Submit Search
Upload
Ragic - 庫存模組介紹
•
Download as PPTX, PDF
•
0 likes
•
23,258 views
Ragic
Follow
介紹Ragic的庫存模組的使用說明。
Read less
Read more
Software
Report
Share
Report
Share
1 of 24
Download now
Recommended
介紹Ragic的ERP模組的使用說明,內容包含:訂單管理、庫存管理、採購管理及財會系統。
Ragic - ERP模組介紹
Ragic - ERP模組介紹
Ragic
介紹Ragic的財會系統的使用說明。
Ragic - 財會系統介紹
Ragic - 財會系統介紹
Ragic
Many Ragic features allow you to integrate Ragic with your existing systems, such as manual import, periodic import, API integration, and Zapier integration. These integration tools will massively assist you with data synchronization on different applications!
Integrating Ragic With Your Existing Systems
Integrating Ragic With Your Existing Systems
Ragic
品管七大手法
品管七大手法
5045033
Improving the Spark SQL usability and computing efficiency is one of the missions for Linkedin’s Spark team. In this talk, we will present the Spark SQL ecosystem and roadmaps at Linkedin, and introduce the highlighted projects we are working on, such as: * Improving Dataset performance with automated column pruning * Bringing an efficient 2d join algorithm to Spark SQL * Fixing join skewness with adaptive execution * Enhancing the cost-optimizer with a history-based learning approach
Improving Spark SQL at LinkedIn
Improving Spark SQL at LinkedIn
Databricks
Лекц 1
Лекц 1
Chinzorig Undarmaa
Best Practices – Extreme Performance with Data Warehousing on Oracle Database
Best Practices – Extreme Performance with Data Warehousing on Oracle Database
Best Practices – Extreme Performance with Data Warehousing on Oracle Database
Edgar Alejandro Villegas
Spark best practices, tips, and tricks learned from own experience and others in the field.
Spark Tips & Tricks
Spark Tips & Tricks
Jason Hubbard
Recommended
介紹Ragic的ERP模組的使用說明,內容包含:訂單管理、庫存管理、採購管理及財會系統。
Ragic - ERP模組介紹
Ragic - ERP模組介紹
Ragic
介紹Ragic的財會系統的使用說明。
Ragic - 財會系統介紹
Ragic - 財會系統介紹
Ragic
Many Ragic features allow you to integrate Ragic with your existing systems, such as manual import, periodic import, API integration, and Zapier integration. These integration tools will massively assist you with data synchronization on different applications!
Integrating Ragic With Your Existing Systems
Integrating Ragic With Your Existing Systems
Ragic
品管七大手法
品管七大手法
5045033
Improving the Spark SQL usability and computing efficiency is one of the missions for Linkedin’s Spark team. In this talk, we will present the Spark SQL ecosystem and roadmaps at Linkedin, and introduce the highlighted projects we are working on, such as: * Improving Dataset performance with automated column pruning * Bringing an efficient 2d join algorithm to Spark SQL * Fixing join skewness with adaptive execution * Enhancing the cost-optimizer with a history-based learning approach
Improving Spark SQL at LinkedIn
Improving Spark SQL at LinkedIn
Databricks
Лекц 1
Лекц 1
Chinzorig Undarmaa
Best Practices – Extreme Performance with Data Warehousing on Oracle Database
Best Practices – Extreme Performance with Data Warehousing on Oracle Database
Best Practices – Extreme Performance with Data Warehousing on Oracle Database
Edgar Alejandro Villegas
Spark best practices, tips, and tricks learned from own experience and others in the field.
Spark Tips & Tricks
Spark Tips & Tricks
Jason Hubbard
Join this session to hear why Smartsheet decided to transition from their entirely SQL-based system to Snowflake and Databricks, and learn how that transition has made an immediate impact on their team, company and customer experience through enabling faster, informed data decisions.
Smartsheet’s Transition to Snowflake and Databricks: The Why and Immediate Im...
Smartsheet’s Transition to Snowflake and Databricks: The Why and Immediate Im...
Databricks
What are the design considerations that go into architecting a modern data warehouse? This presentation will cover some of the requirements analysis, design decisions, and execution challenges of building a modern data lake/data warehouse.
Data Engineer's Lunch #85: Designing a Modern Data Stack
Data Engineer's Lunch #85: Designing a Modern Data Stack
Anant Corporation
資料科學 (Data Science) 與工業 4.0(Industry 4.0) 是近幾年來廣為討論的主題,本課程以製造現場為實證對象,從資料的視角來尋求改善的契機。在複雜的製造現場環境裡,存在著各式各樣的議題,諸如品質、成本、交期、創新、彈性等,皆需持續改善以提升公司核心競爭力。事實上,製造業在台灣經濟發展上也扮演著舉足輕重的角色,在製造業的轉型過程中,如何以資料科學的角度,整合自動化實務和管理經驗,導入方法論以累積製造智慧 (Manufacturing Intelligence),相信是這個世代關注的焦點之一。 這門課程由國立成功大學資訊系暨製造所李家岩副教授主講,希望以深入淺出的方式,對製造資料科學作一整體性的介紹。課程專注於「問題本質的探索與觀念的釐清」,並輔以案例介紹工程資料分析時會遭遇的困難與挑戰。此外,對於機器學習或資料探勘強調的預測性分析 (Predictive Analytics),課程更進一步地延伸到處方性分析 (Prescriptive Analytics),以連結到管理者視角下,風險評估與決策制定的過程。希望課程內容能引起大家的興趣,並帶給大家在未來繼續學習進階知識的基礎。
[系列活動] 智慧製造與生產線上的資料科學 (製造資料科學:從預測性思維到處方性決策)
[系列活動] 智慧製造與生產線上的資料科學 (製造資料科學:從預測性思維到處方性決策)
台灣資料科學年會
The slides contain introductory text to Data Warehousing which can be used for a flipped classroom. Students should refer this before the lecture.
Data warehousing - Dr. Radhika Kotecha
Data warehousing - Dr. Radhika Kotecha
Radhika Kotecha
This presentation is a brief primer on Dimensional Modeling for BI
Dimensional Modeling
Dimensional Modeling
aksrauf
Basic Introduction of Data Warehousing
Basic Introduction of Data Warehousing from Adiva Consulting
Basic Introduction of Data Warehousing from Adiva Consulting
adivasoft
MIS
Data warehouse
Data warehouse
safaataamsah
Giriş seviyesinde veri ambarı nedir, nasıl oluşturulur, hangi teknikler kullanılır, metodololojisi nedir sorularına yanıt arıyoruz.
Veri Ambarı Nedir, Nasıl Oluşturulur?
Veri Ambarı Nedir, Nasıl Oluşturulur?
Gurcan Orhan
Text and metadata extraction with Apache Tika
Text and metadata extraction with Apache Tika
Jukka Zitting
It’s very easy to be distracted by the latest and greatest approaches with technology, but sometimes there’s a reason old approaches stand the test of time. Star Schemas & Kimball is one of those things that isn’t going anywhere, but as we move towards the “Data Lakehouse” paradigm – how appropriate is this modelling technique, and how can we harness the Delta Engine & Spark 3.0 to maximise it’s performance?
Achieving Lakehouse Models with Spark 3.0
Achieving Lakehouse Models with Spark 3.0
Databricks
Data Warehousing
Data warehouse
Data warehouse
Ramkrishna bhagat
xxa
Presentation1 өгөгдлийн сан
Presentation1 өгөгдлийн сан
baterden
Data warehousing Universidade federal do amazonas
Data warehousing - Técnicas e procedimentos
Data warehousing - Técnicas e procedimentos
Marcos Pessoa
Finance Data Lake objective is to create a centralized enterprise data repository for all Finance and Supply Chain data. It serves as the single source of truth. It enables a self-service discovery Analytics platform for business users to answer adhoc business questions and derive critical insights. The data lake is based on open source Hadoop big data platform and a very cost effective solution in breaking the ERP data silos and simplifying the data architecture in the enterprise. POCs were conducted on in-house Hortonworks Hadoop data platform to validate the cluster performance for Production volumes. Based on business priorities, an initial roadmap was defined using 3 data sources including 2 SAP ERPs and Peoplesoft (OLTP systems). Development environment was established in AWS Cloud for agile delivery. The near real time data ingestion architecture for the data lake was defined using replication tools and custom SQOOP based micro-batching framework and data persisted in Apache Hive DB in ORC format. Data and user security is implemented using Apache Ranger and sensitive data stored at rest in encryption zones. Business data sets were developed in Hive scripts and scheduled using Oozie. Multiple reporting tools connectivity including SQL tools, Excel and Tableau were enabled for Self-service Analytics. Upon successful implementation of the initial phase, a full roadmap is established to extend the Finance data lake to over 25 data sources and enhance data ingestion to scale as well as enable OLAP tools on Hadoop.
Verizon: Finance Data Lake implementation as a Self Service Discovery Big Dat...
Verizon: Finance Data Lake implementation as a Self Service Discovery Big Dat...
DataWorks Summit
7-класс.Информатика
Информациялык модель
Информациялык модель
Kasymbek Junusaliev
Introduction to QuerySurge Webinar Wednesday, April 29th 2020 @11am ET Eric Smyth, Director of Alliances Bill Hayduk, CEO Matt Moss, Product Manager This is the slide deck for our webinar. Learn how QuerySurge automates the data validation and testing of Big Data, Data Warehouses, Business Intelligence Reports and Enterprise Applications with full DevOps functionality for continuous testing. --------------------------------------------------------------------------------- Objective During this webinar, we demonstrate how QuerySurge solves the following challenges: - Your need for data quality at speed - How to automate your ETL testing process - Your ability to test across your different data platforms - How to integrate ETL testing into your DataOps pipeline - How to analyze your data and pinpoint anomalies quickly ------------------------------------------------------------------------------------- Who should view this? - ETL Developers /Testers - Data Architects / Analysts - DBAs - BI Developers / Analysts - IT Architects - Managers of Data, BI & Analytics groups: CTOs, Directors, Vice Presidents, Project Leads And anyone else with an interest in the Data & Analytics space who is interested in an automation solution for data validation & testing while improving data quality.
An introduction to QuerySurge webinar
An introduction to QuerySurge webinar
RTTS
AWS (Amazon Redshift) presentation
AWS (Amazon Redshift) presentation
Volodymyr Rovetskiy
Speaker: Hari Shreedharan Data Day Texas 2015 Apache Spark has emerged over the past year as the imminent successor to Hadoop MapReduce. Spark can process data in memory at very high speed, while still be able to spill to disk if required. Spark’s powerful, yet flexible API allows users to write complex applications very easily without worrying about the internal workings and how the data gets processed on the cluster. Spark comes with an extremely powerful Streaming API to process data as it is ingested. Spark Streaming integrates with popular data ingest systems like Apache Flume, Apache Kafka, Amazon Kinesis etc. allowing users to process data as it comes in. In this talk, Hari will discuss the basics of Spark Streaming, its API and its integration with Flume, Kafka and Kinesis. Hari will also discuss a real-world example of a Spark Streaming application, and how code can be shared between a Spark application and a Spark Streaming application. Each stage of the application execution will be presented, which can help understand practices while writing such an application. Hari will finally discuss how to write a custom application and a custom receiver to receive data from other systems.
Real Time Data Processing using Spark Streaming | Data Day Texas 2015
Real Time Data Processing using Spark Streaming | Data Day Texas 2015
Cloudera, Inc.
近年因電子商務及數位化的轉變,化妝品產業步入高度競爭的環境,甚至小品牌更在特定品項的表現超越傳統品牌!此次報告,從全球市場概覽引入主題,接著介紹台灣在產業中的分工地位,最後以未來的展望及P&G個案作結。對於CPG市場及保養品市場有興趣的觀眾們,千萬別錯過此份報告了!
Junior產業報告: 化妝保養品產業
Junior產業報告: 化妝保養品產業
Collaborator
munu zorigoo hiiv
Мэдээллийн системийг хөгжүүлэх
Мэдээллийн системийг хөгжүүлэх
Khishighuu Myanganbuu
Millones de negocios usan Excel para gestionar sus datos, porque es rápido e intuitivo. Pero cuando múltiples usuarios y datos complejos están involucrados, es una pesadilla. Ragic es la nueva generación de base de datos, simple como Excel, potente como una base de datos.
Introducción a Ragic - La herramienta #1 sin código para digitalizar tus proc...
Introducción a Ragic - La herramienta #1 sin código para digitalizar tus proc...
Ragic
何百万ものビジネスがデータを管理するためにExcelを使用しています。それは迅速で直感的だからです。しかし、複数のユーザーや複雑なデータが絡むと、それは悪夢となります。 Ragicは次世代のデータベースであり、Excelのようにシンプルでありながら、データベースのように強力です。
Ragic紹介 - ビジネスプロセスのDX化:最強のノーコードツール
Ragic紹介 - ビジネスプロセスのDX化:最強のノーコードツール
Ragic
More Related Content
What's hot
Join this session to hear why Smartsheet decided to transition from their entirely SQL-based system to Snowflake and Databricks, and learn how that transition has made an immediate impact on their team, company and customer experience through enabling faster, informed data decisions.
Smartsheet’s Transition to Snowflake and Databricks: The Why and Immediate Im...
Smartsheet’s Transition to Snowflake and Databricks: The Why and Immediate Im...
Databricks
What are the design considerations that go into architecting a modern data warehouse? This presentation will cover some of the requirements analysis, design decisions, and execution challenges of building a modern data lake/data warehouse.
Data Engineer's Lunch #85: Designing a Modern Data Stack
Data Engineer's Lunch #85: Designing a Modern Data Stack
Anant Corporation
資料科學 (Data Science) 與工業 4.0(Industry 4.0) 是近幾年來廣為討論的主題,本課程以製造現場為實證對象,從資料的視角來尋求改善的契機。在複雜的製造現場環境裡,存在著各式各樣的議題,諸如品質、成本、交期、創新、彈性等,皆需持續改善以提升公司核心競爭力。事實上,製造業在台灣經濟發展上也扮演著舉足輕重的角色,在製造業的轉型過程中,如何以資料科學的角度,整合自動化實務和管理經驗,導入方法論以累積製造智慧 (Manufacturing Intelligence),相信是這個世代關注的焦點之一。 這門課程由國立成功大學資訊系暨製造所李家岩副教授主講,希望以深入淺出的方式,對製造資料科學作一整體性的介紹。課程專注於「問題本質的探索與觀念的釐清」,並輔以案例介紹工程資料分析時會遭遇的困難與挑戰。此外,對於機器學習或資料探勘強調的預測性分析 (Predictive Analytics),課程更進一步地延伸到處方性分析 (Prescriptive Analytics),以連結到管理者視角下,風險評估與決策制定的過程。希望課程內容能引起大家的興趣,並帶給大家在未來繼續學習進階知識的基礎。
[系列活動] 智慧製造與生產線上的資料科學 (製造資料科學:從預測性思維到處方性決策)
[系列活動] 智慧製造與生產線上的資料科學 (製造資料科學:從預測性思維到處方性決策)
台灣資料科學年會
The slides contain introductory text to Data Warehousing which can be used for a flipped classroom. Students should refer this before the lecture.
Data warehousing - Dr. Radhika Kotecha
Data warehousing - Dr. Radhika Kotecha
Radhika Kotecha
This presentation is a brief primer on Dimensional Modeling for BI
Dimensional Modeling
Dimensional Modeling
aksrauf
Basic Introduction of Data Warehousing
Basic Introduction of Data Warehousing from Adiva Consulting
Basic Introduction of Data Warehousing from Adiva Consulting
adivasoft
MIS
Data warehouse
Data warehouse
safaataamsah
Giriş seviyesinde veri ambarı nedir, nasıl oluşturulur, hangi teknikler kullanılır, metodololojisi nedir sorularına yanıt arıyoruz.
Veri Ambarı Nedir, Nasıl Oluşturulur?
Veri Ambarı Nedir, Nasıl Oluşturulur?
Gurcan Orhan
Text and metadata extraction with Apache Tika
Text and metadata extraction with Apache Tika
Jukka Zitting
It’s very easy to be distracted by the latest and greatest approaches with technology, but sometimes there’s a reason old approaches stand the test of time. Star Schemas & Kimball is one of those things that isn’t going anywhere, but as we move towards the “Data Lakehouse” paradigm – how appropriate is this modelling technique, and how can we harness the Delta Engine & Spark 3.0 to maximise it’s performance?
Achieving Lakehouse Models with Spark 3.0
Achieving Lakehouse Models with Spark 3.0
Databricks
Data Warehousing
Data warehouse
Data warehouse
Ramkrishna bhagat
xxa
Presentation1 өгөгдлийн сан
Presentation1 өгөгдлийн сан
baterden
Data warehousing Universidade federal do amazonas
Data warehousing - Técnicas e procedimentos
Data warehousing - Técnicas e procedimentos
Marcos Pessoa
Finance Data Lake objective is to create a centralized enterprise data repository for all Finance and Supply Chain data. It serves as the single source of truth. It enables a self-service discovery Analytics platform for business users to answer adhoc business questions and derive critical insights. The data lake is based on open source Hadoop big data platform and a very cost effective solution in breaking the ERP data silos and simplifying the data architecture in the enterprise. POCs were conducted on in-house Hortonworks Hadoop data platform to validate the cluster performance for Production volumes. Based on business priorities, an initial roadmap was defined using 3 data sources including 2 SAP ERPs and Peoplesoft (OLTP systems). Development environment was established in AWS Cloud for agile delivery. The near real time data ingestion architecture for the data lake was defined using replication tools and custom SQOOP based micro-batching framework and data persisted in Apache Hive DB in ORC format. Data and user security is implemented using Apache Ranger and sensitive data stored at rest in encryption zones. Business data sets were developed in Hive scripts and scheduled using Oozie. Multiple reporting tools connectivity including SQL tools, Excel and Tableau were enabled for Self-service Analytics. Upon successful implementation of the initial phase, a full roadmap is established to extend the Finance data lake to over 25 data sources and enhance data ingestion to scale as well as enable OLAP tools on Hadoop.
Verizon: Finance Data Lake implementation as a Self Service Discovery Big Dat...
Verizon: Finance Data Lake implementation as a Self Service Discovery Big Dat...
DataWorks Summit
7-класс.Информатика
Информациялык модель
Информациялык модель
Kasymbek Junusaliev
Introduction to QuerySurge Webinar Wednesday, April 29th 2020 @11am ET Eric Smyth, Director of Alliances Bill Hayduk, CEO Matt Moss, Product Manager This is the slide deck for our webinar. Learn how QuerySurge automates the data validation and testing of Big Data, Data Warehouses, Business Intelligence Reports and Enterprise Applications with full DevOps functionality for continuous testing. --------------------------------------------------------------------------------- Objective During this webinar, we demonstrate how QuerySurge solves the following challenges: - Your need for data quality at speed - How to automate your ETL testing process - Your ability to test across your different data platforms - How to integrate ETL testing into your DataOps pipeline - How to analyze your data and pinpoint anomalies quickly ------------------------------------------------------------------------------------- Who should view this? - ETL Developers /Testers - Data Architects / Analysts - DBAs - BI Developers / Analysts - IT Architects - Managers of Data, BI & Analytics groups: CTOs, Directors, Vice Presidents, Project Leads And anyone else with an interest in the Data & Analytics space who is interested in an automation solution for data validation & testing while improving data quality.
An introduction to QuerySurge webinar
An introduction to QuerySurge webinar
RTTS
AWS (Amazon Redshift) presentation
AWS (Amazon Redshift) presentation
Volodymyr Rovetskiy
Speaker: Hari Shreedharan Data Day Texas 2015 Apache Spark has emerged over the past year as the imminent successor to Hadoop MapReduce. Spark can process data in memory at very high speed, while still be able to spill to disk if required. Spark’s powerful, yet flexible API allows users to write complex applications very easily without worrying about the internal workings and how the data gets processed on the cluster. Spark comes with an extremely powerful Streaming API to process data as it is ingested. Spark Streaming integrates with popular data ingest systems like Apache Flume, Apache Kafka, Amazon Kinesis etc. allowing users to process data as it comes in. In this talk, Hari will discuss the basics of Spark Streaming, its API and its integration with Flume, Kafka and Kinesis. Hari will also discuss a real-world example of a Spark Streaming application, and how code can be shared between a Spark application and a Spark Streaming application. Each stage of the application execution will be presented, which can help understand practices while writing such an application. Hari will finally discuss how to write a custom application and a custom receiver to receive data from other systems.
Real Time Data Processing using Spark Streaming | Data Day Texas 2015
Real Time Data Processing using Spark Streaming | Data Day Texas 2015
Cloudera, Inc.
近年因電子商務及數位化的轉變,化妝品產業步入高度競爭的環境,甚至小品牌更在特定品項的表現超越傳統品牌!此次報告,從全球市場概覽引入主題,接著介紹台灣在產業中的分工地位,最後以未來的展望及P&G個案作結。對於CPG市場及保養品市場有興趣的觀眾們,千萬別錯過此份報告了!
Junior產業報告: 化妝保養品產業
Junior產業報告: 化妝保養品產業
Collaborator
munu zorigoo hiiv
Мэдээллийн системийг хөгжүүлэх
Мэдээллийн системийг хөгжүүлэх
Khishighuu Myanganbuu
What's hot
(20)
Smartsheet’s Transition to Snowflake and Databricks: The Why and Immediate Im...
Smartsheet’s Transition to Snowflake and Databricks: The Why and Immediate Im...
Data Engineer's Lunch #85: Designing a Modern Data Stack
Data Engineer's Lunch #85: Designing a Modern Data Stack
[系列活動] 智慧製造與生產線上的資料科學 (製造資料科學:從預測性思維到處方性決策)
[系列活動] 智慧製造與生產線上的資料科學 (製造資料科學:從預測性思維到處方性決策)
Data warehousing - Dr. Radhika Kotecha
Data warehousing - Dr. Radhika Kotecha
Dimensional Modeling
Dimensional Modeling
Basic Introduction of Data Warehousing from Adiva Consulting
Basic Introduction of Data Warehousing from Adiva Consulting
Data warehouse
Data warehouse
Veri Ambarı Nedir, Nasıl Oluşturulur?
Veri Ambarı Nedir, Nasıl Oluşturulur?
Text and metadata extraction with Apache Tika
Text and metadata extraction with Apache Tika
Achieving Lakehouse Models with Spark 3.0
Achieving Lakehouse Models with Spark 3.0
Data warehouse
Data warehouse
Presentation1 өгөгдлийн сан
Presentation1 өгөгдлийн сан
Data warehousing - Técnicas e procedimentos
Data warehousing - Técnicas e procedimentos
Verizon: Finance Data Lake implementation as a Self Service Discovery Big Dat...
Verizon: Finance Data Lake implementation as a Self Service Discovery Big Dat...
Информациялык модель
Информациялык модель
An introduction to QuerySurge webinar
An introduction to QuerySurge webinar
AWS (Amazon Redshift) presentation
AWS (Amazon Redshift) presentation
Real Time Data Processing using Spark Streaming | Data Day Texas 2015
Real Time Data Processing using Spark Streaming | Data Day Texas 2015
Junior產業報告: 化妝保養品產業
Junior產業報告: 化妝保養品產業
Мэдээллийн системийг хөгжүүлэх
Мэдээллийн системийг хөгжүүлэх
More from Ragic
Millones de negocios usan Excel para gestionar sus datos, porque es rápido e intuitivo. Pero cuando múltiples usuarios y datos complejos están involucrados, es una pesadilla. Ragic es la nueva generación de base de datos, simple como Excel, potente como una base de datos.
Introducción a Ragic - La herramienta #1 sin código para digitalizar tus proc...
Introducción a Ragic - La herramienta #1 sin código para digitalizar tus proc...
Ragic
何百万ものビジネスがデータを管理するためにExcelを使用しています。それは迅速で直感的だからです。しかし、複数のユーザーや複雑なデータが絡むと、それは悪夢となります。 Ragicは次世代のデータベースであり、Excelのようにシンプルでありながら、データベースのように強力です。
Ragic紹介 - ビジネスプロセスのDX化:最強のノーコードツール
Ragic紹介 - ビジネスプロセスのDX化:最強のノーコードツール
Ragic
Millions of businesses use Excel to manage their data, because it's quick and intuitive. But when multiple users and complex data are involved, it's a nightmare. Ragic is the next generation of database, simple as Excel, powerful as a database.
Introduction to Ragic - #1 No Code tool for digitalizing your business proces...
Introduction to Ragic - #1 No Code tool for digitalizing your business proces...
Ragic
Ragic has implemented various measures to ensure data security: certification, compliance, physical security, data storage security, network and system security, application architecture security, personnel security, backup and disaster prevention, and on-premise servers.
Ragic - Data Security Overview
Ragic - Data Security Overview
Ragic
包括 ISO 認證、資安合規性、主機實體安全性、網路與系統安全性、資料儲存安全性、程式架構安全性、人員安全性、備份與防災各面向的說明。有特殊考量的客戶,也可以選擇將資料放在自己的主機(私有主機方案)。
Ragic 資訊安全簡介
Ragic 資訊安全簡介
Ragic
Introducción al diseño de base de datos Ragic en la nube para tu negocio. Excelente para curso de entrenamiento interno para enseñar a tu equipo como diseñar bases de datos Ragic en la nube para uso diario.
Diseño de Base de Datos Ragic 101
Diseño de Base de Datos Ragic 101
Ragic
成千上萬的企業都使用 Excel 來管理他們的資料,因為實在是太快太容易了。但是當使用者人數增多,或是資料結構變複雜的時候,很快地會變成噩夢一場。Ragic 是下一代的資料庫系統,跟 Excel 一樣簡單直覺,卻跟資料庫一樣功能完整。
Ragic 簡介 - 最強大的 No Code 企業電子化工具
Ragic 簡介 - 最強大的 No Code 企業電子化工具
Ragic
如果你「想導入 CRM」但「不太確定具體要導入哪些類型」,歡迎來看看這份從具體需求出發的分類介紹。
找 CRM 該認識的六個分類
找 CRM 該認識的六個分類
Ragic
初次接觸 Ragic 的人,很難馬上理解 Ragic 是做什麼的、符不符合你的需求。工商社會,時間寶貴~不廢話,以下奉上懶人包,給有需要的朋友。
關於 Ragic 的 10 個快問快答
關於 Ragic 的 10 個快問快答
Ragic
在 Ragic 掃條碼的三大常見功能:(1) 掃條碼快速輸入一組編碼、(2) 掃條碼快速找到一張表單或一筆資料、 (3) 掃條碼快速執行一個動作
Ragic 條碼功能簡介
Ragic 條碼功能簡介
Ragic
一、手動匯入匯出 二、定期匯入匯出 三、進階 Http API 整合
Ragic 整合方式彙整
Ragic 整合方式彙整
Ragic
What is Ragic? What exactly can you do with your customizable Ragic database? Here are all the answers to your questions about the amazing online database builder!
Ragic Quick Guide: Frequently Asked Questions & Answers
Ragic Quick Guide: Frequently Asked Questions & Answers
Ragic
因應新型冠狀病毒(Covid-19),Ragic 製作了免費的「校園防疫每日體溫量測範本」提供給學校師生使用。本文件為學校老師安裝此模組後,學生、家長每天如何使用此範本記錄體溫的說明。 這個範本可以讓老師一次快速建立一個班級學生的線上體溫紀錄表、快速大量發送信件提供填寫連結給學生,學生不論使用電腦、平板或手機都可以跨裝置記錄體溫,體溫異常時會發送提醒給老師,且提供遮罩模式保障學生隱私。
體溫測量資料填寫家長學生使用說明
體溫測量資料填寫家長學生使用說明
Ragic
因應新型冠狀病毒(Covid-19),Ragic 製作了免費的「校園防疫每日體溫量測範本」提供給學校師生使用。本文件為學校老師使用此範本的說明。 這個範本可以讓老師一次快速建立一個班級學生的線上體溫紀錄表、快速大量發送信件提供填寫連結給學生,學生不論使用電腦、平板或手機都可以跨裝置記錄體溫,體溫異常時會發送提醒給老師,且提供遮罩模式保障學生隱私。
體溫測量範本學校老師使用說明
體溫測量範本學校老師使用說明
Ragic
介紹Ragic的採購模組的使用說明。
Ragic - 採購模組介紹
Ragic - 採購模組介紹
Ragic
介紹Ragic的訂單管理模組的使用說明。
Ragic - 訂單管理模組介紹
Ragic - 訂單管理模組介紹
Ragic
Introduction to designing a Ragic cloud database for your business. Great for internal training course to teach your team how to design Ragic cloud databases for everyday use.
Ragic Database design 101
Ragic Database design 101
Ragic
Ragic 云端数据库设计入门课程投视频。适合企业内部教育训练使用,方便用一门简短的课程来让团队每个人了解如何使用 Ragic 云端数据库来设计出符合组织流程需求的电子化表单以及数据库系统。
Ragic 数据库设计入门
Ragic 数据库设计入门
Ragic
Ragic 雲端資料庫設計入門課程投影片。適合企業內部教育訓練使用,方便用一門簡短的課程來讓團隊每個人了解如何使用 Ragic 雲端資料庫來設計出符合組織流程需求的電子化表單以及資料庫系統。
Ragic 資料庫設計入門
Ragic 資料庫設計入門
Ragic
成千上万的企业都使用 Excel 来管理他们的数据,因为实在是太快太容易了。但是当使用者人数增多,或是数据结构变复杂的时候,很快地会变成噩梦一场。Ragic是下一代的数据库系统,跟 Excel 一样简单直觉,却跟数据库一样功能完整。
Ragic简介 - Excel式企业云数据库
Ragic简介 - Excel式企业云数据库
Ragic
More from Ragic
(20)
Introducción a Ragic - La herramienta #1 sin código para digitalizar tus proc...
Introducción a Ragic - La herramienta #1 sin código para digitalizar tus proc...
Ragic紹介 - ビジネスプロセスのDX化:最強のノーコードツール
Ragic紹介 - ビジネスプロセスのDX化:最強のノーコードツール
Introduction to Ragic - #1 No Code tool for digitalizing your business proces...
Introduction to Ragic - #1 No Code tool for digitalizing your business proces...
Ragic - Data Security Overview
Ragic - Data Security Overview
Ragic 資訊安全簡介
Ragic 資訊安全簡介
Diseño de Base de Datos Ragic 101
Diseño de Base de Datos Ragic 101
Ragic 簡介 - 最強大的 No Code 企業電子化工具
Ragic 簡介 - 最強大的 No Code 企業電子化工具
找 CRM 該認識的六個分類
找 CRM 該認識的六個分類
關於 Ragic 的 10 個快問快答
關於 Ragic 的 10 個快問快答
Ragic 條碼功能簡介
Ragic 條碼功能簡介
Ragic 整合方式彙整
Ragic 整合方式彙整
Ragic Quick Guide: Frequently Asked Questions & Answers
Ragic Quick Guide: Frequently Asked Questions & Answers
體溫測量資料填寫家長學生使用說明
體溫測量資料填寫家長學生使用說明
體溫測量範本學校老師使用說明
體溫測量範本學校老師使用說明
Ragic - 採購模組介紹
Ragic - 採購模組介紹
Ragic - 訂單管理模組介紹
Ragic - 訂單管理模組介紹
Ragic Database design 101
Ragic Database design 101
Ragic 数据库设计入门
Ragic 数据库设计入门
Ragic 資料庫設計入門
Ragic 資料庫設計入門
Ragic简介 - Excel式企业云数据库
Ragic简介 - Excel式企业云数据库
Ragic - 庫存模組介紹
1.
Ragic ERP –
庫存模組教學
2.
開始之前… 先了解Ragic的重要基礎觀念 • 1
表單的表單頁與列表頁 • 2 一般獨立欄位、子表格欄位及敘述欄位 • 3 連結與載入(從其他表單選擇)
3.
1 表單的表單頁與列表頁 • 一張表單儲存多筆資料,例如一張商品表單可以存多筆商品資料 •
Ragic的表單是一體兩面的,分為列表頁與表單頁 列表頁列出所有資料 表單頁則是一筆資料的詳細資訊
4.
2 一般獨立欄位、子表格欄位及敘述欄位 • 一張表單(表單頁)上可以設計三種欄位 敘述欄位用來呈現 固定文字敘述 一般獨立欄位用來儲存單一資訊 子表格欄位用來 儲存多筆資訊
5.
• 最常使用的連結工具,讓你可以從另一張表單選擇並載入相關資訊 3 連結與載入(從其他表單選擇) 直接輸入選項 點開選單選擇 或 自動載入相關資訊
6.
流程圖
7.
銷售商品 商品庫存 採購商品 商品單價 管理 倉庫庫存
商品廠商 價格 = = 一個商品及其多個單價 一個商品及其 多個倉庫地點的庫存數量 一個商品及向多個廠商 採購此商品的價格 銷售商品、商品庫存及採購商品表單其實是多版本表單,意即他們共享資料來源。 也就是說,當你在銷售商品表單中新增一筆新的資料,該資料也會同步出現在商 品庫存及採購商品表單中,差別只在於他們的子表格所記錄的是不同的內容。
8.
庫存管理
9.
• 庫存模組主要用來管理商品的庫存,從倉庫地點的管理到商品在 每個倉庫地點的庫存數量管理,以及與庫存變更相關工作流程的 表單,例如出庫單、入庫單及調撥作業。 • 表單資料的新增順序應為:倉庫管理→商品庫存(倉庫庫存)、 (出庫單)、(入庫單)、(調撥作業)
10.
倉庫管理列表頁(所有資料) 用來管理不同倉庫的資訊
11.
倉庫管理表單頁(單一筆資料)
12.
全部倉庫地點 的數量加總就 是這個商品的 庫存數量 商品庫存 記錄一個商品 在多個倉庫地點的數量
13.
ㄒ 只要選擇倉庫代碼,就會自動帶入倉庫名稱 並產生庫存編號(倉庫代碼-商品編號) 最後記得手動輸入倉庫庫存的數量。 從商品庫存建立倉庫庫存資料
14.
倉庫庫存列表頁(所有資料) 這裡會列出所有商品在各個倉庫的數量資訊
15.
倉庫庫存表單頁(單一筆資料) 表單與商品庫存表單中的倉庫庫存子表格是連動的 資料可以從這邊新增,也可以從商品庫存表單新增。
16.
資料可以從訂單管理模組的出貨單拋轉建立或是直接在此手動新增一筆 出庫單
17.
選擇倉庫代碼來決定商品要從哪個倉庫出庫後 再選擇庫存編號,並確認出庫的數量。 出庫單出庫商品資訊填寫
18.
資料簽核完成後才可以執行扣庫存動作按鈕, 執行後相關的商品倉庫庫存數量就會減少, 系統也會幫你記錄扣庫存日期時間。 從出庫單執行扣庫存
19.
資料可以從採購模組的驗收作業拋轉建立或是直接在此手動新增一筆 入庫單
20.
選擇倉庫代碼來決定商品要入到哪個倉庫後 再選擇庫存編號,並確認入庫的數量。 出庫單出庫商品資訊填寫
21.
資料簽核完成後才可以執行入庫存動作按鈕, 執行後相關的商品倉庫庫存數量就會增加, 系統也會幫你記錄入庫存日期時間。 從入庫單執行入庫存
22.
調撥作業表單讓你進行商品倉庫庫存調撥轉倉的動作, 可以一次針對多個商品倉庫庫存做轉倉的動作。 調撥作業
23.
資料新增完畢之後, 別忘了點擊動作按鈕 來執行調撥 調撥作業資料建立與執行調撥 選擇要調撥的商品庫存編號 以及要轉出的數量及轉入倉庫代號 ✩無法執行調撥到尚未建立相關倉庫庫存的倉庫。
Download now