Kmstechnology1

Kmstechnology1

AI Solutions Architect (Software Engineering Transformation Lead)

Role

AI Solutions Architect (Software Engineering Transformation Lead)

Job type

Full-time

Posted

2 weeks ago

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Salary

Not disclosed by employer

Job description

AI-Native Engineering Practice - Technical Ownership:

  • Own and continuously evolve KMS's AI-native SDLC operating model at KMS: agent workflow designs, verification gates, context management standards, and eval frameworks

  • Build and lead multi-agent systems using orchestration layers such as Claude Code, GitHub Copilot Workspace, Cursor, LangGraph, CrewAI, or equivalent — from prototype to production

  • In collaboration with the Director of Engineering, contribute to and help maintain KMS's AI toolchain selection criteria — evaluating tools with engineering rigor, not hype — and publishing internal guidance on when AI helps and when it hurts

  • Establish prompt engineering standards, agent evaluation (evals) loops, and AI output quality gates across the delivery organization

Capability & Standards Leadership

  • Prior experience in a lead, principal, or staff engineer role with demonstrated cross-team influence 

  • Experience in outsourcing, consulting, or multi-client delivery environments

  • Track record of building or leading an internal community of practice, guild, or AI adoption program

  • Develop and continuously evolve KMS's AI-native SDLC playbook — standards, workflow templates, case studies, and guardrails that delivery teams can adopt immediately

  • Design and lead internal upskilling programs (workshops, pairing) that move engineers from AI-assisted to AI-native working patterns

  • Track the AI capability frontier — model improvements, new agent frameworks, emerging risks — and translate signals into timely updates to KMS's practices

Client Delivery

  • Work closely alongside KMS Delivery Teams — as an AI transformation advisor and execution partner — identifying the highest-value automation opportunities across the SDLC and coordinating with the team to bring them to life

  • Design and deploy agent-orchestrated workflows tailored to each client's stack, team maturity, and delivery context — with measurable ROI

  • Build business cases for AI-native adoption with clients and account managers, framing the value in terms of velocity, quality, and cost

  • Represent KMS's AI-native engineering capabilities in client conversations, QBRs, and RFP responses — acting as a credible technical authority

Core Engineering Foundation

  • 8+ years of professional software engineering, with a proven track record of leading technical initiatives that span multiple teams or systems 

  • Deep hands-on experience across the full SDLC: from requirements and architecture through testing, deployment, and production operations 

  • Demonstrated ability to lead technical direction — setting standards, reviewing architecture decisions, and influencing without direct authority

  • Strong command of software architecture principles: system decomposition, API design, scalability, observability, and failure mode reasoning

  • Proficiency in at least one primary language: Python, TypeScript/JavaScript, Java, .Net or Go — with experience across multiple layers of the stack

AI & Agentic Systems Fluency

  • Proven, production-grade experience with AI coding agents as a core part of your daily workflow 

  • Strong understanding of LLM API integration in production: context window management, latency and cost tradeoffs, model selection criteria, fallback strategies, and output reliability patterns

  • Experience or strong interest in multi-agent orchestration patterns: task decomposition, agent communication, tool use, memory, and eval loops

  • Working knowledge of RAG architectures, embedding strategies, and how to ground AI agents in domain-specific, proprietary knowledge bases

  • Ability to design and run AI evals: you can define quality metrics, build evaluation datasets, detect regressions, and use quantitative signals to improve agent behaviour over time

Nice to have

  • Experience with agentic frameworks: LangGraph, CrewAI, AutoGen, or similar orchestration patterns

  • MLOps knowledge: model deployment, monitoring, drift detection, A/B testing in production

  • Familiarity with AI security risks: prompt injection, adversarial inputs, data leakage in agentic contexts

Perks You'll Enjoy 

  • Working in one of the Best Places to Work in Vietnam
  • Building large-scale & global software products
  • Working & growing with Passionate & Talented Team
  • Diverse careers opportunities with Software Services, Software Product Development, IT Solutions & Consulting
  • Flexible working time 
  • Various training on hot-trend technologies, best practices and soft skills
  • Company trip, big annual year-end party every year, team building, etc.
  • Fitness & sport activities: football, tennis, table-tennis, badminton, yoga, swimming…
  • Joining community development activities: 1% Pledge, charity every quarter, blood donation, public seminars, career orientation talks,…
  • Free in-house entertainment facilities (foosball, ping pong, gym…), coffee, and snack (instant noodles, cookies, candies…)

And much more, join us and let yourself explore other fantastic things!

Talent Acquisition Team    ► Hotline: (84) 938 118 997 ► Email: career@kms-technology.com

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