AI Data Engineer Jobs

Discover the latest remote and onsite AI Data Engineer roles across top active AI companies. Updated hourly.

Check out 207 new AI Data Engineer opportunities posted on The Homebase

Member of Technical Staff (All Levels) - Agent Data

New
Top rated
Basis AI
Full-time
Full-time
Posted

As an Agent Data engineer at Basis, you will own projects completely from scoping to delivery and be the Responsible Party for the systems you design, deciding how to build them, measure success, and when to ship. You will manage yourself, plan your own projects, work closely with your pod, and take full responsibility for execution and quality. Your tasks include building and standardizing the data platform by designing data pipelines that ingest, validate, and transform accounting data into reliable datasets, defining schemas and data contracts, building validation, lineage tracking, and drift detection into every pipeline, and creating interfaces for data discovery, computation, and observation. You will model the domain as a system by translating accounting concepts into well-structured ontologies, creating abstractions to help AI systems reason about real-world constraints, and designing for clarity through schema, code, and documentation. Additionally, you will lead through clarity and technical excellence by owning the architectural vision for your area, running effective design reviews, mentoring engineers on system thinking including load testing, schema design, and observability patterns, and simplifying systems by removing accidental complexity and enforcing clean, stable abstractions.

$100,000 – $300,000
Undisclosed
YEAR

(USD)

New York, United States
Maybe global
Onsite

Software Engineer, Distributed Data Systems

New
Top rated
Exa
Full-time
Full-time
Posted

As a Data Engineer, you will architect and build the data infrastructure that powers all company operations, including crawling billions of pages, training embedding models, and serving real-time search. You will have autonomy in designing systems that scale to hundreds of petabytes. Responsibilities include designing lakehouse architectures, building and operating large-scale distributed data processing pipelines, creating streaming pipelines for real-time indexing, architecting data layers for embedding training infrastructure, and scaling deployments to handle analytical queries across petabytes of data.

$150,000 – $300,000
Undisclosed
YEAR

(USD)

San Francisco, United States
Maybe global
Onsite

Don't See Your Role? Apply Here!

New
Top rated
LMArena
Full-time
Full-time
Posted

The job posting does not specify explicit responsibilities for any particular role. It describes the company's mission, the importance of their work on AI model evaluations, and mentions various roles they are exploring without detailing specific responsibilities.

Undisclosed

()

Bay Area, United States
Maybe global
Remote

[UMOS ONE] Data & AI Engineering Lead

New
Top rated
42dot
Full-time
Full-time
Posted

The responsibilities include developing AI models and integrating Agentic AI for routing, dispatching, and prediction, specifically using features extracted from knowledge graphs to develop AI-based optimal routing, dispatching technologies, demand prediction, ETA prediction, and improving analytic prediction models. The role also involves designing and implementing the integration architecture with Agentic AI systems. Additionally, responsibilities cover the design and development of mobility and logistics-specific ontologies, building knowledge graph-based data models, integrating and refining large heterogeneous data, and managing relationships among service entities to enhance data intelligence. Furthermore, the position requires designing, building, and operating large-scale data pipelines (ETL/ELT) for UMOS platforms, establishing and automating MLOps pipelines for stable model operation, and developing and integrating efficient API interfaces with service backend systems.

Undisclosed

()

Seoul, South Korea
Maybe global
Onsite

Data Engineer – Spark Specialist

New
Top rated
Dataiku
Full-time
Posted

Help users discover and master the Dataiku platform through user training, office hours, demos, and ongoing consultative support. Analyse and investigate various kinds of data and machine learning applications across industries and use cases. Provide strategic input to the customer and account teams that help make customers successful. Scope and co-develop production-level data science projects with customers. Mentor and help educate data scientists and other customer team members to aid in career development and growth.

Undisclosed

()

Maybe global
Hybrid

Data Engineer

New
Top rated
Artisan AI
Full-time
Full-time
Posted

The Data Engineer will design, build, and maintain data pipelines, manage data ingestion, and develop reliable data models to support AI and ML workflows. The role also involves close collaboration with ML and product teams to ensure clean, structured, and high-quality data delivery for analytics and product features.

Undisclosed

()

Maybe global
On-site

AI Pilot Vibe Coding Assistant (Freelance)

New
Top rated
Mindrift
Part-time
Full-time
Posted

AI Pilot Vibe Coding Assistants collaborate with AI-driven systems to generate, refine, and submit accurate, well-structured outputs based on complex prompts. They handle coding, automation, data processing, troubleshooting technical issues, and improving AI output quality across diverse domains.

Undisclosed
HOUR

(USD)

Maybe global
Remote Solely

Data Engineer

New
Top rated
Replit
Full-time
Full-time
Posted

The Data Engineer will design, build, and maintain scalable data pipelines to support analytics and data-driven decision making at Replit. They will collaborate across teams to deliver ETL/ELT workflows, ensure data quality, and build unified data models for in-depth analysis.

Undisclosed
YEAR

(USD)

Maybe global
Hybrid

Member of Technical Staff, Data Engineering

New
Top rated
Cohere
Full-time
Full-time
Posted

As a Data Engineer specializing in pretraining data, you will be responsible for developing and maintaining data pipelines that support Cohere's advanced language models. You will manage the entire lifecycle of training data, including ingestion, cleaning, optimization, and modeling for optimal model performance, while collaborating with cross-functional teams to ensure the quality and efficiency of data curation.

Undisclosed

()

Maybe global
Remote OK

Data Operations Manager

New
Top rated
Greenlite AI
Full-time
Full-time
Posted

Build and scale data and financial operations to support deployment and growth of AI agents for major institutional clients. Take ownership of billing, collections, data infrastructure, dashboards, and cross-functional operations to provide actionable, real-time visibility to business leaders.

Undisclosed
YEAR

(USD)

Maybe global
On-site

Want to see more AI Data Engineer jobs?

View all jobs

Access all 4,256 remote & onsite AI jobs.

Join our private AI community to unlock full job access, and connect with founders, hiring managers, and top AI professionals.
(Yes, it’s still free—your best contributions are the price of admission.)

Frequently Asked Questions

Have questions about roles, locations, or requirements for AI Data Engineer jobs?

Question text goes here

Lorem ipsum dolor sit amet, consectetur adipiscing elit. Suspendisse varius enim in eros elementum tristique. Duis cursus, mi quis viverra ornare, eros dolor interdum nulla, ut commodo diam libero vitae erat. Aenean faucibus nibh et justo cursus id rutrum lorem imperdiet. Nunc ut sem vitae risus tristique posuere.

[{"question":"What does an AI Data Engineer do?","answer":"AI Data Engineers build and manage data pipelines specifically for AI and machine learning models. They design architectures that process diverse data types such as text, images, and videos for model consumption. Their daily work includes implementing data validation systems, ensuring quality, and integrating large-scale datasets from multiple sources. They create real-time data workflows, handle vector databases like FAISS or Milvus, and optimize performance of AI data infrastructure. Using tools like Python, SQL, Apache Spark and Airflow, they collaborate with data scientists and ML engineers to transform raw data into formats that support model training and deployment."},{"question":"What skills are required for AI Data Engineer jobs?","answer":"Strong programming skills in Python and SQL form the foundation for AI Data Engineer roles. Proficiency with data engineering frameworks like Apache Spark, Airflow, and Ray is essential for building robust pipelines. Experience with cloud platforms (AWS, GCP, Azure) and vector databases enables handling of AI-specific data needs. Skills in data quality assurance, monitoring, and error handling ensure reliable AI systems. Engineers should understand embedding techniques for unstructured data processing and have experience with ETL processes at scale. Soft skills like cross-functional collaboration are valuable as these roles bridge technical teams with AI scientists and business stakeholders."},{"question":"What qualifications are needed for AI Data Engineer jobs?","answer":"Most AI Data Engineer positions require a bachelor's degree in computer science, data engineering, or related technical fields, with many employers preferring master's degrees for senior roles. Hands-on experience building data pipelines for machine learning applications is crucial. Employers look for demonstrated expertise with cloud data services like Redshift, BigQuery or Snowflake, and familiarity with MLOps practices. Knowledge of data preprocessing techniques for unstructured data (text, images, videos) sets successful candidates apart. Professional certifications in cloud platforms or data technologies can strengthen qualifications, especially when combined with proven experience integrating large-scale datasets for AI workflows."},{"question":"What is the salary range for AI Data Engineer jobs?","answer":"Compensation for AI Data Engineers varies based on several key factors. Location significantly impacts pay, with tech hubs like San Francisco and New York offering higher salaries than smaller markets. Experience level creates substantial differences, with senior engineers commanding significantly more than entry-level positions. Specialized skills in emerging AI tools, vector databases, and specific cloud platforms can increase earning potential. Company size also matters—large tech companies and well-funded AI startups often pay premium rates. The specialized nature of preparing data for AI applications typically positions these roles at higher compensation levels than traditional data engineering positions with similar years of experience."},{"question":"How long does it take to get hired as an AI Data Engineer?","answer":"The hiring timeline for AI Data Engineers typically spans 4-8 weeks from application to offer. The process usually includes an initial resume screening, followed by a technical phone interview covering Python, SQL, and data pipeline concepts. Candidates then face 1-3 rounds of technical interviews focusing on data engineering problems, system design for AI workflows, and coding exercises. Some companies add take-home assignments demonstrating pipeline building for AI data. Final rounds often include discussions with potential team members and hiring managers. Specialized skills in AI data preprocessing and experience with vector databases can accelerate the process, especially for candidates with proven experience in similar roles."},{"question":"Are AI Data Engineer jobs in demand?","answer":"AI Data Engineer positions show strong demand as organizations build infrastructure for AI initiatives. This specialized role bridges traditional data engineering and AI needs, with job postings appearing at major institutions like Stanford and companies like OpenAI. The role is gaining recognition as essential for AI implementation success, particularly as companies scale their machine learning operations. Demand stems from the unique requirements of AI data pipelines, which differ significantly from traditional analytics infrastructure. Organizations need engineers who understand the specific data preprocessing needs of machine learning models and can build robust pipelines for handling diverse data types including text, images, and videos."},{"question":"What is the difference between AI Data Engineer and Data Engineer?","answer":"While both roles build data pipelines, AI Data Engineers specifically focus on preparing data for machine learning and AI systems rather than business analytics. They work extensively with unstructured data (text, images, videos), implementing specialized preprocessing techniques that traditional Data Engineers rarely handle. AI Data Engineers commonly use vector databases like FAISS and embedding libraries that aren't typical in standard data engineering. They must understand model training data requirements and build infrastructure supporting model deployment. Traditional Data Engineers concentrate on structured data flows, data warehousing, and analytics support, while AI Data Engineers create pipelines optimized for machine learning with features like data versioning, lineage tracking, and real-time AI-ready data delivery."}]