Sr Engineer

Posted:
6/23/2026, 6:20:18 PM

Location(s):
Bengaluru, Karnataka, India ⋅ Karnataka, India

Experience Level(s):
Senior

Field(s):
Software Engineering

About us:

Working at Target means helping all families discover the joy of everyday life. We bring that vision to life through our values and culture. Learn more about Target here.

As a Senior Engineer, you will lead the design and development of platform-level capabilities for operational intelligence, reliability engineering, and automation across enterprise collaboration ecosystems. You will work on telemetry-driven systems that identify what is unhealthy, why it is happening, and what should be done next — while building automation and architecture that scales across multiple platforms and partners

Key Responsibilities

  • Own the design and delivery of critical backend and analytics platform components
  • Build scalable telemetry, analytics, and automation systems
  • Define operational metrics, health signals, and reliability indicators
  • Drive platform evolution from provider-specific analytics to reusable cross-platform capabilities
  • Enable reliable operations through engineering guardrails, automation, and data-backed workflows
  • Partner cross-functionally with Endpoint Engineering, Device Management, Security, and collaboration platform stakeholders
  • Mentor other engineers and raise technical quality across the team

Required Qualifications

  • Strong backend engineering experience in Python or similar technologies
  • Deep SQL, data processing, and systems design experience
  • Experience designing scalable services, APIs, or data-intensive platforms
  • Strong problem-solving ability across complex operational systems
  • Experience dealing with ambiguity and translating business/operational problems into engineering solutions

Preferred Qualifications

  • Experience in observability, telemetry platforms, SRE, reliability engineering, or operational analytics
  • Experience with anomaly detection, performance monitoring, and report automation
  • Familiarity with enterprise collaboration platforms and their operational signals
  • Strong practical understanding of LLM-enabled systems, including:
    • model selection for latency vs reasoning
    • token/cost optimization
    • prompt and response architecture
    • evaluation and safety considerations
    • production design patterns for AI-assisted workflows