avatarAnju Sebastian

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Abstract

lors, and no axes by default, streamlining the process of plotting vector data. If needed, you can easily customize the appearance using gspatial_plot, Geopandas, or Matplotlib parameters.</p><div id="7f83"><pre>gsp<span class="hljs-selector-class">.shapeplot</span>(usa, figsize=(<span class="hljs-number">15</span>, <span class="hljs-number">15</span>))</pre></div><figure id="5a4f"><img src="https://cdn-images-1.readmedium.com/v2/resize:fit:800/1*hgepISp4blKLRyoMFCcqAg.png"><figcaption></figcaption></figure><p id="970d">You also have the option to adjust the parameters according to your needs. For instance, let’s incorporate a title into the visualization:</p><div id="b7f0"><pre>gsp.shapeplot( usa, title=<span class="hljs-string">"USA MAP"</span>, title_kwds={<span class="hljs-string">"fontsize"</span>: 25, <span class="hljs-string">"fontname"</span>: <span class="hljs-string">"sans-serif"</span>, <span class="hljs-string">"fontweight"</span>: 3}, )</pre></div><figure id="4438"><img src="https://cdn-images-1.readmedium.com/v2/resize:fit:800/1*mIWUUXOP3u1uiZXQs_N2Lg.png"><figcaption></figcaption></figure><p id="1dc8"><b>Here’s the explanation of the shapeplot function’s parameters:</b></p><p id="7d22">• data (GeoDataFrame): GeoDataFrame used as the data source for the map. • title (str): Title displayed on the map. Default is None. • title_kwds (dict): Keyword arguments for configuring title appearance using matplotlib.pyplot.title. Default is an empty dictionary. • figsize (tuple): Dimensions of the figure. Default is (15, 15). • facecolor (str): Background color of the figure. Default is “white”. • edgecolor (str): Color of the map’s edges. Default is “black”. • linewidth (float): Line width for shapes. Default is 0.5. • color (str): Color of the shape. Default is “#F1F3F4”. • annot (bool): Toggle annotations on/off. Default is False. • annot_column (str/GeoDataFrame column): Source column for annotations. Default is None. • annot_align (str): Text alignment for annotations. Default is “center”. • annot_kwds (dict): Keyword arguments for customizing annotations. Default is an empty dictionary. • ax (matplotlib axis): Existing axis for plotting, if needed. Default is None. • axis_on (bool): Toggle axis visibility. Default is False. • **geopandas_plot_kwds: Additional keyword arguments for Geopandas plot customization.</p><p id="5a62">Returns: Matplotlib axis object (ax) representing the map.</p><p id="39a4">This function enables straightforward GeoDataFrame shape plotting with customizable options for appearance and annotations, while allowing flexibility in using existing axes for plotting. The function returns a matplotlib axis object representing the generated map.</p><h1 id="7308">pointplot</h1><p id="e010">Point plot is designed specifically for visualizing point data. A key distinction between point plot and shapeplot lies in the ability to utilize a base vector layer of shapes. This base layer allows points to be plotted on top, enabling a layered representation.</p><div id="62be"><pre>usa_points = usa.representative_point() gsp.pointplot(usa_points, <span class="hljs-keyword">base</span>=usa)</pre></div><figure id="e5d7"><img src="https://cdn-images-1.readmedium.com/v2/resize:fit:800/1*ZOiYi_T2DL9CU9Kx7-KpGA.png"><figcaption></figcaption></figure><p id="6b86">Alternatively, you have the option to plot the polygons themselves instead of just their boundaries in the base layer.</p><div id="aac0"><pre>gsp.pointplot(usa_points, <span class="hljs-keyword">base</span>=usa, base_boundary=False)</pre></div><figure id="3412"><img src="https://cdn-images-1.readmedium.com/v2/resize:fit:800/1*_Sz_IGkazfobhvTpV3Y8Ag.png"><figcaption></figcaption></figure><p id="8f2e">Points can be plotted independently, without the need for a base layer.</p><div id="30aa"><pre>gsp<span class="hljs-selector-class">.pointplot</span>(usa_points)</pre></div><figure id="d8ed"><img src="https://cdn

Options

-images-1.readmedium.com/v2/resize:fit:800/1*zFOL9eUsmS-5S67MeufNcQ.png"><figcaption></figcaption></figure><p id="5c42">Matplotlib axis objects offer the ability to merge and combine multiple plots.</p><div id="4753"><pre>ax = gsp.shapeplot(usa, figsize=(<span class="hljs-number">15</span>, <span class="hljs-number">15</span>)) gsp.pointplot(usa_points, ax=ax)</pre></div><figure id="f05f"><img src="https://cdn-images-1.readmedium.com/v2/resize:fit:800/1*_Sz_IGkazfobhvTpV3Y8Ag.png"><figcaption></figcaption></figure><p id="b9e0">It’s also possible to tailor the appearance of the base layer according to your preferences.</p><div id="3dfa"><pre>gsp.pointplot( usa_points, base=usa, basecolor=<span class="hljs-string">"#7aebff"</span>, base_boundary=<span class="hljs-literal">False</span>, title=<span class="hljs-string">"USA Points"</span>, title_kwds={<span class="hljs-string">"fontsize"</span>: <span class="hljs-number">25</span>, <span class="hljs-string">"fontname"</span>: <span class="hljs-string">"sans-serif"</span>, <span class="hljs-string">"fontweight"</span>: <span class="hljs-number">3</span>}, )</pre></div><figure id="ce5a"><img src="https://cdn-images-1.readmedium.com/v2/resize:fit:800/1*AiPv5roDBIrvCc92oIvZ4g.png"><figcaption></figcaption></figure><p id="3d19"><b>Here’s the breakdown of the pointplot function’s parameters:</b></p><p id="a875">• data (GeoDataFrame): The GeoDataFrame used for plotting the map. • base (GeoDataFrame): Base GeoDataFrame on top of which the data will be plotted. Defaults to None. • title (str): Title of the map. Defaults to None. • title_kwds (dict): Keyword arguments for configuring the appearance of the title using matplotlib.pyplot.title. Defaults to an empty dictionary. • figsize (tuple): Size of the figure. Defaults to (15, 15). • color (str): Color of the point. Defaults to “#ffb536”. • edgecolor (str): Color of the map’s edges. Defaults to “black”. • basecolor (str): Color of the base data. Defaults to “#F1F3F4”. • baseboundarycolor (str): Boundary color of the base data. Defaults to “black”. • base_boundary (bool): Toggle visibility of base data boundaries. Defaults to True. • boundary_linewidth (float): Linewidth of the base data boundaries. Defaults to 0.5. • linewidth (float): Width of lines for shapes. Defaults to 0.5. • annot (bool): If True, annotations are generated. Defaults to False. • annot_column (str/GeoDataFrame column): If annot is True, column should be passed as the source for annotation. Defaults to None. • annot_align (str): Text alignment for annotations. Defaults to “center”. • annot_kwds (dict): Keyword arguments for annotation customization. Defaults to an empty dictionary. • ax (matplotlib axis): Existing axis for plotting. Defaults to None. • axis_on (bool): Toggle axis visibility. Defaults to False. • facecolor (str): Figure’s face color. Defaults to “white”. • **geopandas_plot_kwds: Additional Geopandas plot keyword arguments.</p><p id="fd44">Returns: Matplotlib axis object (ax).</p><h1 id="44de">Tips for Polished Maps</h1><p id="46bb"><b>Harmonious Color Choices:</b> Experiment with color palettes to create maps that are visually pleasing and easy to understand. Choose colors that enhance the readability of your map.</p><p id="6be4"><b>Precise Annotations:</b> Annotations provide context to your maps. Customize annotation alignment and appearance to guide viewers through your spatial narrative seamlessly.</p><p id="b235"><b>Seamless Matplotlib Integration:</b> Leverage the integration with Matplotlib to fine-tune your maps’ aesthetics, titles, and labels for a polished final product.</p><h1 id="071e">Conclusion</h1><p id="3df6">In this tutorial, we’ve covered the essentials of crafting geospatial maps using the gspatial_plot library. With gspatial_plot, the process of geospatial mapping becomes more manageable and easy. See you in the next tutorial— happy mapping!</p></article></body>

Easy And Classic Macaroni Salad — American’s Deli Staple

Enjoy the way you like it

Macaroni Salad, Image by Author

Though working from home is a kind of blessing, but it has its limitations. We tend to schedule late meetings, and some sessions deliberately run longer than usual, eventually takes up a lot of time than anticipated.

When I am too caught up or too lazy for a day, I will look for an easy dinner fix. Wheat Dosa is a quick recipe but not really likable to prepare that every day.

I am not so sure who invented this idea, but the Washington Post recipe published in 1930 named this “mock potato salad” was as far as I read.

Macaroni Salad will get a place instead. Salad alone is filling and wind up our dinner with some cut fruits.

There are so many versions that are available when you search for macaroni salad, and here is mine; Add anything to make it colorful.

It is easy to fix, and ingredients can be changed based on everyone’s liking, which is how I prepare it.

Ingredients

1/2 Cup Elbow Macaroni

1/2 onion ( white or red)

1/2 tomato

1/2 Cucumber

1/4 cup frozen corn

1/4 cup frozen green peas

1/4 teaspoon salt

1 tablespoon sugar

1/4 teaspoon pepper powder (Black or white)

1 tablespoon apple cigar vinegar

1- 2 tablespoon olive oil

2–3 tablespoon mayonnaise

2–3 tablespoon Thousand Island

Optional

1 hardboiled egg

1/4 cup cooked chicken breast

celery

cayenne powder

paprika powder

Preparation

  • Cook macaroni in salty and oily water until al dente
  • Meanwhile, chopped onion, cucumber, and tomato
  • In a salad mixing bowl, combine well-chopped onion, cucumber, tomato, corn, green peas, salt, sugar, pepper powder, olive oil, and vinegar.
  • Add drained macaroni, mayonnaise, and Thousand Island and toss well.
  • Add chopped egg or chicken and toss well ( Optional step)
  • Refrigerate it for at least 30 minutes or more. I will only take out the salad at dinner serving time.

Notes

  • The remaining salad can be kept refrigerated for 1–2 days.
Food
Recipe
Salad
American
Cooking
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