This position is no longer available
LATAM Remote (Global)

Provectus was looking for a Middle AI/ML Engineer

Work as a core engineer building end-to-end machine learning solutions for international enterprise clients. Progress toward technical leadership by owning architecture decisions and guiding implementation. Focus on deploying robust ML pipelines using AI-augmented development practices. Engage in mentoring, knowledge sharing, and enhancing internal AI platforms

Responsibilities

  • Develop and implement ML pipelines from research phase to live production systems
  • Train, fine-tune, and optimize supervised, unsupervised, and generative AI models
  • Produce clean, modular, and well-tested Python code with strong engineering practices
  • Deploy models into production and monitor performance to detect and mitigate drift
  • Build and enhance LLM-powered applications including retrieval-augmented generation (RAG) and agent-based workflows
  • Integrate AI coding assistants into daily development to improve speed and code quality
  • Utilize tools like Claude Code or equivalent AI coding platforms for project delivery
  • Develop solutions using agent orchestration frameworks such as Bedrock AgentCore, Strands, or CrewAI
  • Implement or integrate Model Context Protocol (MCP) servers for internal and client use cases
  • Contribute improvements, fixes, and documentation to the internal AI toolkit
  • Guide junior engineers through code reviews and provide constructive feedback
  • Collaborate cross-functionally with DevOps, data engineering, and solution architecture teams
  • Disseminate knowledge via documentation, presentations, or internal training sessions
  • Keep current with advancements in machine learning, generative AI, and agent systems
  • Suggest and implement process optimizations and reusable ML components
  • Participate in high-level system design discussions and evaluate technical trade-offs

Requirements

  • Strong understanding of supervised and unsupervised machine learning, including model selection, evaluation metrics, and algorithmic trade-offs
  • Hands-on experience with deep learning models such as CNNs, RNNs, and Transformers, including training and fine-tuning
  • Specialized expertise in at least one area: natural language processing, computer vision, recommendations, or time series forecasting
  • Proven experience developing applications using large language models via OpenAI, Anthropic, or Hugging Face APIs
  • Direct experience designing and implementing RAG systems, including chunking, embedding, retrieval, and generation stages
  • Familiarity with vector databases including OpenSearch, Pinecone, Chroma, or FAISS
  • Knowledge of prompt engineering techniques and methods for evaluating LLM outputs
  • Proficiency with AI-powered coding tools such as Claude Code, Cursor, or GitHub Copilot beyond basic autocomplete
  • Experience building stateful, tool-using agents using orchestration frameworks
  • Understanding of Model Context Protocol (MCP), including consuming or developing MCP servers
  • Ability to write technical specifications for AI systems and critically assess AI-generated code or outputs
  • Awareness of monitoring, evaluation, and cost-efficiency strategies for production agent systems
  • Solid experience with AWS services including SageMaker, Lambda, S3, ECR, ECS, and API Gateway
  • Familiarity with Amazon Bedrock features such as model invocation, knowledge bases, and agent integration
  • Basic knowledge of Infrastructure as Code using Terraform or CloudFormation
  • Experience deploying ML models into production environments
  • Use of experiment tracking tools like MLflow or Weights & Biases (W&B)
  • Implementation of CI/CD pipelines for ML systems, including model monitoring and drift detection
  • Advanced Python skills including async programming, object-oriented design, packaging, and strong use of pandas, NumPy, and SQL
  • Experience containerizing ML workloads using Docker
  • 1 to 3 years of practical experience in machine learning engineering
  • At least one ML model successfully deployed to production or near-production
  • Experience working on team-based or client-facing projects
  • Demonstrated use of AI-assisted development tools in real-world workflows
  • Bachelor’s or Master’s degree in Computer Science, Data Science, Mathematics, or equivalent hands-on experience

Nice to Have

  • Hold one or more AWS certifications
  • Experience working with Kubernetes for orchestration and scaling
  • Hands-on work with GraphRAG or custom MCP server implementations
  • Contributions to open-source projects or published research in agentic systems

Tech Stack

Python, AWS, SageMaker, Lambda, S3, ECR, ECS, API Gateway, Amazon Bedrock, Terraform, CloudFormation, MLflow, Weights & Biases (W&B), Docker, OpenAI, Anthropic, Hugging Face, OpenSearch, Pinecone, Chroma, FAISS, Claude Code, Cursor, Copilot, Bedrock AgentCore

Benefits

  • Competitive salary determined by skills and market benchmarks
  • Access to premium AI development tools including Claude Code, Cursor, and internal AI toolkit
  • Guidance and mentorship from experienced Senior ML Engineers and Tech Leads
  • Defined career progression path from Mid-Level to Senior ML Engineer to Tech Lead
  • Annual learning budget for courses, certifications, and industry conferences
  • Remote-first work model supporting collaboration across LATAM, North America, and Europe
  • Health benefits package

Compensation

Competitive salary based on competencies and market rates

Work Arrangement

global — LATAM, North America, Europe — Remote-first culture

Team

Team of 400+ engineers; collaborates with DevOps, Data Engineering, and Solutions Architects; provides mentorship to junior engineers; reports to technical leadership

  • Focused on delivering production-grade AI solutions
  • Embraces AI-assisted software development
  • Values mentorship and knowledge transfer
  • Encourages proactive problem-solving
  • Promotes collaborative teamwork
  • Supports continuous learning and innovation
  • Committed to successful delivery in client-facing projects

Additional Information

  • Fluent English proficiency (B2 level or higher) is required
  • Work involves collaboration across LATAM, North America, and Europe time zones
  • Fully remote work environment with distributed team operations
  • Mentorship from Senior ML Engineers and Tech Leads is provided
  • Clear career progression path from Mid-Level to Senior ML Engineer to Tech Lead
  • Learning budget available for professional development in courses, certifications, and conferences
Required Skills
PythonAWSTerraformCloudFormationDockerOpenAI
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About company
Provectus
A technology company with a Java engineering practice and multiple international locations
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Job Details
Department Engineering – AI practice - Diego Martinez
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Posted 3 months ago