Business Analyst

Jetking Technologies Private Limited
London
1 month ago
Applications closed

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Data Business Analyst

Data Business Analyst - Risk Rating & Pricing

Assessor / Trainer - Data Technician and Business Analyst

Assessor / Trainer - Data Technician and Business Analyst

Assessor / Trainer - Data Technician and Business Analyst

Data Science and Analytics Senior Business Analyst

POSITON BUSINESS ANALYST LOCATION Canary Wharf London

Job Description

We are seeking an experiencedBusiness Analystwith a deep understanding of banking and financial services products to join our team. You will play a pivotal role in driving data quality improvements and transformations across multiple financial products. As part of the role you will collaborate closely with key stakeholders including engineering teams product owners and functional SMEs to ensure the efficient delivery of data solutions. Your expertise will help identify and resolve data quality issues while ensuring alignment with business objectives and regulatory requirements.

Key Skills Required

  • Experience:A minimum of 710 years of experience as a Business Analyst specifically within a data transformation or data quality program in a major bank investment banking or financial services organization.
  • Domain Knowledge:Indepth expertise in at least one banking or financial services product such as loans equities or derivatives with a strong understanding of associated data flows and processes.
  • Must Have:Handson experience with data analysis and management tools including proficiency in data analysis data transformation and data quality frameworks.
  • Communication:Excellent written and verbal communication skills with the ability to effectively interact with stakeholders at all levels including senior leadership technical teams and external partners.
  • Availability:Immediate availability to join the team

Key Responsibilities

  • Deep Dive into Financial Products:Analyze and document data flows for specific financial products (e.g. loans equities derivatives) to understand their impact on data quality and identify areas for improvement.
  • Leverage Metrics for Data Quality:Develop and apply key metrics to evaluate the current state of data quality and identify opportunities for enhancement across various financial products and systems.
  • Root Cause Analysis:Investigate and analyze data quality issues including manual adjustments working closely with engineering teams product owners and SMEs to implement effective solutions.
  • Prioritize Data Solutions:Use datadriven insights to drive prioritization discussions with stakeholders ensuring alignment on key business objectives and data improvement initiatives.
  • Impact Assessment & Reporting:Regularly present the impact of data quality issues along with delivery updates and risk assessments to senior stakeholders and leadership teams.
  • Regulatory Reporting Collaboration:Partner with regulatory reporting teams to understand the implications of data quality issues on compliance (e.g. Basel CCAR FRTB) and ensure timely accurate reporting.
  • Collaboration with Key Teams:Work alongside Market Risk Analytics Front Office teams and other business units to deliver impactful reporting and analytics solutions that support the company’s strategic goals.

Preferred Skills & Tools:

  • SQL Python PySpark for data analysis and transformation.
  • Experience with Data Governance Data Lineage and Data Quality Frameworks.
  • Familiarity with Regulatory Reporting (e.g. Basel CCAR FRTB).
  • Strong Stakeholder Management and communication skills.
  • Experience working with Big Data technologies (Hadoop Spark Kafka etc..
  • Proficiency in Tableau for Data Visualization and Reporting.
  • Experience with Financial Instruments like Derivatives FX etc.

Skills

#BusinessAnalyst,#Banking,#Finance,#DataAnalysis


Key Skills
SQL,Agile,Business Analysis,Visio,Waterfall,Business Process Modeling,Requirements Gathering,User Acceptance Testing,Business requirements,SDLC,Systems Analysis,Data Analysis Skills
Employment Type :Full Time
Experience:years
Vacancy:1

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