《Efficient Deep Learning Book》[EDL] Chapter 3 - Learning Techniquesthat enable us to achieve our quality goals. High quality models have an additional benefit in footprint constrained environments like mobile and edge devices where they provide the flexibility to trade learning techniques. It is followed by a short discussion on exchanging model quality and model footprint. An in-depth discussion of data augmentation and distillation follows right after. Following the and/or label efficient training setup, can we exchange some of this to achieve a model with a better footprint? The next subsection elaborates it further. Using learning techniques to build smaller and faster0 码力 | 56 页 | 18.93 MB | 1 年前3
《Efficient Deep Learning Book》[EDL] Chapter 6 - Advanced Learning Techniques - Technical Reviewwithout increasing the footprint of the model (size, latency, etc). And as we have described earlier, some of these improved quality metrics can be traded off for a smaller footprint as desired. Continuing techniques to help you improve your model’s quality metrics without taking a hit on any of the footprint metrics. These techniques might get superseded by other better methods over time, but again our Proceedings of the 26th Annual International Conference on Machine Learning." Curriculum learning. Association for Computing Machinery, 14 June 2009, pp. 41-48, doi:10.1145/1553374.1553380. 18 Allgower, Eugene0 码力 | 31 页 | 4.03 MB | 1 年前3
Advancing the Tactical Edge with K3s and SUSE RGSBooz Allen Hamilton Booz Allen Hamilton is one of a growing co- hort of organizations working in association with the U.S. Department of Defense to drive open source innovation into strategic de- fense with a solid U.S. presence. K3s was soon identified as the right solu- tion, due to its small footprint, streamlined distribution and relevance to the digital so- lutions team’s particular needs. The0 码力 | 8 页 | 888.26 KB | 1 年前3
pandas: powerful Python data analysis toolkit - 0.13.1of Union El Reno OK 2 DuPage National Bank West Chicago IL 3 Texas Community Bank, National Association The Woodlands TX 4 Bank of Jackson County Graceville FL 5 First National Bank also operating National Association 2013-08-23 8 19849 CB&S Bank, Inc. 2013-08-23 9 35016 Nicolet National Bank 2013-08-09 10 34943 C1 Bank 2013-08-02 11 34789 First Tennessee Bank, National Association 2013-06-07 A. 2013-05-10 2013-05-14 4 Hamilton State Bank 2013-04-26 2013-05-16 5 CertusBank, National Association 2013-04-26 2013-05-17 6 First Federal Bank of Florida 2013-04-19 2013-05-16 7 FirstAtlantic Bank0 码力 | 1219 页 | 4.81 MB | 1 年前3
Oracle VM VirtualBox UserManual_fr_FR.pdfRemapping Table) pour la gestion des textures vu qu’il fait plutôt des opérations non triviales avec l’association de pages qui s’interfacent avec IOMMU. Il se peut que cette limite soit surmontée dans les prochaines nested doit être activée. 5. Votre noyau Linux a été compilé avec le support IOMMU (y compris la réassociation du DMA, voir l’option de compilation CONFIG_DMAR). Le pilote PCI stub (CONFIG_PCI_STUB) est requis des conventions de nommage plus complexes si nécessaire. La commande suivante définit la règle d’association d’un nom et d’une IP spécifiée : VBoxManage setextradata "nom VM" \ "VBoxInternal/Devices/{pcnet0 码力 | 386 页 | 5.61 MB | 1 年前3
《Efficient Deep Learning Book》[EDL] Chapter 1 - Introductiontime could still turn out to be expensive. There is also a very real concern around the carbon footprint of datacenters that are used for training and deploying these large models. Large organizations about. First, we have quality metrics like accuracy, precision, recall, F1, AUC, etc. Then we have footprint metrics like model size, latency, RAM, etc. Empirically, we have seen that larger deep learning train and deploy hence worse footprint. On the other hand, smaller and shallower models might have suboptimal quality. Figure 1-6: Trade-offs between quality metrics and footprint metrics. In case we have0 码力 | 21 页 | 3.17 MB | 1 年前3
《Efficient Deep Learning Book》[EDL] Chapter 4 - Efficient Architectureschanges to add a couple of windows and a balcony. Similarly, to gain orders of magnitude in terms of footprint or quality, we should consider employing suitable efficient architectures. The progress of deep Efficient Architectures aim to improve model deployability by proposing novel ways to reduce model footprint and improve inference efficiency while preserving the problem solving capabilities of their giant 2. Even after compression, the vocabulary itself is large: Large vocabularies have a tangible footprint by themselves, which excludes the actual embeddings. They are persisted with the model to help with0 码力 | 53 页 | 3.92 MB | 1 年前3
《Efficient Deep Learning Book》[EDL] Chapter 2 - Compression Techniquescompression techniques. Compression techniques aim to reduce the model footprint (size, latency, memory etc.). We can reduce the model footprint by reducing the number of trainable parameters. However, this approach categories: footprint metrics such as model size, prediction latency, RAM consumption and the quality metrics, such as accuracy, F1, precision and recall as shown in table 2-1. Footprint Metrics Quality ● Accuracy ● Precision ● Recall ● F1 ● AUC Table 2-1: A few examples of footprint and quality metrics. The footprint and the quality metrics are typically at odds with each other. As stated earlier0 码力 | 33 页 | 1.96 MB | 1 年前3
pandas: powerful Python data analysis toolkit - 0.14.0County Bank Fairfax SC 15062 3 Vantage Point Bank Horsham PA 58531 4 Millennium Bank, National Association Sterling VA 35096 5 Syringa Bank Boise ID 34296 6 The Bank of Union El Reno OK 17967 .. ... A. 2013-05-10 2013-05-14 4 Hamilton State Bank 2013-04-26 2013-05-16 5 CertusBank, National Association 2013-04-26 2013-05-17 6 First Federal Bank of Florida 2013-04-19 2013-05-16 .. ... ... ... 499 A. 2013-05-10 2013-05-14 4 Hamilton State Bank 2013-04-26 2013-05-16 5 CertusBank, National Association 2013-04-26 2013-05-17 6 First Federal Bank of Florida 2013-04-19 2013-05-16 .. ... ... ... 4990 码力 | 1349 页 | 7.67 MB | 1 年前3
《Efficient Deep Learning Book》[EDL] Chapter 5 - Advanced Compression Techniquesprecision. We will leave the biases untouched since they do not contribute significantly to the layer’s footprint. num_bits = 8 weights_dequantized, weights_reconstruction_error_quant = simulate_quantization( their specific model training setup. Sparsity by itself helps with compressing the model size (footprint metric) since many connections can be removed without a noticeable impact on quality metrics. However compression technique, yet implementing it is quite straightforward. We can achieve quality and footprint gains on top of quantization because clustering is a much more generic approach of allocating precision0 码力 | 34 页 | 3.18 MB | 1 年前3
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