New York University
Path 2: Postdoc – Data Analytics (Economics)
Job Description
Description
The Post-doc will be supervised by Professor Samreen Malik and will be part of a research team that works on issues related to development of human capital as well as climate and sustainable development. Some of the topics of interest include how better air quality improves student’s health and non-cognitive functions; sleep patterns of children and its relation to their academic achievement; whether households in low income countries adopt water saving technology to overcome water scarcity; whether cleaning air in workplaces impacts worker’s productivity. Many of the projects will involve public and private partnership in the UAE and in other countries and the post-doc will be useful for the UAE based partnership, holding meetings, convincing potential partners to collaborate, and present work to the partners and academics. As part of the team, the post-doc will work full-time as co-author on Dr. Malik’s projects. The post-doc will also provide Malik’s team of researchers and faculty with Data Analytics, Data visualization, Data Management, coding & development and support of research design. As part of Malik’s team, there will be hands on experience to learn research methods, experimental designs, tools specifically applied to research in social science but more importantly the post-doc will be involved from the initial stages of project allowing an independent experience of carrying out research from start till end.
Principal Accountabilities
- Working with Dr. Malik and her team to advance their research work by providing Data analytics and research analysis support
- Assist researchers with Data management including big data, data mining and database support and development
- Support and advise researchers on Data visualization
- Foster Relationships with the UAE public and private entities
- Support researchers with coding and algorithm development
- Conduct training, engagement with students for senior thesis (graduate and undergraduate level)
The candidate will also work on individualized research projects under the supervision of the faculty during the duration of his/her tenure.
Qualifications
Required Education
PhD in Economics, Engineering, Computational Science, Statistics, Computational Social Science or equivalent
Required Work and Related Experience
- Experience in understanding researcher requirements and translating those requirements into functional and dependable solutions,
- Experience working with data science programming languages like STATA, Python, R
- Experience data management and big data
- Experience in data visualization
- Experience in Machine Learning, and AI
- Some Professional experience working on projects in research environments
Preferred Work and Related Experience
- Experience in project management of application development projects.
- Experience in a higher education research institution, especially developing and/or supporting research.
Required Competencies
- Strong programming skills in relevant programming languages e.g. STATA, Python, R.
- Knowledge of scientific analysis, statistical methods and computer related research design and statistical analysis.
- Knowledge of visualizing research data and familiarity with data visualization tools.
- Knowledge of data managing including data collection, organization and cleansing
- Knowledge of standard statistical packages such as R, STATA etc.
- Knowledge of with Big data and data mining tools
- Ability to clearly communicate technical concepts to non-technical audience.
- Ability to keep up to date with technological advances.
- Ability to work in a team-based environment and contribute positively to it.
- Ability to work on own initiative and as part of a team.
- Ability to work with individuals at all levels and diplomatically manages their expectations.
- Creative problem-solving abilities and initiatives.
- Strong organizational skills.
- Strong presentation and report writing skills.
- Excellent communication, interpersonal and analytical skills are essential.
- Ability to manage conflicting priorities in an effective and professional manner.
Preferred Competencies
- Knowledge of one or more software source code control systems.
- Ability to work on own initiative and as part of a team.
Application Instructions
- CV
- Statement of interest in the position
- Transcript of degree(s)
- Two letters of recommendation
UAE nationals are encouraged to apply
This position is under the NYUAD Kawader program, for details regarding the program, open dates, specific program requirements, and FAQ’s please refer to our NYUAD Kawader webpage: https://nyuad.nyu.edu/en/about/careers/postdoctoral-and-research/kawader-research-assistantship-program.html
For further information or questions regarding the position/program please contact [email protected] (due to the high volume of emails received, please allow 5 working days for a response)
Equal Employment Opportunity Statement
For people in the EU, click here for information on your privacy rights under GDPR: www.nyu.edu/it/gdpr
NYU is an Equal Opportunity Employer and is committed to a policy of equal treatment and opportunity in every aspect of its recruitment and hiring process without regard to age, alienage, caregiver status, childbirth, citizenship status, color, creed, disability, domestic violence victim status, ethnicity, familial status, gender and/or gender identity or expression, marital status, military status, national origin, parental status, partnership status, predisposing genetic characteristics, pregnancy, race, religion, reproductive health decision making, sex, sexual orientation, unemployment status, veteran status, or any other legally protected basis. Women, racial and ethnic minorities, persons of minority sexual orientation or gender identity, individuals with disabilities, and veterans are encouraged to apply for vacant positions at all levels.
Sustainability Statement
NYU aims to be among the greenest urban campuses in the country and carbon neutral by 2040. Learn more at nyu.edu/sustainability