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CPI helps make great ideas and inventions a reality. We’re a team of intelligent people using advances in science and technology to solve the biggest global challenges in healthcare and sustainability.
Through our incredible people and innovation infrastructure, we collaborate with our partners in industry, academia, government, and the investment community to accelerate the development and commercialisation of innovative products.
From health technologies and pharmaceuticals to sustainable food and materials innovations, we turn the entrepreneurial spirit and radical thinking of our people and partners into incredible impact that makes our world a better place.
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Why this role is important for CPI’s work
CPI has an exciting opportunity for a placement student to join the established and growing digital pharma team. The successful candidate will use process modelling and simulation methods (e.g., gPROMS, ASPEN, STAR-CCM+) alongside advanced data analytics (hybrid modelling methods) to develop pharmaceutical manufacturing process models. The role will also (initially) involve optimising existing models of continuous direct compression (CDC) unit operations such as feeding, blending, and tableting.
Key tasks in the role will include (but are not limited to the below):
* Using a variety of modelling techniques, develop predictive tools and models to support drug development/manufacturing platforms. Modelling techniques include (but are not limited to): discrete element modelling (DEM) tools such as STAR-CCM+, process models and flowsheets (e.g., gPROMS, ASPEN), statistical techniques, model predictive control (MPC), population-balance models (PBM), first-principles engineering models, data-driven modelling.
* Engaging with the wider CPI R&D team including data science and process modelling scientists.
* Supporting colleagues in the design, execution, validation, and delivery of modelling projects to a high standard (e.g., good manufacturing practice), and preparing models for commercialisation.
* Documenting experimental and modelling data and supporting colleagues in the training of project teams to ensure successful application of process models.
* Working collaboratively with process engineers, chemists, analysts, and specialists in instrument automation and control, to apply and implement modelling tools into project workflows, assist with troubleshooting complex manufacturing problems, and propose hypotheses to solve issues.
* Working collaboratively with data scientists to assist in the application and implementation of hybrid modelling components.
* Supported by colleagues, work collaboratively with external partners (e.g., universities, research organisations), pharmaceutical clients, and vendors (e.g., software companies) to contribute towards the execution and delivery of modelling projects.
* Presenting scientific results to a diverse audience through data analysis and visualisations.
Just one example of an exciting project the team has recently worked on is:
Continuous direct compression (CDC) is a continuous manufacturing process that allows much greater process control than traditional batch-type pharmaceutical manufacturing methods, enabling rapid production of formulations at a range of scales. In addition, CDC offers shorter optimisation times than batch-type processes and therefore more efficient use of starting materials. GC1 further built on this process efficiency by developing a digitally-twinned CDC platform and workflow, allowing scientists to understand and optimise their formulation process in digital space. This will reduce the amount of starting materials needed for optimisation and reduce the overall cost of the technology for the end-user.
The person we are seeking
The ideal candidate should be working towards a degree (or equivalent) in chemical, biochemical, process control, pharmaceutical engineering with a primary focus on mechanistic modelling and:
* Have a good understanding of fundamental engineering/physical concepts such as mass, momentum, and energy transport phenomenon; and have a mathematical ability to set up and solve linear, non-linear, and differential equations.
* Have a working knowledge of numerical methods, computational modelling of chemical/physical processes, programming, and mathematics.
* Have a working knowledge of computational fluid dynamics (CFD), discrete element modelling (DEM) tools such as STAR-CCM+, flowsheet modelling using simulation software like gPROMS Formulated Products, ASPEN or related process simulators, and open-source machine learning and AI technologies applied to process modelling like Python. Matlab & Simulink will be very desirable.
* Possess good organisational skills, have the ability to manage own workload effectively and support with several projects simultaneously, delivering results in a timely manner.
* Be able to work effectively as part of cross-functional teams and embrace teamwork.
* Have strong written and verbal communication skills: must be able to impart ideas and results with colleagues with diverse backgrounds.
* We encourage applicants who do not fulfil all the requirements but bring curiosity and a willingness to learn to apply.
* The candidate must still be studying towards a degree at university while they’re on the placement.
Applications would also be welcomed by candidates who have:
* Technical expertise in the use of Process Analytical Technology (PAT), including equipment, methods, models and data structure requirements.
* Experience with discrete element method (DEM) and computational fluid dynamics (CFD).
* Experience with any of the following software is preferred: ASPEN, EDEM, LIGGGHTS, XPS, CFDEM, ANSYS Fluent, OpenFOAM, STAR-CCM+, other closely related packages.
* Knowledge of data analysis and visualisation packages (e.g., Spotfire or Tableau) is desirable. Strong statistical and machine learning skills are also preferred.
* Experience with developing dashboard tools using software systems like PowerBI.
* Experience with Code Management Software like GitHub.
* Knowledge of the software development workflow and commercialisation of modelling components like machine learning regression/classification models.
* Knowledge of Design of Experiment approaches, AWS tools, database access and query language.
What does CPI offer you?
At CPI, we offer a wide range of benefits to our employees, including:
* Up to 36 days holiday, including bank holidays – Plus a holiday purchasing scheme.
* Life assurance and accident insurance schemes.
This vacancy is a 12-month placement opportunity, paid at the national living wage rate (£24,307.67 per annum).
Please note that placement student roles are not eligible for our refer a friend scheme.
CPI is an organisation based in the UK. Commencement of employment is conditional on demonstrating right to work in the UK; sponsorship may be available.
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