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AI Blockchain Engineer (Contract)

In Technology Group
Manchester
3 months ago
Applications closed

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AI Blockchain Engineer (Contract)

An exciting oppotunity for an AI Blockchain Engineer, to join an innovative Blockchain company I'm working with in Manchester. They're changing the way Developers and Organisation integrate AI and Web 3 with Smart Contracts.

As an AI Blockchain Engineer, you will play a crucial role in the development, design, and optimization of AI extension to their DeFaaS blockchain infrastructure. Your responsibilities will encompass crafting efficient and robust solutions, contributing to the research and development of AI, including but not limited to machine learning (ML) and natural language processing (NLP), to further enhance the performance of KRNL infrastructure, through the usage of best practices for high performance and scalability.

Details:

  • Ai Blockchain Engineer
  • 6 months contract
  • £400/day (Outside IR35)
  • Remote (Manchester)
  • Start date - 24/03

Key Responsibilities

  • Debug and resolve complex issues related to performance, scalability, and security in blockchain and AI integration.
  • Conduct code reviews and optimize performance in both blockchain-based environments and AI models.
  • Work closely with AI software engineers to deploy models and algorithms into production, optimizing them for performance & scalability.
  • Monitor & optimize the performance of the AI, identifying & resolving bottlenecks and inefficiencies.
  • Research and document any AI-related projects for potential future collaborations or as a part of development tools.
  • Employ Agile and Scrum methodologies, and demonstrate an understanding of the software lifecycle, teamwork, and best practices to facilitate effective collaboration within the team.

Requirements

  • Ability to read, write, and communicate fluently in English.
  • Minimum 3 years of experience in fields related to AI development & deployment.
  • Hands-on experience with at least one major AI technology (Preferably related to Machine Learning or Natural language processing)
  • Proficient in Python (PyTorch, Scikit, TensorFlow) and SQL.
  • Must be able to work in our Bangkok office in Sukhumvit (BTS On Nut) or have the ability to relocate.
  • Experience using data processing tools such as Java, Go, Haskell, or Apache Spark.
  • Experience in Web3 or blockchain development.
  • Familiarity with containerization technologies ( Docker) and CI/CD pipelines
  • Completion of professional certifications from leading cloud service providers such as Google Cloud Platform (GCP), AWS, or Azure.

If you are a Blockchain Developer, with a passion for AI Development, including ML and NLP, please click APPLY!

In Technology Group Ltd is acting as an Employment Business in relation to this vacancy.

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