Business Intelligence Analyst (Looker Studio)

Ubiquity Global Services, Inc.
Nottingham
1 week ago
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About the role

This is a full-time Business Analyst role at Ubiquity, an innovative technology company based in Eastwood, Quezon City Metro Manila. As a Business Analyst, you will play a crucial part in analysing business requirements, defining solutions, and supporting the delivery of successful IT projects that enable Ubiquity to achieve its strategic goals.


Key Responsibilities

  • Gather, analyze, and document business requirements from key stakeholders
  • Translate business needs into clear, actionable functional specifications
  • Collaborate with cross-functional teams including IT, development, and operations to deliver quality solutions
  • Identify process inefficiencies and propose improvements for greater operational effectiveness
  • Facilitate stakeholder meetings and workshops to align on project goals
  • Create and maintain comprehensive project documentation such as user stories, process flows, and test plans
  • Support user acceptance testing (UAT) and ensure smooth project implementation

Qualifications

  • At least 3 years of experience as a Business Analyst, preferably in the Information and Communication Technology industry
  • Strong analytical thinking and problem-solving skills
  • Excellent communication and interpersonal abilities, with the capacity to engage both technical and non-technical stakeholders
  • Experience with business process mapping, requirements gathering, and documentation
  • Familiarity with Agile methodologies and project management tools
  • Hands-on experience using data visualization tools such as Looker Studio or Power BI
  • Bachelor’s degree in Computer Science, Information Technology, or a related field

What we offer

At Ubiquity, we are committed to providing a supportive and rewarding work environment for our employees. Some of the key benefits include:



  • Competitive salary and performance-based bonuses
  • Comprehensive health insurance coverage
  • Opportunities for career development and skills training
  • Flexible work arrangements and work-from-home options

Fun and engaging company culture with team-building activities



  • Must be willing to report onsite and night shift schedule

About us

Ubiquity is a leading provider of innovative technology solutions. We are passionate about driving digital transformation and enabling our clients to thrive in the digital. With a strong focus on customer success, we constantly strive to deliver cutting-edge solutions that address our clients' evolving business needs.


If you're excited to join a dynamic and forward-thinking team, apply now and let's discuss how your skills and experience can contribute to our continued success.


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