Somos Humanos. Somos Digitais. Somos Verity!
AI Engineer, Mid-level
Location
Brazil
Posted
3 days ago
Salary
0
Seniority
Senior
Job Description
AI Engineer, Mid-level
Verity Group
• Responsible for transforming AI capabilities into real business solutions by building systems that not only respond but also execute tasks, automate processes, and deliver results. • Will work at the intersection of software engineering, data, and AI, designing and operating intelligent applications integrated into the corporate environment.
Job Requirements
- Agent Architecture and Engineering: Design and develop enterprise-ready AI agents, including information retrieval capabilities, orchestration, policy-based routing, tool invocation, evaluation frameworks, and observability across the full lifecycle.
- AI Platform Integration: Build abstraction layers between different AI providers (Anthropic, Google, OpenAI, etc.) to enable smooth integration and portability.
- Minimum of 3 years of experience in cloud-native systems engineering (APIs, microservices, containerization, serverless).
- Minimum of 1 year of experience designing and implementing agent-based solutions (agents, orchestration, context engineering, RAG, workflows) in production environments.
- Minimum of 5 years of programming experience in Python, Java, or equivalent; familiarity with agent logging, monitoring, and observability tools.
- Minimum of 5 years of production deployment experience — CI/CD, infrastructure as code (Terraform, Helm), monitoring, and debugging.
Benefits
- Meal allowance
- Food allowance
- Home office allowance
- Medical insurance
- Dental insurance
- Life insurance
- Discount partnerships
- Partnerships with vendors and educational institutions
- Recurring agile training
- Verity Break
- #VerityWithYou
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