Data Scientist (NLP & LLM Specialist)

London
1 day ago
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Data Scientist (NLP & LLM Specialist)
Remote- UK
6-month contract with Potential Extension
Day rate - £427.68 - £565 per day Inside IR35

Data Scientist (NLP & LLM Specialist)

Are you an expert in Natural Language Processing who thrives on building scalable, real-world AI solutions? We are seeking a hands-on Data Scientist to join a premier global credit ratings and financial information firm. You will be a key player in launching a brand-new, from-scratch analytics platform designed for elite institutional clients including corporate banks and asset managers.

The Opportunity

In this role, you will go beyond conventional boundaries to design, build, and deploy quantitative models that power advanced insights. You will collaborate with a cross-domain team of economists, political scientists, and developers to transform proprietary risk data into actionable strategic assets.

Your Impact

Model Innovation: Design and optimize risk models for analytics and generative AI applications using proprietary NLP data generation processes.
Pipeline Development: Develop and maintain robust ML and data pipelines for experimentation and deployment.
Insight Extraction: Prototype and test new approaches for extracting insights from structured and unstructured data.
Technical Translation: Explain ML/NLP model outputs and methodologies to non-technical stakeholders to drive strategic decisions.

Your Experience

Experience Level: 5-7+ years (More experience is welcomed).
Core Technicals: High expertise in Python and Machine Learning (ML).
NLP Expertise: 3-5 years of experience in Natural Language Processing.
AI Knowledge: Familiarity with LangChain and LlamaIndex. The role involves using Large Language Models (LLMs) to build data models rather than building LLMs from scratch.
Deployment: Must understand the deployment process and CI/CD practices to troubleshoot, though a dedicated engineering team handles the heavy lifting.
Industry Knowledge: Experience with Risk Modeling or financial services is preferred.This is an urgent vacancy where the hiring manager is shortlisting for an interview immediately. Please apply with a copy of your CV or send it khushboo. pandey @ randstad. Co. uk

Randstad Technologies is acting as an Employment Business in relation to this vacancy

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