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WorldRemit // digital money transfer service
 
Engineering, Full Time    London    Posted: Wednesday, July 10, 2019
 
   
 
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JOB DETAILS
 

Who are we?

WorldRemit is changing the way people send money abroad. Weve taken something complicated & made it simple. Tap the WorldRemit App or click on our website & your international transfer is made to a bank account, cash pickup, Mobile Money, or airtime top-up. Founded in 2010, we send international remittances from 50 countries to more than 150 countries & we continue to expand our footprint.

Using WorldRemit is easy because we do the hard bit, connecting hundreds of banks, money agents, mobile operators & payment systems around the world. These were never designed to work together, but WorldRemit makes it happen.

WorldRemit has grown on average by 50% year on year & is now processing over 3bn of remittances on an annualised basis. We have raised c.$370 million in funding, currently employ over 800 employees & have offices in London, USA, Philippines, Poland, Australia, New Zealand, Canada, Japan, Hong Kong & other locations.

The journey is just beginning. We believe in faster, simpler, more accessible money transfers. That means building better products & services for our customers.

Changing the world isnt easy so we only hire the most talented people. You need to think differently, believe in new solutions to old problems, & have the drive to make them happen. We aim to attract, retain & develop people that can bring to life our values:

You can learn more about our culture & how we work by watching this video on our Careers page

https://www.worldremit.com/en/careers.

About the role:

As a Machine Learning Engineer, you will be working alongside our product data scientists & data engineers to help apply machine learning throughout the business. We believe data & machine learning is key to help us provide an excellent customer experience. From offering dynamic user journeys to helping to automate manual decisions, there is a machine-learning gap at virtually every level of our organisation. You will work on the process end to end, from understanding the business problem to analysing datasets & finally putting a Machine Learning system in production. Projects you could work on: fraud prevention, anti-money laundering, marketing optimisation & attribution, customer churn prediction & retention, time-series forecasting, pricing & customer service automation.

Responsibilities:

  • Liaise with stakeholders to analyse business problems & translate it as a Machine Learning application with a quantifiable metric.
  • Analyse large, complex datasets to extract insights & decide on the appropriate techniques & algorithms suitable to tackle a problem.
  • Collaborate with data engineers to build data pipelines & model training infrastructure.
  • Build & maintain scalable machine learning inference systems in production
  • Apply & adapt state of the art research to solve business problems.
  • Research & implement best practices to improve the existing machine learning training & serving infrastructure.
  • Effectively communicate results with the team, & stakeholders.
  • Provide machine learning domain expertise to support to engineers & product managers in structuring the implementation of machine learning systems.

Requirements:

  • Masters/PhD in Machine Learning, Computer Science or a related quantitative field (or equivalent experience)
  • Solid understanding of Machine Learning fundamentals & learning theory
  • Experience in the Machine Learning model building & evaluation process
  • Ability to translate business requirements into machine learning solutions
  • Strong software engineering experience in Python
  • Experience with SQL

Desired Qualifications:

  • Experience in one or more in the following: fraud prevention, anti-money laundering, marketing optimisation & attribution, customer churn prediction & retention, time-series forecasting, pricing & customer service automation
  • Experience building & maintaining data extraction, feature processing pipelines & machine learning models in a production environment
  • Deep understanding of Machine Learning Algorithms & Libraries to allow for customisation towards business requirements
  • Experience in statistical experiment design & performance analysis of machine learning models
  • Understanding of Data Engineering & Big Data technologies (Hadoop, Spark, Kafka etc...)
  • Experience working in the Amazon Web Services stack

Benefits:

  • Life assurance of 3 times your salary, should the worst happen.
  • Pension scheme offering 8% matched contributions.
  • Private medical & dental care plans.
  • 25 days of holiday plus bank holidays, rising to 28 after 3 years.
  • Free breakfast & fruit every day & Friday 'afternoon tea' drinks & nibbles.
  • No formal dress code.
 
 
 
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