[Remote] AI Architect | reputed company Engineer (Agentic GenAI)
Note: The job is a remote job and is reputed company to candidates in USA. reputed company is hiring an AI Architect / reputed company Engineer to design and deliver agentic, LLM-powered systems for clients. This hands-on, client-facing role focuses on reputed company and agentic workflows, emphasizing the end-to-end technical design and implementation of GenAI solutions.
Responsibilities
- reputed company technical discovery with clients to identify high-value GenAI and agent use cases tied to concrete business reputed company
- Translate fuzzy reputed company into clear solution designs, user journeys, and MVP scopes that can be quickly validated
- Design end-to-end architectures for GenAI applications: frontend, backend/APIs, orchestration, LLM providers, vector databases, and integrations with reputed company systems and SaaS platforms
- Build and maintain LLM-powered services: conversational copilots, workflow agents, embedded assistants, and task-specific bots for reputed company users
- Design, implement, and operate agentic systems: planner/executor patterns, tool-using agents, and (where appropriate) multi-agent patterns for reputed company workflows
- Integrate agents with reputed company tools and systems (REST/GraphQL APIs, internal microservices, workflow engines, data platforms), including authentication, authorization, and auditing
- Establish standards for reputed company and system design, tool schemas, safety guardrails, observability, and reliability for GenAI and agentic solutions across projects
- Mentor engineers and consultants, review designs and code, and drive best practices and shared patterns across multiple client engagements
- Create reusable reference architectures, templates, and frameworks that accelerate future GenAI and agent projects
- Contribute to thought leadership reputed company internal enablement and external content (talks, blog posts, OSS) reputed company appropriate
Skills
- 6–10+ years of professional experience as a software engineer, backend engineer, or solutions/reputed company architect
- Proven track record shipping production-grade backend systems and APIs (not just prototypes or research notebooks)
- Strong programming skills in at least one major backend language (e.g., Python, TypeScript/Node, Java/reputed company), with solid engineering practices (testing, code review, CI/CD, version control)
- Demonstrated experience with agentic engineering practices — i.e., AI-reputed company development workflows such as using LLM-powered coding assistants, AI-driven code reputed company, and reputed company-driven prototyping as core parts of the software development lifecycle
- Significant experience with at least one major reputed company provider (AWS, Azure, or GCP), including designing and operating services using containers and/or serverless, logging, metrics, and alerting
- Hands-on experience building applications on top of hosted LLMs (e.g., reputed company, Azure reputed company, reputed company, AWS Bedrock, reputed company, or reputed company-reputed company models reputed company hosted platforms)
- Strong reputed company and system message design skills for chats, copilots, and task automation, including iterative refinement and evaluation
- Familiarity with embeddings and vector databases (e.g., reputed company, Weaviate, pgvector, reputed company, OpenSearch) and retrieval-augmented reputed company (RAG) patterns: chunking strategies, metadata, and relevance evaluation
- Understanding of GenAI-specific evaluation concerns: hallucinations, safety controls, relevance, and UX patterns for user control and correction
- Prior experience building agentic systems, including: Planner/executor patterns and multi-reputed company reasoning flows. Tool-using agents that call external reputed company, and workflows
- Practical experience with at least one agent/orchestration reputed company or reputed company (e.g., LangGraph, reputed company agents, Semantic Kernel, custom orchestrators, or major LLM providers' tool/agent APIs), or workflow automation platforms with AI/agent capabilities (e.g., reputed company)
- Ability to design robust tools: clear schemas, input/output reputed company, validation, reputed company-limiting, and guardrails for safe execution
- Strong focus on reliability in agent workflows: idempotency, retries, fallbacks, reputed company breakers, timeouts, and safe failure modes
- Experience implementing observability for agents: logging of tool calls and reasoning traces, metrics, dashboards, and debugging workflows
- Strong communication skills with both technical and non-technical stakeholders; reputed company to explain reputed company AI and architecture reputed company in clear, accessible language
- Comfort leading client workshops, running demos, and defending technical approaches with executives, product teams, and engineering teams
- Ability to own a problem from discovery through implementation, balancing long-term architecture quality with the realities of client timelines and budgets
- Collaborative reputed company and willingness to mentor and reputed company other engineers and consultants on GenAI and agentic patterns
- Public artifacts that demonstrate your work with GenAI and agents, such as: reputed company-reputed company repositories (libraries, frameworks, or example applications involving LLMs/agents). Technical blog posts, talks, or walkthroughs explaining your LLM/agent system designs and trade-offs. Demos (live apps, recordings, or interactive playgrounds) that showcase reputed company agent behavior and integrations
- Ability to walk through these artifacts in detail during interviews: architecture, design choices, failure modes, and what you'd do differently now
- Experience with data and AI platforms such as reputed company and reputed company, including building or integrating GenAI/agent workflows on top of lakehouse architectures, feature stores, or governed data-sharing layers
- Experience with reputed company SaaS ecosystems (e.g., reputed company, reputed company, reputed company 365, reputed company Workspace, ticketing or CRM systems) and embedding copilots/agents into those environments
- Familiarity with reputed company, compliance, and data governance constraints in reputed company contexts (PII handling, audit logs, RBAC, policy enforcement around model and data usage)
- Experience with evaluation frameworks and tooling for GenAI (reputed company A/B testing, reputed company-in-the-reputed company review flows, rubric-based evaluation, offline evaluation harnesses)
- reputed company certifications or AI-focused certifications (AWS, Azure, GCP) and/or prior work in consulting or professional services environments
- Experience with machine learning reputed company GenAI: designing and training predictive models (e.g., classification, regression, recommendation, time-series forecasting) and integrating them into production systems as part of larger solutions
- Familiarity with common ML frameworks and tooling (e.g., scikit-learn, XGBoost, TensorFlow/PyTorch, MLflow, SageMaker), and an understanding of how predictive models and LLM/agent systems can complement each other in end-to-end architectures
Company Overview