IQVIA is a publicly-traded healthcare intelligence company founded in 2016 upon the merger of two market leaders: Quintiles and IMS Health. With locations aroun
ICOA Advanced Insights
Location
United Kingdom
Posted
5 days ago
Salary
0
Seniority
Mid Level
Job Description
ICOA Advanced Insights
IQVIA
Role Description - Lead and execute clinical and operation advanced analytics or system improvements. - Develop novel data science methodologies to generate deep insights from disparate data sources. - Provide subject matter expertise to teams in identification and application of the right data science methodology for a business problem. - Formulate the right business problem in collaboration with business and create necessary analysis plans. - Develop machine learning methodologies both supervised and unsupervised as appropriate to the business problem. - Develop scalable and robust code in relevant languages such as R or Python in support of data science projects. - Perform exploratory data analysis, system design analysis, integration design analysis, and database design analysis to generate insights and help answer business questions. - Ensure the life cycle management of the models is maintained through code repositories and version control tools. - Perform data engineering, data preprocessing, and data wrangling activities utilizing different approaches such as SAS, SQL, NOSQL, and graph models. - Perform thorough validation of the machine learning output to ensure a high-quality work product. Qualifications - Minimum of 5 years’ experience with a relevant master’s degree in data science, statistics, informatics, operations research, computer science, engineering, or information systems. - Experience in data science and visualization, including building data ecosystems and pipelines, data processing, data wrangling, and analytics (reports, BI dashboards, ML models) with SQL and Python or R programming knowledge. - Proven ability to translate and influence business requirements against existing analytics and data integration capabilities while identifying challenges and necessary solutions. - A proven record in shaping and delivering key programs that optimized performance and delivered project support in matrix environments. - Experience in advanced analytics processes, including gaining insight from structured and unstructured data, predictive modeling, and optimization. - Strong working knowledge of traditional statistical methodologies. - Strong working knowledge of machine learning methodologies, both supervised and unsupervised learning methods. - High proficiency in either Python or R. - Familiarity with best practices in machine learning model development, validation, and deployment. - Solid understanding of life cycle management of code and code repositories. - Extensive experience with data wrangling, data preprocessing, and data engineering techniques on large datasets. - Technical expertise, preferably in pharmaceutical clinical or a regulated industry operation, with extensive experience in diverse and complex data integration, warehousing, and ingestion. Requirements - This role is not eligible for UK visa sponsorship. Company Description IQVIA is a leading global provider of clinical research services, commercial insights, and healthcare intelligence to the life sciences and healthcare industries. We create intelligent connections to accelerate the development and commercialization of innovative medical treatments to help improve patient outcomes and population health worldwide. Learn more at https://jobs.iqvia.com . IQVIA is committed to integrity in our hiring process and maintains a zero tolerance policy for candidate fraud. All information and credentials submitted in your application must be truthful and complete. Any false statements, misrepresentations, or material omissions during the recruitment process will result in immediate disqualification of your application, or termination of employment if discovered later, in accordance with applicable law. We appreciate your honesty and professionalism.
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