Remove 2001 Remove Innovation Remove Software Remove Technology
article thumbnail

Conserve or Invest?

The Agile Manager

Both the financial and real economies have suffered quite a few shocks in the last 20 years: the dot-com bubble bursting (2000); September 11 (2001); the Great Recession (2008); and today in 2020 the COVID-19 crisis is wreaking economic havoc. It was much different in 2008. Social media was just coming into its own.

article thumbnail

Building and Scaling Data Lineage at Netflix to Improve Data Infrastructure Reliability, and…

The Netflix TechBlog

Now, imagine yourself in the role of a software engineer responsible for a micro-service which publishes data consumed by few critical customer facing services (e.g. We will be at Strata San Francisco on March 27th in room 2001 delivering a tech session on this topic, please join us and share your experiences. come join us.

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

Jamstack CMS: The Past, The Present and The Future

Smashing Magazine

Fast-forward 30 years, and website technology has changed significantly — we have images, stylesheets, JavaScript, streaming video, AJAX, animation, WebSockets, WebGL, rounded corners in CSS — the list goes on. In the 2000s we had a showdown of two popular blog publishing platforms — MovableType in 2001 and WordPress in 2003.

Ecommerce 140
article thumbnail

Bringing the Magic of Amazon AI and Alexa to Apps on AWS.

All Things Distributed

We also have a great deal of machine learning technology that can benefit machine scientists and developers working outside Amazon. They also started asking us to give them access to the technology that powers Alexa, so that they can add a conversational interface (using voice or text) to their mobile apps. Amazon Lex. Amazon Polly.

AWS 165
article thumbnail

Netflix: A Culture of Learning

The Netflix TechBlog

The secret sauce that turns the raw ingredients of experimentation into supercharged product innovation is culture. As discussed in Part 6 , there are experimentation and causal inference focussed data scientists who collaborate with product innovation teams across Netflix. Early experimentation tooling at Netflix, from 2001.

Education 238