Trading Data Operations Analyst Python SQL


Premium Job From Client Server

Recruiter

Client Server

Listed on

19th May 2022

Location

London

Salary/Rate

£70000 - £100000

Type

Permanent

This job has now expired please search on the home page to find live IT Jobs.

Trading Data Operations Analyst London / WfH to £100k

Trading Data Operations Analyst (Python SQL) *Hybrid WfH*. Are you a data savvy with a good knowledge of financial trading markets? You could be progressing your career at a global trading firm.

As a Trading Data Operations Analyst you will be a key member of a small team responsible for all operational aspects of onboarding, managing and maintaining various datasets used by traders and quants to analyse financial markets and build trading strategies. You'll be working with sophisticated market data analysis pipelines; helping to verify, clean, and ensure the data is accurate and consistent across systems used for research and analysis by the various trading teams globally. There's a lot of business interaction and you'll get to see the effect of your work.

Following a remote interview process you'll join colleagues in the London office 2-3 days a week in a hybrid work from home model.

Requirements:

You're degree educated in a numerate discipline i.e. mathematics, economics

You have experience of working with any type of dataset (e.g. timeseries, reference data, fundamental data)

You have a good knowledge of SQL querying and databases

You have Python programming skills (any knowledge of Pandas, Jupyter Notebooks would be great)

You enjoy problem solving and have strong analysis skills

You're collaborative and pragmatic with excellent communication skills

As a Trading Data Operations Analyst you will earn a competitive salary (to £100k, depending on depth of knowledge) plus benefits.

Apply now to find out more about this Trading Data Operations Analyst (Python SQL) opportunity.

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