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Advise group Director on research direction and ML strategy for the firm
Lead research projects from idea generation and prototyping through validation with investment teams and deployment into production; this may involve project-based leadership over cross-funtional teams of junior scientists and other engineers
Develop predictive models to forecast economic and business outcomes
Architect ML-based optimizations to existing systems and proecesses within our data science stack
Advise quantitative investment teams who are incorporating machine learning techniques into their research process
Mentor junior scientists on machine learning and data science techniques
The ideal candidate has proven technical expertise and independence in commercial settings, and enjoys working hands-on in applied research. S/he is intellectually curious and a quick-study, but also self-directed and experienced in managing the demands on multiple projects at one time. The individual has passion for collaborating with like-minded individuals and an eagerness to apply themselves in the context of a collaborative, investment decision-making process.
Advanced degree - most likely a PhD - in a quantitative field such as computer science, statistics, electrical and computer enginereing, etc.
Strong background in classical machine learning, ideally including at least five yeras of relevant experience across academic and commercial settings. 3+ years of commercial experience is ideal.
Deep experience working with probability, statistics, time-series and cross-sectional analysis, especially with very large data sets
Fluency with one or more programming lanauges including Python, R, Scala, Julia, Java, C/C++, C#, etc.
Interest in applying computational methods to tackle challenging real-world problems within domain such as economics and finance
Not required (but helpful):
Familiarity with finance and portfolio management concepts
Experience working with financial datasets
Experience building deep learning models
Internal Number: 6560477
About Locke Careers
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