introduce to predictionio
Post on 21-Apr-2017
319 Views
Preview:
TRANSCRIPT
Prediction IO2016/06/01 (Wed.) @ Exma-Square MeetingWeiYuan(@v123582)
Outline § the future of Picklete§ Recommendation§ PredcitonIO§ how to start ?§ how to use ?
2
the future of Picklete
4
Picklete
5
Picklete
Recommendation
Recommendation § Personalized recommendation
§ Collaborative filtering
7
PredcitonIO
ML as a ServicesIntegrate everything of ML together nicely and move from prototyping to production
10
PredcitonIO Open Source
§ open source framework§ for developers and data
scientists§ querying via restful API
Machine Learning
§ event collection§ algorithms deployment§ evaluation
11
Overview
12
DASE§ Data Sources§ Algorithm§ Serving§ Evaluation
13
DASE§ Data Sources§ Algorithm§ Serving§ Evaluation
14
Arch.§ Spark§ Mlib§ HBase§ HDFS§ Hadoop
15
how to start ?
Prerequisites § Apache Hadoop 2.4.0§ Apache Spark 1.3.0 for Hadoop 2.4§ Java SE Development Kit 7§ MySQL 5.1
17
Installation
§ Quick Install
§ status
12$ bash -c "$(curl -s https://install.prediction.io/install.sh)"$ PATH=$PATH:/home/yourname/PredictionIO/bin; export PATH
12345
$ pio status
### Return:…[INFO] [Console$] Your system is all ready to go.18
how to use ?
Step 1
§ Run PredictionIO1 $ pio eventserver &
20
Step 2
§ Create a new Engine from an Engine Template
use Universal Recommender for example
1 $ pio template get <template-repo-path> ./<your-app-directory>
21
Step 3
§ Generate an App ID and Access Key1234567
$ cd MyRecommendation$ pio app new MyRecommendation
### Return:…[INFO] [App$] ID: 1 [INFO] [App$] Access Key: ...
22
Step 4
§ Collecting Data
§ Sample Data
12$ curl <sample_data> --create-dirs -o data/<sample_data>$ python data/import_eventserver.py --access_key <access-key>
./data/<sample_data>1234
0::2::30::3::13::9::46::9::1
23
Step 5
§ Deploy the Engine as a Service./Engine.json1234567
… "datasource": {"params" : {
"appName": MyRecommendation}
},…
24
Step 5
§ Bulid and Training the Predictive Model123456789
$ pio build### Return:…[INFO] [Console$] Your engine is ready for training.
$ pio train### Return:…[INFO] [CoreWorkflow$] Training completed successfully.25
Step 5
§ Bulid and Training the Predictive Model12345
$ pio deploy### Return:…[INFO] [HttpListener] Bound to /0.0.0.0:8000 [INFO] [MasterActor] Bind successful. Ready to serve.
26
Step 6
§ Use the Engine123456789
$ curl -d '{ "user": "1", "num": 2 }'/ http://localhost:8000/queries.json
### Return:{ "itemScores”: [
{ "item":"22", "score":4.072304374729956},{ "item":"62", "score":4.058482414005789},
]}27
Thanks for listening.2016/06/01 (Wed.) @ Exma-SquareWeiYuan(@v123582)v123582.github.io
top related