Building Intelligent Applications, Experimental ML with Uber’s Data Science W...Databricks
In this talk, we will explore how Uber enables rapid experimentation of machine learning models and optimization algorithms through the Uber’s Data Science Workbench (DSW). DSW covers a series of stages in data scientists’ workflow including data exploration, feature engineering, machine learning model training, testing and production deployment. DSW provides interactive notebooks for multiple languages with on-demand resource allocation and share their works through community features.
It also has support for notebooks and intelligent applications backed by spark job servers. Deep learning applications based on TensorFlow and Torch can be brought into DSW smoothly where resources management is taken care of by the system. The environment in DSW is customizable where users can bring their own libraries and frameworks. Moreover, DSW provides support for Shiny and Python dashboards as well as many other in-house visualization and mapping tools.
In the second part of this talk, we will explore the use cases where custom machine learning models developed in DSW are productionized within the platform. Uber applies Machine learning extensively to solve some hard problems. Some use cases include calculating the right prices for rides in over 600 cities and applying NLP technologies to customer feedbacks to offer safe rides and reduce support costs. We will look at various options evaluated for productionizing custom models (server based and serverless). We will also look at how DSW integrates into the larger Uber’s ML ecosystem, e.g. model/feature stores and other ML tools, to realize the vision of a complete ML platform for Uber.
Uber - Building Intelligent Applications, Experimental ML with Uber’s Data Sc...Karthik Murugesan
In this talk, we will explore how Uber enables rapid experimentation of machine learning models and optimization algorithms through the Uber’s Data Science Workbench (DSW). DSW covers a series of stages in data scientists’ workflow including data exploration, feature engineering, machine learning model training, testing and production deployment. DSW provides interactive notebooks for multiple languages with on-demand resource allocation and share their works through community features.
It also has support for notebooks and intelligent applications backed by spark job servers. Deep learning applications based on TensorFlow and Torch can be brought into DSW smoothly where resources management is taken care of by the system. The environment in DSW is customizable where users can bring their own libraries and frameworks. Moreover, DSW provides support for Shiny and Python dashboards as well as many other in-house visualization and mapping tools.
In the second part of this talk, we will explore the use cases where custom machine learning models developed in DSW are productionized within the platform. Uber applies Machine learning extensively to solve some hard problems. Some use cases include calculating the right prices for rides in over 600 cities and applying NLP technologies to customer feedbacks to offer safe rides and reduce support costs. We will look at various options evaluated for productionizing custom models (server based and serverless). We will also look at how DSW integrates into the larger Uber’s ML ecosystem, e.g. model/feature stores and other ML tools, to realize the vision of a complete ML platform for Uber.
Building Intelligent Applications, Experimental ML with Uber’s Data Science W...Databricks
In this talk, we will explore how Uber enables rapid experimentation of machine learning models and optimization algorithms through the Uber’s Data Science Workbench (DSW). DSW covers a series of stages in data scientists’ workflow including data exploration, feature engineering, machine learning model training, testing and production deployment. DSW provides interactive notebooks for multiple languages with on-demand resource allocation and share their works through community features.
It also has support for notebooks and intelligent applications backed by spark job servers. Deep learning applications based on TensorFlow and Torch can be brought into DSW smoothly where resources management is taken care of by the system. The environment in DSW is customizable where users can bring their own libraries and frameworks. Moreover, DSW provides support for Shiny and Python dashboards as well as many other in-house visualization and mapping tools.
In the second part of this talk, we will explore the use cases where custom machine learning models developed in DSW are productionized within the platform. Uber applies Machine learning extensively to solve some hard problems. Some use cases include calculating the right prices for rides in over 600 cities and applying NLP technologies to customer feedbacks to offer safe rides and reduce support costs. We will look at various options evaluated for productionizing custom models (server based and serverless). We will also look at how DSW integrates into the larger Uber’s ML ecosystem, e.g. model/feature stores and other ML tools, to realize the vision of a complete ML platform for Uber.
Uber - Building Intelligent Applications, Experimental ML with Uber’s Data Sc...Karthik Murugesan
In this talk, we will explore how Uber enables rapid experimentation of machine learning models and optimization algorithms through the Uber’s Data Science Workbench (DSW). DSW covers a series of stages in data scientists’ workflow including data exploration, feature engineering, machine learning model training, testing and production deployment. DSW provides interactive notebooks for multiple languages with on-demand resource allocation and share their works through community features.
It also has support for notebooks and intelligent applications backed by spark job servers. Deep learning applications based on TensorFlow and Torch can be brought into DSW smoothly where resources management is taken care of by the system. The environment in DSW is customizable where users can bring their own libraries and frameworks. Moreover, DSW provides support for Shiny and Python dashboards as well as many other in-house visualization and mapping tools.
In the second part of this talk, we will explore the use cases where custom machine learning models developed in DSW are productionized within the platform. Uber applies Machine learning extensively to solve some hard problems. Some use cases include calculating the right prices for rides in over 600 cities and applying NLP technologies to customer feedbacks to offer safe rides and reduce support costs. We will look at various options evaluated for productionizing custom models (server based and serverless). We will also look at how DSW integrates into the larger Uber’s ML ecosystem, e.g. model/feature stores and other ML tools, to realize the vision of a complete ML platform for Uber.
Overcoming design challenges in hat based multichannel publishing - stc summi...Neil Perlin
Have you just been told to move your traditional online help to a mobile platform? What can you expect when you move content designed for large screens to devices with screens the size of a large sticky note? What material will convert well, so-so, or not at all. And for that matter, what exactly is "mobile". Come to this session to get answers to these questions, and more.
Overcoming design challenges in hat based multichannel publishing - stc summi...Neil Perlin
Have you just been told to move your traditional online help to "mobile"? Wondering how your content will convert? Or what "mobile" even is for that matter? This presentation describes the types of mobile available, and what types of content will convert well, so-so, or just not at all.
10 Things Every Entrepreneur Needs to Know About Artificial IntelligenceChristopher Mohritz
A.I. is transforming our world in unprecedented ways and at unprecedented speeds, presenting an endless stream of opportunities for savvy entrepreneurs.
Overcoming design challenges in hat based multichannel publishing - stc summi...Neil Perlin
Have you just been told to move your traditional online help to a mobile platform? What can you expect when you move content designed for large screens to devices with screens the size of a large sticky note? What material will convert well, so-so, or not at all. And for that matter, what exactly is "mobile". Come to this session to get answers to these questions, and more.
Overcoming design challenges in hat based multichannel publishing - stc summi...Neil Perlin
Have you just been told to move your traditional online help to "mobile"? Wondering how your content will convert? Or what "mobile" even is for that matter? This presentation describes the types of mobile available, and what types of content will convert well, so-so, or just not at all.
10 Things Every Entrepreneur Needs to Know About Artificial IntelligenceChristopher Mohritz
A.I. is transforming our world in unprecedented ways and at unprecedented speeds, presenting an endless stream of opportunities for savvy entrepreneurs.
Presentato al sesto WebMeetup del Machine Learning / Data Science Meetup Roma: https://www.meetup.com/it-IT/Machine-Learning-Data-Science-Meetup/events/273089965/
Presentazione per il sesto WebMeetup del Machine Learning / Data Science Meetup Roma: https://www.meetup.com/it-IT/Machine-Learning-Data-Science-Meetup/events/273089965/
Paolo Galeone - Dissecting tf.function to discover auto graph strengths and s...MeetupDataScienceRoma
Original presentation available on GitHub: https://pgaleone.eu/tf-function-talk/
Meetup: https://www.meetup.com/it-IT/Machine-Learning-Data-Science-Meetup/events/264338606/
Multimodal AI Approach to Provide Assistive Services (Francesco Puja)MeetupDataScienceRoma
Presentazione dal Meetup del Machine Learning / Data Science Meetup di Roma - Giugno 2019:
https://www.meetup.com/it-IT/Machine-Learning-Data-Science-Meetup/events/262120815/
Presentazione dal Meetup del Machine Learning / Data Science Meetup di Roma - Giugno 2019:
https://www.meetup.com/it-IT/Machine-Learning-Data-Science-Meetup/events/262120815/
Zero, One, Many - Machine Learning in Produzione (Luca Palmieri)MeetupDataScienceRoma
Talk dal Meetup del Machine Learning / Data Science Meetup di Roma - Giugno 2019:
https://www.meetup.com/it-IT/Machine-Learning-Data-Science-Meetup/events/262120815/
JMeter webinar - integration with InfluxDB and GrafanaRTTS
Watch this recorded webinar about real-time monitoring of application performance. See how to integrate Apache JMeter, the open-source leader in performance testing, with InfluxDB, the open-source time-series database, and Grafana, the open-source analytics and visualization application.
In this webinar, we will review the benefits of leveraging InfluxDB and Grafana when executing load tests and demonstrate how these tools are used to visualize performance metrics.
Length: 30 minutes
Session Overview
-------------------------------------------
During this webinar, we will cover the following topics while demonstrating the integrations of JMeter, InfluxDB and Grafana:
- What out-of-the-box solutions are available for real-time monitoring JMeter tests?
- What are the benefits of integrating InfluxDB and Grafana into the load testing stack?
- Which features are provided by Grafana?
- Demonstration of InfluxDB and Grafana using a practice web application
To view the webinar recording, go to:
https://www.rttsweb.com/jmeter-integration-webinar
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.
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024Tobias Schneck
As AI technology is pushing into IT I was wondering myself, as an “infrastructure container kubernetes guy”, how get this fancy AI technology get managed from an infrastructure operational view? Is it possible to apply our lovely cloud native principals as well? What benefit’s both technologies could bring to each other?
Let me take this questions and provide you a short journey through existing deployment models and use cases for AI software. On practical examples, we discuss what cloud/on-premise strategy we may need for applying it to our own infrastructure to get it to work from an enterprise perspective. I want to give an overview about infrastructure requirements and technologies, what could be beneficial or limiting your AI use cases in an enterprise environment. An interactive Demo will give you some insides, what approaches I got already working for real.
The Art of the Pitch: WordPress Relationships and SalesLaura Byrne
Clients don’t know what they don’t know. What web solutions are right for them? How does WordPress come into the picture? How do you make sure you understand scope and timeline? What do you do if sometime changes?
All these questions and more will be explored as we talk about matching clients’ needs with what your agency offers without pulling teeth or pulling your hair out. Practical tips, and strategies for successful relationship building that leads to closing the deal.
Epistemic Interaction - tuning interfaces to provide information for AI supportAlan Dix
Paper presented at SYNERGY workshop at AVI 2024, Genoa, Italy. 3rd June 2024
https://alandix.com/academic/papers/synergy2024-epistemic/
As machine learning integrates deeper into human-computer interactions, the concept of epistemic interaction emerges, aiming to refine these interactions to enhance system adaptability. This approach encourages minor, intentional adjustments in user behaviour to enrich the data available for system learning. This paper introduces epistemic interaction within the context of human-system communication, illustrating how deliberate interaction design can improve system understanding and adaptation. Through concrete examples, we demonstrate the potential of epistemic interaction to significantly advance human-computer interaction by leveraging intuitive human communication strategies to inform system design and functionality, offering a novel pathway for enriching user-system engagements.
Accelerate your Kubernetes clusters with Varnish CachingThijs Feryn
A presentation about the usage and availability of Varnish on Kubernetes. This talk explores the capabilities of Varnish caching and shows how to use the Varnish Helm chart to deploy it to Kubernetes.
This presentation was delivered at K8SUG Singapore. See https://feryn.eu/presentations/accelerate-your-kubernetes-clusters-with-varnish-caching-k8sug-singapore-28-2024 for more details.
LF Energy Webinar: Electrical Grid Modelling and Simulation Through PowSyBl -...DanBrown980551
Do you want to learn how to model and simulate an electrical network from scratch in under an hour?
Then welcome to this PowSyBl workshop, hosted by Rte, the French Transmission System Operator (TSO)!
During the webinar, you will discover the PowSyBl ecosystem as well as handle and study an electrical network through an interactive Python notebook.
PowSyBl is an open source project hosted by LF Energy, which offers a comprehensive set of features for electrical grid modelling and simulation. Among other advanced features, PowSyBl provides:
- A fully editable and extendable library for grid component modelling;
- Visualization tools to display your network;
- Grid simulation tools, such as power flows, security analyses (with or without remedial actions) and sensitivity analyses;
The framework is mostly written in Java, with a Python binding so that Python developers can access PowSyBl functionalities as well.
What you will learn during the webinar:
- For beginners: discover PowSyBl's functionalities through a quick general presentation and the notebook, without needing any expert coding skills;
- For advanced developers: master the skills to efficiently apply PowSyBl functionalities to your real-world scenarios.
From Siloed Products to Connected Ecosystem: Building a Sustainable and Scala...
Presentazione Codemotion Roma 2018 (con codici sconto community!)
1.
2. 100+ TALK!
13-14 APRILE – TECH CONFERENCE
9 track parallele su
LANGUAGES, MOBILE, GAME DEV, SECURITY,
BIG DATA, REACTIVE PROGRAMMING,
MICROSERVICES, VR/AR, DESIGN/UX,
INSPIRATIONAL
3. 100+ TALK!
13-14 APRILE – TECH CONFERENCE
focus speciale su
AI/MACHINE LEARNING, BLOCKCHAIN, SOFTWARE
ARCHITECTURES, CLOUD/SERVERLESS,
FUNCTIONAL PROGRAMMING, DEVOPS/CONTAINER,
FRONT-END DEV
4. A TUTTA MACHINE LEARNING!
13-14 APRILE – TECH CONFERENCE
7 talk
● Felipe Hoffa – SQL and TensorFlow: Enabling "smart" queries on a data
warehouse
● Pere Urbon-Bayes – Bringing personalisation to data discovery, Learning
to Rank 101
● Jörg Schad – Deep learning beyond the learning
● Danilo Poccia – And Then There Are Algorithms
● Alfredo Morresi – Use Machine Learning in your code, without being a ML
expert
● Alberto Massidda – Deep Learning for Machine Translation: a paradigm
shift
● Giovanni Galloro – Taking Machine Learning to the Next Level
5. A TUTTA MACHINE LEARNING!
13-14 APRILE – TECH CONFERENCE
consigliati dalla community
● Fabio Corrirossi – Live Coding: Machine Learning per videogiochi in
Unity3D
● Andrea Maietta – How to Lie With Stats and Charts
● Alberto Mancini, Francesca Tosi – Stateful stream processing made easy
with Apache Flink.
● Luca Maria Castiglione – Thalos: Simple and Secure approach to file
storage in untrusted environments.
6. KEYNOTE!
13-14 APRILE – TECH CONFERENCE
Douglas
Crockford
PayPal
Amie
Dansby
ATAC
Richard
Feldman
NoRedInk
Jeff
Minter
Llamasoft
Matteo
Collina
nearForm
7. SPEAKER!
13-14 APRILE – TECH CONFERENCE
dalle principali aziende internazionali
NETFLIX, SLACK, GOOGLE, UNITY TECHNOLOGIES,
ORACLE, JETBRAINS, MICROSOFT, MOZILLA
FIREFOX, AMAZON WEB SERVICES, IBM, AKAMAI
TECHNOLOGIES, THE FINANCIAL TIMES, ELASTIC,
UNIVERSITY OF CAMBRIDGE, SCUDERIA FERRARI,
ZALANDO, SAMSUNG