Data Scientist - LDN

Data Scientist - LDN

Full-Time 60000 - 80000 € / year (est.) Home office (partial)
T

At a Glance

  • Tasks: Design and build innovative data solutions using cutting-edge technology.
  • Company: Join a leading global research firm with a collaborative culture.
  • Benefits: Enjoy 25 days of vacation, health insurance, and a personal development allowance.
  • Other info: Flexible work options and opportunities for career growth.
  • Why this job: Make a real impact by transforming data into actionable insights.
  • Qualifications: Masters in a quantitative field and strong Python skills required.

The predicted salary is between 60000 - 80000 € per year.

Third Bridge is a leading global research firm established in 2007, with a team of over 1,500 employees worldwide dedicated to fueling decisions with expert insights. We accelerate and enhance decision‑making for investors and business leaders by unearthing unique expert insights across multiple sectors, geographies, and topics. For nearly 20 years, we’ve helped clients access knowledge on demand from experts, in‑person and through our Library covering over 65,000 companies. We stand at the cutting edge of technology and investment research, driving innovation to deliver solutions that set new industry standards.

We are building a Data Science capability within our Data Architecture function, and are seeking a Data Scientist who combines technical rigour with a prototyping mindset — someone dedicated to proving what’s possible with our data and handing those proofs to engineering.

About The Role

As a Data Scientist at Third Bridge, you will be the engineering-focused prototyping engine within a high‑impact data team. Working alongside our senior analytics capability and reporting to the Principal Data Architect, your primary mandate is to design, build, and validate proof‑of‑concept (PoC) solutions — from new dataset pipelines and ML models to AI‑powered internal tools — and hand off successful proofs to the engineering team for production integration. You will work with Third Bridge’s rich proprietary data assets: transcripts, events, interaction data, commercial performance metrics, and content derived from tens of thousands of expert interviews. The role gives you the mandate to find new ways to extract value from that data, with the freedom to experiment and the expectation to ship.

Key Responsibilities

  • Design and build PoC solutions with a clear ‘ship‑or‑kill’ decision framework, defining evaluation criteria upfront so success is measurable, not just qualitative.
  • Build extraction, transformation, and loading (ETL/ELT) pipelines to create net‑new datasets for analytical or ML use, including feature engineering pipelines for model training and downstream reporting.
  • Apply supervised and unsupervised ML techniques to commercially relevant problems: usage propensity, client segmentation, churn modelling, content recommendation, and anomaly detection.
  • Develop lightweight Python‑based tools and notebook applications that allow business stakeholders to interact with model outputs or curated data extracts.
  • Prototype AI‑assisted internal tools — including applications leveraging LLM APIs, embedding‑based search, and retrieval‑augmented generation (RAG) — to demonstrate near‑term business value from Third Bridge’s content assets.
  • Collaborate closely with the analytics peers to align on data definitions, shared datasets, and metric standards that underpin both experimental and production work.
  • Work with the engineering team to define production requirements for successful PoCs, producing clean, well‑documented code and architecture notes to support seamless handoff.
  • Advocate upstream for data quality and instrumentation requirements with Product and Engineering, contributing to the team’s engineering standards and practices.

Essential Qualifications

  • Masters degree (or equivalent) in Computer Science, Data Science, Statistics, Mathematics, Engineering, or a quantitative field such as Economics.
  • Professional experience in a data science, ML engineering, or applied data role.
  • Strong Python programming skills, including hands‑on experience with pandas, scikit‑learn, and at least one ML or deep learning framework.
  • Working knowledge of Bedrock and other AWS managed services.
  • Demonstrable experience building and deploying at least one end‑to‑end ML model or data pipeline in a professional setting, with clear evaluation criteria and documented outcomes.
  • A track record of building PoC or prototype solutions and iterating toward production‑readiness, with the discipline to define ‘ship‑or‑kill’ criteria upfront.
  • Strong version control practices (Git) and familiarity with software engineering workflows including code review and CI/CD awareness.
  • The ability to communicate technical findings and trade‑offs clearly to both technical peers and non‑technical stakeholders.

Desired Attributes

  • Exceptional problem‑solving instincts and a bias toward shipping: able to make a PoC useful and demonstrable quickly, without over‑engineering early‑stage solutions.
  • Familiarity with AWS Bedrock or other managed AI/LLM platforms (e.g. OpenAI API, Anthropic API) for building and integrating AI‑powered features is a strong plus, though AI capability should complement, not replace, a solid foundation in traditional ML.
  • Experience with NLP, text classification, embedding models, or semantic search, particularly applied to content‑rich or document‑heavy datasets.
  • Familiarity with building lightweight web applications or data tools such as Streamlit, FastAPI, or Flask, enabling business stakeholders to interact directly with model outputs.
  • Experience with orchestration or transformation tooling such as dbt, Airflow, or Prefect, demonstrating an ability to build reproducible and maintainable pipelines.
  • A tech‑agnostic mindset, open to selecting the right tool for each problem — whether that is a classical statistical model, a gradient boosting approach, or an LLM‑backed workflow.
  • Exposure to product analytics, B2B SaaS, publishing, or content‑rich datasets is a plus.
  • Natural curiosity and a proactive approach to staying current with developments in both traditional ML and generative AI — and bringing relevant ideas back to the team.
  • Excellent collaboration skills, with the instinct to treat the analytics peer and engineering team as partners rather than handoff recipients.

How will you be rewarded?

  • Vacation: 25 days (which increases to 28 days after 2 years of service) plus UK Bank Holidays.
  • Learning: personal development allowance of £1,000 per year.
  • Health and wellbeing: private medical insurance and healthcare cash plan, a variety of health and wellbeing events to focus on mental health, Ride to Work scheme (savings on bikes and accessories).
  • Future and family: pension contributions of 4% (increases with tenure) and life insurance of 4× your base salary.
  • Flexibility: work from anywhere for one month per year, 2 annual volunteer days, 2 personal days when life throws you a curveball and ‘Summer Fridays’.
  • Rewards: get points through our colleague‑to‑colleague recognition programme to spend on hotels, gift cards, donations to charity and more.
  • Social: optional social gatherings, daily breakfast and snacks, social events.
  • ESG: CSR, Environment and Diversity & Inclusion (including Women at Third Bridge, Pride and Blkbridge).
  • Frontline Innovation: your chance to share your ideas for improvement through Hackathons and other events.

Third Bridge values your trust and is committed to the responsible management, use, and protection of personal information. By submitting a Third Bridge job application, I hereby provide Third Bridge (including Third Bridge's affiliates and relevant third‑party suppliers) with my consent to collect, store and process my personal information for the purpose of recruitment administration, as well as to share such personal information with third parties for the same purpose, in accordance with the Candidate Privacy Notice. We know that to be truly innovative, we need to have a diverse team around us. That is why Third Bridge is committed to creating an inclusive environment and is proud to be an equal‑opportunity employer. If you are not 100% sure if you are right for the role, please apply anyway, and we will be happy to consider your application.

Data Scientist - LDN employer: Third Bridge Group

Third Bridge is an exceptional employer that fosters a culture of innovation and collaboration, providing Data Scientists with the opportunity to work at the forefront of technology and investment research in London. With a strong commitment to employee growth, generous benefits including a personal development allowance, flexible working arrangements, and a focus on health and wellbeing, Third Bridge empowers its team to thrive both personally and professionally while making a meaningful impact in the industry.

T

Contact Detail:

Third Bridge Group Recruiting Team

StudySmarter Expert Advice🤫

We think this is how you could land Data Scientist - LDN

Tip Number 1

Network like a pro! Reach out to current employees at Third Bridge on LinkedIn or other platforms. Ask them about their experiences and any tips they might have for landing the Data Scientist role. Personal connections can make a huge difference!

Tip Number 2

Show off your skills! Prepare a portfolio of your best projects, especially those related to data science and machine learning. When you get the chance to chat with recruiters or during interviews, share your work and how it aligns with what Third Bridge is doing.

Tip Number 3

Practice makes perfect! Get ready for technical interviews by brushing up on your Python skills and ML concepts. Use platforms like LeetCode or HackerRank to solve problems that could come up in your interview. The more prepared you are, the more confident you'll feel!

Tip Number 4

Don’t forget to apply through our website! It’s the best way to ensure your application gets seen. Plus, it shows you're genuinely interested in joining Third Bridge. So, hit that apply button and let’s get you started on this exciting journey!

We think you need these skills to ace Data Scientist - LDN

Python Programming
Machine Learning (ML)
Data Pipeline Development
ETL/ELT Processes
Feature Engineering
Supervised and Unsupervised Learning
Data Analysis

Some tips for your application 🫡

Tailor Your CV:Make sure your CV is tailored to the Data Scientist role at Third Bridge. Highlight your relevant experience, especially in building PoC solutions and working with data pipelines. We want to see how your skills align with our needs!

Craft a Compelling Cover Letter:Your cover letter is your chance to shine! Use it to explain why you're passionate about data science and how you can contribute to our team. Be sure to mention any specific projects or experiences that relate to the job description.

Showcase Your Technical Skills:Don’t forget to highlight your technical skills, especially in Python and ML frameworks. We love seeing examples of your work, so if you have a portfolio or GitHub repository, include that too. It helps us understand your hands-on experience!

Apply Through Our Website:We encourage you to apply through our website for a smoother application process. It’s the best way for us to receive your application and ensures you’re considered for the role. Plus, it shows you’re keen on joining our team!

How to prepare for a job interview at Third Bridge Group

Know Your Data Inside Out

Before the interview, dive deep into the types of data Third Bridge works with. Familiarise yourself with transcripts, interaction data, and commercial performance metrics. Being able to discuss how you would extract value from these datasets will show your genuine interest and understanding of the role.

Showcase Your Prototyping Skills

Prepare to discuss specific examples of proof-of-concept solutions you've designed or built in the past. Highlight your approach to defining evaluation criteria and how you iterated towards production-readiness. This will demonstrate your engineering-focused mindset and ability to ship quickly.

Brush Up on Python and ML Techniques

Make sure you're comfortable with Python, especially libraries like pandas and scikit-learn. Be ready to talk about your experience with supervised and unsupervised ML techniques, and how you've applied them to real-world problems. This technical knowledge is crucial for the role.

Communicate Clearly with Stakeholders

Practice explaining complex technical concepts in simple terms. You’ll need to communicate findings to both technical peers and non-technical stakeholders. Being able to bridge that gap will set you apart and show that you can collaborate effectively within the team.