Using the capabilities of the database in the effective implementation of the meat production industry
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Urazbayeva Tezis Inglizcha
Our second table is called prices and contains information about food prices, and it is connected to the foods table by the id number and called the column food_id (Table 2). Table 2 is the structure of the prices table and the data in it
Our last table is called compounds, it stores information about the elements and their amounts in the feed (Table 3). This table is one of the most basic tables and contains a lot of information. Table 3 is the structure of the compounds table and the data in it
The second module stores information about the amount of elements and nutrients required for daily fattening of black cattle. This module also contains three tables, which are connected to each other by id numbers. In this case, our main table is the table of requirements, and the values of nutrients needed for fattening livestock in different amounts are presented. The volume of data in the table is large, and its structure is presented below (4 tables). Table 4 is the structure of the requirements table
Our next table is called weights, where the information about the division of livestock into categories by live weight is stored. The table consists of two columns, its structure and information are presented in the following table (table 5). Table 5 is the structure of the weights table and the data in it
Our next table is called elements, it stores information about the elements in the feed. The number of elements is 7 in total, its structure and information are presented below (table 6). Table 6 is the structure of the table of elements and the information in it
Our third module is the user module, where the information related to the user is stored in 3 tables. Our main table is called users and contains information about users. Our table is simple and has only 4 columns. Its structure is given below (Table 7). Table 7 is the structure of the users table
Our next table in this module is called user_data and serves to store the data entered by the user and the results obtained during the use of the system. The table structure is given below (8 tables). Table 8 is the structure of the users table
Our last table is called daily, and this table is designed to store service data. Categorization was carried out according to the number of grams of fattening per day (Table 9). Table 9 is the structure of the daily table
In conclusion, it can be said that the use of databases in the optimization of the production of meat products is an indispensable and extremely valuable component in the field of modern agro-industry. With the use of databases, farms have the opportunity to significantly improve the efficiency of their activities and achieve the reduction of all costs and benefits of meat production. Also, the use of databases in the optimization of meat production rations plays a decisive role in ensuring the efficiency, quality and stability of this industry. This allows to more accurately predict the results, adapt to changes and achieve high results in the production of meat products that meet the needs of the market and society. References Smith, J. A. (2020). Database Management: Principles and Practices. Wiley. Kimball, R., & Ross, M. (2013). The Data Warehouse Toolkit: The Definitive Guide to Dimensional Modeling. Wiley. Redman, T. C. (2013). Data Driven: Profiting from Your Most Important Business Asset. Harvard Business Review Press. Date, C. J. (2003). An Introduction to Database Systems. Pearson Education. Connolly, T., & Begg, C. (2014). Database Systems: A Practical Approach to Design, Implementation, and Management. Pearson. Inmon, W. H. (2005). Building the Data Warehouse. Wiley. Silverston, L. (2007). The Data Model Resource Book, Volume 1: A Library of Universal Data Models for All Enterprises. Wiley. Laudon, K. C., & Laudon, J. P. (2019). Management Information Systems: Managing the Digital Firm. Pearson. Kim, Y. S., Kim, M. J., & Lee, J. H. (2015). A study on the influence of big data characteristics on value creation. Journal of Information Science, 41(6), 742-759. Download 83.85 Kb. Do'stlaringiz bilan baham: |
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