Über
Contract Type:
W2 Only
Duration:
6+ Months
Location: Austin, TX (#LI - Hybrid)
Pay Range: $65-$70/Hr. on W2
Job Summary:
This role involves migrating complex hierarchical data models into a production-ready enterprise data warehouse. You will analyze existing data structures and logic, re-engineer them into optimized tables, and build robust data pipelines. The successful candidate will ensure high data quality and smooth integration into the current data platform.
Key Responsibilities: Analyze and interpret existing HDM tables and transformation logic. Design and implement optimized Data Warehouse table structures. Develop and maintain automated ETL/ELT data pipelines. Create comprehensive documentation for data transformation processes. Collaborate with stakeholders to validate data migration requirements.
Must-Have Skills:
Proficient in SQL for complex data analysis. Strong Python skills for data processing and automation. Experience with data warehousing platforms and best practices.
Industry Experience:
Experience in technology or e-commerce industries is preferred.
ABOUT AKRAYA
Akraya is an award-winning IT staffing firm consistently recognized for our commitment to
excellence and a thriving work environment . Most recently, we were recognized Stevie Employer of the Year 2025, SIA Best Staffing Firm to work for 2025, Inc 5000 Best Workspaces in US (2025 & 2024) and Glassdoor's Best Places to Work (2023 & 2022)!
Industry Leaders in Tech Staffing
As Talent solutions provider for Fortune 100 Organizations, Akraya's industry recognitions solidify our leadership position in the IT staffing space.
We don't just connect you with great jobs, we connect you with a workplace that inspires!
Join Akraya Today!
Let us lead you to your dream career and experience the Akraya difference. Browse our open positions and join our team!
Sprachkenntnisse
- English
Hinweis für Nutzer
Dieses Stellenangebot stammt von einer Partnerplattform von TieTalent. Klick auf „Jetzt Bewerben”, um deine Bewerbung direkt auf deren Website einzureichen.