Schedule

The Fifth Elephant 2015

A conference on data, machine learning, and distributed and parallel computing

Audi 1

Audi 2

Audi 3

BoF space

08:30–09:25

Check-in

09:25–09:45

Conference Introduction

09:45–10:30

Critical pipe fittings: What every data pipeline requires

Yagnik

09:45–10:30

Graph Algorithms and Computer Vision

Sumod Mohan

10:30–10:50

Dead Simple Scalability Patterns

Vedang Manerikar

10:30–10:50

Running natural language queries against NoSQL schema

Deepak Krishnan

10:50–11:20

Morning tea break

11:20–12:20

Keynote: Data Comes in Shapes

Tim Poston

12:20–13:00

Keynote: Future patterns in data processing (sponsored)

Amod Malviya

13:00–14:00

Lunch Break

14:00–14:45

Are these the same pair of shoes? - Matching retail products at scale

Nikhil Ketkar

14:00–14:45

A review of important results in distributed systems

Vaidhy Gopalan

14:00–15:05

Computing languages BOF – Julia and R

Viral Shah, Ravishankar R., Shashi Gowda, Dhanesh Padmanabhan

14:45–15:05

Search at Petabyte scale

Anup Nair

14:45–15:05

When Apache ZooKeeper is good fit

Rakesh R

15:05–15:25

HawkEye: A Real-Time Anomaly Detection System

Satnam Singh, PhD

15:05–15:25

Exploratory data analysis using Apache Lens and Apache Zeppelin

Bala Nathan

15:05–16:10

Social circus – learn juggling, hooping, stretches

Kristen McQuillin

15:25–16:10

Approximate algorithms for summarizing streaming data

Himadri Sarkar

15:25–16:10

Apache Tez - Present and Future

Rajesh Balamohan

16:10–16:45

Evening tea Break

16:45–17:30

CAP Theorem: You don’t need CP, you don’t want AP, and you can’t have CA

Siddhartha Reddy

16:45–17:30

Instrumenting your kafka & storm pipeline

Bhasker Kode

17:30–17:50

Joining data streams at scale for fun and profit

Aniruddha Gangopadhyay

17:30–17:50

Making a contextual recommendation engine using Python and Deep Learning at ParallelDots

Muktabh Mayank

17:50–18:35

Revolutionizing travel with ML & Analytics – An insight into business optimization using Machine Learning and Advanced Analytics

Raghu Kashyap

Audi 1

Audi 2

Audi 3

BoF space

08:30–09:45

Check-in

09:45–10:30

Deep Learning for Natural Language Processing

Devashish Shankar

09:45–10:30

The many ways of parallel computing with Julia

Viral B. Shah

10:30–10:50

Using Modes for Time Series Classification

Rohit Chatterjee

10:30–10:50

Harnessing the power of the Erlang VM at Housing

Abhijit Pratap Singh

10:50–11:20

Morning tea break

11:20–12:20

Keynote: "Thinking Machines"

Shailesh Kumar

12:20–13:00

Building a E-commerce search engine: Challenges, insights and approaches (sponsored)

Vinodh Kumar R

12:20–13:00

Deploying Batch and Streaming Architectures on AWS (sponsored)

Russell Nash

13:00–14:00

Lunch

14:00–14:45

Keeping Moore's law alive: Neuromorphic computing

Anand Chandrasekaran

14:00–14:45

Call me maybe: Jepsen and flaky networks

Shalin Mangar

14:00–15:05

Apache Spark BOF

Madhukara Phatak, Yagnik Khanna

14:45–15:05

Hardware Accelerated Big Data Processing

Reetinder Sidhu

14:45–15:05

POC: How to slice, dice & search billions of users events in seconds (from scratch)

Bhasker Kode

15:05–15:50

Visualising Multi Dimensional Data

Amit Kapoor

15:05–15:50

Building tiered data stores using Aesop to bridge SQL and NoSQL systems

Regunath Balasubramanian

15:05–16:10

Deep learning BOF

Shailesh Kumar, Bargava S., Raghotham, Anand C

15:50–16:10

Escher - democratizing beautiful visualizations

Shashi Gowda

15:50–16:10

Building Recommender system

Swaroop Krothapalli

16:10–16:45

Evening tea break

16:45–17:45

Two Years Wiser: The Nilenso Experiment

Steven Deobald

17:45–18:30

Recommendation System beyond traditional Collaborative filtering

Gagandeep Juneja

17:45–18:30

Processing large data with Apache Spark

Venkata Naga Ravi

Audi 1

Audi 2

Audi 3

BoF space

09:00–09:30

Registrations and check-ins

09:30–11:00

Understanding supervised machine learning hands on!

Harshad Saykhedkar

09:30–11:00

Introduction to Deep Learning

Bargava Subramanian

11:00–11:30

Morning tea break

11:30–13:30

Understanding supervised machine learning hands-on - continued

11:30–13:30

Introduction to deep learning – continued

13:30–14:15

Lunch

14:15–16:00

Igniting your data with Apache Spark

Yagnik

14:15–16:00

Introduction to deep learning continued

16:00–16:30

Evening tea break

16:30–18:30

Igniting your data with Apache Spark - continued

16:30–18:00

Introduction to deep learning – continued

Hosted by

Jump starting better data engineering and AI futures