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- Participant will use his/her own laptop for this part
- We will provide a VM with everything pre-installed in it through Nebula.
TODO: Rob will talk to Doug for this if we can spawn 50 VMs on Nebula for the tutorial session. (DONE) We will get 50 VMs on Nebula.- TODO: Order 50+ flash drive for back up that will contain the VMs
- TODO: Create a VM with everything installed in it and take a snapshot which will then be deployed within Nebula. Approx. time required - 2 days
- TODO: Make a list of all softwares required and the directory structure for the tutorial
- TODO: Not sure of Jetstream yet.
- Provide clear instructions as how to access VMs in Nebula with proper credentials.
- TODO: Clear Instruction of how to access the VMs (e.g., through ssh), for different OSes.
- (Before tutorial - wiki pages with clear instructions) Installs Python/R/MATLAB/cURL to use BD Service along with the library required in case any one interested in using the BD services in future.
- TODO: Create wiki pages with clear instructions
- We will provide a VM with everything pre-installed in it through Nebula.
- Demonstration of use of BD Fiddle
- Sign up for Brown Dog Service
- Obtain a key/token using curl or Postman or use of IPython notebook
- Use token and bd fiddle interface to obtain to see BD in action.
- Copy paste the python code snippet and use it the application to be explained next.
- TODO: Create a document for the demo with step-by-step screenshots
- TODO: Fix the CORS error for file url option (I think it is a known issue)
- Create an applications using BD services
Three applications:- Problem 1 : Given a collection of images with text embedded in it
(or scanned handwritten documents image), try to search images based on its content. (Emphasizes on extraction on unstructured data, indexing and content-based retrieval)- One can upload images from local directory to obtain images or use external web service.
- TODO: Create an example dataset with images
- TODO: Provide a code snippet of using externel service to obtain images. e.g. Flicker API.
- This will only be provided as an example and will not be used for the rest of the code.
- Let the participant use the python library of BD to obtain key/token and submit request to BD-API gateway
- TODO: Provide the link to the current BD REST API and create a document/wiki page showing step-by-step screenshots of obtaining a key/token using python library.
- TODO: Write a Python script that will serve as a stub for the BD client
- The participant will fill in the code to BD REST API call to submit their requests.
- Make sure OCR and face extractor are running before starting the demo
- Make sure the Elasticsearch is started before the example files are submitted to BD service
- TODO: Provide Instructions to start Elasticsearch and start a webclient to it for visualization.
- Make sure the cluster name in the config.yml differs for each participant.
- TODO: Provide Instructions to start Elasticsearch and start a webclient to it for visualization.
- Once technical metadata is obtained from BD, index it tags and technical metadata in an locally running Elasticsearch.
- TODO: Write a python script that will index the technical metadata in ES
- Search for the image using ES query
- TODO: Provide ES query for search
- One can upload images from local directory to obtain images or use external web service.
- Problem 2 : Given a collection of text files from a survey or reviews for a book/movie, use sentiment analysis extractor to calculate the sentiment value for each file and group similar values together. (Emphasizes on extraction on unstructured data and useful analysis )
- A collection of text files with reviews
- TODO: Obtain an examples dataset from the web.
- Let the participant use the python library of BD to obtain key/token and submit request to BD-API gateway
- TODO: Provide the link to the current BD REST API and create a document/wiki page showing step-by-step screenshots of obtaining a key/token using python library.
- TODO: Write a Python script that will serve as a stub for the BD client
- The participant will fill in the code to BD REST API call to submit their requests.
- Make sure the Sentiment Analysis extractor is running
- Saves the results for each text file in a single file with corresponding values
- TODO: Provide code for this in stub script
- Create separate folders and move the file based on the sentiment value
- TODO: Provide a code that will do the above action in the stub
- (Optional) Index text files along with the sentiment values and use ES visualization tool to search for documents with sentiment value less than some number.
Tried to see Yelp API, IMDB API to obtain reviews (???) or use Twitter API (??) to pull some reviews
- A collection of text files with reviews
- Problem 3: Use BD conversion to convert a collection of images/ps/odp files to png/pdf/ppt. This will demonstrates that if you have a directory with files in old file formats, just use BD to get it all converted. (Emphasies on conversion)
- TODO: Provide a Python script for this and let Participant use python library to use the BD service
- Problem 4: Given a collection of *.xls files, obtain some results based on some columns value. (Think) (Emphasizes on extraction and analysis on scientific data)
- Convert *.xls file to *.csv using conversion API
- use extraction API to extract columns from the file and
- Perform some analysis and add to the technical metadata
- TODO: Write an extractor/converter for this problem
CSV files (Ameriflux), use BD for some gap-filing on the files and return result.- Think of a R client for BD. Will be too complicated?? Talk to Rob/Max for any toy example so that users with R experience can use BD service.
(PeCAn??) Think of a MATLAB clientWant to build a Web application on top of BD, (Similar to what Marcus build??)Use BD convert to convert a collection of images with old format to png or pdf. convert odp/odt to ppt/doc
- Problem 1 : Given a collection of images with text embedded in it
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