Data Scientist

Randstad Technologies Recruitment
London
1 week ago
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Data Scientist: Country Risk & Advanced Analytics

Join an integrated team of economists, political scientists, and computer scientists to shape the strategic decisions of the world's leading organizations.

How You'll Make an Impact:

Innovate: Prototype new approaches for extracting insights from structured and unstructured data.
Build: Design and optimize risk models for analytics and generative AI applications using proprietary NLP data.
Collaborate: Partner with cross-domain experts to turn non-technical ideas into scalable, interpretable research designs.
Deploy: Develop and maintain robust ML pipelines for both experimentation and production.Who You Are:

Technical Expert: You have substantial experience with Python or R, and are skilled in querying and analyzing big data.
NLP Specialist: You have a proven track record of developing and refining NLP models.
Clear Communicator: You can explain complex ML/NLP methodologies to non-technical stakeholders with ease.
Methodical: You are familiar with experiment tracking (DVC, Weights & Biases) and model evaluation metrics.Stand Out From the Crowd: Candidates with an advanced degree in ML/NLP, exposure to cloud platforms (AWS, Databricks, Snowflake), or experience in agile, fast-paced environments are highly encouraged to apply or share your updated CV to saisaranya.gummadi @

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

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