Data Architect

Makati, Makati, Philippines

Applications have closed

About Security Bank

We are the Philippines' largest independent bank, having won countless awards over the years, including Philippines' Top Employer, named by Statistica, and Best Bank for Diversity and Inclusion, awarded by Asiamoney.

We’re changing how people bank. From the moment customers enter our branches to their experience online, we make them feel valued and empowered.

Now, with more than 300+ branches nationwide, BetterBanking has become the gold standard in improving the banking lives of millions of Filipinos. But we’re far from done.

In our constant pursuit of excellence and improvement, we create teams that support our business and each other.

 

The Role

As a Data Architect, you will be responsible for designing and driving the enterprise data architecture for the institution. You will align the institutions operating model and infrastructure to our business strategic objectives.

How you'll contribute

  • Develop and evolve the enterprise-wide data architecture to support delivery of business objectives.
  • Be a key stakeholder and advisor in all new strategic data initiatives and ensure alignment to the enterprise-wide data strategy; drive a target and consistent data architecture across the organization; develop and document architecture specifications that serve as the reference for engineering and execution.
  • Define data architecture standards, guidelines, and best practices; build a framework of principles to ensure data integrity across the business (including but not limited to Core Systems, ERP, CRM, Data Lake, Data Fabric, external interfaces, etc.)
  • Ensure that the data architecture and roadmap is aligned to the business and technology strategies.
  • Build and maintain appropriate Enterprise Architecture artifacts including Entity Relationship Models, data dictionary, taxonomy to aid data traceability.
  • Provide technical oversight to solution delivery in creating business driven solutions adhering to the enterprise architecture and data governance standards.
  • Liaise with data governance team to ensure data is trusted and accurate.

What we’re looking for

  • Bachelor’s degree in IT, Computer Science, Software Engineering or any related field.
  • At least 10 years of relevant work experience
  • Experienced technology leader with more than 10 years of data architecture experience
  • With proven experience in architecting and implementing Business Intelligence and Data warehouse platforms, Master Data Management, data integration and OLTP database solutions.
  • Must possess in-depth knowledge of and able to consult on various technologies
  • With strong knowledge of industry best practices around data architecture in both cloud based and on prem solutions.
  • With comprehensive understanding of the principles of and best practices behind data engineering, and the supporting technologies such as RDBMS, NoSQL, cache, in-memory stores, Graph DB, Hadoop and Spark
  • Experience of architecting data solution across hybrid (cloud, on premise) data platforms.
  • With comprehensive understanding of data warehousing and data transformation (extract, transform and load) processes and the supporting technologies such as Amazon Glue, EMR, Azure Data Factory, Data Lake, other analytics products
  • With excellent problem solving and data modelling skills (logical, physical, sematic and integration models) including; normalization, OLAP / OLTP principles and entity relationship analysis
  • Experience of mapping key Enterprise data entities to business capabilities and applications

 

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Tags: Architecture Azure Banking Business Intelligence Computer Science Data governance Data management Data strategy Data warehouse Data Warehousing Engineering Hadoop NoSQL OLAP RDBMS Security Spark

Region: Asia/Pacific
Country: Philippines
Job stats:  1  0  0
Category: Architecture Jobs

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