introduction to pyspark
TRANSCRIPT
A One Hour Introduction to Analytics with PySpark
Introduction to PySpark
http://www.slideshare.net/rjurney/introduction-to-pyspark or
http://bit.ly/intro_to_pyspark
Agile Data Science 2.0
Russell Jurney
2
Data Engineer
Data Scientist
Visualization Software Engineer
85%
85%
85%
Writer85%
Teacher50%
Russell Jurney is a veteran data
scientist and thought leader. He
coined the term Agile Data Science in
the book of that name from O’Reilly
in 2012, which outlines the first agile
development methodology for data
science. Russell has constructed
numerous fu l l -stack analyt ics
products over the past ten years and
now works with clients helping them
extract value from their data assets.
Russell Jurney
Skill
Principal Consultant at Data Syndrome
Russell Jurney
Data Syndrome, LLC
Email : [email protected] : datasyndrome.com
Principal Consultant
Building Full-Stack Data Analytics Applications with Spark
http://bit.ly/agile_data_science
Agile Data Science 2.0
Agile Data Science 2.0 4
Realtime Predictive Analytics
Rapidly learn to build entire predictive systems driven by
Kafka, PySpark, Speak Streaming, Spark MLlib and with a web
front-end using Python/Flask and JQuery.
Available for purchase at http://datasyndrome.com/video
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Product Consulting
We build analytics products and systems
consisting of big data viz, predictions,
recommendations, reports and search.
Corporate Training
We offer training courses for data
scientists and engineers and data
science teams,
Video Training
We offer video training courses that rapidly
acclimate you with a technology and
technique.
Agile Data Science 2.0 6
What is Spark? What makes it go?
Concepts
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Hadoop / HDFSHDFS splits large data among many machines
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Hadoop / MapReduceIn the beginning there was MapReduce
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Spark / RDDSpark RDDs are iterable MapReduce relations
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Spark / DataFrameFast SQLish RDD thingies
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Spark StreamingSpark on realtime streams in mini-batches
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Spark EcosystemLots of cool stuff working together…
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Setting up our class environment
Setup
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Python 3 > 2.7
While the break in compatibility between Python 2.X
and 3.X was unfortunate and unnecessary , Python 3
has increasingly become the platform of choice for
analytics work. With a few alterations, all code in this
course will execute in a Python 2.7 environment.
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Virtualbox
Virtualbox is a Free and Open Source Software (FOSS)
virtualization product for AMD64/Intel64 processors. It
supports many operating systems, and is under active
development.
https://www.virtualbox.org/wiki/Downloads
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Vagrant
Vagrant sits on top of Virtualbox and provides easy to
use, reproducible development environments.
https://www.vagrantup.com/downloads.html
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Vagrant Setup
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Initializing our Vagrant Environment
# Get the projectgit clone https://github.com/rjurney/Agile_Data_Code_2/
# Setup and connect to our virtual machinevagrant up; vagrant ssh
# Now, from within Vagrantcd Agile_Data_Code_2intro_download.sh
# See Appendix A and install.sh for manual install
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Amazon EC2
Alternatively, Amazon Web Services provide a simple
way to launch a prepared image for use in this exercise.
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EC2 Setup for Ubuntu Linux
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Initializing our EC2 Environment
# See ec2.sh, which uses aws/ec2_bootstrap.sh# To use add: —user-data file://aws/ec2_bootstrap.sh
# Get the projectgit clone [email protected]:rjurney/Agile_Data_Code_2.git
# Setup AWS CLI toolspip install awscli
# Edit and run r3.xlarge instance with your key./ec2.sh
# ssh to the machine
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EC2 Setup for Ubuntu LinuxInitializing our EC2 Environment
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# Contents of ec2.sh
# Launch our instance, which ec2_bootstrap.sh will initialize aws ec2 run-instances \ --image-id ami-4ae1fb5d \ --key-name agile_data_science \ --user-data file://aws/ec2_bootstrap.sh \ --instance-type r3.xlarge \ --ebs-optimized \ --placement "AvailabilityZone=us-east-1d" \ --block-device-mappings '{"DeviceName":"/dev/sda1","Ebs":{"DeleteOnTermination":false,"VolumeSize":1024}}' \ --count 1
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EC2 Setup for Ubuntu LinuxInitializing our EC2 Environment
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# Download the datacd Agile_Data_Code_2./intro_download.sh
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EC2 Setup for Ubuntu LinuxInitializing our EC2 Environment
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# Download the datacd Agile_Data_Code_2./intro_download.sh
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Documentation SetupOpening the right web pages to answer your questions
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http://spark.apache.org/docs/latest/api/python/pyspark.html
http://spark.apache.org/docs/latest/api/python/pyspark.sql.html
http://spark.apache.org/docs/latest/api/python/pyspark.ml.html
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Learning the basics of PySpark
Basic PySpark
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Hello, World!How to load data and perform an operation on it in Spark
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# See ch02/spark.py
# Load the text file using the SparkContextcsv_lines = sc.textFile("data/example.csv") # Map the data to split the lines into a listdata = csv_lines.map(lambda line: line.split(",")) # Collect the dataset into local RAMdata.collect()
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Creating Objects from CSV using a functionHow to create objects from CSV using a function instead of a lambda
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# See ch02/groupby.py
csv_lines = sc.textFile("data/example.csv") # Turn the CSV lines into objectsdef csv_to_record(line): parts = line.split(",") record = { "name": parts[0], "company": parts[1], "title": parts[2] } return record# Apply the function to every recordrecords = csv_lines.map(csv_to_record)# Inspect the first item in the datasetrecords.first()
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Using a GroupBy to Count JobsCount things using the groupBy API
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# Group the records by the name of the persongrouped_records = records.groupBy(lambda x: x["name"]) # Show the first groupgrouped_records.first()# Count the groupsjob_counts = grouped_records.map( lambda x: { "name": x[0], "job_count": len(x[1]) }) job_counts.first()job_counts.collect()
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Map vs FlatMapUnderstanding the difference between these two operators
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# See ch02/flatmap.py
csv_lines = sc.textFile("data/example.csv") # Compute a relation of words by linewords_by_line = csv_lines\ .map(lambda line: line.split(","))words_by_line.collect()# Compute a relation of wordsflattened_words = csv_lines\ .map(lambda line: line.split(","))\ .flatMap(lambda x: x)flattened_words.collect()
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Map vs FlatMapUnderstanding the difference between these two operators
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words_by_line.collect()
[['Russell Jurney', 'Relato', 'CEO'], ['Florian Liebert', 'Mesosphere', 'CEO'], ['Don Brown', 'Rocana', 'CIO'], ['Steve Jobs', 'Apple', 'CEO'], ['Donald Trump', 'The Trump Organization', 'CEO'], ['Russell Jurney', 'Data Syndrome', 'Principal Consultant']]
flattened_words.collect()
['Russell Jurney', 'Relato', 'CEO', 'Florian Liebert', 'Mesosphere', 'CEO', 'Don Brown', 'Rocana', 'CIO', 'Steve Jobs', 'Apple', 'CEO', 'Donald Trump', 'The Trump Organization', 'CEO', 'Russell Jurney', 'Data Syndrome', 'Principal Consultant']
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Using DataFrames and Spark SQL to Count JobsConverting an RDD to a DataFrame to use Spark SQL
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# See ch02/sql.py
csv_lines = sc.textFile("data/example.csv") from pyspark.sql import Row# Convert the CSV into a pyspark.sql.Rowdef csv_to_row(line): parts = line.split(",") row = Row( name=parts[0], company=parts[1], title=parts[2] ) return row# Apply the function to get rows in an RDDrows = csv_lines.map(csv_to_row)
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Using DataFrames and Spark SQL to Count JobsConverting an RDD to a DataFrame to use Spark SQL
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# Convert to a pyspark.sql.DataFramerows_df = rows.toDF()# Register the DataFrame for Spark SQLrows_df.registerTempTable("executives") # Generate a new DataFrame with SQL using the SparkSessionjob_counts = spark.sql(""" SELECT name, COUNT(*) AS total FROM executives GROUP BY name
""") job_counts.show()# Go back to an RDDjob_counts.rdd.collect()
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Working with a more complex dataset
Exploratory Data Analysis with Airline Data
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Loading a Parquet Columnar FileUsing the Apache Parquet format to load columnar data
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# See ch02/load_on_time_performance.py
# Load the parquet file containing flight delay recordson_time_dataframe = spark.read.parquet('data/on_time_performance.parquet') # Register the data for Spark SQLon_time_dataframe.registerTempTable("on_time_performance") # Check out the columnson_time_dataframe.columns# Check out some dataon_time_dataframe\ .select("FlightDate", "TailNum", "Origin", "Dest", "Carrier", "DepDelay", "ArrDelay")\ .show()
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Sampling a DataFrameSampling a DataFrame to get a better view of its data
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# Trim the fields and keep the resulttrimmed_on_time = on_time_dataframe\ .select( "FlightDate", "TailNum", "Origin", "Dest", "Carrier", "DepDelay", "ArrDelay" )
# Sample 0.01% of the data and showtrimmed_on_time.sample(False, 0.0001).show()
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Calculating a HistogramComputing the distribution of a column in a dataset
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# See ch02/histogram.py
# Load the parquet file containing flight delay recordson_time_dataframe = spark.read.parquet('data/on_time_performance.parquet') # Register the data for Spark SQLon_time_dataframe.registerTempTable("on_time_performance") # Compute a histogram of departure delayson_time_dataframe\ .select("DepDelay")\ .rdd\ .flatMap(lambda x: x)\ .histogram(10)
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Displaying a HistogramUsing pyplot to display a histogram
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import numpy as np import matplotlib.mlab as mlabimport matplotlib.pyplot as plt# Function to plot a histogram using pyplotdef create_hist(rdd_histogram_data): """Given an RDD.histogram, plot a pyplot histogram""" heights = np.array(rdd_histogram_data[1]) full_bins = rdd_histogram_data[0] mid_point_bins = full_bins[:-1] widths = [abs(i - j) for i, j in zip(full_bins[:-1], full_bins[1:])] bar = plt.bar(mid_point_bins, heights, width=widths, color='b') return bar# Compute a histogram of departure delaysdeparture_delay_histogram = on_time_dataframe\ .select("DepDelay")\ .rdd\ .flatMap(lambda x: x)\ .histogram(10, [-60,-30,-15,-10,-5,0,5,10,15,30,60,90,120,180])create_hist(departure_delay_histogram)
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Displaying a HistogramUsing pyplot to display a histogram
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Counting AirplanesHow many airplanes are in the US fleet in total?
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# See ch05/assess_airplanes.py
# Load the parquet fileon_time_dataframe = spark.read.parquet('data/on_time_performance.parquet') on_time_dataframe.registerTempTable("on_time_performance") # Dump the unneeded fieldstail_numbers = on_time_dataframe.rdd.map(lambda x: x.TailNum)tail_numbers = tail_numbers.filter(lambda x: x != '') # distinct() gets us unique tail numbersunique_tail_numbers = tail_numbers.distinct()# now we need a count() of unique tail numbersairplane_count = unique_tail_numbers.count()print("Total airplanes: {}".format(airplane_count))
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Counting Total Flights by MonthPreparing data for a chart
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# See ch05/total_flights.py
# Load the parquet fileon_time_dataframe = spark.read.parquet('data/on_time_performance.parquet') # Use SQL to look at the total flights by month across 2015on_time_dataframe.registerTempTable("on_time_dataframe") total_flights_by_month = spark.sql( """SELECT Month, Year, COUNT(*) AS total_flights FROM on_time_dataframe GROUP BY Year, Month ORDER BY Year, Month""") # This map/asDict trick makes the rows print a little prettier. It is optional.flights_chart_data = total_flights_by_month.rdd.map(lambda row: row.asDict())flights_chart_data.collect()
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Preparing Complex Records for StorageGetting data ready for storage in a document or key/value store
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# See ch05/extract_airplanes.py
# Load the parquet fileon_time_dataframe = spark.read.parquet('data/on_time_performance.parquet') on_time_dataframe.registerTempTable("on_time_performance") # Filter down to the fields we need to identify and link to a flightflights = on_time_dataframe.rdd.map(lambda x: (x.Carrier, x.FlightDate, x.FlightNum, x.Origin, x.Dest, x.TailNum) )# Group flights by tail number, sorted by date, then flight number, then origin/destflights_per_airplane = flights\ .map(lambda nameTuple: (nameTuple[5], [nameTuple[0:5]]))\ .reduceByKey(lambda a, b: a + b)\ .map(lambda tuple: { 'TailNum': tuple[0], 'Flights': sorted(tuple[1], key=lambda x: (x[1], x[2], x[3], x[4])) } )flights_per_airplane.first()
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Counting Flight DelaysAnalyzing and understanding why flights are late
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# See ch07/explore_delays.py
# Load the on-time parquet fileon_time_dataframe = spark.read.parquet('data/on_time_performance.parquet') on_time_dataframe.registerTempTable("on_time_performance") total_flights = on_time_dataframe.count()# Flights that were late leaving...late_departures = on_time_dataframe.filter(on_time_dataframe.DepDelayMinutes > 0) total_late_departures = late_departures.count()# Flights that were late arriving...late_arrivals = on_time_dataframe.filter(on_time_dataframe.ArrDelayMinutes > 0) total_late_arrivals = late_arrivals.count()
# Get the percentage of flights that are late, rounded to 1 decimal placepct_late = round((total_late_arrivals / (total_flights * 1.0)) * 100, 1)
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Hero FlightsHow many flights made up for time in the air? Those that departed late and arrived on time?
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# See ch07/explore_delays.py
# Flights that left late but made up time to arrive on time...on_time_heros = on_time_dataframe.filter( (on_time_dataframe.DepDelayMinutes > 0) & (on_time_dataframe.ArrDelayMinutes <= 0) ) total_on_time_heros = on_time_heros.count()
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Presenting ResultsDisplaying the answers in plaintext we’ve just calculated
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# See ch07/explore_delays.py
print("Total flights: {:,}".format(total_flights))print("Late departures: {:,}".format(total_late_departures))print("Late arrivals: {:,}".format(total_late_arrivals))print("Recoveries: {:,}".format(total_on_time_heros))print("Percentage Late: {}%".format(pct_late))
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# See ch07/explore_delays.py
# Get the average minutes late departing and arrivingspark.sql("""SELECT ROUND(AVG(DepDelay),1) AS AvgDepDelay, ROUND(AVG(ArrDelay),1) AS AvgArrDelayFROM on_time_performance""").show()
Average Lateness Departing and ArrivingDrilling down into flights and how late they are…
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Sampling Late FlightsGetting to know our data by sampling records of interest
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# Why are flights late? Lets look at some delayed flights and the delay causeslate_flights = spark.sql("""SELECT ArrDelayMinutes, WeatherDelay, CarrierDelay, NASDelay, SecurityDelay, LateAircraftDelayFROM on_time_performanceWHERE WeatherDelay IS NOT NULL OR CarrierDelay IS NOT NULL OR NASDelay IS NOT NULL OR SecurityDelay IS NOT NULL OR LateAircraftDelay IS NOT NULLORDER BY FlightDate""") late_flights.sample(False, 0.01).show()
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Why are Flights Late?Analyzing and understanding why flights are late
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# Calculate the percentage contribution to delay for each sourcetotal_delays = spark.sql("""SELECT ROUND(SUM(WeatherDelay)/SUM(ArrDelayMinutes) * 100, 1) AS pct_weather_delay, ROUND(SUM(CarrierDelay)/SUM(ArrDelayMinutes) * 100, 1) AS pct_carrier_delay, ROUND(SUM(NASDelay)/SUM(ArrDelayMinutes) * 100, 1) AS pct_nas_delay, ROUND(SUM(SecurityDelay)/SUM(ArrDelayMinutes) * 100, 1) AS pct_security_delay, ROUND(SUM(LateAircraftDelay)/SUM(ArrDelayMinutes) * 100, 1) AS pct_late_aircraft_delayFROM on_time_performance""") total_delays.show()
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How Often are Weather Delayed Flights Late?Analyzing and understanding why flights are late
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# Eyeball the first to define our bucketsweather_delay_histogram = on_time_dataframe\ .select("WeatherDelay")\ .rdd\ .flatMap(lambda x: x)\ .histogram([1, 5, 10, 15, 30, 60, 120, 240, 480, 720, 24*60.0])print(weather_delay_histogram)
create_hist(weather_delay_histogram)
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How Often are Weather Delayed Flights Late?Analyzing and understanding why flights are late
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Preparing Histogram Data for d3.jsAnalyzing and understanding why flights are late
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# Transform the data into something easily consumed by d3def histogram_to_publishable(histogram): record = {'key': 1, 'data': []} for label, value in zip(histogram[0], histogram[1]): record['data'].append( { 'label': label, 'value': value } ) return record
# Recompute the weather histogram with a filter for on-time flightsweather_delay_histogram = on_time_dataframe\ .filter( (on_time_dataframe.WeatherDelay != None) & (on_time_dataframe.WeatherDelay > 0) )\ .select("WeatherDelay")\ .rdd\ .flatMap(lambda x: x)\ .histogram([0, 15, 30, 60, 120, 240, 480, 720, 24*60.0])print(weather_delay_histogram)record = histogram_to_publishable(weather_delay_histogram)
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Building a classifier model
Predictive Analytics Machine Learning
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Download Prepared Training DataSaving time by using a prepared dataset
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# Be in the root directory of the projectcd Agile_Data_Code_2
# Run the download scriptch08/download_data.sh
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String VectorizationFrom properties of items to vector format
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scikit-learn was 166. Spark MLlib is very powerful!
ch08/train_spark_mllib_model.py
190 Line Model
# !/usr/bin/env pythonimport sys, os, re# Pass date and base path to main() from airflowdef main(base_path): # Default to "." try: base_path except NameError: base_path = "." if not base_path: base_path = "." APP_NAME = "train_spark_mllib_model.py" # If there is no SparkSession, create the environment try: sc and spark except NameError as e: import findspark findspark.init() import pyspark import pyspark.sql sc = pyspark.SparkContext() spark = pyspark.sql.SparkSession(sc).builder.appName(APP_NAME).getOrCreate() # # { # "ArrDelay":5.0,"CRSArrTime":"2015-12-31T03:20:00.000-08:00","CRSDepTime":"2015-12-31T03:05:00.000-08:00", # "Carrier":"WN","DayOfMonth":31,"DayOfWeek":4,"DayOfYear":365,"DepDelay":14.0,"Dest":"SAN","Distance":368.0, # "FlightDate":"2015-12-30T16:00:00.000-08:00","FlightNum":"6109","Origin":"TUS" # } # from pyspark.sql.types import StringType, IntegerType, FloatType, DoubleType, DateType, TimestampType from pyspark.sql.types import StructType, StructField from pyspark.sql.functions import udf schema = StructType([ StructField("ArrDelay", DoubleType(), True), # "ArrDelay":5.0 StructField("CRSArrTime", TimestampType(), True), # "CRSArrTime":"2015-12-31T03:20:00.000-08:00" StructField("CRSDepTime", TimestampType(), True), # "CRSDepTime":"2015-12-31T03:05:00.000-08:00" StructField("Carrier", StringType(), True), # "Carrier":"WN" StructField("DayOfMonth", IntegerType(), True), # "DayOfMonth":31 StructField("DayOfWeek", IntegerType(), True), # "DayOfWeek":4 StructField("DayOfYear", IntegerType(), True), # "DayOfYear":365 StructField("DepDelay", DoubleType(), True), # "DepDelay":14.0 StructField("Dest", StringType(), True), # "Dest":"SAN" StructField("Distance", DoubleType(), True), # "Distance":368.0 StructField("FlightDate", DateType(), True), # "FlightDate":"2015-12-30T16:00:00.000-08:00" StructField("FlightNum", StringType(), True), # "FlightNum":"6109" StructField("Origin", StringType(), True), # "Origin":"TUS" ]) input_path = "{}/data/simple_flight_delay_features.jsonl.bz2".format( base_path ) features = spark.read.json(input_path, schema=schema) features.first() # # Check for nulls in features before using Spark ML # null_counts = [(column, features.where(features[column].isNull()).count()) for column in features.columns] cols_with_nulls = filter(lambda x: x[1] > 0, null_counts) print(list(cols_with_nulls)) # # Add a Route variable to replace FlightNum # from pyspark.sql.functions import lit, concat features_with_route = features.withColumn( 'Route', concat( features.Origin, lit('-'), features.Dest ) ) features_with_route.show(6) # # Use pysmark.ml.feature.Bucketizer to bucketize ArrDelay into on-time, slightly late, very late (0, 1, 2) # from pyspark.ml.feature import Bucketizer # Setup the Bucketizer splits = [-float("inf"), -15.0, 0, 30.0, float("inf")] arrival_bucketizer = Bucketizer( splits=splits, inputCol="ArrDelay", outputCol="ArrDelayBucket" )
# Save the bucketizer arrival_bucketizer_path = "{}/models/arrival_bucketizer_2.0.bin".format(base_path) arrival_bucketizer.write().overwrite().save(arrival_bucketizer_path) # Apply the bucketizer ml_bucketized_features = arrival_bucketizer.transform(features_with_route) ml_bucketized_features.select("ArrDelay", "ArrDelayBucket").show() # # Extract features tools in with pyspark.ml.feature # from pyspark.ml.feature import StringIndexer, VectorAssembler # Turn category fields into indexes for column in ["Carrier", "Origin", "Dest", "Route"]: string_indexer = StringIndexer( inputCol=column, outputCol=column + "_index" ) string_indexer_model = string_indexer.fit(ml_bucketized_features) ml_bucketized_features = string_indexer_model.transform(ml_bucketized_features) # Drop the original column ml_bucketized_features = ml_bucketized_features.drop(column) # Save the pipeline model string_indexer_output_path = "{}/models/string_indexer_model_{}.bin".format( base_path, column ) string_indexer_model.write().overwrite().save(string_indexer_output_path) # Combine continuous, numeric fields with indexes of nominal ones # ...into one feature vector numeric_columns = [ "DepDelay", "Distance", "DayOfMonth", "DayOfWeek", "DayOfYear"] index_columns = ["Carrier_index", "Origin_index", "Dest_index", "Route_index"] vector_assembler = VectorAssembler( inputCols=numeric_columns + index_columns, outputCol="Features_vec" ) final_vectorized_features = vector_assembler.transform(ml_bucketized_features) # Save the numeric vector assembler vector_assembler_path = "{}/models/numeric_vector_assembler.bin".format(base_path) vector_assembler.write().overwrite().save(vector_assembler_path) # Drop the index columns for column in index_columns: final_vectorized_features = final_vectorized_features.drop(column) # Inspect the finalized features final_vectorized_features.show() # Instantiate and fit random forest classifier on all the data from pyspark.ml.classification import RandomForestClassifier rfc = RandomForestClassifier( featuresCol="Features_vec", labelCol="ArrDelayBucket", predictionCol="Prediction", maxBins=4657, maxMemoryInMB=1024 ) model = rfc.fit(final_vectorized_features) # Save the new model over the old one model_output_path = "{}/models/spark_random_forest_classifier.flight_delays.5.0.bin".format( base_path ) model.write().overwrite().save(model_output_path) # Evaluate model using test data predictions = model.transform(final_vectorized_features) from pyspark.ml.evaluation import MulticlassClassificationEvaluator evaluator = MulticlassClassificationEvaluator( predictionCol="Prediction", labelCol="ArrDelayBucket", metricName="accuracy" ) accuracy = evaluator.evaluate(predictions) print("Accuracy = {}".format(accuracy)) # Check the distribution of predictions predictions.groupBy("Prediction").count().show() # Check a sample predictions.sample(False, 0.001, 18).orderBy("CRSDepTime").show(6) if __name__ == "__main__": main(sys.argv[1])
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Loading Our Training DataLoading our data as a DataFrame to use the Spark ML APIs
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from pyspark.sql.types import StringType, IntegerType, FloatType, DoubleType, DateType, TimestampTypefrom pyspark.sql.types import StructType, StructFieldfrom pyspark.sql.functions import udfschema = StructType([ StructField("ArrDelay", DoubleType(), True), # "ArrDelay":5.0 StructField("CRSArrTime", TimestampType(), True), # "CRSArrTime":"2015-12-31T03:20:00.000-08:00" StructField("CRSDepTime", TimestampType(), True), # "CRSDepTime":"2015-12-31T03:05:00.000-08:00" StructField("Carrier", StringType(), True), # "Carrier":"WN" StructField("DayOfMonth", IntegerType(), True), # "DayOfMonth":31 StructField("DayOfWeek", IntegerType(), True), # "DayOfWeek":4 StructField("DayOfYear", IntegerType(), True), # "DayOfYear":365 StructField("DepDelay", DoubleType(), True), # "DepDelay":14.0 StructField("Dest", StringType(), True), # "Dest":"SAN" StructField("Distance", DoubleType(), True), # "Distance":368.0 StructField("FlightDate", DateType(), True), # "FlightDate":"2015-12-30T16:00:00.000-08:00" StructField("FlightNum", StringType(), True), # "FlightNum":"6109" StructField("Origin", StringType(), True), # "Origin":"TUS"]) features = spark.read.json( "data/simple_flight_delay_features.jsonl.bz2", schema=schema) features.first()
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Checking the Data for NullsNulls will cause problems hereafter, so detect and address them first
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# # Check for nulls in features before using Spark ML# null_counts = [(column, features.where(features[column].isNull()).count()) for column in features.columns]cols_with_nulls = filter(lambda x: x[1] > 0, null_counts)print(list(cols_with_nulls))
Data Syndrome: Agile Data Science 2.0
Adding a Feature - The RouteRoute is defined as origin airport code + “-“ + destination airport code
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# # Add a Route variable to replace FlightNum# from pyspark.sql.functions import lit, concatfeatures_with_route = features.withColumn( 'Route', concat( features.Origin, lit('-'), features.Dest )) features_with_route.select("Origin", "Dest", "Route").show(5)
Data Syndrome: Agile Data Science 2.0
Bucketizing ArrDelay into ArrDelayBucketWe can’t classify a continuous variable, so we must bucketize it to make it nominal/categorical
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# # Use pysmark.ml.feature.Bucketizer to bucketize ArrDelay# from pyspark.ml.feature import Bucketizersplits = [-float("inf"), -15.0, 0, 30.0, float("inf")]bucketizer = Bucketizer( splits=splits, inputCol="ArrDelay", outputCol="ArrDelayBucket") ml_bucketized_features = bucketizer.transform(features_with_route)# Check the buckets outml_bucketized_features.select("ArrDelay", "ArrDelayBucket").show()
Data Syndrome: Agile Data Science 2.0
Indexing String Columns into Numeric ColumnsNominal/categorical/string columns need to be made numeric before we can vectorize them
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# # Extract features tools in with pyspark.ml.feature# from pyspark.ml.feature import StringIndexer, VectorAssembler# Turn category fields into categoric feature vectors, then drop intermediate fieldsfor column in ["Carrier", "DayOfMonth", "DayOfWeek", "DayOfYear", "Origin", "Dest", "Route"]: string_indexer = StringIndexer( inputCol=column, outputCol=column + "_index" ) ml_bucketized_features = string_indexer.fit(ml_bucketized_features)\ .transform(ml_bucketized_features)# Check out the indexesml_bucketized_features.show(6)
Data Syndrome: Agile Data Science 2.0
Combining Numeric and Indexed Fields into One VectorOur classifier needs a single field, so we combine all our numeric fields into one feature vector
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# Handle continuous, numeric fields by combining them into one feature vectornumeric_columns = ["DepDelay", "Distance"] index_columns = ["Carrier_index", "DayOfMonth_index", "DayOfWeek_index", "DayOfYear_index", "Origin_index", "Origin_index", "Dest_index", "Route_index"] vector_assembler = VectorAssembler( inputCols=numeric_columns + index_columns, outputCol="Features_vec") final_vectorized_features = vector_assembler.transform(ml_bucketized_features)# Drop the index columnsfor column in index_columns: final_vectorized_features = final_vectorized_features.drop(column)# Check out the featuresfinal_vectorized_features.show()
Data Syndrome: Agile Data Science 2.0
Splitting our Data in a Test/Train SplitWe need to split our data to evaluate the performance of our classifier
60
# # Cross validate, train and evaluate classifier# # Test/train splittraining_data, test_data = final_vectorized_features.randomSplit([0.7, 0.3])
Data Syndrome: Agile Data Science 2.0
Training Our ModelThis is the magic in machine learning, and it is only a couple of lines of code
61
# Instantiate and fit random forest classifierfrom pyspark.ml.classification import RandomForestClassifierrfc = RandomForestClassifier( featuresCol="Features_vec", labelCol="ArrDelayBucket", maxBins=4657, maxMemoryInMB=1024) model = rfc.fit(training_data)
Data Syndrome: Agile Data Science 2.0
Evaluating Our ModelUsing the test/train split to evaluate our model for accuracy
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# Evaluate model using test datapredictions = model.transform(test_data)from pyspark.ml.evaluation import MulticlassClassificationEvaluatorevaluator = MulticlassClassificationEvaluator(labelCol="ArrDelayBucket", metricName="accuracy") accuracy = evaluator.evaluate(predictions)print("Accuracy = {}".format(accuracy))
Data Syndrome: Agile Data Science 2.0
Sampling Our PredictionsMaking sure they pass the sniff check
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# Check a samplepredictions.sample(False, 0.001, 18).orderBy("CRSDepTime").show(6)
Data Syndrome: Agile Data Science 2.0
Experiment SetupNecessary to improve model
64
Data Syndrome: Agile Data Science 2.0 65
155 additional lines to setup an experiment
and add 3 new features to improvement the model
ch09/improve_spark_mllib_model.py
345 L.O.C.
# !/usr/bin/env pythonimport sys, os, reimport jsonimport datetime, iso8601from tabulate import tabulate# Pass date and base path to main() from airflowdef main(base_path): APP_NAME = "train_spark_mllib_model.py" # If there is no SparkSession, create the environment try: sc and spark except NameError as e: import findspark findspark.init() import pyspark import pyspark.sql sc = pyspark.SparkContext() spark = pyspark.sql.SparkSession(sc).builder.appName(APP_NAME).getOrCreate() # # { # "ArrDelay":5.0,"CRSArrTime":"2015-12-31T03:20:00.000-08:00","CRSDepTime":"2015-12-31T03:05:00.000-08:00", # "Carrier":"WN","DayOfMonth":31,"DayOfWeek":4,"DayOfYear":365,"DepDelay":14.0,"Dest":"SAN","Distance":368.0, # "FlightDate":"2015-12-30T16:00:00.000-08:00","FlightNum":"6109","Origin":"TUS" # } # from pyspark.sql.types import StringType, IntegerType, FloatType, DoubleType, DateType, TimestampType from pyspark.sql.types import StructType, StructField from pyspark.sql.functions import udf schema = StructType([ StructField("ArrDelay", DoubleType(), True), # "ArrDelay":5.0 StructField("CRSArrTime", TimestampType(), True), # "CRSArrTime":"2015-12-31T03:20:00.000-08:00" StructField("CRSDepTime", TimestampType(), True), # "CRSDepTime":"2015-12-31T03:05:00.000-08:00" StructField("Carrier", StringType(), True), # "Carrier":"WN" StructField("DayOfMonth", IntegerType(), True), # "DayOfMonth":31 StructField("DayOfWeek", IntegerType(), True), # "DayOfWeek":4 StructField("DayOfYear", IntegerType(), True), # "DayOfYear":365 StructField("DepDelay", DoubleType(), True), # "DepDelay":14.0 StructField("Dest", StringType(), True), # "Dest":"SAN" StructField("Distance", DoubleType(), True), # "Distance":368.0 StructField("FlightDate", DateType(), True), # "FlightDate":"2015-12-30T16:00:00.000-08:00" StructField("FlightNum", StringType(), True), # "FlightNum":"6109" StructField("Origin", StringType(), True), # "Origin":"TUS" ]) input_path = "{}/data/simple_flight_delay_features.json".format( base_path ) features = spark.read.json(input_path, schema=schema) features.first() # # Add a Route variable to replace FlightNum # from pyspark.sql.functions import lit, concat features_with_route = features.withColumn( 'Route', concat( features.Origin, lit('-'), features.Dest ) ) features_with_route.show(6) # # Add the hour of day of scheduled arrival/departure # from pyspark.sql.functions import hour features_with_hour = features_with_route.withColumn( "CRSDepHourOfDay", hour(features.CRSDepTime) ) features_with_hour = features_with_hour.withColumn( "CRSArrHourOfDay", hour(features.CRSArrTime) ) features_with_hour.select("CRSDepTime", "CRSDepHourOfDay", "CRSArrTime", "CRSArrHourOfDay").show() # # Use pysmark.ml.feature.Bucketizer to bucketize ArrDelay into on-time, slightly late, very late (0, 1, 2) # from pyspark.ml.feature import Bucketizer # Setup the Bucketizer splits = [-float("inf"), -15.0, 0, 30.0, float("inf")] arrival_bucketizer = Bucketizer( splits=splits, inputCol="ArrDelay", outputCol="ArrDelayBucket" ) # Save the model arrival_bucketizer_path = "{}/models/arrival_bucketizer_2.0.bin".format(base_path) arrival_bucketizer.write().overwrite().save(arrival_bucketizer_path) # Apply the model ml_bucketized_features = arrival_bucketizer.transform(features_with_hour) ml_bucketized_features.select("ArrDelay", "ArrDelayBucket").show() # # Extract features tools in with pyspark.ml.feature # from pyspark.ml.feature import StringIndexer, VectorAssembler # Turn category fields into indexes for column in ["Carrier", "Origin", "Dest", "Route"]: string_indexer = StringIndexer( inputCol=column, outputCol=column + "_index" ) string_indexer_model = string_indexer.fit(ml_bucketized_features) ml_bucketized_features = string_indexer_model.transform(ml_bucketized_features)
# Save the pipeline model string_indexer_output_path = "{}/models/string_indexer_model_3.0.{}.bin".format( base_path, column ) string_indexer_model.write().overwrite().save(string_indexer_output_path)# Combine continuous, numeric fields with indexes of nominal ones# ...into one feature vectornumeric_columns = [ "DepDelay", "Distance", "DayOfMonth", "DayOfWeek", "DayOfYear", "CRSDepHourOfDay", "CRSArrHourOfDay"] index_columns = ["Carrier_index", "Origin_index", "Dest_index", "Route_index"] vector_assembler = VectorAssembler( inputCols=numeric_columns + index_columns, outputCol="Features_vec") final_vectorized_features = vector_assembler.transform(ml_bucketized_features)# Save the numeric vector assemblervector_assembler_path = "{}/models/numeric_vector_assembler_3.0.bin".format(base_path)vector_assembler.write().overwrite().save(vector_assembler_path)# Drop the index columnsfor column in index_columns: final_vectorized_features = final_vectorized_features.drop(column)# Inspect the finalized featuresfinal_vectorized_features.show()# # Cross validate, train and evaluate classifier: loop 5 times for 4 metrics# from collections import defaultdictscores = defaultdict(list) feature_importances = defaultdict(list) metric_names = ["accuracy", "weightedPrecision", "weightedRecall", "f1"] split_count = 3 for i in range(1, split_count + 1): print("\nRun {} out of {} of test/train splits in cross validation...".format( i, split_count, ) ) # Test/train split training_data, test_data = final_vectorized_features.randomSplit([0.8, 0.2]) # Instantiate and fit random forest classifier on all the data from pyspark.ml.classification import RandomForestClassifier rfc = RandomForestClassifier( featuresCol="Features_vec", labelCol="ArrDelayBucket", predictionCol="Prediction", maxBins=4657, ) model = rfc.fit(training_data) # Save the new model over the old one model_output_path = "{}/models/spark_random_forest_classifier.flight_delays.baseline.bin".format( base_path ) model.write().overwrite().save(model_output_path) # Evaluate model using test data predictions = model.transform(test_data) # Evaluate this split's results for each metric from pyspark.ml.evaluation import MulticlassClassificationEvaluator for metric_name in metric_names: evaluator = MulticlassClassificationEvaluator( labelCol="ArrDelayBucket", predictionCol="Prediction", metricName=metric_name ) score = evaluator.evaluate(predictions) scores[metric_name].append(score) print("{} = {}".format(metric_name, score)) # # Collect feature importances # feature_names = vector_assembler.getInputCols() feature_importance_list = model.featureImportances for feature_name, feature_importance in zip(feature_names, feature_importance_list): feature_importances[feature_name].append(feature_importance)# # Evaluate average and STD of each metric and print a table# import numpy as npscore_averages = defaultdict(float) # Compute the table dataaverage_stds = [] # hafor metric_name in metric_names: metric_scores = scores[metric_name] average_accuracy = sum(metric_scores) / len(metric_scores) score_averages[metric_name] = average_accuracy std_accuracy = np.std(metric_scores) average_stds.append((metric_name, average_accuracy, std_accuracy))# Print the tableprint("\nExperiment Log") print("--------------") print(tabulate(average_stds, headers=["Metric", "Average", "STD"]))# # Persist the score to a sccore log that exists between runs# import pickle
# Load the score log or initialize an empty one try: score_log_filename = "{}/models/score_log.pickle".format(base_path) score_log = pickle.load(open(score_log_filename, "rb")) if not isinstance(score_log, list): score_log = [] except IOError: score_log = [] # Compute the existing score log entry score_log_entry = {metric_name: score_averages[metric_name] for metric_name in metric_names} # Compute and display the change in score for each metric try: last_log = score_log[-1] except (IndexError, TypeError, AttributeError): last_log = score_log_entry experiment_report = [] for metric_name in metric_names: run_delta = score_log_entry[metric_name] - last_log[metric_name] experiment_report.append((metric_name, run_delta)) print("\nExperiment Report") print("-----------------") print(tabulate(experiment_report, headers=["Metric", "Score"])) # Append the existing average scores to the log score_log.append(score_log_entry) # Persist the log for next run pickle.dump(score_log, open(score_log_filename, "wb")) # # Analyze and report feature importance changes # # Compute averages for each feature feature_importance_entry = defaultdict(float) for feature_name, value_list in feature_importances.items(): average_importance = sum(value_list) / len(value_list) feature_importance_entry[feature_name] = average_importance # Sort the feature importances in descending order and print import operator sorted_feature_importances = sorted( feature_importance_entry.items(), key=operator.itemgetter(1), reverse=True ) print("\nFeature Importances") print("-------------------") print(tabulate(sorted_feature_importances, headers=['Name', 'Importance'])) # # Compare this run's feature importances with the previous run's # # Load the feature importance log or initialize an empty one try: feature_log_filename = "{}/models/feature_log.pickle".format(base_path) feature_log = pickle.load(open(feature_log_filename, "rb")) if not isinstance(feature_log, list): feature_log = [] except IOError: feature_log = [] # Compute and display the change in score for each feature try: last_feature_log = feature_log[-1] except (IndexError, TypeError, AttributeError): last_feature_log = defaultdict(float) for feature_name, importance in feature_importance_entry.items(): last_feature_log[feature_name] = importance # Compute the deltas feature_deltas = {} for feature_name in feature_importances.keys(): run_delta = feature_importance_entry[feature_name] - last_feature_log[feature_name] feature_deltas[feature_name] = run_delta # Sort feature deltas, biggest change first import operator sorted_feature_deltas = sorted( feature_deltas.items(), key=operator.itemgetter(1), reverse=True ) # Display sorted feature deltas print("\nFeature Importance Delta Report") print("-------------------------------") print(tabulate(sorted_feature_deltas, headers=["Feature", "Delta"])) # Append the existing average deltas to the log feature_log.append(feature_importance_entry) # Persist the log for next run pickle.dump(feature_log, open(feature_log_filename, "wb")) if __name__ == "__main__": main(sys.argv[1])
Data Syndrome Russell Jurney
Principal Consultant
Email : [email protected] : datasyndrome.com
Data Syndrome, LLC