Want to change how the world engages with news and data?
Selerity has dominated ultra-low-latency data science in finance for several years. Now our real-time content analytics and contextual recommendation platform is gaining broader traction in media and we need to scale up! We are working on tough problems in entity and fact extraction, domain-specific semantic relevance, topic classification, on-line clustering, behavioral analysis, collaborative filtering and contextual recommendation. We need to achieve unprecedented accuracy across a variety of languages, media types and problem domains -- all in real-time and at rapidly increasing scale.
We’re looking for an experienced, hands-on data scientist to join a major initiative at a critical point in our company’s growth.
Skills & requirements
Possess a rock-solid background in Computer Science (minimum BS in Comp Sci or related field) + at least 5 years (ideally 10+) of challenging work experience.
Advanced degree is a plus but you're not just an academic -- you have hands-on software engineering experience applying complex algorithms to real-world problems at scale.
Demonstrated advanced proficiency in one or more of the following fields: Natural Language Processing, Machine Learning, Deep Learning, Recommendation Systems.
Understand that a statistically rigorous process of forming and testing hypotheses is more important than the latest buzzword.
Practical experience with automated testing, continuous integration and ongoing production monitoring.
Extensive experience coding Java, Python and/or C++ in Linux environments. Exposure to AWS or other cloud platforms a plus.
Solid understanding of how browsers, servers, networks, databases and applications interact in large-scale, distributed systems.
Working knowledge of high volume media serving, digital advertising (especially real-time bidding), instant messaging and/or social networking is a big plus.
Understanding of map-reduce and/or other distributed data processing algorithms and their associated open-source frameworks (e.g. Hadoop, Spark, Storm, etc.)
Working knowledge of relational, column, object, and graph database fundamentals + strong practical experience in at least two of those paradigms.
Work effectively in agile teams; get stuff done with minimal guidance and zero BS, help others and know when to ask for help.
Clearly communicate complex technical and product issues to non-technical team members, clients, etc.
Bonus points for experience implementing machine learning algos on GPU's or other hardware acceleration!
Our mission is to deliver critical information when our users need it most. We launched our first ultra-low-latency financial data product in 2009 and continue to lead the market for real-time natural language processing and event data extraction. In recent years we have applied our technology more broadly to a wide spectrum of news, research and social media. From driving the world's most sophisticated automated trading algorithms to powering the most widely read financial news site we continue to expand into new problem domains and new ways to integrate the most relevant, engaging information into our user's workflows.
Our stack combines leading commercial and open source technologies with numerous home-grown innovations, including:
Wide array of open source and proprietary NLP and machine learning frameworks and libraries in Java and Python.
Hybrid of AWS (EC2, S3, RDS, R53) + dedicated datacenter network, server and GPU/coprocessor infrastructure.
Cassandra, VoltDB, ElasticSearch plus in-house analytics pipeline (similar to Apache Spark)
In-house messaging frameworks for low-latency multicast and global-scale TCP (similar to protobufs/FixFast/zeromq).