Sr Data Scientist

Campaign Monitor
remote, united kingdom
3 months ago
Create job alert

The Company:

Marigold helps brands foster customer relationships through the science and art of connection. Marigold Relationship Marketing is a suite of world-class martech solutions that help marketers create long term customer love and loyalty. Marigold provides the most comprehensive set of use cases for marketers at any level. Headquartered in Nashville, Tennessee, Marigold has offices globally across the United States, Europe, Australia, New Zealand, South America and Central America, as well as in Japan.
 

What You’ll Do:

Collaborate with product, engineering, and data science teams to design, develop, and deploy highly scalable solutions

Work through all phases of the data science life cycle, including data collection, cleaning, analysis, modeling, validation, and deployment

Research, fine-tune, benchmark and align Large Language Models for practical application in digital marketing

Investigate, analyze, and address data quality issues and model performance issues in a timely manner

Deliver technical documentation and reports for use by internal teams, customers, and partners

Conduct exploratory data analysis to identify trends, patterns, and insights that will inform model development

Ideal Qualifications:

Degree in Data Science, Computer Science, Statistics, or a related field, or equivalent combination of education and experience

7+ years of experience in data science, with a focus on deploying models in enterprise, high-scale environments

Advanced understanding of statistical modeling, machine learning algorithms, and data analysis techniques

Proficient in Python, R, or similar languages for data science, and performance tuning of models

Experience working with SQL databases such as MySQL, PostgreSQL, or equivalent

Experience with big data processing tools such as Apache Spark, Databricks, Clickhouse, or equivalent

Excellent communication skills, both verbal and written, with the ability to explain complex technical concepts to non-technical stakeholders

Demonstrated ability to produce clear and concise technical documentation

Nice to Have:

Experience with Large Language Models, Retrieval Augmented Generation, Embeddings, and Vector Databases in a production environment

Experience with real-time data streaming and processing frameworks such as Kafka, Kinesis, or similar

Advanced experience working with distributed computing and big data technologies such as Databricks, Snowflake, Clickhouse or similar

Experience delivering data models and insights at scale, processing and analyzing large datasets in real time

What We Offer: (Required)

The competitive salary and benefits you’d expect!

Generous time off (we call it Open Time Away) as well as paid holidays and a birthday benefit day off.

Retirement contributions. 

Employee-centric and supportive remote work environment with flexibility.

Support for life events including paid parental leave.

Related Jobs

View all jobs

▷ [15/05/2025] Sr. Data Scientist / Machine LearningEngineer - GenAI ...

Senior Data Scientist

Sr. Data Engineer, GOX - Global Operational Excellence

Sr. Business Intelligence Engineer, GFP Analytics

Sr. Business Intelligence Engineer, Prime Video Channels - Customer Insights

SOC 2431 Business Analyst

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Quantum-Enhanced AI in Data Science: Embracing the Next Frontier

Data science has undergone a staggering transformation in the past decade, evolving from a niche academic discipline into a linchpin of modern industry. Across every sector—finance, healthcare, retail, manufacturing—data scientists have become indispensable, leveraging statistical methods and machine learning to turn raw information into actionable insights. Yet as datasets grow ever larger and machine learning models become more computationally expensive, there are genuine questions about how far current methods can be pushed. Enter quantum computing, a nascent but promising technology grounded in the counterintuitive principles of quantum mechanics. Often dismissed just a few years ago as purely experimental, quantum computing is quickly gaining traction as prototypes evolve into cloud-accessible machines. When paired with artificial intelligence—particularly in the realm of data science—the results could be game-changing. From faster model training and complex optimisation to entirely new forms of data analysis, quantum-enhanced AI stands poised to disrupt established practices and create new opportunities. In this article, we will: Explore how data science has reached its current limits in certain areas, and why classical hardware might no longer suffice. Provide an accessible overview of quantum computing concepts and how they differ from classical systems. Examine the potential of quantum-enhanced AI to solve key data science challenges, from data wrangling to advanced machine learning. Highlight real-world applications, emerging job roles, and the skills you need to thrive in this new landscape. Offer actionable steps for data professionals eager to stay ahead of the curve in a rapidly evolving field. Whether you’re a practising data scientist, a student weighing up your future specialisations, or an executive curious about the next technological leap, read on. The quantum era may be closer than you think, and it promises to radically transform the very fabric of data science.

Data Science Jobs at Newly Funded UK Start-ups: Q3 2025 Investment Tracker

Data science has become an indispensable cornerstone of modern business, driving decisions across finance, healthcare, e-commerce, manufacturing, and beyond. As organisations scramble to capitalise on the insights their data can offer, data scientists and machine learning (ML) experts find themselves in ever-higher demand. In the UK, which has cultivated a robust ecosystem of tech innovation and academic excellence, data-driven start-ups continue to blossom—fuelled by venture capital, government grants, and a vibrant talent pool. In this Q3 2025 Investment Tracker, we delve into the newly funded UK start-ups making waves in data science. Beyond celebrating their funding milestones, we’ll explore the job opportunities these investments have created for aspiring and seasoned data scientists alike. Whether you’re interested in advanced analytics, NLP (Natural Language Processing), computer vision, or MLOps, these start-ups might just offer the career leap you’ve been waiting for.

Portfolio Projects That Get You Hired for Data Science Jobs (With Real GitHub Examples)

Data science is at the forefront of innovation, enabling organisations to turn vast amounts of data into actionable insights. Whether it’s building predictive models, performing exploratory analyses, or designing end-to-end machine learning solutions, data scientists are in high demand across every sector. But how can you stand out in a crowded job market? Alongside a solid CV, a well-curated data science portfolio often makes the difference between getting an interview and getting overlooked. In this comprehensive guide, we’ll explore: Why a data science portfolio is essential for job seekers. Selecting projects that align with your target data science roles. Real GitHub examples showcasing best practices. Actionable project ideas you can build right now. Best ways to present your projects and ensure recruiters can find them easily. By the end, you’ll be equipped to craft a compelling portfolio that proves your skills in a tangible way. And when you’re ready for your next career move, remember to upload your CV on DataScience-Jobs.co.uk so that your newly showcased work can be discovered by employers looking for exactly what you have to offer.