Este documento explora las decisiones y el futuro de una persona, incluyendo si alcanzará el triunfo o el fracaso, qué tipo de estilo de vida, persona y relaciones quiere tener, y si debería definirse solo por su profesión.
Claves de Liderazgo de Carlos Pauner. #deporteyvalores Carlos Pauner
Claves, principios y valores del alpinista Carlos Pauner para liderar a las personas al éxito. Reflexiones tras la consecución del objetivo 14ochomiles del Himalaya.
Empoderamiento, endoliderazgo y eficacia personal son el triangulo del cambio intrapersonal. Selforching establece esta base, para resolver nuestra vida.
Yo Soy S.A. ¿Eres lo que realmente quieres comunicar a los demás? O tu comportamiento desdice lo que expresas. Yo Soy S.A, es un planteamiento personal que cada uno debe considerar como su Plan de Vida para saber ser cada día mejor.
Claves de Liderazgo de Carlos Pauner. #deporteyvalores Carlos Pauner
Claves, principios y valores del alpinista Carlos Pauner para liderar a las personas al éxito. Reflexiones tras la consecución del objetivo 14ochomiles del Himalaya.
Empoderamiento, endoliderazgo y eficacia personal son el triangulo del cambio intrapersonal. Selforching establece esta base, para resolver nuestra vida.
Yo Soy S.A. ¿Eres lo que realmente quieres comunicar a los demás? O tu comportamiento desdice lo que expresas. Yo Soy S.A, es un planteamiento personal que cada uno debe considerar como su Plan de Vida para saber ser cada día mejor.
Diapositiva donde observamos un mapa mental de algunos aspectos importantes para tener en cuenta a la hora de realizar nuestro proyecto personal de vida.
Diapositiva donde observamos un mapa mental de algunos aspectos importantes para tener en cuenta a la hora de realizar nuestro proyecto personal de vida.
Problem Solving Recipes Learned from Supporting Spark: Spark Summit East talk...Spark Summit
Due to Spark, writing big data applications has never been easier…at least until they stop being easy! At Lightbend we’ve helped our customers out of a number of hidden Spark pitfalls. Some crop up often; the ever-persistent OutOfMemoryError, the confusing NoSuchMethodError, shuffle and partition management, etc. Others occur less frequently; an obscure configuration affecting SQL broadcasts, struggles with speculating, a failing stream recovery due to RDD joins, S3 file reading leading to hangs, etc. All are intriguing! In this session we will provide insights into their origins and show how you can avoid making the same mistakes. Whether you are a seasoned Spark developer or a novice, you should learn some new tips and tricks that could save you hours or even days of debugging.
Building a Dataset Search Engine with Spark and Elasticsearch: Spark Summit E...Spark Summit
Elasticsearch provides native integration with Apache Spark through ES-Hadoop. However, especially during development, it is at best cumbersome to have Elasticsearch running in a separate machine/instance. Leveraging Spark Cluster with Elasticsearch Inside it is possible to run an embedded instance of Elasticsearch in the driver node of a Spark Cluster. This opens up new opportunities to develop cutting-edge applications. One such application is Dataset Search.
Oscar will give a demo of a Dataset Search Engine built on Spark Cluster with Elasticsearch Inside. Motivation is that once Elasticsearch is running on Spark it becomes possible and interesting to have the Elasticsearch in-memory instance join an (existing) Elasticsearch cluster. And this in turn enables indexing of Datasets that are processed as part of Data Pipelines running on Spark. Dataset Search and Data Management are R&D topics that should be of interest to Spark Summit East attendees who are looking for a way to organize their Data Lake and make it searchable.
Spark and Object Stores —What You Need to Know: Spark Summit East talk by Ste...Spark Summit
If you are running Apache Spark in cloud environments, Object Stores —such as Amazon S3 or Azure WASB— are a core part of your system. What you can’t do is treat them like “just another filesystem” —do that and things will, eventually, go horribly wrong.
This talk looks at the object stores in the cloud infrastructures, including underlying architectures., compares them to what a “real filesystem” is expected to do and shows how to use object stores efficiently and safely as sources of and destinations of data.
It goes into depth on recent “S3a” work, showing how including improvements in performance, security, functionality and measurement —and demonstrating how to use make best use of it from a spark application.
If you are planning to deploy Spark in cloud, or doing so today: this is information you need to understand. The performance of you code and integrity of your data depends on it.
Lessons Learned from Dockerizing Spark Workloads: Spark Summit East talk by T...Spark Summit
Many initiatives for running applications inside containers have been scoped to run on a single host. Using Docker containers for large-scale production environments poses interesting challenges, especially when deploying distributed Big Data applications like Apache Spark.
Some of these challenges include container lifecycle management, smart scheduling for optimal resource utilization, network configuration and security, and performance. At BlueData, we’re “all in” on Docker containers – with a specific focus on Spark applications. We’ve learned first-hand how to address these challenges for Fortune 500 enterprises and government organizations that want to deploy Big Data workloads using Docker.
In this session, you’ll learn about networking Docker containers across multiple hosts securely. We’ll discuss ways to achieve high availability across distributed Big Data applications and hosts in your data center. And since we’re talking about very large volumes of data, performance is a key factor. So we’ll discuss some of the storage options we explored and implemented at BlueData to achieve near bare-metal I/O performance for Spark using Docker. We’ll share our lessons learned as well as some tips and tricks on how to Dockerize your Big Data applications in a reliable, scalable, and high-performance environment.
Apache Carbondata: An Indexed Columnar File Format for Interactive Query with...Spark Summit
Realtime analytics over large datasets has become an increasing wide-spread demand, over the past several years, Hadoop ecosystem has been continuously evolving, even complex queries over large datasets can be realized in an interactive fashion with distributed processing framework like Apache Spark, new paradigm of efficient storage were introduced as well to facilitate data processing framework, such as Apache Parquet, ORC provide fast scan over columnar data format, and Apache Hbase offers fast ingest and millisecond scale random access.
In this talk, we will outline Apache Carbondata, a new addition to open source Hadoop ecosystem which is an indexed columnar file format aimed for bridging the gap to fully enable real-time analytics abilities. It has been deeply integrated with Spark SQL and enables dramatic acceleration of query processing by leveraging efficient encoding/compression and effective predicate push down through Carbondata’s multi-level index technique.
Custom Applications with Spark's RDD: Spark Summit East talk by Tejas PatilSpark Summit
In this talk, we will discuss several advantages of the Spark RDD API for developing custom applications when compared to pure SQL-like interfaces such as Hive. In particular, we will describe how to control data distribution, avoid data skew, and implement application specific optimizations in order to build performant and reliable data pipelines. In order to illustrate these ideas, we will share our experiences redesigning a large-scale, complex (100+ stage) language model training pipeline for Spark that was originally built in Hive. The final Spark based pipeline is modular, readable, and more maintainable when compared to previous set of HQL queries. In addition to the qualitative improvements, we also observed a significant reduction in both resource usage and data landing time. Finally, we will also describe Spark optimizations that we implemented for this workload that can be applied toward batch workloads in general.
APACHE TOREE: A JUPYTER KERNEL FOR SPARK by Marius van NiekerkSpark Summit
Many data scientists are already making heavy usage of the Jupyter ecosystem for analyzing data using interactive notebooks.
Apache Toree (incubating) is a Jupyter kernel designed to act as a gateway to Spark by enabling users Spark from standard Jupyter notebooks. This allows users to easily integrate Spark into their existing Jupyter deployments, This allows users to easily move between languages and contexts without needing to switch to a different set of tools.
Apache Toree is designed expressly for interactive work. It supports interpreters in Scala, Python, and R.
In this talk, I will cover the design of Toree, how it interacts with the Jupyter ecosystem and various ways in which users can extend the functionality of Apache Toree via a powerful plugin system.
La Unidad Eudista de Espiritualidad se complace en poner a su disposición el siguiente Triduo Eudista, que tiene como propósito ofrecer tres breves meditaciones sobre Jesucristo Sumo y Eterno Sacerdote, el Sagrado Corazón de Jesús y el Inmaculado Corazón de María. En cada día encuentran una oración inicial, una meditación y una oración final.
ROMPECABEZAS DE ECUACIONES DE PRIMER GRADO OLIMPIADA DE PARÍS 2024. Por JAVIE...JAVIER SOLIS NOYOLA
El Mtro. JAVIER SOLIS NOYOLA crea y desarrolla el “ROMPECABEZAS DE ECUACIONES DE 1ER. GRADO OLIMPIADA DE PARÍS 2024”. Esta actividad de aprendizaje propone retos de cálculo algebraico mediante ecuaciones de 1er. grado, y viso-espacialidad, lo cual dará la oportunidad de formar un rompecabezas. La intención didáctica de esta actividad de aprendizaje es, promover los pensamientos lógicos (convergente) y creativo (divergente o lateral), mediante modelos mentales de: atención, memoria, imaginación, percepción (Geométrica y conceptual), perspicacia, inferencia, viso-espacialidad. Esta actividad de aprendizaje es de enfoques lúdico y transversal, ya que integra diversas áreas del conocimiento, entre ellas: matemático, artístico, lenguaje, historia, y las neurociencias.
2. Tengouna
• Triunfo o fracaso
• ¿Qué hay después?
• ¿Es la mejor meta para mi?
• Llego tomando decisiones correctas
3. Miro al horizonte
Optopor ir hacia ………
ESTILO DE VIDA
TIPO DE PERSONA
RELACIÓN CON LAS PERSONAS
Tranquila
Activa
Autónoma
Creativa
Comprometida
Con lujos
Ecológica Cultural
Familia Amigos
Cooperación
Competición