Add free shipping to your order with these great books
Practical Weak Supervision : Doing More with Less Data - Amit Bahree
eTextbook alternate format product

Instant online reading.
Go digital and save!

Practical Weak Supervision

Doing More with Less Data

By: Amit Bahree, Wee Hyong Tok, Senja Filipi

Paperback | 15 October 2021

At a Glance

Paperback


RRP $171.00

$82.95

51%OFF

or 4 interest-free payments of $20.74 with

 or 
In Stock and Aims to ship in 1-2 business days

Build products using deep learning, weakly supervised learning, and natural language processing without collecting millions of training records.

This practical book explains how and provides a how-to guide for actually shipping deep learning models--since most of these projects never leave the lab.

Deep networks have enabled new applications using unstructured data to proliferate, but much of the work means collecting millions of records as well as labeled datasets.

Author Russell Jurney from Data Syndrome helps machine-learning engineers, software engineers, deep learning engineers, and data scientists learn practical applications using several weakly supervised learning methods.

You'll explore:

  • Semi-supervised learning: Combine a small amount of labeled data with a large amount of unlabeled data to train an improved final model
  • Transfer learning: Re-train existing models from a related domain using training data from the problem domain
  • Distant supervision: Combine low-quality labels from databases and other sources to create high-quality labels for the entire dataset
  • Model versioning and management: start with a small labeled dataset and create a production grade model from concept through deployment

More in Operational Research

Project Management : Creating Sustainable Value - Stewart R Clegg
Operations Management : 10th Edition - Alistair Brandon-Jones

RRP $145.95

$117.35

20%
OFF
Basic Mathematics for Economists - Mike Rosser

RRP $135.00

$125.40

Basic Mathematics for Economists - Mike Rosser
Risk Treatment : The FERMA-rimap Series - Maria Isabel Martinez  Torre-Enciso