Senior Software Engineer - RAG

PIPER MADDOX LIMITED
London
1 year ago
Applications closed

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Senior Software Engineer - RAG/reasoning infrastructureJoin a pioneering robotics start-up as a Senior Software Engineer on the Robotic Reasoning team, where your expertise in RAG and AI technologies will shape the future of intelligent robots.This is a unique opportunity to lead the development and optimization of advanced RAG pipelines and integrations for AI-driven robotic solutions.You'll work with Large Language Models (LLMs), RAGs, and other groundbreaking technologies in NLP and Machine Learning to drive the future of intelligent robotics.Key Responsibilities:

Ensure you read the information regarding this opportunity thoroughly before making an application.* Develop, design and implement robust RAG pipelines that enhance the planning and memory capabilities of our robots to adapt in real-time* Integrate LLM-based solutions, databases, and diverse sensor inputs within our AI systems.* Improve data flow and modular system integrations to support advanced information processing and retrieval.* Build and maintain logging and monitoring systems to ensure optimal performance.What We're Looking For:* Advanced degree in Computer Science, Data Engineering, AI, or a related field.* Proven experience with RAG pipeline frameworks and orchestration tools like LlamaIndex, LangChain, Spark, Kafka, and Airflow.* Strong proficiency in Python and various database systems (e.g., MongoDB, Pinecone, Elasticsearch, pgvector, Neo4j).* Deep understanding of LLM-as-a-service and cloud technologies like OpenAI, AWS, Google Cloud, and Azure.* Familiarity with Machine Learning and Deep Learning technologies.Ideally you'll have:* Experience in Semantic Mapping and simulation environments.* Working knowledge of ROS and its application in data systems.* Expertise in data Structures, algorithms, and system design.Offices based in London - hybrid working.Relocation opportunities available.Competitive salary + benefits.Join us as we reshape the future of robotics, creating AI-driven systems that revolutionise the way robots interact with the world.If you're passionate about working on the latest AI technologies and eager to be part of a fast-paced, innovative team, we want to hear from you!Piper Maddox is acting as an Employment Agency in relation to this vacancy.

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