This 2-3 minute presentation is meant to give univeresity hackathoners a brief, high-level overview of Google Cloud and its developer APIs with the purpose of inspiring students to consider these products for their hacks. A longer, more descriptive tech talk comes later.
https://www.learntek.org/google-cloud-platform-gcp-training/
https://www.learntek.org/
Learntek is global online training provider on Big Data Analytics, Hadoop, Machine Learning, Deep Learning, IOT, AI, Cloud Technology, DEVOPS, Digital Marketing and other IT and Management courses.
This is a talk I gave at Web Analytics Wednesday in June 2017. It discusses automating the delivery of marketing channel data to Google BigQuery / Data Studio
Basic concepts, best practices, pricing of using BigQuery the analytic data platform at petabyte scale from Google Cloud Platform. There is a lot things to learn about this tool and its features such as BI engine and AI Platform.
This 2-3 minute presentation is meant to give univeresity hackathoners a brief, high-level overview of Google Cloud and its developer APIs with the purpose of inspiring students to consider these products for their hacks. A longer, more descriptive tech talk comes later.
https://www.learntek.org/google-cloud-platform-gcp-training/
https://www.learntek.org/
Learntek is global online training provider on Big Data Analytics, Hadoop, Machine Learning, Deep Learning, IOT, AI, Cloud Technology, DEVOPS, Digital Marketing and other IT and Management courses.
This is a talk I gave at Web Analytics Wednesday in June 2017. It discusses automating the delivery of marketing channel data to Google BigQuery / Data Studio
Basic concepts, best practices, pricing of using BigQuery the analytic data platform at petabyte scale from Google Cloud Platform. There is a lot things to learn about this tool and its features such as BI engine and AI Platform.
Quick Intro to Google Cloud TechnologiesChris Schalk
This is the "Lightning Presentation" given at DreamForce 2011 on Google's Cloud Technologies. It covers, App Engine, Google Storage and BigQuery. #df11
Big Data with hadoop, Spark and BigQuery (Google cloud next Extended 2017 Kar...Imam Raza
Google Next Extended (https://cloudnext.withgoogle.com/) is an annual Google event focusing on Google cloud technologies. This presentation is from tech talk held in Google Next Extended 2017 Karachi event
Introduction to Google BigQuery. Slides used at the first GDG Cloud meetup in Brussels, about big data on Google Cloud Platform. (http://www.meetup.com/GDG-Cloud-Belgium/events/228206131)
With the release of Google Cloud AutoML, Google Cloud Platform provides yet another out-of-the-box AI managed service. But this doesn’t mean that data scientists have no say in training and deploying customised machine learning models in the cloud. There are services, such as Cloud ML Engine, devoted to this specific goal. Let’s see how a data scientist can exploit GCP potential to expose its own model.
Introduction to Google Cloud Machine Learning APIsRomin Irani
Presentation from Google Developer Day Event in Ahmedabad, March 2017. It covers an overview of multiple Cloud Machine Learning APIs like Translate, Vision, Video Intelliigence, Speech and Natural Language.
Introducing the (new) Google Docs API (2019)wesley chun
This is a 15-20 minute talk introducing developers to the (new as of Feb 2019) Google Docs API. The example demonstrated is a "mail merge" app, and whose data comes from a Google Sheet. Bonus: attendees get an intro to using the Sheets API too.
The 30 Days of Google Cloud Program Orientation is being conducted to give students an insight of the 30 days of Google Cloud program, where the students will be informed about the event and the registration process from the google cloud facilitator followed by the clearance of doubts.
In this webinar you'll learn about the best practices for Google BigQuery—and how Matillion ETL makes loading your data faster and easier. Find out from our experts how to leverage one of the largest, fastest, and most capable cloud data warehouses to improve your business and save money.
In this webinar:
- Discover how to work fast and efficiently with Google BigQuery
- Find out the best ways to monitor and control costs
- Learn to leverage Matillion ETL and optimize Google BigQuery
- Get tips and tricks for better performance
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoophuguk
At Google Cloud Platform, we're combining the Apache Spark and Hadoop ecosystem with our software and hardware innovations. We want to make these awesome tools easier, faster, and more cost-effective, from 3 to 30,000 cores. This presentation will showcase how Google Cloud Platform is innovating with the goal of bringing the Hadoop ecosystem to everyone.
Bio: "I love data because it surrounds us - everything is data. I also love open source software, because it shows what is possible when people come together to solve common problems with technology. While they are awesome on their own, I am passionate about combining the power of open source software with the potential unlimited uses of data. That's why I joined Google. I am a product manager for Google Cloud Platform and manage Cloud Dataproc and Apache Beam (incubating). I've previously spent time hanging out at Disney and Amazon. Beyond Google, love data, amateur radio, Disneyland, photography, running and Legos."
Hackathon opening ceremony 2-5 minute lightning talk introducing Google Cloud tools that students can use for their hacks, whetting their appetites for a more detailed longer tech talk later.
Quick Intro to Google Cloud TechnologiesChris Schalk
This is the "Lightning Presentation" given at DreamForce 2011 on Google's Cloud Technologies. It covers, App Engine, Google Storage and BigQuery. #df11
Big Data with hadoop, Spark and BigQuery (Google cloud next Extended 2017 Kar...Imam Raza
Google Next Extended (https://cloudnext.withgoogle.com/) is an annual Google event focusing on Google cloud technologies. This presentation is from tech talk held in Google Next Extended 2017 Karachi event
Introduction to Google BigQuery. Slides used at the first GDG Cloud meetup in Brussels, about big data on Google Cloud Platform. (http://www.meetup.com/GDG-Cloud-Belgium/events/228206131)
With the release of Google Cloud AutoML, Google Cloud Platform provides yet another out-of-the-box AI managed service. But this doesn’t mean that data scientists have no say in training and deploying customised machine learning models in the cloud. There are services, such as Cloud ML Engine, devoted to this specific goal. Let’s see how a data scientist can exploit GCP potential to expose its own model.
Introduction to Google Cloud Machine Learning APIsRomin Irani
Presentation from Google Developer Day Event in Ahmedabad, March 2017. It covers an overview of multiple Cloud Machine Learning APIs like Translate, Vision, Video Intelliigence, Speech and Natural Language.
Introducing the (new) Google Docs API (2019)wesley chun
This is a 15-20 minute talk introducing developers to the (new as of Feb 2019) Google Docs API. The example demonstrated is a "mail merge" app, and whose data comes from a Google Sheet. Bonus: attendees get an intro to using the Sheets API too.
The 30 Days of Google Cloud Program Orientation is being conducted to give students an insight of the 30 days of Google Cloud program, where the students will be informed about the event and the registration process from the google cloud facilitator followed by the clearance of doubts.
In this webinar you'll learn about the best practices for Google BigQuery—and how Matillion ETL makes loading your data faster and easier. Find out from our experts how to leverage one of the largest, fastest, and most capable cloud data warehouses to improve your business and save money.
In this webinar:
- Discover how to work fast and efficiently with Google BigQuery
- Find out the best ways to monitor and control costs
- Learn to leverage Matillion ETL and optimize Google BigQuery
- Get tips and tricks for better performance
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoophuguk
At Google Cloud Platform, we're combining the Apache Spark and Hadoop ecosystem with our software and hardware innovations. We want to make these awesome tools easier, faster, and more cost-effective, from 3 to 30,000 cores. This presentation will showcase how Google Cloud Platform is innovating with the goal of bringing the Hadoop ecosystem to everyone.
Bio: "I love data because it surrounds us - everything is data. I also love open source software, because it shows what is possible when people come together to solve common problems with technology. While they are awesome on their own, I am passionate about combining the power of open source software with the potential unlimited uses of data. That's why I joined Google. I am a product manager for Google Cloud Platform and manage Cloud Dataproc and Apache Beam (incubating). I've previously spent time hanging out at Disney and Amazon. Beyond Google, love data, amateur radio, Disneyland, photography, running and Legos."
Hackathon opening ceremony 2-5 minute lightning talk introducing Google Cloud tools that students can use for their hacks, whetting their appetites for a more detailed longer tech talk later.
How Google Cloud Platform can help in the classroom/labwesley chun
This is a 90-min tech talk along with hands-on exercises gives a comprehensive, vendor-agnostic overview of cloud computing, primarily targeting educators in the higher education market but is open to any developer. This is followed by an introduction to products in Google Cloud Platform, focusing on its serverless and machine learning products. .
Scale with a smile with Google Cloud Platform At DevConTLV (June 2014)Ido Green
What is new and hot on Google Cloud?
How can you work like a pro with some (or all) the new APIs and services... Here are some good starting points to follow.
Cloud computing is shaping the new normal , revolutionizing modern digital businesses.
In the words of Evgeny Morozov "Cloud computing is a great euphemism for centralization of computer services under one server".
In order to familiarize you about how Google cloud works and the various resources offered by cloud, GDSC MH have organized a session on 30 Days of Google Cloud.
30-45-min tech talk given at user groups or technical conferences to introducing developers to integrating with Google APIs from Python .
ABSTRACT
Want to integrate Google technologies into the web+mobile apps that you build? Google has various open source libraries & developer tools that help you do exactly that. Users who have run into roadblocks like authentication or found our APIs confusing/challenging, are welcome to come and make these non-issues moving forward. Learn how to leverage the power of Google technologies in the next apps you build!!
Cloud computing overview & Technical intro to Google Cloudwesley chun
This is a 60-min tech talk designed for developers to give a comprehensive, vendor-agnostic overview of cloud computing. This is followed by an introduction to products in Google Cloud, focusing on the serverless & machine learningproducts. The talk ends with several inspirational examples of what can be built with Google Cloud
Google Cloud is an organization producing 2 well-know product groups, GCP & G Suite. Most think they don't go nor work well together. This 90-minute session busts that myth and exposes developers to some of the more well-known APIs from both GCP & G Suite as well as highlights several novel solutions that have already been built as sample apps but also serve as inspiration into what's possible. The goal is to show developers the potential of building with ALL of Google Cloud.
Built on the same infrastructure that allows Google to return billions of search results in milliseconds, serve 6 billion hours of YouTube video per month and provide storage for 680 million Gmail users, Google Cloud Platform enables developers to build, test and deploy applications on Google’s highly-scalable and reliable infrastructure. Wether you use Google Deployment Manager, Ansible, Chef, Puppet, or Salt, you can now virtually automate everything!
Exploring Google (Cloud) APIs & Cloud Computing overviewwesley chun
This is a 100-minute tech talk designed for developers to give a comprehensive overview of using Google APIs, primarily those from Google Cloud (G Suite and Google Cloud Platform)
Similar to Google Enterprise Cloud Platform - Resources & $2000 credit! (20)
Webinar - Comparative Analysis of Cloud based Machine Learning PlatformsBigDataCloud
This webinar discusses cloud based Machine Learning platforms in detail while identifying suitable business use cases for each of them: Microsoft Azure ML, Amazon Machine Learning DataBricks Cloud
Crime Analysis & Prediction System is a system to analyze & detect crime hotspots & predict crime.
It collects data from various data sources - crime data from OpenData sites, US census data, social media, traffic & weather data etc.
It leverages Microsoft's Azure Cloud and on premise technologies for back-end processing & desktop based visualization tools.
Generally in recommendation engines, user's past history on engagements with different items is a key input. However, in many situations in an enterprise’s business cycle, it is necessary to generate recommendations based on user activity in real time. In this Big Data Cloud's meetup on April 3, 2014, we discussed how to decipher real time click streams into meaningful recommendations in real time.
Pranab Ghosh discussed the real time recommendations feature of Sifarish, which is an open source project built on Hadoop, Storm and Redis.
Sifarish is a recommendation engine that does content based recommendation as well as social collaborative filtering based recommendation.
Deep Learning for NLP (without Magic) - Richard Socher and Christopher ManningBigDataCloud
A tutorial given at NAACL HLT 2013.
Richard Socher and Christopher Manning
http://nlp.stanford.edu/courses/NAACL2013/
Machine learning is everywhere in today's NLP, but by and large machine learning amounts to numerical optimization of weights for human designed representations and features. The goal of deep learning is to explore how computers can take advantage of data to develop features and representations appropriate for complex interpretation tasks. This tutorial aims to cover the basic motivation, ideas, models and learning algorithms in deep learning for natural language processing. Recently, these methods have been shown to perform very well on various NLP tasks such as language modeling, POS tagging, named entity recognition, sentiment analysis and paraphrase detection, among others. The most attractive quality of these techniques is that they can perform well without any external hand-designed resources or time-intensive feature engineering. Despite these advantages, many researchers in NLP are not familiar with these methods. Our focus is on insight and understanding, using graphical illustrations and simple, intuitive derivations. The goal of the tutorial is to make the inner workings of these techniques transparent, intuitive and their results interpretable, rather than black boxes labeled "magic here". The first part of the tutorial presents the basics of neural networks, neural word vectors, several simple models based on local windows and the math and algorithms of training via backpropagation. In this section applications include language modeling and POS tagging. In the second section we present recursive neural networks which can learn structured tree outputs as well as vector representations for phrases and sentences. We cover both equations as well as applications. We show how training can be achieved by a modified version of the backpropagation algorithm introduced before. These modifications allow the algorithm to work on tree structures. Applications include sentiment analysis and paraphrase detection. We also draw connections to recent work in semantic compositionality in vector spaces. The principle goal, again, is to make these methods appear intuitive and interpretable rather than mathematically confusing. By this point in the tutorial, the audience members should have a clear understanding of how to build a deep learning system for word-, sentence- and document-level tasks. The last part of the tutorial gives a general overview of the different applications of deep learning in NLP, including bag of words models. We will provide a discussion of NLP-oriented issues in modeling, interpretation, representational power, and optimization.
Why Hadoop is the New Infrastructure for the CMO?BigDataCloud
As the big data market matures, discussions about Hadoop are expanding from pure technology to how businesses can use it to innovate and leap frog competitors. In this session, Karmasphere will outline how technologists can effectively work with their CMOs - the likely drivers of widespread Hadoop adoption, to unlock its business value. The discussion will include: how changes in marketing are driving the adoption of Hadoop big data analytics, the evolving role of the data and business analysts and a review of real-world big data analytics use cases.
Karmasphere will demonstrate how the Full Fidelity Analytics of Hadoop can empower high-tech, e-commerce, etail and reatil banking to quickly and easily analyze complex data types across silos and apply sophisticated analytics to personalize customer engagement and optimize revenue.
Hadoop : A Foundation for Change - Milind Bhandarkar Chief Scientist, PivotalBigDataCloud
As adoption of Hadoop across enterprises has skyrocketed, a variety of business use cases have emerged. In this talk, Milind would highlight a few use cases, and talk about emerging use cases that are shaping the future of the Hadoop platform.
Big Data Cloud Meetup - Jan 29 2013 - Mike Stonebraker & Scott Jarr of VoltDBBigDataCloud
"Navigating the Database Universe" was the topic of the Big Data Cloud meetup held on Jan 24th 2013 in Santa Clara, CA. This is the presentation made by Mike Stonebraker & Scott Jarr of VoltDB.
This meetup was sponsored by VoltDb.
Big Data Cloud Meetup - Jan 24 2013 - ZettasetBigDataCloud
Security is the greatest challenge for the widespread adoption of Hadoop in enterprises.
This meetup will discuss ways and means of how such challenges are being met with various solutions and/or products in the industry today. Industry security experts will showcase their varied experiences.
A Survey of Petabyte Scale Databases and Storage Systems Deployed at FacebookBigDataCloud
At Facebook, we use various types of databases and storage system to satisfy the needs of different applications. The solutions built around these data store systems have a common set of requirements: they have to be highly scalable, maintenance costs should be low and they have to perform efficiently. We use a sharded mySQL+memcache solution to support real-time access of tens of petabytes of data and we use TAO to provide consistency of this web-scale database across geographical distances. We use Haystack datastore for storing the 3 billion new photos we host every week. We use Apache Hadoop to mine intelligence from 100 petabytes of clicklogs and combine it with the power of Apache HBase to store all Facebook Messages.
This talk describes the reasons why each of these databases are appropriate for their workloads and the design decisions and tradeoffs that were made while implementing these solutions. We touch upon the consistency, availability and partitioning tolerance of each of these solutions. We touch upon the reasons why some of these systems need ACID semantics and other systems do not. We briefly touch upon some futures of how we plan to do big-data deployments across geographical locations and our requirements for a new breed of pure-memory and pure-SSD based transactional database.
What Does Big Data Mean and Who Will WinBigDataCloud
Michael Ralph Stonebraker is a computer scientist specializing in database research. He is currently an adjunct professor at MIT, where he has been involved in the development of the Aurora, C-Store, H-Store, Morpheus, and SciDB systems.Through a series of academic prototypes and commercial startups, Stonebraker's research and products are central to many relational database systems on the market today. He is also the founder of a number of database companies, including Ingres, Illustra, Cohera, StreamBase Systems, Vertica, VoltDB, and Paradigm4. He was previously the Chief Technical Officer (CTO) of Informix & a Professor of Computer Science at University of California, Berkeley. He is also an editor for the book "Readings in Database Systems"
Big Data Analytics in a Heterogeneous World - Joydeep Das of SybaseBigDataCloud
Big Data Analytics is characterized by analysis of data on three vectors: exploding data volume, proliferating data variety (relational, multi-media), and accelerating data velocity. However, other key vectors such as costs and skill set needed for Big Data Analytics are often overlooked. In this session, we will consider all five vectors by exploring various techniques where traditional but progressive technologies such as column store DBMS and Event Stream Processing is combined with open source frameworks such as Hadoop to exploit the full potential of Big Data Analytics.
Agenda:
- Big Data Analytics in the real world
- Commercial and Open Source techniques
- Bringing together Commercial and Open Source techniques
* Architectures
* Programming APIs
(e.g. embedded and federated MapReduce)
- Conclusions
How to Get CNIC Information System with Paksim Ga.pptxdanishmna97
Pakdata Cf is a groundbreaking system designed to streamline and facilitate access to CNIC information. This innovative platform leverages advanced technology to provide users with efficient and secure access to their CNIC details.
Climate Impact of Software Testing at Nordic Testing DaysKari Kakkonen
My slides at Nordic Testing Days 6.6.2024
Climate impact / sustainability of software testing discussed on the talk. ICT and testing must carry their part of global responsibility to help with the climat warming. We can minimize the carbon footprint but we can also have a carbon handprint, a positive impact on the climate. Quality characteristics can be added with sustainability, and then measured continuously. Test environments can be used less, and in smaller scale and on demand. Test techniques can be used in optimizing or minimizing number of tests. Test automation can be used to speed up testing.
Dr. Sean Tan, Head of Data Science, Changi Airport Group
Discover how Changi Airport Group (CAG) leverages graph technologies and generative AI to revolutionize their search capabilities. This session delves into the unique search needs of CAG’s diverse passengers and customers, showcasing how graph data structures enhance the accuracy and relevance of AI-generated search results, mitigating the risk of “hallucinations” and improving the overall customer journey.
UiPath Test Automation using UiPath Test Suite series, part 5DianaGray10
Welcome to UiPath Test Automation using UiPath Test Suite series part 5. In this session, we will cover CI/CD with devops.
Topics covered:
CI/CD with in UiPath
End-to-end overview of CI/CD pipeline with Azure devops
Speaker:
Lyndsey Byblow, Test Suite Sales Engineer @ UiPath, Inc.
GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using Deplo...James Anderson
Effective Application Security in Software Delivery lifecycle using Deployment Firewall and DBOM
The modern software delivery process (or the CI/CD process) includes many tools, distributed teams, open-source code, and cloud platforms. Constant focus on speed to release software to market, along with the traditional slow and manual security checks has caused gaps in continuous security as an important piece in the software supply chain. Today organizations feel more susceptible to external and internal cyber threats due to the vast attack surface in their applications supply chain and the lack of end-to-end governance and risk management.
The software team must secure its software delivery process to avoid vulnerability and security breaches. This needs to be achieved with existing tool chains and without extensive rework of the delivery processes. This talk will present strategies and techniques for providing visibility into the true risk of the existing vulnerabilities, preventing the introduction of security issues in the software, resolving vulnerabilities in production environments quickly, and capturing the deployment bill of materials (DBOM).
Speakers:
Bob Boule
Robert Boule is a technology enthusiast with PASSION for technology and making things work along with a knack for helping others understand how things work. He comes with around 20 years of solution engineering experience in application security, software continuous delivery, and SaaS platforms. He is known for his dynamic presentations in CI/CD and application security integrated in software delivery lifecycle.
Gopinath Rebala
Gopinath Rebala is the CTO of OpsMx, where he has overall responsibility for the machine learning and data processing architectures for Secure Software Delivery. Gopi also has a strong connection with our customers, leading design and architecture for strategic implementations. Gopi is a frequent speaker and well-known leader in continuous delivery and integrating security into software delivery.
Generative AI Deep Dive: Advancing from Proof of Concept to ProductionAggregage
Join Maher Hanafi, VP of Engineering at Betterworks, in this new session where he'll share a practical framework to transform Gen AI prototypes into impactful products! He'll delve into the complexities of data collection and management, model selection and optimization, and ensuring security, scalability, and responsible use.
Pushing the limits of ePRTC: 100ns holdover for 100 daysAdtran
At WSTS 2024, Alon Stern explored the topic of parametric holdover and explained how recent research findings can be implemented in real-world PNT networks to achieve 100 nanoseconds of accuracy for up to 100 days.
Threats to mobile devices are more prevalent and increasing in scope and complexity. Users of mobile devices desire to take full advantage of the features
available on those devices, but many of the features provide convenience and capability but sacrifice security. This best practices guide outlines steps the users can take to better protect personal devices and information.
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...James Anderson
Effective Application Security in Software Delivery lifecycle using Deployment Firewall and DBOM
The modern software delivery process (or the CI/CD process) includes many tools, distributed teams, open-source code, and cloud platforms. Constant focus on speed to release software to market, along with the traditional slow and manual security checks has caused gaps in continuous security as an important piece in the software supply chain. Today organizations feel more susceptible to external and internal cyber threats due to the vast attack surface in their applications supply chain and the lack of end-to-end governance and risk management.
The software team must secure its software delivery process to avoid vulnerability and security breaches. This needs to be achieved with existing tool chains and without extensive rework of the delivery processes. This talk will present strategies and techniques for providing visibility into the true risk of the existing vulnerabilities, preventing the introduction of security issues in the software, resolving vulnerabilities in production environments quickly, and capturing the deployment bill of materials (DBOM).
Speakers:
Bob Boule
Robert Boule is a technology enthusiast with PASSION for technology and making things work along with a knack for helping others understand how things work. He comes with around 20 years of solution engineering experience in application security, software continuous delivery, and SaaS platforms. He is known for his dynamic presentations in CI/CD and application security integrated in software delivery lifecycle.
Gopinath Rebala
Gopinath Rebala is the CTO of OpsMx, where he has overall responsibility for the machine learning and data processing architectures for Secure Software Delivery. Gopi also has a strong connection with our customers, leading design and architecture for strategic implementations. Gopi is a frequent speaker and well-known leader in continuous delivery and integrating security into software delivery.
DevOps and Testing slides at DASA ConnectKari Kakkonen
My and Rik Marselis slides at 30.5.2024 DASA Connect conference. We discuss about what is testing, then what is agile testing and finally what is Testing in DevOps. Finally we had lovely workshop with the participants trying to find out different ways to think about quality and testing in different parts of the DevOps infinity loop.
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024Albert Hoitingh
In this session I delve into the encryption technology used in Microsoft 365 and Microsoft Purview. Including the concepts of Customer Key and Double Key Encryption.
Sudheer Mechineni, Head of Application Frameworks, Standard Chartered Bank
Discover how Standard Chartered Bank harnessed the power of Neo4j to transform complex data access challenges into a dynamic, scalable graph database solution. This keynote will cover their journey from initial adoption to deploying a fully automated, enterprise-grade causal cluster, highlighting key strategies for modelling organisational changes and ensuring robust disaster recovery. Learn how these innovations have not only enhanced Standard Chartered Bank’s data infrastructure but also positioned them as pioneers in the banking sector’s adoption of graph technology.
Enchancing adoption of Open Source Libraries. A case study on Albumentations.AIVladimir Iglovikov, Ph.D.
Presented by Vladimir Iglovikov:
- https://www.linkedin.com/in/iglovikov/
- https://x.com/viglovikov
- https://www.instagram.com/ternaus/
This presentation delves into the journey of Albumentations.ai, a highly successful open-source library for data augmentation.
Created out of a necessity for superior performance in Kaggle competitions, Albumentations has grown to become a widely used tool among data scientists and machine learning practitioners.
This case study covers various aspects, including:
People: The contributors and community that have supported Albumentations.
Metrics: The success indicators such as downloads, daily active users, GitHub stars, and financial contributions.
Challenges: The hurdles in monetizing open-source projects and measuring user engagement.
Development Practices: Best practices for creating, maintaining, and scaling open-source libraries, including code hygiene, CI/CD, and fast iteration.
Community Building: Strategies for making adoption easy, iterating quickly, and fostering a vibrant, engaged community.
Marketing: Both online and offline marketing tactics, focusing on real, impactful interactions and collaborations.
Mental Health: Maintaining balance and not feeling pressured by user demands.
Key insights include the importance of automation, making the adoption process seamless, and leveraging offline interactions for marketing. The presentation also emphasizes the need for continuous small improvements and building a friendly, inclusive community that contributes to the project's growth.
Vladimir Iglovikov brings his extensive experience as a Kaggle Grandmaster, ex-Staff ML Engineer at Lyft, sharing valuable lessons and practical advice for anyone looking to enhance the adoption of their open-source projects.
Explore more about Albumentations and join the community at:
GitHub: https://github.com/albumentations-team/albumentations
Website: https://albumentations.ai/
LinkedIn: https://www.linkedin.com/company/100504475
Twitter: https://x.com/albumentations
Observability Concepts EVERY Developer Should Know -- DeveloperWeek Europe.pdfPaige Cruz
Monitoring and observability aren’t traditionally found in software curriculums and many of us cobble this knowledge together from whatever vendor or ecosystem we were first introduced to and whatever is a part of your current company’s observability stack.
While the dev and ops silo continues to crumble….many organizations still relegate monitoring & observability as the purview of ops, infra and SRE teams. This is a mistake - achieving a highly observable system requires collaboration up and down the stack.
I, a former op, would like to extend an invitation to all application developers to join the observability party will share these foundational concepts to build on:
Essentials of Automations: The Art of Triggers and Actions in FMESafe Software
In this second installment of our Essentials of Automations webinar series, we’ll explore the landscape of triggers and actions, guiding you through the nuances of authoring and adapting workspaces for seamless automations. Gain an understanding of the full spectrum of triggers and actions available in FME, empowering you to enhance your workspaces for efficient automation.
We’ll kick things off by showcasing the most commonly used event-based triggers, introducing you to various automation workflows like manual triggers, schedules, directory watchers, and more. Plus, see how these elements play out in real scenarios.
Whether you’re tweaking your current setup or building from the ground up, this session will arm you with the tools and insights needed to transform your FME usage into a powerhouse of productivity. Join us to discover effective strategies that simplify complex processes, enhancing your productivity and transforming your data management practices with FME. Let’s turn complexity into clarity and make your workspaces work wonders!
2. More Resources?
Cloud Platform General Information: https://cloud.google.com/
Sign-up for Goole Cloud Services using your gmail and try with demo data
set: https://cloud.google.com/console
Documentation for BIgQuery: https://developers.google.com/bigquery/
Technical Articles: https://cloud.google.com/resources/tutorials-articles
Questions/Interest in Google Cloud Platform:
Contact Rebecca (rye@google.com)
4. Cloud Platform services Summary
Google
App Engine
Google Compute
Engine
Powerful, scalable
application
development and
execution environment.
Full Linux virtual
machines running on
Google's infrastructure.
Google Cloud Storage
Google
BigQuery
Store, access, and
manage your data.
Analyze terabytes of
data in seconds.