In this role, you will develop breadth of knowledge in programming (R, Python), Descriptive, Inferential, and Experimental Design statistics, advanced mathematics, and database functionality (SQL, Hadoop)
In this role, you will be responsible to retrieve, process and prepare a rich data variety of data sources such as social media, news, internal or external documents, emails, financial data, and operational data.
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$60K to $80K -Dallas, TX
This position demonstrates knowledge of clinical practice and electronic clinical information systems functionality its implementation in a clinical setting, and the ongoing maintenance and growth of the system.
The right candidate will have an understanding of direct marketing principles, and will have a demonstrated interest in and facility with test and learn strategies and data analysis; further, they will demonstrate analytic curiosity, wanting to understand the why behind the what.
In this role, the selected candidate will analyze large complex, multi-dimensional datasets and present analytical storyboards; develop prototypes, evaluate new analytics technology and introduce best practices.
The successful candidate will need to be able to present back their findings to the business by focusing on the specific business value while exposing their assumptions and validation work in a way that can be easily understood by the business stakeholders.
In this role, the selected candidate will be responsible for modeling complex engineering and operational problems, discovering insights and identifying opportunities through the use of statistical, algorithmic, mining and visualization techniques.
In this role, the candidate will explore and examine data from multiple diverse data sources Conceptual modeling, statistical analysis, predictive modeling and optimization design Understand and work around limitations in analytic models Data cleanup, normalization and transformation.