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Data Analyst

Synectics Solutions Ltd
Stoke-on-Trent
3 days ago
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Synectics Solutions are a leading force in delivering innovative, data-driven business solutions. For over 30 years, we’ve specialised in building complex data management and software products for household brands across the public and private sectors. Our next chapter focuses on leveraging cloud-native data platforms and advanced analytics, underpinned by our data lake initiative, to deliver scalable insights and AI-driven solutions.


The Role

This is a dynamic and evolving role at the heart of our data strategy. You will contribute to our proof-of-concept process, support our data lake project, conduct advanced analytics, and prototype development to support client-facing demonstrations and internal insight generation. The position offers opportunities to work with and learn modern data lake and analytics technologies, whilst collaborating across teams in a fast-growing environment that values innovation and personal development.


Key Responsibilities

  • Prototype Development: Carry business requirements through investigation, development, and testing cycles, creating functional prototypes using SQL and modern data tools.
  • Data Lake Enablement: Support ingestion, modelling, and transformation of structured and unstructured data into the data lake for scalable reporting and analytics.
  • Insight Delivery: Provide high-quality analysis to internal stakeholders (Sales, Solutions Consultancy, Client Success, Product Management) to enhance BAU and strategic initiatives.
  • POC Acceleration: Work on proof-of-concept solutions integrated with Power BI and the data lake to improve conversion rates and client engagement.
  • Governance & Compliance: Ensure data handling aligns with security, privacy, and regulatory standards, particularly for sensitive and PII data.

Essential Skills

  • SQL Expertise: Advanced SQL for data manipulation and query optimisation.
  • Data Engineering Foundations: Understanding and experience of ETL tools and familiarity with modern data pipelines.
  • Cloud & Data Lake Technologies: Exposure to Databricks, AWS/Azure, and data lake architectures desirable.
  • Data Visualisation: Proficiency in Power BI or other comparable reporting software for creating dashboards and reports.
  • Programming & Automation: Knowledge of Python or similar languages for data wrangling and automation.
  • Collaboration Tools: Experience with JIRA and Agile workflows.

Desirable Skills

  • Understanding of Unity Catalog, Delta Lake, or similar governance frameworks.
  • Familiarity with MLOps concepts and model lifecycle management.
  • Knowledge of Finance and Insurance sectors (beneficial but not essential).

Personal Attributes

  • Analytical mindset with attention to detail.
  • Strong communication skills for technical and non-technical audiences.
  • Ability to work independently and drive initiatives to completion.
  • Flexible and adaptable to evolving business priorities.

Why Join Us?

You’ll be part of a team shaping Synectics’ future through data lake-driven innovation, enabling next-gen analytics, AI capabilities, and new revenue streams. This role offers exposure to cutting-edge technologies and the chance to influence strategic data initiatives.


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