Training Administrator

London
1 year ago
Applications closed

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Training Administrator – Elevate Learning & Development in Tech!

Are you the kind of person who loves organizing, coordinating, and keeping things running smoothly? If you're excited about supporting the learning & development of people and teams in cutting-edge fields like AI and Data Analytics, this is your opportunity to make a real impact.

We’re on the hunt for a Training Administrator to join our London-based IT consultancy. You’ll play a crucial role in organizing and managing all training activities, ensuring our team members and clients have the skills they need to thrive.

What’s in it for you?

  • Salary: Up to £37,000 per annum

  • Location: Central London (with a modern office space)

  • Dynamic Role: Coordinate training programs that make a difference, from AI workshops to data seminars.

  • Career Development: Grow your own skills in the rapidly evolving tech landscape.

  • Impact: Be at the heart of our team’s professional development, driving success in an exciting industry.

    What you’ll do:

  • Coordinate and schedule all training sessions, workshops, and seminars across the AI & Data practice.

  • Manage logistics for both in-person and virtual sessions, from arranging venues to handling the technical setup.

  • Track training participation and ensure all necessary materials are prepared and distributed.

  • Provide administrative support, maintaining training records and reporting on training effectiveness.

  • Gather feedback from participants to help improve future training sessions.

    What we’re looking for:

  • Experience: You’ve worked in a Training Administrator or similar role, ideally in a fast-paced, tech-driven environment, ideally Software-as-a-Service (SaaS).

  • Organizational skills: You’re a multitasking pro who can juggle scheduling, logistics, and reporting with ease.

  • Tech-Savvy: Comfortable with Learning Management Systems (LMS), Excel, and virtual learning platforms like Zoom or Microsoft Teams.

  • Communication: Strong interpersonal skills to liaise with trainers, staff, and vendors.

    Why this role?

    This is your chance to step into a pivotal role within a company that’s at the forefront of AI and Data. You’ll support a talented team, help drive innovation, and be part of an environment where professional development is a priority.

    Ready to get started? Send your CV to bob . bath @ mexasolutions . com and let’s chat about your next move

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