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A cutting-edge DeepTech startup is seeking Deep Learning Scientists to revolutionize the analysis of data in cybersecurity. You will take charge of designing intelligent AI architectures that leverage advanced techniques like deep learning and knowledge graphs. Candidates should hold a Ph.D. in a relevant field or possess equivalent experience. Proficiency in Python and familiarity with Transformer models is crucial. The role offers flexible working conditions and the opportunity to collaborate with top researchers in the field.
Are you looking for a cutting-edge DeepTech startup specialising in advanced AI systems, agent-based architectures, and knowledge-driven intelligence?
Our mission is to revolutionise the way data is analysed, connected, and reasoned about in the field of cybersecurity by combining state-of-the-art deep learning, AI agents, and knowledge graph technologies. As a pioneer in this space, we are looking for highly skilled and passionate Deep Learning / AI Scientists to join our team and contribute to our ongoing research and development efforts.
As a Deep Learning Scientist with a focus on AI agents and knowledge-based systems, you will play a key role in the development and implementation of intelligent architectures that combine large language models, autonomous agents, and structured knowledge representations.
You will work closely with a team of talented researchers, engineers, and cybersecurity domain experts to design, train, and optimise AI systems capable of reasoning over large volumes of unstructured and structured data. This role offers an exciting opportunity to contribute to cutting-edge research, impact real-world applications, and shape the future of AI-driven cybersecurity intelligence.
Conduct state-of-the-art research in deep learning, agent-based systems, and knowledge-enhanced AI. Explore novel architectures such as Transformer-based models (e.g. BERT, GPT), retrieval-augmented generation (RAG), multi-agent systems, and neuro-symbolic approaches to improve reasoning, planning, and decision-making capabilities.
Design and implement AI agents that collaborate, plan, and reason over complex problem spaces. Develop architectures that integrate LLMs with tools, memory, feedback loops, and structured knowledge sources.
Develop and apply techniques for building, maintaining, and leveraging knowledge graphs, ontologies, and semantic representations. Combine symbolic knowledge with learned representations to enhance explainability, consistency, and reasoning performance.
Develop advanced techniques for preprocessing and representing both unstructured text and structured data, including tokenisation, embeddings, entity linking, relation extraction, and graph-based representations.
Train and fine-tune deep learning models using techniques such as transfer learning, self-supervised learning, in-context learning, and reinforcement learning for agents. Evaluate system-level performance using appropriate metrics and propose improvements for robustness and scalability.
Work closely with cross-functional teams including data scientists, engineers, and cybersecurity specialists to understand real-world requirements, contribute to project planning, and translate research into production-ready systems.
Document research findings, system architectures, and experimental results clearly and concisely. Prepare technical documentation, internal reports, and presentations for both technical and non-technical audiences.