Mapathon Project skills
- Geospatial Data Analysis
- QGIS Software
- Data Acquisition and Processing
- Data Categorization and classification
- Cartography
- Data Visualization
Freelance Project skills
- Python
- Bootstrap
- Jinja Template Engine
- Flask SQL Alchemy
- SQLlite Database
Research Project skills
- Spatial Mapping
- Google Earth Engine
- Python
- Statistical Analysis
- Machine Learning
Questionnaire Assessment
- Streamlit Mapping
- Python
- No-SQL Database Management (Deta)
- Modular Application Design
- Spatial Data Assessment
Mapathon Project
Electric Vehicle Adoption Map | QGIS, Data Acquisition, GIS Analysis
As part of the IIT Bombay FOSSEE Mapathon, I created an insightful map that showcases
India's
efforts to promote electric vehicle adoption. This project integrated reliable data sources
such as:
- Data from the Ministry of Heavy Industries: Acquired from official government releases and processed into structured Excel sheets for further analysis.
- State Boundaries from Bhuvan: Leveraged official boundary data to ensure geographical accuracy.
Using QGIS, I developed four maps that help users:
- Identify the best states for purchasing electric vehicles.
- Determine optimal inter-state travel routes based on charger density.
- Analyze the ongoing shift in the Indian automobile industry towards electric vehicles.
Freelance Project
Efficient Billing Management System for a Law Firm | Flask, SQLite, Python
I developed a robust Flask-based web application for a law firm, streamlining their billing
processes and significantly reducing the time spent on managing financial records.
Leveraging the Jinja template engine and Flask-SQL Alchemy, I connected the application to a
local SQLite database, enabling seamless data management and retrieval.
Key features include:
- Bill Logging: Automatically generates Google documents for bill details and collects additional expense data.
- Database Viewing and Sorting: Allows users to view and sort billing records by bank name or bill generation time.
- Comprehensive Bill Generation: Compiles bills from selected banks, calculates grand totals, and enables easy download for records.
- User-Friendly Execution: Simplified application launch through .bat files, making it accessible and easy to use for non-technical staff.
This project empowered the law firm to efficiently manage and access their billing data, saving valuable time and resources.
Research Project
Landslide Susceptibility Mapping Algorithm | Google Earth Engine, Machine Learning, Python
I developed an advanced Landslide Susceptibility Mapping algorithm designed to minimize
creator subjectivity, providing more accurate and reliable susceptible area identification.
The project
integrated multiple cutting-edge technologies and methodologies:
- Google Earth Engine: Utilized for efficient storage and management of extensive geospatial datasets.
- Hypothesis Testing: Applied during the data pre-processing phase to ensure statistical robustness.
- Machine Learning (Python): Implemented to analyze data and predict landslide susceptibility with high precision.
- Map Creation: Generated detailed susceptibility maps using Google Earth Engine, based on the refined data and machine learning results.
- NCMLAI: National Conference of Machine Learning and Artificial Intelligence 2023
- Book of Abstracts: Page Number 61
Questionnaire Assessment
Cartogram Assessment Application | Streamlit, Python, No-SQL, Deta
I developed and deployed a Cartogram Assessment application using Python and Streamlit,
designed to evaluate which types of cartograms are most suitable for presenting spatial
data in a way that is easily understandable by the general public. The application
features a comprehensive questionnaire, and its modular design allows for independent
generation of questions and corresponding image models.
Key technologies used include:
- Streamlit for deployment.
- Deta (No-SQL) for storing assessment data.
- Google Colab for statistical analysis, generating Excel sheets from collected data.
This project highlights my ability to create scalable, data-driven applications for user-centric spatial data analysis.