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Data Scientist - Europe

Abacus.AI
Liverpool
1 week ago
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Senior Data Scientist


Company : Abacus.AI


Location : Remote / (US EST Timezone)


Type : Full-time


About Abacus.AI

Abacus.AI is an enterprise AI platform that transforms how businesses build and deploy AI systems. Our platform automates AI development through advanced generative AI technology, eliminating the need for extensive technical expertise.


Our core offerings include ChatLLM Teams with access to leading AI models, DeepAgent for autonomous task execution, and customizable AI agents for chatbots, workflows, and enterprise automation. We also contribute to the AI community through LiveBench.ai benchmarking and open-source projects like Dracarys and Smaug.


We make sophisticated AI and machine learning capabilities accessible to organizations regardless of size or technical resources.


Role Overview

We’re looking for a Senior Customer-Facing Data Scientist (5+ years experience) to own end-to-end AI solutions and ensure our customers are successful. In this role, you’ll translate our AI capabilities into real-world value, partnering closely with customers and providing hands‑on guidance throughout their proof‑of‑concept and deployment journey.


Key Responsibilities
  • Design and build proof‑of‑concept GenAI and ML solutions for prospective clients using Python, the Abacus Python SDK, and the Abacus platform
  • Contribute to end‑to‑end data science projects, including data exploration, feature engineering, model development, evaluation, and iteration
  • Partner with Sales and Solutions teams to support pre‑sales activities with deep technical expertise and live product demonstrations
  • Implement, test, and optimize models and workflows on the Abacus platform, incorporating feedback from customer stakeholders

Required Qualifications
  • Python proficiency - Strong programming skills with experience in data science libraries (pandas, numpy, scikit-learn, LangChain, etc.)
  • Generative AI experience - Hands‑on work with LLMs, prompt engineering, RAG systems, or similar GenAI technologies
  • Machine Learning knowledge - Solid understanding of ML algorithms, model training, and evaluation
  • Strong communication skills with ability to explain complex technical concepts to diverse audiences

Preferred Qualifications
  • Knowledge of MLOps practices and tools
  • Previous experience in customer‑facing roles or technical sales support
  • Familiarity with enterprise SaaS environments
  • Experience with demo automation and presentation tools

What We Offer
  • Competitive salary and equity package
  • Opportunity to work with cutting‑edge AI technology
  • Collaborative and innovative work environment
  • Professional development and learning opportunities


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