Every job listed here is analyzed by our AI to identify worldwide hiring — not just “remote in the US.” Our classification is actively being improved, some results may be inaccurate.
Worldwide Remote
Jobs reviewed for worldwide hiring.
Real Hiring Data
Country flags show the countries where each company has team members
Updated Hourly
Fresh jobs synced from thousands of career pages
Job Title: AI Engineer Location: Remote (Brazil) Employment Type: Full-Time Key Responsibilities •Design, architect, and implement AI and Generative AI solutions on Microsoft Azure. •Build and deploy enterprise-grade applications utilizing Azure OpenAI and related Azure AI services. •Fine-tune, customize, and optimize pre-trained AI and LLM models for business-specific use cases. •Develop intelligent solutions leveraging Prompt Engineering, Retrieval-Augmented Generation (RAG), and Vector Search architectures. •Implement AI-powered document processing solutions using Azure Form Recognizer and Cognitive Services. •Design and manage Vector Database integrations and Cognitive Search implementations. •Develop scalable data processing pipelines using Python and PySpark. •Collaborate with business stakeholders, architects, and engineering teams to define technical requirements and solution roadmaps. •Conduct technical workshops, architecture reviews, and customer presentations. •Provide technical leadership and mentorship to development teams. •Establish AI engineering best practices, governance standards, and solution frameworks. •Support MLOps and LLMOps implementation for model lifecycle management and production deployments. •Deliver customer enablement and upskilling sessions on Azure AI technologies. •Participate in troubleshooting, performance optimization, and continuous improvement initiatives. Required Qualifications •10+ years of overall IT experience. •Minimum 5+ years of hands-on experience working with Microsoft Azure. •Experience leading technical teams and guiding solution delivery. •Experience designing and implementing cloud, on-premises, and hybrid architectures. •Hands-on experience with Generative AI and Large Language Model deployments. •Experience working directly with enterprise customers and stakeholders.