Prompt Engineer

Intec Select
Greater London
2 months ago
Applications closed

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Prompt Engineer – AI Innovation - £500 Per Day Outside IR35 – Hybrid / London

Overview:

I’m working with a globally recognised organisation at the forefront of AI-driven solutions, currently looking for a Prompt Engineer to join their team. This is an exciting opportunity to contribute to a pioneering AI initiative, helping to shape how their systems generate insightful, accurate, and engaging content. Working with cutting-edge technologies in Natural Language Processing (NLP) and machine learning, this role offers the chance to drive real-world impact in a fast-paced, innovative environment.

This is a unique chance to be part of an AI-driven innovation initiative with a global impact. If you are passionate about language, technology, and AI, we’d love to hear from you!

Role & Responsibilities:

  1. Design, develop, and refine AI prompts to ensure high-quality, meaningful outputs.
  2. Collaborate with product teams, data scientists, and stakeholders to optimize prompt performance.
  3. Analyse prompt effectiveness using performance data and iterate based on feedback.
  4. Enhance and streamline AI workflows for improved efficiency and scalability.
  5. Stay updated on advancements in NLP and AI, applying innovative techniques to improve system performance.
  6. Clearly document and communicate findings to both technical and non-technical audiences.
  7. Strong understanding of NLP concepts and AI-driven language models.
  8. Experience working with large language models and AI-powered applications.
  9. Excellent written and verbal communication skills, with a passion for language and storytelling.
  10. Strong analytical and problem-solving skills to optimize AI-generated content.
  11. Ability to collaborate effectively in a fast-paced, cross-functional environment.
  12. Familiarity with programming and scripting languages is a plus.
  13. Proficiency in Python, TypeScript, or AI-related frameworks.
  14. Experience working with cloud platforms such as AWS.

Contract Duration:5 month contract (scope to extend)

Seniority level:Mid-Senior level

Employment type:Contract

Job function:Information Technology and Consulting

Industries:Non-profit Organizations

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