For this project, I worked with multiple datasets containing Toronto Census data (3 million rows!!).  I supplemented this data using web scraping and data mining. 
                            Because my data came from several sources, a lot of data cleaning, data manipulation and joining happened.  Much of these tasks were performed using SQL.  Data was stored using a relational database. 
                            I used clustering to identify similarities and groups between different neighborhoods based on different properties.
                            With that information, I developed a scoring method to rank and rate neighborhoods based on profiles and characteristics. 
                            Finally, I created visualizations of findings, illustrating different relations and trends.
                            SEE MORE OF THIS PROJECT
                        
Used: BeautifulSoup, Python, SQL, Scikit, MatPlotlib, Dash, Flask
 
                         
 
                     
            
         
            
                