Software Engineer (powerBI DAX)

FactSet
London
1 year ago
Applications closed

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Responsibilities

:
• Collaborate with the Data engineering and Business Analytics team to design and implement PowerBI Dashboards.
• Establish Best practices to develop PowerBI dashboards.
• Develop Dev-Ops around PowerBI Dashboards development and Deployments.
• Work with Data Governance Teams to build and maintain Dashboard Catalogue, Role Based access to Data and Dashboards.
• Envision and build re-usable PowerBI components that can reduce duplication across the ecosystem of PowerBI Dashboards


Technology Learning Opportunities:
FactSet is committed to invest into Career development of all the Engineers to upskill, or re-skill based on individual interests, Project priorities and offers:
• Licenses for learning resources like Pluralsight
• Reimbursement of Technology Certification Fees (Azure, AWS or relevant Technologies)
• Paid Leave for Certification Exam preparation (In addition to Casual Leaves and Privilege Leaves)

• Vibrant Technology Communities that organize Internal programs, technology symposiums, Guest lectures by internal and
external experts.


Requirements:

We are seeking a results-oriented person with at leastthree yearsof experience full-time Industry work in
• Developing interactive visual reports, Dashboards and managing lifecycle of using PowerBI.
• Proficient in developing advanced-level computations on datasets.
• Proficient in PowerBI DAX.

• Proficient in SQL
• Proven track record of learning / upskilling-reskilling / Technology evangelizing in your current areas of work via,
• Certifications relevant to your current areas of expertise
• Open-Source Contributions

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