2018

article thumbnail

Functional Data Engineering — a modern paradigm for batch data processing

Maxime Beauchemin

Batch data processing  — historically known as ETL —  is extremely challenging. It’s time-consuming, brittle, and often unrewarding. Not only that, it’s hard to operate, evolve, and troubleshoot. In this post, we’ll explore how applying the functional programming paradigm to data engineering can bring a lot of clarity to the process. This post distills fragments of wisdom accumulated while working at Yahoo, Facebook, Airbnb and Lyft, with the perspective of well over a decade of data warehousing

article thumbnail

Open-Source Data Warehousing – Druid, Apache Airflow & Superset

Simon Späti

These days, everyone talks about open-source. However, this is still not common in the Data Warehouse (DWH) field. Why is this? In my recent blog, I researched OLAP technologies, for this post I chose some open-source technologies and used them together to build a full data architecture for a Data Warehouse system. I went with Apache Druid for data storage, Apache Superset for querying and Apache Airflow as a task orchestrator.

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

Octopai: Metadata Management for Better Business Intelligence with Amnon Drori - Episode 28

Data Engineering Podcast

Summary The information about how data is acquired and processed is often as important as the data itself. For this reason metadata management systems are built to track the journey of your business data to aid in analysis, presentation, and compliance. These systems are frequently cumbersome and difficult to maintain, so Octopai was founded to alleviate that burden.

article thumbnail

Our learnings from adopting GraphQL

Netflix Tech

A Marketing Tech Campaign by Artem Shtatnov and Ravi Srinivas Ranganathan In an earlier blog post , we provided a high-level overview of some of the applications in the Marketing Technology team that we build to enable scale and intelligence in driving our global advertising, which reaches users on sites like The New York Times, Youtube, and thousands of others.

Coding 111
article thumbnail

Optimizing The Modern Developer Experience with Coder

Many software teams have migrated their testing and production workloads to the cloud, yet development environments often remain tied to outdated local setups, limiting efficiency and growth. This is where Coder comes in. In our 101 Coder webinar, you’ll explore how cloud-based development environments can unlock new levels of productivity. Discover how to transition from local setups to a secure, cloud-powered ecosystem with ease.

article thumbnail

Maximizing Process Performance with Maze, Uber’s Funnel Visualization Platform

Uber Engineering

At Uber, we spend a considerable amount of resources making the driver sign-up experience as easy as possible. At Uber’s scale, even a one percent increase in the rate of sign-ups to first trips (the driver conversion rate) carries a … The post Maximizing Process Performance with Maze, Uber’s Funnel Visualization Platform appeared first on Uber Engineering Blog.

Process 110
article thumbnail

Cloudera + Hortonworks, from the Edge to AI

Cloudera

We’ve just announced that Cloudera and Hortonworks have agreed to merge to form a single company. I want to explain the thinking behind the deal and the combination. Rob Bearden from Hortonworks has written up a post sharing his thoughts, as well. First, remember the history of Apache Hadoop. Google built an innovative scale-out platform for data storage and analysis in the late 1990s and early 2000s, and published research papers about their work.

Hadoop 75

More Trending

article thumbnail

Creating Multi-language NLP Pipelines with Apache Spark

Domino Data Lab: Data Engineering

In this guest post, Holden Karau , Apache Spark Committer , provides insights on how to create multi-language pipelines with Apache Spark and avoid rewriting spaCy into Java. She has already written a complementary blog post on using spaCy to process text data for Domino. Karau is a Developer Advocate at Google as well as a co-author on High Performance Spark and Learning Spark.

Java 52
article thumbnail

Live Dashboards on Streaming Data - A Tutorial Using Amazon Kinesis and Rockset

Rockset

We live in a world where diverse systems—social networks, monitoring, stock exchanges, websites, IoT devices—all continuously generate volumes of data in the form of events, captured in systems like Apache Kafka and Amazon Kinesis. One can perform a wide variety of analyses, like aggregations, filtering, or sampling, on these event streams, either at the record level or over sliding time windows.

AWS 52
article thumbnail

One Audio Sequencer to Rule Them All

Pandora Engineering

Photo credit: Carol Yepes Last month Pandora announced a public podcast beta in conjunction with the Podcast Genome Project. This rollout introduced many exciting features to our current mobile application offerings, including fully integrated and native podcast support. Ironically, one of the most interesting features and perhaps our biggest engineering win with this iteration is something that’s transparent to our end users: the inclusion of a new audio playback sequencer used exclusively for

Media 52
article thumbnail

Open Source: November Review - Maintainer training, new releases and more

Zalando Engineering

Project Highlights ExternalDNS version 0.5.9 is ready for testing. This project allows you to control DNS records dynamically via Kubernetes resources in a DNS provider-agnostic way. ExternalDNS also successfully made its way to the Kubernetes Incubator. Check out the list of changes in this new release. Zalando-Incubator welcomed two brand new open source projects 1) Darty - a data dependency manager for data science projects.

article thumbnail

15 Modern Use Cases for Enterprise Business Intelligence

Large enterprises face unique challenges in optimizing their Business Intelligence (BI) output due to the sheer scale and complexity of their operations. Unlike smaller organizations, where basic BI features and simple dashboards might suffice, enterprises must manage vast amounts of data from diverse sources. What are the top modern BI use cases for enterprise businesses to help you get a leg up on the competition?

article thumbnail

Announcing my session at #SQLBits - Azure Databricks

Advancing Analytics: Data Engineering

Simon Whiteley and I will be back at #SQLBits 2019 talking about hashtag#DataEngineering and #DataScience in Databricks. We will look at #ApacheSpark #Python #Engineering & #MachineLearning in this full day training day. Register Now Have you looked at Azure DataBricks yet? No! Then you need to. Why you ask, there are many reasons. The number 1, knowing how to use Apache Spark will earn you more money.

article thumbnail

OLAP, what’s coming next?

Simon Späti

Are you on the lookout for a replacement for the Microsoft Analysis Cubes, are you looking for a big data OLAP system that scales ad libitum, do you want to have your analytics updated even real-time? In this blog, I want to show you possible solutions that are ready for the future and fits into existing data architecture. What is OLAP? OLAP is an acronym for Online Analytical Processing.

Big Data 130
article thumbnail

Simplifying Continuous Data Processing Using Stream Native Storage In Pravega with Tom Kaitchuck - Episode 63

Data Engineering Podcast

Summary As more companies and organizations are working to gain a real-time view of their business, they are increasingly turning to stream processing technologies to fullfill that need. However, the storage requirements for continuous, unbounded streams of data are markedly different than that of batch oriented workloads. To address this shortcoming the team at Dell EMC has created the open source Pravega project.

article thumbnail

Netflix OSS and Spring Boot?—?Coming Full Circle

Netflix Tech

Netflix OSS and Spring Boot?—?Coming Full Circle Taylor Wicksell, Tom Cellucci, Howard Yuan, Asi Bross, Noel Yap, and David Liu In 2007, Netflix started on a long road towards fully operating in the cloud. Much of Netflix’s backend and mid-tier applications are built using Java, and as part of this effort Netflix engineering built several cloud infrastructure libraries and systems?

Java 111
article thumbnail

Prepare Now: 2025s Must-Know Trends For Product And Data Leaders

Speaker: Jay Allardyce, Deepak Vittal, and Terrence Sheflin

As we look ahead to 2025, business intelligence and data analytics are set to play pivotal roles in shaping success. Organizations are already starting to face a host of transformative trends as the year comes to a close, including the integration of AI in data analytics, an increased emphasis on real-time data insights, and the growing importance of user experience in BI solutions.

article thumbnail

Databook: Turning Big Data into Knowledge with Metadata at Uber

Uber Engineering

From driver and rider locations and destinations, to restaurant orders and payment transactions, every interaction on Uber’s transportation platform is driven by data. Data powers Uber’s global marketplace, enabling more reliable and seamless user experiences across our products for riders, … The post Databook: Turning Big Data into Knowledge with Metadata at Uber appeared first on Uber Engineering Blog.

Metadata 110
article thumbnail

Bringing AIOps to Machine Learning & Analytics

Cloudera

Two years ago I founded Hyperpilot with the mission to enable autopilot for container infrastructure. We learned a lot about data center automation based on real-time application and diagnostic feedback using applied machine learning. Last month, I joined Cloudera along with former team members Xiaoyun Zhu and Che-Yuan Liang to bring our expertise in intelligent automation to Cloudera’s modern platform for machine learning and analytics.

article thumbnail

Making slow queries fast with composite indexes in MySQL

nodeSWAT

Making slow queries fast using composite indexes in MySQL This post expects some basic knowledge of SQL. Examples were made using MySQL 5.7.18 and run on my mid 2014 Macbook Pro. Query execution times are based on multiple executions so index caching can kick in. The use-case came from a real application and the solution is used in production. So you have inserted preliminary data to your database and run a simple COUNT(*) query against it with a simple WHERE clause and… the spinner is still run

MySQL 52
article thumbnail

Data Science vs Engineering: Tension Points

Domino Data Lab: Data Engineering

This blog post provides highlights and a full written transcript from the panel, “ Data Science Versus Engineering: Does It Really Have To Be This Way? ” with Amy Heineike , Paco Nathan , and Pete Warden at Domino HQ. Topics discussed include the current state of collaboration around building and deploying models, tension points that potentially arise, as well as practical advice on how to address these tension points.

article thumbnail

How to Drive Cost Savings, Efficiency Gains, and Sustainability Wins with MES

Speaker: Nikhil Joshi, Founder & President of Snic Solutions

Is your manufacturing operation reaching its efficiency potential? A Manufacturing Execution System (MES) could be the game-changer, helping you reduce waste, cut costs, and lower your carbon footprint. Join Nikhil Joshi, Founder & President of Snic Solutions, in this value-packed webinar as he breaks down how MES can drive operational excellence and sustainability.

article thumbnail

Recap of Hadoop News for July 2018

ProjectPro

News on Hadoop - July 2018 Hadoop data governance services surface in wake of GDPR.TechTarget.com, July 2, 2018. GDPR has turned out to be a strong motivator that would bring greater governance to big data. At the recent DataWorks Summit 2018 , though most of the attention was focussed on how Hadoop pioneer Hortonworks is all set to expand its service in the cloud, there was great interest and importance put on managing data privacy as well.

Hadoop 52
article thumbnail

Programming Best Practices For Data Science

Dataquest

The data science life cycle is generally comprised of the following components: data retrieval data cleaning data exploration and visualization statistical or predictive modeling While these components are helpful for understanding the different phases, they don’t help us think about our programming workflow. Often, the entire data science life cycle ends up as an arbitrary mess of notebook cells in either a Jupyter Notebook or a single messy script.

article thumbnail

#NoEstimates

Zalando Engineering

Why I advocate a practice of no estimates as a software engineer Before I get to the topic, I would like to clarify one thing: I don’t want to ban estimations generally from software development, as there are good and solid reasons for it. In a nutshell, business needs to be predictable. I want to show a software developer's view on how to reduce or even get rid of endless estimations meetings with doubtful outcomes.

article thumbnail

AI at the Forefront of Digital Transformation Process in 2018

InData Labs

Digital Transformation Definition Digital transformation has been a big topic for a few years now, and it has many definitions. From a business perspective, digital transformation is about leveraging digital technologies to improve processes, competencies, and business models. It is also about changing the culture of the company because it requires letting go of old.

Process 52
article thumbnail

Improving the Accuracy of Generative AI Systems: A Structured Approach

Speaker: Anindo Banerjea, CTO at Civio & Tony Karrer, CTO at Aggregage

When developing a Gen AI application, one of the most significant challenges is improving accuracy. This can be especially difficult when working with a large data corpus, and as the complexity of the task increases. The number of use cases/corner cases that the system is expected to handle essentially explodes. 💥 Anindo Banerjea is here to showcase his significant experience building AI/ML SaaS applications as he walks us through the current problems his company, Civio, is solving.

article thumbnail

New on Cloud Academy: Machine Learning on Google Cloud and AWS, Big Data Analytics, Terraform, and more

Cloud Academy

A 2017 IDC White Paper “recommend[s] that organizations that want to get the most out of cloud should train a wide range of stakeholders on cloud fundamentals and provide deep training to key technical teams ” (emphasis ours). Regular readers of the Cloud Academy blog know we’ve been talking about this for a long time. Future-proofing your organization requires technical excellence, collective experience, business context, and shared understanding.

article thumbnail

Continuously Query Your Time-Series Data Using PipelineDB with Derek Nelson and Usman Masood - Episode 62

Data Engineering Podcast

Summary Processing high velocity time-series data in real-time is a complex challenge. The team at PipelineDB has built a continuous query engine that simplifies the task of computing aggregates across incoming streams of events. In this episode Derek Nelson and Usman Masood explain how it is architected, strategies for designing your data flows, how to scale it up and out, and edge cases to be aware of.

article thumbnail

Netflix Information Security: Preventing Credential Compromise in AWS

Netflix Tech

by Will Bengtson Previously we wrote about a method for detecting credential compromise in your AWS environment. The methodology focused on a continuous learning model and first use principle. This solution still is reactive in nature?—?we only detect credential compromise after it has already happened. Even with detection capabilities, there is a risk that exposed credentials can provide access to sensitive data and/or the ability to cause damage in our environment.

AWS 97
article thumbnail

Uber’s Big Data Platform: 100+ Petabytes with Minute Latency

Uber Engineering

Uber is committed to delivering safer and more reliable transportation across our global markets. To accomplish this, Uber relies heavily on making data-driven decisions at every level, from forecasting rider demand during high traffic events to identifying and addressing bottlenecks … The post Uber’s Big Data Platform: 100+ Petabytes with Minute Latency appeared first on Uber Engineering Blog.

Big Data 109
article thumbnail

The Ultimate Guide To Data-Driven Construction: Optimize Projects, Reduce Risks, & Boost Innovation

Speaker: Donna Laquidara-Carr, PhD, LEED AP, Industry Insights Research Director at Dodge Construction Network

In today’s construction market, owners, construction managers, and contractors must navigate increasing challenges, from cost management to project delays. Fortunately, digital tools now offer valuable insights to help mitigate these risks. However, the sheer volume of tools and the complexity of leveraging their data effectively can be daunting. That’s where data-driven construction comes in.

article thumbnail

Data Engineering is Critical to Big Data Success

Cloudera

I mentioned in an earlier blog titled, “Staffing your big data team, ” that data engineers are critical to a successful data journey. That said, most companies that are early in their journey lack a dedicated engineering group. And the longer it takes to put a team in place, the likelier it is that your big data project will stall. The data engineering team is responsible for collecting and ingesting batch and stream-oriented data, inventorying the data, working through ingest bottlenecks, and d

article thumbnail

Concurrency, MySQL and Node.js: A journey of discovery

nodeSWAT

Our story begins like so many others with a code loving protagonist — someone we all can relate to. His days are largely filled with designing code, writing code and reading about code — keeping clients happy while learning and having fun. This has been going on for years now with both MySQL and Node.js among others and as such our protagonist considers himself quite proficient with both those technologies.

MySQL 52
article thumbnail

Collaboration Between Data Science and Data Engineering: True or False?

Domino Data Lab: Data Engineering

This blog post includes candid insights about addressing tension points that arise when people collaborate on developing and deploying models. Domino’s Head of Content sat down with Don Miner and Marshall Presser to discuss the state of collaboration between data science and data engineering. The blog post provides distilled insights, audio clips, excerpted quotes as well as the full audio and written transcript.

article thumbnail

Recap of Hadoop News for June 2018

ProjectPro

News on Hadoop - June 2018 RightShip uses big data to find reliable vessels.HoustonChronicle.com,June 15, 2018. RightShip is using IBM’s predictive big data analytics platform to calculate the likelihood of compliance or mechanical troubles that an individual merchant ship will experience within the next year.It also leverages big data to analyse carbon emissions and vessel efficiency.

Hadoop 52
article thumbnail

Driving Responsible Innovation: How to Navigate AI Governance & Data Privacy

Speaker: Aindra Misra, Senior Manager, Product Management (Data, ML, and Cloud Infrastructure) at BILL

Join us for an insightful webinar that explores the critical intersection of data privacy and AI governance. In today’s rapidly evolving tech landscape, building robust governance frameworks is essential to fostering innovation while staying compliant with regulations. Our expert speaker, Aindra Misra, will guide you through best practices for ensuring data protection while leveraging AI capabilities.