VP, Data & Predictive Sciences

1925 GlaxoSmithKline LLC
Stevenage
1 year ago
Applications closed

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Vice President, Head of Discovery Data Science

Do you share a desire to advance scientific knowledge and capitalise on the revolution in data and predictive sciences to deliver measurable impacts on the success and progression of GSK’s medicine discovery portfolio?

In this newly created position, you will establish a high performing team and lead the new Data and Predictive Sciences (D&PS) function which will be focussed on harnessing the power of GSK’s data-as-an-asset to drive research productivity and unlock upper quartile ambitions. Working in close collaboration with other Research Technologies functions, Therapeutic Areas, GSK Tech/IT, AI/ML, Vaccines and Risk & Compliance.

The position is based in either Upper Providence (US) or Stevenage (UK).

This role will provide YOU the opportunity to lead key activities to progress YOUR career, these responsibilities include some of the following:

Build and lead a high-performing team with relevant life sciences or pharmaceutical subject matter expertise that works with business partners to solve high value research problems with a deep focus on value realisation to drive productivity. Work with partners in Research and Tech and Onyx to ensure D&PS/Research Tech input into the design of an effective data reuse strategy for Research that maximises the value of GSK’s data to drive research productivity and unlock upper quartile ambitions, working across D&PS and Research to drive uptake. Champion/drive a “predict-first” culture to maximize the use of predictive technology via working with experimental line leaders to define and implement ways of working that are consistent with “FAIR” data practices. Support the implementation and delivery of a 3-year Systems Investment Plan that seeks to maximise potential impact to drive research productivity upper quartile ambitions. Lead Data Sciences teams aligned by Research Technologies Partner functions that understand their data asset, data sciences and analytics needs, identify high priority focus areas; ensure the safe and effective use of data; and work alongside scientists to develop and embed solutions accordingly; leveraging new capabilities e.g. cloud-first technologies in partnership with the relevant Tech/IT organizations. Optimize, scale and embed proprietary predictive modelling capabilities in collaboration with relevant Research Technologies functions to deliver improved cycle times and probability of success across all modalities. Lead a team that will seek, incubate and embed adoption of new predictive approaches. Establish and maintain relationships with internal and external partners to stay abreast of emerging trends and technologies in data science and scientific computation. Develop and foster a team culture of collaboration, curiosity, quality, peer review and consistency and ensure continuous improvement with a relentless focus on enabling value realisation through user uptake. Work with leaders in D&PS, Research Technologies, R&D Tech to determine when to industrialize approaches, e.g. when a broader user base within the business would be a benefit to the business. With Research Technologies stakeholders, you will develop a business plan to drive the value of our data as an asset from data generation to consumption; leverage our data to enable the selection of the best targets and the design of the best molecules to drive the discovery portfolio. Inspire and drive a culture of excellence and innovation in data science, modelling and informatics that will attract talent and grow expertise to lead the industry in key areas of modelling capabilities that enable pipeline success.

Why you?

Basic Qualifications:

We are looking for professionals with these required skills to achieve our goals:

PhD in Life Sciences 10+ years pharmaceutical drug discovery experience. Experience in scientific disciplines related to drug discovery and development, including biology, chemistry, toxicology, and pharmacology. Experience in the development and application of computational approaches in drug discovery Experience in leading teams

Preferred Qualifications:

If you have the following characteristics, it would be a plus:

Experience in leading teams that positively impacted progression of the discovery portfolio via leading in a matrix setting at all levels and leveraging Subject Matter Experts to define standards and ensure fit for purpose solutions. Highly experienced relationship builder and influential in working across boundaries to drive success. Experience driving technology transformation with multiple stakeholders in alignment with business objectives leading to positive outcomes. Experience aligning data strategy with business objectives. Experience in driving uptake of solutions across the matrix. Experience in driving innovation in predictive technology. Experience with state-of-the-art high-performance computing and its application to current scientific problems. Deep expertise in one or more of the following areas: mathematical & statistical modelling, atomistic simulation, multiparameter optimisation, machine learning, computational chemistry, quantitative structure-activity relationships (QSAR) modelling.

Please visit to learn more about the comprehensive benefits program GSK offers US employees.

Why GSK?

Uniting science, technology and talent to get ahead of disease together.

GSK is a global biopharma company with a special purpose – to unite science, technology and talent to get ahead of disease together – so we can positively impact the health of billions of people and deliver stronger, more sustainable shareholder returns – as an organisation where people can thrive. We prevent and treat disease with vaccines, specialty and general medicines. We focus on the science of the immune system and the use of new platform and data technologies, investing in four core therapeutic areas (infectious diseases, HIV, respiratory/ immunology and oncology).

Our success absolutely depends on our people. While getting ahead of disease together is about our ambition for patients and shareholders, it’s also about making GSK a place where people can thrive. We want GSK to be a place where people feel inspired, encouraged and challenged to be the best they can be. A place where they can be themselves – feeling welcome, valued, and included. Where they can keep growing and look after their wellbeing. So, if you share our ambition, join us at this exciting moment in our journey to get Ahead Together.

GSK is an Equal Opportunity Employer and, in the US, we adhere to Affirmative Action principles. This ensures that all qualified applicants will receive equal consideration for employment without regard to race, color, national origin, religion, sex, pregnancy, marital status, sexual orientation, gender identity/expression, age, disability, genetic information, military service, covered/protected veteran status or any other federal, state or local protected class.

Important notice to Employment businesses/ Agencies

GSK does not accept referrals from employment businesses and/or employment agencies in respect of the vacancies posted on this site. All employment businesses/agencies are required to contact GSK's commercial and general procurement/human resources department to obtain prior written authorization before referring any candidates to GSK. The obtaining of prior written authorization is a condition precedent to any agreement (verbal or written) between the employment business/ agency and GSK. In the absence of such written authorization being obtained any actions undertaken by the employment business/agency shall be deemed to have been performed without the consent or contractual agreement of GSK.

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