[ 
https://issues.apache.org/jira/browse/COMDEV-472?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel
 ]

Bertty Contreras updated COMDEV-472:
------------------------------------
    Labels: full-time gsoc gsoc2022 machine_learning mentor  (was: gsoc 
gsoc2022 machine_learning mentor)

> Apache Wayang(Incubating): AI Data Generator for Cost model Calibration
> -----------------------------------------------------------------------
>
>                 Key: COMDEV-472
>                 URL: https://issues.apache.org/jira/browse/COMDEV-472
>             Project: Community Development
>          Issue Type: New Feature
>          Components: GSoC/Mentoring ideas
>            Reporter: Bertty Contreras
>            Priority: Critical
>              Labels: full-time, gsoc, gsoc2022, machine_learning, mentor
>   Original Estimate: 350h
>  Remaining Estimate: 350h
>
> *Synopsis*
> The current Apache Wayang (Incubating) uses a cost model to select the right 
> set of platforms while optimizing the query plans. Nevertheless, the accuracy 
> of picking the correct configuration depends on the cost model's quality; The 
> idea is to build an AI pipeline capable of generating data for the current 
> profiler of Apache Wayang (Incubating), where another AI component is the 
> main component for the calibration process.
>  
> *Benefits to Community*
> The benefits for the community will be the option of having a well-calibrated 
> cost model for their environments with low human effort. Being cost modelling 
> one of the most difficult tasks, having such an AI pipeline will enrich 
> users’ experience when using Apache Wayang (Incubating).
>  
> *Deliverables*
> The delivery expected is an adaptation of the paper "Expand your Training 
> Limits! Generating Training Data for ML-based Data Management" [1], where the 
> authors assume an ML-Cost-Model, but in this case, the idea needs 
> modifications to run in the current setup of Apache Wayang(Incubating).
>  
> The expected steps are the following:
>  * Understand the paper [1]
>  * Get Into the current process of the profiler of Apache Wayang (Incubating)
>  * Design the AI profile pipeline, based on [1] and the current profiler
>  * Discuss ideas on how to integrate the designed AI pipeline into Apache 
> Wayang(Incubating)
>  * Implement the AI-DataGenerator Component
>  
> *Related Work*
> [1] [Expand your Training Limits! Generating Training Data for ML-based Data 
> Management|https://www.agora-ecosystem.com/publications_pdf/expand_training_limits.pdf]
> [2] [RHEEMix in the data jungle: a cost-based optimizer for cross-platform 
> systems]([https://wayang.apache.org/assets/pdf/paper/journal_vldb.pdf])
>  
> *Biographical Information*
>  
> Bertty Contreras-Rojas is a Senior Software Engineer at Databloom Inc. He is 
> one of the PPMC of Apache Wayang(Incubating). He has many years of experience 
> developing intensive processing data systems for several industries, such as 
> banking systems. He was a research engineer at the Qatar Computing Research 
> Institute, where he was responsible for developing the declarative query 
> engine for Rheem and adding new underlying platforms to Rheem.
>  
> Rodrigo Pardo-Meza is a Senior Software Engineer at Databloom Inc. He is one 
> of the PPMC of Apache Wayang(Incubating). He has many years of experience 
> developing applications that support Big Data processing, with experience 
> implementing ETL processes over distributed systems to optimize inventories 
> in supply chains. He was a research engineer at the Qatar Computing Research 
> Institute, where he specialized in human interface interaction with big data 
> analytics. During this time, he co-develop an ML-based cross-platform query 
> optimizer.
>  
> Jorge Quiané is the head of the Big Data Systems research group at the Berlin 
> Institute for the Foundations of Learning and Data (BIFOLD) and a Principal 
> Researcher at DIMA (TU Berlin). He also acts as the Scientific Coordinator of 
> the IAM group at the German Research Center for ArtificialIntelligence 
> (DFKI). His current research is in the broad area of big data: mainly in 
> federated data analytics, scalable data infrastructures, and distributed 
> query processing. He has published numerous research papers on data 
> management and novel system architectures. He has recently been honoured with 
> the 2022 ACM SIGMOD Research Highlight Award and the Best Paper Award at ICDE 
> 2021 for his work on “EfficientControl Flow in Dataflow Systems”. He holds 
> five patents in core database areas and on machine learning. Earlier in his 
> career, he was a Senior Scientist at the Qatar Computing Research Institute 
> (QCRI) and a Postdoctoral Researcher at Saarland University. He obtained his 
> PhD in computer science from INRIA (Nantes University).



--
This message was sent by Atlassian Jira
(v8.20.1#820001)

---------------------------------------------------------------------
To unsubscribe, e-mail: dev-unsubscr...@community.apache.org
For additional commands, e-mail: dev-h...@community.apache.org

Reply via email to