Overview
We're seeking a Senior Data Scientist to lead the development of advanced analytics and AI/ML solutions that unlock real value across our business. This is a contract role for 6 months.
In this contract role, you'll work with proprietary and B2B research datasets to design, deliver, and scale data-driven products. Collaborating closely with teams in Product, Research, and Technology, you'll help turn strategic ideas into working MVPs-ensuring high standards of methodology, quality, and business relevance throughout.
You'll also help shape the data science environment by working alongside our tech teams to support a robust and flexible infrastructure, including sandbox environments for onboarding and evaluating new data sources.
This is a great opportunity for a self-driven, impact-oriented data scientist who thrives in a fast-paced, cross-functional setting-and is eager to deliver meaningful results in a short time frame.
Main Duties and Responsibilities
- Spearhead and execute complex data science projects using a combination of open-source and cloud tools, driving innovation and delivering actionable insights.
- Develop and deploy advanced machine learning models using cloud-based platforms.
- Collaborate with product managers and designers to ensure the feasibility of product extensions and new products based on existing proprietary, quantitative, and qualitative datasets.
- Work with outputs from Research and historical data to identify consistent and inconsistent product features and document precise requirements for improved consistency.
- Collaborate with designers, Tech colleagues, and expert users to come up with engaging ways to visualize data and outliers/exceptions for non-technical audiences.
- Design and develop novel ways to showcase and highlight key analysis from complex datasets, including joining across datasets that do not perfectly match.
- Collaborate with Product, Tech, Research, and other stakeholders to understand and define a new, marketable product from existing data.
- Create and present progress reports and ad-hoc reviews to key stakeholders and teams.
- Constantly think about and explain to stakeholders how analytics "products" could be refined and productionized in the future.
- Work with Tech colleagues to improve the Data Science workspace, including providing requirements for Data Lake, Data Pipeline, and Data Engineering teams.
- Expand on the tools and techniques already developed.
- Help us understand our customers (both internal and external) better so we can provide the right solutions to the right people, including proactively suggesting solutions for nebulous problems.
- Be responsible for the end-to-end Data Science lifecycle: investigation of data, from data cleaning to extracting insights and recommending production approaches.
- Responsible for demonstrating value addition to stakeholders.
- Coach, guide, and nurture talent within the data science team, fostering growth and skill development.
Skills and Experience
- Delivering significant and valuable analytics projects/assets in industry and/or professional services.
- Proficiency in programming languages such as Python or R, with extensive experience with LLMs, ML algorithms, and models.
- Experience with cloud services like Azure ML Studio, Azure Functions, Azure Pipelines, MLflow, Azure Databricks, etc., is a plus.
- Experience working in Azure/Microsoft environments is considered a real plus.
- Proven understanding of data science methods for analyzing and making sense of research data outputs and survey datasets.
- Fluency in advanced statistics, ideally through both education and experience.
Person Specification
- Bachelor's, Master's, or PhD in Data Science, Computer Science, Statistics, or a related field.
- Comfortable working with uncertainty and ambiguity, from initial concepts through iterations and experiments to find the right products/services to launch.
- Excellent problem-solving and strong analytical skills.
- Proven aptitude to learn new tools, technologies, and methodologies.
- Understanding of requirements for software engineering and data governance in data science.
- Proven ability to manage and mentor data science teams.
- Evidence of taking a company or department on a journey from Analytics to Data Science to AI and ML deployed at scale.
- Ability to translate complex analysis findings into clear narratives and actionable insights.
- Excellent communication skills, with the ability to listen and collaborate with non-technical and non-quantitative stakeholders.
- Experience working with client-facing and Tech teams to ensure proper data collection, quality, and reporting formats.
- Experience presenting investigations and insights to audiences with varying skill sets and backgrounds.
- Nice to have: experience working with market research methods and datasets.
- Nice to have: experience in the professional services or legal sector.
- B2B market research experience would be a significant plus.