About this job
A million people a year die in car collisions around the world. That number should be zero. You can help us create a new insurance company that uses the latest technology and data science methods to save lives by preventing car collisions before they happen. The field is rich with data and we will be pushing the boundaries of what is possible.
We are a San Francisco startup in the financial district that is well funded. We are temporarily in stealth mode.
Skills & requirements
Requirements for all data scientists:
- Expert in Python and core libraries used by data scientists (Numpy, Scipy, Pandas, Scikit-learn, Matplotlib/Seaborn, etc.)
- Preference for using Jupyter notebooks for your dev environment
- Demonstrable expertise building machine learning models deployable to production servers
- Some experience in experimental design and time series modeling
Additionally all applicants must be an expert in one of the following specializations:
- Machine learning: Mapping inputs to outputs
- Scikit-learn expert. This means you have rolled your own transformers and estimators, which you chained together in a pipeline and found optimal hyperparameters via a randomized grid search (or some other method).
- Pandas and Numpy expert. You have used pandas enough to run into its rough parts. Very likely you read Wes’ book. You are fluent with Numpy and array oriented programming in general.
- Modern techniques: You are deeply familiar with different validation pitfalls, understand how to effectively ensemble several models, and have experimented with different hyperparameter optimization methods.
- Modern data: You have built models using unstructured data such as text or images. You have built time series models using econometric approaches as well as machine learning approaches.
- Deep algorithmic understanding: You know all the nitty-gritty details of your favorite machine learning algorithms.
- Experimental design: Causing things to happen
- Statistical rigor: You should have a solid foundation of the statistics behind standard statistical design methods such as A/B testing and multivariate testing. For example, you should know how to deal with clustering and should be able to determine the standard errors of different statistics through simulation.
- Multi-armed bandit models: You know how to implement the technique and how to write a good cost function.
- Modern techniques: You can build a model that powers an app that serves a unique arrangement of diverse components to each user such that the specific components served were chosen to maximize the specific user’s probability of selecting a call to action (i.e. complex heterogenous treatment effects).
- War stories: You must be able to talk about times you ran experiments in a complex environment and what you learned from the effort
- Specific experience in marketing optimization is a plus.
- Strong Kaggle performance will earn you an instant interview
- Expert level knowledge in Spark
- Expert in Scala
- Ability to build RESTful services with a framework such as Flask
- Strong understanding of Docker
- D3 experience or other visualization tools