Skip to content

Commit

Permalink
fix some typos
Browse files Browse the repository at this point in the history
  • Loading branch information
Hide-A-Pumpkin committed Dec 9, 2023
1 parent cf7dfac commit 6f8c714
Show file tree
Hide file tree
Showing 5 changed files with 22 additions and 22 deletions.
10 changes: 5 additions & 5 deletions docs/index.html
Original file line number Diff line number Diff line change
Expand Up @@ -183,13 +183,13 @@ <h1 class="title">Welcome!</h1>

<p>This webpage contains community contributions for Fall 2023 EDAV class at Columbia University.</p>
<p>There are 108 videos in total that are divided into 7 categories.</p>
<p>For the final project project, you’re welcome to first check out “<a href="https://jtr13.github.io/edav2023/project1.html">1. Data Collection and Preprocessing</a>” and “<a href="https://jtr13.github.io/edav2023/project2.html">2. Data Visualization Techniques</a>”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in it.</p>
<p>Other categories cover more advanced skills, which may not necessarily be within the scope of the final project, but are still extremely interesting, useful, and insightful!</p>
<p><a href="https://jtr13.github.io/edav2023/project3.html">3. Interactive and Web-based Applications</a>”: using Shiny App in R to create interactive online dashboards</p>
<p>For the final project, you’re welcome to first check out “<a href="https://jtr13.github.io/edav2023/project1.html">1. Data Collection and Preprocessing</a>” and “<a href="https://jtr13.github.io/edav2023/project2.html">2. Data Visualization Techniques</a>”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in each of them.</p>
<p>Other categories cover more advanced skills, which may be outside the scope of the final project but are still extremely interesting, useful, and insightful!</p>
<p><a href="https://jtr13.github.io/edav2023/project3.html">3. Interactive and Web-based Applications</a>”: Using Shiny App in R to create interactive online dashboards</p>
<p><a href="https://jtr13.github.io/edav2023/project7.html">4. Outside of R</a>”: Data visualization techniques outside of R, most of which are in Python</p>
<p><a href="https://jtr13.github.io/edav2023/project4.html">5. Parameter Analysis of Visualization Techniques</a>”: Dives into the mathematical foundation behind visualization techniques</p>
<p><a href="https://jtr13.github.io/edav2023/project5.html">6. Programming Techniques and Tools</a>”: diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex</p>
<p><a href="https://jtr13.github.io/edav2023/project6.html">7. Statistical Analysis and Modeling</a>”: machine learning, modeling, and inference in R</p>
<p><a href="https://jtr13.github.io/edav2023/project5.html">6. Programming Techniques and Tools</a>”: Diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex</p>
<p><a href="https://jtr13.github.io/edav2023/project6.html">7. Statistical Analysis and Modeling</a>”: Machine learning, modeling, and inference in R</p>



Expand Down
4 changes: 2 additions & 2 deletions docs/search.json
Original file line number Diff line number Diff line change
Expand Up @@ -60,13 +60,13 @@
"href": "index.html",
"title": "Welcome!",
"section": "",
"text": "This webpage contains community contributions for Fall 2023 EDAV class at Columbia University.\nThere are 108 videos in total that are divided into 7 categories.\nFor the final project project, you’re welcome to first check out “1. Data Collection and Preprocessing” and “2. Data Visualization Techniques”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in it.\nOther categories cover more advanced skills, which may not necessarily be within the scope of the final project, but are still extremely interesting, useful, and insightful!\n“3. Interactive and Web-based Applications”: using Shiny App in R to create interactive online dashboards\n“4. Outside of R”: Data visualization techniques outside of R, most of which are in Python\n“5. Parameter Analysis of Visualization Techniques”: Dives into the mathematical foundation behind visualization techniques\n“6. Programming Techniques and Tools”: diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex\n“7. Statistical Analysis and Modeling”: machine learning, modeling, and inference in R\n\n\n\n Back to top"
"text": "This webpage contains community contributions for Fall 2023 EDAV class at Columbia University.\nThere are 108 videos in total that are divided into 7 categories.\nFor the final project, you’re welcome to first check out “1. Data Collection and Preprocessing” and “2. Data Visualization Techniques”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in each of them.\nOther categories cover more advanced skills, which may be outside the scope of the final project but are still extremely interesting, useful, and insightful!\n“3. Interactive and Web-based Applications”: Using Shiny App in R to create interactive online dashboards\n“4. Outside of R”: Data visualization techniques outside of R, most of which are in Python\n“5. Parameter Analysis of Visualization Techniques”: Dives into the mathematical foundation behind visualization techniques\n“6. Programming Techniques and Tools”: Diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex\n“7. Statistical Analysis and Modeling”: Machine learning, modeling, and inference in R\n\n\n\n Back to top"
},
{
"objectID": "welcome.html",
"href": "welcome.html",
"title": "Welcome!",
"section": "",
"text": "This webpage contains community contributions for Fall 2023 EDAV class at Columbia University.\nThere are 108 videos in total that are divided into 7 categories.\nFor the final project project, you’re welcome to first check out “1. Data Collection and Preprocessing” and “2. Data Visualization Techniques”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in it.\nOther categories cover more advanced skills, which may not necessarily be within the scope of the final project, but are still extremely interesting, useful, and insightful!\n“3. Interactive and Web-based Applications”: using Shiny App in R to create interactive online dashboards\n“4. Outside of R”: Data visualization techniques outside of R, most of which are in Python\n“5. Parameter Analysis of Visualization Techniques”: Dives into the mathematical foundation behind visualization techniques\n“6. Programming Techniques and Tools”: diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex\n“7. Statistical Analysis and Modeling”: machine learning, modeling, and inference in R\n\n\n\n Back to top"
"text": "This webpage contains community contributions for Fall 2023 EDAV class at Columbia University.\nThere are 108 videos in total that are divided into 7 categories.\nFor the final project, you’re welcome to first check out “1. Data Collection and Preprocessing” and “2. Data Visualization Techniques”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in each of them.\nOther categories cover more advanced skills, which may be outside the scope of the final project but are still extremely interesting, useful, and insightful!\n“3. Interactive and Web-based Applications”: Using Shiny App in R to create interactive online dashboards\n“4. Outside of R”: Data visualization techniques outside of R, most of which are in Python\n“5. Parameter Analysis of Visualization Techniques”: Dives into the mathematical foundation behind visualization techniques\n“6. Programming Techniques and Tools”: Diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex\n“7. Statistical Analysis and Modeling”: Machine learning, modeling, and inference in R\n\n\n\n Back to top"
}
]
10 changes: 5 additions & 5 deletions docs/welcome.html
Original file line number Diff line number Diff line change
Expand Up @@ -183,13 +183,13 @@ <h1 class="title">Welcome!</h1>

<p>This webpage contains community contributions for Fall 2023 EDAV class at Columbia University.</p>
<p>There are 108 videos in total that are divided into 7 categories.</p>
<p>For the final project project, you’re welcome to first check out “<a href="https://jtr13.github.io/edav2023/project1.html">1. Data Collection and Preprocessing</a>” and “<a href="https://jtr13.github.io/edav2023/project2.html">2. Data Visualization Techniques</a>”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in it.</p>
<p>Other categories cover more advanced skills, which may not necessarily be within the scope of the final project, but are still extremely interesting, useful, and insightful!</p>
<p><a href="https://jtr13.github.io/edav2023/project3.html">3. Interactive and Web-based Applications</a>”: using Shiny App in R to create interactive online dashboards</p>
<p>For the final project, you’re welcome to first check out “<a href="https://jtr13.github.io/edav2023/project1.html">1. Data Collection and Preprocessing</a>” and “<a href="https://jtr13.github.io/edav2023/project2.html">2. Data Visualization Techniques</a>”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in each of them.</p>
<p>Other categories cover more advanced skills, which may be outside the scope of the final project but are still extremely interesting, useful, and insightful!</p>
<p><a href="https://jtr13.github.io/edav2023/project3.html">3. Interactive and Web-based Applications</a>”: Using Shiny App in R to create interactive online dashboards</p>
<p><a href="https://jtr13.github.io/edav2023/project7.html">4. Outside of R</a>”: Data visualization techniques outside of R, most of which are in Python</p>
<p><a href="https://jtr13.github.io/edav2023/project4.html">5. Parameter Analysis of Visualization Techniques</a>”: Dives into the mathematical foundation behind visualization techniques</p>
<p><a href="https://jtr13.github.io/edav2023/project5.html">6. Programming Techniques and Tools</a>”: diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex</p>
<p><a href="https://jtr13.github.io/edav2023/project6.html">7. Statistical Analysis and Modeling</a>”: machine learning, modeling, and inference in R</p>
<p><a href="https://jtr13.github.io/edav2023/project5.html">6. Programming Techniques and Tools</a>”: Diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex</p>
<p><a href="https://jtr13.github.io/edav2023/project6.html">7. Statistical Analysis and Modeling</a>”: Machine learning, modeling, and inference in R</p>



Expand Down
10 changes: 5 additions & 5 deletions index.qmd
Original file line number Diff line number Diff line change
Expand Up @@ -12,17 +12,17 @@ This webpage contains community contributions for Fall 2023 EDAV class at Columb

There are 108 videos in total that are divided into 7 categories.

For the final project project, you’re welcome to first check out “[1. Data Collection and Preprocessing](https://jtr13.github.io/edav2023/project1.html)” and “[2. Data Visualization Techniques](https://jtr13.github.io/edav2023/project2.html)”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in it.
For the final project, you’re welcome to first check out “[1. Data Collection and Preprocessing](https://jtr13.github.io/edav2023/project1.html)” and “[2. Data Visualization Techniques](https://jtr13.github.io/edav2023/project2.html)”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in each of them.

Other categories cover more advanced skills, which may not necessarily be within the scope of the final project, but are still extremely interesting, useful, and insightful!
Other categories cover more advanced skills, which may be outside the scope of the final project but are still extremely interesting, useful, and insightful!

[3. Interactive and Web-based Applications](https://jtr13.github.io/edav2023/project3.html)”: using Shiny App in R to create interactive online dashboards
[3. Interactive and Web-based Applications](https://jtr13.github.io/edav2023/project3.html)”: Using Shiny App in R to create interactive online dashboards

[4. Outside of R](https://jtr13.github.io/edav2023/project7.html)”: Data visualization techniques outside of R, most of which are in Python

[5. Parameter Analysis of Visualization Techniques](https://jtr13.github.io/edav2023/project4.html)”: Dives into the mathematical foundation behind visualization techniques

[6. Programming Techniques and Tools](https://jtr13.github.io/edav2023/project5.html)”: diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex
[6. Programming Techniques and Tools](https://jtr13.github.io/edav2023/project5.html)”: Diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex

[7. Statistical Analysis and Modeling](https://jtr13.github.io/edav2023/project6.html)”: machine learning, modeling, and inference in R
[7. Statistical Analysis and Modeling](https://jtr13.github.io/edav2023/project6.html)”: Machine learning, modeling, and inference in R

10 changes: 5 additions & 5 deletions welcome.qmd
Original file line number Diff line number Diff line change
Expand Up @@ -6,16 +6,16 @@ This webpage contains community contributions for Fall 2023 EDAV class at Columb

There are 108 videos in total that are divided into 7 categories.

For the final project project, you’re welcome to first check out “[1. Data Collection and Preprocessing](https://jtr13.github.io/edav2023/project1.html)” and “[2. Data Visualization Techniques](https://jtr13.github.io/edav2023/project2.html)”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in it.
For the final project, you’re welcome to first check out “[1. Data Collection and Preprocessing](https://jtr13.github.io/edav2023/project1.html)” and “[2. Data Visualization Techniques](https://jtr13.github.io/edav2023/project2.html)”, as these are all videos about the basic graphs, skills, and packages in R that are within the scope of the final project. There are also several subcategories in each of them.

Other categories cover more advanced skills, which may not necessarily be within the scope of the final project, but are still extremely interesting, useful, and insightful!
Other categories cover more advanced skills, which may be outside the scope of the final project but are still extremely interesting, useful, and insightful!

[3. Interactive and Web-based Applications](https://jtr13.github.io/edav2023/project3.html)”: using Shiny App in R to create interactive online dashboards
[3. Interactive and Web-based Applications](https://jtr13.github.io/edav2023/project3.html)”: Using Shiny App in R to create interactive online dashboards

[4. Outside of R](https://jtr13.github.io/edav2023/project7.html)”: Data visualization techniques outside of R, most of which are in Python

[5. Parameter Analysis of Visualization Techniques](https://jtr13.github.io/edav2023/project4.html)”: Dives into the mathematical foundation behind visualization techniques

[6. Programming Techniques and Tools](https://jtr13.github.io/edav2023/project5.html)”: diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex
[6. Programming Techniques and Tools](https://jtr13.github.io/edav2023/project5.html)”: Diverse programming techniques ranging from speeding up codes in R to integrating R with VSCode and Latex

[7. Statistical Analysis and Modeling](https://jtr13.github.io/edav2023/project6.html)”: machine learning, modeling, and inference in R
[7. Statistical Analysis and Modeling](https://jtr13.github.io/edav2023/project6.html)”: Machine learning, modeling, and inference in R

0 comments on commit 6f8c714

Please sign in to comment.