加勒比久久综合,国产精品伦一区二区,66精品视频在线观看,一区二区电影

合肥生活安徽新聞合肥交通合肥房產生活服務合肥教育合肥招聘合肥旅游文化藝術合肥美食合肥地圖合肥社保合肥醫院企業服務合肥法律

CS 04450代寫、代做Java編程設計

時間:2024-05-20  來源:合肥網hfw.cc  作者:hfw.cc 我要糾錯


CS 04450代寫、代做Java編程設計
Coursework: SCUPI+, A Java Application for Film Query
CS 04450 Data Structure, Department of Computer Science, SCUPI
Spring 2024
This coursework sheet explains the work in details. Please read the instructions carefully and
follow them step-by-step. For submission instructions, please read the Sec. 4. If you have any
queries regarding the understanding of the coursework sheet, please contact the TAs or the
course leader. Due on: 23:59 PM, Wednesday, June 5th.
1 Introduction
A developer of a new Java application has asked for your help in storing a large amount of fflm data
efffciently. The application, called SCUPI+, is used to present data and fun facts about fflms, the
cast and crew who worked on them, and some ratings the developer has gathered in there free time.
However, because the developer hasn’t taken the module, they don’t want to design how the data is
stored.
Therefore, this coursework and the task that the developer has left to you, is to design one or more
data structures that can efffciently store and search through the data. The data consists of 3 separate
ffles:
• Movie Metadata: the data about the fflms, including there ID number, title, length, overview
etc.
• Credits: the data about who stared in and produced the fflms.
• Ratings: the data about what different users thought about the fflms (rated out of 5 stars), and
when the user rated the fflm.
To help out, the developer of SCUPI+ has provided classes for each of these. Each class has been
populated with functions with JavaDoc preambles that need to be fflled in by you. As well as this,
the developer has also tried to implement the MyArrayList data structure into a 4th dataset (called
Keywords), to show you where to store your data structures and how they can be incorporated into
the pre-made classes. Finally, the developer has left instructions for you, which include how to build,
run and test you code; and the ffle structure of the application (see Sec. 3).
Therefore, your task is to implement the functions within the Movies, Credits and Ratings classes
through the use of your own data structures.
2 Guidance
First, don’t panic! Have a read through the documentation provided in Sec. 3. This explains how to
build and run the application. This can be done without writing anything, so make sure you can do
that ffrst.
Then you can have a look at the comments and functions found in the Movies, Credits and
Ratings classes. The location of these is described in Sec. 3.5.2. Each of the functions you need to
implement has a comment above it, describing what it should do. It also lists each of the parameters
1for the function (lines starting with @param), and what the function should return (lines starting with
@return).
When you are ready to start coding, We would recommend starting off with the Rating class
ffrst. This is because it is smallest of the 3 required, and is also one of the simplest. When you have
completed a function, you can test it using the test suit described in Sec. 3.5.3. More details about
where the code for the tests are can be found in Sec. 3.4.
3 SCUPI+
SCUPI+ is a small Java application that pulls in data from a collection of Comma Separated Value
(CSV) ffles. It is designed to have a lightweight user interface (UI), so that users can inspect and
query the data. The application also has a testing suit connected to it, to ensure all the functions
work as expected. The functions called in the SCUPI+ UI are the same as those called in the testing,
so if the tests work, the UI will also work.
3.1 Required Software
For the SCUPI+ to compile and run, Java 21 is required, make sure you download this speciffc version
of Java. Whilst a newer version of Java can be utilised, other parts of the application will also have to
be updated and this has not been tested. Although you can always have a try with your own version,
it is highly recommended you download and use Java 21.
3.2 Building SCUPI+
To compile the code, simply run the command shown in the table below in the working directory (the
one with src folder in it).
Linux/DCS System MacOS Windows
./gradlew build ./gradlew build ./gradlew.bat build
3.3 Running the SCUPI+ Application
To run the application, simply run the command shown in the table below in the working directory
(the one with src folder in it).
Linux/DCS System MacOS Windows
./gradlew run ./gradlew run ./gradlew.bat run
This command will also compile the code, in case any ffles have been changed. When this is done,
a window will appear with the UI for the application. The terminal will not be able to be used at this
time. Instead it will print anything required from the program. To stop the application, simply close
the window or press CTRL+C at the same time in the terminal.
23.4 Running the SCUPI+ Test Suit
To run the tests, simply run the command shown in the table below in the working directory (the one
with src folder in it).
Linux/DCS System MacOS Windows
./gradlew test ./gradlew test ./gradlew.bat test
This command will also compile the code, in case any ffles have been changed. When ran, this will
produce the output from each test function. It will also produce a webpage of the results, which can
be found in build/reports/tests/test/index.html
3.5 SCUPI+ File Structure
Every effort has been made to keep the ffle structure simple and clean, whilst maintaining good coding
practices. In the following subsections, a brief description of each of the key directories is given, along
with its contents and what you need to worry about in them.
3.5.1 data/
This directory stores all the data ffles that are pulled into the application. There are 4 .csv ffles in
this directory, 1 for each of the datasets described in Sec. 1. Each line in these ffles is a different entry,
with values being separated by commas (hence the name Comma Separated Values). You do not need
to add, edit or remove anything from this directory for your coursework. More details on how these
ffles are structured can be found in Sec. 3.6.
3.5.2 src/main/
This directory stores all the Java code for the application. As such, there are a number of directories
and ffles in this directory, each of which are required for the application and/or the UI to function.
To make things simpler, there are 3 key directories that will be useful for you:
• java/interfaces/: stores the interface classes for the data sets. You do not need to add, edit
or remove anything from this directory, but it may be useful to read through.
• java/stores/: stores the classes for the data sets. This is where the Keywords, Movies, Credits
and Ratings from Sec. 1 are located, the latter 3 of which are the classes you need to complete.
Therefore, you should only need to edit the following ffles:
– Movies.java: stores and queries all the data about the fflms. The code in this ffle relies
on the Company and Genre classes.
– Credits.java: stores and queries all the data about who stared in and worked on the
fflms. The code in this ffle relies on the CastCredit, CrewCredit and Person classes.
– Ratings.java: stores and queries all the data about the ratings given to fflms.
• java/structures/: stores the classes for your data structures. As an example, a array list
MyArrayList has been provided there. Any classes you add in here can be accessed by the classes
in the stores directory (assuming the classes you add are public). You may add any ffles you wish
to this directory, but MyArrayList.java and IList.java should not be altered or removed, as
these are relied on for Keywords.
33.5.3 src/test/
This directory stores all the code that related solely to the JUnit tests. As such, there is a Java ffle
for each of the stores you need to implement. You do not need to add, edit or remove anything from
this directory for your coursework.
3.6 Data used for SCUPI+
All of the data used by the SCUPI+ application can be found in the data directory. Each ffle in
this directory contains a large collection of values, separated by commas (hence the CSV ffle type).
Therefore, each of these can be opened by your favourite spreadsheet program. Most of these values
are integers or ffoating point values, but some are strings. In the cases of strings, double quotation
marks (”) are used at the beginning and end of the value. Where multiple elements could exist in that
value, a JSON object has been used. You do not need to parse these ffles, SCUPI+ will do that for
you in the LoadData class. The data generated by the LoadData class is passed to the corresponding
data store class (Movies, Credits, Ratings and Keywords) using the add function.
To make development easier, we have provided only 1000 fflms present in the data. This means
that there are 1000 entries in the credits data set, and 1000 entries in the keywords data set. However,
some fflms may not have any cast and/or crew (that information may not have been released yet, or
it is unknown), some fflms don’t have keywords and some fflms may not have ratings. In these cases,
an empty list of the required classes will be provided the add function.
3.6.1 Key Stats
Films 1000
Credits
Film Entries 1000
Unique Cast 11483
Unique Crew 9256
Ratings 17625
Keywords
 Film Entires 1000
Unique Keywords 2159
3.6.2 Movies Metadata
The following is a list all of the data stored about a fflm using the column names from the CSV ffle, in
the same order they are in the CSV ffle. Blue ffelds are ones that are added through the add function
in the Movies class.
• adult: a boolean representing whether the fflm is an adult fflm.
• belongs to collection: a JSON object that stores all the details about the collection a fflm
is part of. This is added to the fflm using the addToCollection function in the Movies class.
If the fflm is part of a collection, the collection will contain a collection ID, a collection name, a
poster URL related to the collection and a backdrop URL related to the collection.
• budget: a long integer that stores the budget of the fflm in US Dollars. If the budget is not
known, then the budget is set to 0. Therefore, this will always be greater than or equal to 0.
• genres: a JSON list that contain all the genres the fflms is part of. Each genre is represented
as a key-value pair, where the key is represented as an ID number, and the value is represented
as a string. SCUPI+ passes this as an array of Genre objects.
4• homepage: a string representing a URL of the homepage of the fflm. If the fflm has no homepage,
then this string is left empty.
• tmdb id: an integer representing the ID of the fflm. This is used to link this fflm to other pieces
of data in other data sets.
• imdb id: a string representing the unique part of the IMDb URL for a given fflm. This is added
using the setIMDB function in the Movies class.
• original language: a 2-character string representing the ISO 639 language that the fflm was
originally produced in.
• original title: a string representing the original title of the fflm. This may be the same as
the title ffeld, but is not always the case.
• overview: a string representing the an overview of the fflm.
• popularity: a ffoating point value that represents the relative popularity of the fflm. This value
is always greater than or equal to 0. This data is added by the setPopularity function in the
Movies class.
• poster path: a string representing the unique part of a URL for the fflm poster. Not all fflms
have a poster available. In these cases, an empty string is given.
• production companies: a JSON list that stores the production countries for a fflm. Each entry
in the JSON list has a key value pair, where the key is the ID of the company, and the value is
the name of the company. SCUPI+ parses each list element into a Company object. This object
is the added using the addProductionCompany in the Movies class.
• production countries: a JSON list that stores the production countries for a fflm. Each entry
in the JSON list has a key value pair, where the key is the ISO 3166 2-character string, and the
value is the country name. SCUPI+ parses only handles the key, and uses a function to match
this to the country name. This string is added using the addProductionCountry in the Movies
class.
• release date: a long integer representing the number of seconds from 1
st January 1970 when
the fflm was released. SCUPI+ passes this into a Java Calendar object.
• revenue: a long integer representing the amount of money made by the fflm in US Dollars. If
the revenue of the fflm is not known, then the revenue is set to 0. Therefore, this will always be
greater than or equal to 0.
• runtime: a ffoating point value representing the number of minutes the fflm takes to play. If the
runtime is not know, then the runtime is set to 0. Therefore, this will always be greater than or
equal to 0.
• spoken languages: a JSON list that stores all the languages that the fflm is available in. This
is stored as a list of key-value pairs, where the key is the 2 -character ISO 639 code, and the
value is the language name. SCUPI+ parses these as an array of keys stored as strings.
• status: a string representing the current state of the fflm.
• tagline: a string representing the poster tagline of the fflm. A fflm is not guaranteed to have
a tagline. In these cases, an empty string is presented.
• title: a string representing the English title of the fflm.
• video: a boolean representing whether the fflm is a ”direct-to-video” fflm.
5• vote average: a floating point value representing an average score as given by a those on IMDb
at the time the data was collected. As such, it is not used in the Review dataset. The score will
always be between 0 and 10. This data is added using the setVote function in the Movies class.
• vote count: an integer representing the number of votes on IMDb at the time the data was
collected, to calculate the score for vote average. As such, it is not used in the Review dataset.
This will always be greater than or equal to 0. This data is added using the setVote function
in the Movies class.
3.6.3 Credits
The following is a list all of the data stored about the cast and crew of a film using the column names
from the CSV file, in the same order they are in the CSV file. All these fields are used by SCUPI+:
• cast: a JSON list that contains all the cast for a particular film. In the JSON list, each cast
member has details that relate to there role in the film and themselves. SCUPI+ passes this
into an array of Cast objects, with as many fields populated as possible.
• crew: a JSON list that contains all the crew for a particular film. In the JSON list, each crew
member has details that relate to there role in the film and themselves. SCUPI+ passes this
into an array of Crew objects, with as many fields populated as possible.
• tmdb id: an integer representing the film ID. The values for this directly correlates to the id
field in the movies data set.
3.6.4 Ratings
The following is a list all of the data stored about the ratings for a film using the column names from
the CSV file, in the same order they are in the CSV file. Blue fields are ones that are actually used
by SCUPI+:
• userId: an integer representing the user ID. The value of this is greater than 0.
• movieLensId: an integer representing the MovieLens ID. This is not used in this application, so
can be disregarded.
• tmdbId: an integer representing the film ID. The values for this directly correlates to the id field
in the movies data set.
• rating: a floating point value representing the rating between 0 and 5 inclusive.
• timestamp: a long integer representing the number of seconds from 1st January 1970 when the
rating was made. SCUPI+ passes this into a Java Calendar object.
3.6.5 Keywords
The following is a list all of the data stored about the keywords for a film using the column names
from the CSV file, in the same order they are in the CSV file. All these fields are used by SCUPI+:
• tmdb id: an integer representing the film ID. The values for this directly correlates to the id
field in the movies data set.
6• keywords: a JSON list that contains all the keywords relating to a given film. Each keyword is
represented as a key-value pair, where the key is represented as an ID number, and the value is
represented as a string. SCUPI+ passes this into an array of Keyword objects.
4 Submission
You should submit one .zip file, containing the following files:
• (50 marks) Three data store files for marking the unit tests:
– src/main/java/stores/Movies.java
– src/main/java/stores/Credits.java
– src/main/java/stores/Ratings.java
Also, submit any data structure files that has been created by you (DO NOT submit the
MyArrayList we provided). Please note that when using these data structures, please place
them under the directory src/main/java/structures, as what we will do when running your
program.
• (50 marks) A PDF report (≤ 1500 words) discussing the data structure(s) you have implemented
for the 3 data stores. More specifically:
– (20 marks) Justify your choice of the data structure(s) among so many other data structures.

 (20 marks) Discuss how you use the data structure(s) to build the required operations in
the 3 data stores.
– (10 marks) An extra 10 marks are for the organisation and presentation of your report.
In the end, please don’t forget to compress all these files into a .zip file, and name the .zip file as:
”[CW]-[Session Number]-[Student ID]-[Your name]”

請加QQ:99515681  郵箱:99515681@qq.com   WX:codinghelp

















 

掃一掃在手機打開當前頁
  • 上一篇:越南探親簽證能找旅行社嗎(越南探親簽證去哪里辦)
  • 下一篇:CS 04450代寫、代做Java編程設計
  • 無相關信息
    合肥生活資訊

    合肥圖文信息
    2025年10月份更新拼多多改銷助手小象助手多多出評軟件
    2025年10月份更新拼多多改銷助手小象助手多
    有限元分析 CAE仿真分析服務-企業/產品研發/客戶要求/設計優化
    有限元分析 CAE仿真分析服務-企業/產品研發
    急尋熱仿真分析?代做熱仿真服務+熱設計優化
    急尋熱仿真分析?代做熱仿真服務+熱設計優化
    出評 開團工具
    出評 開團工具
    挖掘機濾芯提升發動機性能
    挖掘機濾芯提升發動機性能
    海信羅馬假日洗衣機亮相AWE  復古美學與現代科技完美結合
    海信羅馬假日洗衣機亮相AWE 復古美學與現代
    合肥機場巴士4號線
    合肥機場巴士4號線
    合肥機場巴士3號線
    合肥機場巴士3號線
  • 短信驗證碼 目錄網 排行網

    關于我們 | 打賞支持 | 廣告服務 | 聯系我們 | 網站地圖 | 免責聲明 | 幫助中心 | 友情鏈接 |

    Copyright © 2025 hfw.cc Inc. All Rights Reserved. 合肥網 版權所有
    ICP備06013414號-3 公安備 42010502001045

    91麻豆精品国产综合久久久| 欧美激情偷拍自拍| 久久99高清| 亚洲成人不卡| 亚洲宅男一区| 成人国产精选| 精品一区免费| 国产一区不卡| 蜜桃视频在线网站| 99久久久久| 国产一区二区精品福利地址| 日韩欧美一区二区三区在线视频 | 国产综合视频| 欧美日本三级| 神马久久资源| 国产农村妇女毛片精品久久莱园子 | www成人在线视频| 欧美日韩国产高清| 日产国产高清一区二区三区| 国产精品天堂蜜av在线播放| 一区在线免费| 91成人午夜| 日本女人一区二区三区| 日韩精品一卡二卡三卡四卡无卡| 青青一区二区三区| 99精品美女视频在线观看热舞| 日韩激情免费| 欧美日韩国产精品一区二区亚洲| 亚洲成av人片在线观看www| 日韩高清中文字幕一区| www.51av欧美视频| 羞羞答答成人影院www| 久久99成人| 国产精品porn| 亚洲二区av| 蜜桃精品在线观看| 激情久久一区| 精品国产乱码久久久久久1区2匹| 欧洲一区在线| 青青草成人在线观看| 蜜桃成人精品| 免费视频一区二区| 午夜国产精品视频| 成人三级视频| 91精品日本| 亚洲8888| 国内精品视频| 久久精品伊人| 99久久er| 欧美天堂视频| а√天堂中文在线资源8| 国产精品日韩| 婷婷综合伊人| 欧美影院三区| 久久久久国产精品一区三寸| 日本综合精品一区| 欧美黄色一级| 欧美激情日韩| 国产精品久久久亚洲一区| 欧美黑人一区| 麻豆网站免费在线观看| 亚洲男女自偷自拍| 蜜桃视频欧美| 亚洲私人影院| 亚洲无线观看| 一级欧美视频| 美女尤物国产一区| 日韩欧美一区二区三区在线观看 | 国产乱人伦丫前精品视频| 影音先锋久久精品| 国产一区二区三区成人欧美日韩在线观看 | 亚洲综合色站| 欧美在线高清| 欧美淫片网站| av在线一区不卡| 亚洲www.| 久久国产婷婷国产香蕉| 日韩国产91| 日韩精品电影一区亚洲| 亚洲视频二区| 日韩高清不卡在线| 日本午夜精品视频在线观看| 亚洲天堂免费| 亚洲最大av| 亚洲+变态+欧美+另类+精品| 久久99视频| 综合激情久久| 国产毛片久久久| 伊人久久大香线蕉综合网蜜芽| 免费av一区| 国产亚洲毛片在线| 成入视频在线观看| 视频一区在线免费看| 久久精品久久综合| 超碰国产精品一区二页| 亚洲综合图色| 欧美福利在线播放网址导航| 欧美日韩在线播放视频| 欧美日韩国产精品一区二区亚洲| 视频一区欧美精品| 欧美色网一区| 日本不卡在线视频| 国产精品亚洲欧美日韩一区在线| 日本最新不卡在线| 欧美色图婷婷| 欧美天堂亚洲电影院在线观看| 视频一区二区不卡| 欧洲成人一区| 精品久久福利| 中文字幕日韩亚洲| 久久wwww| 午夜激情久久| 亚洲中午字幕| 日产精品一区二区| 91亚洲人成网污www| 久久亚洲国产精品尤物| 国产高清日韩| 日韩三级精品| 亚洲精品a级片| 亚洲欧美小说色综合小说一区| 青草综合视频| 国产亚洲字幕| 久久精品综合| 水蜜桃精品av一区二区| 久久精品日产第一区二区| 日日狠狠久久偷偷综合色| 在线视频观看日韩| 国产精品久久久久久久久久10秀 | 天天影视天天精品| 都市激情亚洲一区| 亚洲一区色图| 蜜桃久久久久| 免费观看成人av| 日本麻豆一区二区三区视频| 日韩成人一级大片| 亚洲精品a级片| 久久久人成影片一区二区三区在哪下载| 欧美日韩ab| 久久精品导航| 日韩欧美另类一区二区| 一区二区三区四区在线观看国产日韩 | 欧美老女人另类| 欧美日韩视频免费看| 亚洲春色h网| 日韩视频在线一区二区三区 | 亚洲素人在线| 国产亚洲在线| 国内精品久久久久国产盗摄免费观看完整版| 精品麻豆剧传媒av国产九九九| 亚洲美女一区| 国产精品theporn| 久久九九99| 欧美成人精品三级网站| 亚洲日产av中文字幕| 最新成人av网站| 麻豆精品蜜桃视频网站| 999精品视频| 欧美极品在线| 香蕉国产成人午夜av影院| 亚洲国产综合在线看不卡| 日韩精品一二区| 国内精品久久久久久久影视麻豆| 天堂久久av| 国产va在线视频| 亚洲伊人精品酒店| 久久久xxx| 日本黄色精品| 亚洲精品推荐| 成年男女免费视频网站不卡| 美女久久99| 色乱码一区二区三区网站| 久久av免费| 热久久国产精品| 国产一区二区观看| 老司机久久99久久精品播放免费| www.成人| 男女性色大片免费观看一区二区| 久久99性xxx老妇胖精品| 免费观看在线综合色| 日韩一级电影| 日韩久久电影| 精品高清在线| 国产精品主播| 午夜视频精品| 国产精品色婷婷在线观看| 蜜桃精品视频在线| 免费观看亚洲视频大全| 亚洲小少妇裸体bbw| 91精品国产乱码久久久久久久| 美女www一区二区| 宅男噜噜噜66一区二区| 国产精品嫩草影院在线看| 阿v视频在线观看| 国内露脸中年夫妇交换精品| 久久精品国产久精国产爱| 亚洲大全视频| 日韩高清影视在线观看| 免费观看成人鲁鲁鲁鲁鲁视频| 欧美日本三级| 国产亚洲综合精品|