NLP Engineer/Data Scientist

Fitch Ratings
London
8 months ago
Applications closed

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BMI is currently seeking anNLP Engineer/Data Scientistbased out of ourLondon, Manchester or New Yorkoffices

BMI's systematic, independent and data-driven market insights, analysis and forecasts enable customers to recognize and assess risks and opportunities across markets and industries. For almost 40 years, we have provided impartial views to support our customers’ strategic plans and investment decisions. 



At BMI, we’re proud of the work we do to help our clients manage risks and opportunities in global markets, which began in 1984 and continues to this day. By stepping into a role here, you will help shape the strategic decisions of the world’s leading organizations. As a member of our team, your role will go beyond conventional boundaries. You will collaborate with industry experts, thought leaders, and visionary executives, collectively working towards shaping the future of businesses that span a multitude of sectors. Our people are at the heart of everything we do, and we continuously strive to offer our colleagues a great place to work, with opportunities to learn, innovate, develop their careers, and serve the community.

Want to learn more about a career at BMI? Visit:

About the Team


BMI's GeoQuant team produces AI-driven Politics data, which integrates politics and computer science to create high-frequency, systematic country risk analytics that are transparent and can be validated. We build and maintain robust models that our customers use to identify and manage political risks, and generate investment returns.



Joining as an NLP Engineer/Data Scientist, you will help shape the strategic decisions of the world’s leading organizations. As a member of our team, your role will go beyond conventional boundaries. You will collaborate with experts across political risk and other domains.


As an NLP Engineer/Data Scientist, you will design, build, and deploy NLP and machine learning models that power advanced analytics and insights for our clients. You will work closely with political scientists, data scientists, and backend developers to deliver interpretable, scalable solutions. Your expertise will help us innovate and adapt our modeling frameworks to address diverse customer needs in a fast-paced, collaborative environment.

How You’ll Make an Impact: 

Design, build, and optimize NLP models for analytics and generative AI applications.


Develop and maintain robust ML and data pipelines for experimentation and deployment.
Collaborate cross-functionally with political scientists, data scientists, and backend developers.
Translate business requirements into technical solutions, ensuring practical impact.
Create and implement evaluation frameworks for NLP and generative AI content.
Explain ML/NLP model outputs and methodologies to non-technical stakeholders.
Support and improve CI/CD workflows for scalable model deployment.
Prototype and test new approaches for extracting insights from unstructured data.

You May be a Good Fit if:

Proven experience developing, refining, and monitoring NLP models.


Proficiency in Python and key NLP libraries (, Hugging Face, SpaCy, NLTK, Gensim).
Understanding of model evaluation methods and metrics.
Ability to operationalize non-technical ideas into relevant research designs, features, and model outputs.
Familiarity with experiment tracking and model management tools (, DVC, Weights & Biases).
Demonstrated experience with interpretable AI techniques.

What Would Make You Stand Out: 

Exposure to different cloud-based data and analytics platforms ( AWS, DataBricks, Snowflake).


Advanced degree or certification in NLP, ML, or related fields.
Familiarity with DevOps practices and tools.
Hands-on experience with experimentation and model tracking tools (, MLFlow, Weights & Biases).
Demonstrable impact of technical solutions or projects on decision-making
Experience working in fast-paced, agile environments.
Publication or open-source NLP projects.
Customer-facing experience, notably in understanding end user needs and building collaborative relationships.
Subject matter experience with political science, geopolitics, or country risks.

Why Choose Fitch: 

Hybrid Work Environment:3 days a week in office required based on your line of business and location


A Culture of Learning & Mobility:Dedicated trainings, leadership development and mentorship programs designed to ensure that your time at Fitch will be a continuous learning opportunity
Investing in Your Future:Retirement planning and tuition reimbursement programs that empower you to achieve your short and long-term goals
Promoting Health & Wellbeing:Comprehensive healthcare offerings that enable physical, mental, financial, social, and occupational wellbeing
Supportive Parenting Policies:Family-friendly policies, including a generous global parental leave plan, designed to help you balance career and family life effectively
Inclusive Work Environment: A collaborative workplace where all voices are valued, with Employee Resource Groups that unite and empower our colleagues around the globe
Dedication to Giving Back:Paid volunteer days, matched funding for donations and ample opportunities to volunteer in your community

Fitch is committed to providing global securities markets with objective, timely, independent and forward-looking credit opinions. To protect Fitch’s credibility and reputation, our employees must take every precaution to avoid conflicts of interest or any appearance of a conflict of interest. Should you be successful in the recruitment process at Fitch Ratings you will be asked to declare any securities holdings and other potential conflicts prior to commencing employment. If you, or your immediate family, have any holdings that may conflict with your work responsibilities, you may be asked to divest yourself of them before beginning work.

Fitch is proud to be an Equal Opportunity and Affirmative Action Employer. We evaluatequalified applicants without regard to race, color, national origin, religion, sex, sexual orientation, gender identity, disability, protected veteran status, and other statuses protected by law. 

#LI-VD1 #LI-Solutions #LI-Hybrid

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