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-
- "Your absolutely crazy," my boyfriend exclaimed as he gazed at my schedule. Eighteen credit hours, two part-time jobs, and three clubs-- my spring semester was shaping up to be one hell of a ride. That semester I flew too high, burned my wings, and was then was saved by Covid-19.
-
- Indulge me as I recount what happened during this crazy semester and
- reconcile what I've learned while pushing my limits at RIT.
-
- Going into this semester, I knew that I was signing up for more than
- usual. I was trying to pack my schedule with six classes so that I can
- stay on track to graduate a semester early. Usually, students hover
- around 12 to 15 credit hours.
-
- ![calendar](media/burnout/schedule.png)
-
- Despite having little free time, I prioritized a healthy diet, sleep,
- and exercise. Those things stretched the limits of what I could do
- before getting burned-out. Like all plans, I deviated from my plan a
- bit. Although it was naive to plan on going to the gym early in the
- morning and eating overnight oats every day for breakfast, I ended up
- maintaining my schedule for most of the semester. Putting everything
- on the calendar was quintessential for me that semester-- my tether to
- reality. If I could manage to schedule a time for it, it was
- manageable.
-
- # The Fallout
-
- The folly of my plan was to block everything in one big chunk. My day
- started at 5:45 AM when I woke up and went to the gym, and it ended
- around 7 PM when I got back to my apartment. Laying out this
- continuous segment of time to work on homework, jobs, and classes made
- my day efficient, but it was exhausting. After an 11 hour day, I got
- back to my apartment and wanted to collapse. Nevertheless, structuring
- my time like this ended up giving me free time later at night and on
- the weekends-- which is usually when people typically hung out.
-
- I recognized that I was getting burned after three consecutive weeks
- of working 70 hours. I was becoming less productive, caffeine had less
- impact, and it was hard to focus. When I went to Brickhack as a club
- representative, everything felt like a haze; I tried to think and get
- work done, but all my thoughts slipped me. That day I had four energy
- drinks(a personal record), but they didn't even phase me: my mind was
- still cloudy. Nothing is worse than trying to work for 6 hours, but
- only getting 20 minutes of work done.
-
- ![brick hack picture](media/burnout/brickHack.jpg)
-
- # Saved by COVID
-
- By the time spring break rolled around, I was exhausted: all energy
- and motivation were depleted from my system. Recognizing that I was
- burned out, I took time to rest and re-cooperate by spending time with
- my boyfriend. Spring break was magical, all the stresses of school
- melted off my shoulders. The little work that I did do was focused and
- efficient.
-
- Then RIT decided to extend spring break a week and transition classes
- online due to COVID-19. This event got coined by my friends as "spring
- break v.2 electric boogaloo." This transition introduced a new element
- of anxiety because I had to find an apartment and move ASAP; however,
- at the same time, it gave me an additional week to re-cooperate. In
- just a few days, I signed an apartment lease and moved across the
- state.
-
- After transitioning to online courses, I felt like I had more energy.
- Before COVID, I was spending 18 hours a week sitting in a classroom,
- but after the change, I was only spending 5 hours a week in structured
- "class," while the amount of time spent on homework remained
- equivalent. This change was huge.
-
- # Tracking my work
-
- Being the geek that I am, I tracked every single hour that I worked
- this semester. In addition to hours, I also kept track of some basic
- metrics like perceived productivity, fatigue, diet, and stress levels.
- Tracking my work helped me stay focused during the allotted times that
- I record for a specific task, and it let me know empirically when I've
- worked too much and need a break. Using a quick and dirty solution, I
- kept track of all my hours in a spreadsheet with aggregating functions
- to calculate weekly totals for each column.
-
- ![excel sheet](media/burnout/sheet.png)
-
- At the end of the semester, I exported all my data as a single CSV
- file and imported it into R for examination.
-
- ```R
- library(tidyverse)
- library(plyr)
- library(lubridate)
-
- data <- read_csv("data.csv", col_names=TRUE)
- ```
-
- In my spreadsheet, empty cells were exported to CSV as NA, and useful
- numbers only appear on every other line. The task of data preparation
- is straightforward to do in R.
-
- ```R
- # Remove rows that are empty
- data <- data %>% drop_na(date)
-
- # Convert class col to be numeric-- auto import miss impoted this
- data$class <- as.numeric(data$class)
-
- # replace any NA values with zero
- data[is.na(data)] = 0
-
- # parse date from string
- data$date <- parse_date(data$date, "%m/%d/%y")
-
- # calculates week of year and creates its own col
- data$ymd = lubridate::isoweek(ymd(data$date))
-
- # creates a new col with the week of day numerically
- data$wday = wday(data$date)
- ```
-
- Transforming the data makes it easier to graph. When visualizing time
- series data, you typically add new columns to make grouping by that
- type intuitive; this is based on what you wish to display.
-
- The most exciting graph to see would be a heatmap showing my daily
- hours worked.
-
- ```R
- ggplot(data, aes(ymd, wday))+
- geom_tile(aes(fill= total_hours), color="purple") +
- ggtitle("Daily Hours") +
- labs(x="School Week", y="Day of Week") +
- scale_y_continuous(name="Day of week",trans = "reverse",
- breaks=c(1,2,3,4,5,6,7),
- labels=c("Sun", "Mon", "Tue", "Wed","Thr","Fri","Sat")) +
- theme_bw()
- ```
-
- ![Weekly heat map](media/burnout/weekly.png)
-
- This heatmap is interesting because it shows that I typically worked
- longer hours on weekdays and that the intensities change after spring
- break.
-
- If you are not satisfied with a ggplot graph, you can use other
- scripts on the internet to plot calendar data as a heatmap. However, I
- like to solely use ggplot because it gives you very robust controls
- over how the data is displayed.
-
- ```R
- library(tidyquant)
- source("https://raw.githubusercontent.com/iascchen/VisHealth/master/R/calendarHeat.R")
-
- r2g <- c("#D61818", "#FFAE63", "#FFFFBD", "#B5E384")
- calendarHeat(data$date, data$total_hours, ncolors = 99, color = "g2r", varname="Daily Hours")
- ```
-
- ![Other Person's heatmap](media/burnout/heatmap.png)
-
- I wasn't a fan of this library because you couldn't scale the graph.
-
- The next thing that I wanted to plot was a line graph showing my
- weekly totals over the semester. Note: when I exported the excel file
- as a CSV, it did not contain the cells that I added to compute the
- weekly totals, so we have to calculate the sums ourselves. A naive
- approach would loop over the data and create a new table using for or
- while loops. I am a massive shill for R and Tidyverse because the
- Tibble data structure is insanely powerful. Using Dplyr on tibbles we
- can create groupings on columns and then compute metrics on those
- groupings all while utilizing a pipeline data flow. I would highly
- recommend R and Tidyverse for anyone considering data science and
- visualizations.
-
- ```R
- data %>% group_by(ymd) %>%
- dplyr::summarise(total = sum(total_hours),
- work_t = sum(work_total),
- class_t = sum(class),
- hw_t = sum(hw)) %>%
- gather(key,value, total, work_t, class_t, hw_t) %>%
- ggplot(mapping=aes(x = ymd)) +
- ggtitle("Weekly Hours") +
- geom_line(mapping=aes(y = value, colour = key)) +
- labs(x="School Week", y="Hours") +
- scale_colour_discrete(name="Categories",
- breaks=c("total", "work_t", "class_t", "hw_t"),
- labels=c("Total Hours", "Work", "In Class", "HW")) +
- theme_bw()
- ```
-
- ![Line graph of weekly hours](media/burnout/weeklyLineGraph.png)
-
- This is my favorite graph because it shows me the shift that my
- schedule took after classes went online. After the break, time in
- class dropped off, but the other metrics like time on homework
- remained about the same.
-
- Using the same grouping method as we did for weekly hours, we can
- graph all the self-reported metrics.
-
- ```R
- data %>% group_by(ymd) %>%
- dplyr::summarise(stress_a = mean(stress),
- fatigue_a = mean(fatigue),
- productivity_a = mean(productivity)) %>%
- gather(key,value, stress_a, fatigue_a, productivity_a) %>%
- ggplot(mapping=aes(x = ymd)) +
- ggtitle("Metrics Average") +
- geom_line(mapping=aes(y = value, colour = key)) +
- labs(x="School Week", y="Average (1-10)") +
- scale_colour_discrete(name="Metrics",
- breaks=c("stress_a", "fatigue_a", "productivity_a"),
- labels=c("Stress", "Fatigue", "Productivity")) +
- theme_bw()
- ```
-
- ![Line graph metrics](media/burnout/weeklyLineGraphMetrics.png)
-
- The metrics' actual values are not that important since they are
- relative to personal experience and are very inaccurate. How
- self-reported metrics change over time is more insightful than the
- actual values. We can observe that spring break and the switch to
- online classes had a positive benefit on all my self reported metrics.
-
- The next graph we can generate is the daily distribution of hours
- spent on separate activities. If we wanted to get really crazy, we
- could also group by day of the week; however, we already see some of
- that information in the calendar heatmap.
-
- ```R
- data %>%
- group_by(date) %>%
- gather(key,value, class, club, hw, work_total, total_hours) %>%
- ggplot(mapping=aes(x = date)) +
- ggtitle("Hourly Breakdowns") +
- geom_boxplot(mapping=aes(y = value, colour = key)) +
- labs(y="Hours") +
- scale_colour_discrete(name="Categories",
- breaks=c("total_hours", "hw", "work_total", "class", "club"),
- labels=c("Total Hours", "HW", "Work", "Class", "Club")) +
- theme_bw() +
- theme(axis.title.x=element_blank(),
- axis.text.x=element_blank(),
- axis.ticks.x=element_blank())
- ```
-
- ![Box plot of hours](media/burnout/hourlyBoxPlots.png)
-
- Unsurprisingly, we see that work and homework consumed the majority of
- my time.
-
- I created the same boxplot view for the metrics.
-
-
- ```R
- data %>%
- group_by(date) %>%
- gather(key,value, stress, fatigue, productivity) %>%
- ggplot(mapping=aes(x = date)) +
- ggtitle("Metrics Breakdowns") +
- geom_boxplot(mapping=aes(y = value, colour = key)) +
- labs(y="Metric") +
- scale_colour_discrete(name="Metrics",
- breaks=c("stress", "fatigue", "productivity"),
- labels=c("Stress", "Fatigue", "Productivity")) +
- theme_bw() +
- theme(axis.title.x=element_blank(),
- axis.text.x=element_blank(),
- axis.ticks.x=element_blank())
- ```
-
- ![Metrics Box Plot](media/burnout/metricsBoxPlots.png)
-
- What surprised me was that each of these three metrics had a
- relatively similar distribution. As mentioned before, self-recorded
- metrics are not accurate, but they provide insight when observing how
- they change over time.
-
- # Remarks
-
- This was a laborious post to compose; I don't want to sound bashful or
- boastful or anything along those lines-- this is a sensitive subject.
- Sharing my experience and reflecting on this semester is my way of
- reconciling what I've learned, and hopefully, it teaches someone else
- about the nuances of burnout.
-
- Although this definitely has had an impact on my mental health, I
- pulled through the semester and got a 4.0 GPA. I don't think I could
- have faced burnout so defiantly without my amazing friends and loving
- boyfriend. If COVID didn't force classes online, I don't know how this
- semester would have ended for me. I feel confident in my ability to
- achieve academically, but it is hard to do so while burned out. This
- experience has taught me that I can work 50-60 hours a week without
- getting burned out, but 70 is the number that **will** break the
- camels back.
-
- Since the very start of the semester, I knew that I would end up
- writing this post since I was collecting the data for it; however, I
- didn't know to what extent I would actually get affected by burnout. I
- still don't have a great way of describing what this experience was
- like. In extreme cases of burnout, people have passed out and gone to
- the hospital. In this country, we have a romanticized view of working
- long hours and pulling all-nighters. I've learned first hand that it
- is best to prioritize your mental health above all else.
-
- College doesn't have to be this hard. RIT is known for having a
- rigorous course load, and lots of students here get burned out.
- Keeping to a regular course load and not maxing out on jobs and clubs
- should be enough to prevent most people from getting burned out.
- Looking back at my first three semesters of college, I had soo much
- free time. A large part of avoiding burnout is about knowing your
- limits and planning your calendar to accommodate that. In the future,
- I won't flirt with a schedule that will inevitably cause me to get
- burnout.
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