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me
rono
et

M

s

ra

m
Algorith
tive

YARN

rallel Ite
and Pa
Josh Patterson
Email:
josh@floe.tv

Twitter:
@jpatanooga

Github:
https://github.com/
jpatanooga

Past
Published in IAAI-09:
“TinyTermite: A Secure Routing Algorithm”
Grad work in Meta-heuristics, Ant-algorithms

Tennessee Valley Authority
(TVA)
Hadoop and the Smartgrid

Cloudera
Principal Solution Architect

Today: Consultant
Sections

1. Parallel
Iterative
Algorithms
2. Parallel
Neural
Networks
3. Future
Directions
rithms
Algo
e

rativ
llel Ite
ra

Pa

p

c

Hadoo
e and

YARN,

I

u
tiveRed
tera
5

Machine Learning and Optimization
Direct Methods
Normal Equation

Iterative Methods
Newton’s Method
Quasi-Newton
Gradient Descent

Heuristics
AntNet
PSO
Genetic Algorithms
Linear Regression
In linear regression, data is modeled
using linear predictor functions
unknown model parameters are
estimated from the data.

We use optimization techniques like
Stochastic Gradient Descent to find
the coeffcients in the model

Y = (1*x0) + (c1*x1) + … + (cN*xN)
7

Stochastic Gradient Descent
Hypothesis about data
Cost function
Update function

Andrew Ng’s Tutorial: https://class.coursera.org/ml/
lecture/preview_view/11
8

Stochastic Gradient Descent
Training Data

Training
Simple gradient descent procedure
Loss functions needs to be convex (with
exceptions)

Linear Regression

SGD

Loss Function: squared error of
prediction
Prediction: linear combination of
coefficients and input variables

Model
9

Mahout’s SGD
Currently Single Process
Multi-threaded parallel, but not cluster parallel
Runs locally, not deployed to the cluster
Tied to logistic regression implementation
10

Distributed Learning Strategies
McDonald, 2010
Distributed Training Strategies for the Structured Perceptron

Langford, 2007
Vowpal Wabbit

Jeff Dean’s Work on Parallel SGD
DownPour SGD
11

MapReduce

vs.

Parallel Iterative

Input
Processor

Map

Map

Map

Reduce

Output

Processor

Superstep 1
Processor

Reduce

Processor

Processor

Superstep 2
. . .

Processor
12

YARN
Node
Manager

Yet Another Resource Negotiator
Container

Framework for scheduling distributed
applications

App Ms

Client

Node
Manager

Resource
Manager

Client

Allows for any type of parallel
application to run natively on hadoop

App Mstr

Node
Manager

MapReduce Status
MRv2 is now a distributed application
Job Submission
Node Status
Resource Request

Containe

Container

Containe
13

IterativeReduce API
ComputableMaster

Worker

Setup()

Worker

Worker

Master

Compute()
Complete()

Worker

Worker

ComputableWorker
Master

Setup()
Compute()

. . .

Worker
14

SGD: Serial vs Parallel
Split 1

Split 2

Split 3

Training Data
Worker 1

Partial
Model

Worker 2

…

Partial Model

Master

Model

Global Model

Worker N

Partial
Model
Parallel Iterative Algorithms on YARN

Based directly on work we did with Knitting Boar
Parallel logistic regression

And then added
Parallel linear regression
Parallel Neural Networks

Packaged in a new suite of parallel iterative algorithms called

Metronome
100% Java, ASF 2.0 Licensed, on github
Linear Regression Results
160

Total Processing Time

140

120

100

Series 1
Series 2

80

60

40
64.0

128.0

192.0

Megabytes Processed Total

256.0

320.0
17

Logistic Regression: 20Newsgroups
250

200

150
Series 1
Series 2

100

50

0
4.1

8.200000000000001

12.3

16.4

20.5

24.59999999999999

28.7

32.8

Input Size vs Processing Time

36.9

41.0
Convergence Testing
Debugging parallel iterative algorithms during testing is
hard
Processes on different hosts are difficult to observe

Using the Unit Test framework IRUnit we can simulate
the IterativeReduce framework
We know the plumbing of message passing works
Allows us to focus on parallel algorithm design/testing while
still using standard debugging tools
works
l Net
a

Pa

Neur
allel
r

r

Let’s G

n-Linea
et No
What are Neural Networks?
Inspired by nervous systems in biological systems
Models layers of neurons in the brain

Can learn non-linear functions
Recently enjoying a surge in popularity
Multi-Layer Perceptron
First layer has input neurons
Last layer has output neurons
Each neuron in the layer connected
to all neurons in the next layer
Neuron has activation function,
typically sigmoid / logistic
Input to neuron is the sum of the
weight * input of connections
Backpropogation Learning
Calculates the gradient of the error of the network regarding
the network's modifiable weights
Intuition
Run forward pass of example through network
Compute activations and output

Iterating output layer back to input layer (backwards)
For each neuron in the layer
Compute node’s responsibility for error
Update weights on connections
Parallelizing Neural Networks
Dean, (NIPS, 2012)
First Steps: Focus on linear convex models, calculating
distributed gradient
Model Parallelism must be combined with distributed
optimization that leverages data parallelization
simultaneously process distinct training examples in each of
the many model replicas
periodically combine their results to optimize our objective
function

Single pass frameworks such as MapReduce “ill-suited”
Costs of Neural Network Training

Connections count explodes quickly as neurons and layers increase
Example: {784, 450, 10} network has 357,300 connections

Need fast iterative framework
Example: 30 sec MR setup cost: 10k Epochs: 30s x 10,000 == 300,000 seconds of setup time
5,000 minutes or 83 hours

3 ways to speed up training
Subdivide dataset between works (data parallelism)
Max transfer rate of disks and Vector caching to max data throughput
Minimize inter-epoch setup times with proper iterative framework
Vector In-Memory Caching
Since we make lots of passes over same dataset
In memory caching makes sense here
Once a record is vectorized it is cached in memory on
the worker node

Speedup (single pass, “no cache” vs “cached”):
~12x
Neural Networks Parallelization Speedup
tions
irec
ure D
t

Fu

d

G

Forwar
oing
Lessons Learned
Linear scale continues to be achieved with
parameter averaging variations
Tuning is critical
Need to be good at selecting a learning rate
Future Directions
Adagrad (SGD Adaptive Learning Rates)
Parallel Quasi-Newton Methods
L-BFGS
Conjugate Gradient

More Neural Network Learning Refinement
Training progressively larger networks
Github
IterativeReduce
https://github.com/emsixteeen/IterativeReduce

Metronome
https://github.com/jpatanooga/Metronome
Unit Testing and IRUnit
Simulates the IterativeReduce parallel framework
Uses the same app.properties file that YARN applications do

Examples
https://github.com/jpatanooga/Metronome/blob/master/src/
test/java/tv/floe/metronome/linearregression/iterativereduce/
TestSimulateLinearRegressionIterativeReduce.java
https://github.com/jpatanooga/KnittingBoar/blob/master/
src/test/java/com/cloudera/knittingboar/sgd/iterativereduce/
TestKnittingBoar_IRUnitSim.java

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