Computer Science Teacher

Kensington
10 months ago
Applications closed

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Computing Teacher

Location: Kensington

An exciting opportunity has arisen for a truly ingenious and forward-thinking Computing Teacher to join a progressive and digitally focused school in Kensington. The successful candidate will unleash the power of computational thinking and digital innovation through engaging, practical, and future-ready lessons, inspiring students to develop exceptional programming skills and ingenious problem-solving capabilities. At our school, computing is far more than just coding; it is the fundamental language of the 21st century, a boundless realm for creativity, and an indispensable tool for shaping our digital future. We are dedicated to cutting-edge teaching methodologies, expertly weaving complex coding challenges, advanced robotics, sophisticated AI concepts, and real-world software development projects into our dynamic curriculum.

The Role

The Computing Teacher will:

  • Deliver high-quality, captivating lessons across Key Stages 3-5, cultivating a profound love for computational thinking and digital creation.

  • Employ creative and hands-on teaching methods, including game development, app design, cybersecurity challenges, and interactive data science projects.

  • Empower students to design algorithms, write efficient code, and critically evaluate digital systems with confidence.

  • Actively contribute to the wider school community through thriving coding clubs, competitive robotics teams, and innovative tech initiatives.

    The Ideal Candidate

    We are seeking a qualified Computing Teacher (QTS/QTLS or equivalent) who:

  • Possesses an unyielding passion for computing, its transformative potential, and innovative teaching.

  • Is exceptionally skilled in devising creative and experiential learning approaches that deeply engage students.

  • Demonstrates a proven ability to differentiate instruction to both support and rigorously challenge learners across all technical abilities.

  • Works seamlessly as part of a collaborative team and is keen to lead school-wide technological advancements and digital literacy initiatives.

    Why Join Our School?

  • A vibrant and intellectually stimulating learning environment that passionately celebrates creativity and technological innovation.

  • A highly supportive and collegial Computing department with a shared commitment to fostering digital excellence and future-ready skills.

  • Exceptional opportunities for continuous professional development and robust career progression.

  • A unique chance to conceptualise and lead exciting, student-driven coding projects and digital innovations.

    Start Date: September

    This is a phenomenal opportunity for a Computing Teacher seeking to inspire the next generation of programmers, engineers, and digital pioneers.

    To apply, please submit a CV as soon as possible

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