Graduate BI Analyst

Intec Select
Greater London
3 days ago
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Business Intelligence Analyst / Artificial Intelligence / Machine Learning

(Associate to Mid-Level)

An excellent opportunity has arisen with a global financial services organisation for a BI Analyst to deliver insights across all areas and regions of the business. You will also play a key role in helping the most important clients reduce costs by using the latest technologies and AI to help solve complex optimisation problems. This is a great company offering excellent career development opportunities.

Role and Responsibilities:

  • Use AI to enhance processes and drive value across the business
  • Combine multiple datasets to create bespoke data tools and insights for the business and for clients
  • Create optimisation solutions for supply chain problems using your skills in AI and machine learning where appropriate
  • Clearly communicate solutions to other team members and clients
  • Offer support for more junior colleagues where required
  • Take responsibility for your performance and to work together to achieve our organizational goals
  • Attend training courses which are identified as being necessary for the performance of the role

Essential Skills and Experience:

  • Comfortable using different programming languages such as Python, Spark and SQL
  • Data storytelling experience using tools e.g. Power BI, Tableau
  • Experience using AI with a desire to make significant business impact
  • Excellent organisation and time management skills
  • Keen attention to detail and the ability to multi-task
  • Personable with the ability to build relationships and communicate with all levels both internally and externally
  • Ability to speak a second language
  • Familiarity with Microsoft Fabric and Azure Databricks
  • Knowledge of DBT

Excellent basic salary and benefits

Location:London / City

Seniority Level:Associate

Employment Type:Full-time

Job Function:Analyst

Industries:Financial Services and Securities and Commodity Exchanges

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