Nandrolone Decanoate Wikipedia
Contents
Nandrolone decanoate
Medical uses
Dosages
Available forms
Non-medical uses
Contraindications
Side effects
Virilization
Overdose
Interactions
Pharmacology
Pharmacodynamics
Pharmacokinetics
Chemistry
History
Society and culture
Generic names
Brand names
Availability
Legal status
Research
References
Further reading
External links
Nandrolone decanoate
Nandrolone decanoate is a synthetic anabolic–androgenic steroid (AAS) derived from testosterone. It is commonly used in medicine for treating anemia, osteoporosis, and as an adjunct therapy in cancer treatment due to its ability to stimulate erythropoiesis and increase lean body mass.
Pharmacokinetics
When administered intramuscularly, nandrolone decanoate has a prolonged release profile with a half-life of approximately 6–12 days. It is metabolized primarily by hepatic enzymes into inactive metabolites that are excreted via bile and urine. The drug’s lipophilic nature facilitates its incorporation into cell membranes, enabling it to cross the blood–brain barrier.
Mechanism of Action
Nandrolone decanoate’s major effect in the ‐ ... (continue).
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Problem: high memory cost in DNN inference when using GPUs due to large weight tensors.
Proposed solution: Partition weights into smaller "blocks" (weight blocks), assign them to CPU memory; only load required block(s) to GPU memory during inference. This reduces GPU memory usage.
Implementation: Use dataflow graph with partitioned compute kernels for each block; runtime scheduler loads/unloads blocks as needed; use double buffering etc.
Evaluation: on 8 DNNs (ResNet50, InceptionV3, etc.) across 4 GPUs (GTX1080/1080Ti/Titan Xp). Gains up to ~70% reduction in GPU memory usage, with negligible inference time overhead (
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Masculino
língua preferida
english
Altura
183cm
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