Data Architect - Professional Services

World's most comprehensive and broadly adopted cloud platform, pioneering cloud computing and continuous innovation.
Data
Senior Software Engineer
Hybrid
5,000+ Employees
3+ years of experience
Enterprise SaaS · AI

Description For Data Architect - Professional Services

AWS Professional Services is seeking a skilled Data Architect to join their global team of experts. This role involves working directly with customers to design, implement, and manage AWS solutions that meet their technical requirements and business objectives. The position requires deep expertise in AWS products and services, with a focus on data architecture, including Data Lake, Lake House, and Data Mesh implementations. The ideal candidate will have 3+ years of experience in cloud architecture and database technologies, with the ability to work closely with stakeholders to gather requirements and propose effective migration strategies. This role combines technical leadership with customer-facing responsibilities, requiring up to 50% travel to client locations. The position offers opportunities to work with cutting-edge technologies in data and business intelligence, machine learning, and real-time data processing. AWS values diverse experiences and provides an inclusive environment with strong support for professional growth and work-life harmony. The role involves collaboration with various AWS teams, including sales, pre-sales, training, and support, to help customers maximize their use of AWS services. This is an excellent opportunity for someone looking to make a significant impact in cloud computing while working with a leader in the industry.

Last updated a month ago

Responsibilities For Data Architect - Professional Services

  • Help customers define and implement data architectures (Data Lake, Lake House, Data Mesh, etc)
  • Deliver on-site technical assessments with partners and customers
  • Create packaged Data & Analytics service offerings
  • Engage with business and technology stakeholders to create data-driven enterprise vision
  • Create new artifacts that promotes code reuse
  • Collaborate with AWS teams to help partners and customers learn AWS services
  • Travel to client locations up to 50% when needed

Requirements For Data Architect - Professional Services

Python
  • 3+ years of experience in cloud architecture and implementation, preferably with AWS
  • 3+ years of database experience (SQL, NoSQL, Hadoop, Spark, Kafka, Kinesis)
  • 3+ years experience delivering cloud projects or cloud based solutions
  • Able to communicate effectively in English
  • Bachelor's degree in Business, Computer Science, or related field

Benefits For Data Architect - Professional Services

Medical Insurance
Dental Insurance
Vision Insurance
  • Mentorship and career growth opportunities
  • Work-life harmony
  • Employee-led affinity groups
  • Inclusive team culture
  • Ongoing learning experiences
  • Career advancement resources

Interested in this job?

Jobs Related To Amazon Data Architect - Professional Services

Sr. Customer Success Engineer, Amazon Redshift

Senior Customer Success Engineer role at AWS Redshift, combining data warehouse expertise with customer engagement, offering competitive compensation and benefits.

Sr. Business Intelligence Engineer, AMZL Strategic Planning

Senior Business Intelligence Engineer position at Amazon Logistics focusing on analytics, data science, and strategic planning.

Business Intelligence Engineer, Amazon Customer Service

Senior Business Intelligence Engineer role at Amazon, focusing on social media customer service analytics, requiring 5+ years SQL experience and offering $117,300-$202,800 salary range.

Business Intelligence Engineer, AWS Infrastructure Services (AIS)

Senior Business Intelligence Engineer role at AWS Infrastructure Services, focusing on supply chain analytics and data-driven decision making with 6+ years experience required.

Business Intelligence Engineer, Advertising Trust Data

Senior Business Intelligence Engineer role at Amazon focusing on advertising trust data analytics and insights