MFL teacher

Academics Ltd
Birmingham
10 months ago
Applications closed

Job Advert: MFL Teacher - Kings HeathWe are currently seeking an enthusiastic and dedicated MFL Teacher to join a well-regarded secondary school located in Kings Heath . This is an exciting opportunity to be part of a forward-thinking school community committed to excellence in language education.As an MFL Teacher , you will be responsible for delivering engaging and effective lessons in either French, Spanish, or both, to students across Key Stages 3 and 4. The school in Kings Heath has a strong focus on fostering a love for languages and preparing students for success in a globalised world.The ideal candidate will:Have QTS or equivalent teaching qualificationDemonstrate strong subject knowledge in modern foreign languagesBe passionate about teaching and inspiring young learnersHave experience teaching in a UK secondary school settingThis full-time role offers a fantastic opportunity to become part of a dynamic and supportive team in the vibrant Kings Heath area. The successful MFL Teacher will benefit from ongoing professional development and a welcoming school environment.If you are an experienced or newly qualified MFL Teacher looking to make a real difference in the classroom, we encourage you to apply for this rewarding role in Kings Heath .TPBN1_UKTJ

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