Find Jobs
Hire Freelancers

Hadoop Project -- 2

₹1500-12500 INR

Closed
Posted almost 3 years ago

₹1500-12500 INR

Paid on delivery
On the hadoop cluster located at [login to view URL], in HDFS, is a directory called /share/spoilers. This directory contains 25000 text files containing "spoiler logs" for a randomized version of The Legend of Zelda: A Link to the Past. Yes, I am a huge nerd. As before, in the "Light World" section, you might see: "Graveyard Ledge:14952": "ProgressiveSword:14952", This means that the location called "Graveyard Ledge" has the item "ProgressiveSword". Each of these sections is labeled by its region. The region, therefore, of the previous item, is "Light World". Your task for this project is to create a Naive Bayes classifier for Hadoop using Spark Machine Learning to predict the region that houses the "PegasusBoots" item. Each file will provide one example for the classifier. You should, before attempting to train the classifier, extract the following features from each file: HookshotLocation: The region that houses the "Hookshot" item. PearlLocation: The region that houses the "MoonPearl" item. MirrorLocation: The region that houses the "MagicMirror" item. FireLocation: The region that houses the "FireRod" item. CaneLocation: The region that houses the "CaneOfSomaria" item. HammerLocation: The region that houses the "Hammer" item. FlipperLocation: The region that houses the "Flippers" item. LWGloves: The number of "ProgressiveGlove" items in the "Light World" region. EasternGloves: The number of "ProgressiveGlove" items in the "Eastern Palace" region. DesertGloves: The number of "ProgressiveGlove" items in the "Desert Palace" region. DMGloves: The number of "ProgressiveGlove" items in the "Death Mountain" region. HeraGloves: The number of "ProgressiveGlove" items in the "Tower of Hera" region. DWGloves: The number of "ProgressiveGlove" items in the "Dark World" region. DarkGloves: The number of "ProgressiveGlove" items in the "Dark Palace" region. SwampGloves: The number of "ProgressiveGlove" items in the "Swamp Palace" region. SkullGloves: The number of "ProgressiveGlove" items in the "Skull Woods" region. ThievesGloves: The number of "ProgressiveGlove" items in the "Thieves Town" region. BootsLocation (Class Value): The region that houses the "PegasusBoots" item. *Note: "Castle Tower", "Ice Palace", "Misery Mire", "Turtle Rock", and "Ganons Tower" cannot contain a glove. The files are in JSON format, so you will either need to get a way to parse JSON, or simply read the relevant lines from each file. You will need to produce the attributes listed above from the spoiler files on the Hadoop cluster. In the end, I should be able to use your classifier to predict the boots locations for rows that are unlabeled. You will need to convert the categorical values in each of these to integers in order to make it work with spark's machine learning library. Provide any code you used, as well as the file containing the model you built using spark ML.
Project ID: 30088596

About the project

2 proposals
Remote project
Active 3 yrs ago

Looking to make some money?

Benefits of bidding on Freelancer

Set your budget and timeframe
Get paid for your work
Outline your proposal
It's free to sign up and bid on jobs
2 freelancers are bidding on average ₹12,250 INR for this job
User Avatar
Hi, I have already completed this assignment and the guy got 1900 points out of 2000. Regards, Ritesh
₹12,000 INR in 1 day
5.0 (1 review)
0.7
0.7
User Avatar
Hello there, We have read your requirements. We will complete this in your time. We have 10+ years experience in Software Architecture Hadoop, Apache Hadoop and development services. We have excellent experienced team who will work on it. Let me know when we start the work. Looking forward from you. Thanks
₹12,500 INR in 10 days
0.0 (0 reviews)
0.0
0.0

About the client

Flag of INDIA
Hisar, India
5.0
8
Payment method verified
Member since May 5, 2011

Client Verification

Thanks! We’ve emailed you a link to claim your free credit.
Something went wrong while sending your email. Please try again.
Registered Users Total Jobs Posted
Freelancer ® is a registered Trademark of Freelancer Technology Pty Limited (ACN 142 189 759)
Copyright © 2024 Freelancer Technology Pty Limited (ACN 142 189 759)
Loading preview
Permission granted for Geolocation.
Your login session has expired and you have been logged out. Please log in again.