Skip to main content

Module computation_graph

Module computation_graph 

Source
Expand description

Computation graph analysis tools for debugging deep learning models.

This module provides comprehensive analysis tools for computation graphs, including node analysis, dependency tracking, optimization opportunities, bottleneck detection, and graph visualization capabilities.

Structs§

BottleneckAnalysis
Bottleneck analysis results
ComplexityAnalysis
Complexity analysis of the computation
ComputationGraph
Represents a computation graph for analysis
ComputationGraphAnalyzer
Main computation graph analyzer
DataFlowAnalysis
Data flow analysis results
EstimatedImprovement
Estimated improvement from an optimization
FlopAnalysis
FLOP (Floating Point Operations) analysis
GraphAnalysisConfig
Configuration for computation graph analysis
GraphAnalysisResult
Comprehensive analysis result for a computation graph
GraphMetadata
Metadata about the computation graph
GraphNode
Represents a single node in the computation graph
GraphStatistics
Graph statistics
MemoryAnalysis
Memory usage analysis
MemoryReuseOpportunity
Memory reuse opportunity
OptimizationOpportunity
Optimization opportunity detection
VariableLifetime
Lifetime information for a variable

Enums§

OperationType
Types of operations in the computation graph
OptimizationPriority
Priority levels for optimizations
OptimizationType
Types of optimizations that can be applied