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Full Time Ai Agent Developer Jobs in Raleigh, NC

Data Engineer - Bilingual Mandarin required

Norco, CA · On-site

$123K - $147K/yr

... Full-time Collaborating Teams CWILL Data Engineering, Data Analytics, Business, Product, and ... and AI Agent engineering automation exploration. We are looking for candidates with a solid ...

Data Engineer - Bilingual Mandarin required

Cary, NC · On-site

$106K - $127K/yr

... Full-time Collaborating Teams CWILL Data Engineering, Data Analytics, Business, Product, and ... and AI Agent engineering automation exploration. We are looking for candidates with a solid ...

AI & ML Tech Lead/Architect

Durham, NC · On-site

$150K - $225K/yr

Raleigh, NC (Hybrid) Job Type: Full Time/W2 Only Exp Level- 8-15 Years Required Skills- Claude ... Understand and work with MCP (Model Context Protoco), A2A (Agent-to-Agent) communication, and LLM ...

AI & ML Tech Lead/Architect

Raleigh, NC · On-site

$150K - $225K/yr

Raleigh, NC (Hybrid) Job Type: Full Time/W2 Only Exp Level- 8-15 Years Required Skills- Claude ... Understand and work with MCP (Model Context Protoco), A2A (Agent-to-Agent) communication, and LLM ...

Staff AI Engineer

Raleigh, NC · On-site +1

$210K - $290K/yr

AI Agent Swarms - A multi-agent pipeline that takes a PRD and produces a tested, reviewed pull request for tier 1-3 engineering work (nits, bugs, small features). You design the agent orchestration ...

Staff AI Engineer

Raleigh, NC · Remote

$210K - $290K/yr

AI Agent Swarms - A multi-agent pipeline that takes a PRD and produces a tested, reviewed pull request for tier 1-3 engineering work (nits, bugs, small features). You design the agent orchestration ...

Principal Engineer, AI Platform

Cary, NC · On-site

$125K - $167K/yr

... developer productivity, and enables new kinds of collaboration across Epic's teams. We're not a ... AI Agent Orchestration - multi-tenant platform for team AI agents that live and collaborate in ...

M365 AI SME, Senior

Raleigh, NC · On-site

$112K - $113K/yr

Microsoft 365 AI Governance, Agent 365, Copilot Agent Engineering SME The Microsoft 365 AI Governance, Agent 365, Copilot Agent Engineering SME provides operational, technical governance, and Level 3 ...

Applied AI Engineer

Raleigh, NC · On-site

$104K - $137K/yr

... AI agent capabilities. * Experience with vector databases (e.g., Pinecone, Weaviate, pgvector) and semantic search. * Experience building or maintaining internal developer platforms, artifact ...

Applied AI Engineer

Raleigh, NC · On-site

$104K - $137K/yr

... AI agent capabilities. * Experience with vector databases (e.g., Pinecone, Weaviate, pgvector) and semantic search. * Experience building or maintaining internal developer platforms, artifact ...

Agent orchestration, Short-term memory, Long-term memory, Context management, Tool integrations ... with engineering, data, product, security, and customer stakeholders to align AI solutions with ...

... agent as a fast junior engineer you are accountable for, never an oracle. • Integrate third-party APIs and external systems (vendor data feeds, payments, messaging, mapping, and LLM/AI services ...

Sr. Analytics Engineer

Raleigh, NC

$101K - $139K/yr

Lead agent enablement patterns: Establish data structures and governance to support AI agents ... Represent analytics engineering in architecture reviews and governance councils. * Participate in ...

Sr. Analytics Engineer

Raleigh, NC · On-site

$101K - $139K/yr

Lead agent enablement patterns: Establish data structures and governance to support AI agents ... Represent analytics engineering in architecture reviews and governance councils. * Participate in ...

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Full Time Ai Agent Developer information

See Raleigh, NC salary details

$28.2K

$46.6K

$96.7K

How much do full time ai agent developer jobs pay per year?

As of Jul 2, 2026, the average yearly pay for full time ai agent developer in Raleigh, NC is $46,592.00, according to ZipRecruiter salary data. Most workers in this role earn between $33,000.00 and $49,600.00 per year, depending on experience, location, and employer.

What are some typical challenges Full Time AI Agent Developers face when deploying AI agents into production environments?

Full Time AI Agent Developers often encounter challenges such as ensuring the reliability and scalability of AI agents when moving from development to production. Integrating agents with existing systems, handling real-world data variability, and maintaining performance under changing workloads are common hurdles. Additionally, developers must prioritize model monitoring, updating, and compliance with data privacy standards, collaborating closely with DevOps, data engineers, and product managers. Proactively addressing these challenges ensures smoother deployments and ongoing agent effectiveness.

What are the key skills and qualifications needed to thrive as a Full Time AI Agent Developer, and why are they important?

To thrive as a Full Time AI Agent Developer, you need strong programming skills (especially in Python), a solid understanding of machine learning, deep learning, and natural language processing, typically supported by a degree in computer science or a related field. Familiarity with frameworks like TensorFlow, PyTorch, and tools such as Git, as well as experience with APIs and cloud platforms, are commonly required. Creative problem-solving, collaboration, and adaptability are valuable soft skills that set top candidates apart. These skills ensure the effective design, implementation, and continuous improvement of intelligent agents in a dynamic and evolving technology landscape.

What is the difference between Full Time Ai Agent Developer vs Machine Learning Engineer?

AspectFull Time Ai Agent DeveloperMachine Learning Engineer
CredentialsBachelor's in CS, AI, or related field; experience with AI frameworksBachelor's or higher in CS, Data Science, or related; strong programming skills
Work EnvironmentDeveloping AI agents for chatbots, virtual assistants, or automation toolsDesigning and deploying machine learning models for various applications
Industry UsageTech companies, customer service, automation firmsTech, finance, healthcare, research institutions

While both roles involve AI and programming, Full Time Ai Agent Developers focus on creating interactive AI agents for specific applications, whereas Machine Learning Engineers develop broader machine learning models for diverse data-driven solutions.

What does a Full Time AI Agent Developer do?

A Full Time AI Agent Developer is responsible for designing, building, and maintaining artificial intelligence systems known as 'agents' that can perform tasks autonomously or assist humans in decision-making. This role involves programming, working with machine learning models, and integrating AI agents into software applications. Developers often collaborate with data scientists, engineers, and stakeholders to ensure the AI agents meet user needs and function reliably in real-world environments.
What are the most commonly searched types of Ai Agent Developer jobs in Raleigh, NC? The most popular types of Ai Agent Developer jobs in Raleigh, NC are:
What are popular job titles related to Full Time Ai Agent Developer jobs in Raleigh, NC? For Full Time Ai Agent Developer jobs in Raleigh, NC, the most frequently searched job titles are:
What job categories do people searching Full Time Ai Agent Developer jobs in Raleigh, NC look for? The top searched job categories for Full Time Ai Agent Developer jobs in Raleigh, NC are:

Data Engineer - Bilingual Mandarin required

CWILL

Norco, CA • On-site

$123K - $147K/yr

Full-time

Retirement, PTO

Posted 21 days ago


Job description

CWILL (pronounced "quill") is a post-purchase and retention suite built for Shopify brands. Reduce support tickets, recover lost revenue from returns, and turn one-time buyers into loyal fans - with tools purpose-built for every touchpoint that follows the sale.
Learn more: www.cwill.com
I. Basic Information
Work Authorization
Green Card / U.S. Citizen required (we do nor sponsor)
Job Title
Data Engineer
Focus Areas
Data ingestion, data lakehouse, data warehouse, data platform, data service APIs, data quality & engineering agent development
Level
Junior to mid-level with high growth potential
Location
United States - on-site, remote, or hybrid (per company requirements)
Employment Type
Full-time
Collaborating Teams
CWILL Data Engineering, Data Analytics, Business, Product, and Technology teams
Language
English required; Mandarin is a strong plus
Cross-Timezone Work
Must maintain a regular collaboration window with teams in other country; strong async communication and documentation skills required (approx. 2 hrs/day overlap needed)
II. Role Positioning
CWILL is building data infrastructure to support business operations, product capabilities, customer service, analytics, and intelligent applications. As a US-side data engineer, you will participate in multi-source data ingestion, data lakehouse and warehouse development, data quality governance, data platform capability building, and AI Agent engineering automation exploration.
We are looking for candidates with a solid foundation in SQL, Python, and data engineering - someone who can, with guidance from the existing data team, progressively take ownership of data ingestion, modeling, quality, and service tasks, while collaborating effectively with domestic data engineering, analytics, and business teams.
This is not a pure data analysis, BI reporting, or one-off scripting role. It is a comprehensive data engineering position focused on data integration, data warehouse development, data platform capabilities, data services, and engineering automation.
III. Role Mission
Through stable, well-structured, and scalable data engineering capabilities, help the company unify, govern, model, and serve data scattered across business systems, SaaS platforms, external channels, and internal systems - improving the usability, accuracy, timeliness, and reusability of CWILL's data assets.
This role is expected to continuously drive:
• More standardized data source ingestion
• Clearer data lakehouse and warehouse structure
• More automated data quality monitoring
• More platform-driven data service capabilities
• Progressive adoption of agent-based and automated approaches for data development, troubleshooting, documentation, and quality checks
IV. Key Responsibilities
1. Data Ingestion & Pipeline Development
• Ingest data from internal and external business systems, third-party platforms, SaaS products, and external data sources; handle data collection, sync, cleansing, and loading
• Participate in building offline and real-time data pipelines using SeaTunnel, Kafka, Flink, Spark, or similar technologies to improve ingestion stability and processing efficiency
• Handle practical challenges in data sync: authentication, pagination, rate limiting, failure retry, incremental sync, backfill, schema changes, and task anomalies
2. Data Warehouse & Data Modeling
• Participate in layered data warehouse development across ODS, DWD, DWS, and ADS layers; build and maintain data models
• Support business domain modeling, metric standardization, shared data model development, and core table maintenance
• Optimize data organization and query performance on OLAP engines such as Doris to provide stable data support for product, operations, growth, customer success, and management analytics
3. Data Quality & Data Governance
• Build and maintain data quality rules for core data pipelines; ensure data accuracy, completeness, consistency, and timeliness
• Participate in data validation, anomaly detection, alerting, and issue resolution; help improve stability of critical data pipelines
• Contribute to data governance capabilities including DataHub or similar tools; improve metadata management, data lineage, data asset catalog, and data standards
4. Data Platform & Data Services
• Participate in building data platform capabilities including data development, task scheduling, monitoring, quality management, governance, and service delivery modules
• Use tools such as DolphinScheduler and StreamPark for task management, scheduling orchestration, and real-time task operations
• Support the data service layer by delivering standardized APIs, metric services, and data capabilities to internal systems, analytics applications, and business tools
• Support underlying data for tools like Superset; ensure data availability for BI dashboards, metric boards, and business monitoring
5. AI Agent & Engineering Automation
• Participate in designing and implementing data development automation tools and engineering agents
• Explore AI agent applications in data development, governance, quality detection, task operations, anomaly diagnosis, and documentation generation
• Leverage large language models and automation tools to improve data engineering efficiency, task stability, and platform intelligence
Requirements
Must-Have
Experience
• 1-4 years of experience in data engineering, data platforms, data warehousing, backend development, analytics engineering, or a related role
• Real project experience in data ingestion, data pipelines, data warehouse development, data modeling, data services, or data platform work
• Strong learning ability and execution skills; able to independently drive small-to-medium data engineering tasks with clear objectives
SQL Skills
• Proficient in SQL for querying, cleansing, aggregation, deduplication, comparison, validation, and metric calculation
• Familiar with joins, window functions, CTEs, aggregation analysis, incremental logic, and basic performance optimization
• Understands data warehouse layering concepts: fact tables, dimension tables, subject domains, metric definitions, and shared models
Data Development
• Proficient in Java or Python for API integration, data processing, automation scripting, and file handling
• Understands common engineering patterns: REST APIs, OAuth/API keys, pagination, rate limiting, retry logic, error handling, logging, and task idempotency
• Good code structure habits; writes clean, maintainable, and reusable code
• Familiar with Git, code review practices, README documentation, logging, testing, and collaborative engineering workflows
Pipeline & Platform Tools
• Familiar with one or more of: SeaTunnel, Kafka, Flink, Spark (data integration, real-time, or offline processing)
• Familiar with one or more of: Doris, ClickHouse, Snowflake, BigQuery, Redshift, Databricks, PostgreSQL (data warehouse, OLAP, or lakehouse systems)
• Familiar with one or more of: DolphinScheduler, StreamPark, Airflow, Dagster, Prefect, dbt (scheduling, development, or task management tools)
• Understands data pipeline operations: scheduling, dependencies, monitoring, failure retry, backfill, version management, and deployment processes
• Candidates are not expected to master all tools, but must have a solid data engineering foundation and the ability to quickly learn new tech stacks
Data Quality & Governance Mindset
• Understands data quality dimensions: accuracy, completeness, consistency, uniqueness, timeliness, and anomaly detection
• Proactively designs data validation rules and can identify and locate data anomalies
• Familiar with metadata management, data lineage, data asset catalogs, and data standards; experience with DataHub or similar platforms is a plus
Collaboration & Communication
• Able to communicate data requirements with analysts, business stakeholders, backend engineers, and product managers
• Clearly describes problems, solutions, risks, progress, and deliverables
• Comfortable with cross-timezone collaboration; strong written and spoken English communication skills
• Willing to participate in regular fixed collaboration sessions with China-based teams and drive work through documentation and async communication
Nice-to-Have
• Experience integrating third-party SaaS data: CRM, ERP, marketing platforms, customer service systems, logistics, e-commerce, payment systems, or ad platforms
• Experience building data lakehouses, data middle platforms, data platforms, or enterprise-level data warehouses
• Experience developing data service APIs, metric services, internal data products, or lightweight backend services
• Experience with data quality frameworks, data lineage, metadata management, data catalogs, observability, or monitoring and alerting
• AWS, GCP, or Azure cloud platform experience
• Docker, CI/CD, Terraform, Kubernetes, or basic DevOps experience
• Experience with LLMs, AI Agents, code generation, automated testing, task inspection, data quality agents, or engineering efficiency tooling
• Experience with cross-border teams, international business, supply chain, e-commerce, logistics, marketing, or customer success data scenarios
Benefits
Starting Pay: 90 - 130k depends on experiences, open to negotiation
401(k)
PTO
Paid Holidays
Insurance