excellence π§ What Weβre Looking For 5+ years of commercial PHP experience Solid understanding of cloud infrastructure (preferably GCP) Experience with MySQL, NoSQL (Cassandra) Skilled in TDD , debugging, and performanceoptimisation Bonus points for Kubernetes experience Tech stack: PHP, nginx, RabbitMQ, Google Cloud Platform (GCP), custom frameworks (full training provided) π Whatβs in It for You Alongside a β¦ fantastic culture, modern office and regular company events, our partner offers: π° Up to Β£60,000 DOE + 10% personal performance bonus ποΈ 28 days holiday (plus birthday off + length of service accrual) π³ Free breakfast, lunch, drinks & snacks every day πͺ Gym, golf membership & onsite gym π Onsite hairdresser, barista & cocktail bar π¬ Netflix & Spotify subscriptions π¦· BUPA Health & Dental care π§ βοΈ BUPA Peak Assessments More β―
support enterprise-grade LLM applications. MLOps and LLMOps : Build and maintain scalable MLOps and LLMOps pipelines, enabling automation of model training, testing, deployment, and monitoring. Enable reproducibility, traceability, and performance optimization across all AI solutions. Vendor Product Evaluation & Onboarding : Lead the technical evaluation of third-party AI products and platforms, conducting benchmarking, sandbox testing, and assessing integration feasibility. Collaborate β¦ while managing feature stores and internal knowledge bases for RAG. Strong grasp of prompt engineering techniques, including zero-shot and few-shot prompting strategies with ability to enhance the performance of LLMs and agentic AI systems. Familiarity of LLM model evaluation techniques such as ROUGE, LLM-as-a-Judge and BERT. Deep knowledge of cloud-native AI platforms and β¦ design and implement scalable ML, LLM pipelines and infrastructure. Skilled in benchmarking, sandbox testing, and integration of vendor AI products. Strong analytical and problem-solving skills, with attention to performance optimization Effective communication and collaboration skills for cross-functional engagement with engineering, procurement, legal, and governance teams. Qualifications PhD/MSc in Computer Science, AI, Data Science, or related More β―
support enterprise-grade LLM applications. MLOps and LLMOps : Build and maintain scalable MLOps and LLMOps pipelines, enabling automation of model training, testing, deployment, and monitoring. Enable reproducibility, traceability, and performance optimization across all AI solutions. Vendor Product Evaluation & Onboarding : Lead the technical evaluation of third-party AI products and platforms, conducting benchmarking, sandbox testing, and assessing integration feasibility. Collaborate β¦ while managing feature stores and internal knowledge bases for RAG. Strong grasp of prompt engineering techniques, including zero-shot and few-shot prompting strategies with ability to enhance the performance of LLMs and agentic AI systems. Familiarity of LLM model evaluation techniques such as ROUGE, LLM-as-a-Judge and BERT. Deep knowledge of cloud-native AI platforms and β¦ design and implement scalable ML, LLM pipelines and infrastructure. Skilled in benchmarking, sandbox testing, and integration of vendor AI products. Strong analytical and problem-solving skills, with attention to performance optimization Effective communication and collaboration skills for cross-functional engagement with engineering, procurement, legal, and governance teams. Qualifications PhD/MSc in Computer Science, AI, Data Science, or related More β―