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[INT]Data Analytics Intern (5995)

Beijing

  • Organization: AIIB - Asian Infrastructure Investment Bank
  • Location: Beijing
  • Grade: Internship - Internship
  • Occupational Groups:
    • Statistics
    • Information Technology and Computer Science
  • Closing Date:

The Asian Infrastructure Investment Bank (AIIB) is a multilateral development bank whose mission is Financing Infrastructure for Tomorrow in Asia and beyond—infrastructure with sustainability at its core. We began operations in Beijing in 2016 and have since grown to 110 approved members worldwide. We are capitalized at USD100 billion and AAA-rated by the major international credit rating agencies. Collaborating with partners, AIIB meets clients’ needs by unlocking new capital and investing in infrastructure that is green, technology-enabled and promotes regional connectivity.

PMD is responsible for the portfolio monitoring and data needs for AIIB’s investment operations. As the PMD Data Analytics Intern, he/she will be supporting individual projects on a range of projects, such as advanced data analytics, market and comparative analysis, portfolio reporting automation, leverage Large Language Model (LLM)/Natural Language Processing (NLP)/ Generative Artificial Intelligence (GenAI) application finetuning and development to achieve the objective of making AIIB a technology-enabled bank.

Responsibilities:

The PMD Data Analytics Intern will be responsible for the following outputs:

  • Research advanced technology application in banking and asset management industries and develop a recommendation on how AIIB can leverage Large Language Model (LLM)/Natural Language Processing (NLP)/ Generative Artificial Intelligence (GenAI) solutions to improve investment operations and portfolio monitoring processes.
  • Responsible for data analytics tasks such as refreshing the Portfolio Insights Dashboard to achieve automated data scraping from web sources.
  • Responsible for finetuning of the AI Chatbot function on Project Document Library functionality on the Investment Management Information System (IMIS).

Requirements:

  • Currently enrolled in a Masters/MBA or PhD program, preferably specialized in data analytics, IT, and/or AI technology.
  • Familiarity with Python, SQL, Power BI, Microsoft Dynamic 365 and/or Power Platform.
  • Proficiency in training and fine-tuning advanced deep learning and Generative AI models using leading frameworks.
  • Familiarity with leverage Large Language Model (LLM)/Natural Language Processing (NLP)/ Generative Artificial Intelligence (GenAI), and their application to real-world data-intensive problems.
  • Strong analytical and problem-solving skills, with the ability to handle complex, unstructured data sources.
  • Passion for international development/area of interests.
  • Excellent communication skills.
  • Great team player.
  • Fluent in oral and written English.

AIIB is committed to diversity, transparency and inclusion. We believe our strength comes from having a team with the right diverse skills, experiences and abilities selected through a merit-based competitive process. We actively encourage applications from people from both within and outside AIIB members, regardless of nationality, religion, gender, race, disability or sexual orientation.

Previous experience and qualifications will determine the grade and job title at which successful applicants will enter AIIB.

Join us and help create a prosperous and sustainable Asia while growing your career in a diverse and innovative environment.

We do our best to provide you the most accurate info, but closing dates may be wrong on our site. Please check on the recruiting organization's page for the exact info. Candidates are responsible for complying with deadlines and are encouraged to submit applications well ahead.
Before applying, please make sure that you have read the requirements for the position and that you qualify.
Applications from non-qualifying applicants will most likely be discarded by the recruiting manager.