Founded in 2001, Insight Global (IG) offers enhanced staffing, placement staffing, and temporary-to-permanent staffing services, including long-term and short-term job assignments.
AI Engineer I
Location
Brazil
Posted
60 days ago
Salary
$2.5K - $3.3K / month
Seniority
Junior
Job Description
AI Engineer I
Insight Global
• Contribute to the design and development of AI-powered platforms and systems, working alongside senior engineers on complex initiatives. • Own end-to-end delivery of complex projects, from problem discovery and system design through production rollout and iteration. • Build AI-driven features, intelligent automation, and agentic systems that enhance customer experiences and improve team productivity. • Embed AI capabilities into existing team workflows, products, and processes, ensuring solutions integrate naturally. • Build full-stack components spanning backend services, APIs, data layers, and frontend interfaces. • Collaborate with engineers, teams, and stakeholders across the company to understand requirements and deliver impactful solutions.
Job Requirements
- 1–3 years of professional experience in software engineering, AI engineering, platform engineering, or related roles.
- Hands-on experience designing, building, and shipping AI-powered systems into production environments.
- Strong proficiency in Python, SQL, and frontend frameworks such as React.
- Proven experience designing and owning production-grade full-stack systems.
- Experience working with distributed systems, internal platforms, or complex data workflows.
- Ability to operate effectively in ambiguous problem spaces and drive solutions with minimal direction.
Related Guides
Related Job Pages
More AI Engineer Jobs
Senior AI Engineer
Insight GlobalFounded in 2001, Insight Global (IG) offers enhanced staffing, placement staffing, and temporary-to-permanent staffing services, including long-term and short-term job assignments.
• Lead the design and development of scalable machine learning infrastructure on AWS. • Collaborate with product teams to develop MVPs for AI-driven features. • Create and enhance monitoring and alerting systems for machine learning models. • Enable various departments to leverage AI/ML models. • Offer expertise in debugging and resolving issues related to machine learning models in production. • Design and scale machine learning architecture to support rapid user growth. • Conduct code reviews, mentor team members, and elevate overall team capabilities.
• Design, develop, and optimize AI models, including training and fine-tuning for various applications. • Implement and deploy AI solutions on a cloud platform, ensuring scalability and performance. • Utilize Python for data preprocessing, model development, and automation of AI workflows. • Collaborate with the development team to broaden AI capabilities and enhance existing solutions. • Research and experiment with cutting-edge AI technologies, staying ahead of industry advancements. • Optimize and monitor AI models post-deployment, ensuring efficiency, accuracy, and reliability.
• Analyze existing customer business process in tight cooperation with stakeholders • Define “state-to-be” – optimised business processes • Implement improvements via automation and agents to identify automation opportunities • Design and deploy AI agents using platforms such as Zapier, Make.com, n8n, etc • Integrate AI solutions with customer tools (e.g., CRM, ERP, Slack, Notion, Gmail, Hubspot) • Test, monitor, and fine-tune AI agents to ensure reliability and performance • Collaborate closely with product, development, and client teams, customer stakeholders, and process owners
• Conduct qualitative and quantitative research to understand user needs, workflows, and pain points across multiple SaaS products in the portfolio. • Analyze competitive products and the broader AI landscape within our industry to identify patterns, gaps, and emerging best practices. • Partner with Product and Engineering leaders to inventory and assess available first-party data that can be leveraged to train models. • Synthesize insights from user research, competitive analysis, and data exploration into clear opportunity areas for reusable AI agents. • Develop concept briefs, workflows, and problem statements for AI-powered solutions.



