torch
From Dontopedia, the open, paraconsistent wiki. (Last updated 2026-06-18.)
torch has 357 facts recorded in Dontopedia across 176 references, with 27 live disagreements.
Mostly:rdf:type(148), provides(38), contains(11)
Maturity scale
raw canonical shape-checked rule-derived certifiedFull NamefullName
- PyTorch[23]all time · 9dc04f5c 41c0 4f03 9508 0f47a466d19e
Rdf:typein disputerdf:type
- Library[3]all time · 255cb48f 250c 4d37 87ab Fa0c34c3ca48
- Python Library[4]all time · F750f866 C88e 4afe 8e28 140d89b9cb27
- Library[5]all time · 571f6810 0d94 43f6 8085 Cf3f1b3c6b35
- Library[6]all time · 8269aaca 563d 476e 84aa E37918713112
- Python Package[7]all time · A24988c4 D2bb 4b1e Aeba Bcfeef86c995
- Python Library[9]all time · Ab8baaaa 135d 4a15 8914 A9becb6bfdcd
- Python Library[10]all time · 5f379df5 7d9d 40a0 A5cd 0bea1748bb6f
- Python Package[11]all time · 88c02741 Efbc 4d6e 8f20 338acfec5cf4
- Library[12]all time · 16946ca8 B20f 438f Ba71 0fb513135469
- Library[13]all time · 0942dca0 A3dc 4189 B023 F8a6d3a42637
Providesin disputeprovides
- Torch Nn[11]all time · 88c02741 Efbc 4d6e 8f20 338acfec5cf4
- Torch Quantization[11]all time · 88c02741 Efbc 4d6e 8f20 338acfec5cf4
- Torch Randn[11]all time · 88c02741 Efbc 4d6e 8f20 338acfec5cf4
- Torch Relu[11]all time · 88c02741 Efbc 4d6e 8f20 338acfec5cf4
- Torch Library[11]all time · 88c02741 Efbc 4d6e 8f20 338acfec5cf4
- Quantization[13]all time · 0942dca0 A3dc 4189 B023 F8a6d3a42637
- Deep Learning Framework[28]all time · Aa30ec0a 322c 4ccb 87f1 9529eeaae311
- no-grad-context[40]all time · 018e6829 A4ce 4a26 9be8 6d8ad3231779
- Tensor[44]all time · 532ca3fa 8f4d 4b62 B948 Cd1e9ed27c9b
- Frombuffer[44]all time · 532ca3fa 8f4d 4b62 B948 Cd1e9ed27c9b
Containsin disputecontains
- Torch Nn[26]all time · 75c77f1c 2fa9 481f 8cb8 21f950d7b039
- Torch Optim[26]all time · 75c77f1c 2fa9 481f 8cb8 21f950d7b039
- Torch Utils Data[26]all time · 75c77f1c 2fa9 481f 8cb8 21f950d7b039
- Torch.relu[98]all time · Ce394f12 8ac0 426e A183 A35c685c72ce
- Torch.save[98]all time · Ce394f12 8ac0 426e A183 A35c685c72ce
- Torch.load[98]all time · Ce394f12 8ac0 426e A183 A35c685c72ce
- Torch Nn[107]all time · F939384a A0a5 421f 8a7a 83cf0019b4d9
- Torch Cuda Empty Cache[131]all time · 0a6354af A6f7 4051 8cb3 E50345232784
- Torch Autograd Profiler[131]all time · 0a6354af A6f7 4051 8cb3 E50345232784
- Torch Randn[131]all time · 0a6354af A6f7 4051 8cb3 E50345232784
Other facts (107)
The long tail: predicates that appear too rarely to warrant their own section. Filter or scroll to find a specific one. Each row links to its source.
| Predicate | Value | Ref |
|---|---|---|
| Provides Function | Cosine Similarity | [72] |
| Provides Function | Mean | [72] |
| Provides Function | Clip Grad Norm | [72] |
| Provides Function | Save | [72] |
| Provides Function | tensor | [147] |
| Provides Function | argmax | [147] |
| Is Imported | true | [8] |
| Is Imported | true | [16] |
| Is Imported | true | [60] |
| Is Imported | true | [134] |
| Used by | Compute Dense Scores | [19] |
| Used by | Tokenizer Service | [50] |
| Used by | Tensor | [119] |
| Used by | Context Aware Correction | [145] |
| Version | unknown | [57] |
| Version | unknown | [84] |
| Version | Pytorch Version 2 1 7 | [107] |
| Version | unknown | [159] |
| Imported From | Standard Library | [4] |
| Imported From | torch | [33] |
| Imported From | torch | [88] |
| Has Submodule | Quantization | [13] |
| Has Submodule | Nn | [21] |
| Has Submodule | Optim | [21] |
| Is Library | Python Library | [27] |
| Is Library | true | [81] |
| Is Library | true | [162] |
| Has Method | mean | [61] |
| Has Method | abs | [61] |
| Has Method | max | [61] |
| Is Imported in | Code Snippet 1 | [64] |
| Is Imported in | Source Document | [152] |
| Is Imported in | Code Segment | [168] |
| Has Module | Torch.utils.data | [68] |
| Has Module | Cuda | [135] |
| Has Module | Cuda | [138] |
| Has Function | Randn | [111] |
| Has Function | Tensor Function | [145] |
| Has Function | Argmax Function | [145] |
| Imported in | Quantization Example | [10] |
| Imported in | Code Example | [96] |
| Library | Pytorch | [10] |
| Library | Deep Learning Framework | [118] |
| Is Imported As | torch | [20] |
| Is Imported As | Torch | [153] |
| Imported But Unused | true | [33] |
| Imported But Unused | Python Script | [146] |
| Calls Function | Torch.device | [34] |
| Calls Function | Torch.no Grad | [34] |
| Import Statement | import torch | [35] |
| Import Statement | import torch | [149] |
| Used in | Step 1 | [39] |
| Used in | Current Implementation | [154] |
| Used for | Relu | [79] |
| Used for | deep learning model execution | [165] |
| Is Imported Module | true | [81] |
| Is Imported Module | true | [129] |
| Namespace for | Cosine Similarity | [91] |
| Namespace for | No Grad | [91] |
| Imported As | Torch | [96] |
| Imported As | Py Torch | [167] |
| Provides Context Manager | No Grad | [135] |
| Provides Context Manager | no_grad | [147] |
| Is Imported by | Query Reformulator Class | [152] |
| Is Imported by | Reformulation Model | [157] |
| Has Version | 1.13.1 | [162] |
| Has Version | 1.13.1 | [163] |
| Provides Tril Function | Causal Mask | [1] |
| Anchored at Percy Island on | 1855-01-19 | [2] |
| Arrived Percy on | 1855-01-29 | [2] |
| Presupposes Guilt of Prisoners | All Blacks on Island | [2] |
| Threw Gun Into Sea | Natives | [2] |
| Confirms Murders | Perpetrators Confession | [2] |
| Is Dependency | Hugging Face Transformers | [7] |
| Imported Directly | true | [14] |
| Alias | torch | [16] |
| Import | no_grad | [29] |
| Imported | no_grad-context-manager | [29] |
| Is Parent of | Torch Nn | [46] |
| Provides Device Function | torch.device | [47] |
| Provides Cuda Module | torch.cuda | [47] |
| Is Imported | Python Library | [62] |
| Is a | Python Library | [62] |
| Used for | Deep Learning Computations | [63] |
| Supports | Dimension Handling | [63] |
| Same As | Py Torch | [75] |
| Import Status | not_shown | [85] |
| Full Name | torch | [89] |
| Contains Function | Cosine Similarity | [91] |
| Contains Context Manager | No Grad | [91] |
| Purpose | Tensor Computation | [106] |
| Is Used by | Evaluation Pipeline | [112] |
| Has Attribute | Torch.cuda | [129] |
| Type | library | [133] |
| Used in | Cuda Empty Cache | [136] |
| Cuda | Cuda | [140] |
| Empty Cache | void | [140] |
| No Grad | Context Manager | [140] |
| Not Imported in Visible Code | true | [150] |
| Is Py Torch Library | true | [152] |
Timeline
Timeline axis is valid_time — when each source says the fact was true in the world, not when Dontopedia learned about it. Retracted rows are kept for provenance; coloured stripes indicate the context kind.
References (176)
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See also
- Causal Mask
- All Blacks on Island
- Natives
- Perpetrators Confession
- Library
- Python Library
- Standard Library
- Python Package
- Hugging Face Transformers
- Python Library
- Quantization Example
- Pytorch
- Torch Nn
- Torch Quantization
- Torch Randn
- Torch Relu
- Torch Library
- Quantization
- Python Library
- Compute Dense Scores
- Module
- Nn
- Optim
- Torch Optim
- Torch Utils Data
- Python Library
- Deep Learning Framework
- Torch.device
- Torch.no Grad
- Software Library
- Step 1
- Tensor
- Frombuffer
- Torch Nn
- Machine Learning Library
- Tokenizer Service
- Library
- Deep Learning Library
- Deep Learning Computations
- Dimension Handling
- Code Snippet 1
- Torch.utils.data
- Cosine Similarity
- Mean
- Cosine Similarity
- Clip Grad Norm
- Save
- Py Torch
- Deep Learning Framework
- Relu
- Argsort
- No Grad
- Import
- Python Module
- Nn Module
- Autograd
- Tensor
- Module
- Code Example
- Torch.relu
- Torch.save
- Torch.load
- Tensor Computation
- Python Module
- Pytorch Version 2 1 7
- Python Library
- Randn
- Evaluation Pipeline
- Dataset
- Data Loader
- Python Package
- Relu Function
- Linspace Function
- Torch.cuda
- Torch.nn
- Torch.optim
- Torch Cuda Empty Cache
- Torch Autograd Profiler
- Torch Randint
- Torch.cuda.amp
- Cuda
- Cuda Empty Cache
- Cuda
- Context Manager
- Context Aware Correction
- Tensor Function
- Argmax Function
- Python Script
- No Grad Context Manager
- Source Document
- Query Reformulator Class
- Tensor Operations
- Current Implementation
- Pt
- Reformulation Model
- Transformers
- Deep Learning Library
- Requirements.txt
- Software Package
- Code Segment
- Py Torch Dataset
- Weathering Tool
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