MCPNew: now works with Claude & AI assistants
Kdci1

Kdci1

AI Solutions Architect

Company

Kdci1

Role

AI Solutions Architect

Job type

Full-time

Found on Mokaru

2 weeks ago

Share this job

Salary

Not disclosed by employer

Job description

KDCI Outsourcing is looking for an AI Solutions Architect to help clients across industries harness the power of artificial intelligence. You will serve as a strategic bridge between cutting-edge AI technologies and real business goals — guiding clients from initial discovery through solution design, implementation, and adoption. You'll work closely with internal delivery teams, technical architects, and client stakeholders to design AI-driven strategies that are practical, scalable, and results-oriented.

KEY RESPONSIBILITIES

AI Strategy & Solution Design

  • Partner with clients to understand their business challenges and design tailored AI solution roadmaps — from discovery to proof of concept to full deployment.
  • Develop customized AI architectures covering data pipelines, ML models, NLP/LLM integrations, and system connectivity.
  • Advise on AI platform selection (cloud-native, open-source, third-party SaaS) based on client maturity, budget, and technical environment.
  • Lead Proof of Value (PoV) and pilot engagements, ensuring outcomes are measurable and tied to business KPIs.

Pre-Sales & Client Engagement

  • Collaborate with business development and account teams to identify AI opportunities and craft compelling proposals and RFP responses.
  • Deliver engaging, storytelling-driven demos and executive presentations that connect AI capabilities to specific client pain points.
  • Lead technical discovery workshops, stakeholder interviews, and requirements-gathering sessions to shape scope and approach.
  • Define success metrics and ROI frameworks that translate AI outputs into measurable business impact.

Technical Delivery & Oversight

  • Guide delivery teams through solution architecture, integration design, data governance, and AI model evaluation and deployment.
  • Advise on responsible AI principles: fairness, explainability, bias mitigation, and data privacy compliance (GDPR, NPC/DPA PH).
  • Assess client data infrastructure readiness and provide recommendations on data engineering, labeling, and quality pipelines.
  • Oversee QA of AI outputs during project delivery, ensuring alignment with client acceptance criteria.

Stakeholder Management

  • Build trusted relationships with client stakeholders from IT and operations to C-suite decision-makers.
  • Act as an ongoing advisor post-deployment — identifying new use cases, optimizing models, and ensuring continued ROI.
  • Communicate complex AI concepts clearly to non-technical audiences through structured narratives and business-focused framing.

Thought Leadership & Internal Enablement

  • Stay current on AI trends (LLMs, GenAI, agentic frameworks) and bring insights back to internal teams.
  • Contribute to KDCI's AI knowledge base: playbooks, proposal templates, technical frameworks, and case studies.
  • Mentor junior architects and support capability development across the delivery organization.
Resume ExampleCover Letter Example

Explore more