Design solutions to drive safe living and quality of life
Job Description:
The Data Quality COE Organization setup under the Information Management and Analytics (IM&A), establishes the standards, processes and tools to help business manage hygiene of their Critical Data Elements and increase the accuracy of the business transactions. This org will work closely with the SBG Business Teams, Enterprise IT teams and align to the corporate Data Quality objectives, architectures and technologies.
This opening is for the position of ‘Sr. Data Management Analyst’ reporting Director Data Management based at Bangalore. The Key Outcomes / Measures for the role would be:
·Advanced level understanding of SAP/ERP Master Data Structure (like Customer Master, Material Master, vendor Master etc.), Transactions (Order Cash, Procurement, Pricing etc.). Key responsibilities include:
oin-depth understanding of Business processes,
oIdentify master and transaction tables/data elements, applying required data filters
oAdvising team in converting business rules into IDQ Data Quality Rules.
·Execute on the Data Quality framework / Strategy / Roadmap for IM&A with specific focus on Master, transaction and KPI related Data.
·Guide team in development of IDQ mapping for implementation of Data Quality rules and then execution.
·Provide functional and business process support to team in developing data science model in data cleansing, data profiling and reporting.
·Support Master Data Management (MDM) deployment and Practices across measuring and improving the Data Quality of Master Data in source systems.
·Work closely with the Data Stewards of the through the Business Data Governance Leader, in establishing Data Quality Standards, Processes and tools. The responsibility also includes socialization of DQ metrics, help business in remediation of the exception/errors etc. along with SBG Data stewards.
·Has fair understanding of Data Integration from different Standard and nonstandard enterprise data sources. Very good in building strategy along with IT team to pull data from different source systems. Utilizes Data Analytics and mining skills to help business teams to remediation data quality issues.
Educational qualification and experience:
·Bachelor’s degree in IT, Engineering, Computer Science.
·10 plus years of Data Management experience with at least 3 years of hands-on work in ERP with specific experience on Extract, Analyze from SAP/ERP and working with Integration tools / technologies.
·Masters in IT would be an added advantage
Sr. Data Management Analyst – skills / attributes
YOU MUST HAVE
·Hands on experience with SAP Functional, HANA, BO, SQL, Informatica IDQ, Power Exchange, Power Center etc. is required.
·Exposure to SAP Masters (like Customer, Material, Vendor etc.) and Transactions (like Order Management, Pricing, Planning etc.), Understands SAP tables for master/transactions and can form joins, filters, and data mapping as per the business rules provided by data stewards.
·Good understanding of Data Quality Dimension has hands on experience in driving data quality measurement and improving.
·Hands on experience in Data Analysis models that will help explore, analyze and remediate data quality issues.
·Data structure understanding of different Enterprise Systems like SAP, SFDC, Ariba etc.
·Ability to independently execute tasks on Extract, Analyze, Transform, Load data from SAP and other data systems.
·Understanding of impact of Data on growth, operation excellence and customer experience and constantly looking for opportunities to improve them.
WE VALUE
·SAP ABAP, Interface development.
·Excellent / Effective communications and Influencing skills including the ability to translate and present findings
·Certification in Data Science and analytics, Data Governance, Master Data is preferred.
·Effectively demonstrates ability to deliver on complex situations or problems without guidance or supervision.
·Ability to foster good relationships, ability to prioritize, influence and work collaboratively with cross-functional global teams
·Data Science knowledge in development of Data science models.
Source link