62 lines
1.9 KiB
YAML
62 lines
1.9 KiB
YAML
#
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# This data file has some metadata about the teams and is a critical part of
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# plumbing jobs into team's blog posts
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---
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iOS:
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lever: 'Mobile'
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Android:
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lever: 'Mobile'
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Applied Research:
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lever: 'Data Science'
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Data Science:
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lever: 'Data Science'
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Core Platform:
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lever: 'Core Platform'
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Data Engineering:
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lever: 'Data Engineering'
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Core Infrastructure:
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lever: 'Core Infrastructure'
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Payments:
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lever: 'Payments'
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Technical Project Management:
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lever: 'Project Management'
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Web Development:
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lever: 'Web Development'
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about: |
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Web team at Scribd is responsible for core business metrics such as user
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acquisition, SEO, on-boarding and core product experience. We collaborate with
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Product Managers, Design Engineers, Data Scientists, QA and Project Managers in
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cross-functional teams to build an amazing product. We conduct many experiments
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(A/B tests) to understand our hypotheses and user behavior. Each and every
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experiment is very valuable, regardless of the outcome, as we get to learn the
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impact of our product development on the users. The scale of these experiments
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is also fairly large with 100+ million documents, 300+ million visitors every
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month (and growing) and 1.2 million (and growing) paid subscribers.
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Security Engineering:
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lever: 'Security Engineering'
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Internal Tools:
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lever: 'Internal Tools'
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Recommendations:
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lever: 'Recommendations'
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about: |
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The Recommendations team at Scribd wants to inspire users to read more and discover
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new content and topics. Our team comprises of Machine Learning and Software Engineers,
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Product Managers, Data Scientists, and QA and Project Managers, all of whom have the
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shared passion of building the world's best recommendation engine for books. We pride
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ourselves on using a variety of open-source technologies to develop and productionize
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state of the art machine learning solutions.
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IT:
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lever: 'IT' |