Senior Business Analyst

Outsource Uk Ltd
Greater London
1 month ago
Applications closed

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Full Job Description
Business Analyst/ Data analyst- Power BI

Well-known Media and entertainment company based

Business Segment:Technical Operations
Sub-Business:Studio Distribution
Location: London, UK
Hybrid: 3 days onsite per week, 2 from home
Pay: up to £80,000 per year for the right candidate
Start ASAP!


About The Role
This Senior Business Analyst position is a key member of the Studio Distribution Technical Operations organisation supporting the International Home Entertainment and Digital Distribution businesses. This role is a unique combination: half traditional Business Analyst supporting the applications that manage the distribution of our content across physical and digital media; and half Data Analyst working with our business partners to analyse title performance and consumer trends in order to maximise revenue for our studio. You’ll be a member of an international team that spans Los Angeles and London.


Responsibilities

  • Stakeholder Engagement:Develop and maintain relationships with International Home Entertainment and Digital Distribution business Learn and understand their functional processes, data dependencies and workflows, and needs for technology solutions.
  • Requirements Gathering:Lead discovery and requirements gathering sessions with business and technical teams, documenting functional requirements and use cases.
  • Continuous Improvement:Engage with business stakeholders to identify new project and enhancement requests along with managing the prioritisation of the request backlog.
  • SME:Act as subject matter expert for the Home Entertainment systems that support product planning, distribution, and licensing functions.
  • Data and Reporting Expert:Build and develop reporting and analytics solutions for the Digital Distribution business across the broader Company data landscape.
  • Project Delivery:Collaborate with enterprise product and engineering teams to deliver enhancements and support for the application portfolio.
  • Validation:Provide oversight of technical teams by reviewing technical design and ensuring deliverables meet business requirements.
  • Testing and Transition:Coordinate user acceptance testing, user training, and change management with business stakeholders.
  • Business Support:Serve as the point of escalation for the day-to-day operational activities and support questions.



Qualifications/Requirements Basic Qualifications

  • Minimum 8 years of experience in an IT application development or support role that engages directly with business users.
  • Plus, minimum 5 years of experience in a Data Analyst or Data Engineering role working with complex, multi-source datasets and developing reporting and analytics.
  • Understanding of IT project management methodologies and SDLC processes, such as Agile Scrum and Waterfall, along with associated best practices.
  • Microsoft Power BI experience, including creating workspaces, managing complex datasets, and utilizing best practices to build dashboards and visualisations.
  • Strong SQL skills having experience with complex table joins, aggregate and analytical functions, and subqueries and common table expressions.
  • Strong analytical skills with the ability to gather input from multiple sources and articulate technical recommendations and a point-of-view for key decisions.
  • Enjoys working in a collaborative team environment with the ability to manage multiple priorities and leverage support team members as necessary.
  • Excellent written, oral, presentation, and interpersonal skills with the comfort to communicate with all levels of the organization.
  • Bachelor’s degree in Computer Science, Engineering, or related field; or equivalent


Desired Characteristics/Qualifications

  • Experience with Media & Entertainment industry or manufacturing/distribution of packaged
  • Experience with modern reporting and analytics technologies and platforms (Snowflake, Google BigQuery, Python, Airflow, Power BI, MicroStrategy, Looker)
  • Enjoys learning new technologies and partnering with development teams to implement
  • Ability to effectively collaborate with teams across multiple time

Full Job Description Business Analyst/ Data analyst- Power BIWell-known Media and entertainment company basedBusiness Segment: …

Data Analyst Based: Preston – REMOTE working with SOME travel to the office Contract: 3 Months Rate: £16.19 per hour PAYE - 37 hours We are…

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