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Deploying an End-to-End
TigerGraph Enterprise
Architecture using Kafka,
MariaDB and PyTigerGraph
1
Szilard Barany and Bruno Šimić
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
Introduction
Bruno
Senior Solution Architect DACH
● 25+ Years in the IT Industry
● Database & Open Source Veteran
● Author of various DB related publications
Szilard
Senior Solution Architect EMEA
● 24 years in data storage, processing and analytics
● Has a history of working with graphs since university
● Multiple certification in relational and Big Data
2
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
● Demos, PoCs, trainings, workshops and internal experiments:
they all need a technical infrastructure
● Need to support the demonstration and/or use of:
○ Building data pipelines:
■ streaming data in, (real-time) analytical results out
■ ML/AI, Python
● Build this frequently, within short time
● It’s not reusable
The Requirement
3
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
● Maximum portability and compatibility, minimal prerequisites
● Lightweight architecture
● Define a common, modular, customisable infrastructure concept
● Fully integrated: components can interact out-of-the box
● Easy deployment: software architecture, plus data and code for the use case
deployed at once
The Solution
4
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
● We will start by downloading a deployment shell script from my public
Github account, set the execution rights and start it:
○ wget https://bit.ly/tg_workshop -O deploy_ws.sh
○ chmod +x deploy_ws.sh
○ ./deploy_ws.sh 1
● Requirements: docker & docker-compose preinstalled
● Tested on Mac and various Linux distributions
Let it Run
5
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
The Architecture
6
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
● deploy_ws.sh - bash script with all necessary steps to deploy, create and
load data
● docker-compose.yaml - defines docker images to deploy, network, shared
volumes and and dependencies
● fraud.zip - DDL for MariaDB and TigerGraph, data dump, conf files, etc
The Implementation
7
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
The Demo
8
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
● A fairly simple solution to automate a fairly complex task
● Not an enterprise grade solution, but could be a template for one
● Keeping it simple, but providing everything needed
● Open source, community supported
The Conclusion & Q&A
9
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
Instructions for Speakers
10
Question Answer
When do I need to have my
content ready?
Sept 18, 2020 5pm Pacific Daylight Time
Which slide template can I use? You can use this deck. Make a copy of the Google Slide deck or download as a
PowerPoint (Choose File → Download as Microsoft PowerPoint .pptx)
When will my session be
recorded?
All sessions will be recorded from Sept 21 to Sept 23. Schedule your recording slot by
adding your name to the desired slot by Sept 16, 2020 5:00 pm US Pacific Time:
https://docs.google.com/spreadsheets/d/1eNCFmGEEF0N2kJfOlYLbyPdh5W6N1hb-tr
ZOLkZyC6w/edit#gid=0 (this is not applicable for keynote or roundtable speakers-
Graph +AI World team will contact you separately to schedule)
How much content should I plan? 30 Minute Session: Plan for 20-25 min (max) of content for 30 min session
(last 5 minutes are for live Q and A)
1 Hour Session: Plan for 45-50 min (max) of content for 1 hour session
(last 10 minutes are for live Q and A)
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
Get Your T-shirt
❏ What to wear? You can wear a Graph + AI World
T-shirt if you want to.
❏ Just fill out this Google Form by Wednesday Sept
16, 5 pm Pacific to have it shipped to you in time for
the recording next week -
https://forms.gle/zv5TbFurfeNQkU9C6 (If you can’t use the Google
Form, please email your address and T-shirt size to
marketing@tigergraph.com)
11
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
Recording Tips for Speakers
❏ If you are using Zoom to record your session
there are several screen views. Use “shared
screen with active speaker” OR just the screen
view if you prefer not to be on camera.
❏ If your laptop supports it, use the Graph + AI
World backgrounds on Zoom -
https://drive.google.com/drive/folders/19hHPRyhLwqwGCvg4h5
3arLeZ7-LWawZX?usp=sharing
❏ Use a stand or a stack of books below your
laptop to raise it up, so the camera is at eye
level
❏ Lighting - Sit in a room that has ample natural
light or lamps (lighting should be in front of you
or above you, not behind you for best recorded
video.)
12
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
● Each session has 5 minutes of question and answer time at the end. For a 30 minute session, we
are asking speakers to record 25 minutes of presentation, which will be streamed to attendees,
followed by a live Q and A. We are requesting speakers to join the session (if their schedule
permits) and especially, the 5 minute Q and A at the end of the session.
● In addition to the end of the session Q and A, attendees can enter their questions during the
session in the Graph+AI World attendee virtual portal
● Speakers can join live during their session if their schedule permits and answer the question
during the the session as well as at the end during 5 minute Q and A window
● If speakers aren't able to join for the live session due to timezone or schedule constraints, Graph
+ AI World team will be sure to get them the questions, so that speakers can answer those and
we can share those back with the attendees
Session Q & A Details
13
| GRAPHAIWORLD.COM | #GRAPHAIWORLD |
❏ By Wednesday, Sept 16, 2020 5:00 pm US Pacific Time
Fill out the Google form to have Graph + AI World T-shirt shipped to you in time for the recording next
week - https://forms.gle/zv5TbFurfeNQkU9C6
❏ By Wednesday, Sept 16, 2020 5:00 pm US Pacific Time
Schedule your recording slot here: Add your name to the desired slot
https://docs.google.com/spreadsheets/d/1eNCFmGEEF0N2kJfOlYLbyPdh5W6N1hb-trZOLkZyC6w/edi
t#gid=0
❏ By Friday, Sept 18 2020 5:00 pm US Pacific Time
Have your deck ready for recording
❏ During Sept 28 - 30, 2020
If possible, please join your live session for Q&A with thousands of attendees (Please advise us during
the session recording if you will be available for the entire session or just for the last 5 minutes of Q&A)
Key Dates - Summary
14

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Deploying an End-to-End TigerGraph Enterprise Architecture using Kafka, MariaDB and PyTigerGraph

  • 1. Deploying an End-to-End TigerGraph Enterprise Architecture using Kafka, MariaDB and PyTigerGraph 1 Szilard Barany and Bruno Šimić
  • 2. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | Introduction Bruno Senior Solution Architect DACH ● 25+ Years in the IT Industry ● Database & Open Source Veteran ● Author of various DB related publications Szilard Senior Solution Architect EMEA ● 24 years in data storage, processing and analytics ● Has a history of working with graphs since university ● Multiple certification in relational and Big Data 2
  • 3. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | ● Demos, PoCs, trainings, workshops and internal experiments: they all need a technical infrastructure ● Need to support the demonstration and/or use of: ○ Building data pipelines: ■ streaming data in, (real-time) analytical results out ■ ML/AI, Python ● Build this frequently, within short time ● It’s not reusable The Requirement 3
  • 4. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | ● Maximum portability and compatibility, minimal prerequisites ● Lightweight architecture ● Define a common, modular, customisable infrastructure concept ● Fully integrated: components can interact out-of-the box ● Easy deployment: software architecture, plus data and code for the use case deployed at once The Solution 4
  • 5. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | ● We will start by downloading a deployment shell script from my public Github account, set the execution rights and start it: ○ wget https://bit.ly/tg_workshop -O deploy_ws.sh ○ chmod +x deploy_ws.sh ○ ./deploy_ws.sh 1 ● Requirements: docker & docker-compose preinstalled ● Tested on Mac and various Linux distributions Let it Run 5
  • 6. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | The Architecture 6
  • 7. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | ● deploy_ws.sh - bash script with all necessary steps to deploy, create and load data ● docker-compose.yaml - defines docker images to deploy, network, shared volumes and and dependencies ● fraud.zip - DDL for MariaDB and TigerGraph, data dump, conf files, etc The Implementation 7
  • 8. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | The Demo 8
  • 9. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | ● A fairly simple solution to automate a fairly complex task ● Not an enterprise grade solution, but could be a template for one ● Keeping it simple, but providing everything needed ● Open source, community supported The Conclusion & Q&A 9
  • 10. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | Instructions for Speakers 10 Question Answer When do I need to have my content ready? Sept 18, 2020 5pm Pacific Daylight Time Which slide template can I use? You can use this deck. Make a copy of the Google Slide deck or download as a PowerPoint (Choose File → Download as Microsoft PowerPoint .pptx) When will my session be recorded? All sessions will be recorded from Sept 21 to Sept 23. Schedule your recording slot by adding your name to the desired slot by Sept 16, 2020 5:00 pm US Pacific Time: https://docs.google.com/spreadsheets/d/1eNCFmGEEF0N2kJfOlYLbyPdh5W6N1hb-tr ZOLkZyC6w/edit#gid=0 (this is not applicable for keynote or roundtable speakers- Graph +AI World team will contact you separately to schedule) How much content should I plan? 30 Minute Session: Plan for 20-25 min (max) of content for 30 min session (last 5 minutes are for live Q and A) 1 Hour Session: Plan for 45-50 min (max) of content for 1 hour session (last 10 minutes are for live Q and A)
  • 11. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | Get Your T-shirt ❏ What to wear? You can wear a Graph + AI World T-shirt if you want to. ❏ Just fill out this Google Form by Wednesday Sept 16, 5 pm Pacific to have it shipped to you in time for the recording next week - https://forms.gle/zv5TbFurfeNQkU9C6 (If you can’t use the Google Form, please email your address and T-shirt size to marketing@tigergraph.com) 11
  • 12. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | Recording Tips for Speakers ❏ If you are using Zoom to record your session there are several screen views. Use “shared screen with active speaker” OR just the screen view if you prefer not to be on camera. ❏ If your laptop supports it, use the Graph + AI World backgrounds on Zoom - https://drive.google.com/drive/folders/19hHPRyhLwqwGCvg4h5 3arLeZ7-LWawZX?usp=sharing ❏ Use a stand or a stack of books below your laptop to raise it up, so the camera is at eye level ❏ Lighting - Sit in a room that has ample natural light or lamps (lighting should be in front of you or above you, not behind you for best recorded video.) 12
  • 13. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | ● Each session has 5 minutes of question and answer time at the end. For a 30 minute session, we are asking speakers to record 25 minutes of presentation, which will be streamed to attendees, followed by a live Q and A. We are requesting speakers to join the session (if their schedule permits) and especially, the 5 minute Q and A at the end of the session. ● In addition to the end of the session Q and A, attendees can enter their questions during the session in the Graph+AI World attendee virtual portal ● Speakers can join live during their session if their schedule permits and answer the question during the the session as well as at the end during 5 minute Q and A window ● If speakers aren't able to join for the live session due to timezone or schedule constraints, Graph + AI World team will be sure to get them the questions, so that speakers can answer those and we can share those back with the attendees Session Q & A Details 13
  • 14. | GRAPHAIWORLD.COM | #GRAPHAIWORLD | ❏ By Wednesday, Sept 16, 2020 5:00 pm US Pacific Time Fill out the Google form to have Graph + AI World T-shirt shipped to you in time for the recording next week - https://forms.gle/zv5TbFurfeNQkU9C6 ❏ By Wednesday, Sept 16, 2020 5:00 pm US Pacific Time Schedule your recording slot here: Add your name to the desired slot https://docs.google.com/spreadsheets/d/1eNCFmGEEF0N2kJfOlYLbyPdh5W6N1hb-trZOLkZyC6w/edi t#gid=0 ❏ By Friday, Sept 18 2020 5:00 pm US Pacific Time Have your deck ready for recording ❏ During Sept 28 - 30, 2020 If possible, please join your live session for Q&A with thousands of attendees (Please advise us during the session recording if you will be available for the entire session or just for the last 5 minutes of Q&A) Key Dates - Summary 14