You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
Triton Model Analyzer is a CLI tool which can help you find a more optimal configuration, on a given piece of hardware, for single, multiple, ensemble, or BLS models running on a [Triton Inference Server](https://github.com/triton-inference-server/server/). Model Analyzer will also generate reports to help you better understand the trade-offs of the different configurations along with their compute and memory requirements.
30
-
<br><br>
31
-
32
-
# Features
33
-
34
-
### Search Modes
35
-
36
-
-[Optuna Search](docs/config_search.md#optuna-search-mode)**_-ALPHA RELEASE-_** allows you to search for every parameter that can be specified in the model configuration, using a hyperparameter optimization framework. Please see the [Optuna](https://optuna.org/) website if you are interested in specific details on how the algorithm functions.
37
-
38
-
-[Quick Search](docs/config_search.md#quick-search-mode) will **sparsely** search the [Max Batch Size](https://github.com/triton-inference-server/server/blob/main/docs/user_guide/model_configuration.md#maximum-batch-size),
39
-
[Dynamic Batching](https://github.com/triton-inference-server/server/blob/main/docs/user_guide/model_configuration.md#dynamic-batcher), and
40
-
[Instance Group](https://github.com/triton-inference-server/server/blob/main/docs/user_guide/model_configuration.md#instance-groups) spaces by utilizing a heuristic hill-climbing algorithm to help you quickly find a more optimal configuration
41
-
42
-
-[Automatic Brute Search](docs/config_search.md#automatic-brute-search) will **exhaustively** search the
-[Manual Brute Search](docs/config_search.md#manual-brute-search) allows you to create manual sweeps for every parameter that can be specified in the model configuration
49
-
50
-
### Model Types
51
-
52
-
-[Ensemble Model Search](docs/config_search.md#ensemble-model-search): Model Analyzer can help you find the optimal
53
-
settings when profiling an ensemble model, utilizing the [Quick Search](docs/config_search.md#quick-search-mode) algorithm
54
-
55
-
-[BLS Model Search](docs/config_search.md#bls-model-search): Model Analyzer can help you find the optimal
56
-
settings when profiling a BLS model, utilizing the [Quick Search](docs/config_search.md#quick-search-mode) algorithm
57
-
58
-
-[Multi-Model Search](docs/config_search.md#multi-model-search-mode): Model Analyzer can help you
59
-
find the optimal settings when profiling multiple concurrent models, utilizing the [Quick Search](docs/config_search.md#quick-search-mode) algorithm
60
-
61
-
-[LLM Search](docs/config_search.md#llm-search-mode): Model Analyzer can help you
62
-
find the optimal settings when profiling large language models, utilizing the [Quick Search](docs/config_search.md#quick-search-mode) algorithm
63
-
64
-
### Other Features
65
-
66
-
-[Detailed and summary reports](docs/report.md): Model Analyzer is able to generate
67
-
summarized and detailed reports that can help you better understand the trade-offs
68
-
between different model configurations that can be used for your model.
69
-
70
-
-[QoS Constraints](docs/config.md#constraint): Constraints can help you
71
-
filter out the Model Analyzer results based on your QoS requirements. For
72
-
example, you can specify a latency budget to filter out model configurations
73
-
that do not satisfy the specified latency threshold.
74
-
<br><br>
75
-
76
-
# Examples and Tutorials
77
-
78
-
### **Single Model**
79
-
80
-
See the [Single Model Quick Start](docs/quick_start.md) for a guide on how to use Model Analyzer to profile, analyze and report on a simple PyTorch model.
81
-
82
-
### **Multi Model**
83
-
84
-
See the [Multi-model Quick Start](docs/mm_quick_start.md) for a guide on how to use Model Analyzer to profile, analyze and report on two models running concurrently on the same GPU.
85
-
86
-
### **Ensemble Model**
87
-
88
-
See the [Ensemble Model Quick Start](docs/ensemble_quick_start.md) for a guide on how to use Model Analyzer to profile, analyze and report on a simple Ensemble model.
89
-
90
-
### **BLS Model**
91
-
92
-
See the [BLS Model Quick Start](docs/bls_quick_start.md) for a guide on how to use Model Analyzer to profile, analyze and report on a simple BLS model.
93
-
<br><br>
94
-
95
-
# Documentation
96
-
97
-
-[Installation](docs/install.md)
98
-
-[Model Analyzer CLI](docs/cli.md)
99
-
-[Launch Modes](docs/launch_modes.md)
100
-
-[Configuring Model Analyzer](docs/config.md)
101
-
-[Model Analyzer Metrics](docs/metrics.md)
102
-
-[Model Config Search](docs/config_search.md)
103
-
-[Checkpointing](docs/checkpoints.md)
104
-
-[Model Analyzer Reports](docs/report.md)
105
-
-[Deployment with Kubernetes](docs/kubernetes_deploy.md)
106
-
<br><br>
107
-
108
-
# Reporting problems, asking questions
109
-
110
-
We appreciate any feedback, questions or bug reporting regarding this
111
-
project. When help with code is needed, follow the process outlined in
112
-
the Stack Overflow (https://stackoverflow.com/help/mcve)
113
-
document. Ensure posted examples are:
114
-
115
-
- minimal – use as little code as possible that still produces the
116
-
same problem
117
-
118
-
- complete – provide all parts needed to reproduce the problem. Check
119
-
if you can strip external dependency and still show the problem. The
120
-
less time we spend on reproducing problems the more time we have to
121
-
fix it
122
-
123
-
- verifiable – test the code you're about to provide to make sure it
124
-
reproduces the problem. Remove all other problems that are not
125
-
related to your request/question.
25
+
> You are currently on the `r24.06` branch which tracks under-development progress towards the next release. <br>
0 commit comments