Member of Technical Staff- AIops
Pure StorageBangalore, India
Full Time
Posted January 29, 2026
Apply Now
Application opens on company website
Job Description
A Software Engineer within the AI Applications team responsible for building and deploying scalable AI infrastructure, including platform self-service tools, event-driven pipelines, and monitoring systems to support high-velocity AI experimentation and enterprise-grade stability.
Key Responsibilities
- Architect platform self-service APIs and abstractions for AI environment provisioning
- Develop internal tools and AI agents to automate infrastructure analysis and system optimization
- Design and implement asynchronous, event-driven AI data pipelines using Kafka or RabbitMQ
- Standardize AI deployment processes with Docker and Kubernetes to ensure reproducibility
- Implement advanced monitoring for AI-specific metrics to ensure system reliability and performance
Requirements
- Extensive experience in Platform Engineering with a focus on writing clean, testable Go and Python code to manage complex cloud environments and GPU workloads.
- Practical experience integrating LLM APIs, managing Vector Databases, and optimizing Retrieval-Augmented Generation (RAG) pipelines and distributed caches such as Redis.
- Deep understanding of Go's goroutines and channels to handle the massive data throughput required by Kafka-driven AI pipelines.
- Proven ability to manage Kubernetes (K8s) at scale, specifically extending the K8s API with custom controllers to make clusters AI-aware and managing specialized NVMe storage.
- Sophisticated knowledge of asynchronous systems, knowing when to leverage Kafka for streaming versus RabbitMQ for complex task routing.
- Ability to create internal APIs and Go-based abstractions that enable engineers to provision AI-ready environments including model weights, vector databases, and event streams with a single command.
- Experience developing internal tools and AI Agents using Go and Python to automate root-cause analysis of infrastructure failures and proactively optimize system performance.
- Experience designing and implementing asynchronous processing pipelines using Kafka or RabbitMQ to manage high-volume data ingestion for RAG systems and real-time model demand.
- Experience standardizing AI deployments using Docker and Kubernetes to ensure models, prompts, and code are perfectly synchronized across all environments.
- Implementing advanced monitoring in Prometheus and Grafana to track AI-specific metrics such as token latency and model drift, ensuring zero-downtime reliability under heavy inference loads.
- Ability to work from the Bengaluru office in accordance with company policies, unless on PTO, work travel, or other approved leave.
Benefits & Perks
Flexible time off
Wellness resources
Company-sponsored team events
In-office work environment in Bengaluru
Support for accommodations for candidates with disabilities
Inclusive and diverse workplace culture
Ready to Apply?
Join Pure Storage and make an impact in renewable energy
Stay Updated on Sustainability Jobs
Get the latest renewable energy jobs and career tips delivered to your inbox.
Job Alerts
Get notified about new sustainability jobs
More jobs at Pure Storage
Senior Governance, Risk Compliance Analyst
Pure Storage
NEW
Lehi
Full Time
20h
$131k-197k
Product Quality Engineer
Pure Storage
NEW
Houston
Full Time
20h
$134k-201k
Territory Account Executive - Southeast
Pure Storage
NEW
Chicago
Full Time
20h
$63k-95k
More jobs in Bangalore, India
Customer Support Engineer-Level 1
Celonis
NEW
Bangalore
Full Time
20h
Senior Value Engineer - CMT
Celonis
Bangalore
Full Time
4d
Value Engineer - DACH
Celonis
Bangalore
Full Time
4d