GenAI Engineer

ifit solutions Latin America
Remote
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AI Summary

Design, build, and deliver end-to-end AI/ML solutions. Develop AI solutions using Azure AI services. Collaborate with Data Engineers, AI Architects, and business stakeholders.

Key Highlights
Design and deploy AI/ML solutions
Develop AI solutions using Azure AI services
Collaborate with cross-functional teams
Key Responsibilities
Design, build, and deliver end-to-end AI/ML solutions
Develop AI solutions using Azure AI services
Collaborate with Data Engineers, AI Architects, and business stakeholders
Technical Skills Required
Azure AI Foundry Azure OpenAI Azure Machine Learning LangChain LangGraph Semantic Kernel MCP-style orchestration patterns Azure AI Search Cognitive Services Azure DevOps pipelines Git-based workflows cloud-native deployment automation
Benefits & Perks
100% remote work
1-Year Assignment with possibility of extension
Nice to Have
Databricks Certified Generative AI Engineer Associate
Microsoft Azure AI Engineer Associate
Azure Machine Learning Certification
Azure Data Scientist Associate
MLOps or LLMOps training
LangChain/GenAI specialization coursework

Job Description


Job Title: GenAI Engineer

Location Preference: 100% remote in LATAM, working EST Time Zone

Duration: 1-Year Assignment with possibility of extension

Equipment: Candidate must use their own laptop



Key Responsibilities

· Design, build, and deliver end-to-end AI/ML solutions—from experimentation and prototyping to production deployment.

· Develop AI solutions using Azure AI Foundry, Azure OpenAI, Azure Machine Learning, and related Azure AI services.

· Build agent-based architectures using frameworks such as LangChain, LangGraph, Semantic Kernel, and MCP-style orchestration patterns.

· Design and optimize prompt engineering strategies, RAG pipelines, embeddings, vector search, and knowledge-grounding workflows.

· Build, train, evaluate, and deploy classical ML and GenAI models using Azure Machine Learning, including pipelines, feature engineering, model registry, and experiment tracking.

· Implement MLOps and LLMOps practices including CI/CD, automated testing, responsible deployment, model monitoring, drift detection, and performance optimization.

· Integrate AI solutions securely with enterprise systems, APIs, and event-driven architectures.

· Embed Responsible AI principles—fairness, explainability, transparency, and human-in-the-loop controls—into solution design and development.

· Collaborate closely with Data Engineers, AI Architects, Security teams, and business stakeholders to deliver scalable, compliant AI solutions.

· Provide engineering guidance, mentor junior team members, and contribute to reusable components, shared libraries, and engineering best practices.




Requirements

Technical Skills & Platforms

· Strong hands-on experience building and deploying AI solutions on Azure, including Azure AI Foundry, Azure OpenAI, Azure Machine Learning, Azure AI Search, and Cognitive Services.

· Solid understanding of machine learning concepts including feature engineering, model training, evaluation, hyperparameter tuning, and operational deployment.

· Experience deploying both predictive ML and GenAI solutions in enterprise settings.


Generative AI & Agent Systems

· Hands-on experience with LLM-based system development, agent orchestration, and tool automation using frameworks such as:

o LangChain

o LangGraph

o Semantic Kernel

o MCP-style agent communication patterns

· Experience implementing RAG pipelines, embeddings, vector databases, and document ingestion architectures.

· Strong understanding of LLM constraints, prompt optimization, hallucination mitigation, and output-validation strategies.


MLOps, LLMOps & DevOps

· Experience implementing CI/CD for ML and LLM workloads, including testing, monitoring, versioning, and automated deployment.

· Familiarity with Azure DevOps pipelines, Git-based workflows, and cloud-native deployment automation.

· Ability to balance rapid prototyping with strong engineering rigor, reliability practices, and production-readiness.


Cloud, Security & Governance

· Understanding of cloud-native patterns, containerization, and scalable AI infrastructure.

· Knowledge of identity, access management, secrets management, and secure deployment practices for AI systems.

· Familiarity with Responsible AI frameworks and enterprise governance models.


Collaboration & Delivery

· Ability to translate business problems into practical, scalable AI solutions.

· Strong communication and cross-functional collaboration skills.

· Experience working within Agile environments (Scrum, Kanban) delivering iteratively and incrementally.


Preferred Certifications & Training

· Databricks Certified Generative AI Engineer Associate

· Microsoft Azure AI Engineer Associate

· Azure Machine Learning Certification

· Azure Data Scientist Associate (optional)

· MLOps or LLMOps training

· LangChain/GenAI specialization coursework


Advanced English


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