Job description
							
                            
							
Job Responsibilities:
- Research and Identify best sampling methodology for machine learning models built to estimate simulated target variables.
 
- Write and maintain sample data creation scripts.
 
- Implementing machine learning models to predict building energy simulation in a method that can be handed off to the development team for implementation in code base.
 
- Improving model performance where possible and increasing the scale of coverage such as adding new building types, climate zones, and building codes.
 
- Create complete model error analysis framework.
 
- Optimize model sample size.
 
- Maintain and re-build machine learning models when feature requests are provided by users.
 
- Work on user facing visualizations of machine learning model error.
 
- Work on user facing visualizations of design space and model prediction.
 
- Provide related teams with progress updates.
 
- Work with development team to implement sample data creation and model development scripts into code base. 
 
Competencies and Education:
- Bachelor degree in Mathematics or Statistics
 
- Masters degree in Data Science , Mathematics, Machine learning or equivalent
 
- Competency in Python
 
- Experience with PowerBI, highCharts or other graphics package
 
- Experience working in Agile development framework
 
- 2-5 years relevant work experience
 
- Strong attention to detail
 
- Strong analytical thinking skills
 
- Self starter, keen to take initiative- identifying and solving problems
 
- Ability to distil and communicate complex ideas to people of all skill levels
 
- Interest in building science, sustainability, and economics
 
- Experience in building energy simulation is seen as a strong asset