Senior Kafka Cloud Platform Engineer

Intapp
uk remote
8 months ago
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Intapp is seeking a dynamic professional to manage and enhance our Kafka, OpenSearch, and Redis infrastructures, ensuring high availability, reliability, and scalability. In this pivotal role, you will be instrumental in configuring Kafka for optimal data ingestion and streaming, and developing Kafka Connect connectors. Your expertise will extend to integrating Kafka into existing systems and applications and deploying and managing OpenSearch clusters for real-time data indexing and Redis clusters for efficient caching. This role is essential for maintaining our competitive edge by leveraging the latest technologies in real-time data processing and analysis.

What you will do:

Design, deploy, and maintain Kafka, OpenSearch, and Redis clusters to meet business needs.

Configure systems for efficient data processing, ingestion, and streaming.

Develop connectors and integrations for seamless data flow between various sources and systems.

Monitor clusters, identifying and resolving performance issues proactively.

Implement robust security measures and access controls.

Automate infrastructure deployment, scaling, and management.

Keep abreast of industry developments to drive continuous improvement.

What you will need:

Proven experience with Kafka, Elasticsearch/OpenSearch, and Redis in production environments.

In-depth knowledge of their architectures, concepts, and internals.

Skilled in Kafka administration, including configuration, tuning, and monitoring.

Experience with Kafka ecosystem components such as Kafka Connect and Kafka MirrorMaker.

Proficiency in deploying and optimizing OpenSearch and Redis clusters.

Familiarity with DevOps practices and infrastructure automation tools.

Understanding of machine learning concepts and techniques.

Strong communication skills and a collaborative approach to problem-solving.

Ability to mentor and lead within a team setting, fostering a positive work environment and driving team success.

What you'll gain at Intapp:

Our culture at Intapp emphasizes accountability, responsibility, and growth. We support each other in a positive, open atmosphere that fosters creativity, approachability, and teamwork. We’re committed to creating a modern work environment that’s connected yet flexible, supporting both professional success and work-life balance. In return for your passion, commitment, and collaborative approach, we offer:

Competitive base salary plus variable compensation and equity

Generous paid parental leave, including adoptive leave

Traditional comprehensive benefits, plus:

Generous Paid Time Off

Tuition reimbursement plan

Family Formation benefit offered by Carrot

Wellness programs and benefits provided by Modern Health

Paid volunteer time off and donation matching for the causes you care about

Opportunities for personal growth and professional development supported by a community of talented professionals

An open, collaborative environment where your background and contributions are valued

Experience at a growing public company where you can make an impact and achieve your goals

Open offices and kitchens stocked with beverages and snacks

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