Learn more about technologyandthefuture with this collection
The importance of networking in podcasting
How to grow your podcast audience
How to monetize your podcast
Ask the right questions.
Based on your answers, you will fall under one of the categories:
38
163 reads
MORE IDEAS ON THIS
40
334 reads
It is critical, though time consuming to clean the available data and transforming it into required formats.
Involves segmentation of data sets into training, testing and validation.
38
112 reads
ML Models are only as accurate as the data fed to them.
Important to identify the right set & format of data to ensure accuracy & relevance of the model.
Ask relevant questions:
38
114 reads
After testing the model with different datasets, validate the model performance using the business parameters defined in step 1.
Analyze if KPI's and Business Objectives of the model are achieved. If not, consider changing the model, or improving the quality and quantity of the data.
38
80 reads
After successful validation against all defined parameters, deploy the model onto planned infrastructure - cloud, edge, or on-premises environment.
Before deployment, consider the following
38
79 reads
Machine Learning (ML) is an integral part of Data Science (DS), that helps computers learn from data.
This process of learning from data through machine learning techniques contributes to Artificial Intelligence (AI).
Here is a quick...
39
336 reads
38
90 reads
Primary objective of Model Testing is to improve results and minimize changes in model behavior post-deployment in real world.
Carry out multiple experiments using Training, Validation and Testing Datasets.
If model performs poorly on Training data i...
39
69 reads
AI models need time to be developed.
A smooth and successful model development involves a combined effort from data engineers, data scientists, ML engineers and DevOps engineers.
Proper resource allocation, project planning and management is crucial to meet the business goals and obje...
38
99 reads
When a model is deployed in real-world, the data fed to it is dynamic.
There can also be changes in technology, business goals or drastic real world changes like the pandemic.
It is crucial to analyze how these changes affect the model, so you can reiterate.
Consider monitoring...
38
72 reads
CURATED FROM
The terminologies might change, the technologies might evolve, but this is the future. And that Future is already here!
“
Read & Learn
20x Faster
without
deepstash
with
deepstash
with
deepstash
Access to 200,000+ ideas
—
Access to the mobile app
—
Unlimited idea saving & library
—
—
Unlimited history
—
—
Unlimited listening to ideas
—
—
Downloading & offline access
—
—
Personalized recommendations
—
—
Supercharge your mind with one idea per day
Enter your email and spend 1 minute every day to learn something new.
I agree to receive email updates