From e9b44b6ec44a88713246fc3dc0280d159a2c3101 Mon Sep 17 00:00:00 2001
From: Juan David Hernandez Ramirez <hernandezj@jupyterMiLAB>
Date: Thu, 18 Feb 2021 20:51:22 -0500
Subject: [PATCH] =?UTF-8?q?se=20a=C3=B1ade=20barra=20de=20error?=
MIME-Version: 1.0
Content-Type: text/plain; charset=UTF-8
Content-Transfer-Encoding: 8bit

---
 ENTREGA.ipynb | 34 ----------------------------------
 ENTREGA.md    | 28 ++++------------------------
 2 files changed, 4 insertions(+), 58 deletions(-)

diff --git a/ENTREGA.ipynb b/ENTREGA.ipynb
index ee1acfc..7b498f8 100644
--- a/ENTREGA.ipynb
+++ b/ENTREGA.ipynb
@@ -617,40 +617,6 @@
     "               ,np.reshape(star5,144),np.reshape(star6,144),np.reshape(star7,144),np.reshape(star8,144)]"
    ]
   },
-  {
-   "cell_type": "code",
-   "execution_count": 84,
-   "metadata": {},
-   "outputs": [
-    {
-     "data": {
-      "text/plain": [
-       "<ErrorbarContainer object of 3 artists>"
-      ]
-     },
-     "execution_count": 84,
-     "metadata": {},
-     "output_type": "execute_result"
-    },
-    {
-     "data": {
-      "image/png": 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\n",
-      "text/plain": [
-       "<Figure size 432x288 with 1 Axes>"
-      ]
-     },
-     "metadata": {
-      "needs_background": "light"
-     },
-     "output_type": "display_data"
-    }
-   ],
-   "source": [
-    "z=np.sqrt(estrellasshape[0])\n",
-    "equis=np.arange(0,144,1)\n",
-    "plt.errorbar(equis,estrellasshape[0], z,capsize=7, fmt='o')"
-   ]
-  },
   {
    "cell_type": "markdown",
    "metadata": {},
diff --git a/ENTREGA.md b/ENTREGA.md
index 7206516..8c58d45 100644
--- a/ENTREGA.md
+++ b/ENTREGA.md
@@ -322,26 +322,6 @@ estrellasshape=[np.reshape(star1,144),np.reshape(star2,144),np.reshape(star3,144
                ,np.reshape(star5,144),np.reshape(star6,144),np.reshape(star7,144),np.reshape(star8,144)]
 ```
 
-
-```python
-z=np.sqrt(estrellasshape[0])
-equis=np.arange(0,144,1)
-plt.errorbar(equis,estrellasshape[0], z,capsize=7, fmt='o')
-```
-
-
-
-
-    <ErrorbarContainer object of 3 artists>
-
-
-
-
-    
-![png](output_42_1.png)
-    
-
-
 Creamos dos arreglos que tengan de longitud el eje x y y de las imágenes de las estrellas.
 
 
@@ -407,7 +387,7 @@ ax.plot_surface(xx,yy, zz2, rstride=3, cstride=3, linewidth=1, antialiased=True,
 
 
     
-![png](output_53_1.png)
+![png](output_52_1.png)
     
 
 
@@ -429,7 +409,7 @@ ax.plot_surface(xx,yy, estrellas[0], rstride=3, cstride=3, linewidth=1, antialia
 
 
     
-![png](output_55_1.png)
+![png](output_54_1.png)
     
 
 
@@ -456,7 +436,7 @@ plt.colorbar()
 
 
     
-![png](output_58_1.png)
+![png](output_57_1.png)
     
 
 
@@ -476,7 +456,7 @@ ax.plot_surface(xx,yy, error2(best[0][0],xx,yy,estrellas[0]), rstride=3, cstride
 
 
     
-![png](output_59_1.png)
+![png](output_58_1.png)
     
 
 
-- 
GitLab