000 | 01932nam a22002177a 4500 | ||
---|---|---|---|
005 | 20240210180223.0 | ||
008 | 240210b |||||||| |||| 00| 0 eng d | ||
020 | _a9789391392574 | ||
082 |
_a006.31 _bGRI |
||
100 |
_aGridin, Ivan _914229 |
||
245 |
_aTime series forecasting using deep learning: _bcombining PyTorch, RNN, TCN and deep neural network models to provide production-ready prediction solutions |
||
260 |
_bBPB Publications _aNew Delhi _c2023 |
||
300 | _axxiii, 289 p. | ||
365 |
_aINR _b899.00 |
||
520 | _aThis book is amid at teaching the readers how to apply the deep learning techniques to the time series forecasting challenges and how to build prediction models using PyTorch. The readers will learn the fundamentals of PyTorch in the early stages of the book. Next, the time series forecasting is covered in greater depth after the programme has been developed. You will try to use machine learning to identify the patterns that can help us forecast the future results. It covers methodologies such as Recurrent Neural Network, Encoder-decoder model, and Temporal Convolutional Network, all of which are state-of-the-art neural network architectures. Furthermore, for good measure, we have also introduced the neural architecture search, which automates searching for an ideal neural network design for a certain task. Finally by the end of the book, readers would be able to solve complex real-world prediction issues by applying the models and strategies learnt throughout the course of the book. This book also offers another great way of mastering deep learning and its various techniques. (https://in.bpbonline.com/products/time-series-forecasting-using-deep-learning?_pos=1&_sid=5a64ea01e&_ss=r&variant=41900465946811) | ||
650 |
_aDeep learning _915633 |
||
650 |
_aTime series _915649 |
||
650 |
_aForecasting _915650 |
||
650 |
_aNeural network model _915651 |
||
942 |
_cBK _2ddc |
||
999 |
_c5969 _d5969 |