Sr. Genai Specialist Sa , Solutions Architecture

Amazon Amazon · Big Tech · TPE, Taiwan +1 · Solutions Architect

Senior Specialist Solutions Architect focused on Generative AI at AWS. This role involves working with enterprise customers to design and implement production-ready GenAI solutions, including LLM-powered applications, agentic systems, and multi-modal AI. Responsibilities include technical advisory, hands-on implementation guidance, solution design, and customer engagement, with a focus on converting AI ambition into scalable, production-ready solutions.

What you'd actually do

  1. Build technical relationships with enterprise customers as their trusted advisor on GenAI/ML adoption, designing cloud-native architectures for LLM-powered applications, agentic systems, and multi-modal AI solutions.
  2. Guide customers through end-to-end GenAI solution development — from proof-of-concept to production deployment — including model selection, prompt engineering, RAG implementation, fine-tuning, evaluation, and inference optimization.
  3. Create scalable reference architectures for common GenAI patterns including conversational AI, intelligent document processing, code generation, knowledge assistants, and autonomous agents.
  4. Help customers design and deploy LLM-powered agents and multi-agent orchestration systems using AWS services such as Amazon Bedrock Agents, AgentCore, and custom agent frameworks.
  5. Interact at the CxO/VP level as well as with developers and ML engineers, earning trust through technical depth and thought leadership.

Skills

Required

  • Bachelor's degree or above in computer science, machine learning, engineering, or related fields
  • 7+ years of in design/implementation/operations/consulting with distributed applications experience
  • Experience communicating across technical and non-technical audiences, including executive level stakeholders or clients
  • 5+ years of customer-facing experience in design and implementation of production AI/ML systems.
  • Hands-on experience implementing GenAI solutions
  • Integration of LLMs / multi-modal foundation models in large-scale systems
  • Fine-tuning LLMs (LoRA, QLoRA, instruction tuning, RLHF)
  • Retrieval-Augmented Generation (RAG) using embeddings, vector databases, and semantic search
  • Agentic workflows and tool-use patterns
  • Deployment, distributed inference, and optimization of LLMs
  • Prompt engineering and context management
  • FM evaluation and benchmarking
  • Experience with AWS AI/ML ecosystem (Amazon Bedrock, Amazon SageMaker, AgentCore) or equivalent cloud AI platforms to set up secure, production-grade AI environments.
  • Strong communication skills in both Mandarin Chinese and English (written and verbal).

Nice to have

  • Master's degree or above in computer science, mathematics, statistics, machine learning or equivalent quantitative field, or PhD
  • Production GenAI track record: Demonstrated experience shipping GenAI/LLM applications to production at scale, not just POC/prototype stage.
  • Advanced fine-tuning expertise: Experience with LoRA/QLoRA, instruction tuning, RLHF/DPO, and domain adaptation of foundation models.
  • Agentic AI depth: Practical experience building multi-step, tool-using LLM agents with orchestration frameworks (e.g., LangChain, LlamaIndex, Amazon Bedrock Agents, Strands Agents SDK, or custom implementations).
  • MLOps & LLMOps: Experience implementing CI/CD pipelines for ML/GenAI models, including model versioning, A/B testing, monitoring, and automated evaluation.
  • Vector database expertise: Hands-on experience with vector stores (e.g., Amazon OpenSearch Serverless, PostgreSQL pgvector, Pinecone, Weaviate) and embedding optimization.
  • Multi-modal AI: Experience working with vision-language models, image generation, or audio/video understanding models.
  • Security & Governance: Experience architecting AI systems with guardrails, responsible AI practices, data privacy controls, and compliance requirements in enterprise settings.
  • Open-source contributions: Active participation in AI/ML open-source communities or published research in relevant fields.
  • AWS Certifications: AWS Machine Learning Specialty, AWS Solutions Architect Professional, or equivalent certifications.
  • 10+ years of total industry experience in software engineering, AI/ML, or cloud architecture.

What the JD emphasized

  • production AI/ML systems
  • shipping GenAI/LLM applications to production at scale
  • production-grade AI environments

Other signals

  • customer-facing
  • production deployment
  • GenAI solutions
  • AWS services