Data Scientist

2SD Technologies Limited
London
1 week ago
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About TwoSD (2SD Technologies Limited)

TwoSD

is the innovation engine of

2SD Technologies Limited

, a global leader in product engineering, platform development, and advanced IT solutions. Backed by two decades of leadership in technology, our team brings together strategy, design, and data to craft transformative solutions for global clients.
Our culture is built around cultivating talent, curiosity, and collaboration. Whether you're a career technologist, a self-taught coder, or a domain expert with a passion for real-world impact,

TwoSD

is where your journey accelerates.
Join us and thrive.

At 2SD Technologies, we push past the expected—with insight, integrity, and a passion for making things better.

Role Overview
We are looking for a

Data Scientist

with experience in

RAG (Retrieval-Augmented Generation)

,

Agentic AI frameworks

, and deep domain understanding of

Finance/Savings platforms

. This hybrid role (UK-based) is open to both

Contract

and

Permanent

arrangements.
You will contribute to platform development initiatives, working at the intersection of

AI innovation

,

data science

, and

business enablement

. The ideal candidate thrives in complex environments and bridges the gap between data, automation, and user experience.

Key

Responsibilities
AI-Driven Architecture:

Design and implement RAG pipelines that enhance platform intelligence and content retrieval
Agentic AI Integration:

Develop and fine-tune autonomous agents for workflow automation, intelligent decisioning, and user engagement
Domain Modelling:

Leverage understanding of CRM workflows and finance/savings data models to inform product features
Data Strategy:

Work with cross-functional teams to define and execute data strategies across structured and unstructured data sources
Prototyping & Deployment:

Create end-to-end data science solutions, from exploration to deployment, within cloud environments
Collaboration:

Partner with engineering, product, and design to ensure that AI features are usable, scalable, and aligned with business outcomes
Monitoring & Optimization:

Build metrics to monitor performance and improve models/agents over time

Required Qualifications
Education:

BSc/MSc in Data Science, AI, Computer Science, or related quantitative field
Experience:
5+ years in data science roles with platform/product experience
2+ years working on RAG implementations using tools like LangChain, LlamaIndex, or custom vector stores
Experience building or deploying Agentic AI architectures (e.g., AutoGPT, CrewAI, OpenAgents)
Strong grasp of CRM systems and finance/savings data (transaction flows, compliance, user segmentation, etc.)
Technical Skills:
Proficient in Python, SQL, and data science libraries (Pandas, NumPy, Scikit-learn, Hugging Face Transformers)
Familiarity with embedding models, vector databases (e.g., Pinecone, FAISS, Weaviate)
Experience with cloud platforms (AWS, GCP, or Azure) and MLOps pipelines
Solid understanding of NLP, LLM fine-tuning, and prompt engineering

Preferred Qualifications
Familiarity with customer analytics and marketing automation workflows
Experience in financial compliance (e.g., GDPR, FCA) or savings product optimization
Knowledge of business intelligence tools (Tableau, Power BI)
Experience with A/B testing, uplift modeling, or churn prediction

Core Competencies
Analytical Thinking & Problem Solving
Communication with Non-Technical Stakeholders
Agile Product Development Experience
Adaptability to Rapidly Evolving AI Tools
Results-Oriented, Delivery-Focused

Tools & Platforms
Languages: Python, SQL, Bash
AI Frameworks: LangChain, LlamaIndex, Hugging Face, OpenAI APIs
Agentic AI: CrewAI, AutoGPT, DSPy
CRM/Data Platforms: Salesforce, HubSpot, Segment
Vector DBs: Pinecone, FAISS, Weaviate
Cloud: AWS (S3, Lambda, SageMaker), Azure ML
Workflow: GitHub, Notion, Jira

Why Join TwoSD?
At

TwoSD

, innovation isn’t a department—it’s a mindset. Here, your voice matters, your expertise is valued, and your growth is supported by a collaborative culture that blends mentorship with autonomy. With access to cutting-edge tools, meaningful projects, and a global knowledge network, you’ll do work that counts—and evolve with every challenge.

Data Scientist – Platform & AI Development
Location:

United Kingdom (Hybrid)
Company:

TwoSD (2SD Technologies Limited)
Industry:

Information Technology / Financial Services
Employment Type:

Contractor or Permanent
Date Posted:

24 May 2025

How to Apply
Send your CV and portfolio (if available) to



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