Director of Engineering - Digital Servicing (Mobile App & Web Technologies)

UST
London
1 year ago
Applications closed

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Who we are:

Born digital, UST transforms lives through the power of technology. We walk alongside our clients and partners, embedding innovation and agility into everything they do. We help them create transformative experiences and human-centered solutions for a better world.


UST is a mission-driven group of over 30,000+ practical problem solvers and creative thinkers in over 30+ countries. Our entrepreneurial teams are empowered to innovate, act nimbly, and create a lasting and sustainable impact for our clients, their customers, and the communities in which we live.


With us, you’ll create a boundless impact that transforms your career—and the lives of people across the world.


Visit us atUST.com.


1-year Fixed Term Contract


You Are:


We are looking for aDirector of Engineering for Digital Servicing (Mobile App & Web Technologies)with deep mobile expertise along with other digital channels.

You will be a highly experienced technical leader, accountable for driving innovation and engineering excellence across the team.


You are a director-level individual contributor (IC) who will work alongside our talented team of developers, machine learning experts, product managers and people leaders. You will be an expert, helping devise practical and reusable solutions to complex problems. You will drive innovation at multiple levels, helping optimise business outcomes while driving towards strong technology solutions.


You will manage a specialist team responsible for delivering web and mobile experiences using a suite of modern technologies, you will explore ways to harness the power of emerging technologies, delivering customised, curated capabilities for the end customers.



The Opportunity:


  • Serve as an authoritative engineering expert across functional and non-functional requirements, and a problem solver to Engineering teams (digital services)
  • A hands-on active leader, building POC’s, investing capabilities, or pairing/teaching other engineers, decomposing complex problems into practical and operational solutions
  • Articulate and evangelise a bold technical vision, develop and execute the digital servicing technology strategy
  • Be an advocate for modern technologies and patterns, sharing customer and engineering benefits to gain buy-in (working closely with leaders, other SMEs, and engineers)
  • Champion a culture of engineering excellence, continuous improvement, and being well managed, using opportunities to reuse and inner source solutions where possible
  • Operate as a trusted advisor for across digital servicing, helping to shape use-cases and implementation in a unified manner
  • Build strong relationships across the UK and the broader group to influence and drive adoption of best practices
  • Ensure the Mobile App remains scalable, resilient, and delivers a best-in-class customer experience
  • Exhibit a deep understanding of security best practices, compliance requirements, and emerging threats.
  • Design and implement comprehensive observability solutions across digital servicing that provide deep insights into the behaviour, performance, and health of complex distributed systems



What you need:


  • Recognised as a leading expert in digital servicing, with deep understanding of industry trends and how they can be leveraged by the business to inform our strategic direction
  • A technology expert with deep expertise in Mobile, Java and AWS cloud technologies, with some experience of Web technologies
  • Proficient in software development principles, patterns, and practices. Able to drive the adoption of modern software engineering methodologies and tools, ensuring consistency and quality across teams.
  • An effortless communicator across tech, architecture, product and other senior stakeholders, both within the UK and across the wider group
  • An inspirational leader, coach and mentor for a broad engineering group
  • Able to set and deliver a strategy for digital servicing in partnership with the product team
  • Experienced in the full life cycle of software delivery, including operational ownership (SRE)
  • Able to provide expert guidance and problem-solving across all digital servicing channels



What we believe:


We’re proud to embrace the same values that have shaped UST since the beginning. Since day one, we’ve been building enduring relationships and a culture of integrity. And today, it's those same values that are inspiring us to encourage innovation from everyone, to champion diversity and inclusion, and to place people at the center of everything we do.


Humility:

We will listen, learn, be empathetic and help selflessly in our interactions with everyone.


Humanity:

Through business, we will better the lives of those less fortunate than ourselves.


Integrity:

We honor our commitments and act with responsibility in all our relationships.


Equal Employment Opportunity Statement

UST is an Equal Opportunity Employer.

All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, or status as a protected veteran.

UST reserves the right to periodically redefine your roles and responsibilities based on the requirements of the organization and/or your performance.

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