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Data Colocation In Jobs in Littleton, CO (NOW HIRING)

We are an award-winning industry leader in building, owning, and operating highly efficient, cost-effective wholesale, colocation, and cloud data centers. Each of our national facilities meets or ...

We are an award-winning industry leader in building, owning, and operating highly efficient, cost-effective wholesale, colocation, and cloud data centers. Each of our national facilities meets or ...

... colocation facilities, hardware vendors, and managed service providers. We're building a centralized platform to manage all of these relationships, contacts, and service data in one place. What You ...

New

... colocation facilities, hardware vendors, and managed service providers. We're building a centralized platform to manage all of these relationships, contacts, and service data in one place. What You ...

New

... colocation facilities, hardware vendors, and managed service providers. We're building a centralized platform to manage all of these relationships, contacts, and service data in one place. What You ...

New

... colocation facilities, hardware vendors, and managed service providers. We're building a centralized platform to manage all of these relationships, contacts, and service data in one place. What You ...

New

... colocation facilities, hardware vendors, and managed service providers. We're building a centralized platform to manage all of these relationships, contacts, and service data in one place. What You ...

New

... colocation facilities, hardware vendors, and managed service providers. We're building a centralized platform to manage all of these relationships, contacts, and service data in one place. What You ...

New

... colocation facilities, hardware vendors, and managed service providers. We're building a centralized platform to manage all of these relationships, contacts, and service data in one place. What You ...

New

We are an award-winning industry leader in building, owning, and operating highly efficient, cost-effective wholesale, colocation, and cloud data centers. Each of our national facilities meets or ...

... colocation facilities, hardware vendors, and managed service providers. We're building a centralized platform to manage all of these relationships, contacts, and service data in one place. What You ...

New

We are an award-winning industry leader in building, owning, and operating highly efficient, cost-effective wholesale, colocation, and cloud data centers. Each of our national facilities meets or ...

We are an award-winning industry leader in building, owning, and operating highly efficient, cost-effective wholesale, colocation, and cloud data centers. Each of our national facilities meets or ...

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Showing results 1-20

Data Colocation In information

See Littleton, CO salary details

$46.1K

$165.3K

$243.9K

How much do data colocation in jobs pay per year?

As of Jul 18, 2026, the average yearly pay for data colocation in in Littleton, CO is $165,294.00, according to ZipRecruiter salary data. Most workers in this role earn between $133,700.00 and $170,300.00 per year, depending on experience, location, and employer.

What is the difference between Data Colocation In vs Data Center Technician?

AspectData Colocation InData Center Technician
CredentialsTypically requires IT certifications, network knowledgeRequires networking, hardware, and troubleshooting certifications
Work EnvironmentData centers, server rooms, client facilitiesData centers, server rooms, maintenance areas
Employer & IndustryHosting providers, enterprises, cloud servicesData center operators, IT service providers
Search & Comparison IntentUnderstanding colocation services, infrastructure setupTechnical support, hardware maintenance, troubleshooting

Data Colocation In involves providing space, power, and cooling for clients' servers within a data center, focusing on infrastructure management. Data Center Technicians perform hands-on hardware installation, troubleshooting, and maintenance within data centers. While both roles operate in similar environments and require technical certifications, Data Colocation In emphasizes client infrastructure management, whereas Data Center Technicians focus on hardware support and repairs.

What jobs make $1,000,000 a year?

High-level executive roles such as CEOs, CFOs, and other C-suite positions in large corporations can earn over $1 million annually, often including bonuses and stock options. Additionally, successful entrepreneurs, top investment bankers, and certain professional athletes or entertainers may reach this income level, but these are rare and typically require extensive experience, skills, and networks.

What jobs pay 500,000 a year in the US?

High-paying roles related to data colocation, such as senior data center managers, cloud infrastructure executives, or specialized IT consultants, can reach or exceed $500,000 annually with experience and certifications. These positions often require advanced technical skills, leadership abilities, and oversight of large-scale data infrastructure or cloud operations.

What is the highest paying job in data?

In data-related fields, roles such as Data Engineering Manager, Data Architect, and Chief Data Officer tend to have the highest salaries, often exceeding six figures annually. These positions require advanced skills in data systems, cloud platforms, and leadership, and they typically involve overseeing data strategy and infrastructure.

What is a data colocation?

Data colocation involves housing servers and networking equipment in a third-party data center facility. It provides businesses with secure, reliable infrastructure, power, cooling, and network connectivity, often requiring technical skills to manage hardware and ensure optimal performance.
What job categories do people searching Data Colocation In jobs in Littleton, CO look for? The top searched job categories for Data Colocation In jobs in Littleton, CO are:

Full-time

Medical, Dental, Vision, Retirement

Re-posted 20 days ago


Job description

THE COMPANY:

STACK INFRASTRUCTURE (STACK) provides digital infrastructure to scale the world's most innovative companies. We are an award-winning industry leader in building, owning, and operating highly efficient, cost-effective wholesale, colocation, and cloud data centers. Each of our national facilities meets or exceeds the highest industry standards in all operational categories of availability, security, connectivity, and physical resilience.

STACK offers the scale and geographic reach that rapidly growing hyperscale and enterprise companies need. The world runs on data. Data runs on STACK.

THE COMPANY

STACK INFRASTRUCTURE (STACK) provides digital infrastructure to scale the world's most innovative companies. We are an award-winning industry leader in building, owning, andoperatinghighly efficient, cost-effective wholesale, colocation, and cloud data centers. Each of our national facilities meets or exceeds the highest industry standards in all operational categories of availability, security, connectivity, and physical resilience.

STACK offers the scale and geographic reach that rapidly growinghyperscale andenterprise companies need. The world runs on data. Data runs on STACK.

THE POSITION

STACK is seeking an AI Solution Architect to serve as the senior technical authority and delivery lead for enterprise AI solutions. This role owns the end-to-end design, engineering, and deployment of AI systems - spanning generative AI, LLM engineering, RAG pipelines, smart routing, agentic workflows, enterprise system integrations, intelligent layer development on Databricks, and production AI infrastructure - while driving technical adoption across the organization.

The AI Solution Architect is the builderandowns thedataarchitecture, the Python code, the integrations, the GitLab repositories, the deployment pipelines, andthe entire intelligent layer withthe technical reliability of every AI solution in production.This role owns the AI system architecture and engineering layer that sits after the data foundation layer all the way to business outcome.This role reports directly to the Head of AI & Data Strategy and serves as the primary technical engineering authority for all AIsolutiondelivery acrossthe enterprise.

KEY RESPONSIBILITIES

Generative AI, LLM Engineering & Intelligent Routing

  • Design, develop, and deploy production GenAI solutions including custom assistants, multi-agent systems, and LLM-powered workflow automation - with hands-on ownership of every layer from prompt design through inference endpoint.

  • Architect and implement smart LLM routing logic - designing multi-model routing systems that dynamically select the right model based on query complexity, cost thresholds, latency requirements, and data residency constraints. Implement fallback chains, load balancing, and model arbitration patterns for production reliability.

  • Build andoptimizeRetrieval-Augmented Generation (RAG) pipelines end to end - including document ingestion strategy, chunking and overlap logic, embedding model selection and tuning, vector store architecture, hybrid retrieval design, reranking layers, and context window management for enterprise knowledge applications.

  • Engineer andmaintainprompt libraries, system prompts, chain-of-thought patterns, and prompt chaining logic for all production LLM applications -maintaininga versioned prompt registry in GitLab with structured testing and evaluation before promotion.

  • Build LLM fine-tuning and alignment pipelines on DatabricksMLflow- including supervised fine-tuning (SFT), parameter-efficient fine-tuning (LoRA,QLoRA), and RLHF.

  • Implement guardrails, content filtering, hallucination detection, and output validation layers to ensure AI responses meet safety, accuracy, and compliance standardsestablishedby the governance framework.

Predictive & Prescriptive AI Engineering

  • Implement and deploy predictive AI solutions that surface forecasts and recommendations to business users - building on feature specifications and model evaluation criteria provided by the AI Data Scientist.

  • Engineer the prescriptive AI layer - translating model outputs and recommendations into automated decisions, workflow triggers, and user-facing actions within business systems.

  • Build model serving infrastructure: inference endpoints,predictionAPIs, caching layers, and fallback logic that ensure production models meet latency, reliability, and cost requirements.

  • Integrate AI model outputs into operational workflows, automated alerts, and decision support tools so insights reach end users in context and at the right moment.

Agentic AI Architecture & Multi-Agent Systems

  • Design and build the full agentic AI architecture for Phase III of the enterprise AI roadmap - including agent orchestration layers, tool registries, memory systems (short-term, long-term, episodic), state management, and inter-agent communication protocols.

  • Architect multi-agent workflows that span enterprise systems - designing how agents interact with NetSuite, Procore, SharePoint, Workday, and operational platforms to complete complex multi-step business processes autonomously.

  • Build andmaintainthe agent tool library - the set of callable Python functions, REST API wrappers, and enterprise connectors that agentic systems invoke to read data, trigger actions, and write outputs to business systems.

  • Implement intelligent routing within agentic systems - designing intent classification layers, task routing logic, and dynamic tool selection patterns that direct agent actions to the right model, tool, or human escalation path based on query type and confidence.

  • Own the full agentic AI lifecycle from design through production scaling - this is not a handofffunction,it is an end-to-end engineering ownership responsibility.

Databricks Intelligence Layer & Python Engineering

  • Own the AI intelligence layer on Databricks - building,maintaining, and iterating all AI and ML workloads including model training notebooks, inference pipelines, feature transformation jobs, embedding generation logic, and LLM orchestration workflows running on Databricks ML Runtime.

  • Write production-grade Python code across all AI solution engineering work - including Azure Functions for serverless AI triggers, custom API wrappers, LLM chain implementations, agent tool functions, data transformation scripts, and automation pipelines connecting AI systems to enterprise platforms.

  • Build and maintain Databricks Jobs and Workflows orchestrating multi-step AI pipelines - coordinating data preparation, model inference, output transformation, prompt execution, and downstream delivery in a single governed execution context.

  • Leverage Databricks Mosaic AI capabilities - including AI Playground, Model Serving, Vector Search, andLakeFlowConnect.

  • OptimizeDatabricks AI workload performance - tuning notebookcompute, cluster sizing for training jobs, and serving endpoint configuration - in coordination with the Sr. Data Platform Engineer who owns cluster policy and platform infrastructure.

GitLab, CI/CD & AI Solution DevOps

  • Own andmaintainthe GitLab repository structure for all AI initiatives - following the initiative-based repo architecture under the dedicated AI workspace, with consistent branching conventions, commit standards, and merge request workflows across all solution engineering work.

  • Build andmaintainCI/CD pipelines in GitLab for AI solution deployment - automating testing, validation, model promotion, and environment deployment for GenAI applications, inference APIs, Azure Functions, and Databricks Jobs.

  • Maintain GitLab as thesingle sourceof truth for all AI solution code, configuration, model artifacts, and deployment history - ensuring every production AI system has a complete, auditable engineering record.

Enterprise System Integration, API Engineering & Data Ingestion

  • Build andmaintainintegrations between AI systems and enterprise platforms including NetSuite ERP, Procore, Asana, Microsoft 365, and Workday - enabling AI-powered insights, automation triggers, and real-time data flows.

  • Design and engineer the API and connector layer that AI agents and applications use to read from and write to enterprise systems - owning authentication (OAuth 2.0, API keys, managed identities), authorization, error handling, retry logic, and rate limiting.

  • Build data ingestion scripts and connectors in Python for AI-specific data feeds - pulling targeted data from enterprise sources (NetSuite reports, Procore project data, SharePoint documents, Teams activity) into AI-ready formats for model consumption.

  • Design and implement Azure Function-based ingestion triggers - event-driven Python functions that capture real-time data updates from enterprise systems and route them to AI processing pipelines without requiring full batch pipeline infrastructure.

AI Solution Governance, Standards & Technical Enablement

  • Establish and enforce engineering standards for AI solution development, testing, deployment, monitoring, and deprecation - covering Python code quality, GitLab workflow discipline, Databricks notebook standards, prompt versioning, and API documentation.

  • Own technical solution monitoring: system uptime, API latency, error rates, token consumption, Databricks job health, and infrastructure reliability for all deployed AI solutions. Coordinate with the AI Data Scientist on model performance signals thatindicatearchitectural review is needed.

  • Ensure all AI solutionscomply withsecurity, privacy, data governance, and regulatory requirements in collaboration with IT, legal, and cybersecurity teams.

MUST-HAVE QUALIFICATIONS

  • Location: Denver-based candidates are strongly preferred. This role is designed as a collaborative hybrid position with regular onsite engagement (approximately 3 days/week).

  • Work Schedule: Hybrid

  • Bachelor's degree in Computer Science, Software Engineering, or equivalent practical experience.

  • 7+ years of experience in AI/ML engineering, solution architecture, or enterprise software engineering - with at least 3 years working withproductionAI or ML systems.

  • Advanced RAGexpertise: chunking strategies, embedding model selection, hybrid retrieval, reranking, multi-hop retrieval, query decomposition, and context window optimization.

  • Demonstrated experience implementing LLM smart routing: multi-model arbitration, intent-based routing, fallback chains, and cost-optimized model selection logic.

  • Hands-on agentic AI experience: orchestration frameworks (LangChain,LlamaIndex,AutoGen, or equivalent), tool registry design, memory architecture, and multi-agent coordination patterns.

  • Databricks ML Runtimeproficiencyas a practitioner: building and running Python notebooks, Jobs, and Workflows for AI workloads;MLflowfor experiment tracking, model registry, and deployment.

  • GitLabproficiency: repository management, CI/CD pipeline construction, branching strategy, and code review workflows for AI solution codebases.

  • Data ingestion experience: Python-based connectors, Azure Function triggers, and API-driven data feeds from enterprise systems (NetSuite, Procore, SharePoint, or equivalent).

  • Strong understanding of vector databases and semantic search: Azure AI Search, Pinecone,Weaviate,Qdrant, Azure OpenAI, Azure ML, Copilot Studio or equivalent.

  • Deep technical fluency with REST APIs, OAuth 2.0, webhooks, and enterprise integration patterns across ERP, ITSM, project management, and HR platforms.

  • Strong communicationskills - able to translate AI engineering decisions intoclear languagefor executive and business audiences.

THIS MIGHT BE RIGHT FORYOUIF

  • You have built RAG pipelines that went toproductionand you have the opinions and scars to prove it - you know when to use hybrid retrieval, when reranking matters, and whatactually breaksat scale.

  • You have implemented smart routing in production - not just switching between GPT-3.5 and GPT-4 on cost, but designing intent classifiers, confidence thresholds, and fallback chains that make routing decisions the model cannot make for itself.

  • You have built agentic systems where agents are making real decisions in real enterprise workflows - not just demos, but production systems with tool libraries, memory, escalation logic, and audit trails.

  • You are fluent in Databricksend to end especiallyas an ML practitioner - you build notebooks, run Jobs, track experiments inMLflow, and deploy models toservingendpoints without needing the platform team to hold your hand.

WHYSTACK?

  • Competitive compensation package with strong benefits including medical, dental, vision, 401K, flexible spending accou...