Naukrijobs UK
Register
London Jobs
Manchester Jobs
Liverpool Jobs
Nottingham Jobs
Birmingham Jobs
Cambridge Jobs
Glasgow Jobs
Bristol Jobs
Wales Jobs
Oil & Gas Jobs
Banking Jobs
Construction Jobs
Top Management Jobs
IT - Software Jobs
Medical Healthcare Jobs
Purchase / Logistics Jobs
Sales
Ajax Jobs
Designing Jobs
ASP .NET Jobs
Java Jobs
MySQL Jobs
Sap hr Jobs
Software Testing Jobs
Html Jobs
IT Jobs
Logistics Jobs
Customer Service Jobs
Airport Jobs
Banking Jobs
Driver Jobs
Part Time Jobs
Civil Engineering Jobs
Accountant Jobs
Safety Officer Jobs
Nursing Jobs
Civil Engineering Jobs
Hospitality Jobs
Part Time Jobs
Security Jobs
Finance Jobs
Marketing Jobs
Shipping Jobs
Real Estate Jobs
Telecom Jobs

Data Science Engineer

Job LocationLondon
EducationNot Mentioned
SalaryCompetitive salary
IndustryNot Mentioned
Functional AreaNot Mentioned
Job TypePermanent , full-time

Job Description

Who were looking for Data Science Engineer to build data science platform to underpin variety of statistical and machine learning workflows and set of capabilities for rigorous and efficient discovery of data and model-driven insights to support criticalinvestment decisions. About Schroders Were a global investment manager. We help institutions, intermediaries and individuals around the world invest money to meet their goals, fulfil their ambitions, and prepare for the future. We have around 5,000 peopleon six continents. And weve been around for over 200 years, but keep adapting as society and technology changes. What doesnt change is our commitment to helping our clients, and society, prosper. Technology at Schroders Theres a huge amount of change goingon at Schroders. Technologys shaping our business more and more, so there are many opportunities waiting to be grabbed. And because were a big financial player, we can put hefty backing behind good ideas. Were a serious business - we have enormous responsibilitiesto our clients and shareholders. But just because were suited and booted, that doesnt make us stuffy; our tech teams are friendlier and more informal than you might expect. The base We moved into our new HQ in the City of London in 2018. Were close to ourclients, in the heart of the UKs financial centre. And we have everything we need to work flexibly. The team The Data Insights Unit (DIU)s mission is to bring scientific rigour to all business decisions in Schroders. In essence we do this by: 1. making availablealternative data sources, 2. unlocking the value in data by providing a research service, answering business questions by analysing these datasets, 3. scaling the value in data by building Insight Products: generalising those analyses or anticipating thosequestions by alerting people to relevant changes before they know to ask. Through all these we use specialist Data Science tools and techniques: cloud technologies, machine learning, statistical techniques, and insights from the world of behavioural science.The quantity of information available for investment research purposes is increasing at such a rate that traditional industry practices and skillsets are unable to absorb and process it. Global trends in digitalisation, social media, open data and technologyare all creating vast streams of alternative data that are often highly unstructured and obscure. However, they contain valuable and often rare insights. The DIU aims to find these new and potentially unorthodox datasets, extract the rich, hidden informationthey contain and use their expertise to improve traditional fundamental research. Data Science Engineering team supports those goals by providing Data Science Platform and capabilities to delivery full life-cycle of an Insight Product - this includes insightdiscovery and development, its management as well as consumption. In addition to platform and shared services we also contribute directly to product development by embedding withing cross functional product teams. What youll do Designing, developing and deliveringData Science Platform and associated capabilities Promoting, implementing and delivering tools for proper platform and data science engineering practices, approaches and technologies amongst platform team and product teams Collaborating with other deliverystakeholders (cloud infrastructure, data engineering, enterprise data) to identify and integrate shared components and capabilities (data access, data cataloguing, lineage tracking) Contributing to design, peer code reviews, delivery planning and preparationof releases for the platform and insight products The knowledge, experience and qualifications you need Experience designing, developing and delivering software products on cloud platforms (AWS preferably) for data science and machine learning workflows. Pythonas required language with tools such as jupyter, git, pytest with approaches such as infrastructure as code, serverless, containerisation. Developing data transformation and feature engineering workflows with best practices for data versioning, cataloguing,lineage tracking. Leveraging tools and frameworks such as: spark, pandas, dbt, airflow, dagster, prefect. Familiarity with agile practices and experience in product-oriented development The knowledge, experience and qualifications that will help Developmentof infrastructural libraries and frameworks to support data discovery, transformation and rigorous statistical and machine learning model development and serving (preferably leveraging aws-based sagemaker ecosystem). Understanding and experience with developmentlifecycle of machine learning models - training, evaluation, monitoring and hosting with AWS-based tools such as sagemaker, step functions, aws glue. Understanding of traditional/statistical data science or bioinformatics workflows and techniques such as snakemake,scikit learn pipelines, tidyverse, mlflow, metaflow. Experience with variety of data storage and query engines (geospatial, timeseries, graph, textual, relational, object). What youll be like Able to design and deliver platform capabilities and features Pragmatic,willing to take localized action yet understanding bigger picture. Comfortable with ambiguity but taking initiative towards reducing it. Comfortable with listening to and understanding different needs of stakeholders and users (data scientists, analysts andengineers) of the platform, yet being able to balance, and communicate shared needs Were looking for the best, whoever they are Schroders is an equal opportunities employer. Youre welcome here whatever your socio-economic background, race, sex, gender identity,sexual orientation, religious belief, age or disability.

APPLY NOW

Data Science Engineer Related Jobs

© 2019 Naukrijobs All Rights Reserved