Data Scientist London

Model ML
London
5 months ago
Applications closed

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Data Scientist

Data Scientist

Senior Data Scientist

Data Scientist

Data Scientist

Data Scientist - UKIC DV Clearance Required

Model ML is an AI solution that accelerates research and due diligence processes for Private Equity (PE), Venture Capital (VC), and Banking. You will work alongside two well-known founders who successfully sold their last two YC-backed companies. Model ML, also backed by Y Combinator and top-tier venture firms, has already raised double-figure millions in stealth mode to automate specific workflows within finance using AI. The company is live and in production with some of the world's largest firms and is scaling fast globally.

Job Description:

We are looking for a Senior Business Intelligence (BI) Analyst to join our team. The candidate will be responsible for managing the full data stack, designing, developing, and maintaining data visualizations and dashboards to provide actionable insights and support data-driven decision-making across the organization.

Key Responsibilities

  • Design, develop, and maintain data visualizations and dashboards using Looker.
  • Report on trends, patterns, and insights daily to the entire team, ensuring clarity and understanding of data insights.
  • Provide training and support to the team to ensure effective use of Looker.
  • Stay updated with industry trends and best practices in BI and data analytics.
  • Collaborate with the engineering team to connect and maintain data pipelines (note: technical implementation is not your responsibility).
  • Ensure data accuracy and integrity through regular validation and quality checks.

What you can expect:

It will be challenging but rewarding. Be prepared for changing timelines and priorities. This role requires a willingness to embrace discomfort and a commitment to learning and growth.

Requirements:

  • Strong academic background.
  • Minimum of 5 years of experience in business intelligence, data analysis, or related fields.
  • Expertise in Looker and proficiency in SQL.
  • Advanced Excel skills, including complex formulas, pivot tables, and data visualization.
  • Experience scaling BI functions in a venture-backed startup environment.
  • Excellent communication and collaboration skills, with the ability to work effectively across teams.

What We Offer:

  • Direct reporting to founders with successful venture-backed exits.
  • Competitive salary + equity.
  • Performance-based incentives.
  • Opportunity to expand into the APAC market.
  • Supportive and innovative work environment.

We are building a team of smart, tenacious individuals committed to our mission. If you resonate with this vision and are ready to make your mark, we encourage you to apply.

About the interview

Our Process:

  • Call 1: 20-minute intro with Nat (Head of Ops).
  • Call 2: 30-minute interview with Chaz (CEO).
  • Call 3: 45-minute technical deep dive with Chaz.
  • Call 4: 30-minute discussion with Arnie (CTO).

If interested, please apply using the form below.


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