AI Architect Lead Engineer (Agentic AI Platform)
Job Summary
About TaskUs: TaskUs is a provider of outsourced digital services and next-generation customer experience to fast-growing technology companies helping its clients represent protect and grow their brands. Leveraging a cloud-based infrastructure TaskUs serves clients in the fastest-growing sectors including social media e-commerce gaming streaming media food delivery ride-sharing HiTech FinTech and HealthTech.
The People First culture at TaskUs has enabled the company to expand its workforce to approximately 45000 employees globally. Presently we have a presence in twenty-three locations across twelve countries which include the Philippines India and the United States.
It started with one ridiculously good idea to create a different breed of Business Processing Outsourcing (BPO)! We at TaskUs understand that achieving growth for our partners requires a culture of constant motion exploring new technologies being ready to handle any challenge at a moments notice and mastering consistency in an ever-changing world.
What We Offer: At TaskUs we prioritize our employees well-being by offering competitive industry salaries and comprehensive benefits packages. Our commitment to a People First culture is reflected in the various departments we have established including Total Rewards Wellness HR and Diversity. We take pride in our inclusive environment and positive impact on the community. Moreover we actively encourage internal mobility and professional growth at all stages of an employees career within TaskUs. Join our team today and experience firsthand our dedication to supporting People First.
Role: AI Architect / Lead Engineer (Agentic AI Platform)
Experience: 715 years
Location: Flexible / Hybrid
About the Role:
We are building a Hybrid Agentic AI Platform that runs across AWS multi-cloud and customer environments (VPC/on-prem). This role will own the end-to-end architecture AND implementation of the platformspanning data ingestion context building (RAG) agent orchestration QA automation and secure enterprise deployment.
This is a builder-first leadership role: you will design systems write production code and guide a small team to deliver a scalable privacy-first AI platform.
Responsibilities
Architecture & System Design
Define end-to-end architecture: ingestion processing RAG agents QA scoring insights
Design hybrid deployment models (SaaS in-VPC on-prem)
Establish patterns for multi-tenancy isolation and scalability
Make key build vs buy decisions (LLMs vector DBs orchestration)
AI / Agentic Systems
Design and implement agent orchestration frameworks
Build RAG pipelines (chunking embeddings retrieval re-ranking)
Integrate LLMs (managed/private) with no-retention and guardrails
Define evaluation frameworks (quality hallucination checks QA scoring)
Security & Data Privacy
Implement data-in-place architectures (compute-to-data VPC access)
Design for PII handling masking and auditability
Ensure compliance-ready patterns (SOC2 GDPR-style controls)
Platform Engineering
Build core services/APIs powering workflows and integrations
Design event-driven and microservices architectures
Ensure reliability observability and performance at scale
Team Leadership
Lead and mentor engineers (AI data backend FDE)
Set coding standards architecture principles and best practices
Work closely with customers on complex deployments when needed
Required Skills
Core Engineering
Strong programming in Python (plus is a bonus)
Deep experience with distributed systems & system design
Hands-on with APIs microservices and event-driven systems
AI / GenAI
Production experience with LLMs / GenAI systems
Strong understanding of:
RAG architectures
Embeddings & vector search
Prompting and agent workflows
Experience with LLM platforms (AWS Bedrock open-source models etc.)
Cloud & Platform
Deep experience with AWS (VPC IAM Lambda ECS/EKS S3)
Experience designing secure enterprise deployments
Familiarity with Docker Kubernetes Terraform
Nice to Have
Experience with agent frameworks (LangChain LangGraph etc.)
Multi-cloud experience (Azure/GCP)
Experience with contact center / QA automation domains
Knowledge of data engineering pipelines
Exposure to LLM evaluation and guardrails frameworks
What Makes You a Great Fit
You are equally comfortable whiteboarding architecture and writing code
You have built 01 systems and scaled them
You make pragmatic decisions not over-engineered ones
You thrive in ambiguity and move fast with ownership
Impact
Define and build the core platform architecture
Accelerate MVP production for enterprise customers
Establish the technical foundation for a category-defining AI platform
Success in 90 Days
Designed and validated reference architecture
Built core RAG agent orchestration pipeline
Enabled first customer deployment (VPC or hybrid)
Established engineering standards and velocity
What This Role Is Not
Not a pure architect who only creates diagrams
Not a research-only AI/ML role
Not detached from customers or real-world constraints
This is a hands-on builder-leader role
How We Partner To Protect You: TaskUs will neither solicit money from you during your application process nor require any form of payment in order to proceed with your application. Kindly ensure that you are always in communication with only authorized recruiters of TaskUs.
DEI: In TaskUs we believe that innovation and higher performance are brought by people from all walks of life. We welcome applicants of different backgrounds demographics and circumstances. Inclusive and equitable practices are our responsibility as a business. TaskUs is committed to providing equal access to opportunities. If you need reasonable accommodations in any part of the hiring process please let us know.
We invite you to explore all TaskUs career opportunities and apply through the provided URL Experience:
Unclear Seniority
About Company
TaskUs combines expert teammates and cutting-edge technology to solve customer challenges, safeguard users, develop AI and drive growth.