12 Month Internship - Data Scientist

Crédit Agricole CIB
London
8 months ago
Applications closed

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Job description

Business type

Types of Jobs - Others

Job title

12 Month Internship - Data Scientist

Contract type

Internship/Trainee

Term (in months)

12

Management position

No

Job summary

Role Overview

As an intern, you will be an integral part of a collaborative team working on data-driven initiatives. Your primary focus will be on the continuation and enhancement of a project that involves collecting and analysing data from diverse sources, including satellite imagery. The collected data will be processed to generate insightful and meaningful indicators for the research team and, more broadly, Crédit Agricole CIB. The main questions of atmosphere composition, climate change, ship and air traffic, drought and other weather characteristics will be addressed. An innovative approach and the proposition of new ideas will be appreciated. 

Key Responsibilities

Data Acquisition: Identify, access, and collect relevant datasets from various sources, including remote sensing and public databases.

Indicator Development: Process and analyse data to generate meaningful environmental and atmospheric indicators related to climate change, air and maritime traffic, drought, and other weather-related phenomena.

Innovation & Collaboration: Contribute ideas and propose novel approaches to improve data processing and analysis workflows.

Automation: Work with the team to automate algorithms for the sustainable production of indicators.

Financial Integration: Assist in testing the developed indicators against financial market data to uncover potential correlations and insights.

Candidate Profile

Masters level in Maths, Computer Science, Engineering or Physics

Strong interest in data science, environmental studies, or a related field.

Familiarity with data processing tools and programming languages (e.g., Python, R).

Analytical mindset with attention to detail and a proactive approach to problem-solving.

Ability to work collaboratively in a team-oriented environment.

Interest in exploring the relationship between environmental data and financial markets.


Supplementary Information

Our commitment to you

Join our team at Crédit Agricole CIB, the corporate and investment banking arm of 10th largest banking group worldwide in terms of balance sheet size (The Banker, July 2023). We offer more than just a job.

You will be part of a dynamic and collaborative work environment where CSR is embraced in our day-to-day business operation, innovation is encouraged and diversity is celebrated.

Crédit Agricole CIB, the first French bank to have committed to the Equator Principles, is a pioneer and global leader in sustainable finance. Our commitment to sustainability and corporate responsibility means that your work will have a positive impact on our communities and the environment.

With a people-centric culture where everyone is valued, and opportunities for personal and professional growth, Crédit Agricole CIB is not just a place to work – it is where you make an impact.

Our hiring process is open to all and should you have any particular needs or you may require


Position location

Geographical area

Europe, United Kingdom

City

London

Candidate criteria

Minimal education level

Bachelor Degree / BSc Degree or equivalent

Academic qualification / Speciality

Master level degree in Mathematics, Computer science, Engineering or Physics


Required skills

Good understanding of main algorithms and data structures

Python, SQL, R, C++ or any other programming language


Languages

English

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