Data & Agent Performance Engineer

Salesforce Salesforce · Enterprise · Sao Paulo, Brazil

Salesforce is seeking a Data & Agent Performance Engineer to build the data foundation and monitor the performance of AI agents in production. This role involves preparing data for agentic systems, enabling real-time context, and analyzing agent effectiveness post-deployment, including RAG architectures and observability dashboards.

What you'd actually do

  1. Support the design and implementation of data models, Data Cloud configurations, identity resolution, data harmonization, ingestion patterns, and activation strategies required for agents to operate with reliable business context.
  2. Prepare and connect the data sources agents need to answer questions, make recommendations, trigger actions, and support business workflows with accurate and contextual information.
  3. Help evolve traditional data architectures beyond rigid ETL pipelines by enabling enterprise search, content stores, indexing strategies, semantic search, and knowledge graph structures that make information easier for agents to discover and use.
  4. Analyze agent sessions, interactions, escalation points, unanswered questions, grounding failures, hallucination risks, user feedback, adoption metrics, latency, and completion rates to understand how agents are performing in real-world scenarios.
  5. Build dashboards and reporting views to give teams visibility into agent behavior, usage, quality, business impact, and operational risks.

Skills

Required

  • data engineering
  • data architecture
  • analytics
  • AI data foundations
  • data modeling
  • data ingestion
  • data transformation
  • APIs
  • enterprise data platforms
  • structured and unstructured data
  • SQL
  • Python
  • data visualization tools
  • building dashboards
  • observability views

Nice to have

  • Salesforce Data Cloud
  • CRM data
  • MuleSoft
  • RAG
  • semantic search
  • vector databases
  • indexing
  • knowledge graphs
  • enterprise search patterns
  • Data Platforms
  • Tableau
  • CRM Analytics
  • analyzing agent performance
  • chatbot performance
  • digital service performance
  • observability metrics
  • session volume
  • containment
  • escalation
  • response quality
  • latency
  • user satisfaction
  • task completion

What the JD emphasized

  • prepare the data foundation behind the agent
  • preparing the data architecture needed for agentic systems
  • preparing data
  • agent performance
  • analyzing agent performance
  • monitoring agent performance
  • performance visibility
  • agent effectiveness
  • agent quality
  • agent behavior
  • agent usage
  • agent context
  • agent needs
  • agent performance

Other signals

  • AI agents
  • data foundation for agents
  • agent performance monitoring
  • RAG
  • observability