Role Overview We are looking for a Senior Backend/Data Platform Engineer to design and build scalable audience computation customer profile serving and real-time activation systems. This role focuses on large-scale data processing streaming architectures and low-latency data access to enable advanced customer segmentation and activation.
Key Responsibilities
Audience & Segmentation Systems Build scalable audience computation and segmentation services for large datasets
Customer Profile & Serving Layer Build and optimize customer profile serving systems for low-latency access
Enable real-time profile lookup and enrichment for downstream applications Real-Time Activation & Streaming.
Develop real-time activation pipelines using Kafka / Azure Event Hubs.
Enable event-driven data flows for audience activation into downstream systems.
Ensure scalable and reliable stream processing architectures.
Data Platform & Performance Optimization Optimize audience preview (low-latency queries) and materialization (batch pipelines) Work with: Databricks / Spark for large-scale processing Delta Lake for storage and reliability.
Click House / Pinot for high-performance analytical queries Use Redis for caching and fast data access.
Backend & API Development Build scalable APIs and services using Python (FastAPI preferred) Design robust microservices and distributed systems
Ensure high performance availability and reliability Cloud & DevOps Deploy and manage services on Kubernetes / AKS Implement CI/CD monitoring and scaling strategies
Ensure fault-tolerant and resilient systems
Required Skills Strong Python with backend frameworks (FastAPI preferred) Experience with Spark Databricks Strong knowledge of Delta Lake and ClickHouse/Pinot Hands-on with Kafka / Event Hubs and Redis Strong understanding of distributed systems and streaming architectures Experience with Kubernetes / AKS Nice to Have Experience with Customer Data Platforms (CDP) / audience systems Exposure to identity resolution and customer 360 solutions Experience with large-scale datasets (TB/PB) Key Expectations Strong ownership of backend data platform components Ability to design low-latency high-scale systems Experience in real-time and batch data processing Strong problem-solving and system optimization skills Business Impact Enable scalable audience segmentation customer profile serving and real-time activation driving personalization and engagement at scale.
Job Description: Role Overview We are looking for a Senior Backend/Data Platform Engineer to design and build scalable audience computation customer profile serving and real-time activation systems. This role focuses on large-scale data processing streaming architectures and low-latency dat...
Job Description:
Role Overview We are looking for a Senior Backend/Data Platform Engineer to design and build scalable audience computation customer profile serving and real-time activation systems. This role focuses on large-scale data processing streaming architectures and low-latency data access to enable advanced customer segmentation and activation.
Key Responsibilities
Audience & Segmentation Systems Build scalable audience computation and segmentation services for large datasets
Customer Profile & Serving Layer Build and optimize customer profile serving systems for low-latency access
Enable real-time profile lookup and enrichment for downstream applications Real-Time Activation & Streaming.
Develop real-time activation pipelines using Kafka / Azure Event Hubs.
Enable event-driven data flows for audience activation into downstream systems.
Ensure scalable and reliable stream processing architectures.
Data Platform & Performance Optimization Optimize audience preview (low-latency queries) and materialization (batch pipelines) Work with: Databricks / Spark for large-scale processing Delta Lake for storage and reliability.
Click House / Pinot for high-performance analytical queries Use Redis for caching and fast data access.
Backend & API Development Build scalable APIs and services using Python (FastAPI preferred) Design robust microservices and distributed systems
Ensure high performance availability and reliability Cloud & DevOps Deploy and manage services on Kubernetes / AKS Implement CI/CD monitoring and scaling strategies
Ensure fault-tolerant and resilient systems
Required Skills Strong Python with backend frameworks (FastAPI preferred) Experience with Spark Databricks Strong knowledge of Delta Lake and ClickHouse/Pinot Hands-on with Kafka / Event Hubs and Redis Strong understanding of distributed systems and streaming architectures Experience with Kubernetes / AKS Nice to Have Experience with Customer Data Platforms (CDP) / audience systems Exposure to identity resolution and customer 360 solutions Experience with large-scale datasets (TB/PB) Key Expectations Strong ownership of backend data platform components Ability to design low-latency high-scale systems Experience in real-time and batch data processing Strong problem-solving and system optimization skills Business Impact Enable scalable audience segmentation customer profile serving and real-time activation driving personalization and engagement at scale.