AI Data Engineer
Job Summary:
The AI Data Engineer will play a pivotal role in designing and implementing
advanced agentic AI systems that leverage cutting-edge GPT-based models. In
this dynamic role, you will focus on workflow automation, reasoning
capabilities, and orchestration to enhance organizational efficiency and
innovation.
Key Responsibilities:
-
Design and deploy agentic AI systems using GPT models, emphasizing workflow
automation and optimization.
-
Create and manage complex multi-agent orchestration pipelines utilizing
LangGraph for scalable AI deployments.
-
Integrate end-to-end data solutions using Fabric, Azure Databricks, and
Snowflake to facilitate robust ETL/ELT processes.
-
Develop and maintain APIs and software integrations to support
enterprise-grade applications seamlessly.
-
Collaborate with cross-functional teams to identify AI-driven solutions that
address business challenges and enhance operational efficiency.
-
Conduct performance tuning and troubleshooting of AI systems to ensure
optimal functionality and reliability.
-
Stay abreast of industry trends and emerging technologies to continually
improve AI deployment strategies.
Requirements:
-
Proven experience in designing and deploying agentic AI applications,
specifically using GPT-based models.
-
Strong proficiency in workflow automation and orchestration methodologies,
particularly with LangGraph.
-
Demonstrated expertise in data engineering, including experience with
Fabric, Azure Databricks, and Snowflake.
-
Advanced programming skills in Python and PySpark, with a solid
understanding of API development and integration.
-
Excellent problem-solving and analytical skills, with a keen attention to
detail.
-
Ability to work independently and collaboratively in fast-paced, agile
environments.
-
Bachelor's degree in Computer Science, Data Science, or a related field
(Master's preferred).
Preferred Qualifications:
-
Experience in deploying AI solutions in a cloud-based environment,
particularly on Azure.
-
Familiarity with machine learning frameworks and libraries, such as
TensorFlow or PyTorch.
-
Knowledge of advanced analytics techniques and their application in
real-world scenarios.
-
Previous experience in leading AI-driven projects or teams effectively.
-
Certifications related to AI, cloud integration, or data engineering are a
plus.