English Teacher

Rugby
8 months ago
Applications closed

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Data Governance Analyst (PIM)

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Level 5 Data Engineer Apprentice

Our client, an exceptional independent school in Rugby, is seeking a dedicated and inspiring English Teacher to join their team in September. This English Teacher role offers the chance to teach across Key Stages 3, 4, and potentially Key Stage 5 for the right candidate.

Role Highlights:

  • As an English Teacher, you'll create engaging lessons that spark a passion for literature and language in your students.

  • This English Teacher position includes opportunities to contribute to extracurricular activities such as:

    • Creative writing clubs

    • Debating societies

    • Theatre productions

      For experienced candidates, there is potential for additional responsibilities with a Teaching and Learning Responsibility (TLR), such as leading a key stage or spearheading innovative English initiatives.

      School Overview:

      The school is highly regarded for its academic excellence, inspiring environment, and modern facilities. As an English Teacher here, you'll work in a supportive department alongside talented professionals. The English department is well-equipped, enthusiastic, and committed to nurturing students' skills and creativity.

      Requirements:

  • A Qualified Teacher Status (QTS) is essential for this English Teacher position.

  • Applications are straightforward—a CV is all that’s required.

    Join this incredible school as an English Teacher and be part of a community that values education, creativity, and excellence. Apply now and start your journey in September

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