supplier_diversity float64 0.01 0.98 | delivery_consistency float64 0 0.96 | inventory_buffer float64 0.09 0.98 | chain_performance float64 0 0.6 | sector stringclasses 5
values | disruption_type stringclasses 5
values |
|---|---|---|---|---|---|
0.166164 | 0.189137 | 0.630975 | 0.014419 | pharma | cyber |
0.109329 | 0.302354 | 0.657761 | 0.085153 | automotive | none |
0.564806 | 0.286623 | 0.752381 | 0.164517 | food | natural |
0.502764 | 0.256733 | 0.287824 | 0.021578 | textiles | natural |
0.440378 | 0.624657 | 0.510958 | 0.162053 | food | natural |
0.215283 | 0.473153 | 0.827343 | 0.085374 | textiles | none |
0.554831 | 0.117366 | 0.714206 | 0.034423 | pharma | pandemic |
0.945397 | 0.337446 | 0.85727 | 0.25098 | pharma | natural |
0.64563 | 0.416492 | 0.535358 | 0.129501 | textiles | geopolitical |
0.595597 | 0.222586 | 0.358725 | 0.054598 | food | none |
0.095709 | 0.270158 | 0.429971 | 0.060632 | food | cyber |
0.717863 | 0.74215 | 0.744211 | 0.431845 | textiles | geopolitical |
0.657804 | 0.704694 | 0.770111 | 0.379686 | automotive | geopolitical |
0.483342 | 0.582564 | 0.524811 | 0.150316 | food | pandemic |
0.242309 | 0.533558 | 0.824465 | 0.103173 | automotive | geopolitical |
0.348523 | 0.45698 | 0.485921 | 0.036164 | automotive | natural |
0.034568 | 0.449054 | 0.280892 | 0 | automotive | pandemic |
0.3935 | 0.807821 | 0.898092 | 0.269066 | pharma | none |
0.326663 | 0.325266 | 0.384402 | 0.049771 | food | cyber |
0.020742 | 0.529866 | 0.618254 | 0 | textiles | geopolitical |
0.731381 | 0.615859 | 0.616027 | 0.262424 | automotive | natural |
0.465457 | 0.495083 | 0.31475 | 0.080561 | pharma | geopolitical |
0.444956 | 0.147419 | 0.847684 | 0.056724 | textiles | cyber |
0.507525 | 0.306056 | 0.766943 | 0.161532 | food | natural |
0.535598 | 0.55995 | 0.923995 | 0.275242 | electronics | natural |
0.043486 | 0.506584 | 0.556561 | 0.027053 | electronics | none |
0.539179 | 0.474566 | 0.827362 | 0.207273 | textiles | geopolitical |
0.619093 | 0.190159 | 0.904364 | 0.043899 | textiles | cyber |
0.378757 | 0.25287 | 0.32597 | 0.064167 | pharma | geopolitical |
0.196078 | 0.525134 | 0.768728 | 0.094984 | food | geopolitical |
0.66703 | 0.551828 | 0.827902 | 0.304994 | electronics | none |
0.266257 | 0.260525 | 0.425771 | 0.085799 | automotive | pandemic |
0.233838 | 0.591372 | 0.64699 | 0.071339 | textiles | geopolitical |
0.918528 | 0.331908 | 0.520395 | 0.101841 | pharma | pandemic |
0.713341 | 0.789828 | 0.741843 | 0.390483 | pharma | pandemic |
0.839496 | 0.711858 | 0.70054 | 0.406019 | textiles | none |
0.207291 | 0.180488 | 0.773361 | 0.047122 | pharma | none |
0.440031 | 0.427445 | 0.922514 | 0.154686 | textiles | cyber |
0.518251 | 0.553256 | 0.449863 | 0.098461 | textiles | none |
0.429947 | 0.287021 | 0.39774 | 0.042314 | electronics | none |
0.491556 | 0.664209 | 0.842841 | 0.352322 | electronics | cyber |
0.59485 | 0.533567 | 0.876915 | 0.343658 | automotive | natural |
0.423229 | 0.153119 | 0.587206 | 0.02947 | electronics | cyber |
0.37757 | 0.491208 | 0.562345 | 0.092174 | pharma | cyber |
0.595048 | 0.578751 | 0.857387 | 0.210736 | automotive | none |
0.689686 | 0.345961 | 0.708765 | 0.146294 | pharma | natural |
0.86319 | 0.384645 | 0.61505 | 0.168604 | textiles | none |
0.953689 | 0.393464 | 0.468687 | 0.155571 | food | none |
0.475936 | 0.472617 | 0.848276 | 0.19673 | textiles | cyber |
0.125513 | 0.516563 | 0.524514 | 0.002754 | textiles | cyber |
0.21311 | 0.512077 | 0.852586 | 0.107938 | pharma | none |
0.630387 | 0.436286 | 0.500079 | 0.11509 | automotive | natural |
0.705887 | 0.273875 | 0.565109 | 0.134813 | electronics | geopolitical |
0.821402 | 0.810768 | 0.331889 | 0.256169 | pharma | cyber |
0.668866 | 0.328766 | 0.401721 | 0.052921 | electronics | geopolitical |
0.488991 | 0.2307 | 0.191034 | 0.018462 | food | geopolitical |
0.702873 | 0.295548 | 0.754646 | 0.165503 | automotive | pandemic |
0.838961 | 0.62751 | 0.8273 | 0.44416 | food | cyber |
0.288492 | 0.425198 | 0.742297 | 0.07511 | textiles | cyber |
0.331152 | 0.414705 | 0.431322 | 0.111655 | pharma | natural |
0.078289 | 0.593403 | 0.69785 | 0.063542 | pharma | pandemic |
0.725771 | 0.132186 | 0.914705 | 0.055138 | electronics | cyber |
0.691079 | 0.435488 | 0.657186 | 0.175773 | textiles | natural |
0.81668 | 0.427614 | 0.523793 | 0.225074 | pharma | natural |
0.924484 | 0.236369 | 0.776428 | 0.185908 | pharma | pandemic |
0.485585 | 0.500599 | 0.923867 | 0.24135 | textiles | geopolitical |
0.772763 | 0.712789 | 0.454785 | 0.238752 | textiles | none |
0.528353 | 0.369363 | 0.55837 | 0.115208 | automotive | pandemic |
0.106853 | 0.529949 | 0.460901 | 0.032494 | food | geopolitical |
0.529701 | 0.657418 | 0.779537 | 0.303951 | pharma | cyber |
0.944193 | 0.206361 | 0.398522 | 0.074614 | textiles | none |
0.170581 | 0.725577 | 0.688647 | 0.081008 | food | geopolitical |
0.494529 | 0.392711 | 0.648246 | 0.136442 | pharma | natural |
0.641867 | 0.158299 | 0.355621 | 0.038296 | textiles | geopolitical |
0.634339 | 0.339727 | 0.687689 | 0.154864 | electronics | pandemic |
0.925769 | 0.102328 | 0.505213 | 0.028188 | textiles | pandemic |
0.811774 | 0.64045 | 0.954182 | 0.471782 | automotive | natural |
0.836222 | 0.51655 | 0.851706 | 0.411781 | electronics | natural |
0.559397 | 0.58635 | 0.836401 | 0.260595 | food | none |
0.160672 | 0.574599 | 0.456168 | 0.160011 | food | geopolitical |
0.211889 | 0.520159 | 0.71856 | 0.052532 | pharma | geopolitical |
0.389733 | 0.153278 | 0.241195 | 0.053915 | textiles | pandemic |
0.27462 | 0.481922 | 0.792649 | 0.11307 | textiles | cyber |
0.391458 | 0.184931 | 0.71365 | 0.110165 | electronics | geopolitical |
0.351336 | 0.428663 | 0.692765 | 0.116782 | food | geopolitical |
0.414128 | 0.132524 | 0.514929 | 0 | automotive | none |
0.625956 | 0.53157 | 0.69001 | 0.187884 | electronics | geopolitical |
0.500363 | 0.051486 | 0.317132 | 0.003482 | textiles | natural |
0.458705 | 0.511869 | 0.718134 | 0.183303 | automotive | pandemic |
0.866151 | 0.410029 | 0.456631 | 0.150138 | automotive | geopolitical |
0.602641 | 0.355413 | 0.585926 | 0.135131 | pharma | cyber |
0.348113 | 0.265724 | 0.524239 | 0.033923 | textiles | natural |
0.783887 | 0.371077 | 0.414523 | 0.128963 | textiles | pandemic |
0.572733 | 0.166961 | 0.716827 | 0.02678 | textiles | none |
0.18224 | 0.787389 | 0.739053 | 0.133611 | food | geopolitical |
0.616201 | 0.086668 | 0.701493 | 0.032139 | food | natural |
0.628672 | 0.129842 | 0.717156 | 0.067181 | pharma | cyber |
0.654531 | 0.342903 | 0.767939 | 0.135705 | automotive | geopolitical |
0.429673 | 0.498851 | 0.606398 | 0.172972 | textiles | none |
0.808198 | 0.412982 | 0.487221 | 0.102281 | pharma | natural |
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