In NNI, tuner will sample parameters/architecture according to the search space, which is defined as a json file.
To define a search space, users should define the name of variable, the type of sampling strategy and its parameters.
- An example of search space definition as follow:
{
"dropout_rate": {"_type": "uniform", "_value": [0.1, 0.5]},
"conv_size": {"_type": "choice", "_value": [2, 3, 5, 7]},
"hidden_size": {"_type": "choice", "_value": [124, 512, 1024]},
"batch_size": {"_type": "choice", "_value": [50, 250, 500]},
"learning_rate": {"_type": "uniform", "_value": [0.0001, 0.1]}
}
Take the first line as an example. dropout_rate
is defined as a variable whose priori distribution is a uniform distribution of a range from 0.1
and 0.5
.
Note that the ability of a search space is highly connected with your tuner. We listed the supported types for each builtin tuner below. For a customized tuner, you don't have to follow our convention and you will have the flexibility to define any type you want.
All types of sampling strategies and their parameter are listed here:
-
{"_type": "choice", "_value": options}
-
Which means the variable's value is one of the options. Here
options
should be a list of numbers or a list of strings. Using arbitrary objects as members of this list (like sublists, a mixture of numbers and strings, or null values) should work in most cases, but may trigger undefined behaviors. -
options
could also be a nested sub-search-space, this sub-search-space takes effect only when the corresponding element is chosen. The variables in this sub-search-space could be seen as conditional variables. Here is an simple example of nested search space definition. If an element in the options list is a dict, it is a sub-search-space, and for our built-in tuners you have to add a key_name
in this dict, which helps you to identify which element is chosen. Accordingly, here is a sample which users can get from nni with nested search space definition. Tuners which support nested search space are as follows:- Random Search
- TPE
- Anneal
- Evolution
-
-
{"_type": "randint", "_value": [lower, upper]}
- Choosing a random integer from
lower
(inclusive) toupper
(exclusive). - Note: Different tuners may interpret
randint
differently. Some (e.g., TPE, GridSearch) treat integers from lower to upper as unordered ones, while others respect the ordering (e.g., SMAC). If you want all the tuners to respect the ordering, please usequniform
withq=1
.
- Choosing a random integer from
-
{"_type": "uniform", "_value": [low, high]}
- Which means the variable value is a value uniformly between low and high.
- When optimizing, this variable is constrained to a two-sided interval.
-
{"_type": "quniform", "_value": [low, high, q]}
- Which means the variable value is a value like
clip(round(uniform(low, high) / q) * q, low, high)
, where the clip operation is used to constraint the generated value in the bound. For example, for_value
specified as [0, 10, 2.5], possible values are [0, 2.5, 5.0, 7.5, 10.0]; For_value
specified as [2, 10, 5], possible values are [2, 5, 10]. - Suitable for a discrete value with respect to which the objective is still somewhat "smooth", but which should be bounded both above and below. If you want to uniformly choose integer from a range [low, high], you can write
_value
like this:[low, high, 1]
.
- Which means the variable value is a value like
-
{"_type": "loguniform", "_value": [low, high]}
- Which means the variable value is a value drawn from a range [low, high] according to a loguniform distribution like exp(uniform(log(low), log(high))), so that the logarithm of the return value is uniformly distributed.
- When optimizing, this variable is constrained to be positive.
-
{"_type": "qloguniform", "_value": [low, high, q]}
- Which means the variable value is a value like
clip(round(loguniform(low, high) / q) * q, low, high)
, where the clip operation is used to constraint the generated value in the bound. - Suitable for a discrete variable with respect to which the objective is "smooth" and gets smoother with the size of the value, but which should be bounded both above and below.
- Which means the variable value is a value like
-
{"_type": "normal", "_value": [mu, sigma]}
- Which means the variable value is a real value that's normally-distributed with mean mu and standard deviation sigma. When optimizing, this is an unconstrained variable.
-
{"_type": "qnormal", "_value": [mu, sigma, q]}
- Which means the variable value is a value like
round(normal(mu, sigma) / q) * q
- Suitable for a discrete variable that probably takes a value around mu, but is fundamentally unbounded.
- Which means the variable value is a value like
-
{"_type": "lognormal", "_value": [mu, sigma]}
- Which means the variable value is a value drawn according to
exp(normal(mu, sigma))
so that the logarithm of the return value is normally distributed. When optimizing, this variable is constrained to be positive.
- Which means the variable value is a value drawn according to
-
{"_type": "qlognormal", "_value": [mu, sigma, q]}
- Which means the variable value is a value like
round(exp(normal(mu, sigma)) / q) * q
- Suitable for a discrete variable with respect to which the objective is smooth and gets smoother with the size of the variable, which is bounded from one side.
- Which means the variable value is a value like
choice | randint | uniform | quniform | loguniform | qloguniform | normal | qnormal | lognormal | qlognormal | |
---|---|---|---|---|---|---|---|---|---|---|
TPE Tuner | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ |
Random Search Tuner | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ |
Anneal Tuner | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ |
Evolution Tuner | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ |
SMAC Tuner | ✓ | ✓ | ✓ | ✓ | ✓ | |||||
Batch Tuner | ✓ | |||||||||
Grid Search Tuner | ✓ | ✓ | ✓ | |||||||
Hyperband Advisor | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ |
Metis Tuner | ✓ | ✓ | ✓ | ✓ | ||||||
GP Tuner | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ |
Known Limitations:
-
GP Tuner and Metis Tuner support only numerical values in search space (
choice
type values can be no-numeraical with other tuners, e.g. string values). Both GP Tuner and Metis Tuner use Gaussian Process Regressor(GPR). GPR make predictions based on a kernel function and the 'distance' between different points, it's hard to get the true distance between no-numerical values. -
Note that for nested search space:
-
Only Random Search/TPE/Anneal/Evolution tuner supports nested search space
-
We do not support nested search space "Hyper Parameter" in visualization now, the enhancement is being considered in #1110, any suggestions or discussions or contributions are warmly welcomed
-