Senior Data Scientist

Posted Yesterday
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London, Greater London, England, GBR
Hybrid
Senior level
Artificial Intelligence • Edtech • Information Technology
Equip the workforce to win in the AI era
The Role
As a Senior Data Scientist, you'll develop predictive models that drive business decisions, work with data engineers on infrastructure, and collaborate with various stakeholders to improve operational effectiveness.
Summary Generated by Built In

Multiverse is the upskilling platform for AI and Tech adoption.

We have partnered with 1,500+ companies to deliver a new kind of learning that's transforming today’s workforce.

Our upskilling apprenticeships are designed for people of any age and career stage to build critical AI, data, and tech skills. Our learners have driven $2bn+ ROI for their employers, using the skills they’ve learned to improve productivity and measurable performance.

In June 2022, we announced a $220 million Series D funding round co-led by StepStone Group, Lightspeed Venture Partners and General Catalyst. With a post-money valuation of $1.7bn, the round makes us the UK’s first EdTech unicorn.

But we aren’t stopping there. With a strong operational footprint and 800+ employees, we have ambitious plans to continue scaling. We’re building a world where tech skills unlock people’s potential and output.
Join Multiverse and power our mission to equip the workforce to win in the AI era.

What we need:

At Multiverse, the models we build don't just sit in notebooks - they drive the decisions that shape our business every day. From predicting learner outcomes to forecasting operational demand and optimising how we allocate resources, this work sits at the very core of how we run the company.

As a Senior Data Scientist, you'll own these models end to end. You'll develop a deep understanding of how Multiverse operates across our customer, learner and operational domains - and translate that understanding into rigorous, production-grade ML models that genuinely move the needle. To be successful, you'll be comfortable getting hands-on with pipelines and infrastructure - and unafraid of the statistical rigour that serious modelling demands.

You'll work closely with stakeholders across every part of the business - helping them ask better questions, understand the answers, and act on them with confidence. Our leaders will make multi-million dollar decisions based on your recommendations, and our AI-powered product will decide how to support learners based on your models.

You'll sit within our Data & Insight team, working day-to-day alongside Data Engineers, Data Product Developers and Insight Analysts.

What you'll focus on:

Business Understanding & Problem Definition

  • Building genuine expertise in how Multiverse operates across customer, learner and operational domains - becoming a trusted thought partner

  • Translating complex and often ambiguous business questions into well-scoped modelling problems with clear success criteria

  • Identifying where predictive, forecasting or optimisation models can have the greatest business impact, and prioritising accordingly

Modelling & Statistical Analysis

  • Designing, developing and iterating supervised and unsupervised ML models that predict, forecast and optimise across the business

  • Applying rigorous statistical methods to ensure models are robust, unbiased and genuinely causal wherever causal claims are being made

  • Developing a deep understanding of our data landscape - its lineage, quirks, and limitations - and designing approaches that account for them

  • Monitoring and refining models over time, ensuring they remain accurate and relevant as the business evolves

Data Engineering & Infrastructure

  • Collaborating closely with Data Engineers to build and maintain the data pipelines and ML infrastructure needed to develop and deploy your models

  • Productionising models to run reliably at scale, adhering to software engineering best practices - including version control, CI/CD and vulnerability management

  • Evaluating and implementing scalable approaches to data collection and processing, ensuring robust practices are in place

What we're looking for:

Required

  • 5+ years of data science/machine learning experience, with a proven track record building and deploying models that drive real business decisions

  • Deep expertise in predictive modelling, forecasting and/or optimisation - with strong command of the underlying statistical principles

  • Strong proficiency in Python and core ML libraries (e.g., NumPy, Pandas, Scikit-Learn, xgboost, shap)

  • Advanced working knowledge of SQL

  • Hands-on experience with data pipelines and ML infrastructure

  • Experience working within AWS (ideally using Sagemaker) and/or Azure

  • Comfort working across our data stack - inc Airflow, Snowflake

  • Experience with version control and CI/CD practices (ideally using GitHub)

  • Rigorous attention to statistical validity - comfortable challenging assumptions and defending methodology

  • Understanding of best practices in data protection and information security

Desirable

  • Experience with causal inference methods (e.g., diff-in-diff, instrumental variables, propensity score matching)

  • Experience with dbt for data transformation

  • Knowledge of infrastructure as code tools (e.g. Terraform)

  • Strong professional and/or academic background within a highly quantitative discipline (e.g. statistics, mathematics, physics or economics)

Benefits

  • Time off - 27 days holiday, plus 5 additional days off: 1 life event day, 2 volunteer days, 2 company-wide wellbeing days (M-Powered Weekend) and 8 bank holidays per year

  • Health & Wellness- private medical Insurance with Bupa, a medical cashback scheme, life insurance, gym membership & wellness resources through Wellhub and access to Spill - all in one mental health support

  • Hybrid work offering - for most roles we collaborate in the office three days per week with the exception of Coaches and Instructors who collaborate in the office once a month

  • Work-from-anywhere scheme - you'll have the opportunity to work from anywhere, up to 10 days per year

  • Space to connect: Beyond the desk, we make time for weekly catch-ups, seasonal celebrations, and have a kitchen that’s always stocked!


Our Commitment to Diversity, Equity and Inclusion

We’re an equal opportunities employer. And proud of it. Every applicant and employee is afforded the same opportunities regardless of race, colour, ancestry, religion, sex, national origin, sexual orientation, age, citizenship, marital status, disability, gender, gender identity or expression, or veteran status. This will never change. Read our Equality, Diversity & Inclusion policy here.

Our Commitment to Safeguarding

Multiverse is committed to safeguarding and promoting the welfare of our learners. We expect all employees to share this commitment and adhere to our Safeguarding Policy, our Prevent Policy and all other Multiverse company policies. Successful applicants will be required to undertake at least a Basic check via the Disclosure Barring Service (DBS).

For roles that will involve a Regulated Activity, successful applicants must also undergo an Enhanced DBS check, including a Children’s Barred List check and a Prohibition Order check. Roles involving Regulated Activity may interact with vulnerable groups, therefore are exempt from the Rehabilitation of Offenders Act 1974 meaning applicants are required to declare any convictions, cautions, reprimands, and final warnings.

Providing false information is an offence and could result in the application being rejected or summary dismissal if the applicant has been selected, and possible referral to the police and the DBS.

Skills Required

  • 5+ years of data science/machine learning experience
  • Deep expertise in predictive modelling, forecasting, optimisation
  • Strong proficiency in Python and core ML libraries
  • Advanced working knowledge of SQL
  • Hands-on experience with data pipelines and ML infrastructure
  • Experience working within AWS or Azure
  • Familiarity with version control and CI/CD practices
  • Attention to statistical validity

Multiverse Compensation & Benefits Highlights

The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Multiverse and has not been reviewed or approved by Multiverse.

  • Healthcare Strength Pay is paired with no-cost and low-cost healthcare options for employees and dependents, including access via MetLife and Aetna networks and a company-sponsored One Medical membership. Mental-health support and wellness offerings (EAP and therapy support) add to the perceived strength of the health package.
  • Leave & Time Off Breadth Time off is described as generous, including sizable PTO/holiday allowances, quarterly company-wide recharge days, and an end-of-year shutdown. Paid volunteer days and additional wellbeing/life-event days broaden the overall leave package beyond standard vacation.
  • Strong & Reliable Incentives Variable and long-term rewards are positioned as meaningful through performance bonuses/commission structures and employee equity participation. Sales compensation is presented as potentially high on-target, depending on quota attainment.

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The Company
London
800 Employees
Year Founded: 2016

What We Do

Multiverse is the upskilling platform for AI and Tech adoption. We’ve partnered with over 1,500 companies in the US & UK to deliver a new kind of learning that’s transforming the workforce through tech skills. Multiverse apprenticeships are for people of any age or career stage and focus on critical AI, data and tech skills. Multiverse learners have driven $2bn + ROI for their employers, using the skills they’ve learned to improve productivity and measurable performance. We’re a Unicorn 🦄 In June 2022, Multiverse announced a $220 million Series D funding round co-led by StepStone Group, Lightspeed Venture Partners and General Catalyst. With a post-money valuation of $1.7 billion, the round makes the company the UK’s first EdTech unicorn. For more information, visit www.multiverse.io

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