Skip to main content

Lazy computation directed acyclic graph builder

Project description

Pyflow is a light weight library that lets the user construct a memory efficient directed acyclic computation graph (DAG) that evaluates lazily. It can cache intermediate results, only compute the parts of the graph that has data dependency, and immediately release memory of data whose dependecy is no longer required. Pyflow is simple and light, built purely on Python, using the weak references for memory management and doubly linked list for DAG construction.

Unlike computation graph based engines such as Dask or PySpark, Pyflow is not meant to be a parallel data processor, or to change the way computation resources are used. Instead, it is meant to be a light weight tool for code organization in the form of DAG and for graph visualization that can be used on top of Dask or PySpark.

Install

pip install pyflow-viz

Getting started

Let’s construct a simple computation graph: (Note the similarity of API to that of Keras functional API!)

from pyflow import GraphBuilder

def adding(a, b):
        return a + b

G = GraphBuilder()
a1 = G.add(adding)(2, 2)  # you add methods with `add` instance method.
a2 = G.add(adding)(3, a1)
a3 = G.add(adding)(a1, a2)

At this point, no evaluation has occurred. Also, the outputs a1, a2, and a3 are DataNode objects (well, more precisely, weak references to the DataNode objects) You can kick off the evaluation by invoking get method from any of the output objects:

print(a3.get())  # 11

You can also easily visualize the DAG using view method:

G.view()
https://github.com/mozjay0619/pyflow-viz/blob/master/media/simple_dag.png

A couple notes:

  1. The API was inspired by that of the Keras functional API

  2. For demo, we are using a simple method of adding two integers, but the input method can be any python function, including instance methods, with arbitrary inputs such as numpy array, pandas dataframe or Spark dataframe.

  3. Lastly, more often then not, you will execute the graph with run method instead of invoking get on the individual data nodes. run method will be discussed more in-depth once we understand how Pyflow manages computation and memory internally. For now, just note that you can kick off the graph this way as well, which is the preferred way:

G.run()  # will run all the operation nodes

You can also pass in data nodes to get the results back this way:

a1_result, a3_result = G.run(a1, a3)  # will run all the operation nodes, and return the result data values of a1, a3

Multi-output methods

What if we have a python function with multiple outputs? Due to dynamic nature of python, it is impossible to determine the number of outputs before the function is actually ran. In such a case, you need to specify the number of outputs by n_out argument:

from pyflow import GraphBuilder

def adding(a, b):
        return a + b

def multi_output_method(a, b):
        return a+1, b+1

G = GraphBuilder()
a1 = G.add(adding)(2, 2)
a2, b2 = G.add(multi_output_method, n_out=2)(a1, 2)  # n_out argument!
a3 = G.add(adding)(a2, 3)
a4 = G.add(adding)(b2, a1)

G.view()
https://github.com/mozjay0619/pyflow-viz/blob/master/media/multi_output.png

Visualizing data flow

The view function actually has the ability to summarize the DAG by only showing the user the OperationNodes, which it does by default. We can override this default setting by using the summary parameter of the function:

G.view(summary=False)
https://github.com/mozjay0619/pyflow-viz/blob/master/media/summary_false.png

With the summary functionality turned off, the complete DAG visualization will includes DataNodes as well as the OperationNodes. You may be wondering what the extra records with (1, ) written inside are. They signal the data persistence. We will discuss what this is, and how this works, in greater detail later.

Removing methods

When constructing a graph during an interactive session using tools like Jupyter Notebook, often there is a need to remove an operation node in order to correct for mistakes. You can achieve that by calling remove method. Let’s look at an example.

from pyflow import GraphBuilder

def adding(x, y):
        return x + y

def wrong_method(x, r):
        return x + r

def correct_method(x, r):
        return x*r

G = GraphBuilder(verbose=False)
a = G.add(adding)(1, 2)
b = G.add(wrong_method)(a, 1)  # added wrong method!

G.view(summary=False)
https://github.com/mozjay0619/pyflow-viz/blob/master/media/removing1.png

In the above code, we added a wrong_method by mistake, and it needs to be replaced by correct_method. If we just add the correct method on top, we will simply end up creating another node:

b = G.add(correct_method)(a, 1)  # can't just add correct_method node!

G.view(summary=False)
https://github.com/mozjay0619/pyflow-viz/blob/master/media/removing2.png

As you can see, you will simply have added the correct node without removing the original wrong method. In such a situation, we need to first remove the wrong node by invoking remove method. The remove method will erase the last operation node that was added. Let’s go back to where we were right after adding wrong_method. At this point, call remove:

G.remove()

G.view(summary=False)
https://github.com/mozjay0619/pyflow-viz/blob/master/media/removing3.png

As you can see, the last operation node is now gone. remove method will also remove all children data node (thereby releasing their memory) that depends on that node. Also, it will remove all data node that holds any raw input that were fed into the operation node. It will not, however, remove any other part of the graph.

At this point, we can add the corrected version of the method:

b = G.add(correct_method)(a, 1)

G.view(summary=False)
https://github.com/mozjay0619/pyflow-viz/blob/master/media/removing4.png

On a more technical note, even though there is variable b, remove can still release the memory of all the associated nodes because Pyflow operates on weak references. Pyflow keeps only one strong reference per node inside the GraphBuilder class instance (i.e. strong_ref_dict). To check this, simply check b variable upon invoking remove. You will see that b is now a dead (weak) reference that does not point to any particular Python object in memory.

Lastly, you can pass in n argument to remove method. This will remove the last n operation nodes. The default value is 1, i.e. it removes the latest 1 operation node.

Styling your DAG

Pyflow lets the user customize the DAG visuals to a certain degree, with more to come in the future. Let’s take a look at some examples.

from pyflow import GraphBuilder

def query_dataframe_A():
        return 1  # pretend this was a pandas or Spark dataframe!

def query_dataframe_B():
        return 2

def product_transform(inp):
        return inp*2

def join_transform(inp1, inp2):
        return inp1 + inp2

def split_transform(inp):
        return inp+1, inp+2

G = GraphBuilder()
df1 = G.add(query_dataframe_A)()
df2 = G.add(query_dataframe_B)()
new_df1 = G.add(product_transform)(df1)
new_df2 = G.add(product_transform)(df2)
dfa, dfb = G.add(split_transform, n_out=2)(new_df2)
joined_df = G.add(join_transform)(new_df1, dfa)

G.view()
https://github.com/mozjay0619/pyflow-viz/blob/master/media/queryingA.png

But since at a conceptual level, queries are similarly progenitors of new data, perhaps we want to put them side by side on top, and position is controlled by rank parameter. Also, since these are probably coming from some data storage, we might want to style their nodes accordingly, with different color.

G = GraphBuilder()
df1 = G.add(query_dataframe_A, rank=0, shape='cylinder', color='lightblue')()
df2 = G.add(query_dataframe_B, rank=0, shape='cylinder', color='lightblue')()
new_df1 = G.add(product_transform)(df1)
new_df2 = G.add(product_transform)(df2)
dfa, dfb = G.add(split_transform, n_out=2)(new_df2)
joined_df = G.add(join_transform)(new_df1, dfa)

G.view()
https://github.com/mozjay0619/pyflow-viz/blob/master/media/queryingB.png

But then we might want to make the DAG a little shorter, especially if we are to add more and more intermediate steps. We can control more detailed aesthetics with graph_attributes:

graph_attributes = {'graph_ranksep': 0.25}

G.view(graph_attributes=graph_attributes)
https://github.com/mozjay0619/pyflow-viz/blob/master/media/shortGraph.png

You can take a look and play around with the rest of the configurations:

G.graph_attributes

# the default settings are found at:
G.default_graph_attributes

# 'data_node_fontsize': 10,
# 'data_node_shape': 'box',
# 'data_node_color': None,
# 'op_node_fontsize': 12,
# 'op_node_shape': 'box',
# 'op_node_color': 'white',
# 'graph_ranksep': 0.475,
# 'graph_node_fontsize': 12.85,
# 'graph_node_shape': 'box3d',
# 'graph_node_color': 'white',
# 'graph_node_shapesize': 0.574,
# 'persist_record_shape': True

Finally, you can set the alias of the nodes by passing in method_alias and/or output_alias in the add method. The method_alias will set the alias of the operation node being added, and output_alias will set the alias of the child data node of that operation node.

G = GraphBuilder()
dfa = G.add(query_dataframe_A, rank=0, shape='cylinder', color='lightblue', output_alias='df_A')()
dfb = G.add(query_dataframe_B, rank=0, shape='cylinder', color='lightblue', output_alias='df_B')()
dfa1 = G.add(product_transform)(dfa)
dfb1 = G.add(product_transform)(dfb)
# note the list of alias for n_out = 2
dfa, dfb = G.add(split_transform, n_out=2, output_alias=['first_out', 'second_out'])(dfa1)
joined_df = G.add(join_transform, output_alias='final_data')(dfb1, dfa)

graph_attributes = {'graph_ranksep': 0.25}
G.view(summary=False, graph_attributes=graph_attributes)
https://github.com/mozjay0619/pyflow-viz/blob/master/media/aliasingGraph.png

The default alias for operation node is the String name of the method being passed in, and the default alias for data node is simply “data”. We do not include the example of setting method_alias to discourage its use. Setting method alias different from the method name will make look up of graph node in the code base very difficult.

No output methods

Often when we are processing data, we will end up doing something with that data, whether it is to upload it somewhere, save it somewhere, or use pass it to a model, etc. In those cases, we do not expect any return data.

# this method does not have return statement
def save_data(data):

        # save the data somewhere
        # no return statement needed
        pass

Pyflow will create graph accordingly, such that the outputless operation node is a leaf node.

from pyflow import GraphBuilder

def query_dataframe_A():
        return 1  # pretend this was a pandas or Spark dataframe!

def query_dataframe_B():
        return 2

def product_transform(inp):
        return inp*2

def join_transform(inp1, inp2):
        return inp1 + inp2

def split_transform(inp):
        return inp+1, inp+2

def save_data(data):
        # save the data somewhere
        # no return statement needed
        pass

G = GraphBuilder()
df1 = G.add(query_dataframe_A, rank=0, shape='cylinder', color='lightblue')()
df2 = G.add(query_dataframe_B, rank=0, shape='cylinder', color='lightblue')()
new_df1 = G.add(product_transform)(df1)
new_df2 = G.add(product_transform)(df2)
dfa, dfb = G.add(split_transform, n_out=2)(new_df2)
joined_df = G.add(join_transform)(new_df1, dfa)
G.add(save_data)(dfb)
G.add(save_data)(joined_df)

graph_attributes = {'graph_ranksep': 0.25}
G.view(summary=False, graph_attributes=graph_attributes)
https://github.com/mozjay0619/pyflow-viz/blob/master/media/no_output_.png

This is a more realistic shape of the DAG in the actual use case of data preprocessing. Also, this is why run method makes more sense to use then get method in most realistic use cases. As you can see above, there is no data node from which we can call get method to retrieve the data. We are not interested in the data per se as we are in what we can do with the data. And most of the time, when we do something with our data, the end result is not another data. This does not mean you shouldn’t use get. There might be situations where you would want to get the data back, especially during interactive sessions.

Grafting graphs together

When the computation graph becomes too big, the size of the visualized graph can actually end up becoming a hinderance to clean data flow documentation. Not only that, we could also benefit at the conceptual code organization level, if we had the ability to define multiple graphs and combine them together flexibly. I.e. we could treat a graph as if it was just another operation node. As of version 0.7, we can do this. Let’s look at an example:

from pyflow import GraphBuilder

def adding(a, b):
        return a+b

G = GraphBuilder(alias='First Graph')  # notice alias at graph level!
a1 = G.add(adding)(1, 2)
a2 = G.add(adding)(a1, 2)
a3 = G.add(adding, output_alias='leaving!')(a1, a2)

G.view()
https://github.com/mozjay0619/pyflow-viz/blob/master/media/graft1.png

Let’s look at the unsummarized version to take notice of the output_alias of the last data node:

# let's make it a little shorter with ranksep parameter we talked about earlier!
G.view(summary=False, graph_attributes={'graph_ranksep': 0.3})
https://github.com/mozjay0619/pyflow-viz/blob/master/media/graft2.png

In the above code, we have created one graph. But we can create another graph, and graft the First Graph graph to the new graph:

H = GraphBuilder(alias='Second Graph')

b1 = H.add(adding)(1, 3)
b2 = H.add(adding)(b1, a3)
b3 = H.add(adding)(b1, b2)

H.view(summary=False)  # notice that the output_alias from previous graph is also preserved!
https://github.com/mozjay0619/pyflow-viz/blob/master/media/graft3_.png

As you can see, the previous graph is now summarized into a box. You can combine as many graphs in this way as you want. Despite this visual effect, b3 is now part of one single big combined computation graph. Therefore, calling b3.get() will trigger computations in nodes that belong to both G and H as long as they are needed. As far as computation is concerned, you just have one big graph.

Saving your DAG image

You can easily save your DAG image by invoking save_view method, which returns the file path of the saved image:

G.save_view()

The save_view method also has summary boolean parameter. You can also set the file name and file path by passing in dirpath and filename parameter. They default to current working directory and “digraph” respectively. You can also set the file format as png or pdf by setting fileformat parameter. The default is png.

HTML documentation of DAG

With the visualization of the DAG, we can see the input-output relations among the functions, but it alone does not tell what each of the function does. But you can create a single HTML documentation that tells the complete semantic story of the DAG, using document method:

from pyflow import document

document(G)  # or document(G, H, I) etc if you have more than one graph

Doing so will create a static HTML file that displays the DAG image as well as the docstrings of each of the functions that goes into the DAG on the right side, which you can scroll through.

from pyflow import GraphBuilder
from pyflow import document

def methodA(elem):
        """Some descriptions of the methodA

        Parameter
        ---------
        elem : int
        """
        return elem

def methodB(elem):
        """Some descriptions of the methodB

        Parameter
        ---------
        elem : int
        """
        return elem

def methodC(elem):
        """Some descriptions of the methodC

        Parameter
        ---------
        elem : int
        """
        return elem

G = GraphBuilder()
a = G.add(methodA)(3)
b = G.add(methodB)(a)
c = G.add(methodC)(b)

document(G)

This code will produce the following HTML file:

https://github.com/mozjay0619/pyflow-viz/blob/master/media/document.png

Memory persistance with Pyflow

You have the option of either persisting all of the intermediate results, or persisting part of the intermediate results.

To persist all intermediate results, use persist parameter at GraphBuilder level:

from pyflow import GraphBuilder

G = GraphBuilder(persist=True)  # set persist to True

a1 = G.add(adding)(1, 2)
a2, a3 = G.add(return2, n_out=2)(a1, 3)
a4 = G.add(adding)(a1, 5)
a5 = G.add(adding)(a4, a3)

a5.get()

With persist enabled, after running a5.get(), when you try to run a4.get(), the graph will not recompute anything because a4 node result will have been cached in memory. The persist is turned off by default, as it is assumed that the user of the pyflow will process large amounts of data.

To persist parts of the data, you can specify the persist parameter at add level:

from pyflow import GraphBuilder

G = GraphBuilder(persist=False)  # default value

a1 = G.add(adding)(1, 2)
a2, a3 = G.add(return2, n_out=2)(a1, 3)
a4 = G.add(adding, persist=True)(a1, 5)  # persist here
a5 = G.add(adding)(a4, a3)

a5.get()

Then, when you run a4.get() it will not rerun the computation as a4 result has been cached in memory although all other intermediate results will have been released.

At last, we can understand the difference between run() and run(a1, a3). Even if you don’t persist anything, either at the graph level or the node level, by passing in the a1, a3, the graph will automatically persist their data for you, and return the persisted data by internally invoking get() on the nodes a1, a3. The rest of data nodes are subject to the same immediate memory release mechanism.

In terms of the codes, these two are equivalent:

# run() with arguments:

from pyflow import GraphBuilder

G = GraphBuilder()
a1 = G.add(adding)(1, 2)
a2 = G.add(adding)(a1, 3)
a3 = G.add(adding)(a2, a1)

a1_val, a3_val = G.run(a1, a3)


# run() without arguments:

G = GraphBuilder()
a1 = G.add(adding, persist=True)(1, 2)
a2 = G.add(adding)(a1, 3)
a3 = G.add(adding)(a2, a1)

G.run()

a1_val = a1.get()
a3_val = a3.get()

Also, when you persist certain nodes, this persistence request will manifest in the graph by an empty record box:

from pyflow import GraphBuilder

G = GraphBuilder()
a1 = G.add(adding)(1, 2)
a2 = G.add(adding)(a1, 3)
a3 = G.add(adding)(a2, a1)

G.view()
https://github.com/mozjay0619/pyflow-viz/blob/master/media/record1.png

The empty box signifies that the graph is requested to persist that data, but it does not yet hold that data because it has not yet been executed. But once you run the graph, the empty record slot will be filled by the dimensionality of the resulting data. Currently it supports PySpark dataframe, numpy array, and pandas dataframe. All other data will have a default dimension of (1, ).

G.run()
https://github.com/mozjay0619/pyflow-viz/blob/master/media/record2.png

Now, of course, it is not the method that is being persisted but the resulting data of that op node. You can see this when you visualize the DAG with summary=False:

G.run(summary=False)
https://github.com/mozjay0619/pyflow-viz/blob/master/media/record3.png

Some notes:

  1. The op node with record box is a short hand way of conveying the message that the child data node of that op node will be persisted.

  2. The raw data are automatically persisted, which is why you see the dimensionality information in the record box. This is because the raw user data inputs cannot be recomputed from the graph alone. But this will not be visible when summary=True, because the op node will only show the record box for persisted child data node, and user supplied inputs will always be parent data node.

  3. Although this is not made explicitly visible, the final leaf data node are always persisted when run method is invoked. But this will not be explicitly shown in the graph unless the user manually supplies persist flag at the add method invocation.

  4. Lastly, the persist flag is interoperable with Spark when PySpark dataframe is the data type. This means, when you persist the data using the DAG, if the underlying data is a PySpark dataframe, the Pyflow will persist the dataframe for you. However, unpersisting is not done by the Pyflow. If you want to unpersist a dataframe, do so manually.

Computation and memory efficiency of Pyflow (OUTDATED)

When you invoke get method, pyflow will only then evaluate, and it will evaluate only the parts of the graph that is needed to be evaluated. Also, as soon as an intermediate result has no dependency, it will automatically release the memory back to the operating system. Let’s take a tour of the computation process to better understand this mechanism by turning on verbose parameter.

from pyflow import GraphBuilder

def adding(a, b):
        return a + b

def multi_output_method(a, b):
        return a+1, b+1

G = GraphBuilder(verbose=True)  # set verbose to True
a1 = G.add(adding)(1, 2)
a2, a3 = G.add(return2, n_out=2)(a1, 3)
a4 = G.add(adding)(a1, 5)
a5 = G.add(adding)(a4, a3)

a5.get()

With verbose=True, along with the final output, pyflow will also produce the following standard output:

computing for data_12
adding_11 activated!
adding_8 activated!
adding_0 activated!
return2_4 activated!
computing for data_10
computing for data_3
running adding_0
adding_0 deactivated!
running adding_8
data_3 still needed at return2_4
adding_8 deactivated!
computing for data_7
running return2_4
data_3 released!
return2_4 deactivated!
running adding_11
data_10 released!
data_7 released!
adding_11 deactivated!

Let’s take the tour of this process by looking at the graph. Notice that in verbose mode, the graph will actually print out the uid’s of the nodes not just their aliases (more on setting alias later!)

https://github.com/mozjay0619/pyflow-viz/blob/master/media/verbose_.png

As pyflow tries to compute data_12, it will first activate all the OperationNodes that is needed for the computation, in our case, those are adding_11, adding_8, adding_0, return2_4. It will then follow the lineage of the graph to work on intermediate results needed to proceed down the graph. Notice that as the computation proceeds, the OperationNodes that were activated are deactivated. When it gets to data_3, notice that it is needed at both adding_8 and return2_4. Thus, once it completes adding_8, it cannot yet release the memory from data_3: data_3 still needed at return2_4. But as soon as return2_4 is ran, it releases data_3 from memory, as it is not needed anymore: data_3 released!. The DataNodes with raw inputs such as integers are not released since there is no way for the graph to reconstruct them.

By the same token, if you were to run the graph from middle, say, at a4:

a4.get()

You will see:

computing for data_10
adding_8 activated!
adding_0 activated!
computing for data_3
running adding_0
adding_0 deactivated!
running adding_8
data_3 released!
adding_8 deactivated!

In this case, since return2_4 is not activated, the data_3 does not consider its presence in deciding release of memory.

On the other hand, run method will activate all operation nodes. This will make sure that even the operation nodes that do not have children are ran. However, the immediate memory release mechanism still applies to run method, unless otherwise specified. Refer below.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

pyflow-viz-0.36.tar.gz (30.3 kB view hashes)

Uploaded Source

Built Distribution

pyflow_viz-0.36-py3-none-any.whl (25.9 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page