The author, a data analyst, shares how they have been incorporating AI into their daily work routine since 2022. They do not fear AI replacing them, but rather see it as a valuable assistant with a limited but important role.
The author highlights five key ways they leverage AI for their SQL scripts:
Code Explanation: AI tools help the author quickly understand complex SQL code written by other developers or data engineers, reducing the need for additional meetings and explicit documentation.
Code Generation: The author uses AI to generate initial SQL code for common data analysis tasks, then refines and optimizes the code further.
Code Optimization: AI assists the author in identifying performance bottlenecks and suggesting optimizations to improve the efficiency of SQL queries.
Natural Language Querying: The author can ask AI tools questions about data in natural language and receive SQL queries as responses, enabling faster data exploration.
Collaboration and Knowledge Sharing: The author leverages AI to explain SQL concepts and techniques to team members, fostering knowledge sharing and collaborative problem-solving.
Overall, the author has found that integrating AI into their daily data analyst workflow has significantly improved their productivity and efficiency, while still maintaining a balanced and controlled approach to the technology.
다른 언어로
소스 콘텐츠 기반
thepycoach.com
핵심 통찰 요약
by The Pycoach 게시일 thepycoach.com 07-31-2024
https://thepycoach.com/how-i-use-ai-and-sql-in-my-daily-work-as-a-data-analyst-75a27b3e9e79더 깊은 질문