In Peter's spare time projects he recently realized the power of machine learning, turning a good solution into a great, by automating tedious or seemingly impossible manual tasks. In this talk Peter will tell the story about how he applied machine learning to enhance the user experience of data entry and search using natural language processing and face recognition in one of the spare time projects, a large crowd sourced wiki. The results of those enhancements exceeded his wildest expectations.
Peter Heiberg is a seasoned software developer with a passion for sharing knowledge. He has been working as a consultant at 1337 the last 12 years. Peter has spent the last two decades developing line of business applications in the day and coding for fun on his spare time in various projects.
We seek to provide a respectful, friendly, professional experience for everyone, regardless of gender, sexual orientation, physical appearance, disability, age, race or religion. We do not tolerate any behavior that is harassing or degrading to any individual, in any form. The Code of Conduct will be enforced.
All live stream organizers using the Global Azure brand and Global Azure speakers are responsible for knowing and abiding by these standards. Each speaker who wishes to submit through our Call for Presentations needs to read and accept the Code of Conduct. We encourage every organizer and attendee to assist in creating a welcoming and safe environment. Live stream organizers are required to inform and enforce the Code of Conduct if they accept community content to their stream.
If you are being harassed, notice that someone else is being harassed, or have any other concerns, report it. Please report any concerns, suspicious or disruptive activity or behavior directly to any of the live stream organizers, or directly to the Global Azure admins at email@example.com. All reports to the Global admin team will remain confidential.
We expect local organizers to set up and enforce a Code of Conduct for all Global Azure live stream.
A good template can be found at https://confcodeofconduct.com/, including internationalized versions at https://github.com/confcodeofconduct/confcodeofconduct.com. An excellent version of a Code of Conduct, not a template, is built by the DDD Europe conference at https://dddeurope.com/2020/coc/.