-
Notifications
You must be signed in to change notification settings - Fork 3
/
Copy pathREADME.yml
80 lines (80 loc) · 3.75 KB
/
README.yml
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
---
owner:
hid: 224
name: Rawat, Neha
url: https://github.com/bigdata-i523/hid224
paper1:
abstract: >
The rise of Big Data in the field of Hospitality
though recent, is by no means temporary. The hotel
industry is one which deals with millions of customers
on a day-to-day basis and generates a plethora of customer
data through such interactions. It is also the sector which
depends the most on customer loyalty, and thus profits greatly
through the analytical insights that Big Data has to offer.
Keeping this is mind, hotels today, whether they are big chains
or small independent establishments, are using data generated
internally and on the web to develop strategies for better
customer satisfaction, marketing effectiveness, yield management
and operational efficiency.
author:
- Rawat, Neha
chapter: Business
hid:
- 224
status: Nov 3 17 100%
title: Big Data Applications in the Hospitality Sector
url: https://github.com/bigdata-i523/hid224/blob/master/paper1/report.tex
paper2:
review: Nov 6 2017
abstract: >
Efficient management and utilization of energy and other
utilities is the need of the hour. The plethora of real-time
data generated during day-to-day operational activities can
be used to detect consumption patterns and predict outages,
shortages and surges in power usage, while simultaneously
improving the use of renewable resources as sustainable
alternatives. Intelligent big data analytics can help the
energy and utilities sector by reducing costs through devising
efficient operational strategies, becoming more
self-sufficient and productive in their performance and
improving customer satisfaction and interaction by making
valuable suggestions to the consumers on how to use their
resources better.
author:
- Rawat, Neha
chapter: Energy
hid:
- 224
status: Nov 6 17 100%
title: Big Data Applications in the Energy and Utilities Sector
url: https://github.com/bigdata-i523/hid224/blob/master/paper2/report.tex
project:
abstract: >
With the increase in internet traffic, threats on the network
have also increased. Denial-of-service attacks are cyber
attacks wherein a perpetrator, due to any kind of malicious
intent, tries to make a resource on the network unavailable
to its intended users and carries it out by swamping the
system or resource with excess requests in order to overload
it and prevent users from accessing it. A much more dangerous
variety of such an attack is if it is distributed i.e. coming
from various sources. Big Data analytics, however, can be
used to detect such attacks by having the ability to store
the voluminous logs of such attacks and using the data and
machine learning techniques to design an anomaly detection
system (using a classification model) to detect and prevent
these attacks. This project wil aim to explore such
classification models, design and train the most optimum
model and display its effects using a DDoS logs dataset.
author:
- Rawat, Neha
hid:
- 224
status: Dec 04 17 100%
title: >
Big Data Analytics in Detection of
DDoS (Distributed Denial-of-Service) attacks
type: project
url: https://github.com/bigdata-i523/hid224/blob/master/project/report.tex
chapter: Security