About this job
This is an extraordinary opportunity to get to use cutting-edge big data and machine learning tools while doing something good for the planet and open-sourcing all your code.
SkyTruth is seeking an engineer to join the team that is building Global Fishing Watch which is a partnership of SkyTruth, Oceana and Google, supported by Leonardo DiCaprio, and dedicated to saving the world's oceans from ruinous overfishing [Wired], Our team works directly with Google engineers that support Cloud ML, TensorFlow and DataFlow and we are a featured Google partner.
Your job is to develop, improve and operationalize the multiple pipelines we use to process terrabytes of vessel tracking data collected by a constellation of satellites. We have a data set containing billions of vessel position reports, from which we derive behaviors based on movement characteristics using Cloud ML, and publish a dynamically updated map of global commercial fishing activity.
You will join a fully distributed team of engineers, data scientists and designers who are building and open sourcing the next generation of the product and who are very committed to creating a positive impact in the world while also solving novel problems using cutting edge tools.
The company is headquartered in Washington DC, the data science team is in San Francisco, and we have engineers in the US, Europe, South America and Indonesia. Daily scrums are scheduled around east coast US timezone (so that kind of sucks for the guy in Indonesia :-)
Because this is open to remote work, we will get a lot of applicants. We are not just looking for an engineer with great skills that wants to work with cool tech. We also want you to be inspired by the project, so please tell us something that excites you about what we're doing when you contact us.
Here's some more stuff you can read about the impact our work has:
Skills & requirements
What You'll Do
- Extend and improve existing data pipeline built using hadoop, luigi and bigquery
- Design and implement new data pipeline components using hadoop, cloud dataflow, tensorflow
- Architect and develop dynamic cluster scaling architecture with cloud dataproc
- Implement performance monitoring and metrics with stackdriver.
- Implement uptime monitoring for the multiple pipelines
- Collaborate with data science team to design and implement machine learning classification algorithms at scale.
- Design and build tools for analysts to use to manually classify time-series data
- Perform ad hoc statistical and data mining analyses
- Publish internally developed tools as open source projects
- Handle architectural and design considerations such as performance, scalability, reusability and flexibility issues
- Review the technical design and perform code review of other developers’ work
- Implement APIs for data access and data distribution
- Help choose the right technology stack for the next generation data platform
What to Bring
- Python experience: 5+ years
- Scala experience: 2+ years
- Experience with scalable data architecture – e.g. Hadoop, Cloud Dataflow etc
- Experience working with big data techniques
- Experience working with cloud platforms like Amazon, Azure or Google Cloud Platform
- Experience working with Docker
- Ability to work in a distributed team
Nice to Have
- Experience with machine learning tools such as scikit-learn, caffe, tensorflow
- Open source collaboration experience
- gdal and other spatial tools
- Java, R
SkyTruth is a growing group of dedicated people using remote-sensing technologies to help protect the earth by making more of the impacts of human activity visible to everyone. We use scientifically credible satellite images and other visual technologies to create compelling pictures that vividly illustrate environmental impacts, and provide these pictures and supporting data to environmental advocates, policy-makers, the media, and the public. SkyTruth is a 501(c)(3) nonprofit organization headquartered in Shepherdstown, West Virginia (just outside Washington DC), with team members on three continents.