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https://issues.apache.org/jira/browse/MADLIB-1200?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel
]
Frank McQuillan updated MADLIB-1200:
------------------------------------
Description:
Related to
https://issues.apache.org/jira/browse/MADLIB-1037
https://issues.apache.org/jira/browse/MADLIB-1048
Story
{{As a}}
data scientist
{{I want to}}
pre-process input files for use with mini-batching
{{so that}}
the optimization part of MLP, SVM, etc. runs faster when I do multiple runs,
perhaps because I am tuning parameters (i.e., pre-processing is an occasional
operation that I don't want to re-do every time that I train a model)
Interface
{code}
minibatch_preprocessor(
source_table, -- Name of the table containing input data
output_table, -- Name of the output table for mini-batching
dependent_varname, -- Name of the dependent variable column
independent_varname, -- Expression list to evaluate for the independent
variables
grouping_cols -- Preprocess separately by group
)
{code}
where
{code}
source_table
TEXT. Name of the table containing input data. Can also be a view.
output_table
TEXT. Name of the output table from the preprocessor which will be used as
input to algorithms that support mini-batching.
The output table contains the following columns:
id INTEGER. Unique id for packed table.
dependent_varname FLOAT8[]. Packed array of dependent
variables.
independent_varname FLOAT8[]. Packed array of independent
variables.
grouping_cols TEXT. Name of grouping columns.
A summary table named <output_table>_summary is created together with the
output table. It has the following columns:
source_table Source table name.
output_table Output table name from preprocessor.
dependent_varname Dependent variable.
independent_varname Independent variables.
buffer_size Buffer size used in preprocessing step.
model type “Classification” or “Regression”
class_values Class values of the dependent variable (NULL
for non categorical vars, i,e., if class_values=”Regression”).
num_rows_processed The total number of rows that were used in the
computation.
num_missing_rows_skipped The total number of rows that were skipped
because of NULL values in them.
grouping_cols Names of the grouping columns.
A standardization table named <output_table>_standardization is created
together with the output table. It has the following columns:
grouping_cols Group
mean Mean of independent vars by group
std Standard deviation of independent vars
by group
dependent_varname
TEXT. Column name or expression to evaluate for the dependent variable.
independent_varname
TEXT. Column name or expression list to evaluate for the independent variable.
Will be cast to double when packing.
grouping_cols (optional)
TEXT, default: NULL. An expression list used to group the input dataset into
discrete groups, running one preprocessing step per group. Similar to the SQL
GROUP BY clause. When this value is NULL, no grouping is used and a single
preprocessing step is performed for the whole data set.
{code}
The main purpose of the function is to prepare the training data for
minibatching algorithms. This will be achieved in 2 stages
# Based on the batch size, group all the dependent and independent variables
in a single tuple representative of the batch.
# If the independent variables are boolean or text, perform one hot encoding.
N/A for integer and floats. Note that if the integer vars are actually
categorical, they must be case to ::TEXT so that they get encoded.
Notes
1) Random shuffle needed for mini-batch.
2) Naive approach may be OK to start, not worth big investment to make run 10%
or 20% faster.
Acceptance
Summary
1) Convert from standard to special format for mini-batching
2) Standardize by default for now but the user cannot opt out of it. We may
decide to add a flag later.
3) Some scale testing OK (does not need to be comprehensive)
4) Document as a helper function user docs
5) Always ignore nulls in dependent variable
6) IC
was:
Related to
https://issues.apache.org/jira/browse/MADLIB-1037
https://issues.apache.org/jira/browse/MADLIB-1048
Story
{{As a}}
data scientist
{{I want to}}
pre-process input files for use with mini-batching
{{so that}}
the optimization part of MLP, SVM, etc. runs faster when I do multiple runs,
perhaps because I am tuning parameters (i.e., pre-processing is an occasional
operation that I don't want to re-do every time that I train a model)
Interface
{code:java}
minibatch_preprocessor (
source_table, -- Name of the table containing the input
data.
output_table, -- Name of the table suitable for
mini-batching.
dependent_varname, -- Name of the dependent variable column.
independent_varname, -- Expression list to evaluate for the independent
variables.
buffer_size, -- buffer_size? Default should be to pack
as much as possible in the 1GB limit imposed by postgres/gpdb.
)
{code}
The main purpose of the function is to prepare the training data for
minibatching algorithms. This will be achieved in 2 stages
# Based on the batch size, group all the dependent and independent variables
in a single tuple representative of the batch.
# If the independent variables are boolean or text, perform one hot encoding.
N/A for integer and floats. Note that if the integer vars are actually
categorical, they must be case to ::TEXT so that they get encoded.
Notes
1) Random shuffle needed for mini-batch.
2) Naive approach may be OK to start, not worth big investment to make run 10%
or 20% faster.
Acceptance
Summary
1) Convert from standard to special format for mini-batching
2) Standardize by default for now but the user cannot opt out of it. We may
decide to add a flag later.
3) Some scale testing OK (does not need to be comprehensive)
4) Document as a helper function user docs
5) Always ignore nulls in dependent variable
6) IC
> Pre-processing helper function for mini-batching
> -------------------------------------------------
>
> Key: MADLIB-1200
> URL: https://issues.apache.org/jira/browse/MADLIB-1200
> Project: Apache MADlib
> Issue Type: New Feature
> Components: Module: Utilities
> Reporter: Frank McQuillan
> Assignee: Jingyi Mei
> Priority: Major
> Fix For: v1.14
>
>
> Related to
> https://issues.apache.org/jira/browse/MADLIB-1037
> https://issues.apache.org/jira/browse/MADLIB-1048
> Story
> {{As a}}
> data scientist
> {{I want to}}
> pre-process input files for use with mini-batching
> {{so that}}
> the optimization part of MLP, SVM, etc. runs faster when I do multiple runs,
> perhaps because I am tuning parameters (i.e., pre-processing is an occasional
> operation that I don't want to re-do every time that I train a model)
> Interface
> {code}
> minibatch_preprocessor(
> source_table, -- Name of the table containing input data
> output_table, -- Name of the output table for mini-batching
> dependent_varname, -- Name of the dependent variable column
> independent_varname, -- Expression list to evaluate for the independent
> variables
> grouping_cols -- Preprocess separately by group
> )
> {code}
> where
> {code}
> source_table
> TEXT. Name of the table containing input data. Can also be a view.
> output_table
> TEXT. Name of the output table from the preprocessor which will be used as
> input to algorithms that support mini-batching.
> The output table contains the following columns:
> id INTEGER. Unique id for packed table.
> dependent_varname FLOAT8[]. Packed array of dependent
> variables.
> independent_varname FLOAT8[]. Packed array of independent
> variables.
> grouping_cols TEXT. Name of grouping columns.
> A summary table named <output_table>_summary is created together with the
> output table. It has the following columns:
> source_table Source table name.
> output_table Output table name from preprocessor.
> dependent_varname Dependent variable.
> independent_varname Independent variables.
> buffer_size Buffer size used in preprocessing step.
> model type “Classification” or “Regression”
> class_values Class values of the dependent variable (NULL
> for non categorical vars, i,e., if class_values=”Regression”).
> num_rows_processed The total number of rows that were used in the
> computation.
> num_missing_rows_skipped The total number of rows that were skipped
> because of NULL values in them.
> grouping_cols Names of the grouping columns.
> A standardization table named <output_table>_standardization is created
> together with the output table. It has the following columns:
> grouping_cols Group
> mean Mean of independent vars by group
> std Standard deviation of independent vars
> by group
> dependent_varname
> TEXT. Column name or expression to evaluate for the dependent variable.
> independent_varname
> TEXT. Column name or expression list to evaluate for the independent
> variable. Will be cast to double when packing.
> grouping_cols (optional)
> TEXT, default: NULL. An expression list used to group the input dataset into
> discrete groups, running one preprocessing step per group. Similar to the SQL
> GROUP BY clause. When this value is NULL, no grouping is used and a single
> preprocessing step is performed for the whole data set.
> {code}
>
> The main purpose of the function is to prepare the training data for
> minibatching algorithms. This will be achieved in 2 stages
> # Based on the batch size, group all the dependent and independent variables
> in a single tuple representative of the batch.
> # If the independent variables are boolean or text, perform one hot
> encoding. N/A for integer and floats. Note that if the integer vars are
> actually categorical, they must be case to ::TEXT so that they get encoded.
> Notes
> 1) Random shuffle needed for mini-batch.
> 2) Naive approach may be OK to start, not worth big investment to make run
> 10% or 20% faster.
> Acceptance
> Summary
> 1) Convert from standard to special format for mini-batching
> 2) Standardize by default for now but the user cannot opt out of it. We may
> decide to add a flag later.
> 3) Some scale testing OK (does not need to be comprehensive)
> 4) Document as a helper function user docs
> 5) Always ignore nulls in dependent variable
> 6) IC
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