Senior Software Engineer II

Risk Solution Group
London
2 days ago
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Senior Software Engineer II-Hybrid Do you want to bepart of building the Future of ML Infrastructure? Are you aself-starter and enjoy collaboration? About the Business:LexisNexis Risk Solutions is the essential partner in theassessment of risk. Within our Business Services vertical, we offera multitude of solutions focused on helping businesses of all sizesdrive higher revenue growth, maximize operational efficiencies, andimprove customer experience. Our solutions help our customers solvedifficult problems in the areas of Anti-Money Laundering/CounterTerrorist Financing, Identity Authentication & Verification,Fraud and Credit Risk mitigation and Customer Data Management. Youcan learn more about LexisNexis Risk at the link below,https://risk.lexisnexis.com About the team: You will be workingwith a team of Passionate Software Engineers, Data Scientists andother stakeholders with the business. About the role: As a SeniorSoftware Engineer on our ML/Analytics Platform Team, you will be atthe forefront of building and scaling the infrastructure thatpowers our machine learning initiatives. Your primary focus will beon designing, developing, maintaining and improving thecustomer-facing training pipeline and systems to efficiently build,train, and monitor models that perform high volumes frauddetection. While you wont be directly developing ML models straightaway, a strong understanding of the machine learning lifecycle andits challenges will be crucial for building effective and impactfulsolutions. You will have the opportunity to impact a significantnumber of customer deployed models that run against huge numbers oftransactions and users daily. Youll also mentor and guide juniorengineers, fostering a culture of learning and innovation.Responsibilities * Design, develop, improve, and maintain robust,scalable software systems and tools that form the foundation of ourML/Analytics Platform Team, including customer-facing modeltraining pipelines, and monitoring systems. * Collaborate closelywith data scientists, ML engineers, and infrastructure teams tounderstand their needs and translate them into effective technicalsolutions. * Develop and maintain APIs and services that enableseamless integration between different components of the MLecosystem. * Optimize the performance and reliability of our MLinfrastructure, ensuring it can handle the demands of high-volume,low-latency applications. * Evangelize best practices for softwaredevelopment, code quality, testing, and deployment within the MLplatform team. * Stay informed about the latest trends andtechnologies in software engineering, cloud infrastructure, and theML/Analytics ecosystem, identifying opportunities to improve ourplatform. * Mentor and guide junior engineers, sharing yourexpertise and helping them develop their technical skills.Requirements * Be a highly skilled software engineer with industryexperience building and maintaining large-scale, distributedsystems in production environments. * Proficient in Python and/orJava, with a strong understanding of software design principles andbest practices. * Possess problem-solving skills with a passion forbuilding high-quality, reliable, and scalable systems. * Be able towork effectively with both technical and non-technicalstakeholders, you will be a collaborator and have excellentcommunication skills. * An advanced degree (MSc or PhD) in aquantitative field such as Computer Science, Engineering,Statistics, Mathematics, or Physics or equivalent. #LI-MH1#LI-Hybrid At LexisNexis Risk Solutions, having diverse employeeswith different perspectives is key to creating innovative newproducts for our global customers. We have 30 diversity employeenetworks globally and prioritize inclusive leadership and equitableprocesses as part of our culture. Our aim is for every employee tobe the best version of themselves. We would actively welcomeapplications from candidates of diverse backgrounds andunderrepresented groups. We are committed to providing a fair andaccessible hiring process. If you have a disability or other needthat requires accommodation or adjustment, please let us know bycompleting our Applicant Request Support Form:https://forms.office.com/r/eVgFxjLmAK. Please read our CandidatePrivacy Policy. J-18808-Ljbffr

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