Search Options

Display Count
Sort
Preferred Language
Advanced Search

Results 11 - 20 of 277 for deep (0.03 seconds)

  1. docs/resiliency/resiliency-tests.sh

    	induce_bitrot "2" "/data"$((DATA_DRIVE + 1)) $FILE
    	WANT='{ "before": { "color": "green", "missing": 0, "corrupted": 1 }, "after": { "color": "green", "missing": 0, "corrupted": 0 }, "args": {"file": "'${FILE}'", "dir": "'${DIR}'", "deep": true} }'
    	verify_resiliency_healing "${FUNCNAME[0]}" "${WANT}"
    
    	# Induce bitrot in two parts -- status becomes yellow (2 corrupted)
    	induce_bitrot "2" "/data"$((DATA_DRIVE)) $FILE
    Created: Sun Dec 28 19:28:13 GMT 2025
    - Last Modified: Sat Dec 21 04:24:45 GMT 2024
    - 20.5K bytes
    - Click Count (0)
  2. buildscripts/heal-manual.go

    		Recursive: true,                  // recursively heal all objects at 'prefix'
    		Remove:    true,                  // remove content that has lost quorum and not recoverable
    		ScanMode:  madmin.HealNormalScan, // by default do not do 'deep' scanning
    	}
    
    	start, _, err := madmClnt.Heal(context.Background(), "healing-rewrite-bucket", "", opts, "", false, false)
    	if err != nil {
    		log.Fatalln(err)
    	}
    	fmt.Println("Healstart sequence ===")
    Created: Sun Dec 28 19:28:13 GMT 2025
    - Last Modified: Tue Feb 27 09:47:58 GMT 2024
    - 2.3K bytes
    - Click Count (0)
  3. docs/uk/docs/tutorial/path-params.md

    ///
    
    /// tip | Порада
    
    Якщо вам цікаво, "AlexNet", "ResNet" та "LeNet" — це просто назви ML моделей <abbr title="Технічно, архітектури Deep Learning моделей">Machine Learning</abbr>.
    
    ///
    
    
    ### Оголосіть *параметр шляху*
    
    Потім створіть *параметр шляху* з анотацією типу, використовуючи створений вами клас enum (`ModelName`):
    
    Created: Sun Dec 28 07:19:09 GMT 2025
    - Last Modified: Sun Aug 31 10:29:01 GMT 2025
    - 14.1K bytes
    - Click Count (0)
  4. docs/en/docs/tutorial/path-params.md

    {* ../../docs_src/path_params/tutorial005_py39.py hl[1,6:9] *}
    
    /// tip
    
    If you are wondering, "AlexNet", "ResNet", and "LeNet" are just names of Machine Learning <abbr title="Technically, Deep Learning model architectures">models</abbr>.
    
    ///
    
    ### Declare a *path parameter* { #declare-a-path-parameter }
    
    Then create a *path parameter* with a type annotation using the enum class you created (`ModelName`):
    Created: Sun Dec 28 07:19:09 GMT 2025
    - Last Modified: Wed Dec 17 20:41:43 GMT 2025
    - 9.2K bytes
    - Click Count (0)
  5. docs/es/docs/tutorial/path-params.md

    {* ../../docs_src/path_params/tutorial005_py39.py hl[1,6:9] *}
    
    /// tip | Consejo
    
    Si te estás preguntando, "AlexNet", "ResNet" y "LeNet" son solo nombres de <abbr title="Técnicamente, arquitecturas de modelos de Deep Learning">modelos</abbr> de Machine Learning.
    
    ///
    
    ### Declarar un *path parameter* { #declare-a-path-parameter }
    
    Created: Sun Dec 28 07:19:09 GMT 2025
    - Last Modified: Wed Dec 17 20:41:43 GMT 2025
    - 9.8K bytes
    - Click Count (0)
  6. docs/pt/docs/tutorial/path-params.md

    {* ../../docs_src/path_params/tutorial005_py39.py hl[1,6:9] *}
    
    /// tip | Dica
    Se você está se perguntando, "AlexNet", "ResNet" e "LeNet" são apenas nomes de <abbr title="Tecnicamente, arquiteturas de modelos de Deep Learning">modelos</abbr> de Aprendizado de Máquina.
    ///
    
    ### Declare um parâmetro de path { #declare-a-path-parameter }
    
    Created: Sun Dec 28 07:19:09 GMT 2025
    - Last Modified: Wed Dec 17 20:41:43 GMT 2025
    - 9.8K bytes
    - Click Count (0)
  7. CITATION.cff

    designs the management of shared state is built into the system, TensorFlow enables developers to experiment with novel optimizations and training algorithms. TensorFlow supports a variety of applications, with a focus on training and inference on deep neural networks. Several Google services use TensorFlow in production, we have released it as an open-source project, and it has become widely used for machine learning research. In this paper, we describe the TensorFlow dataflow model and demonstrate...
    Created: Tue Dec 30 12:39:10 GMT 2025
    - Last Modified: Mon Sep 06 15:26:23 GMT 2021
    - 3.5K bytes
    - Click Count (0)
  8. docs/de/docs/tutorial/path-params.md

    {* ../../docs_src/path_params/tutorial005_py39.py hl[1,6:9] *}
    
    
    /// tip | Tipp
    
    Falls Sie sich fragen, was „AlexNet“, „ResNet“ und „LeNet“ ist, das sind Namen von <abbr title="Genau genommen, Deep-Learning-Modellarchitekturen">Modellen</abbr> für maschinelles Lernen.
    
    ///
    
    ### Einen *Pfad-Parameter* deklarieren { #declare-a-path-parameter }
    
    Created: Sun Dec 28 07:19:09 GMT 2025
    - Last Modified: Wed Dec 17 20:41:43 GMT 2025
    - 10.5K bytes
    - Click Count (0)
  9. docs/ru/llm-prompt.md

    * mount (verb): монтировать
    * mount (noun): точка монтирования / mount (keep in English if it's a FastAPI keyword)
    * plugin: плагин
    * plug-in: плагин
    * full stack: full stack (do not translate)
    * full-stack: full-stack (do not translate)
    * loop (as in async loop): цикл событий
    * Machine Learning: Машинное обучение
    * Deep Learning: Глубокое обучение
    * callback hell: callback hell (clarify as `ад обратных вызовов`)
    Created: Sun Dec 28 07:19:09 GMT 2025
    - Last Modified: Mon Oct 06 11:09:58 GMT 2025
    - 6K bytes
    - Click Count (0)
  10. docs/en/docs/tutorial/dependencies/sub-dependencies.md

    # Sub-dependencies { #sub-dependencies }
    
    You can create dependencies that have **sub-dependencies**.
    
    They can be as **deep** as you need them to be.
    
    **FastAPI** will take care of solving them.
    
    ## First dependency "dependable" { #first-dependency-dependable }
    
    You could create a first dependency ("dependable") like:
    
    {* ../../docs_src/dependencies/tutorial005_an_py310.py hl[8:9] *}
    
    Created: Sun Dec 28 07:19:09 GMT 2025
    - Last Modified: Wed Dec 17 20:41:43 GMT 2025
    - 3.7K bytes
    - Click Count (0)
Back to Top