course project ideas yanlei diao university of massachusetts amherst

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Course Project Ideas Yanlei Diao University of Massachusetts Amherst

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Course Project Ideas

Yanlei DiaoUniversity of Massachusetts

Amherst

Yanlei Diao, University of Massachusetts Amherst 04/18/23

New Directions for DB Research

Sensor data: new architecture

XML: new data model

Streams: new execution model

Data quality and lineage: new services

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Querying in Sensor Networks

Acoustic stream

• Store data locally at sensors and push queries into the sensor network– Flash memory energy-

efficiency.– Limited capabilities of sensor

platforms.

Internet

Gateway

Image stream

Flash Memory

Push query to sensors

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Optimize for Flash and Limited RAM

• Flash Memory Constraints– Data cannot be over-written, only

erased– Pages can often only be erased in

blocks (16-64KB)– Unlike magnetic disks, cannot

modify in-place

• Challenges:– Energy: Organize data on flash to

minimize read/write/erase operations

– Memory: Minimize use of memory for flash database.

1. 1. Load block 2. Into Memory

3. Save block back

Eraseblock

Memory

2. Modify in-memory

~16-64 KB

~4-10 KB

Yanlei Diao, University of Massachusetts Amherst 04/18/23

StonesDB: System Operation

Image Retrieval: Return images taken last month with at least

two birds one of which is a bird of type A.

• Identify “best” sensors to forward query.

• Provide hints to reduce search complexity at sensor.

Proxy Cache of Image Summaries

QuickTime™ and aTIFF (Uncompressed) decompressor

are needed to see this picture.

QuickTime™ and aTIFF (Uncompressed) decompressor

are needed to see this picture.

QuickTime™ and aTIFF (Uncompressed) decompressor

are needed to see this picture.

Yanlei Diao, University of Massachusetts Amherst 04/18/23

StonesDB: System Operation

Image Retrieval: Return images taken last month with at least two birds one of which is a bird of type

A.

Query Engine

Partitioned Access Methods

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Research Issues in StonesDB

• Local Database Layer– Reduce updates for indexing and aging.– New cost models for self-tuning sensor databases.– Energy-optimized query processing.– Query processing over aged data.

• Distributed Database Layer– What summaries are relevant to queries?– What remainder queries to send to sensors?– What resolution of summaries to cache?

Yanlei Diao, University of Massachusetts Amherst 04/18/23

XML (Extensible Markup Language)

<bibliography>

<book> <title> Foundations… </title>

<author> Abiteboul </author>

<author> Hull </author>

<author> Vianu </author>

<publisher> Addison Wesley </publisher>

<year> 1995 </year>

</book>

</bibliography>

XML: a tagging mechanism to describe content.

Yanlei Diao, University of Massachusetts Amherst 04/18/23

XML Data Model (Graph)

bookb1

b2

title authorauthor

author

pcdata

Com plete... P rincip les...Cham berlin Bernste in Newcom er

pcdata pcdata pcdata pcdata

publisher

nam e state

CAM organ...

pcdata pcdata

pub pub

db

m kp

#1 #2 #3 #4 #5 #6 #7

#0

book

title

Main structure: ordered, labeled tree

References between node: becoming a graph

Yanlei Diao, University of Massachusetts Amherst 04/18/23

XQuery: XML Query Language

• A declarative language for querying XML data

• XPath: path expressions– Patterns to be matched against an XML graph– /bib/paper[author/lastname=‘Croft’]/title

• FLOWR expressions– Combining matching and restructuring of XML data– For $p in distinct(document("bib.xml")//publisher)

Let $b := document("bib.xml")/book[publisher = $p]

Where count($b) > 100

Order by $p/name

Return $p

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Metadata Management using XML

• File systems for large-scale scientific simulations– File systems: petabytes or even more– Directory tree (metadata): large, can’t fit in memory– Links between files: steps in a simulation, data derivation

• File Searches– all the files generated on Oct 1, 2005– all the files whose name is like ‘*simu*.txt’– all the files that were generated from the file ‘basic-measures.txt’

Build an XML store to manage directory trees!– XML data model– XML Query language– XML Indices

Yanlei Diao, University of Massachusetts Amherst 04/18/23

XML Document Processing

Multi-hierarchical XML markup of text documents– Multi-hierarchies: part-of-speech, page-line – Features in different hierarchies overlap in scope– Need a query language & querying mechanism – References [Nakov et al., 2005; Iacob & Dekhtyar, 2005]

Querying and ranking of XML data– XML fragments returned as results– Fuzzy matches– Ranking of matches– References [Amer-Yahia et al., 2005; Luo et al., 2003]

• Well-defined problems identify your contributions!

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Data Stream Management

Queries, RulesQueries, Rules

Event Specs,Event Specs,

SubscriptionsSubscriptions

Results Results

•Data in motion, unending

•Continuous, long-running queries

•Data-driven execution

Data

Traditional Database

Attr1 Attr2 Attr3Query

Data Stream Processor

•Data at rest

•One-shot or periodic queries

•Query-driven execution

Yanlei Diao, University of Massachusetts Amherst 04/18/23

• XML is becoming the wire format for data• In-network XML processing

– Authentication

– Authorization

– Routing

– Transformation

– Pattern matching

• XPath widely used for in-network XML processing• Applied directly to streaming XML data• Line-speed performance

In-Network XML Processing

Expedite traffic

Enhance security

Real-time monitoring & diagnosis

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Research Issues

Gigabit rate XPath processing– Take one look, process XPath, buffer data for future use if

necessary

– Processing needs to be gigabit rate

– Memory usage needs to be minimized

• Time/space complexity of XPath stream processing– Theoretical analysis for common features of XPath

• Minimizing memory usage of YFilter technolgy– YFilter: state-of-the-art for multi-XPath processing

Yanlei Diao, University of Massachusetts Amherst 04/18/23

RFID Technology

• RFID technology

01.01298.6EF.0A

01.01267.60D.01

04.0768E.001.F0

reader_id,tag_id,timestamp

Yanlei Diao, University of Massachusetts Amherst 04/18/23

RFID Stream Processing

Out of stocks: the number of items of product X on shelf ≤ 3.

Shoplifting: an item was taken out of store without being checked out.<pml > <tag>01.01298.6EF.0A</tag> <time>00129038</time> <location>shelf 2</location> </pml>+

<pml> <tag>01.01298.6EF.0A</tag> <time>02183947</time> <location>exit1</location> </pml>

RFID tag RFID reader

Yanlei Diao, University of Massachusetts Amherst 04/18/23

RFID Processing: Global Tracking

+

<pml> <epc>01.001298.6EF.0A</epc> <ts type=“begin”> <date>…</date> </ts> <entity type=“maker”> <name type=“legal”>X Ltd. </name> </entity> …

<pml> <epc>01.001298.6EF.0A</epc> <ts><date>…</date></ts> <location>…</location> <msr label=“temperature” max=2>90</msr> …

<pml> <epc>01.001298.6EF.0A</epc> <ts><date>…</date></ts> <location>…</location> <msr label=“temperature” max=5>95</msr> …

<pml> <epc>01.001298.6EF.0A</epc> <ts><date>…</date></ts> <location>…</location> <msr label=“temperature” max=2>80</msr> …

<pml> <epc>01.001298.6EF.0A</epc> <ts><date>…</date></ts> <location>…</location> <msr label=“temperature” max=2>85</msr> …

<pml> <epc>01.001298.6EF.0A</epc> <ts type=“end”> <date>…</date></ts> <entity type=“retailer”> <name type=“legal”>CVS </name> </entity> …

Counterfeit drugs: a bottle is accepted at the retailer if it came from a legal manufacturer and followed all necessary steps in the distribution network.

Expired/spoiled drugs: a bottle is accepted at the retailer if it went through the distribution network in less than 3 months and was never exposed to temperature > 96 F.

Missing pallet, expected case, illegally cloned tags…

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Challenges in RFID Management

• Data-Information Mismatch– RFID raw data: (tag id, reader id, timestamp) – Meaningful information: shoplifting, misplaced inventory, out-of-

stocks; expired drugs, spoiled drugs…

• Incomplete, inaccurate data– Readers miss tags– Readers can pick up tags from overlapping areas

• High-volume data – Readers read constantly, from all tags in range, without line-of-sight– Can create up to millions of terabytes of data in a single day

• Low-latency processing– Up-to-the-second information, time-critical actions

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Research Issues

• Real-time event stream processing– Handling duplicate readings/results

– Data cleaning

– Data compression

• Handling incomplete readings– Inferences in event databases

– Inferences over event streams

• Distributed processing– Real time anomaly detection

– Distributed inferences

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Adaptive Sensing of Atmosphere

• Environmental monitoring: real-time processing of huge-volume meteorological data

• Challenges– Large volume but limited bandwidth– Real-time processing– Uncertain data– Data archiving and querying the

history

Sense Sense

Send Send

MergeMerge

Detection

Prediction

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Managing Uncertain Data

• Sources of data uncertainty1)Sensing noise and partial scanning

2)Data compression3)Lossy wireless links

4) Incomplete merging

• Managing uncertain data– Model sources of data uncertainty– Develop uncertainty calculus to

combine the effects of these sources– Augment results with confidence

values

(1) (1)

(2) (2)

(3) (3)

MergeMerge(4)

Tornado Detection

Prediction (confidence?)

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Managing Uncertain Data

• Sources of data uncertainty1)Sensing noise and partial scanning2)Data compression3)Lossy wireless links4) Incomplete merging

• Self diagnosis and tuning– Compare predication at t with

observation at t+1 (no ground truth?!)

– System diagnosis when confidence value is low

– Automatically tune the system

(1) (1)

(2) (2)

(3) (3)

MergeMerge(4)

Tornado Detection

Prediction (confidence?)

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Questions

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Outline

• An outside look: DB Application

• An inside look: Anatomy of DBMS

• Project ideas: DB Application

• Project ideas: DBMS Internals

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Application: UMass CS Pub DB

• UMass Computer Science Publication Database– All papers on professors’ web pages and in their DBLP records– All technical reports

• Search:– Catalog search (author, title, year, conference, etc.)– Text search (using SQL “LIKE”)

• Navigation– Overview of the structure of document collection– Area-based “drill down” and “roll up” with statistics

• Add document• Top hits• Example: http://dbpubs.stanford.edu:8090/aux/index-en.html

• Deliverables: useful software, user-friendly interface

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Manufacturer Supplier DC Retail DC Retail Store

Application: RFID Database

• RFID technology• RFID supply chain

– Locations – Objects

PalletTruck Case

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Application: RFID Database

• RFID technology• RFID Supply chain• Database propagation

– Streams of (reader_id, tag_id, time)– Semantics: reader_id location, tag_id object– Containment

• Location-based, items in a case, cases on a pallet, pallets in a truck…

• Duration of containment

– History of movement: (object, location, time_in, time_out) – Data compression for duplicate readings – Integration with sensors: temperature, location…

• Track and trace queries

Yanlei Diao, University of Massachusetts Amherst 04/18/23

Data Quality

• Closed world assumption: not any more!

• Various sources of data loss1) Sensing noise

2) Data compression

3) Lossy wireless links

4) Incomplete merging

• Probabilistic query processing– Model sources of data loss– Quantify the effect on queries max(), avg(), percentile…– Output query results with confidence level

(1) (1)

(2) (2)

(3) (3)

MergeMerge(4)

Yanlei Diao, University of Massachusetts Amherst 04/18/23

• Some idea on INFOD/data dissemination