Client Background
Client: A leading research institution in the USA
Industry Type: R&D
Products & Services: Research, Higher Education
Organization Size: 20000+
The Problem
Faced challenges in understanding the impact of positive emotions and perceived severity of the pandemic on mental health and resilience among entrepreneurs. The goal was to provide a detailed analysis and predictive models to help comprehend these interactions and their implications.
Our Solution
We developed a comprehensive solution involving descriptive, inquisitive, and predictive analytics. This included formulating hypotheses, performing exploratory factor analysis, designing predictive models, and visualizing interactions through graphs and tables. Our solution aimed to provide actionable insights into the relationships between positive emotions, perceived severity of the pandemic, and mental health.
Solution Architecture
Data collection and preprocessing
Exploratory Factor Analysis (EFA) to identify key indicators
Regression analysis to understand relationships between variables
Structural Equation Modeling (SEM) to visualize and quantify interactions
Creation of detailed tables and figures for publication
Deliverables
Descriptive statistics table
Fit statistics table for hypothesized and modified models
SEM results with coefficients and interaction effects
Visualizations of interactions between resiliency, perceived severity of the pandemic, positive emotions, and mental health
Comprehensive report with charts, tables, results, and methodology
Tech Stack
- Tools used
- Jupyter Notebook, Python Libraries
- Language/techniques used
- Python, Exploratory Factor Analysis, Regression Analysis,
- Models used
- Ordinary Least Squares (OLS), Factor Analysis, Structural Equation Model (SEM)
- Skills used
- Data preprocessing, feature engineering, statistical analysis, model evaluation, data visualization.
- Databases used
- CSV files containing survey data.
What are the technical Challenges Faced during Project Execution
We faced challenges with missing data, which affected the accuracy of the models. Integrating different data sources and ensuring data quality were also significant hurdles.
How the Technical Challenges were Solved
We used data imputation techniques to handle missing values and implemented robust data cleaning processes. For integration, we used efficient ETL (Extract, Transform, Load) pipelines to ensure seamless data flow.
Business Impact
The project provided Jean Kabongo with valuable insights into the factors affecting entrepreneurial resilience during the pandemic. The detailed analysis and predictive models helped in understanding the key drivers of mental health and provided a foundation for further research and intervention strategies.
Project Snapshots
Project website url
https://github.com/AjayBidyarthy/Jean-Kabongo-Research-Project
Project Video
Create video of the project.
https://www.loom.com/share/a39b1aea53b64db19085d86b16de4f18?sid=d3e39a65-bdf5-4022-b458-b023e845c13b
Summarize
Summarized: https://blackcoffer.com/
This project was done by the Blackcoffer Team, a Global IT Consulting firm.
Contact Details
This solution was designed and developed by Blackcoffer Team
Here are my contact details:
Firm Name: Blackcoffer Pvt. Ltd.
Firm Website: www.blackcoffer.com
Firm Address: 4/2, E-Extension, Shaym Vihar Phase 1, New Delhi 110043
Email: ajay@blackcoffer.com
Skype: asbidyarthy
WhatsApp: +91 9717367468
Telegram: @asbidyarthy