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id  Vol-3194/paper73
wikidataid  Q117345032→Q117345032
title  A Research on Data Lakes and their Integration Challenges
pdfUrl  https://ceur-ws.org/Vol-3194/paper73.pdf
dblpUrl  https://dblp.org/rec/conf/sebd/Piantella22
volume  Vol-3194→Vol-3194
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A Research on Data Lakes and their Integration Challenges

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A Research on Data Lakes and their Integration
Challenges
Davide Piantella
Politecnico di Milano – Dipartimento di Elettronica, Informazione e Bioingegneria
Via G. Ponzio 34/5, 20133 Milano, Italy


                                      Abstract
                                      With the advent of IoT and big data, we observed a huge variety of types of data (e.g. semi-structured
                                      data, conversational data, sensor data, photos, and videos) and sources (e.g. social networks, open data,
                                      webpages, and sensors). Data integration addresses the problem of reconciling data from different sources,
                                      with inconsistent schemata and formats, and possibly conflicting values. In this paper, I describe my PhD
                                      research topic: the enhancement of data integration, discovering new techniques capable of handling
                                      the peculiar characteristics of big data, and the study of novel frameworks and logical architectures to
                                      support the integration process.

                                      Keywords
                                      Data integration, Big data, Data lakes




1. Introduction
In this paper, I will describe my PhD research, the contributions we developed until now, and the
research topics we plan to analyze in my last year as a PhD student. The paper is organized as
follows: Section 1 contains an introduction to the research area and an overview of the related
challenges, Section 2 describes our contributions, and Section 3 outlines possible future works.

1.1. Big data integration
The data integration process has the goal of aligning different data sources to provide uniform
access to data, possibly addressing sources with different database schemata, different data
formats, semantic and representation ambiguity, and data inconsistency [1]. Nowadays, the
extensive use of user-generated content, along with the Internet Of Things and the digital
transformation of industries, has made available a huge mass of data. Since the value of
data explodes when it can be analyzed after having been linked and fused with other data,
addressing the big data integration challenge is critical to realize the promises of the big data
phenomenon [2].
   The initial focus of data integration was on structured (typically table-based) data, and it had
traditionally three main phases: the first phase is schema alignment, with the purpose of aligning
different database schemata and understanding which attributes have the same semantics; the
SEBD 2022: The 30th Italian Symposium on Advanced Database Systems, June 19-22, 2022, Tirrenia (PI), Italy
$ davide.piantella@polimi.it (D. Piantella)
� 0000-0003-1542-0326 (D. Piantella)
                                    © 2022 Copyright for this paper by its authors. Use permitted under Creative Commons License Attribution 4.0 International (CC BY 4.0).
 CEUR
 Workshop
 Proceedings
               http://ceur-ws.org
               ISSN 1613-0073
                                    CEUR Workshop Proceedings (CEUR-WS.org)
�second phase is entity linkage, in which a given set of records is partitioned in such a way
that each partition corresponds to a distinct real-world entity; finally, through data fusion we
resolve all possible conflicts that can arise when different sources provide different values for
the same attribute of an entity. Sources can provide conflicting values for many reasons (e.g.
errors, outdated information, mistyping, etc.) and different possible reconciliation methods can
be exploited (e.g. keep all values, choose a random one to store, compute the average, keep the
most recent, etc.), each of which may be suitable or improper depending on the specific domain
and usage context [3].
   Nowadays, the needs and characteristics of big data, with many other data kinds and formats
such as texts, social media data, images, and videos, have introduced new challenges such
as heterogeneity and data quality. The heterogeneity of formats is reflected in how data is
structured: we can identify three main data categories: structured data (e.g. relational databases),
semi-structured data (e.g. XML documents), and unstructured data (e.g. natural language texts
and images). In this context, with also the increasing usage of NoSQL databases that are
capable of handling document-based data and graphs [4], schema alignment is very hard or
even impossible, since a schema description may not be present at all.
   With semi-structured or unstructured data, especially if we have to integrate sources that
use different data formats, also the entity linkage problem becomes really difficult to solve
since we often cannot leverage any information from database schemata. There are techniques
(such as [5]) able to reduce the computational complexity of the entity linkage phase, exploiting
statistics computed directly from the data to better describe data sources. Moreover, format
heterogeneity introduces the need for data extraction, to be performed before the three classical
steps of data integration [6].
   In general, the problems encountered during these steps are not completely solved, and are
often aggravated by the big data context: we can find much more incomplete, dirty, and outdated
information than before, therefore new data integration and data cleaning techniques have to
be developed, with the purpose of reducing noise and errors in the values provided by sources.

1.2. Data lakes
An emerging trend is to use data lakes to collect a huge amount of data and documents, exploiting
the usage of metadata and modern storage techniques. Data lakes are schema-less, thus they
can be used to store raw data potentially in every format (e.g. relational data, texts, logs, images,
external APIs, streaming data, etc.), without any preprocessing.
   This is made possible by a complex functional architecture (shown in Figure 1), composed
of several components which are responsible, among others, for data cleaning, data discovery,
data integration, and data catalog processes [7]. Many approaches can be exploited to ensure
proper integration of data and concepts, often leveraging and refining ontologies [8] to create a
mapping between concepts that are expressed in different datasets ingested by the data lake.
   All the components of a data lake usually leverage machine learning techniques and profiling
tools to extract metadata useful for describing data and creating connections among datasets.
The stored data is continuously analyzed, in order to discover new information leveraging the
novel data that is loaded into the data lake, thus refining the inherent latent knowledge.
�   The data lake paradigm was theorized back in 2011 and, even if there are some implementa-
tions [9, 10], given its peculiarities and complex architecture there are many research challenges
still to be solved [11].
Data Sources

                                                                     Raw            Refined            Trusted
   Tables                                               Data         Data            Data               Data           Query
                                                      Ingestion                                                      processing
  Images



                                Ingestion Interface




                                                                                                                                     User interface
  Videos
                   Raw Data                                                    Data           Data        Data
                                                                   Metadata
                                                                              Catalog      discovery   Integration                                    Query & Results
   Logs

   Texts
                                                      Metadata                                                           Data                                             Data
   APIs                                               Extraction                                                     Visualization
                                                                     Data             Data                                                                              Consumer
                                                                                                       Security
     ...                                                            Quality         Analytics




Figure 1: Common architecture of a data lake.




2. Contributions
In this Section we will present our contributions to open challenges regarding the topics
described in Section 1. More specifically, Section 2.1 describes the multi-truth data fusion
problem and presents our approach to solve it, Section 2.2 shows how we exploited ontology
reasoning to analyze unstructured data. Both these approaches can be used as part of the data
integration and data discovery components of a data lake.
   We are also contributing to two research projects: (i) INAIL BRiC RECKOn, trying to reduce
the number of work accidents by analyzing historical reports and real-time data; (ii) HBD Health
Big Data1 , developing an infrastructure to easily share research data among different medical
institutes. The contributions presented, when possible, leverage these research projects as case
studies.

2.1. Multi-truth data fusion
With the abundance of data sources, the data fusion step must necessarily be carried out
automatically, without any human support. In this context is born the problem of multi-truth
data fusion, related to the cardinality of the values composing the truth: examples being the
cases of work accidents, where more than one worker might be involved, or of data coming
from multiple sensors at different sampling rates, or of patients having more than one pathology.
The main difficulty of the multi-truth context is that, if two data sources provide different values
for the same data object, we cannot conclude that they necessarily oppose each other as if we
were in a single-truth context. This is particularly challenging if neither the true values nor
their cardinality is known a priori, and therefore we have no clue on how the values provided
by the sources are interrelated.
     1
         https://www.alleanzacontroilcancro.it/progetti/health-big-data/
�   To tackle this interesting problem, we developed a novel domain-aware Bayesian algorithm
for data fusion, designed for the multi-truth case, which models the trustworthiness of sources
by taking into account a new definition of their authority. Our algorithm also provides a
value-reconciliation step, to group together the values that have been recognized as variants
representing the same real-world entity. Our approach is described in a paper submitted to an
international journal, currently under reviewing process.
   In the context of the RECKOn project, we have also defined a framework handling the
integration of context-aware real-time sensor data, historical data, and external services, to
determine if the current state is a possible dangerous working situation. We have published
this framework in [12].

2.2. Ontology reasoning
We can also exploit ontologies to resolve the heterogeneity of data formats, semantics, and
representations, within the data integration process. In the RECKOn project, we have applied
modern techniques of ontology reasoning and concept extraction to better analyze and compare
the official government reports of past work injuries, which are available only in Italian natural
language texts. We published in [13] a new pipeline for the extraction of medical concepts from
Italian texts, leveraging NLP operations and UMLS as reference ontology.
   This methodology is also applicable to the analysis of Electronic Health Records (EHR), which
is a comprehensive, cross-institutional, and longitudinal collection of healthcare data, trying
to group the entire clinical life of a patient [14]. EHR can be categorized into structured (e.g.
personal information, diagnosis codes, laboratory results, etc.) and unstructured (e.g. clinical
notes, discharge summaries, etc.), the latter being the most complete and thus complex to
inspect. Using our pipeline, we can automatically analyze and compare unstructured EHR,
extracting valuable knowledge that can be exploited, for example, in patient-modeling and
clinical decision support systems.


3. Future works
Many works [15, 16, 17] show that a key element to maximize the potentialities of the data
lake paradigm is the capability to properly handle metadata. We are currently exploring new
techniques to extract metadata from heterogeneous sources, to automatically and efficiently
discover relations among data, and build data catalogs.
   Another interesting challenge is the continuous integration and analysis needed in the data
lake paradigm: when new input data become available, it could serve as a connection among data
that were previously unlinked. As an example, consider having in a data lake a dataset regarding
the air pollution level of all the major cities of Italy. We can assume that this dataset is simply
a table with a few attributes: city, date, and amount of PM10. We now provide the data lake
with another dataset regarding the quality of public water, which has the following attributes:
city, province, region, and quality. As a result, the data lake should be able to automatically
link the common data at different levels, discovering newly available information such as the
average amount of PM10 for each province and region, and a possible correlation between air
pollution and public water quality. Moreover, it should leverage the hierarchical structure of
�Italian regions, provinces, and cities in any other stored dataset. The concepts of continuous
and real-time data integration have already been studied in the context of data warehouses [18],
but the paradigm shift introduced by data lakes brings this challenge to a completely different
level, still to be explored.


Acknowledgement
I wish to acknowledge my advisor Prof. Tanca and my fellow colleagues at TISLab for their
massive and experienced support.


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