"Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64" - Information and Links:

Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64 - Info and Reading Options


“Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64” Metadata:

  • Title: ➤  Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64
  • Author:

Edition Identifiers:

  • Internet Archive ID: ➤  pdriue7gqwevaqlithlamkf8uibdzdqpgxbnydmw

AI-generated Review of “Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64”:


"Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64" Description:

The Internet Archive:

<p>MLOps community meetup #64! Last Wednesday we talked to Christopher  Bergh, CEO, DataKitchen.<br /><br />//Abstract<br />Working on a shared technically difficult problem there will be some things that are important no matter what industry you are in. Whether it's building cars in a factory, using agile or scrum methodology, or productionizing ML models you need a few basics. Chris gives us some of his best practices in the conversation.<br /><br />//Bio<br />Chris Bergh is the CEO and Head Chef at DataKitchen. Chris has more than 25 years of research, software engineering, data analytics, and executive management experience. At various points in his career, he has been a COO, CTO, VP, and Director of Engineering. Chris is a recognized expert on DataOps. He is the co-author of the "DataOps Cookbook\" and the \"DataOps Manifesto,\" and a speaker on DataOps at many industry conferences.<br /><br />//Takeaways<br />Your model is not an island. For success, Data science requires a high level of technical collaboration with other parts of the data organization.<br /><br />//Other Links<br />On-Demand Webinar - Your Model is Not an Island:  Operationalizing Machine Learning at Scale with ModelOps  <br />https://info.datakitchen.io/watch-on-demand-webinar-operationalize-machine-learning-at-scale-with-modelops<br /><br />----------- Connect With Us ✌️-------------   <br />Join our Slack community:  https://go.mlops.community/slack<br />Follow us on Twitter:  @mlopscommunity<br />Sign up for the next meetup:  https://go.mlops.community/register<br /><br />Connect with Demetrios on LinkedIn: https://www.linkedin.com/in/dpbrinkm/<br />Connect with Chris on LinkedIn: https://www.linkedin.com/in/chrisbergh/<br /><br />Timestamps: <br />[00:00] Introduction to Christopher Bergh <br />[02:57] MLOps community in partnership with MLOps World Conference <br />[04:34] Chris' Background <br />[07:59] "When we started with the company, I realized that the problem I have is generalizable to everyone. I'm getting enough there in years and I wanted to remove the amount of pain that other people have." <br />[09:53] DataOps vs MLOps <br />[10:15] "I don't really honestly care what Ops you use, right? Hahaha! Call it your favorite Ops 'cause first of all as an engineer, I want precise definitions. I look at it from a completely odd-ball way so you could call it whatever Ops term you want." <br />[12:45] Best practices of companies <br />[14:16] "When that code runs in production, monitor and check to see if it's right. Absorb it, monitor it because the model could go out of tune. The data going into it could be wrong. The data transformation could break. Shit happens and don't trust your data providers." <br />[19:00] The whole is still greater than its part<br />[20:26] "It is harder to focus on the results than just under a piece of the task. Don't spend too much time on doing the wrong thing." <br />[23:50] DevOps Principles and Agile<br />[27:17] DataOps Manifesto - DataOps is Data Management reborn <br />[27:45] "The 'Ops' term is ending up encompassing the work that you do in addition to the system you build to do the work." <br />[30:45] Standardization  <br />[32:22] "I think that there's a lack of perception of the need to spend time on doing the operations part of the equation." <br />[34:15] Tools as lego blocks <br />[34:49] "Good interphases make good neighbors." <br />[36:23] "Standards can help but they're not the panacea." <br />[36:30] Cultural side - You build it, you own it, you ship it<br />[39:28] Value chain<br />[44:19] Ripple effect of testing<br />[48:03] Google on "One tool to rule them all"<br />[49:50] "Legacy happens if you're gonna live in the real world and not start greenfield projects."<br />[53:47] Starting MLOps in the legacy system<br /></p>

Read “Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64”:

Read “Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64” by choosing from the options below.

Available Downloads for “Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64”:

"Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64" is available for download from The Internet Archive in "audio" format, the size of the file-s is: 53.43 Mbs, and the file-s went public at Thu Jul 01 2021.

Legal and Safety Notes

Copyright Disclaimer and Liability Limitation:

A. Automated Content Display
The creation of this page is fully automated. All data, including text, images, and links, is displayed exactly as received from its original source, without any modification, alteration, or verification. We do not claim ownership of, nor assume any responsibility for, the accuracy or legality of this content.

B. Liability Disclaimer for External Content
The files provided below are solely the responsibility of their respective originators. We disclaim any and all liability, whether direct or indirect, for the content, accuracy, legality, or any other aspect of these files. By using this website, you acknowledge that we have no control over, nor endorse, the content hosted by external sources.

C. Inquiries and Disputes
For any inquiries, concerns, or issues related to the content displayed, including potential copyright claims, please contact the original source or provider of the files directly. We are not responsible for resolving any content-related disputes or claims of intellectual property infringement.

D. No Copyright Ownership
We do not claim ownership of any intellectual property contained in the files or data displayed on this website. All copyrights, trademarks, and other intellectual property rights remain the sole property of their respective owners. If you believe that content displayed on this website infringes upon your intellectual property rights, please contact the original content provider directly.

E. Fair Use Notice
Some content displayed on this website may fall under the "fair use" provisions of copyright law for purposes such as commentary, criticism, news reporting, research, or educational purposes. If you believe any content violates fair use guidelines, please reach out directly to the original source of the content for resolution.

Virus Scanning for Your Peace of Mind:

The files provided below have already been scanned for viruses by their original source. However, if you’d like to double-check before downloading, you can easily scan them yourself using the following steps:

How to scan a direct download link for viruses:

  • 1- Copy the direct link to the file you want to download (don’t open it yet).
  • (a free online tool) and paste the direct link into the provided field to start the scan.
  • 2- Visit VirusTotal (a free online tool) and paste the direct link into the provided field to start the scan.
  • 3- VirusTotal will scan the file using multiple antivirus vendors to detect any potential threats.
  • 4- Once the scan confirms the file is safe, you can proceed to download it with confidence and enjoy your content.

Available Downloads

  • Source: Internet Archive
  • All Files are Available: No
  • Number of Files: 7
  • Number of Available Files: 4
  • Added Date: 2021-07-01 14:14:52
  • Scanner: Internet Archive Python library 1.9.6

Some files are not available for download:

This maybe due to copyright restrictions, still, the book online borrowing may be available at the Internet Archive.

Available Files:

1- Item Tile

  • File origin: original
  • File Format: Item Tile
  • File Size: 0.00 Mbs
  • File Name: __ia_thumb.jpg
  • Direct Link: Click here

2- Metadata

  • File origin: original
  • File Format: Metadata
  • File Size: 0.00 Mbs
  • File Name: pdriue7gqwevaqlithlamkf8uibdzdqpgxbnydmw_files.xml
  • Direct Link: Click here

3- Metadata

  • File origin: original
  • File Format: Metadata
  • File Size: 0.00 Mbs
  • File Name: pdriue7gqwevaqlithlamkf8uibdzdqpgxbnydmw_meta.sqlite
  • Direct Link: Click here

4- Metadata

  • File origin: original
  • File Format: Metadata
  • File Size: 0.00 Mbs
  • File Name: pdriue7gqwevaqlithlamkf8uibdzdqpgxbnydmw_meta.xml
  • Direct Link: Click here

Search for “Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64” downloads:

Visit our Downloads Search page to see if downloads are available.

Find “Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64” in Libraries Near You:

Read or borrow “Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64” from your local library.

Buy “Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64” online:

Shop for “Operationalizing Machine Learning At Scale // Christopher Bergh // MLOps Meetup #64” on popular online marketplaces.