Havering39s Hidden Gem Seeks Coding Mastermind Computer Science Teacher

Wayman Learning Trust
London
1 year ago
Applications closed

Calling all passionate computer scientists!Are you ready to ignite a love of coding in the next generation of tech wizards

Haverings bestkept secretanoutstanding secondary schoolis seeking a visionaryComputer Science Teacherto join our dynamic team. If you thrive in a collaborative environment and possess the magic touch to turn algorithms into aweinspiring creations then this is your chance to make a real impact!

Become a Coding Champion at Haverings Hidden Gem:

  • Empower Tomorrows Tech Titans:Equip students with the skills and knowledge to design code and troubleshoot their way to success in exciting CS projects (KS3 KS4 and KS5).
  • Inspire the Next Generation:Foster a love of computer science igniting a passion for coding and problemsolving in a fun and engaging way.
  • Stay at the Cutting Edge:Integrate the latest advancements in computer science and innovative teaching methods into your lessons.
  • Collaboration is Key:Work handinhand with passionate colleagues across the curriculum to create a stimulating and supportive learning environment.

Do You Possess the Havering Coding Spark

  • Computer Science Guru:Possess a strong understanding of the National Curriculum for Computer Science and a passion for the subject. (Qualified Teacher Status (QTS) or Post Graduate Certificate in Education (PGCE) a must).
  • TechSavvy and Inspiring:Demonstrate a strong grasp of current computer science trends and the ability to inspire students of all abilities.
  • Communication Maestro:Deliver engaging and effective lessons fostering a clear understanding of complex concepts.
  • Team Player:Collaborate effectively with teachers students and other staff members to achieve shared goals.

Why Join Our Team

  • Witness the Magic of Coding Firsthand:Play a vital role in shaping the future tech leaders of tomorrow experiencing the joy of learning come to life.
  • Thriving and Supportive School Community:Be part of a collaborative and supportive team of passionate educators in Haverings hidden gem.
  • Continuous Learning and Development:Access excellent resources and ongoing training opportunities to further develop your skills.

Ready to ignite a passion for coding in Havering students Apply Today!

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