000 | 02029nam a22002417a 4500 | ||
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005 | 20240210164507.0 | ||
008 | 240210b |||||||| |||| 00| 0 eng d | ||
020 | _a9781804612989 | ||
082 |
_a005.133 _bMOL |
||
100 |
_aMolak, Aleksander _914220 |
||
245 |
_aCausal inference and discovery in Python: _bunlock the secrets of modern causal machine learning with DoWhy, EconML, PyTorch and more |
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260 |
_bPackt Publishing Ltd. _aBirmingham _c2023 |
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300 | _axxv, 423 p. | ||
365 |
_aINR _b3699.00 |
||
520 | _aCausal methods present unique challenges compared to traditional machine learning and statistics. Learning causality can be challenging, but it offers distinct advantages that elude a purely statistical mindset. Causal Inference and Discovery in Python helps you unlock the potential of causality. You’ll start with basic motivations behind causal thinking and a comprehensive introduction to Pearlian causal concepts, such as structural causal models, interventions, counterfactuals, and more. Each concept is accompanied by a theoretical explanation and a set of practical exercises with Python code. Next, you’ll dive into the world of causal effect estimation, consistently progressing towards modern machine learning methods. Step-by-step, you’ll discover Python causal ecosystem and harness the power of cutting-edge algorithms. You’ll further explore the mechanics of how “causes leave traces” and compare the main families of causal discovery algorithms. The final chapter gives you a broad outlook into the future of causal AI where we examine challenges and opportunities and provide you with a comprehensive list of resources to learn more. (https://www.packtpub.com/product/causal-inference-and-discovery-in-python/9781804612989) | ||
650 |
_aComputer science _913730 |
||
650 |
_aComputer programming _915627 |
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650 |
_aProgramming languages _915628 |
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650 |
_aPython _915629 |
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650 |
_aMachine Learning _915068 |
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700 |
_aJaokar, Ajit _915630 |
||
942 |
_cBK _2ddc |
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999 |
_c5960 _d5960 |