PwC

AI Solution Architect

PwC  •  Singapore, SG (Onsite)  •  12 hours ago
Apply
AI can make mistakes so check important info. Chat history is never stored.
80
AI Success™

Job Description

Line of Service

Assurance

Industry/Sector

Not Applicable

Specialism

Risk

Management Level

Manager

& Summary

At PwC, we help clients build trust and reinvent so they can turn complexity into competitive advantage. We’re a tech-forward, people-empowered network with more than 364,000 people in 136 countries and 137 territories. Across audit and assurance, tax and legal, deals and consulting, we help clients build, accelerate, and sustain momentum. Find out more at www.pwc.com.

Core Responsibilities

  • Lead technical solutioning in client pre-sales and discovery across all sectors — translating business problems into AI architectures (RAG pipelines, agentic workflows, SDLC automation, data platforms, model risk frameworks)

  • Own the technical sections of client proposals and engagement scoping documents, including architecture diagrams and implementation sequencing

  • Build and maintain reusable accelerators and demo assets deployable within 48 hours for client workshops across all use cases

  • Lead or co-lead technical delivery on AI pilot engagements from architecture through to production handover

  • Stay current on the AI tooling landscape — with particular depth in the Anthropic/Claude ecosystem — and translate into client-relevant recommendations

  • Advise on AI governance and responsible AI design, particularly for FS clients subject to MAS regulatory scrutiny on model risk, explainability, and audit trails

Must-Have Skills

  • Python proficiency — LLM integration, API development, data engineering, and automation scripting

  • Cloud AI platforms — Azure OpenAI Service, AWS Bedrock, or GCP Vertex AI (at least one in depth)

  • LLM orchestration — LangChain, LlamaIndex, or equivalent; multi-agent frameworks (CrewAI, AutoGen, or similar)

  • Vector databases — Pinecone, Weaviate, Chroma, pgvector, or equivalent

  • Containerisation and CI/CD — Docker, basic Kubernetes, GitHub Actions

  • 5-14 years enterprise technology experience; minimum 2 years in production AI delivery

Anthropic / Claude Ecosystem — Strongly Preferred

Given the practice's primary AI platform orientation, depth in the Anthropic/Claude ecosystem is a material differentiator. Candidates with hands-on production experience across multiple Claude capabilities will be prioritised.

  • Claude API — tool use, computer use, vision, and document processing in production applications

  • Claude Code — agentic coding workflows, CLI integration, MCP server configuration, and multi-agent software development pipelines

  • Claude claude.ai and Projects — enterprise deployment patterns, system prompt design, memory and context management

  • Anthropic prompt engineering — chain-of-thought elicitation, XML-structured outputs, multi-turn conversation design, and retrieval-augmented prompting

  • Claude model family knowledge — Opus, Sonnet, Haiku trade-offs for latency, cost, and capability in production architectures

  • MCP (Model Context Protocol) — server implementation, tool registration, and integration with enterprise data sources (Google Drive, Gmail, Slack, CRMs)

  • Anthropic API batch processing, streaming, and rate limit management for enterprise-scale deployments

  • AI safety and responsible AI design aligned with Anthropic's principles

Broader AI Tooling — Preferred

  • Local LLM deployment — Ollama, Qwen, Mistral, Llama on Apple Silicon or equivalent edge hardware for air-gapped or data-sovereign deployments

  • GitHub Copilot, Cursor, or equivalent AI-assisted development environments — production use in SDLC automation contexts

  • Open-source agent frameworks — LangGraph, AutoGen, CrewAI, or equivalent for multi-agent orchestration

  • SDLC and DevTest automation — AI-assisted test generation, code review pipelines, and CI/CD integration

  • Security and compliance design — data residency, air-gapped deployment patterns, PDPA and MAS regulatory considerations for Singapore deployments

  • Front-end familiarity — React or equivalent for building lightweight internal tools and executive dashboards

Education (if blank, degree and/or field of study not specified)

Degrees/Field of Study required:Degrees/Field of Study preferred:

Certifications (if blank, certifications not specified)

Required Skills

Optional Skills

Accepting Feedback, Accepting Feedback, Active Listening, AI Implementation, Analytical Thinking, C++ Programming Language, Coaching and Feedback, Communication, Complex Data Analysis, Creativity, Data Analysis, Data Infrastructure, Data Integration, Data Modeling, Data Pipeline, Data Quality, Deep Learning, Embracing Change, Emotional Regulation, Empathy, GPU Programming, Inclusion, Intellectual Curiosity, Java (Programming Language), Learning Agility {+ 30 more}

Desired Languages (If blank, desired languages not specified)

Travel Requirements

Not Specified

Available for Work Visa Sponsorship?

Yes

Government Clearance Required?

No

Job Posting End Date

PwC

About PwC

At PwC, we help clients drive their companies to the leading edge. We’re a tech-forward, people-empowered network with more than 370,000 people in 149 countries. Across audit and assurance, tax and legal, deals and consulting we help build, accelerate and sustain momentum. Find out more at www.pwc.com.

PwC: Audit and assurance, consulting and tax services

PwC refers to the PwC network and/or one or more of its member firms, each of which is a separate legal entity. Content on this page has been prepared for general information only and is not intended to be relied upon as accounting, tax or professional advice. Please reach out to your advisors for specific advice.

Industry
Consulting & Advisory
Company Size
10,000+ employees
Headquarters
, GB
Year Founded
Unknown
Website
pwc.com
Social Media