Senior Full Stack Engineer (React, .NET)

Jones Lang LaSalle Incorporated
London
1 week ago
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Senior Full Stack Engineer (React, .NET) Senior FullStack Engineer (React, .NET) Apply remote type: On-site Location:London, GBR Time type: Full time Posted on: Posted 2 Days Ago JLLempowers you to shape a brighter way. Our people at JLL and JLLTechnologies are shaping the future of real estate for a betterworld by combining world-class services, advisory, and technologyfor our clients. We are committed to hiring the best, most talentedpeople and empowering them to thrive, grow meaningful careers, andfind a place where they belong. What this job involves Jones LangLaSalle, an international commercial real estate firm, is lookingfor a Senior Fullstack Engineer to build and support AI anddata-based applications for its investment management business.This person will become part of the Lasalle Engineering team,working closely with product leads, data science teams, andbusiness stakeholders. The right person will have a results andperformance-driven attitude with a strong sense of accountability.Responsibilities: - Develop and maintain end-to-end softwaresolutions to support our CRE Investment Business, leveraging yourexpertise in full stack development methodologies. - Collaboratewith cross-functional teams, including data scientists, designers,product managers, and business, to build and implement AI-drivenfeatures and functionalities into our technology products. - Designand implement RESTful APIs, microservices, and cloud-basedsolutions for scalability and reliability. - Integrate machinelearning models into backend services to solve complex businessproblems and enable predictive analytics. - Ensure high codequality and efficiency by writing clean, maintainable, and testablecode. - Work in an agile development environment, with sprintplanning, daily stand-ups, and code reviews. - Work on criticalfeatures that help enhance system security. - Perform andparticipate in peer review sessions. Requirements: - Bachelor’s ormaster’s degree in computer science, Software Engineering, or arelated field. - Proven experience in full stack softwaredevelopment, with expertise in both front-end and back-endtechnologies (e.g., JavaScript, HTML/CSS, Python, NodeJS, C#,Java). - Strong knowledge and practical experience in AItechnologies, such as machine learning, natural language processing(NLP), and computer vision. - Familiarity with AI frameworks andlibraries, including OpenAI, PyTorch, or Keras. - Experience indeveloping and deploying scalable cloud-based applications usingplatforms like AWS, Azure, or Google Cloud. - Solid understandingof database concepts, specifically SQL and NoSQL databases. -Proficiency in working with version control systems (e.g., Git) andDevOps pipelines. - Excellent problem-solving skills and ability tolearn new technologies quickly. - Strong communication andcollaboration skills. If this job description resonates with you,we encourage you to apply, even if you don’t meet all therequirements. #J-18808-Ljbffr

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