OneHR Confirms Operational Efficiency Gains from Joint Research with Osaka City Waterworks Bureau on AI-Powered HR Placement Planning Using Talent Data
OneHR Co., Ltd. announced the results of its joint research with the Osaka City Waterworks Bureau, confirming the feasibility of candidate extraction using generative AI (LLM) for HR placement planning and identifying potential operational reductions. This collaboration, initiated in January 2025, aims to leverage AI and talent data for more effective and efficient HR strategies.
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- 📰 Published: April 6, 2026 at 22:00
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OneHR Co., Ltd. (Headquarters: Shinagawa-ku, Tokyo; Representative Director and President: Yusaburo Karasawa; hereinafter: the Company) announced the results of its "Joint Research on HR Placement Planning Using Talent Data and AI" (Note), conducted in collaboration with the Osaka City Waterworks Bureau since January 2025. The research confirmed that candidate extraction through matching talent information with position requirements using generative AI (LLM) is possible to a certain extent, and identified challenges for practical implementation. The results indicate that a reduction in tasks related to candidate extraction and review can be expected in the future.
Note: For details on the "Joint Research on HR Placement Planning Using Talent Data and AI" conducted in collaboration with the Osaka City Waterworks Bureau, please refer to our press release "OneHR Concludes Agreement with Osaka City Waterworks Bureau on Joint Research for HR Placement Planning Using Talent Data and AI" (https://onehr.jp/news/20250129/).
### **Verification Points**
The joint research aimed to more effectively create HR placement plans, which the Osaka City Waterworks Bureau has traditionally carried out, by utilizing talent information. Specifically, the following two points were verified:
* Verification of whether AI can enable more effective and efficient HR placement planning.
* Verification of what kind of data collection, accumulation, and organization is necessary for AI-driven HR placement planning.
### **Implementation Details**
The HR placement planning operations at the Osaka City Waterworks Bureau involve a combination of two types of placement considerations:
1. Succession planning for vacant managerial positions (section chief, deputy section chief, unit chief) due to transfers or other reasons.
2. Reassignment of staff members who have gained experience in the same department for a certain period to new departments to acquire diverse work experience.
For each of these, efficiency verification was conducted using generative AI (LLM) and combinatorial optimization algorithms.
Note: For details on the "Joint Research on HR Placement Planning Using Talent Data and AI" conducted in collaboration with the Osaka City Waterworks Bureau, please refer to our press release "OneHR Concludes Agreement with Osaka City Waterworks Bureau on Joint Research for HR Placement Planning Using Talent Data and AI" (https://onehr.jp/news/20250129/).
### **Verification Points**
The joint research aimed to more effectively create HR placement plans, which the Osaka City Waterworks Bureau has traditionally carried out, by utilizing talent information. Specifically, the following two points were verified:
* Verification of whether AI can enable more effective and efficient HR placement planning.
* Verification of what kind of data collection, accumulation, and organization is necessary for AI-driven HR placement planning.
### **Implementation Details**
The HR placement planning operations at the Osaka City Waterworks Bureau involve a combination of two types of placement considerations:
1. Succession planning for vacant managerial positions (section chief, deputy section chief, unit chief) due to transfers or other reasons.
2. Reassignment of staff members who have gained experience in the same department for a certain period to new departments to acquire diverse work experience.
For each of these, efficiency verification was conducted using generative AI (LLM) and combinatorial optimization algorithms.
FAQ
What is the purpose of the joint research between One HR and Osaka City Waterworks Bureau?
The purpose is to use personnel data and AI to make personnel allocation planning more effective and efficient, and to verify the data collection and organization methods necessary for AI-based personnel allocation.
What were the outcomes of the joint research?
The research found that candidate extraction using generative AI (LLM) is partially feasible, identified challenges for practical implementation, and indicated potential future reductions in workload.
What types of personnel allocation efficiency were verified?
Efficiency was verified for two types of personnel allocation: successor placement for managerial positions and reassignment of staff to departments they have not previously worked in, using generative AI and combinatorial optimization algorithms.