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Remote Learning Architect Jobs in Colorado (NOW HIRING)

ML Engineer

Denver, CO · On-site +1

Machine Learning Engineer (Llama AI Platform) Location: Remote (Preferred U.S. Time Zones ... Participate in architecture discussions and technical planning. * Contribute to AI solution design ...

... AI & Platform Architecture that is fully remote. Why This Role Exists We operate a large-scale ... and learning from outcomes within established guardrails. This Principal Engineer will lead the ...

Senior AI/ML Engineer

Denver, CO · Remote

$90 - $100/hr

Remote Our client seeks a Senior AI/ML Engineer to design and deliver cloud-native machine learning ... Collaboration with product managers, architects, and cross-functional teams will ensure solutions ...

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Remote Learning Architect information

How does a Remote Learning Architect typically collaborate with subject matter experts and instructional designers to create effective online courses?

A Remote Learning Architect plays a central role in coordinating with subject matter experts (SMEs) and instructional designers to ensure that online courses are both pedagogically sound and engaging. They facilitate meetings to align learning objectives with course content, provide expertise on digital learning tools and platforms, and help structure content for optimal online delivery. Regular collaboration, feedback cycles, and project management are key aspects of their work, ensuring that all stakeholders contribute their expertise while meeting project timelines. This collaborative environment fosters innovation and improves the overall quality of online learning experiences.

What is a Remote Learning Architect?

A Remote Learning Architect is a professional who designs and develops effective online learning environments, courses, and programs for remote or virtual instruction. They work with educational institutions, businesses, or organizations to create digital learning experiences that are engaging, accessible, and aligned with learning objectives. Their responsibilities often include curriculum design, selecting appropriate technologies, ensuring accessibility, and collaborating with subject matter experts to deliver high-quality online education.

What is the difference between Remote Learning Architect vs Remote Instruction Designer?

AspectRemote Learning ArchitectRemote Instruction Designer
CredentialsTypically requires a master's in education, instructional design, or related fieldOften requires a bachelor's or master's in education, instructional design, or similar
Work EnvironmentDesigns overall learning frameworks, collaborates with teams, and oversees e-learning projectsDevelops specific course content, assessments, and multimedia materials
Industry UsageUsed in corporate training, higher education, and e-learning platformsCommon in online education providers, universities, and corporate training

While both roles focus on online education, the Remote Learning Architect creates the overarching learning strategy and structure, whereas the Remote Instruction Designer develops the specific course content and materials within that framework.

What are the key skills and qualifications needed to thrive as a Remote Learning Architect, and why are they important?

To thrive as a Remote Learning Architect, you need expertise in instructional design, curriculum development, and a solid understanding of e-learning standards, usually supported by a degree in education or instructional technology. Familiarity with learning management systems (LMS), authoring tools like Articulate or Captivate, and relevant certifications such as CPLP or ATD are typically required. Strong project management, communication, and creative problem-solving skills help you lead teams and design engaging remote learning experiences. These skills and qualifications are crucial for creating effective, learner-centered online programs that meet educational goals and organizational needs.
What are the most commonly searched types of Learning Architect jobs in Colorado? The most popular types of Learning Architect jobs in Colorado are:
What are popular job titles related to Remote Learning Architect jobs in Colorado? For Remote Learning Architect jobs in Colorado, the most frequently searched job titles are:
Infographic showing various Remote Learning Architect job openings in Colorado as of June 2026, with employment types broken down into 83% Full Time, and 17% Part Time. Highlights an 100% Remote job distribution.

ML Engineer

Performacentric

Denver, CO • On-site, Remote

Full-time

Posted 3 days ago


Job description

Machine Learning Engineer (Llama AI Platform)

Location: Remote (Preferred U.S. Time Zones)
Employment Type: Full-Time
Company: Performacentric

About Performacentric

Performacentric helps small and mid-market organizations improve profitability, efficiency, visibility, employee performance, customer satisfaction, and supplier performance through custom AI agents, intelligent automation, and connected business systems.

We are building a next-generation AI platform powered by open-source large language models, agentic workflows, and business process automation. We are seeking a Machine Learning Engineer to help design, deploy, and optimize AI solutions built on Llama models and modern Python-based application architectures.

Position Summary

Performacentric is seeking a Machine Learning Engineer with hands-on experience developing and deploying AI applications using Llama 3 8B, Python, and FastAPI. This role will be responsible for building production-grade AI services, optimizing model performance, developing APIs, integrating business systems, and supporting the evolution of Performacentric's AI agent platform.

The ideal candidate combines strong software engineering skills with practical machine learning experience and enjoys working in a fast-paced startup environment where they can directly influence product direction and technical architecture.

ResponsibilitiesAI Model Development & Optimization
  • Deploy, configure, and optimize Llama 3 8B models for production use.
  • Develop prompt engineering, retrieval, and agentic workflows.
  • Fine-tune and evaluate LLM performance for business use cases.
  • Implement Retrieval-Augmented Generation (RAG) architectures.
  • Optimize inference performance, latency, and infrastructure utilization.
  • Monitor model quality and continuously improve response accuracy.
Application Development
  • Build scalable AI applications using Python and FastAPI.
  • Design and maintain RESTful APIs for AI services.
  • Develop backend services supporting AI agents and copilots.
  • Integrate AI solutions with CRM, ERP, communication, and business systems.
  • Implement authentication, authorization, and API security controls.
  • Write clean, maintainable, and well-documented code.
Data & Infrastructure
  • Build and maintain vector database integrations.
  • Develop data ingestion and preprocessing pipelines.
  • Support deployment of AI workloads in cloud and self-hosted environments.
  • Collaborate on model serving, monitoring, logging, and observability.
  • Assist with infrastructure automation and CI/CD processes.
Collaboration
  • Work closely with product, engineering, and leadership teams.
  • Participate in architecture discussions and technical planning.
  • Contribute to AI solution design for client implementations.
  • Mentor junior developers and share best practices.
Required QualificationsTechnical Skills
  • 3+ years of professional software engineering experience.
  • Strong proficiency in Python.
  • Experience building APIs with FastAPI.
  • Experience deploying and working with Llama 3 8B or similar open-source LLMs.
  • Understanding of prompt engineering and LLM optimization techniques.
  • Experience consuming and developing REST APIs.
  • Strong understanding of Git-based development workflows.
  • Familiarity with Linux environments and command-line tools.
  • Experience troubleshooting and optimizing production applications.
Machine Learning Knowledge
  • Understanding of machine learning fundamentals.
  • Experience evaluating AI model performance.
  • Familiarity with embeddings, vector search, and RAG architectures.
  • Knowledge of model inference optimization techniques.
  • Experience working with structured and unstructured datasets.
Preferred Qualifications

Preference will be given to candidates with experience in one or more of the following:

  • Fine-tuning open-source LLMs.
  • ML Engineering and MLOps practices.
  • LangChain, LlamaIndex, Haystack, or similar frameworks.
  • PostgreSQL database administration and optimization.
  • Vector databases such as pgvector, Chroma, Pinecone, Weaviate, or Qdrant.
  • Docker and containerized deployments.
  • Kubernetes orchestration.
  • Azure AI infrastructure and GPU environments.
  • CI/CD pipelines and DevOps automation.
  • Multi-agent AI architectures.
  • Knowledge graph implementations.
  • Business intelligence and analytics platforms.
Success Metrics

Within the first 12 months, the successful candidate will help:

  • Deploy and optimize production AI workloads.
  • Improve AI response quality and accuracy.
  • Reduce inference latency and infrastructure costs.
  • Expand Performacentric's AI agent platform capabilities.
  • Deliver reliable AI integrations for customer environments.
  • Contribute to the development of new AI-powered products and services.
What We Offer
  • Opportunity to work on cutting-edge AI and agentic technologies.
  • Direct influence on product architecture and technical strategy.
  • Remote-first work environment.
  • Competitive compensation based on experience.
  • Professional growth opportunities in one of the fastest-growing areas of software development.
  • Ability to help shape the future of AI-powered business transformation.
How to Apply

Interested candidates should submit:

  • Resume/CV
  • Brief cover letter
  • GitHub profile (if available)
  • Portfolio of AI, machine learning, or software development projects
  • Examples of LLM, FastAPI, or AI agent implementations (preferred)

Join Performacentric and help build the next generation of AI agents that transform how businesses operate, make decisions, and grow.