Please follow the instructions and I need in APA format - Programming
Please follow the instructions and go through the attached PDF first and then start working.I need initial post with 2 pages and please dont forget to add reference and later I will post 2 discussions for replies.Several Big Data Visualization tools have been evaluated in this weeks paper. While the focus was primarily on R and Python with GUI tools, new tools are being introduced every day. Compare and contrast the use of R vs Python and identify the pros and cons of each. Provide an example of both programming languages with coding examples as well as your experience in using one or both programming languages in professional or personal work. If you have no experience with either language, please discuss how you foresee using either/both of these languages in visualizing data when analyzing big data. Please make your initial post and two response posts substantive. A substantive post will do at least TWO of the following:Ask an interesting, thoughtful question pertaining to the topicAnswer a question (in detail) posted by another student or the instructorProvide extensive additional information on the topicExplain, define, or analyze the topic in detailShare an applicable personal experienceProvide an outside source (for example, an article from the UC Library) that applies to the topic, along with additional information about the topic or the source (please cite properly in APA)Make an argument concerning the topic.At least one scholarly source should be used in the initial discussion thread. Be sure to use information from your readings and other sources from the UC Library. Use proper citations and references in your post.Select AT LEAST 2 other students threads and post substantive comments on those threads. Your comments should extend the conversation started with the thread. big_data_visualization.pdf Unformatted Attachment Preview International Conference on Smart Computing and Electronic Enterprise. (ICSCEE2018) ©2018 IEEE Big Data Visualization: Allotting by R and Python with GUI Tools SK Ahammad Fahad Abdulsamad Ebrahim Yahya Faculty of Computer and Information Technology Al-Madinah International University Shah Alam, Malaysia bl308@lms.mediu.edu.my Faculty of Computing and Information Technology Northern Border University Rafha, KSA Abdulsamad.qasem@nbu.edu.sa Abstract—A tremendous amount of data comes with a vast amount of knowledge. Decent use of the persistent information can assist to overcome provocations and support to establish further sophisticated judgment. Data visualization techniques are authenticated scientifically as thousand times reliable rather than textual representation. The premature data visualization system met some difficulties and there has some solution for handle this kind of big quantity of data. Data science used two distinct languages Python and R to visualize big data undeviatingly. There also have a lot of tools in operating business. This paper is focused on the visualization technique of Python and R. R appears including the extraordinary visualization library alike ggplot2, leaflet, and lattice to defeat the provocation of the extensive volume. Python has several particular libraries for data visualization. Commonly they are Bokeh, Seaborn, Altair, ggplot and Pygal. Also, with most modern, secure and powerful zero coding GUIs accessories to describe big data visualization for genuine recognition with practical determination. Method and process of visual description of data are significant to recover specific knowledge from the large-scale dataset. Keywords—Big Data Visualization; Python Visualization; R visualization; GUI Visualization; Zero coding Visualization; Visualization Tools I. INTRODUCTION Data visualization narrates the illustration of substance info in graphical appearance. Information visualization complies us to identify sampling, propensity, and interrelation. The human understanding prepares perceived visual data 60,000 times responsive than text. In fact, visible information estimates for 90 \% of the instruction spread to the brain [1] [5]. Today’s enterprises have entrance to an enormous quantity of knowledge generated from each within and out of doors the organization. Knowledge visualization helps to create a sense of it all. Human movement a specific purpose or simplifying the complexities of mounds of information doesnt require the utilization of knowledge visualization, however, in a way; todays world would probably necessitate it. Scanning different worksheets, spreadsheets, or reports are ordinary and wearisome at the best whereas observing charts and graphs is often sufficient easier on the eyes[4]. With massive information obtaining bigger and wider, its competent to undertake the notion that the utilization of data visualization can individually continue to grow, to evolve, and to be of prominent worth. Additionally, though, one approaches the method and observe of information visualization can have to be constrained to grow and evolve additionally [2]. The first benefit of Big Data visualization is that it allows decisionmakers to raise perceive advanced information, nonetheless at intervals the umbrella-concept, there square measure many more-specific benefits value reflecting. Suddenly method the massive information is barely potential by correct data visualization method. By visualization process, huge information is obtainable in real time. With the method of visualization, tremendous amount of data will recognize information higher through interactivity. It will be thought of that Big Data visualization method tells a story within Big Data. Dispatching the data in a universal manner, information allowing the viewers or purpose to immediately recognizable. In this paper, Big data visualization techniques are demonstrated with utmost contemporary and dynamic computer languages scope by meta-analysis with mapping the variations of tools. This comparison between available tools for big data visualization help to non-programmers on the time to adopt more functional tools. II. BIG DATA VISUALIZATION Big Data visualization requires the appearance of data of regarding any character in a graphical pattern that addresses it manageable to conjecture and represents. It belongs to the implementation of further contemporaneous visualization procedures to demonstrate the connections between data. These instances curve incessantly from the use of hundreds of lines, standards, and connects approaching a wider aesthetic perceptible reproduction of the data. But it goes far behind standard corporate graphs, histograms and pie charts to numerous heterogeneous representations like heat maps and fever charts, empowering decision-makers to examine data sets to recognize correspondences or accidental trims [5]. Usually, when corporations demand to perform connections between data, they apply graphs, bars, and charts to do it. They can also obtain the aid of a variety of colors, phrases, and figures. Data visualization uses more interactive, graphical drawings - including personalization and animation - to represent symbols and build relationships between bits of knowledge [2]. A defining characteristic of Big Data visualization is scale. Now enterprises accumulate and collect immense quantities of data that would take years for a human to read, make International Conference on Smart Computing and Electronic Enterprise. (ICSCEE2018) ©2018 IEEE individual sense. But researchers have ascertained that the human retina can broadcast data to the brain at a velocity of approximately 10 megabits per second [4]. Big Data visualization relies on persuasive computer operations to ingest raw corporate data and prepare it to produce graphical illustrations that permit humans to catch in and concede enormous volumes of data in seconds. To do that decisionmaker must be capable to obtain, estimate, embrace and operate on data in approaching real-time, including Big Data visualization encourages a process to be qualified to do exactly that. Big Data visualization procedures offer a secure and powerful way to [5]:  Analyze massive amounts of data – data displayed in graphical form empowers decision-makers to take in massive volumes of data and gain a recognition of something it implies quite immediately – far more instantly than poring over spreadsheets or explaining logarithmic records.  Spot trends – time-sequence data usually apprehend bearings, but spotting biases dropped in data is particularly difficult to do – particularly when the origins are distinct and the amount of data is generous. But the application of suitable Big Data visualization techniques can make it obvious to recognize these trends, and in industry terms, a bearing that is spotted ahead is an occasion that can be performed against.  Recognize similarities and accidental connections – One of the immense concentrations of Big Data visualization is that allows users to investigate information sets–not to gain solutions particular mysteries, but to determine what wonderful penetrations the data can expose. This can be done by appending or excluding data collections, shifting scales, eliminating outliers, and switching visualization representations. Recognizing earlier conceived exemplars and associations in data can fit concerns with a large rival interest.  Present the information to others – An oft-overlooked specialty of Big Data visualization is that, it presents a deeply efficient process to reach any perspicacity that it surfaces to others. Thats because it can communicate application really immediately and in a way that it is clear to understand: exactly what is needed in both intrinsic and obvious business offerings. The human brain has developed to catch in and experience visual knowledge, and it excels at the visible trim realization. It is this technique that facilitates humans to spot hints of risk, as well as to realize human appearances and distinct human appearances such as family members. Big data visualization procedures utilize this by proffering data in a visible form so it can be concocted by this hard-wired human capacity virtually immediately – rather than, for example, by scientific investigation that has to be studied and laboriously involved. The skill with Big Data visualization is deciding the usual efficient method to visualize the data to surface any penetrations it may include. In some situations, uncomplicated business tools before-mentioned as pie charts or histograms may explain the entire story, but with generous, various and different data sets further arcane visualization procedures may be more relevant. III. CHALLENGES Conventional visualization instruments have approached their conclusions when confronted with very extensive datasets and these data are emerging continuously. Though there are some enlargements to conventional visualization propositions they lag behind by distances. The visualization apparatus should be able to provide us interactive visualization with as low latency as desirable. To diminish the latency, Use the preprocessed data, Parallelize Data Processing and Rendering and Use an ominous middleware will be helpful to overcome [1]. Big Data visualization apparatus must be able to deal with semi-structured and unstructured data because big data usually have this type of composition. It is recognized that to cope with such enormous volume of data there is a need for extensive parallelization, which is a provocation in visualization. The challenge in parallelization algorithm is to break down the puzzle into such unconventional task that they can run autonomously. The task of big data visualization is to identify exceptional patterns and correspondences. It needs to discreetly choose the dimensions of data to be reflected, if it reduces dimensions to make our visualization low then we may end up missing magnetic originals but if it uses all the dimensions we may end up having visualization too thick to be beneficial to the users. For precedent: “Given the general appearances (1-3 million pixels), visualizing each data purpose can lead to overplotting, overlying and may overwhelm user’s perceptual and cognitive capabilities” [1]. Due to enormous quantity and huge significance of big data, it becomes difficult to visualize. Most of the contemporary visualization tool have low representation in scalability, functionality and rejoinder time. Lots of Systems have been intended which not only visualizes data but prepares at the same time. Certain methods use Hadoop and storage solution and R programming, Python Programming language as compiler context in the model. Some other important big data visualization problems are as follows; Visible noise: Utmost of the contrivances in the dataset is extremely relative to respectively. It enhances really difficult to distribute them. Information loss: To raise the response time it decreases dataset discernibility, but drives to information destruction. High vision perspicacity: Even behind obtaining solicited standardized output it was restricted by environmental understanding. The high rate of image change: If the movement of change to the image is too high it becomes impracticable to react to the number. International Conference on Smart Computing and Electronic Enterprise. (ICSCEE2018) ©2018 IEEE Fig. 1. Bar chart and Line Chart High-performance demands: While static visualization, this circumstance ignored compared to a dynamic visualization which requires more i.e. high execution. Real-Time Scalability: is significant to equip users with visual real-time data and it is also essential to make real-time determinations based on available data. Nevertheless, enormous quantities of data would be too comprehensive to prepare in real-time. Most visualization schemes are only intended to handle data beneath a particular size because many data sets are too generous to fit in memory and query large data could incur high latency. It is stimulating to overcome restrictions like data connectivity and limited storage and data processing aptitudes in real time. Interactive Scalability: is expanding the advantages of data visualization. Interactive data visualization can help assume the perspicacity of data quickly and properly. It takes time to prepare and examine data before visualization, particularly enormous amounts of data. The visualization arrangement may even halt for an elongated period of time or collision while attempting to present huge volumes of data. Estimating heterogeneous query processing procedures to terabytes while permitting interactive acknowledgment times is a major open research predicament today. IV. VISUALIZE BIG DATA WITH R R provides some satisfactory visualization library to establish visualizations including simultaneous data handling. In R visualization programming amongst libraries; ggplot2, [12] Fig 2. Box plot Execution Fig. 3. (a) Correlogram and (b) Heat Map leaflet, lattice are the most accepted [6]. All the impressions to generate the standard as well as high-level visualizations in R Programming with the essential code with the figure. For visualization procedure for R, all data are taken from HistData package [8], in the other word the HistData package are the sample data for the segment for visualization Big Data in R. The HistData [8] package offers a delicate data collections which are vital and meaningful for evaluating statistics and data visualization. Determination of the sequence is to perform certain advantageous for instructional and research perspective. Exceptional individual contemporary with new motives for graphics or representation in R. To represent Big Data in R, this section organized with 9 distinct type of visualization method. Some are essential and some are suitable for the particular case of complexity. A. Bar / Line Chart Bar Plots are becoming for showing the relation among increasing totals beyond individual accumulations. Stacked Plots are practiced for bar plots for different sections. Line Charts are generally fancied when investigations a trend spread over a time duration. It also fit plots where the demand to analyze relevant variations in quantities beyond some variable like ‘time’ [6]. Line chart explaining the improvement in air travelers over the distributed time interval. In fig. 1. (a) Line chat and (b), (c), and (d) is three types of Bar chart. Fig. 4. Histogram Visualization by R International Conference on Smart Computing and Electronic Enterprise. (ICSCEE2018) ©2018 IEEE Below codes are applied to ‘HistData’ [8] to get this Visualization. plot(AirPassengers,type=l) barplot(iris$Petal.Length) barplot(iris$Sepal.Length,col = brewer.pal(3,Set1)) barplot(table(iris$Species,iris$Sepal.Length),col=brewer.pal(3,Set1)) B. Box plot Box Plot notes five leading numbers- initial starting by zero, the first quarter in 25\%, the average in 50\%, third quarter on 75\%\% and the last point at 100\%. Following code applied in ‘HisData’, and following 4 unconventional graphic visualizations is executed. Using the ~ sign, it can reflect wherewith the measure is over multiple divisions [7]. The color palette is practiced to produce the diagram (fig. 2.) engaging and stimulating understand visual perfections. data(iris) #dataset from HistData par(mfrow=c(2,2)) boxplot(iris$Sepal.Length,col=red) boxplot(iris$Sepal.Length~iris$Species,col=red) oxplot(iris$Sepal.Length~iris$Species,col=heat.colors(3)) boxplot(iris$Sepal.Length~iris$Species,col=topo.colors(3)) C. Correlogram Correlogram encourages us to visualize the data in correlation matrices [11]. Its extremely accommodating to GUI users. Fig. 3. (a) represent the below code. cor(iris[1:4]) Sepal.LengthSepal.WidthPetal.LengthPetal.Width Sepal.Length1.0000000 -0.1175698 0.8717538 0.8179411 Sepal.Width -0.1175698 1.0000000 -0.4284401 -0.3661259 Petal.Length0.8717538 -0.4284401 1.0000000 0.9628654 Petal.Width0.8179411 -0.3661259 0.9628654 1.0000000 D. Heat Map Heat maps allow data interpretation with the pair of XY axis while the post dimensions determined by the concentration of color. It requires proselyting the dataset to a model construction [7] (fig. 3. (b)). It intention employ tableplot performing from the tabplot sequence to rapidly decrease the number of data as presented in fig. 3. (c). heatmap(as.matrix(mtcars)) image(as.matrix(b[2:7])) E. Histogram Histogram is fundamentally a plot that disintegrates the Fig. 5. (a)Map Visualization and (b) Mosaic Map data on disagreements and presents the frequency spread of those containers. It Fig. 5. (a)Map Visualization and (b) Mosaic Map package replace this split similarly. These directions are employed standard (mfrow=c(2,5)) lead to implement complex graphs on the corresponding side to that concern of clearness [10]. Fig. 4 has the accomplishment visual data of code below; library(RColorBrewer) data(VADeaths) par(mfrow=c(2,3)) hist(VADeaths,breaks=10, col=brewer.pal(3,Set3),main=Set3 3 colors) hist(VADeaths,breaks=7, col=brewer.pal(3,Set1),main=Set1 3 colors) hist(VADeaths,col=brewer.pal(8,Greys),main=Greys 8 colors) hist(VADeaths,col=brewer.pal(8,Greens),main=Greens 8 colors) F. Map Visualization The latest erudition toward R holds extraordinary visualization library Javascript. The leaflet uncomplicated by open-source JavaScript visualization library for the map. [10]. Fig. 5. (a) Have the visualize result of following code for Map visualization throw ‘leaflet’ library. library(magrittr) library(leaflet) m <- leaflet() \%>\% addTiles() \%>\% addMarkers(lng=77.2310, lat=28.6560, popup=The delicious food of chandnichowk) G. Mosaic plots A mosaic plot (Marimekko diagrams) multidimensional expansion graphically presents the data for the individual variable. Also, practiced for two or more qualitative variables in the area of displaying the related orders [11]. The following code was represent the human hair and eye color relational data with their gender in fig. 5 (b). data(HairEyeColor) mosaicplot(HairEyeColor) H. Scatter plot Scatter plots support for visualizing data efficiently and for unadulterated data pageant. Matrix of scatter plot can improve visualization involved variables capping specific. There have several types of Scatter Plot. In the fig. 6. (a) Matrix type of Fig. 6. Big Data Visualization by R in (a) Scatter plot and (b) 3D Graphs International Conference on Smart Computing and Electronic Enterprise. (ICSCEE2018) ©2018 IEEE Among the library, most popular and efficient selected library was presented with a meta-analysis. Those are; Pygal, ggplot, Seaborn, Bokeh, and Altair [12]. Fig. 7. Python Visualization Library Scatter Plot is shown the basis of code. There have more in Scatterplot. plot(iris,col=brewer.pal(3,Set1)) I. 3D Graphs The generous supreme and exceptional inclinations of R in fact of data visualization are producing 3D sketches (fig. 6. (b)). One of the 3D representation of data was represented according the code below with ‘HistData’ sample data. “data(iris, package=’datasets’) scatter3d(Petal.Width~Petal.Length+Sepal.Length|Species data=iris, fit=’linear’, residuals=TRUE, parallel=FALSE bg=’black’, axis.scales=TRUE, grid=TRUE, ellipsoid=FALSE)” V. BIG DATA VISUALIZATION BY PYTHON Primary determinations of Python for visualization method in Big Data for its reliability among developers from a wide scope of specialties. Invariably, all of the segments distribute extensive amounts of data and presenting that information in an obvious way. Python operates distinctive library for several standards data and adjusted visualization method. Few outstanding are noted in fig. 7. Independently those visualization archives have its spe ... Purchase answer to see full attachment
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Develop a community-wide intervention to reduce elevated blood pressure and hypertension in the State of Alabama that in in body of the report Conclusions References (8 References Minimum) *** Words count = 2000 words. *** In-Text Citations and References using Harvard style. *** In Task section I’ve chose (Economic issues in overseas contracting)" Electromagnetism w or quality improvement; it was just all part of good nursing care.  The goal for quality improvement is to monitor patient outcomes using statistics for comparison to standards of care for different diseases e a 1 to 2 slide Microsoft PowerPoint presentation on the different models of case management.  Include speaker notes... .....Describe three different models of case management. visual representations of information. They can include numbers SSAY ame workbook for all 3 milestones. You do not need to download a new copy for Milestones 2 or 3. When you submit Milestone 3 pages): Provide a description of an existing intervention in Canada making the appropriate buying decisions in an ethical and professional manner. Topic: Purchasing and Technology You read about blockchain ledger technology. Now do some additional research out on the Internet and share your URL with the rest of the class be aware of which features their competitors are opting to include so the product development teams can design similar or enhanced features to attract more of the market. The more unique low (The Top Health Industry Trends to Watch in 2015) to assist you with this discussion.         https://youtu.be/fRym_jyuBc0 Next year the $2.8 trillion U.S. healthcare industry will   finally begin to look and feel more like the rest of the business wo evidence-based primary care curriculum. Throughout your nurse practitioner program Vignette Understanding Gender Fluidity Providing Inclusive Quality Care Affirming Clinical Encounters Conclusion References Nurse Practitioner Knowledge Mechanics and word limit is unit as a guide only. The assessment may be re-attempted on two further occasions (maximum three attempts in total). All assessments must be resubmitted 3 days within receiving your unsatisfactory grade. You must clearly indicate “Re-su Trigonometry Article writing Other 5. June 29 After the components sending to the manufacturing house 1. In 1972 the Furman v. Georgia case resulted in a decision that would put action into motion. Furman was originally sentenced to death because of a murder he committed in Georgia but the court debated whether or not this was a violation of his 8th amend One of the first conflicts that would need to be investigated would be whether the human service professional followed the responsibility to client ethical standard.  While developing a relationship with client it is important to clarify that if danger or Ethical behavior is a critical topic in the workplace because the impact of it can make or break a business No matter which type of health care organization With a direct sale During the pandemic Computers are being used to monitor the spread of outbreaks in different areas of the world and with this record 3. Furman v. Georgia is a U.S Supreme Court case that resolves around the Eighth Amendments ban on cruel and unsual punishment in death penalty cases. The Furman v. Georgia case was based on Furman being convicted of murder in Georgia. Furman was caught i One major ethical conflict that may arise in my investigation is the Responsibility to Client in both Standard 3 and Standard 4 of the Ethical Standards for Human Service Professionals (2015).  Making sure we do not disclose information without consent ev 4. Identify two examples of real world problems that you have observed in your personal Summary & Evaluation: Reference & 188. Academic Search Ultimate Ethics We can mention at least one example of how the violation of ethical standards can be prevented. Many organizations promote ethical self-regulation by creating moral codes to help direct their business activities *DDB is used for the first three years For example The inbound logistics for William Instrument refer to purchase components from various electronic firms. During the purchase process William need to consider the quality and price of the components. In this case 4. A U.S. Supreme Court case known as Furman v. Georgia (1972) is a landmark case that involved Eighth Amendment’s ban of unusual and cruel punishment in death penalty cases (Furman v. Georgia (1972) With covid coming into place In my opinion with Not necessarily all home buyers are the same! When you choose to work with we buy ugly houses Baltimore & nationwide USA The ability to view ourselves from an unbiased perspective allows us to critically assess our personal strengths and weaknesses. This is an important step in the process of finding the right resources for our personal learning style. Ego and pride can be · By Day 1 of this week While you must form your answers to the questions below from our assigned reading material CliftonLarsonAllen LLP (2013) 5 The family dynamic is awkward at first since the most outgoing and straight forward person in the family in Linda Urien The most important benefit of my statistical analysis would be the accuracy with which I interpret the data. The greatest obstacle From a similar but larger point of view 4 In order to get the entire family to come back for another session I would suggest coming in on a day the restaurant is not open When seeking to identify a patient’s health condition After viewing the you tube videos on prayer Your paper must be at least two pages in length (not counting the title and reference pages) The word assimilate is negative to me. I believe everyone should learn about a country that they are going to live in. It doesnt mean that they have to believe that everything in America is better than where they came from. It means that they care enough Data collection Single Subject Chris is a social worker in a geriatric case management program located in a midsize Northeastern town. She has an MSW and is part of a team of case managers that likes to continuously improve on its practice. The team is currently using an I would start off with Linda on repeating her options for the child and going over what she is feeling with each option.  I would want to find out what she is afraid of.  I would avoid asking her any “why” questions because I want her to be in the here an Summarize the advantages and disadvantages of using an Internet site as means of collecting data for psychological research (Comp 2.1) 25.0\% Summarization of the advantages and disadvantages of using an Internet site as means of collecting data for psych Identify the type of research used in a chosen study Compose a 1 Optics effect relationship becomes more difficult—as the researcher cannot enact total control of another person even in an experimental environment. Social workers serve clients in highly complex real-world environments. 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After establishing where each member is in relation to the family A Health in All Policies approach Note: The requirements outlined below correspond to the grading criteria in the scoring guide. At a minimum Chen Read Connecting Communities and Complexity: A Case Study in Creating the Conditions for Transformational Change Read Reflections on Cultural Humility Read A Basic Guide to ABCD Community Organizing Use the bolded black section and sub-section titles below to organize your paper. For each section Losinski forwarded the article on a priority basis to Mary Scott Losinksi wanted details on use of the ED at CGH. He asked the administrative resident