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Ai Data Architect Jobs (NOW HIRING)

Data & AI Engineer

Washington, DC · On-site

$129K - $155K/yr

Reporting to the Senior AI & Data Architect, this role is responsible for building and operating the pipelines, semantic layers, retrieval systems, and AI-ready data products that power analytics ...

Data Architect

Natick, MA · On-site

$140K - $224K/yr

Define the target-state Data and AI architecture aligned with business goals and technology ... strategy. * Establish architectural standards, principles, and best practices across the data ...

AI and Data Engineer

Washington, DC · Hybrid

$129K - $155K/yr

Reporting to the Senior AI & Data Architect, this role is responsible for building and operating the pipelines, semantic layers, retrieval systems, and AI-ready data products that power analytics ...

Drive AI-ready architecture initiatives including lakehouse design, semantic modeling, vectorized data architectures, metadata-driven frameworks, and scalable AI data pipelines. * Partner with ...

AI and Data Engineer

Washington, DC · On-site

$129K - $155K/yr

Reporting to the Senior AI & Data Architect, this role is responsible for building and operating the pipelines, semantic layers, retrieval systems, and AI-ready data products that power analytics ...

AI & Data Engineering Architect

Elmhurst, IL · On-site

$63.50 - $81.75/hr

The AI & Data Engineering Architect is a strategic and high-impact role responsible for advancing organizational AI capabilities and optimizing the data ecosystem that enables them. This position ...

AI & Data Analytics Architect

Charlotte, NC

$62.25 - $80/hr

JOB SUMMARY The AI & Data Analytics Architect role is responsible for designing and guiding the implementation of enterprise-wide AI, data analytics, and data architecture platforms and integrated ...

AI & Data Analytics Architect

Charlotte, NC · On-site

$62.25 - $80/hr

JOB SUMMARY The AI & Data Analytics Architect role is responsible for designing and guiding the implementation of enterprise-wide AI, data analytics, and data architecture platforms and integrated ...

Solution Architect - AI & Data

Atlanta, GA · On-site +1

$60.50 - $79.75/hr

Solution Architect - AI & Data, Expert Services As part of the Expert Services AI Practice, the Solution Architect - AI & Data will serve as a senior strategic and technical lead, reshaping how ...

Solution Architect - AI & Data

Atlanta, GA

$60.50 - $79.75/hr

Solution Architect - AI & Data, Expert Services As part of the Expert Services AI Practice, the Solution Architect - AI & Data will serve as a senior strategic and technical lead, reshaping how ...

Solution Architect - AI & Data

Addison, TX

$61 - $80.25/hr

Solution Architect - AI & Data, Expert Services As part of the Expert Services AI Practice, the Solution Architect - AI & Data will serve as a senior strategic and technical lead, reshaping how ...

Solution Architect - AI & Data

Addison, TX

$61 - $80.25/hr

Solution Architect - AI & Data, Expert Services As part of the Expert Services AI Practice, the Solution Architect - AI & Data will serve as a senior strategic and technical lead, reshaping how ...

Solution Architect - AI & Data

Phoenix, AZ · On-site +1

$62.50 - $82.50/hr

Solution Architect - AI & Data, Expert Services As part of the Expert Services AI Practice, the Solution Architect - AI & Data will serve as a senior strategic and technical lead, reshaping how ...

Solution Architect - AI & Data

Phoenix, AZ

$62.50 - $82.50/hr

Solution Architect - AI & Data, Expert Services As part of the Expert Services AI Practice, the Solution Architect - AI & Data will serve as a senior strategic and technical lead, reshaping how ...

Solution Architect - AI & Data

Addison, TX

$61 - $80.25/hr

Solution Architect - AI & Data, Expert Services As part of the Expert Services AI Practice, the Solution Architect - AI & Data will serve as a senior strategic and technical lead, reshaping how ...

Solution Architect - AI & Data

West Palm Beach, FL · On-site

$61 - $80.25/hr

Solution Architect - AI & Data, Expert Services As part of the Expert Services AI Practice, the Solution Architect - AI & Data will serve as a senior strategic and technical lead, reshaping how ...

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Ai Data Architect information

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How much do ai data architect jobs pay per hour?

As of Jun 12, 2026, the average hourly pay for ai data architect in the United States is $69.98, according to ZipRecruiter salary data. Most workers in this role earn between $61.30 and $78.85 per hour, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as an AI Data Architect, and why are they important?

To thrive as an AI Data Architect, you need deep expertise in data modeling, database design, and AI/ML concepts, often backed by a degree in computer science, engineering, or a related field. Familiarity with cloud platforms (such as AWS, Azure, or Google Cloud), big data frameworks (like Hadoop and Spark), and certifications in cloud architecture or data engineering are highly valued. Strong analytical thinking, problem-solving skills, and effective communication are crucial for collaborating across teams and translating business needs into scalable data solutions. These skills ensure robust, efficient AI systems that support organizational goals and drive innovation.

What is an AI data architect?

An AI data architect is a professional responsible for designing and managing the data infrastructure that supports artificial intelligence and machine learning projects. They develop data models, ensure data quality, and implement data pipelines using tools like SQL, Python, and cloud platforms to enable effective AI model training and deployment.

How does an AI Data Architect typically collaborate with data engineers, data scientists, and other stakeholders within an organization?

An AI Data Architect plays a central role in bridging the gap between data engineering, data science, and business stakeholders. They design and oversee the data infrastructure required for AI applications, working closely with data engineers to ensure pipelines are scalable and secure. In collaboration with data scientists, they help define data requirements and optimize data flows for model training and deployment. Frequent communication with product managers and business leaders helps align the data architecture with organizational goals and regulatory standards, making adaptability and strong interpersonal skills key components of the role.

What is the salary of an AI architect?

The salary of an AI Data Architect typically ranges from $100,000 to $160,000 annually, depending on experience, location, and industry. Senior roles with specialized skills in machine learning, data modeling, and cloud platforms can earn higher compensation, often exceeding $180,000. Certifications and proficiency with tools like TensorFlow or AWS can also influence salary levels.

How much do AI data architects make?

AI data architects typically earn between $100,000 and $160,000 annually, depending on experience, location, and industry. Senior roles or those with specialized skills in data modeling, cloud platforms, and machine learning may offer higher salaries. Certifications and a strong understanding of data management tools can also influence compensation.

What is the difference between Ai Data Architect vs Data Engineer?

AspectAi Data ArchitectData Engineer
CredentialsBachelor's/Master's in CS, Data Science, or related; certifications in cloud platforms or data architectureBachelor's/Master's in CS, Software Engineering, or related; certifications in cloud or data tools
Work EnvironmentDesigning data architecture for AI models, collaborating with data scientists and AI teamsBuilding and maintaining data pipelines, managing data storage and processing systems
Industry UsageUsed in AI-focused companies, tech firms, and organizations deploying AI solutionsCommon across industries for data management, analytics, and infrastructure

The Ai Data Architect focuses on designing data systems optimized for AI applications, working closely with data scientists. In contrast, Data Engineers build and maintain the data pipelines and infrastructure needed for data processing. Both roles require similar technical skills and certifications but serve different functions within data ecosystems.

What is a $900,000 AI job?

A $900,000 AI job typically refers to high-level roles such as AI executives, senior data scientists, or AI architects with extensive experience and specialized skills. These positions often involve leadership, strategic planning, and advanced technical expertise, and they may require certifications in AI or data management. Compensation at this level reflects the value of expertise in developing and deploying complex AI systems in large organizations.
More about Ai Data Architect jobs
What cities are hiring for Ai Data Architect jobs? Cities with the most Ai Data Architect job openings:
What states have the most Ai Data Architect jobs? States with the most job openings for Ai Data Architect jobs include:
Infographic showing various Ai Data Architect job openings in the United States as of June 2026, with employment types broken down into 33% Full Time, and 67% Contract. Highlights an 67% In-person, and 33% Remote job distribution, with an average salary of $145,556 per year, or $70 per hour.
Data & AI Engineer

Data & AI Engineer

Carlyle

Washington, DC • On-site

$129K - $155K/yr

Full-time

Medical, Life, Retirement, PTO

Posted 15 days ago


Job description

Basic information
Job Name:
Data & AI Engineer
Location:
Washington, DC
Line of Business:
Global Technology & Solutions
Job Function:
Investor Services
Date:
Thursday, May 28, 2026
Position Summary
Fund or Department Description
The Data & AI Engineer sits within Carlyle's Enterprise Technology & Data organization and supports firm-wide data and AI initiatives spanning investment platforms, portfolio operations, investor relations, and corporate functions. The role operates within a federated data operating model, partnering with domain engineering teams to implement shared platforms and reusable patterns for data and AI under the technical direction of the Senior AI & Data Architect.
Position Summary
The Data & AI Engineer is an experienced, hands-on engineer who turns Carlyle's data and AI architecture into working production systems. Reporting to the Senior AI & Data Architect, this role is responsible for building and operating the pipelines, semantic layers, retrieval systems, and AI-ready data products that power analytics, automation, LLMs, agents, and generative AI applications across the firm.
The role requires deep, hands-on expertise across modern data engineering and applied AI engineering. The Data & AI Engineer will implement retrieval-augmented generation (RAG) patterns, embedding and indexing pipelines, vector stores, and semantic models alongside core ELT, streaming, and analytical pipelines - treating LLMs, agents, and copilots as first-class consumers of the data platform.
This is a senior individual-contributor engineering role that executes against architectural standards, contributes to their evolution through hands-on learning, and partners closely with data science, AI engineering, governance, and domain teams to deliver trusted, AI-consumable data at enterprise scale.
What Success Looks Like: In the first 12 months, this role will deliver foundational AI-ready data pipelines and retrieval components defined in the target-state architecture, productionize one or more priority RAG or agent-grounding use cases, and establish reusable engineering patterns that other domain teams can adopt across the federated data platform.
In-office requirement: 4 days per week
Location: Washington, D.C. or New York, NY
Responsibilities
AI Data Pipelines & Retrieval Systems (≈35%)
  • Build and operate AI-ready data pipelines - embedding generation, chunking, indexing, and refresh workflows - that make Carlyle's enterprise data reliably retrievable by LLMs, agents, and generative AI applications.
  • Implement retrieval-augmented generation (RAG) components, including vector store integrations, hybrid search, re-ranking, and grounding logic, against architectural patterns defined by the Senior AI & Data Architect.
  • Develop and maintain tool and function interfaces that allow agents and copilots to query and act on enterprise data safely, with appropriate guardrails, logging, and evaluation hooks.
  • Partner with Data Science and AI Engineering teams to operationalize feature stores, evaluation datasets, and reusable AI data products.
  • Contribute to semantic and context engineering work that powers natural-language analytics, conversational reporting, and AI-driven insights for business users.

Modern Data Pipeline Engineering (≈30%)
  • Design, build, and maintain production-grade ELT, streaming, and transformation pipelines using tools such as dbt, Fivetran and Snowflake.
  • Implement ingestion, modeling, and consumption patterns that meet enterprise standards for scalability, performance, security, resiliency, and cost efficiency.
  • Write clean, well-tested Python and SQL; apply software engineering best practices including version control, code review, CI/CD, modular design, and automated testing.
  • Productionize new sources and domains under the federated operating model, partnering with domain data engineers to apply shared platform capabilities consistently.

Semantic Layer & Data Product Development (≈20%)
  • Implement semantic models, data contracts, and analytical/dimensional models that enable trusted self-service analytics and reliable AI grounding.
  • Build and maintain reusable data products with clear ownership, documented contracts, and contextual metadata suitable for both human and AI consumers.
  • Collaborate with the Senior AI & Data Architect to refine and extend enterprise semantic standards based on what works in production.
  • Support discovery and consumption tooling so that analysts, applications, and agents can find and use data products with minimal friction.

Data Quality, Observability & AI Trust (≈10%)
  • Implement data quality checks, lineage capture, and pipeline observability across both data and AI workloads.
  • Build logging, evaluation, and monitoring components for AI systems - including prompt and response capture, retrieval metrics, and model performance signals - in line with governance standards.
  • Partner with Data Governance to operationalize metadata, stewardship, and access controls, ensuring AI systems consume enterprise data with the same rigor as human users.
  • Surface issues early, propose remediations, and feed lessons learned back into architectural patterns.

Collaboration & Engineering Craft (≈5%)
  • Participate in architectural design reviews and contribute hands-on engineering perspective to evolving patterns and standards.
  • Mentor junior data engineers and analysts on modern data and AI engineering practices.
  • Document patterns, write runbooks, and share knowledge across the federated organization to accelerate adoption of reusable platform capabilities.

Qualifications
Education & Certifications
  • Bachelor's degree, required
  • Concentration in computer science, data engineering, information systems, or a related field, preferred
  • Masters degree, preferred
  • Relevant certifications in cloud, data engineering, analytics, or AI/ML are preferred

Professional Experience
  • 6+ years of overall relevant technical experience, required
  • Experience in data engineering, analytics engineering, or platform engineering, with at least 1-2 years of direct, hands-on experience building generative AI or AI/ML systems in production.
  • Proven experience implementing retrieval, grounding, and semantic components for LLM- or agent-based applications, including RAG pipelines, vector stores, embedding workflows, and structured tool use.
  • Hands-on experience with one or more modern AI platforms and tooling categories (e.g., AWS Bedrock, Databricks ML, Snowflake Cortex, OpenAI/Anthropic APIs, LangChain/LlamaIndex or equivalents, MLflow, and vector databases such as Databricks Vector Search, pgvector, or Pinecone).
  • Strong, demonstrable expertise in Python and SQL, with working knowledge of distributed processing frameworks (e.g., Spark).
  • Deep, hands-on experience with modern data stacks - dbt, Fivetran, Snowflake - in AWS-based environments.
  • Track record of building data pipelines and products whose consumers include AI systems, not only BI tools and human analysts.
  • Palantir experience a plus.
  • Experience operating within federated data operating models and complex, regulated enterprise environments; financial services experience preferred.

Competencies & Attributes
  • Demonstrated AI-forward instinct: defaults to asking how AI changes what gets built, rather than whether AI can be added later.
  • Fluency in current AI engineering patterns (RAG, agents, tool use, evaluations, guardrails, observability) and the practical trade-offs involved in shipping them.
  • Strong engineering craft: clean code, automated testing, thoughtful design, and a bias toward production-quality systems over prototypes.
  • Pragmatic, delivery-oriented mindset with strong attention to data quality, AI trust, and long-term maintainability; able to distinguish durable engineering decisions from AI hype.
  • Collaborative partner to architects, data scientists, AI engineers, and domain teams; comfortable operating in a matrixed, federated organization and in high-visibility transformational initiatives.

Benefits/Compensation
The compensation range for this role is specific to the applicable office location and takes into account a wide range of factors, including required and preferred skill sets; prior experience and training; and licenses and/or certifications.
The anticipated base salary range for this role is $160,000 to $180,000.
In addition to base salary, the hired professional will receive a comprehensive benefits package including retirement benefits, health insurance, life and disability insurance, paid time off, paid holidays, family planning benefits, and wellness programs. The hired professional may also be eligible for an annual discretionary incentive program based on individual and organizational performance.
Company Information
The Carlyle Group (NASDAQ: CG) is a global investment firm with $475 billion of assets under management, across 678 investment vehicles as of March 31, 2026. Founded in 1987 in Washington, DC, Carlyle has grown into one of the world's largest and most successful investment firms, with more than 2,500 professionals operating in 28 offices in North America, Europe, the Middle East, Asia and Australia.
Carlyle's purpose is to connect people, ideas, and capital to fuel growth for companies and performance for investors, which range from public and private pension funds to wealthy individuals and families to sovereign wealth funds, unions and corporations. Carlyle invests across three segments - Global Private Equity, Global Credit and Carlyle AlpInvest - and has deep expertise across industries, markets, and geographies.
At Carlyle, we believe that a wide spectrum of experiences and viewpoints drives performance and success. Our CEO, Harvey Schwartz, has stated that, "To build better businesses and create value for all of our stakeholders, we are focused on assembling leadership teams with the strongest insights from a range of perspectives." Reflecting this view, emphasis is placed on development, retention and inclusion through our internal processes and seven Employee Resource Groups (ERGs). We cultivate a culture where ideas are openly shared and challenged, connecting diverse expertise and perspectives to drive enduring value.