Mostly features added to DebugScript
[ipdf/code.git] / tools / analysis.ipynb
index a91b2f4..2fc7ea7 100644 (file)
@@ -24,7 +24,7 @@
        ]
       }
      ],
-     "prompt_number": 1
+     "prompt_number": 2
     },
     {
      "cell_type": "code",
@@ -35,7 +35,7 @@
      "language": "python",
      "metadata": {},
      "outputs": [],
-     "prompt_number": 2
+     "prompt_number": 3
     },
     {
      "cell_type": "markdown",
         "[*****************67%*****             ]  2 of 3 complete"
        ]
       },
+      {
+       "metadata": {},
+       "output_type": "display_data",
+       "text": [
+        "'Failed to build GMPrat'"
+       ]
+      },
       {
        "output_type": "stream",
        "stream": "stdout",
      "metadata": {},
      "outputs": [
       {
-       "metadata": {},
-       "output_type": "display_data",
-       "text": [
-        "'Precision vs Zoom of \"svg-tests/fox-vector.svg\" using single'"
-       ]
-      },
-      {
-       "output_type": "stream",
-       "stream": "stdout",
-       "text": [
-        " \r",
-        "[****************100%******************]  100 of 100 complete"
-       ]
-      },
-      {
-       "metadata": {},
-       "output_type": "display_data",
-       "png": "iVBORw0KGgoAAAANSUhEUgAAAlsAAAHNCAYAAAApEr6yAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nxGGLiIiIyEVfAQcK06wQj5M7AAAAAElFTkSuQmCC\n",
-       "text": [
-        "<matplotlib.figure.Figure at 0x7f25259bf290>"
-       ]
-      },
-      {
-       "output_type": "stream",
-       "stream": "stdout",
-       "text": [
-        "\n"
+       "ename": "NameError",
+       "evalue": "name 'precision_vs_zoom' is not defined",
+       "output_type": "pyerr",
+       "traceback": [
+        "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m\n\u001b[1;31mNameError\u001b[0m                                 Traceback (most recent call last)",
+        "\u001b[1;32m<ipython-input-1-177c6c5e9c41>\u001b[0m in \u001b[0;36m<module>\u001b[1;34m()\u001b[0m\n\u001b[1;32m----> 1\u001b[1;33m \u001b[0mpz\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mprecision_vs_zoom\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;34m\"single\"\u001b[0m\u001b[1;33m,\u001b[0m \u001b[1;33m[\u001b[0m\u001b[1;36m0.5\u001b[0m\u001b[1;33m,\u001b[0m\u001b[1;36m0.5\u001b[0m\u001b[1;33m]\u001b[0m\u001b[1;33m,\u001b[0m\u001b[1;33m[\u001b[0m\u001b[1;36m1e-5\u001b[0m\u001b[1;33m,\u001b[0m\u001b[1;36m1e-5\u001b[0m\u001b[1;33m]\u001b[0m\u001b[1;33m,\u001b[0m\u001b[1;33m[\u001b[0m\u001b[1;36m1e-6\u001b[0m\u001b[1;33m,\u001b[0m\u001b[1;36m1e-6\u001b[0m\u001b[1;33m]\u001b[0m\u001b[1;33m,\u001b[0m \u001b[1;36m100\u001b[0m\u001b[1;33m,\u001b[0m \u001b[1;34m\"svg-tests/fox-vector.svg\"\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0mshow_outputs\u001b[0m\u001b[1;33m=\u001b[0m\u001b[0mTrue\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m",
+        "\u001b[1;31mNameError\u001b[0m: name 'precision_vs_zoom' is not defined"
        ]
       }
      ],
-     "prompt_number": 13
+     "prompt_number": 1
     },
     {
      "cell_type": "code",

UCC git Repository :: git.ucc.asn.au