Roadie, a UPS Company, is a logistics management and crowdsourced delivery platform. Founded in 2014, Roadie offers businesses fast, flexible and asset-light logistics solutions for last-mile delivery. Roadie enables local delivery to more than 95% of U.S. households by providing access to more than 200,000 independent drivers nationwide – allowing businesses to offer their customers delivery optionality for almost any industry, from airlines to artisans.
As a Machine Learning Engineer at Roadie, you will build algorithms and models that run our core systems, from matching deliveries and drivers in a two-sided market, to routing optimizations and dynamic pricing schemes. Collaborating with Software Engineers and Data Scientists, you will create technology that solves real-world problems in the crowdsourced delivery space. This position will initially be focused on machine learning capabilities with marketplace pricing.
What You’ll Do
- Design, build and maintain new machine learning pipelines at the intersection of crowdsourced systems and logistics
- Creatively apply the state of the art in machine learning to optimize Roadie’s automated decision-making
- Build new pricing solutions for our expanding delivery marketplace
- Work with engineering, product and design on a cross functional team to implement the pipelines in a production environment
- Advocate for data driven decision making throughout the company
What You Bring
- MS or PhD in Machine Learning, Artificial Intelligence, Statistics, Computer Science, Operations Research or a related field
- 2+ years of experience with applied machine learning
- Extensive hands-on experience with Python and SQL
- Expertise in machine learning algorithms (unsupervised and supervised) and statistical methods
- Experience in evaluating model performance
- Experience using machine learning in the context of logistics
- Familiarity with libraries such as Pandas, Numpy, Scikit-Learn, SciPy, PyTorch, Tensorflow, Keras and related
- Understanding of modern deep learning techniques such as CNN, RNN
- Ability to effectively articulate technical challenges and solutions to multiple audiences
Bonus
- Experience with graph algorithms
- Experience with combinatorial or nonlinear optimization techniques
- Experience with containers, Docker, or Kubernetes
- Experience with cloud environments such as AWS, GCP, or Azure
- Experience building machine learning pipelines and full loop machine learning systems
- Experience with dynamic programming, approximate dynamic programming, and/or optimal control theory
Why Roadie?
- Competitive compensation packages
- 100% covered health insurance premiums for yourself
- 401k with company match
- Tuition and student loan repayment assistance (that’s right - Roadie will contribute directly to your existing student loans!)
- Flexible work schedule with unlimited PTO
- Monthly 3-day weekends
- Monthly WFH stipend
- Paid sabbatical leave- tenured team members are given time to rest, relax, and explore
- The technology you need to get the job done
This role is not eligible for Visa sponsorship. Applicants must be authorized to work for any employer in the U.S.