Year 1 Teacher

Camden Town
9 months ago
Applications closed

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A warm and inclusive school in Camden is seeking a kind, creative, and reflective Year 1 teacher to join their team from September 2025. This is an exciting opportunity to support children through their first full year of primary education, laying the foundation for confident, independent learning in a nurturing setting.

Start Date: September 2025
Contract: Full-time, Permanent
Salary: MPS/UPS

What the School Offers:



A strong focus on phonics, oracy, and early literacy development

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Play-based and thematic learning approaches that spark curiosity

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A caring and collaborative team where wellbeing is prioritised

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Structured CPD pathways and mentoring for both new and experienced staff

What They’re Looking For:

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A teacher with sound knowledge of Key Stage 1 and child development

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Someone who can create a calm, engaging, and inclusive classroom

*

Strong communication skills to build partnerships with families

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A reflective practitioner who is enthusiastic about early education

If you want to play a key role in shaping children’s first experiences of school and enjoy working in a supportive environment, we’d love to hear from you

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