--- license: apache-2.0 datasets: - feilongfl/ChineseNewsSummary language: - zh metrics: - accuracy library_name: adapter-transformers pipeline_tag: summarization widget: - text: "概括新闻\n来源:经济参考报\n  国家邮政局监测数据显示,今年春节长假期间(2月10日至17日),全国邮政快递业总体运行安全平稳,寄递渠道畅通有序。具体来看,揽投快递包裹超17亿件,其中,揽收快递包裹10.79亿件,日均揽收量与2023年春节假期相比增长145.2%;投递快递包裹6.41亿件,日均投递量与2023年春节假期相比增长82.1%。\n  国家邮政局相关负责人表示,快递包裹量的良好增长态势,进一步凸显邮政快递业务保通保畅、递送温暖的积极作用,也折射出中国消费新活力。数据显示,自春运开始以来(1月26日至2月17日),全国邮政快递业揽收快递包裹56.55亿件,较2023年春运同期增长30.8%;投递快递包裹59.94亿件,较2023年春运同期增长21%。\n  上述负责人表示,今年春节期间,特色产品和节庆寄递需求旺盛,农产品继续保持增长态势。邮政管理部门坚决守牢安全生产底线,统筹做好春节期间安全生产和寄递服务保障工作。各寄递企业克服低温雨雪天气带来的不利影响,健全完善工作预案,加强人员、运力与物资储备,切实保障在岗快递员合法权益,全力提升年货寄递服务能力。\n  随着春节假期的结束,国内主要快递企业陆续结束春节模式,网络运营转为正常模式。分拨中心、网点相继开工,快递小哥、货车司机和客服人员等回到工作岗位,迎战即将到来的返工返学所带来的业务高峰。\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n\n \n \n .appendQr_wrap{border:1px solid #E6E6E6;padding:8px;}\n .appendQr_normal{float:left;}\n .appendQr_normal img{width:74px;}\n .appendQr_normal_txt{float:left;font-size:20px;line-height:74px;padding-left:20px;color:#333;}\n \n \n \n\n \n\n\n\n责任编辑:王许宁" output: text: "{\"title\": \"全国邮政快递业总体运行安全平稳,寄递渠道畅通有序\", \"class\": \"财经\", \"summary\": \"国家邮政局监测数据显示,今年春节长假期间,全国邮政快递业总体运行安全平稳,寄递渠道畅通有序。揽投快递包裹超17亿件,其中,揽收快递包裹10.79亿件,日均揽收量与2023年春节假期相比增长145.2%;投递快递包裹6.41亿件,日均投递量与2023年春节假期相比增长82.1%。数据显示,自春运开始以来,全国邮政快递业揽收快递包裹56.55亿件,较2023年春运同期增长30.8%;投递快递包裹59.94亿件,较2023年春运同期增长21%。国家邮政局相关负责人表示,快递包裹量的良好增长态势,进一步凸显邮政快递业务保通保畅、递送温暖的积极作用,也折射出中国消费新活力。\"}" --- # Model Card for feilongfl/Mistral-7B-cn_news-v0.1 Chinese news summary ![example](doc/2024-02-19_05-01.png) # Table of Contents - [Model Card for feilongfl/Mistral-7B-cn_news-v0.1](#model-card-for--model_id-) - [Table of Contents](#table-of-contents) - [Table of Contents](#table-of-contents-1) - [Model Details](#model-details) - [Model Description](#model-description) - [Uses](#uses) - [Direct Use](#direct-use) - [Downstream Use [Optional]](#downstream-use-optional) - [Out-of-Scope Use](#out-of-scope-use) - [Bias, Risks, and Limitations](#bias-risks-and-limitations) - [Recommendations](#recommendations) - [Training Details](#training-details) - [Training Data](#training-data) - [Training Procedure](#training-procedure) - [Preprocessing](#preprocessing) - [Speeds, Sizes, Times](#speeds-sizes-times) - [Evaluation](#evaluation) - [Testing Data, Factors & Metrics](#testing-data-factors--metrics) - [Testing Data](#testing-data) - [Factors](#factors) - [Metrics](#metrics) - [Results](#results) - [Model Examination](#model-examination) - [Environmental Impact](#environmental-impact) - [Technical Specifications [optional]](#technical-specifications-optional) - [Model Architecture and Objective](#model-architecture-and-objective) - [Compute Infrastructure](#compute-infrastructure) - [Hardware](#hardware) - [Software](#software) - [Citation](#citation) - [Glossary [optional]](#glossary-optional) - [More Information [optional]](#more-information-optional) - [Model Card Authors [optional]](#model-card-authors-optional) - [Model Card Contact](#model-card-contact) - [How to Get Started with the Model](#how-to-get-started-with-the-model) # Model Details ## Model Description Chinese news summary - **Developed by:** More information needed - **Shared by [Optional]:** More information needed - **Model type:** Language model - **Language(s) (NLP):** zh - **License:** apache-2.0 - **Parent Model:** More information needed - **Resources for more information:** More information needed # Uses ## Direct Use ## Downstream Use [Optional] ## Out-of-Scope Use # Bias, Risks, and Limitations Significant research has explored bias and fairness issues with language models (see, e.g., [Sheng et al. (2021)](https://aclanthology.org/2021.acl-long.330.pdf) and [Bender et al. (2021)](https://dl.acm.org/doi/pdf/10.1145/3442188.3445922)). Predictions generated by the model may include disturbing and harmful stereotypes across protected classes; identity characteristics; and sensitive, social, and occupational groups. ## Recommendations # Training Details ## Training Data More information on training data needed ## Training Procedure ### Preprocessing More information needed ### Speeds, Sizes, Times More information needed # Evaluation ## Testing Data, Factors & Metrics ### Testing Data More information needed ### Factors More information needed ### Metrics More information needed ## Results More information needed # Model Examination More information needed # Environmental Impact Carbon emissions can be estimated using the [Machine Learning Impact calculator](https://mlco2.github.io/impact#compute) presented in [Lacoste et al. (2019)](https://arxiv.org/abs/1910.09700). - **Hardware Type:** More information needed - **Hours used:** More information needed - **Cloud Provider:** More information needed - **Compute Region:** More information needed - **Carbon Emitted:** More information needed # Technical Specifications [optional] ## Model Architecture and Objective More information needed ## Compute Infrastructure More information needed ### Hardware More information needed ### Software More information needed # Citation **BibTeX:** More information needed **APA:** More information needed # Glossary [optional] More information needed # More Information [optional] More information needed # Model Card Authors [optional] feilongfl # Model Card Contact More information needed # How to Get Started with the Model Use the code below to get started with the model.
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