Improve Pandas performance for very large dataframes? - python

I have a few Pandas dataframes with several millions of rows each. The dataframes have columns containing JSON objects each with 100+ fields. I have a set of 24 functions that run sequentially on the dataframes, process the JSON (for example, compute some string distance between two fields in the JSON) and return a JSON with some new fields added. After all 24 functions execute, I get a final JSON which is then usable for my purposes.
I am wondering what the best ways to speed up performance for this dataset. A few things I have considered and read up on:
It is tricky to vectorize because many operations are not as straightforward as "subtract this column's values from another column's values".
I read up on some of the Pandas documentation and a few options indicated are Cython (may be tricky to convert the string edit distance to Cython, especially since I am using an external Python package) and Numba/JIT (but this is mentioned to be best for numerical computations only).
Possibly controlling the number of threads could be an option. The 24 functions can mostly operate without any dependencies on each other.

You are asking for advice and this is not the best site for general advice but nevertheless I will try to point a few things out.
The ideas you have already considered are not going to be helpful - neither Cython, Numba, nor threading are not going to address the main problem - the format of your data that is not conductive for performance of operations on the data.
I suggest that you first "unpack" the JSONs that you store in the column(s?) of your dataframe. Preferably, each field of the JSON (mandatory or optional - deal with empty values at this stage) ends up being a column of the dataframe. If there are nested dictionaries you may want to consider splitting the dataframe (particularly if the 24 functions are working separately at separate nested JSON dicts). Alternatively, you should strive to flatten the JSONs.
Convert to the data format that gives you the best performance. JSON stores all the data in the textual format. Numbers are best used in their binary format. You can do that column-wise on the columns that you suspect should be converted using df['col'].astype(...) (works on the whole dataframe too).
Update the 24 functions to operate not on JSON strings stored in dataframe but on the fields of the dataframe.
Recombine the JSONs for storage (I assume you need them in this format). At this stage the implicit conversion from numbers to strings will occur.
Given the level of details you provided in the question, the suggestions are necessarily brief. Should you have any more detailed questions at any of the above points, it would be best to ask maximally simple question on each of them (preferably containing a self-sufficient MWE).

Related

Lazily reading a parquet file with binary datatype in PyPolars

I hope this is a good question, if I should post this as an issue on the PyPolars GitHub instead, please let me know.
I have a quite large parquet file where some columns contain binary data.
These columns are not interesting for me right now, so it is ok for me that PyPolars does not support the Binary datatype so far (this is how I understand it at least, my question would be irrelevant if that were not the case!), but I would like to make full use of the query optimization by lazily reading the file with .scan_parquet() instead of read_parquet().
Currently .scan_parquet() gives me the following error:
pyo3_runtime.PanicException: Arrow datatype Binary not supported by Polars. You probably need to activate that data-type feature.
and I don't know of a way to 'activate that data-type feature'
So my workaround is to use .read_parquet() and specify in advance which columns I want to use so that it never attempts to read the Binary ones.
The problem is I am doing exploratory data analysis and there are a large amount of columns so for one it is annoying to have to specify a large list of columns (basically ~150 minus the two that produce the issue) and it is also inefficient to read all these columns each time when I only need some small subset each time (it is even more annoying to change a small list of columns each time I, for example, add some filter).
It would be ideal if I could use .scan_parquet and let the query optimizer figure out that it only needs to read the (unproblematic) columns that I actually need.
Is there a better way of doing things that I am not seeing?

Is sorting a DataFrame memory efficient?

Is sorting a DataFrame in pandas memory efficient? I.e., can I sort the dataframe without reading the whole thing into memory?
Internally, pandas relies on numpy.argsort to do all the sorting.
That being said: pandas DataFrames are backed by numpy arrays, which have to be present in memory as a whole. So, to answer your question: No, pandas needs the whole dataset in memory for sorting.
Additional thoughts:
You can of course implement such a disk-based external sorting using multiple steps: Load a chunk of your dataset, sort it, save the sorted version. Repeat. Load a part of each sorted subset, join them into one DataFrame and sort it You'll have to be careful here on how much t oload from each source. For example, if your 1000 element dataset is already sorted, getting the top 10 results from each of the 10 subsets won't get you the correct top 100. It will, however, give you the correct top 10.
Without further information about your data, I suggest you let some (relational) database handle all that stuff. They're made for this kind of thing, after all.

Preferred data format for R dataframe

I am writing a data-harvesting code in Python. I'd like to produce a data frame file that would be as easy to import into R as possible. I have full control over what my Python code will produce, and I'd like to avoid unnecessary data processing on the R side, such as converting columns into factor/numeric vectors and such. Also, if possible, I'd like to make importing that data as easy as possible on the R side, preferably by calling a single function with a single argument of file name.
How should I store data into a file to make this possible?
You can write data to CSV using http://docs.python.org/2/library/csv.html Python's csv module, then it's a simple matter of using read.csv in R. (See ?read.csv)
When you read in data to R using read.csv, unless you specify otherwise, character strings will be converted to factors, numeric fields will be converted to numeric. Empty values will be converted to NA.
First thing you should do after you import some data is to look at the ?str of it to ensure the classes of data contained within meet your expectations. Many times have I made a mistake and mixed a character value in a numeric field and ended up with a factor instead of a numeric.
One thing to note is that you may have to set your own NA strings. For example, if you have "-", ".", or some other such character denoting a blank, you'll need to use the na.strings argument (which can accept a vector of strings ie, c("-",".")) to read.csv.
If you have date fields, you will need to convert them properly. R does not necessarily recognize dates or times without you specifying what they are (see ?as.Date)
If you know in advance what each column is going to be you can specify the class using colClasses.
A thorough read through of ?read.csv will provide you with more detailed information. But I've outlined some common issues.
Brandon's suggestion of using CSV is great if your data isn't enormous, and particularly if it doesn't contain a whole honking lot of floating point values, in which case the CSV format is extremely inefficient.
An option that handled huge datasets a little better might be to construct an equivalent DataFrame in pandas and use its facilities to dump to hdf5, and then open it in R that way. See for example this question for an example of that.
This other approach feels like overkill, but you could also directly transfer the dataframe in-memory to R using pandas's experimental R interface and then save it from R directly.

"Large data" workflows using pandas [closed]

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I have tried to puzzle out an answer to this question for many months while learning pandas. I use SAS for my day-to-day work and it is great for it's out-of-core support. However, SAS is horrible as a piece of software for numerous other reasons.
One day I hope to replace my use of SAS with python and pandas, but I currently lack an out-of-core workflow for large datasets. I'm not talking about "big data" that requires a distributed network, but rather files too large to fit in memory but small enough to fit on a hard-drive.
My first thought is to use HDFStore to hold large datasets on disk and pull only the pieces I need into dataframes for analysis. Others have mentioned MongoDB as an easier to use alternative. My question is this:
What are some best-practice workflows for accomplishing the following:
Loading flat files into a permanent, on-disk database structure
Querying that database to retrieve data to feed into a pandas data structure
Updating the database after manipulating pieces in pandas
Real-world examples would be much appreciated, especially from anyone who uses pandas on "large data".
Edit -- an example of how I would like this to work:
Iteratively import a large flat-file and store it in a permanent, on-disk database structure. These files are typically too large to fit in memory.
In order to use Pandas, I would like to read subsets of this data (usually just a few columns at a time) that can fit in memory.
I would create new columns by performing various operations on the selected columns.
I would then have to append these new columns into the database structure.
I am trying to find a best-practice way of performing these steps. Reading links about pandas and pytables it seems that appending a new column could be a problem.
Edit -- Responding to Jeff's questions specifically:
I am building consumer credit risk models. The kinds of data include phone, SSN and address characteristics; property values; derogatory information like criminal records, bankruptcies, etc... The datasets I use every day have nearly 1,000 to 2,000 fields on average of mixed data types: continuous, nominal and ordinal variables of both numeric and character data. I rarely append rows, but I do perform many operations that create new columns.
Typical operations involve combining several columns using conditional logic into a new, compound column. For example, if var1 > 2 then newvar = 'A' elif var2 = 4 then newvar = 'B'. The result of these operations is a new column for every record in my dataset.
Finally, I would like to append these new columns into the on-disk data structure. I would repeat step 2, exploring the data with crosstabs and descriptive statistics trying to find interesting, intuitive relationships to model.
A typical project file is usually about 1GB. Files are organized into such a manner where a row consists of a record of consumer data. Each row has the same number of columns for every record. This will always be the case.
It's pretty rare that I would subset by rows when creating a new column. However, it's pretty common for me to subset on rows when creating reports or generating descriptive statistics. For example, I might want to create a simple frequency for a specific line of business, say Retail credit cards. To do this, I would select only those records where the line of business = retail in addition to whichever columns I want to report on. When creating new columns, however, I would pull all rows of data and only the columns I need for the operations.
The modeling process requires that I analyze every column, look for interesting relationships with some outcome variable, and create new compound columns that describe those relationships. The columns that I explore are usually done in small sets. For example, I will focus on a set of say 20 columns just dealing with property values and observe how they relate to defaulting on a loan. Once those are explored and new columns are created, I then move on to another group of columns, say college education, and repeat the process. What I'm doing is creating candidate variables that explain the relationship between my data and some outcome. At the very end of this process, I apply some learning techniques that create an equation out of those compound columns.
It is rare that I would ever add rows to the dataset. I will nearly always be creating new columns (variables or features in statistics/machine learning parlance).
I routinely use tens of gigabytes of data in just this fashion
e.g. I have tables on disk that I read via queries, create data and append back.
It's worth reading the docs and late in this thread for several suggestions for how to store your data.
Details which will affect how you store your data, like:
Give as much detail as you can; and I can help you develop a structure.
Size of data, # of rows, columns, types of columns; are you appending
rows, or just columns?
What will typical operations look like. E.g. do a query on columns to select a bunch of rows and specific columns, then do an operation (in-memory), create new columns, save these.
(Giving a toy example could enable us to offer more specific recommendations.)
After that processing, then what do you do? Is step 2 ad hoc, or repeatable?
Input flat files: how many, rough total size in Gb. How are these organized e.g. by records? Does each one contains different fields, or do they have some records per file with all of the fields in each file?
Do you ever select subsets of rows (records) based on criteria (e.g. select the rows with field A > 5)? and then do something, or do you just select fields A, B, C with all of the records (and then do something)?
Do you 'work on' all of your columns (in groups), or are there a good proportion that you may only use for reports (e.g. you want to keep the data around, but don't need to pull in that column explicity until final results time)?
Solution
Ensure you have pandas at least 0.10.1 installed.
Read iterating files chunk-by-chunk and multiple table queries.
Since pytables is optimized to operate on row-wise (which is what you query on), we will create a table for each group of fields. This way it's easy to select a small group of fields (which will work with a big table, but it's more efficient to do it this way... I think I may be able to fix this limitation in the future... this is more intuitive anyhow):
(The following is pseudocode.)
import numpy as np
import pandas as pd
# create a store
store = pd.HDFStore('mystore.h5')
# this is the key to your storage:
# this maps your fields to a specific group, and defines
# what you want to have as data_columns.
# you might want to create a nice class wrapping this
# (as you will want to have this map and its inversion)
group_map = dict(
A = dict(fields = ['field_1','field_2',.....], dc = ['field_1',....,'field_5']),
B = dict(fields = ['field_10',...... ], dc = ['field_10']),
.....
REPORTING_ONLY = dict(fields = ['field_1000','field_1001',...], dc = []),
)
group_map_inverted = dict()
for g, v in group_map.items():
group_map_inverted.update(dict([ (f,g) for f in v['fields'] ]))
Reading in the files and creating the storage (essentially doing what append_to_multiple does):
for f in files:
# read in the file, additional options may be necessary here
# the chunksize is not strictly necessary, you may be able to slurp each
# file into memory in which case just eliminate this part of the loop
# (you can also change chunksize if necessary)
for chunk in pd.read_table(f, chunksize=50000):
# we are going to append to each table by group
# we are not going to create indexes at this time
# but we *ARE* going to create (some) data_columns
# figure out the field groupings
for g, v in group_map.items():
# create the frame for this group
frame = chunk.reindex(columns = v['fields'], copy = False)
# append it
store.append(g, frame, index=False, data_columns = v['dc'])
Now you have all of the tables in the file (actually you could store them in separate files if you wish, you would prob have to add the filename to the group_map, but probably this isn't necessary).
This is how you get columns and create new ones:
frame = store.select(group_that_I_want)
# you can optionally specify:
# columns = a list of the columns IN THAT GROUP (if you wanted to
# select only say 3 out of the 20 columns in this sub-table)
# and a where clause if you want a subset of the rows
# do calculations on this frame
new_frame = cool_function_on_frame(frame)
# to 'add columns', create a new group (you probably want to
# limit the columns in this new_group to be only NEW ones
# (e.g. so you don't overlap from the other tables)
# add this info to the group_map
store.append(new_group, new_frame.reindex(columns = new_columns_created, copy = False), data_columns = new_columns_created)
When you are ready for post_processing:
# This may be a bit tricky; and depends what you are actually doing.
# I may need to modify this function to be a bit more general:
report_data = store.select_as_multiple([groups_1,groups_2,.....], where =['field_1>0', 'field_1000=foo'], selector = group_1)
About data_columns, you don't actually need to define ANY data_columns; they allow you to sub-select rows based on the column. E.g. something like:
store.select(group, where = ['field_1000=foo', 'field_1001>0'])
They may be most interesting to you in the final report generation stage (essentially a data column is segregated from other columns, which might impact efficiency somewhat if you define a lot).
You also might want to:
create a function which takes a list of fields, looks up the groups in the groups_map, then selects these and concatenates the results so you get the resulting frame (this is essentially what select_as_multiple does). This way the structure would be pretty transparent to you.
indexes on certain data columns (makes row-subsetting much faster).
enable compression.
Let me know when you have questions!
I think the answers above are missing a simple approach that I've found very useful.
When I have a file that is too large to load in memory, I break up the file into multiple smaller files (either by row or cols)
Example: In case of 30 days worth of trading data of ~30GB size, I break it into a file per day of ~1GB size. I subsequently process each file separately and aggregate results at the end
One of the biggest advantages is that it allows parallel processing of the files (either multiple threads or processes)
The other advantage is that file manipulation (like adding/removing dates in the example) can be accomplished by regular shell commands, which is not be possible in more advanced/complicated file formats
This approach doesn't cover all scenarios, but is very useful in a lot of them
There is now, two years after the question, an 'out-of-core' pandas equivalent: dask. It is excellent! Though it does not support all of pandas functionality, you can get really far with it. Update: in the past two years it has been consistently maintained and there is substantial user community working with Dask.
And now, four years after the question, there is another high-performance 'out-of-core' pandas equivalent in Vaex. It "uses memory mapping, zero memory copy policy and lazy computations for best performance (no memory wasted)." It can handle data sets of billions of rows and does not store them into memory (making it even possible to do analysis on suboptimal hardware).
If your datasets are between 1 and 20GB, you should get a workstation with 48GB of RAM. Then Pandas can hold the entire dataset in RAM. I know its not the answer you're looking for here, but doing scientific computing on a notebook with 4GB of RAM isn't reasonable.
I know this is an old thread but I think the Blaze library is worth checking out. It's built for these types of situations.
From the docs:
Blaze extends the usability of NumPy and Pandas to distributed and out-of-core computing. Blaze provides an interface similar to that of the NumPy ND-Array or Pandas DataFrame but maps these familiar interfaces onto a variety of other computational engines like Postgres or Spark.
Edit: By the way, it's supported by ContinuumIO and Travis Oliphant, author of NumPy.
This is the case for pymongo. I have also prototyped using sql server, sqlite, HDF, ORM (SQLAlchemy) in python. First and foremost pymongo is a document based DB, so each person would be a document (dict of attributes). Many people form a collection and you can have many collections (people, stock market, income).
pd.dateframe -> pymongo Note: I use the chunksize in read_csv to keep it to 5 to 10k records(pymongo drops the socket if larger)
aCollection.insert((a[1].to_dict() for a in df.iterrows()))
querying: gt = greater than...
pd.DataFrame(list(mongoCollection.find({'anAttribute':{'$gt':2887000, '$lt':2889000}})))
.find() returns an iterator so I commonly use ichunked to chop into smaller iterators.
How about a join since I normally get 10 data sources to paste together:
aJoinDF = pandas.DataFrame(list(mongoCollection.find({'anAttribute':{'$in':Att_Keys}})))
then (in my case sometimes I have to agg on aJoinDF first before its "mergeable".)
df = pandas.merge(df, aJoinDF, on=aKey, how='left')
And you can then write the new info to your main collection via the update method below. (logical collection vs physical datasources).
collection.update({primarykey:foo},{key:change})
On smaller lookups, just denormalize. For example, you have code in the document and you just add the field code text and do a dict lookup as you create documents.
Now you have a nice dataset based around a person, you can unleash your logic on each case and make more attributes. Finally you can read into pandas your 3 to memory max key indicators and do pivots/agg/data exploration. This works for me for 3 million records with numbers/big text/categories/codes/floats/...
You can also use the two methods built into MongoDB (MapReduce and aggregate framework). See here for more info about the aggregate framework, as it seems to be easier than MapReduce and looks handy for quick aggregate work. Notice I didn't need to define my fields or relations, and I can add items to a document. At the current state of the rapidly changing numpy, pandas, python toolset, MongoDB helps me just get to work :)
One trick I found helpful for large data use cases is to reduce the volume of the data by reducing float precision to 32-bit. It's not applicable in all cases, but in many applications 64-bit precision is overkill and the 2x memory savings are worth it. To make an obvious point even more obvious:
>>> df = pd.DataFrame(np.random.randn(int(1e8), 5))
>>> df.info()
<class 'pandas.core.frame.DataFrame'>
RangeIndex: 100000000 entries, 0 to 99999999
Data columns (total 5 columns):
...
dtypes: float64(5)
memory usage: 3.7 GB
>>> df.astype(np.float32).info()
<class 'pandas.core.frame.DataFrame'>
RangeIndex: 100000000 entries, 0 to 99999999
Data columns (total 5 columns):
...
dtypes: float32(5)
memory usage: 1.9 GB
I spotted this a little late, but I work with a similar problem (mortgage prepayment models). My solution has been to skip the pandas HDFStore layer and use straight pytables. I save each column as an individual HDF5 array in my final file.
My basic workflow is to first get a CSV file from the database. I gzip it, so it's not as huge. Then I convert that to a row-oriented HDF5 file, by iterating over it in python, converting each row to a real data type, and writing it to a HDF5 file. That takes some tens of minutes, but it doesn't use any memory, since it's only operating row-by-row. Then I "transpose" the row-oriented HDF5 file into a column-oriented HDF5 file.
The table transpose looks like:
def transpose_table(h_in, table_path, h_out, group_name="data", group_path="/"):
# Get a reference to the input data.
tb = h_in.getNode(table_path)
# Create the output group to hold the columns.
grp = h_out.createGroup(group_path, group_name, filters=tables.Filters(complevel=1))
for col_name in tb.colnames:
logger.debug("Processing %s", col_name)
# Get the data.
col_data = tb.col(col_name)
# Create the output array.
arr = h_out.createCArray(grp,
col_name,
tables.Atom.from_dtype(col_data.dtype),
col_data.shape)
# Store the data.
arr[:] = col_data
h_out.flush()
Reading it back in then looks like:
def read_hdf5(hdf5_path, group_path="/data", columns=None):
"""Read a transposed data set from a HDF5 file."""
if isinstance(hdf5_path, tables.file.File):
hf = hdf5_path
else:
hf = tables.openFile(hdf5_path)
grp = hf.getNode(group_path)
if columns is None:
data = [(child.name, child[:]) for child in grp]
else:
data = [(child.name, child[:]) for child in grp if child.name in columns]
# Convert any float32 columns to float64 for processing.
for i in range(len(data)):
name, vec = data[i]
if vec.dtype == np.float32:
data[i] = (name, vec.astype(np.float64))
if not isinstance(hdf5_path, tables.file.File):
hf.close()
return pd.DataFrame.from_items(data)
Now, I generally run this on a machine with a ton of memory, so I may not be careful enough with my memory usage. For example, by default the load operation reads the whole data set.
This generally works for me, but it's a bit clunky, and I can't use the fancy pytables magic.
Edit: The real advantage of this approach, over the array-of-records pytables default, is that I can then load the data into R using h5r, which can't handle tables. Or, at least, I've been unable to get it to load heterogeneous tables.
As noted by others, after some years an 'out-of-core' pandas equivalent has emerged: dask. Though dask is not a drop-in replacement of pandas and all of its functionality it stands out for several reasons:
Dask is a flexible parallel computing library for analytic computing that is optimized for dynamic task scheduling for interactive computational workloads of
“Big Data” collections like parallel arrays, dataframes, and lists that extend common interfaces like NumPy, Pandas, or Python iterators to larger-than-memory or distributed environments and scales from laptops to clusters.
Dask emphasizes the following virtues:
Familiar: Provides parallelized NumPy array and Pandas DataFrame objects
Flexible: Provides a task scheduling interface for more custom workloads and integration with other projects.
Native: Enables distributed computing in Pure Python with access to the PyData stack.
Fast: Operates with low overhead, low latency, and minimal serialization necessary for fast numerical algorithms
Scales up: Runs resiliently on clusters with 1000s of cores Scales down: Trivial to set up and run on a laptop in a single process
Responsive: Designed with interactive computing in mind it provides rapid feedback and diagnostics to aid humans
and to add a simple code sample:
import dask.dataframe as dd
df = dd.read_csv('2015-*-*.csv')
df.groupby(df.user_id).value.mean().compute()
replaces some pandas code like this:
import pandas as pd
df = pd.read_csv('2015-01-01.csv')
df.groupby(df.user_id).value.mean()
and, especially noteworthy, provides through the concurrent.futures interface a general infrastructure for the submission of custom tasks:
from dask.distributed import Client
client = Client('scheduler:port')
futures = []
for fn in filenames:
future = client.submit(load, fn)
futures.append(future)
summary = client.submit(summarize, futures)
summary.result()
It is worth mentioning here Ray as well,
it's a distributed computation framework, that has it's own implementation for pandas in a distributed way.
Just replace the pandas import, and the code should work as is:
# import pandas as pd
import ray.dataframe as pd
# use pd as usual
can read more details here:
https://rise.cs.berkeley.edu/blog/pandas-on-ray/
Update:
the part that handles the pandas distribution, has been extracted to the modin project.
the proper way to use it is now is:
# import pandas as pd
import modin.pandas as pd
One more variation
Many of the operations done in pandas can also be done as a db query (sql, mongo)
Using a RDBMS or mongodb allows you to perform some of the aggregations in the DB Query (which is optimized for large data, and uses cache and indexes efficiently)
Later, you can perform post processing using pandas.
The advantage of this method is that you gain the DB optimizations for working with large data, while still defining the logic in a high level declarative syntax - and not having to deal with the details of deciding what to do in memory and what to do out of core.
And although the query language and pandas are different, it's usually not complicated to translate part of the logic from one to another.
Consider Ruffus if you go the simple path of creating a data pipeline which is broken down into multiple smaller files.
I'd like to point out the Vaex package.
Vaex is a python library for lazy Out-of-Core DataFrames (similar to Pandas), to visualize and explore big tabular datasets. It can calculate statistics such as mean, sum, count, standard deviation etc, on an N-dimensional grid up to a billion (109) objects/rows per second. Visualization is done using histograms, density plots and 3d volume rendering, allowing interactive exploration of big data. Vaex uses memory mapping, zero memory copy policy and lazy computations for best performance (no memory wasted).
Have a look at the documentation: https://vaex.readthedocs.io/en/latest/
The API is very close to the API of pandas.
I recently came across a similar issue. I found simply reading the data in chunks and appending it as I write it in chunks to the same csv works well. My problem was adding a date column based on information in another table, using the value of certain columns as follows. This may help those confused by dask and hdf5 but more familiar with pandas like myself.
def addDateColumn():
"""Adds time to the daily rainfall data. Reads the csv as chunks of 100k
rows at a time and outputs them, appending as needed, to a single csv.
Uses the column of the raster names to get the date.
"""
df = pd.read_csv(pathlist[1]+"CHIRPS_tanz.csv", iterator=True,
chunksize=100000) #read csv file as 100k chunks
'''Do some stuff'''
count = 1 #for indexing item in time list
for chunk in df: #for each 100k rows
newtime = [] #empty list to append repeating times for different rows
toiterate = chunk[chunk.columns[2]] #ID of raster nums to base time
while count <= toiterate.max():
for i in toiterate:
if i ==count:
newtime.append(newyears[count])
count+=1
print "Finished", str(chunknum), "chunks"
chunk["time"] = newtime #create new column in dataframe based on time
outname = "CHIRPS_tanz_time2.csv"
#append each output to same csv, using no header
chunk.to_csv(pathlist[2]+outname, mode='a', header=None, index=None)
The parquet file format is ideal for the use case you described. You can efficiently read in a specific subset of columns with pd.read_parquet(path_to_file, columns=["foo", "bar"])
https://pandas.pydata.org/docs/reference/api/pandas.read_parquet.html
At the moment I am working "like" you, just on a lower scale, which is why I don't have a PoC for my suggestion.
However, I seem to find success in using pickle as caching system and outsourcing execution of various functions into files - executing these files from my commando / main file; For example i use a prepare_use.py to convert object types, split a data set into test, validating and prediction data set.
How does your caching with pickle work?
I use strings in order to access pickle-files that are dynamically created, depending on which parameters and data sets were passed (with that i try to capture and determine if the program was already run, using .shape for data set, dict for passed parameters).
Respecting these measures, i get a String to try to find and read a .pickle-file and can, if found, skip processing time in order to jump to the execution i am working on right now.
Using databases I encountered similar problems, which is why i found joy in using this solution, however - there are many constraints for sure - for example storing huge pickle sets due to redundancy.
Updating a table from before to after a transformation can be done with proper indexing - validating information opens up a whole other book (I tried consolidating crawled rent data and stopped using a database after 2 hours basically - as I would have liked to jump back after every transformation process)
I hope my 2 cents help you in some way.
Greetings.

Python synchronised reading of sorted files

I have two groups of files that contain data in CSV format with a common key (Timestamp) - I need to walk through all the records chronologically.
Group A: 'Environmental Data'
Filenames are in format A_0001.csv, A_0002.csv, etc.
Pre-sorted ascending
Key is Timestamp, i.e.YYYY-MM-DD HH:MM:SS
Contains environmental data in CSV/column format
Very large, several GBs worth of data
Group B: 'Event Data'
Filenames are in format B_0001.csv, B_0002.csv
Pre-sorted ascending
Key is Timestamp, i.e.YYYY-MM-DD HH:MM:SS
Contains event based data in CSV/column format
Relatively small compared to Group A files, < 100 MB
What is best approach?
Pre-merge: Use one of the various recipes out there to merge the files into a single sorted output and then read it for processing
Real-time merge: Implement code to 'merge' the files in real-time
I will be running lots of iterations of the post-processing side of things. Any thoughts or suggestions? I am using Python.
im thinking importing it into a db (mysql, sqlite, etc) will give better performance than merging it in script. the db typically has optimized routines for loading csv and the join will be probably be as fast or much faster than merging 2 dicts (one being very large) in python.
"YYYY-MM-DD HH:MM:SS" can be sorted with a simple ascii compare.
How about reusing external merge logic? If the first field is the key then:
for entry in os.popen("sort -m -t, -k1,1 file1 file2"):
process(entry)
This is a similar to a relational join. Since your timestamps don't have to match, it's called a non-equijoin.
Sort-Merge is one of several popular algorithms. For non-equijoins, it works well. I think this would be what you're called "pre-merge". I don't know what you mean by "merge in real time", but I suspect it's still a simple sort-merge, which is a fine technique, heavily used by real databases.
Nested Loops can also work. In this case, you read the smaller table in the outer loop. In the inner loop you find all of the "matching" rows from the larger table. This is effectively a sort-merge, but with an assumption that there will be multiple rows from the big table that will match the small table.
This, BTW, will allow you to more properly assign meaning to the relationship between Event Data and Environmental Data. Rather than reading the result of a massive sort merge and trying to determine which kind of record you've got, the nested loops handle that well.
Also, you can do "lookups" into the smaller table while reading the larger table.
This is hard when you're doing non-equal comparisons because you don't have a proper key to do a simple retrieval from a simple dict. However, you can easily extend dict (override __contains__ and __getitem__) to do range comparisons on a key instead of simple equality tests.
I would suggest pre-merge.
Reading a file takes a lot of processor time. Reading two files, twice as much. Since your program will be dealing with a large input (lots of files, esp in Group A), I think it would be better to get it over with in one file read, and have all your relevant data in that one file. It would also reduce the number of variables and read statements you will need.
This will improve the runtime of your algorithm, and I think that's a good enough reason in this scenario to decide to use this approach
Hope this helps
You could read from the files in chunks of, say, 10000 records (or whatever number further profiling tells you to be optimal) and merge on the fly. Possibly using a custom class to encapsulate the IO; the actual records could then be accessed through the generator protocol (__iter__ + next).
This would be memory friendly, probably very good in terms of total time to complete the operation and would enable you to produce output incrementally.
A sketch:
class Foo(object):
def __init__(self, env_filenames=[], event_filenames=[]):
# open the files etc.
def next(self):
if self._cache = []:
# take care of reading more records
else:
# return the first record and pop it from the cache
# ... other stuff you need ...

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