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Jinglianwen Technology: current situation and solutions of data acquisition and labeling industry
2022-06-13 06:41:00 【Jinglianwen Technology】
China AI The data service industry starts from 2010 From the barbaric growth period in, to the standardized development stage now , As demand continues to escalate , More advanced concept 、 Technology is harder 、 A more efficient profession AI Data service enterprises have become the mainstream trend .
Machine learning relies on the feeding of massive labeled data , The quality of data directly affects AI Whether it can finally land smoothly . As a data annotation industry with strong relevance , It grows rapidly with the development of artificial intelligence .

Current situation of data acquisition and labeling industry
1、 The demand for customized collection and annotation increases
With the diversity of AI Scenes continue to emerge , Relevant enterprises have more urgent requirements for the collection and annotation of multi scenario data in different fields . Different application scenarios require different requirements for data collection and annotation , This puts forward higher requirements for the professionalism of customized collection and annotation services of data service providers . For example, speech synthesis and automatic driving are difficult to build 、3D High difficulty and high threshold marking items such as point cloud , Many small annotation teams without management ability are unable to undertake .
2、 Technology needs to be innovated
AI As a frontier , Huge market potential , Relevant enterprises have a strong understanding of the data Demand and data quality requirements are getting higher and higher , It is impossible to shape the core competitiveness of enterprises through simple manpower stacking , The progressiveness and maturity of service technology have become AI Basic data service enterprises are The decisive factor of market competitiveness .
3、 The management level needs to be improved
at present , Some leading enterprises have established AI Project management platform for data services , Many small teams do not have their own project management platform , This makes it difficult to manage the project efficiently . perfect AI Project management platform for data services , Establish a total quality management and technical personnel training mechanism , It can effectively reduce the management cost , Improve the efficiency of technical personnel , So as to reduce the labor cost .
4、 Data security compliance cannot be guaranteed
Data security compliance has always been the top priority of major enterprises , For example, the security field contains face data 、 Identity information 、 License plate information, etc . In the data acquisition and labeling industry , From the collection of data 、 Annotation of data , And then to data storage and transmission , Every link must ensure data security and compliance .
Jinglianwen Technology AI Training data collection and labeling services and programs
1、 For intelligent driving 、 Intelligent security 、 Smart home 、 Intelligent medical treatment 、 Smart new retail 、 Wisdom Education 、 Smart industry 、 Intelligent Internet 、 Smart Finance 、 Provide data solutions in the top ten fields of intelligent government . Built a national 27 Provinces, cities and municipalities directly under the central government are all over the world 52 Data collection resource networks in countries , It has rich collection channels 、 Scene building ability , Special scene data acquisition capability , It can be designed according to the scheme , For target areas 、 Collect the specific data of the scene ; An advanced data annotation platform is established for data customized annotation service , Support computer vision 、 Speech Engineering 、 Multi type data annotation such as naturallanguageprocessing .
2、 Have the ability to preprocess data with algorithms ; The collection process completely adopts the authorization mechanism ; Have mature and transparent annotations 、 to examine 、 The quality inspection mechanism has the ability to manage and execute on a platform ; With real-time quantitative visualization management system ; Full search with multiple accountability 、 Spot check mechanism ; Have AI Batch detection capability ; Automatically generate team performance and individual performance ; Open the online quality inspection and acceptance channel of Party A ; Support localized deployment and deployment SAAS service .
3、 Self developed data annotation platform , With real-time quantitative visualization management system , Including dataset management 、 project management 、 Personnel management 、 Supply chain management, etc , Have a comprehensive quality inspection process , It can effectively improve the efficiency of human-computer cooperation , Expand capacity , Adjust the marking scheme in time , Manage and control the overdue risk , Accurately control data quality problems ; Establish perfect personnel training for the full-time bid acquisition team 、 The management system , Launch a complete set of AI Industrial talent training solutions , Open theoretical courses respectively 、 Training courses 、 Graduation examination and other training programs , Through the combination of theory and practice, we provide high-quality data acquisition and tagging personnel for the industry .
4、 adopt ISO27001 Information security management system certification and certification ISO9001 Quality management system certification , Sign supplier confidentiality agreement , Formulate and improve the information privacy protection scheme , Set up a working group on data information and privacy protection , Organize the project manager regularly , Quality inspectors and taggers shall be trained and tested for data security and privacy , Ensure data security and compliance , Protect customer data privacy .
About jinglianwen Technology
The products provided by jinglianwen technology are the whole chain AI Data services , From data collection 、 cleaning 、 mark 、 The whole process of arriving at the site 、 "One-stop" work style AI Data services , Assist AI enterprises to solve the corresponding problems of data processing in the whole AI chain .
Jinglianwen technology provides complete voice 、 Images 、 Text 、 video 、 Point cloud's full field data processing capability , Deliver high quality for algorithmic models AI data , It covers intelligent driving 、 Smart city 、 Smart home 、 Smart Finance 、 Wisdom Education 、 Intelligent security 、 Data collection in new retail and other fields 、 Data tagging Services , Build complete AI Data Ecology .
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