Discussion 6 cryptography

 Question: Analyze the advantages and disadvantages of digital signatures. 

You must use at least one scholarly resource. 

 – Every discussion posting must be properly APA formatted. 

– 400 Words

– No Plagiarism

– No References  

Discussion

 If an attacker can retrieve the API and libraries, then use these to write an agent, and then get the attacker’s agent installed, how should Digital Diskus protect itself from such an attack? Should the business analytics system provide a method of authentication of valid agents in order to protect against a malicious one? Is the agent a worthy attack surface? 

International Plastics, Inc. Current Standards and Protocols

 The International Plastics, Inc. CEO read your executive summary and would like more information. The CEO would like a detailed explanation of the IT standards, protocols, and communication tools currently in use in the facilities to determine if improvements are needed.

Review the existing International Plastics network diagrams located in the attachment. 

In a table, using Microsoft® Word or Microsoft® Excel®, complete the following:

  • Assess the current telecommunications protocols, standards, and collaboration tools used for International Plastics.
  • ​​​​​​​Document at least six current standards or protocols used at each location. Use the following table headings:
  • Current Telecommunications Standard, Protocol, or Collaboration Tools
  • International Plastics Location
  • Recommendation for Improvement
  • Effects of Improvement

In a 1-page explanation,

  • Recommend improvements based on your assessment.
  • Explain how you arrived at this recommendation.
  • Discuss options you weighed before arriving at this recommendation.
  • Outline the advantages and disadvantages of this recommendation. 
  • Explain how your recommendation helps the company effectively blend their telecommunications and computer networks.
  • Cite at least one scholarly resource and include a citation in APA format.

Discus7-350 words

Research the ethical issues of self-driving cars and offer opinions based on findings.

Note:

need proper APA format

reference

System Design

 system design documents for traffic monitoring  system (logic, processes, structure, etc.). Use the techniques from your MSIS System Analysis, Modeling and Design.

week 7 individual

 Minimum 600 words

This assignment should be in APA format and have to include at least two references.

As  you consider the reputation service and the needs of customers or  individual consumers, as well as, perhaps, large organizations that are  security conscious like our fictitious enterprise, Digital Diskus, what  will be the expectations and requirements of the customers? Will  consumers’ needs be different from those of enterprises? Who owns the  data that is being served from the reputation service? In addition, what  kinds of protections might a customer expect from other customers when  accessing reputations?

Adding Images to the discussion board

Discussion

 There are many ways to misrepresent data through visualizations of data. There are a variety of websites that exist solely to put these types of graphics on display, to discredit otherwise somewhat credible sources. Leo (2019), an employee of The Economist, wrote an article about the mistakes found within the magazine she works for. Misrepresentations were the topic of Sosulski (2016) in her blog. This is discussed in the course textbook, as well (Kirk, 2016, p. 305).

After reading through these references use the data attached to this forum to create two visualizations in R depicting the same information. In one, create a subtle misrepresentation of the data. In the other remove the misrepresentation. Add static images of the two visualizations to your post. Provide your interpretations of each visualization along with the programming code you used to create the plots. Do not attach anything to the forum: insert images as shown and enter the programming code in your post.

When adding images to the discussion board, use the insert image icon.

Adding Images to the discussion board

This is the data to use for this post: Country_Data.csv

Before plotting, you must subset, group, or summarize this data into a much smaller set of points. Include your programming code for all programming work. It would be more likely that one would win a multi-million dollar lottery than plot the same information the same exact way. However, if you have, you will need to repost and make your post unique. The first post to provide the content does not need to change.

References

Kirk, A. (2016). Data visualisation: A handbook for data driven design. Sage.

Leo, S. (2019, May 27). Mistakes, we’ve drawn a few: Learning from our errors in data visualization. The Economist. https://medium.economist.com/mistakes-weve-drawn-a-few-8cdd8a42d368

Sosulski, K. (2016, January). Top 5 visualization errors [Blog]. http://www.kristensosulski.com/2016/01/top-5-data-visualization-errors/

An example post:

The factual and misrepresented plots in this post are under the context that the visualizations represent the strength of the economy in five Asian countries: Japan, Israel, and Singapore, South Korea, and Oman. The gross domestic product is the amount of product throughput. GDP per capita is the manner in which the health of the economy can be represented.

The visual is provided to access the following research question:

How does the health of the economy between five Asian countries: Japan, Israel, and Singapore, South Korea, and Oman, compare from 1952 to 2011?

gdpPerCapitaGDP

The plot on the left is the true representation of the economic health over the years of the presented countries. Japan consistently has seen the best economic health of the depicted countries. Singapore and South Korea both have large increases over the years, accelerating faster than the other countries in economic health. Oman saw significant growth in the years between 1960 and 1970, but the growth tapered off. All of the countries saw an increase in health over the provided time frame, per this dataset. Israel saw growth, but not as much as the other countries.

The plot on the right is only GDP and does not actually represent the economic health. Without acknowledging the number of persons the GDP represents, Japan is still the leading country over the time frame and within the scope of this dataset. Singapore’s metrics depict some of the larger issues of representing the GDP without considering the population. Instead of Singapore’s metrics depicting significant growth and having a level of health competitive with Japan in the true representation, Singapore has the fourth smallest GDP. It indicates that Singapore’s economy is one of the least healthy amongst the five countries.

The programming used in R to subset, create, and save the plots:

# make two plots of the same information - one misrepresenting the data and one that does not
# use Country_Data.csv data
# plots based on the assumption the information is provided to represent the health of the countries' economy compared to other countries
# August 2020
# Dr. McClure

library(tidyverse)
library(funModeling)
library(ggthemes)

# collect the data file

pData <- read.csv("C:/Users/fraup/Google Drive/UCumberlands/ITS 530/Code/_data/Country_Data.csv")

# check the general health of the data
df_status(pData)
# no NA's no zeros

# look at the data structure
glimpse(pData) # nothing of note

# arbitrarily selected Asia, then list the countries by the highest gdp per capita, to plot competing economies*
# select countries - also use countries that cover all of the years in the dataset (52 years)
(selCountries <- pdata %>% 
    filter(continent == "Asia") %>%
    group_by(country) %>%
    summarise(ct = n(),
              gdpPop = mean(gross_domestic_product/population)) %>%
    arrange(-ct, 
           -gdpPop) %>%
    select(country) %>%
    unlist())
# many countries have 52 years worth of data

# good plot representation of the GDP per capita
p1 <- pdata %>% 
    filter(country %in% selCountries[1:5]) %>%    # use subset to identify the top 5 countries to filter for
    ggplot(aes(x = year,                          # plot the countries for each year
               y = log(gross_domestic_product/population), # calculating the log of gdp/pop = GDP per capita
               color = country)) +                # color by country
    geom_line() +                                 # creating a line plot
    scale_x_continuous(expand = expansion(add = c(7,1)), # expand the x axis, so the name labels of the country are on the plot
                       name = "Year") +           # capitalize the x label, so the annotation is consistent
    geom_text(inherit.aes = F,                    # don't use the aes established in ggplot
                        data = filter(pData,                 # filter for one data point per country for the label, so one label per country
                           country %in% selCountries[1:5],
                           year == 1960),
             aes(label = country,                 # assign the label
                 x = year,
                 y = log(gross_domestic_product/population), # keep the axes and color the same
             color = country),
             hjust = "outward",                   # shift the text outward
             size = 3) +                          # make the text size smaller
    scale_color_viridis_d(end = .8,               # don't include the light yellow, not very visible
                          guide = "none") +       # no legend, because of text labels
    scale_y_continuous(name = "GDP per capita - Log Scale") +      # rename y axis
    ggtitle("Five Asian Countries: GDP per Capita between 1960 and 2011") +      # plot title
    theme_tufte()

# misrepresent economic health - don't account for population
p2 <- pdata %>% 
    filter(country %in% selCountries[1:5]) %>%    # use subset to identify the top 5 countries to filter for
    ggplot(aes(x = year,                          # plot the countries for each year
               y = log(gross_domestic_product),   # calculating the log of gdp
               color = country)) +                # color by country
    geom_line() +                                 # creating a line plot
    scale_x_continuous(expand = expansion(add = c(7,1)), # expand the x axis, so the name labels of the country are on the plot
                       name = "Year") +           # capitalize the x label, so the annotation is consistent
    geom_text(inherit.aes = F,                    # don't use the aes established in ggplot
                        data = filter(pData,                 # filter for one data point per country for the label, so one label per country
                           country %in% selCountries[1:5],
                           year == 1960),
             aes(label = country,                 # assign the label
                 x = year,
                 y = log(gross_domestic_product), # keep the axes and color the same
             color = country),
             hjust = "outward",                   # shift the text outward
             size = 3) +                          # make the text size smaller
    scale_color_viridis_d(end = .8,               # don't include the light yellow, not very visible
                          guide = "none") +       # no legend, because of text labels
    scale_y_continuous(name = "GDP - Log Scale") +      # rename y axis
    ggtitle("Five Asian Countries: GDP between 1960 and 2011") +      # plot title
    theme_tufte()
# save each plot with a transparent background in the archive image folder 
ggsave(filename = "PerCapita.png",
      plot = p1,
      bg = "transparent",
      path = "./code archive/_images")
ggsave(filename = "GDP.png", 
      plot = p2,
      bg = "transparent",
      path = "./code archive/_images")

Discussion

  Write a discussion of 250 words with APA formatted edition 7 and APA references with citation.

● Discuss the evolution of data storage. 

● Where is this technology today and comment on data storage for big data, mobile devices, and the cloud?