BATCH_PROCESSOR
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Blob match a pattern in the given input directory, iterate (in a LOOP) over all of the files found, then return each file path as a String. The String can be recognized as an optional input to the LOCAL_FILE node, which can then load the file at that path and return the appropriate datatype. Params: current_iteration : Scalar This is the input from the LOOP_INDEX node that determines
whether we need to initialize this routine or not. default_params : DefaultParams This provides the node_id so that we can identify which
object in SmallMemory to pull (for example, unique identification
of this node if there are multiple BATCH_PROCESSOR nodes). directory_path : str The directory in which we should match the pattern to find the files. pattern : str The glob pattern to match.
If not provided, all files in the directory are returned.
The current implementation supports recursion and double wildcard matching. refresh : bool A switching parameter that refreshes the cache of files. If a separate
programme is expected to continuously write new files of interest to the
directory, this flag will enable the update of the new files for processing. Returns: fname : String The file name on the current iteration. n_files : Scalar The total number of files matched by the pattern in the given directory.
Python Code
from flojoy import flojoy, Scalar, SmallMemory, DefaultParams, String
import glob
from typing import Any, TypedDict
memory_key = "batch-processor-info"
class BATCH_OUTPUT(TypedDict):
fname: String
n_files: Scalar
def get_fnames(d, p):
return [file for file in glob.glob(d + "/" + p, recursive=True)]
@flojoy(inject_node_metadata=True)
def BATCH_PROCESSOR(
current_iteration: Scalar,
default_params: DefaultParams,
directory_path: str,
pattern: str = "",
refresh: bool = True,
) -> BATCH_OUTPUT:
"""Blob match a pattern in the given input directory, iterate (in a LOOP) over all of the files found, then return each file path as a String.
The String can be recognized as an optional input to the LOCAL_FILE node, which can then load the file at that path and return the appropriate datatype.
Parameters
----------
current_iteration : Scalar
This is the input from the LOOP_INDEX node that determines
whether we need to initialize this routine or not.
default_params : DefaultParams
This provides the node_id so that we can identify which
object in SmallMemory to pull (for example, unique identification
of this node if there are multiple BATCH_PROCESSOR nodes).
directory_path : str
The directory in which we should match the pattern to find the files.
pattern : str
The glob pattern to match.
If not provided, all files in the directory are returned.
The current implementation supports recursion and double wildcard matching.
refresh : bool
A switching parameter that refreshes the cache of files. If a separate
programme is expected to continuously write new files of interest to the
directory, this flag will enable the update of the new files for processing.
Returns
-------
fname : String
The file name on the current iteration.
n_files : Scalar
The total number of files matched by the pattern in the given directory.
"""
node_id = default_params.node_id
curr_iter = current_iteration.c
# if iteration 1, pattern find, then write to SmallMemory
if curr_iter == 1:
files = get_fnames(directory_path, pattern if pattern else "*")
return BATCH_OUTPUT(fname=String(s=""), n_files=Scalar(c=len(files) + 1))
elif curr_iter == 2: # loop index starts at 1, sigh
files = get_fnames(directory_path, pattern if pattern else "*")
SmallMemory().write_to_memory(
node_id,
memory_key,
{
"node_id": node_id,
"current_iteration": curr_iter,
"files": files,
"original_files": files,
"n_files": int(len(files)),
},
)
# if refresh, glob again, read from smallmemory,
# find difference, append difference to files in SmallMemory
if refresh:
new_files = get_fnames(directory_path, pattern if pattern else "*")
old_data: dict[str, Any] = SmallMemory().read_memory(node_id, memory_key) or {}
if old_data:
difference = set(new_files).difference(
set(old_data["original_files"])
) # designed to only catch the addition of files
if not all([d not in old_data["original_files"] for d in list(difference)]):
# this means there are more new files added to the mix
SmallMemory().write_to_memory(
node_id,
memory_key,
{
"node_id": node_id,
"current_iteration": curr_iter,
"files": old_data["files"] + list(difference),
"original_files": old_data["original_files"],
"n_files": int(len(old_data["original_files"])),
},
)
# Now we read from SmallMemory and pop fname
data: dict[str, Any] = SmallMemory().read_memory(node_id, memory_key) or {}
fname = data["files"].pop(0)
# Now write to SmallMemory for the next iteration
data["current_iteration"] = curr_iter
SmallMemory().write_to_memory(node_id, memory_key, data)
if curr_iter > data["n_files"]:
SmallMemory().delete_object(node_id, memory_key)
# And return the current fname
return BATCH_OUTPUT(
fname=String(s=fname), n_files=Scalar(c=len(data["original_files"]))
)
Example App
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