Online Sensex Graph System
ABSTRACT:
Continuous
queries are used to monitor changes to time varying data and to provide results
useful for online decision making. Typically a user desires to obtain the value
of some aggregation function over distributed data items, for example, to know
value of portfolio for a client; or the AVG of temperatures sensed by a set of
sensors. In these queries a client specifies a coherency requirement as part of
the query. We present a low-cost, scalable technique to answer continuous
aggregation queries using a network of aggregators of dynamic data items. In
such a network of data aggregators, each data aggregator serves a set of data
items at specific coherencies. Just as various fragments of a dynamic web-page
are served by one or more nodes of a content distribution network, our
technique involves decomposing a client query into sub-queries and executing
sub-queries on judiciously chosen data aggregators with their individual
sub-query incoherency bounds. We provide a technique for getting the optimal
set of sub-queries with their incoherency bounds which satisfies client query’s
coherency requirement with least number of refresh messages sent from
aggregators to the client. For estimating the number of refresh messages, we
build a query cost model which can be used to estimate the number of messages
required to satisfy the client specified incoherency bound. Performance results
using real-world traces show that our cost based query planning leads to
queries being executed using less than one third the number of messages
required by existing schemes.
Existing
System:
Many
data intensive applications delivered over the Web suffer from performance and
scalability issues. Content distribution networks (CDNs) solved the problem for
static content using caches at the edge nodes of the networks. CDNs continue to
evolve to serve more and more dynamic applications. The static fragments are
served from the local caches whereas dynamic fragments are created either by
using the cached data or by fetching the data items from the origin data
sources. One important question for satisfying client requests through a
network of nodes is how to select the best node(s) to satisfy the request. For
static pages content requested, proximity to the client and load on the nodes
are the parameters generally used to select the appropriate node.
Disadvantage:
- For
data item which needs to be refreshed at an incoherency.
- The
exact data value at the corresponding data source need not be reported as long
as the query result satisfies user specified accuracy requirements.
Proposed System:
Continuous queries are used to monitor changes to time varying data
and to provide results useful for online decision making. We present a
low-cost, scalable technique to answer continuous aggregation queries using a
content distribution network of dynamic data items.
Advantage:
- It saves the time and the user spending low cost.
- A continuous query cost model which can be used to
estimate the number of messages required to satisfy the client specified
incoherency bound.
- We present to
implementations of Continuous Aggregation in optimized query.
MODULES
1. Security Module
2. Flow chat Module
3. Update Module
4. Client/Server Module
Security Module:
This module
is used to help the user to provide the security of access. Because once the
user to logout or leave our account automatically user password is changed and
server to send the password in our mail ID. Whenever the user to logout the
account automatically the security key is changed based on the random function.
Flow Chat Module:
This module
is used to help the user to view the BSE and NSE value in bar flow chat based
on the date. This chat to display the aggregated value based on the companies
sharing values continuously. The companies value is changed automatically chat
value is changed.
Update Module:
This module
is used to help the user to view the BSE and NSE value to update in every
minute. So the user waiting time is reduced and sees the updated value in every
minute. Then the server, set the time when our Chart values have been updating.
Client/Server Module:
This module
is used to help the client and server interaction to the database. This module
is used to dynamically create the table based on the server entering value.
These values are assigning to the chat x and y position and display the client.
These values are changed in dynamically based on the server entering values.
SYSTEM
SPECIFICATION
Hardware Requirements:
•
System : Pentium IV 2.4 GHz.
•
Hard Disk : 40 GB.
•
Floppy Drive : 1.44 Mb.
•
Monitor : 14’ Colour Monitor.
•
Mouse : Optical Mouse.
•
Ram : 512 Mb.
•
Keyboard : 101 Keyboard.
Software Requirements:
•
Operating system : Windows XP.
•
Coding Language : ASP.Net with C# (SP1)
•
Data Base : SQL Server 2005.
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