Carly Richmnd
Building Your Own Classification Model with JavaScript - Coffee with Developers - Carly Richmond
#1about 3 minutes
Building a machine learning game with JavaScript
A side project inspired by the Netflix show "Is It Cake?" was created to experiment with machine learning in JavaScript using TensorFlow.js.
#2about 2 minutes
Training a custom binary classifier from scratch
The process of building a custom binary classifier involved collecting a dataset of images and training the model to extract features without overfitting.
#3about 1 minute
Diagnosing why the custom classification model failed
The custom model failed to identify cakes, likely due to insufficient training data, the use of color images instead of monochromatic ones, or simple coding errors.
#4about 3 minutes
Improving accuracy with transfer classification and MobileNet
Using transfer classification with the pre-trained MobileNet model significantly improved cake detection accuracy compared to building a model from scratch.
#5about 3 minutes
The developer trend of consuming vs creating AI
Modern developers often prefer consuming off-the-shelf AI solutions due to system complexity and time pressures, which can reduce natural curiosity and deep learning.
#6about 4 minutes
How engineering managers can stay technically hands-on
Managers can stay technical by purposefully blocking out calendar time for coding and seeking roles or company cultures that expect and support their hands-on contributions.
#7about 5 minutes
Fostering innovation with internal hackathons and tinker time
Company-sponsored hackathons or innovation weeks can drive creativity, but they often fail when participation becomes optional under deadline pressure or when winning projects are not implemented.
#8about 3 minutes
The problem of trust and transparency in AI models
While platforms provide model cards to explain training data and limitations, they often lack sufficient detail, making it difficult to assess potential biases and build trust.
#9about 3 minutes
Why the marketplace for custom AI datasets failed
The concept of a marketplace for custom datasets has not taken off due to the dominance of large AI providers, the high cost of training, and a developer preference for established solutions.
#10about 5 minutes
Balancing AI automation and authenticity in content creation
While AI tools can automate content generation, they risk losing the author's authentic voice, shifting the creator's role from writing to validating and editing AI output.
#11about 5 minutes
Addressing the societal risks of deepfakes and misinformation
The ability to generate realistic deepfakes poses a significant risk for public figures and society, highlighting the urgent need for established ethical guidelines on AI usage.
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Matching moments
03:27 MIN
Using JavaScript and ML to solve a baking show challenge
Is it (F)ake?! Image Classification with TensorFlow.js
04:14 MIN
The origin of the "Is it Cake?" machine learning project
Mastering Image Classification: A Journey with Cakes
04:41 MIN
Building an image classification game inspired by "Is It Cake?"
Mastering Image Classification: A Journey with Cakes
06:44 MIN
The developer's journey for building AI applications
Supercharge your cloud-native applications with Generative AI
01:38 MIN
How AI gives developers the courage to experiment
Beyond the IDE: A new era of agent collaboration
03:37 MIN
Playing the "Is it Cake?" game and comparing results
Mastering Image Classification: A Journey with Cakes
01:54 MIN
Real-world applications and key takeaways
Machine learning 101: Where to begin?
03:15 MIN
Core principles for developers building trustworthy AI
Trust by Design: Creating Responsible AI-Powered Services
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