Role: Lead Data Engineer
Work Location: Role: Lead Data Engineer
Work Location: Phoenix, AZ – Local Only
Skills:
• Google Cloud Platform (GCP
• Hadoop
• HBase
• Kafka
• Redis
• Elasticsearch
• Map RDB or similar distributed data platforms
• Python development
Responsibilities
• Lead the design, implementation, and optimization of enterprise real-time and batch data platforms
• Provide technical leadership and mentorship to data engineering teams supporting large-scale data ecosystems
• Drive modernization efforts leveraging Google Cloud Platform (GCP) technologies
• Design and support scalable data pipelines for ingestion, processing, storage, and analytics
• Collaborate with architecture, infrastructure, security, and analytics teams to deliver enterprise data solutions
• Support and optimize distributed data platforms including streaming, search, caching, and data processing technologies
• Develop automation, monitoring, and operational processes to improve platform reliability and performance
• Partner with stakeholders to define platform roadmaps and future-state architecture strategies
• Evaluate emerging technologies and support AI, machine learning, and GenAI-related initiatives
• Establish engineering best practices for scalability, performance, security, and operational excellence
Required Qualifications
• 10+ years of experience in data engineering, platform engineering, or big data environments
• 8+ years of experience leading teams supporting enterprise-scale batch and real-time data platforms
• Strong hands-on experience with:
o Hadoop
o HBase
o Kafka
o Redis
o Elasticsearch
o MapRDB or similar distributed data platforms
• 3+ years of experience with Google Cloud Platform (GCP), including:
o Bigtable
o Dataproc
o Pub/Sub
o Composer
• Strong Python development experience
• Experience designing and supporting large-scale distributed systems and real-time data architectures
• Proven ability to lead technical initiatives and mentor engineering teams
• Strong analytical, troubleshooting, and communication skills
Preferred Qualifications
• Experience supporting AI, machine learning, or Generative AI initiatives
• GenAI certifications or related technical training
• Experience with enterprise observability and monitoring platforms, including ELK Stack
• Familiarity with cloud-native architecture and platform engineering best practices
• Experience supporting highly available, mission-critical production environments
• Knowledge of infrastructure automation and DevOps methodologies
What We\'re Looking For
• Strong technical leader with a passion for modern data platforms and cloud technologies
• Ability to drive strategic platform initiatives while remaining hands-on when needed
• Experience leading cross-functional teams in complex enterprise environments
• Strong communication skills and ability to influence technical direction
• Commitment to innovation, operational excellence, and continuous improvement
– Local Only
Skills:
• Google Cloud Platform (GCP
• Hadoop
• HBase
• Kafka
• Redis
• Elasticsearch
• Map RDB or similar distributed data platforms
• Python development
Responsibilities
• Lead the design, implementation, and optimization of enterprise real-time and batch data platforms
• Provide technical leadership and mentorship to data engineering teams supporting large-scale data ecosystems
• Drive modernization efforts leveraging Google Cloud Platform (GCP) technologies
• Design and support scalable data pipelines for ingestion, processing, storage, and analytics
• Collaborate with architecture, infrastructure, security, and analytics teams to deliver enterprise data solutions
• Support and optimize distributed data platforms including streaming, search, caching, and data processing technologies
• Develop automation, monitoring, and operational processes to improve platform reliability and performance
• Partner with stakeholders to define platform roadmaps and future-state architecture strategies
• Evaluate emerging technologies and support AI, machine learning, and GenAI-related initiatives
• Establish engineering best practices for scalability, performance, security, and operational excellence
Required Qualifications
• 10+ years of experience in data engineering, platform engineering, or big data environments
• 8+ years of experience leading teams supporting enterprise-scale batch and real-time data platforms
• Strong hands-on experience with:
o Hadoop
o HBase
o Kafka
o Redis
o Elasticsearch
o MapRDB or similar distributed data platforms
• 3+ years of experience with Google Cloud Platform (GCP), including:
o Bigtable
o Dataproc
o Pub/Sub
o Composer
• Strong Python development experience
• Experience designing and supporting large-scale distributed systems and real-time data architectures
• Proven ability to lead technical initiatives and mentor engineering teams
• Strong analytical, troubleshooting, and communication skills
Preferred Qualifications
• Experience supporting AI, machine learning, or Generative AI initiatives
• GenAI certifications or related technical training
• Experience with enterprise observability and monitoring platforms, including ELK Stack
• Familiarity with cloud-native architecture and platform engineering best practices
• Experience supporting highly available, mission-critical production environments
• Knowledge of infrastructure automation and DevOps methodologies
What We\'re Looking For
• Strong technical leader with a passion for modern data platforms and cloud technologies
• Ability to drive strategic platform initiatives while remaining hands-on when needed
• Experience leading cross-functional teams in complex enterprise environments
• Strong communication skills and ability to influence technical direction
• Commitment to innovation, operational excellence, and continuous improvement
APPLY NOWClick the button above to submit your application
Application TipsThis job opportunity was posted on corptocorp.org You can also Check Top 200+ C2C jobs here
© 2026 Corp to Corp. All rights reserved.