talk-data.com talk-data.com

Filter by Source

Select conferences and events

People (138 results)

See all 138 →
Showing 6 results

Activities & events

Title & Speakers Event

PyCon US 2025 is coming to Pittsburgh this May 14–22, and PyData Pittsburgh is thrilled to be part of it! We’re hosting the Hometown Heroes Hatchery track on Saturday, May 17—a half-day event inside the conference celebrating the incredible work of Python developers, researchers, educators, and technologists from across our city. As part of PyCon’s Hatchery initiative, this track will feature presentations and lightning talks that highlight the creativity and impact of Pittsburgh’s Python community.

If you're attending PyCon US 2025, we invite the PyData Pittsburgh community to join us at the Hometown Heroes track—come connect, engage, and help showcase the strength of our local tech scene.

Please note: you must be registered for PyCon US 2025 to attend this event, and all attendees and speakers are responsible for securing their own tickets. You can find registration details for the Conference here:https://us.pycon.org/2025/attend/information/.

HOMETOWN HEROES HATCHERY PROGRAM - May 17th

TALK SCHEDULE:

Decoding Spatial Biology with Python: Multi-Modal Insights into Breast Cancer Progression Time: 01:45 PM - 02:15 PM Speakers: Alex C. Chang, CMU-Pitt (Graduate Student PhD, Computational Biology ) and Brent Schlegel, University of Pittsburgh School of Medicine (Graduate Student PhD, Integrative Systems Biology)

Python has rapidly become a cornerstone of scientific computing, computational biology, and bioinformatics due to its ease of use and scalability for handling large datasets—qualities that are critical in today’s “big data” era of clinical and translational research. As computational resources and data collection methods continue to expand, we are now empowered to ask larger and more clinically relevant questions that enable us to dissect complex biological systems with unprecedented detail. However, this surge in data complexity brings new challenges, from the integration of diverse data modalities to the need for sophisticated analytical methods capable of untangling intricate biological signals from background noise. In this talk, we describe how Python not only meets these challenges but also drives innovation through the development of novel bioinformatics tools like CITEgeist—a case study in harnessing Python’s capabilities for multi-modal spatial transcriptomics. Biological datasets often face challenges of high sparsity and noise. CITEgeist harnesses Python’s robust ecosystem to provide an efficient, scalable pipeline that deconvolutes messy spatial signals into actionable, clinically relevant features.

Exploring Energy Burden in Pittsburgh Neighborhoods with Python Time: 02:30 PM - 03:00 PM Speakers: Ling Almoubayyed, SmithGroup, Inc. (Project Manager) and Husni Almoubayyed, Carnegie Learning

National-level energy studies consistently find that energy burdens are a significant challenge, and that lower-income neighborhoods sometimes end up paying more for energy in cities including Pittsburgh. Using Python, we were able to extract and analyze data on energy consumption in the City of Pittsburgh, along with real-estate and geographic information system (GIS) data to compare trends in energy usage and burden across Pittsburgh neighborhoods, and across different housing types. We present statistical analyses and Python visualizations describing these trends across different features such as housing price, size, and neighborhood.

Bottling Tesla's Solar: A Solar Dashboard with Python Time: 03:15 PM - 03:45 PM Speaker: Christopher Pitstick (Sr. SWE)

Tesla's Powerwall/Inverter solar ecosystem are powerful yet notoriously opaque. For home labbers, extracting meaningful data can be daunting—but not impossible. In this talk, I'll share my journey of developing a custom solar dashboard using Grafana and PyPowerwall, navigating the quirks and closed nature of Tesla's ecosystem along the way. The backend is all Python, so I will demo my server code and dashboard to show how I was able find hundreds of kilowatt hours in lost solar production. In this talk, we'll do a deep dive into the way I altered the Python server code to be able to query multiple inverters at the same time with complex iptable rules. This presentation may conclude with the value of installing solar on your home, and how self-monitoring is a critical component of every nerd's arsenal.

Strategies for Eliciting Structured Ouputs from LLMs Time: 03:50 PM - 03:55 PM Speaker: Utkarsh Tripathi, Solventum (Machine Learning Engineer)

This lightning talk will provide a concise yet comprehensive overview of techniques for extracting structured, predictable outputs from Large Language Models. I will compare and demonstrate multiple state-of-the-art libraries (such as BAML, Instructor, Langchain, SGLang etc. + how they work under the hood), utilize pydantic / dataclass / etc. to get structured outputs. We will explore practical examples of JSON schema enforcement, markdown formatting directives, and template-based approaches that dramatically improve downstream processing capabilities. The presentation will include code snippets and prompt templates that participants can immediately implement in their own projects.

Does Generative AI Know Statistics? Time: 03:55 PM - 04:00 PM Speaker: Louis Luangkesorn, Highmark Health (Lead Data Scientist)

Generative AI has promise to impact many fields of endeavor. But experience has shown that it often has problems with nuance and context. This talk discusses some experiences using Generative AI as an aid in applied analytics and walks through an example that illustrates working around its weaknesses and taking advantage of its capabilities.

Demystifying How Animal Behavior Affects Disease Spread Using Python Time: 04:00 PM - 04:05 PM Speaker: Carolyn Tett, University of Pittsburgh (Research Technician)

Not all individuals contribute equally to disease spread. During COVID-19, social distancing reduced transmission for some, while high-contact individuals increased disease spread. Preventative measures for massive disease outbreaks, however, cannot rely solely on data from rare epidemic events. Instead, disease ecologists study animal models to understand how host behavior theoretically drives disease outbreaks. Tracking animal movement and interactions is essential for identifying transmission-relevant behaviors. In lab experiments, video recordings provide an abundance of behavioral data, now efficiently processed through automation, and coding languages like Python enable large-scale data analysis. The Stephenson Lab at the University of Pittsburgh uses Raspberry Pis to autonomously record guppies infected with an ectoparasite. These parasites transmit primarily through instances of close contact between hosts. Through autonomous video recordings, we generated 1,300 hours of footage—equivalent to 54 consecutive days of observation. Given that each video captures six guppies, manually tracking behavior would take tens of billions of days. Instead, animal tracking software reduces this processing time to a mere few months.

The Many-Colored Functions of Async Python Time: 04:15 PM - 04:45 PM Speaker: Bryan C. Mills, Duolingo (Senior Software Engineer)

You might think of functions in async Python in terms of “synchronous” and “async”, but the possibility of binding objects (such as Locks) to the asyncio event loop adds a whole new dimension to consider. We'll examine six vibrant kinds of functions and how they interact! This talk will examine code examples of how to adapt each kind of function to call other kinds, suggest design patterns that minimize the complexity of dealing with different kinds (such as non-blocking context managers), and examine patterns or libraries to safely synchronize concurrent calls involving multiple kinds of function.

Automated Dependency Inference and its Applications Time: 05:00 PM - 05:30 PM Speaker: Jason R. Coombs, Microsoft (Principal Software Engineer)

Last summer, I launched the Coherent Software Development System (https://bit.ly/coherent-system) with the principal that one should not have to repeat themselves when developing more than one Python project. One of the key innovations of that system is coherent.deps, a system for deriving package dependencies from the imports that a project or script uses. I'll explore some of the background motivations from Google's monorepo, some prior art at Meta, and some of the approaches that failed (AI-based inference) before going into the details of the implementation (AST parsing, world-readable MongoDB database, Big Table query to PyPI downloads). I'll additionally talk about some of the applications of this generalized library (coherent.build, pip-run), some of the maintenance challenges (expensive query, refresh interval), and possible other applications (on-demand dependency loader).

SPEAKER BIOS:

Alex C. Chang Alexander Chih-Chieh Chang is a fourth-year MSTP student in the CMU-Pitt Computational Biology Ph.D. Program, mentored by Drs. Lee and Oesterreich. He earned a BS/BA in Chemical and Biomolecular Engineering/Sociology from Johns Hopkins University in 2021. Previously, during his undergraduate research in the lab of Rong Li, Ph.D., he conducted large-scale genomic screens to study proteomic dysregulation and spent a gap year in the lab of Manish Aghi, MD. PhD., studying breast cancer metastasis to the brain. Currently, as a computational biologist and medical student, he coordinates the Hope for OTHERS tissue donation program in the Lee-Oesterreich Lab and computational research projects in breast cancer metastasis and genomic evolution. Brent Schlegel Brent Schlegel is a first-year PhD student in Integrative Systems Biology at the University of Pittsburgh School of Medicine, co-mentored by Drs. Adrian Lee and Steffi Oesterreich. He earned his AS in Mathematics and Sciences from CCAC (2019) and a BS in Computational Biology from Pitt (2021). Most recently, he worked as a Bioinformatics Analyst at the UPMC Children’s Hospital of Pittsburgh, where he specialized in the integrative analysis of large, complex biomedical datasets. Now, Brent combines data science, computational modeling, and multi-omic integration to tackle the systems biology of invasive lobular breast cancer, using patient-derived organoid models and leveraging “big data” to uncover hidden patterns and drive innovation in diagnosis and treatment.

Ling Almoubayyed Ling is an experienced architecture and urban designer with extensive project management expertise. Specializing in urban design, planning, community engagement, and spatial analysis, she has successfully led projects ranging from individual buildings to comprehensive urban districts. Ling uses evidence-based design with data gathered through stakeholder engagement to identify the best design solutions to create built environments. She is currently a Project Manager with SmithGroup. Husni Almoubayyed Husni Almoubayyed is the Director of AI at Pittsburgh-based education technology company Carnegie Learning. Husni uses machine learning and data science methods to conduct research in education, specifically in topics such as personalization, equity, and predictive analytics. Prior to his work in education technology, Husni acquired a Ph.D. in Astrophysics from Carnegie Mellon University, where he worked on mitigating biases in astronomical data to advance understanding of dark energy. Needless to say, Python is Husni's favorite programming language, and PyCon is one of his favorite events of the year!

Christopher Pitstick Christopher, a passionate software engineer who installed solar panels on his home in 2024, quickly immersed himself in system analysis to optimize performance—expertise that directly inspired this presentation. His programming journey began at age 12 with QBasic, igniting a lifelong passion that led to roles at industry giants including Microsoft, Amazon, and Argo AI before joining his current position at Latitude. Throughout his career, Christopher has mastered multiple programming languages from C++ to Perl and Python, approaching coding both as a profession and personal passion. As a dedicated neurodiversity advocate, he regularly shares his experiences through public speaking engagements, raising awareness and empowering others in the tech community.

Utkarsh Tripathi Utkarsh Tripathi is a Machine Learning Engineer at Solventum, Inc., where he works on Solventum™ Fluency Align™ and Solventum™ Fluency Direct™ : AI-powered clinical documentation tools that leverage conversational and generative AI, along with ambient intelligence, to automate medical documentation. These solutions help reduce administrative work and physician burnout, while improving the overall patient care experience. Utkarsh holds degrees in Electrical Engineering, Chemistry, and Computer Science from BITS Pilani and the University of Chicago.

Louis Luangkesorn Dr. Louis Luangkesorn is a Lead Data Scientist at Highmark Health where he works on projects applying statistical, predictive, operations research, and Generative AI models in use cases involving human resources and healthcare. He has contributed code to Scipy and a book appendix porting a simulation textbook's examples to Simpy.

Carolyn Tett Carolyn is an ecologist that specializes in animal behavior and disease ecology. She works with guppies and their ectoparasites to better understand how host contact rate and physiological status impact disease spread. She captures guppy behaviors on video and uses Python to automate the video processing. Using these outputs, she quantifies guppy social metrics and runs statistical models to predict behavior-mediated parasite spread.

Bryan C. Mills Bryan maintains Python core services at Duolingo, and was formerly a maintainer on the Go project at Google.

Jason R. Coombs Jason's been a passionate contributor to Python and open source software since the 90's, is a core contributor to Python, and maintains hundreds of packages in PyPI.

PyCon 2025 Special Event: Hometown Heroes Hatchery Program
Event How Music Charts 2019-10-16
Jason Joven – host @ Chartmetric

HighlightsPeloton’s recent IPO has us wondering about the most popular fitness playlists on Spotify and Deezer, so slap on some cross-trainers and fire up those Bluetooth earbuds.Mission   Good morning, it’s Jason here at Chartmetric with your 3-minute Data Dump where we upload charts, artists, and playlists into your brain so you can stay up on the latest in the music data world.We’re on the socials at “chartmetric” — that’s Chartmetric, one word and no “S.” Check us out on LinkedIn, Instagram, Twitter, and Facebook!DateThis is your Data Dump for Wednesday, Oct. 16, 2019.Music + Fitness: Shaping Up Spotify and Deezer’s Top Workout PlaylistsPeloton, the indoor fitness brand best associated with its high-energy, online-class guided cycling experiences, went public on Oct. 7th, but closed its first day 11% under its initial public offering price, according to CNN.Competitor SoulCycle pulled out of IPO-ing last year, and maybe it has something to do with the music issues Peloton is now facing: a $300M lawsuit from a group of music publishers.Whether they’re using IP legitimately or not, there’s a lot at stake when it comes to music’s intimate relationship to fitness, according to music/tech journalist Cherie Hu’s latest newsletter.And it’s definitely illustrated by Spotify’s most popular workout playlists, six of which are in the Top 100 in terms of Follower count:Beast Mode is the most popular context-based fitness playlist on the Swedish platform, and the 9th most followed overall at 6.5M Followers.Post Malone is currently getting the most unique monthly listeners from four playlist slots he’s currently sitting in, acquiring 891K MLs.Reggaeton king J Balvin and American DJ/producer Marshmello are in the #2 and #3 slots with 592K and 577K Beast Mode-specific MLs respectively.Almost 20% of the current list is tagged as EDM, and more than 30% if you include Brostep.More than half of the current list are American artists, with the second most-represented country being high-energy Dutch electronic artists like Armin van Buuren, Hardwell and R3HAB...but still comprising only 13% of the list.Spotify’s Motivation Mix at 4.4M Followers and the simply-titled Workout playlist at 3.3M are the next most popular fitness lists there, but an interesting juxtaposition may be Deezer’s most popular fitness playlist, Rock Workout.That’s right: the #1 list to work out to on the French streaming platform is based around the rock genre, which is very different from Spotify’s top workout mixes, which are usually hip-hop, pop or dance-based.Rock Workout has 342K fans and currently a 70-track count, compared to Beast Mode’s 200 track count.Up until mid-May this year, Beast Mode only held 50 tracks at once, and though the amount of slots open up in the playlist, they do a great job of keeping things fresh, with a 100% 28-day ratio, meaning that the entire list has changed in the past month.With Rock Workout, only 3% of the list has changed in the past month, even though it’s less than ¼ of Beast Mode’s track count, featuring artists such as Linkin Park, Nickelback and AC/DC.Other Deezer workout playlists like Rap & Sport and Motivation Hits at 324K fans each feature much of the same pop/hip-hop/EDM fare you may expect...but it just goes to show that not all sweat beads to the same drummer.Outro That’s it for your Daily Data Dump for Wednesday, Oct. 16, 2019. This is Jason from Chartmetric.Free accounts are available at chartmetric.com And article links and show notes are at: podcast.chartmetric.comIf you haven’t downloaded our semi-annual global industry report 6MO yet, you can find it all across our socials and in our show notes!Happy Wednesday, we’ll see you Friday! 

Data Streaming
Jason Joven – host @ Chartmetric

HighlightsGrab your passports, it’s Excursion Thursday, and we’re headed to Mumbai, India’s largest city and Spotify’s largest potential market.Mission   Good morning, it’s Jason here at Chartmetric with your 3-minute Data Dump where we upload charts, artists, and playlists into your brain so you can stay up on the latest in the music data world.DateThis is your Data Dump for Thursday, May 23rd, 2019.Excursion Thursday: MumbaiOn today’s Excursion Thursday, we’re taking off to India’s most populated city, Mumbai, which has quickly become a testing ground for Spotify’s global expansion strategy. Until 1995, the “Hollywood of India” was also called Bombay, what many in India saw as a vestige of British colonialism, hence the name change. The city’s booming movie industry lends the city its other famous moniker, “Bollywood”.Mumbai is not only the wealthiest city in India, but it’s also arguably the financial, arts, and entertainment capital of the entire country with an estimated 22.5 million  Mumbaikars more than doubling the population of New York City!It’s clear why Spotify’s weathering its recent challenges in-country, as India’s population is currently at 1.4 billion and climbing — that’s almost 20 percent of everybody on earth, while North America comprises around 5 percent. So, if Spotify’s been able to acquire an estimated 50M monthly active users out of North America’s 366M people and an estimated 60M monthly active users out of Europe’s 743M people, that gives them a market penetration rate lying somewhere between 8 and 15 percent. Apply that to a population of 1.4B, and SPOT’s stock price will rise, for sure.So, based on the city’s listening profile….how’s it going? Unfortunately, it’s too early to tap into Spotify’s local monthly listeners, but we can at least look at other Western platforms that are operating there.Mumbai’s Shazam and YouTube charts definitely reflect the battle between domestic and foreign repertoire preferences.According to the Top 90 tracks by Shazam Chart Occurrences in the past month, a total of 22 bear Indian ISRC codes. That’s around 25% of total Shazam’d tracks we captured, while there are 38 US-based ISRCs present, about 40%.Moving to Shazam’s most charted artists in Mumbai over the last 30 days, American rappers Swae Lee and Lil Nas X come in 1st and 3rd with 52 and 47 chart appearances, respectively, and Puerto Rican singer Farruko in 2nd with 50. Fourth and 5th place go to film music composers Vishal-Shekhar and star singer Arijit Singh with 42 and 41 chart appearances each.Using Top Tracks by YouTube Views, we see a mixed bag at the top, with T. Swift and Brendon Urie’s “Me!” at 235K average daily views and Katy Perry and Migos’ “Bon Appétit” at 77K daily views in 1st and 3rd place respectively. Second place goes to “Aankh Mare” from Bollywood movie Simmba sitting pretty at 188K views. Genre-wise on the Shazam charts in the past month, it’s still a battle between local and foreign fare: with Hip-Hop at 11 genre tags from mostly American artists, Dance at 15 genre tags from an international artist roster, and Pop at 22 genre tags from both Western and Indian artists. Twelve of Pop genre tags are from domestic artists, suggesting there’s a slight skew in the past month  toward the local when it comes to the genre.While Spotify competes with the entrenched Indian streaming service JioSaavn, partly headquartered in Mumbai and specializing in Bollywood music , Mumbai’s demand for both Indian and Western music will prove to either be Spotify’s ace in the hole or rock in its shoe.OutroThat’s a wrap for your Daily Data Dump for Thursday, May 23nd, 2019. This is Jason from Chartmetric.Free accounts are at app.chartmetric.com/signupAnd article links and show notes are at: podcast.chartmetric.com.Hope you’re not too jet-lagged from today’s Excursion Thursday, and we’ll see you back here tomorrow!

Singer Data Streaming
Adam – UK & Ireland Editor @ Deezer , Jason Joven – host @ Chartmetric

HighlightsIt’s New Music Friday Monday: Deezer’s Brand New UK playlist is all about pop this week and dominates Spotify’s New Music Friday playlists by follower count.Mission   Good morning, it’s Jason here at Chartmetric with your 3-minute Data Dump where we upload charts, artists and playlists into your brain so you can stay up on the latest in the music data world.DateThis is your Data Dump for Monday April 29th 2019.Deezer: Brand New UK playlistAlways astute at differentiating segments of their international user base, Deezer  separates several of their New Music Friday playlists by country. So much so that their #3 most followed playlist overall is actually one of them: the Brand New UK playlist.At 5.9M fans, this frontline-focused playlist is curated by Adam - their UK & Ireland Editor, who also selects the Deezer Hits UK playlist and Trending Ireland playlists at 334K and 170K fans respectively.Over the past year, Brand New UK exhibits a follower count history that curiously looks like a publicly traded stock price: going up for a few months, then going down for a few months.It’s currently on an upswing, gaining over 500 fans over the past month, but it’s certainly different from the steady and rarely-wavering follower growth that most of Spotify’s top playlists have shown in recent years.Nevertheless, Brand New UK remains one of Deezer’s flagship playlists and this week, is 32% pop, with 31 of the 60 tracks containing the tag.Both rap and EDM come next with 7 genre tags each in this week’s list.43% of the artists represented are from the United States, while 33% are from the UK. The rest of the list features artists from eight other territories including Sweden, Brazil, France.Leading off in the #1 position is veteran grime rapper Stormzy with “Vossi Bop”, whose music video features actor Idris Elba and marks Stormzy’s first solo release since 2017.Taylor Swift takes the #2 slot with Panic! At The Disco’s Brendon Urie for the track “ME!” and Lauv’s new single “Drugs & The Internet” slides into third place.Brand New UK vs. other NMF playlistsComparing with Spotify’s equivalent playlist, New Music Friday, the selection of artists based on nationality becomes quite clear early on.On Brand New UK for example, Stormzy leads the top spot while on Spotify’s globally-focused list his track is in 46th place in the 99-track list.Taylor Swift’s track position doesn’t change much on either playlist, because well, she’s Taylor Swift, but on Spotify we don’t see our next UK artist until the #12 position with FKA twigs’ “Cellophane”.On Deezer, we already get our second UK artist with Nigerian-British Not3s in the #4 spot, who doesn’t show up at all in Spotify’s New Music Friday.Genre-wise, the sounds of both playlists are still similar, as New Music Friday has the same top three genres: pop, rap and EDM. However, NMF skews heavier towards rap, as 21 of its tracks are tagged as such, when Deezer’s list only had 7.And to make it all more complicated, Spotify has another playlist called New Music Friday UK, which looks much more like Deezer’s Brand New UK, as it has the same top 3 tracks for example.Spotify’s version has a majority of UK artists, with 30 of them present in its 86-song list, with US artists coming in second place with 29 artists.Despite all of that however, Deezer still wins out as its 5.9M fan playlist far outnumbers Spotify’s 709K followers for its UK NMF playlist, and even its global NMF at 3.1M.So if you’re looking to keep up on Global Release Friday for the latest in UK music, check out Brand New UK on Deezer! OutroThat’s it for your Daily Data Dump for Monday April 29th 2019. This is Jason from Chartmetric.Free accounts are at app.chartmetric.com/signupAnd article links and show notes are at: podcast.chartmetric.com.Happy Monday, see you tomorrow! 

Jason Joven – host @ Chartmetric

HighlightsLil Nas X, Billie Eilish and Nipsey Hussle top the Apple Music Top Songs chart yesterdayPunjabi-Canadian rapper NAV rules the Billboard 200 album chartRegional mint playlists tap the dance floors around the worldMissionGood morning, it’s Jason here at Chartmetric with your 3-minute Data Dump where we upload charts, artists and playlists into your brain so you can stay up on the latest in the music data world.DateThis is your Data Dump for Tuesday April 2nd 2019.ChartsApple Music’s Top Songs chart yesterday was dominated by three narratives: the viral psuedo-country hit by Lil Nas X, Billie Eilish’s new album “WHEN WE ALL FALL ASLEEP, WHERE DO WE GO?” and the untimely shooting death of LA rapper Nipsey Hussle.Of the Top 100 songs that charted, LA-based Billie Eilish came away as the most frequently occuring artist on the chart at 16 tracks total. Two of her older songs “lovely” and “Idontwannabeyouanymore” joined all 14 of her new album’s tracks in an impressive show of force on Apple Music.Atlanta rapper Lil Nas X, still managed to take the #1 spot on Apple’s Top Songs chart yesterday, probably in part thanks to the Billboard country chart controversy. Released on Apple only since March 13th, it’s already spent 10 days on the Top Songs chart.Finally, the work of LA artist and community activist Nipsey Hussle, after his fatal shooting in front of his clothing store in South Los Angeles, experienced a surge in listening.Six of Nipsey’s tracks, including collaborations with Kendrick Lamar and Puff Daddy, made it into the Top 100 songs chart from positions 18 to 76. Five of those were from his last 2018 album “Victory Lap”, which was Grammy-nominated for Best Rap Album.Nipsey was 33 years young. May he rest in peace.Artist Highlight in the NewsPunjabi-Canadian rapper and producer NAV nabbed his first #1 album on the Billboard 200 chart announced on March 31st.The Toronto-native, who has tracks with The Weeknd, Travis Scott and Lil Uzi Vert, also has 1.2M Spotify followers and 8.9M monthly listeners, giving him a very impressive listener to follower ratio of 7.This bodes well for NAV since this suggests repeated listening despite having a relatively lower follower count.NAV’s hometown of Toronto takes fourth place in his most listened-to cities on Spotify, though his rap sound resonates most stateside: namely LA, Chicago, and Dallas. His Instagram at 1.5M followers is growing at approximately 2.8K daily.His follower base is currently ¾ male and very strong in the 18-24 age range, with Nicki Minaj, Drake and WorldStarHipHop being among his most notable IG followers.If you want to check out NAV’s work, you can find him in the #42 slot on Today’s Top Hits with his track “Price on My Head” (feat. the Weeknd).Playlist Round-Up If you’re into electronic music, surely you already know about Spotify’s mint playlist at 5.4M followers and the 9th most followed playlist.But do you know about mint Latin? Or mint Canada, mint BR (Brazil), or mint India?Mint Latin for example has 1.8M followers and features “the new wave of Latin Electronic producers and DJs”. It currently has 50 tracks and an average track popularity score of 42 out of 100.If 42 sounds a little low, our Jan 2018 Medium article on the mint playlist discussed how dance music exists in a different space that is more about the hours-long mix, making any single artist or track, well, not as important.Surely this is made clear as mint Latin is a pre-mixed playlist just like its big brother: meaning if you listen from one track to another, a DJ has already made smooth transitions to give you one singular listening experience.So if you’re looking for a frontline-oriented playlist featuring dance sounds from certain regions of the world, look no further.OutroThat’s it for your Daily Data Dump for Monday April 2nd 2019. This is Jason from Chartmetric.You can always get links to episode sources and additional information at: chartmetric.transistor.fm/episodes.Happy Tuesday, see you tomorrow!

Jason Price – author

Write powerful SQL statements and PL/SQL programs Learn to access Oracle databases through SQL statements and construct PL/SQL programs with guidance from Oracle expert, Jason Price. Published by Oracle Press, Oracle Database 11g SQL explains how to retrieve and modify database information, use SQL Plus and SQL Developer, work with database objects, write PL/SQL programs, and much more. Inside, you'll find in-depth coverage of the very latest SQL features and tools, performance optimization techniques, advanced queries, Java support, and XML. This book contains everything you need to master SQL. Explore SQL Plus and SQL Developer Use SQL SELECT, INSERT, UPDATE, and DELETE statements Write PL/SQL programs Create tables, sequences, indexes, views, and triggers Write advanced queries containing complex analytical functions Create database objects and collections to handle abstract data Use large objects to handle multimedia files containing music and movies Write Java programs to access an Oracle Database using JDBC Tune your SQL statements to make them execute faster Explore the XML capabilities of the Oracle Database Master the very latest Oracle Database 11 g features, such as PIVOT and UNPIVOT, flashback archives, and much more

data data-engineering oracle-database-solutions oracle-11g Java Oracle SQL XML
O'Reilly Data Engineering Books
Showing 6 results