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Live Webinar July 19th, 2016 12:00 PM – 3:00 PM EDT
Duration: 3 Hours Credits: up to 3 PDU Category C Free
Presented by : O’Reilly

Join Monal Daxini, Robert Aboukhalil, Homin Lee for 3 excellent 1 hour sessions and learn hour to Turn Big Data Into Knowledge

Netflix Keystone:
Cloud Scale Event Processing Pipeline

Keystone processes over 700 billion events per day (1 peta byte) with at-least-once processing semantics in the cloud. Monal Daxini details how they used Kafka, Samza, Docker, and Linux at scale to implement a multi-tenant pipeline in AWS cloud within a year.

Montal will also share plans on offering a Stream Processing as a Service for all of Netflix use.

Presenter:  Monal Daxini (LinkedIn profile) is a senior software engineer at Netflix building a scalable and multi-tenant event processing pipeline. Monal has worked on Netflix’s Cassandra & Dynamite infrastructure, and was instrumental in developing the encoding compute infrastructure for all Netflix content. He has over 15 years of experience building scalable distributed systems at organizations like Netflix, NFL.com, and Cisco.

A Deep Dive Into R For Python Developers

Increasingly, R and Python are occupying a large part of the data scientist’s toolbox.

For Python developers, using R means having access to numerous tools for statistics, data manipulation, machine learning, and graphing.

This talk is aimed at Python developers looking for a quick guide to the R language, and will cover R’s essential features, its quirks, and how to write efficient R code.

Presenter: Robert Aboukhalil (LinkedIn profile, blog) is a computational biologist at Fluidigm, where he uses R, Python and other data science tools every day to analyze and visualize genomics datasets. Robert holds a PhD in Computational Biology from Cold Spring Harbor Laboratory.

Detecting Outliers & Anomalies In Real-Time At Datadog

Datadog provides outlier and anomaly detection functionality to automatically alert on metrics that are difficult to monitor using thresholds alone. In this presentation, Homin Lee discusses the algorithms and open source tools Datadog uses, lessons they’ve learned from using these alerts on their own systems, along with some real-life examples on how to avoid false positives and negatives.

 Presenter:  Homin Lee (LinkedIn profile) is a data scientist for Datadog, where he writes algorithms that process hundreds of billions data points a day. Prior to Datadog, Homin built large-scale machine learning systems at several start-ups. Homin has a PhD from Columbia University in computational learning theory, and was a Computing Innovation Fellow at the University of Texas at Austin.

PDU Category C (PMBOK 5) documentation details:
Process Groups: Executing
Knowledge Areas: 4 – Integration 5 – Scope 6 – Time

  • 4.1 Develop Project Charter
  • 4.3 Direct and Manage Project Work
  • 5.2 Collect Requirements
  • 5.3 Define Scope

As a Category C “Self Directed Learning Activity” remember to document your learning experience and its relationship to project management for your “PDU Audit Trail Folder”

Click to register for:
Turning Big Data Into Knowledge

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Technical Project Management Leadership Strategic & Business Management