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Data Scientist Senior Associate

JPMorgan Chase & Co.
City of London
2 weeks ago
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We know that people want great value combined with an excellent experience from a bank they can trust, so we launched our digital bank, Chase UK, to revolutionize mobile banking with seamless journeys that our customers love. We're already trusted by millions in the US and we're quickly catching up in the UK – but how we do things here is a little different. We're building the bank of the future from scratch, channeling our start-up mentality every step of the way – meaning you'll have the opportunity to make a real impact.

As a Data Scientist Senior Associate at JPMorgan Chase within the International Consumer Bank , youserve as a seasoned member of an agile team to design and deliver trusted data collection, storage, access, and analytics solutions in a secure, stable, and scalable way. You are responsible for developing, testing, and maintainingcritical data pipelines and architecturesacross multiple technical areas within various business functionsin support of thefirm’s business objectives.

Job responsibilities
  • Collaborate with business partners, research teams and domain experts to understand business problems.
  • Provide stakeholders with timely and accurate reporting.
  • Perform ad hoc analysis based on diverse data sources to give decision-makers actionable insights about the performance of the products, customer behavior and market trends.
  • Presents your findings in a clear, logical, and persuasive manner, illustrating them with effective visualizations.
  • Collaborate with data engineers, machine learning engineers and dashboard developers to automate and optimize business processes.
  • Identify unexplored opportunities to change how we do business using data.
Required qualifications, capabilities, and skills
  • Formal training or certification in Data Analysis using Python and 3+ years applied experience
  • Experience across the data lifecycle.
  • Advanced SQL querying skills.
  • Competent data analysis in Python.
  • Experience in taking open ended business questions, then use big data and statistics to create analysis that can provide an answer to the questions at hand.
  • Experience with customer analytics such as user behavioral analysis, campaign analysis, etc.
  • Demonstrated ability to think beyond raw data and to understand the underlying business context and sense business opportunities hidden in data.
  • Ability to work in a dynamic, agile environment within a geographically distributed team.
  • Excellent written and verbal communication skills in English.
Preferred qualifications, capabilities, and skills
  • Distinctive problem-solving skills and impeccable business judgment.
  • Familiarity with machine learning.

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