Senior Engineering Manager – Delivery

10 years

0 Lacs

Posted:3 days ago| Platform: Linkedin logo

Apply

Work Mode

On-site

Job Type

Full Time

Job Description

About Xenonstack

XenonStack is the fastest-growing

Data and AI Foundry for Agentic Systems

, enabling enterprises to design, deploy, and scale AI agents that deliver measurable business outcomes.

We Build Enterprise-grade Platforms Across The Agentic Stack

  • ElixirData – Context OS for Agentic Intelligence
A unified context layer powering memory, reasoning, grounding, and decision intelligence for AI agents across complex enterprise workflows.
  • NexaStack AI – Agentic Infrastructure Automation Platform
A cloud-native platform for deploying, operating, observing, and scaling agentic workloads, inference pipelines, and AI infrastructure with security, reliability, and efficiency.
  • Akira AI – Agentic AI Platform
An enterprise platform for building, orchestrating, governing, and operating AI agents that automate real-world business processes at scale.Our mission is to

accelerate the world’s transition to AI + Human Intelligence

by making agentic systems

reliable, responsible, and enterprise-ready

.

THE OPPORTUNITY

We are seeking a

Senior Engineering Manager – Delivery

to own

end-to-end product delivery execution

across our Agentic AI platforms.This role is accountable for

predictable releases, delivery rigor, and production stability

, orchestrating execution across

Product, AI Engineering, and AI Quality & Reliability

—without owning architecture, product prioritization, or quality standards.If you excel at

execution leadership, delivery discipline, and cross-functional alignment

, this role is designed for you.

ROLE MISSION

Ensure that

what is committed gets delivered

—on time, with confidence, and with minimal rework—while continuously improving delivery velocity, stability, and execution maturity.

Key Responsibilities

  • End-to-End Delivery Ownership
  • Own delivery execution from commitment → release → post-release stabilization.
  • Drive delivery planning, sequencing, and dependency management across teams.
  • Ensure delivery plans are realistic, transparent, and accountable.
  • Release Planning & Coordination
  • Lead release planning, cut decisions, and timelines across multiple teams.
  • Coordinate cross-platform releases and resolve inter-team dependencies.
  • Own release calendars, communication plans, and stakeholder updates.
  • Delivery Predictability & Risk Management
  • Own delivery predictability across scope, timelines, and confidence.
  • Identify risks early and proactively drive mitigation plans.
  • Ensure no last-minute surprises for leadership or customers.
  • Go / No-Go Readiness
  • Co-own release readiness decisions with the Head of AI Quality & Reliability.
  • Ensure scope completeness, known risk visibility, rollback readiness, and monitoring plans.
  • Provide final delivery readiness recommendations.
  • Cross-Functional Alignment
  • Act as the delivery integrator across:
    • Product Management (what & why)
    • AI Engineering (how)
    • AI Quality & Reliability (confidence & correctness)
  • Resolve execution friction and unblock teams proactively.
  • People Leadership (Delivery Track)
  • Lead and mentor delivery-focused Engineering Managers and Program Leads.
  • Build a culture of ownership, urgency, and execution excellence.
  • Drive performance management and career development for delivery roles.
  • Delivery Metrics & Continuous Improvement
  • Own and report delivery KPIs, including:
    • On-time delivery
    • Escaped defects
    • Rework rate
    • Release stability
    • Cycle time and throughput
  • Use metrics to improve systems and processes—not to assign blame.
  • AI-Driven Delivery Enablement
  • Champion AI adoption across delivery workflows:
    • AI-assisted planning and estimation
    • Automated readiness and release checks
    • Intelligent risk detection
  • Partner with AgentOps and tooling teams to continuously improve delivery velocity and quality.

Skills & Qualifications

Must-Have

  • 10+ years of engineering experience, with 5+ years in engineering management or delivery leadership roles.
  • Proven track record of delivering complex, multi-team enterprise software predictably.
  • Strong experience with Agile, Scrum, and scaled delivery frameworks.
  • Excellent risk management, planning, and stakeholder communication skills.
  • Ability to operate calmly under pressure and bring clarity in ambiguous situations.

Good-to-Have

  • Experience delivering AI/ML or platform products.
  • Familiarity with cloud-native architectures and DevOps practices.
  • Exposure to enterprise domains such as BFSI, GRC, Security, or FinOps.

WHY SHOULD YOU JOIN US?

Mock Interview

Practice Video Interview with JobPe AI

Start DevOps Interview
cta

Start Your Job Search Today

Browse through a variety of job opportunities tailored to your skills and preferences. Filter by location, experience, salary, and more to find your perfect fit.

Job Application AI Bot

Job Application AI Bot

Apply to 20+ Portals in one click

Download Now

Download the Mobile App

Instantly access job listings, apply easily, and track applications.

coding practice

Enhance Your Skills

Practice coding challenges to boost your skills

Start Practicing Now

RecommendedJobs for You