network: Feedforward neural network (MLP), Recurrent neural network (RNN), Long short-term memory (LSTM)
- Multi-Criteria Decision-Making Methods: The Analytic Hierarchy Process (AHP/Fuzzy AHP), Technique for Order of Preference by Similarities to Ideal Solution (TOPSIS/ Fuzzy TOPSIS), ISM and DMATEL.
- Experimental Design: consist of Analysis of Variance and Covariance
- Experimental design І; Single Factor Designs
- Experimental design ІІ; Factorial Designs
- Correlational Research (correlation and regression)
- Small N Design (single subject method)
- Structural Equation Modeling
- Mediation and Moderation Analysis: mediation and moderation and conditional process models
- Shiny Programming: building interactive web apps and dashboards by R.