Implementation Consultant

REC SOLUTIONS LIMITED
West London
1 year ago
Applications closed

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Implementation Consultant (EMS/OMS/PMS/Trading/Buy Side/FinTech) My client is an Equal Opportunity Employer. We celebrate diversity and are committed to creating an inclusive environment for all employees. Do you have any experience in the world of Order Management Systems (OMS) / Execution Management Systems (EMS) and/or Portfolio Management Systems (PMS)? If so, a prestigious award winning financial services firm is seeking your expertise to join their dynamic team. This role promises not just a job, but a chance to elevate your career to new heights. My client is a fast growing financial technology startup. They offer technology solutions to the hedge fund and asset management industry. Our key product is a SaaS cloud native Trading and Portfolio Management application. We aim for our software to form the backbone of our clients day to day workflows. It does the heavy lifting of raising, executing and booking trades across global markets. Job Description - Implementation Consultant (EMS/OMS/PMS/Trading/Buy Side/FinTech) We are recruiting for a highly motivated individual to join our implementation team. Clients are highly sophisticated hedge funds and asset managers. The implementation team manages the onboarding of clients onto our platform. The role requires building an extensive knowledge of each clients trading and operational workflows, becoming very familiar with the companies platform, and building a good relationship with the client. On top of this you will be working alongside a modern highly skilled development team. You will be heavily involved with the delivery of the software to our client base. The encompasses everything from relaying client requirements, assisting with design, testing, and deployment. We are primarily looking for someone to be able to deliver quickly in the role. The ideal candidate would know the workflows for an asset manager already, and have a background in delivering complex projects. Technical skills are also a large plus. My client will provide full on the job training. With this role you will get a lot of responsibility quickly in a rapidly growing business. You must be willing to work hard and learn quickly. Key Responsibilities: Managing the day to day engagement with clients Leading daily meetings with clients Learning all of the workflows within the application Managing the delivery to client environments Project Management Data manipulation Qualifications and Traits: Degree in Business, Economics, Finance, Data Science, Engineering, Maths, Science, or a related field preferred, but open to other degrees as well. Ability to confidently present and lead client meetings Highly motivated and an eagerness to learn Ability to work independently and problem solve by themselves In depth knowledge of financial markets and assets My client is an Equal Opportunity Employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.

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