AI Platform Integration Architect

business needs.
3 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English

Job location

Remote

Tech stack

API
Artificial Intelligence
User Authentication
Cloud Computing
Computer Security
Data Governance
Data Synchronization
Distributed Systems
Middleware
Salesforce
Systems Architecture
Systems Integration
Apex Code
Large Language Models
Multi-Agent Systems
Prompt Engineering
Backend
Event Driven Architecture
AI Platforms
Enterprise Integration
REST
gRPC
Automation Anywhere
Api Management
Mulesoft

Job description

  • Indeed's GTM Core team is seeking a highly skilled and strategic AI Platform Integration Architect to drive the next generation of our enterprise automation ecosystem. In this role, you will bridge the gap between our internal data architectures and Salesforce's advanced agentic capabilities. A core focus of this position is the evolution and enterprise scaling of an autonomous AI co-worker built and operated internally.
  • Key Responsibilities: The AI Platform Integration Architect will define how autonomous systems interact safely, efficiently, and intelligently across our corporate ecosystem. Key responsibilities include:
  • System Orchestration & Blueprinting: Architect end-to-end integration designs connecting Indeed's internal AI co-worker and related data platform services to Salesforce Agentforce environments.
  • Pattern Optimization & Decisioning: Apply rigorous architectural frameworks to choose the correct integration pattern (Traditional APIs, Model Context Protocol, or Agent-to-Agent) based on transaction volume, reasoning overhead, latency boundaries, and data sensitivity.
  • Agent Specialization Management: Design modular agent structures to avoid monolithic, overloaded reasoning engines. Enforce governance limits (e.g., maintaining under 10 topics per agent) by elegantly delegating complex tasks across specialized autonomous micro-agents.
  • Cross-Functional Collaboration: Work directly with Data Engineers, Salesforce Administrators, Core Platform Architects, and Security Operations to maintain unified API contracts and clean semantic understanding across all endpoints.
  • Security and Trust Governance: Establish explicit trust filters, secure authentication boundaries, and data exposure guardrails to protect sensitive corporate assets while maintaining fluid agent execution

Requirements

  • Solid understanding of Large Language Model (LLM) orchestration, prompt engineering, context windows, and token conservation.
  • Experience designing autonomous routing systems that leverage semantic understanding to execute multi-step tool calls.
  • Enterprise Integration: Proven expertise in high-scale data synchronization patterns.
  • Masterful command of REST, gRPC, and event-driven architectures (e.g., Salesforce Pub/Sub API) to coordinate distributed cloud systems.

Salesforce Customization:

  • Deep familiarity with wrapping complex backend processes into agentic tools via Invocable Apex methods, advanced Salesforce Flows, and custom prompt templates.
  • Architectural Governance:
  • Experience authoring comprehensive Architectural Decision Records (ADRs) that clearly map
  • High-Level Requirements (HLRs) against technical constraints and explicit trade-offs.

Must-Have Skills:

  • Strong experience with enterprise integrations and system architecture. Strong Apex methods, advanced Salesforce Flows, and custom prompt templates.
  • Experience with APIs (REST, gRPC, event-driven architectures).
  • Experience integrating systems with Salesforce.
  • Knowledge of AI/LLM concepts such as: Prompt engineering Context management.
  • Multi-step AI workflows. Agent orchestration.
  • Experience designing scalable and secure distributed systems.

Experience with Salesforce tools such as:

  • Salesforce Flows APIs and connectors. Understanding of security, authentication, and data governance. Experience documenting architecture decisions and technical trade-offs Strong collaboration skills across engineering, data, and security teams.

Nice to have (preferred):

  • Experience with Model Context Protocol (MCP).
  • Experience with Agent-to-Agent (A2A) integrations.
  • Experience with MuleSoft or middleware platforms.
  • Experience building or managing autonomous AI agents or micro-agent systems. Familiarity with Salesforce Agent force.
  • Experience with semantic tool discovery or AI-native integrations.
  • Knowledge of Bulk APIs and Salesforce Connect.
  • Experience working in large-scale enterprise AI environments.

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