We are always looking for talent
We currently don’t have any open positions, but you are welcome to send us your CV and submit an unsolicited application.
Job Opportunities
Quantitative Modeling Analyst
CLOSED
Location: Lisbon (hybrid model)
Company: MOAI Consulting
Sector: Healthcare / Consulting
Contract type: Full-time
ABOUT MOAI CONSULTING:
MOAI Consulting is a consulting company specialized in the healthcare sector that develops evidence-based solutions to support strategic decision-making for hospitals, pharmaceutical companies, public decision-makers, and other stakeholders in the healthcare ecosystem.
We combine clinical expertise, robust data, and advanced quantitative models to improve healthcare system efficiency and health outcomes for citizens.
ROLE MISSION:
As a Quantitative Modeling Analyst, you will play a key role in developing advanced statistical, economic and simulation models that support strategic decision-making in the healthcare ecosystem. You will be involved in collecting, processing and analyzing clinical, epidemiological and economic data, as well as designing, implementing and validating quantitative models such as cost-effectiveness analyses, budget impact models and operational simulations.
You will contribute to the development of project methodologies, support multidisciplinary teams with analytical insights, and prepare clear, evidence-based outputs, including technical reports, presentations and recommendations for healthcare stakeholders. You will also participate in client meetings, helping translate complex results into meaningful narratives that inform strategic decisions.
Because people are the cornerstone of MOAI, this role is essential to our mission. We are looking for a motivated and curious professional, eager to learn, solve complex problems and contribute to the improvement of the Portuguese healthcare system.
RESPONSIBILITIES:
Collect, process, and analyze clinical, epidemiological, and economic data
Develop quantitative models for health economic evaluation
(e.g., cost-effectiveness, cost-utility, budget impact)Build and validate statistical, forecasting, and simulation models
Prepare technical reports and presentations with high-impact results
Contribute to consulting projects (market access, HEOR, hospital management)
Collaborate closely with multidisciplinary teams (clinicians, economists, managers)
Participate in client meetings to present analytical insights.
YOU ARE A STRONG CANDIDATE IF YOU:
Have a bachelor’s or master’s degree in Biomedical Engineering, Applied Mathematics, Statistics, Health Economics, Data Science, or other related quantitative fields;
Have solid knowledge of quantitative modelling, including statistics, epidemiology, optimization or simulation;
Are comfortable working with analytical tools such as advanced Excel, Python, or R;
Have the ability to translate complex technical concepts into clear, data-driven narratives that support strategic decision-making;
Are fluent in Portuguese and English, both written and spoken;
(Valued) Have experience in HEOR, pharmacoeconomics or data analysis in the healthcare sector;
(Valued) Have previous experience in consulting or in client-facing analytical projects;
(Valued) Have notions of SQL and are familiar with data visualization tools such as Power BI or Tableau;
(Valued) Have an understanding of the Portuguese healthcare system and its challenges;
Are analytical, detail-oriented and capable of working with large and complex datasets;
Are proactive, curious and eager to learn new modelling approaches and methodologies;
Enjoy working collaboratively in multidisciplinary teams and feel comfortable presenting insights to different stakeholders.
WHAT WE OFFER?
Opportunity to work on strategic projects that impact the healthcare system;
Integration into a dynamic team with strong critical thinking and innovation focus;
Continuous training in HEOR and consulting;
Career progression aligned with merit and skill development;
Flexible and hybrid work model;
Collaborative environment with autonomy and responsibility from day one.
