About the webinar
It’s no secret that a well-organized product catalog becomes extremely crucial as consumers look for a more rich and consistent online experience while E-shopping. Often, the task of digitizing the catalog of the fast-moving and large volume products becomes daunting due to insufficient, erroneous and fragmented data.
This leads us to the question: If E-commerce and fashion companies need to be agile and consumer-friendly, then why are so many still using the same product catalog management methods that were devised years ago? The manual product classification and data attribution process are only leading to an increased risk of error and time delay affecting the brand reputation. Also, leading to lost sales opportunities due to incomplete or inaccurate product records that don’t really reflect the actual product.
In this webinar, we will discuss how to efficiently manage machine learning projects without tech headaches by plugging in your data and building your models instantly.
What you'll learn
- How E-commerce companies are using AI to drive more sales and seamless customer experience
- Know the secret sauce of automating time-intensive, repetitive steps to quickly build models
- Demo: A deeper understanding of the end-to-end machine learning workflow for a fashion product catalog management using Skyl.ai
Exploring the Future Potential of AI-Enabled Smartphone Processors
test - Future of Ecommerce: How to Improve the Online Shopping Experience Using Machine Learning?
1. Future of Ecommerce & Fashion
How to improve online shopping
experience with Machine Learning?
2. Technology leader with 20+ years expertise in Product
Development, Business strategy and Artificial Intelligence
acceleration. Active contributor in the New York AI
community
Extensively worked with global organizations in BFSI,
Healthcare, Insurance, Manufacturing, Retail and
Ecommerce to define and implement AI strategies
Nisha Shoukath
Co-founder,
People10 & Skyl.ai
The Speaker
3. Extensive experience building future tech products using
Machine Learning and Artificial Intelligence.
Areas of expertise includes Deep Learning, Data Analysis,
full stack development and building world class products
in ecommerce, travel and healthcare sector.
Shruti Tanwar
Lead - Data Science
The Speaker
4. Bikash Sharma
CTO and Co-founder at
Skyl.ai
CTO & Software Architect with 15 years of experience
working at the forefront of cutting-edge technology
leading innovative projects
Areas of expertise include Architecture design, rapid
product development, Deep Learning and Data Analysis
The Panelist
5. Getting familiar with ‘Zoom’
All dial-in participants will be muted to enable the presenters
to speak without interruption
Questions can be submitted via Zoom Questions chat
window and will be addressed at the end during Q&A
The recording will be emailed to you after the webinar
Please familiarize yourself with the Zoom ‘Control Panel’ on your screen
6. Live Demo of
simplifying product
catalog classification
problem using
Machine learning
How E-commerce
giants are using
Machine Learning to
drive more sales and
seamless customer
experience
Know the secret
sauce of automating
time-intensive,
repetitive steps to
quickly build models
1 2 3
...In the next 45 minutes
7. Machine Learning automation platform for unstructured data
A quick intro about Skyl.ai
Guided Machine Learning Workflow
Build & deploy ML models faster on
unstructured data
Collaborative Data Collection & Labelling
Easy-to-use & scalable AI SaaS platform
8. POLL #1
At what stage of Machine learning adoption your
organization is at?
⊚ Exploring - Curious about it
⊚ Planning - Creating AI/ML strategy
⊚ Experimenting - Building proof of concepts
⊚ Scaling up - Some departments are using it
⊚ In production - Using it in product features
⊚ Transforming - AI/Ml driven business
9. How E-commerce giants use
Machine Learning to drive
revenue and improve
customer experience
01
10. Intelligent Product Recommendations
‘Similar product’ or ‘Top
picks for you
Recommendations based
on individual buyer history
Predict customer behaviour & offer recommendations to individuals
based on their preference
Credit: Research paper Personalizing Similar Product Recommendations in Fashion E-commerce,
Rank products based on
individual preferences and
behavior to find products
that resonate more with
buyer intent
Related products aligned
with shopper’s affinity to
up sell /cross sell
11. Visual Product Discovery
Better than text search:
‘I am looking for this shirt’
‘What is the price of this table’
enabling quick discovery of products
Shopping for your favorite celebrity look
becomes much easier
Drive more conversion by automatically showing visually similar
products of things you see around
Credit: ‘Convolutional Neural Networks for Fashion Classification and Object Detection’ paper by Brian Lao and Karthik
Jagdish
12. Offer contextual customer service
Faster resolution of customer queries
or issues based on past user behavior
data
Enhance ongoing customer
relationship with personalized emails
Learn about past behavior & pattern of users to provide quick,
satisfactory and effective service
13. Faster & Accurate product catalog management
Data tagging and product classification
using Machine Learning improves
⊚ Accuracy
⊚ Engagement
⊚ Trust
Ability to organizing large volume of
products
Minimize the risk of product abandonment due to incomplete or
inaccurate product details
14. Live Demo of simplifying
Ecommerce product catalog
classification problem using
Machine learning
02
16. Live Demo of simplifying
Ecommerce product catalog
classification problem using
Machine learning
17. POLL #2
Some challenges that you are facing while
implementing AI & Machine Learning
⊚ Not started yet, so no challenges
⊚ Data collection
⊚ Data Labeling
⊚ Large volumes of data
⊚ Identifying the right data set to
train
⊚ Data Security
⊚ Lack of knowledge of ML tools
⊚ Lack of end to end platform
⊚ Lack of expertise
⊚ Choosing the right algorithms
18. Advantages of a unified
platform Speed, Visibility,
Quality, Collaboration,
Flexibility
03
19. Data Collection - Flexible options
(CSV bulk upload, APIs, Mobile capture, Form based…)
21. Data Labeling - Simple 4 steps process
(collaboration jobs, guided workflow…)
22. Data Labeling - Real-time early visibility
(class balance, missing data…)
23. Data Labeling - Early Visibility
(data frequency, data intuition, outliers, trends, labeling accuracy…)
24. Data Labeling with Effective Collaboration
(Job allocation, trend, statistics, interactive messaging…)
Analyse trends and progress
of your data labeling job in
real time with statistics and
interactive visualizations
Manage collaborator
progress, activity, interactive
messaging
25. Data Visualization to build strong data intuition
( visuals for data composition, data adequacy)
26. One click training at scale
(Easy feature sets, out of the box algorithms, API integration, hyper
parameter tuning, auto scaling…)
● Train, Deploy and Version your models
by creating feature-sets in no time with
our easy feature selection provision.
● Choose from state-of-art neural
network algorithms, tune
hyperparameters and see logs for
your training in real time.
● Integrate our powerful inference API
with your application for AI-driven
actionable intelligence.
● Auto scaling of model training based on
data and hyperparameters.
27. Model Monitoring of metrics in real-time
(inference count, execution time, accuracy…)
● Monitor your deployed
models and analyse
inference count, accuracy
and execution time.
● See how your models are
performing in real-time.
No black boxes here.
28. ● Monitor your deployed
models and analyse
inference count, accuracy
and execution time.
● See how your models are
performing in real-time. No
black boxes here.
Model Evaluation - Release Confidently
(Accuracy, Precision, Recall, F1 Score)
29. No upfront cost in Infrastructure set up
(no DevOps needed, auto-deploy, SaaS & On-prem models…)
No DevOps
required
01
Latest tech
stack
02
On premise
and saas
models
03
Scalable
On
demand
04
31. Offers for you!
1. Personalised demo
2. 15 days free trial with data credits
3. Complimentary consultation on pilot project
4. AI Implementation Playbook
www.skyl.ai contact@skyl.ai
33. We hope to hear from you soon
Thank you for joining!
85 Broad Street, New York, NY, 10004
+1 718 300 2104, +1 646 202 9343
contact@skyl.ai
Notas del editor
Hello everyone and welcome. Thank you for joining today’s webinar on How to improve online shopping experience with Machine Learning?. My name is Edwin and I’ll be your host today. First off, I’d like to introduce 3, AI-expert speakers for today’s webinar..
First we have Nisha Shoukath - Nisha is a technology entrepreneur with background in investment banking.
She’s co-founded two successful technology startups and has worked with a wide variety of global organizations from different industries.
She helps enterprises with defining AI strategy, and AI adoption roadmaps. Welcome, Nisha!
Next we have Shruti Tanwar - Shruti is an expert in data science who is a veteran in building SaaS products using Machine Learning and AI.
Her expertise includes Deep Learning and Data Analysis, as well as full stack development and building tech products in various different fields such as ecommerce, travel, and healthcare. Welcome, Shruti!
Finally, we have Bikash Sharma joining us today.
Bikash is CTO and Software Architect with 15 years of experience in leading innovative software projects and solutions.
He’s co-founded Skyl with his expert knowledge in AI and Machine Learning. Welcome, Bikash!
Now before we begin, I’d like to briefly talk about some relevant Zoom features.
All participants in the webinar will be muted to avoid any interruptions during the session.
Any questions you might have can be submitted to the Zoom Questions chat window in the control panel which is located on the bottom of the screen.
We’ll make sure to address your questions during the Q&A session.
Also, the recording of the webinar will be emailed to you afterwards, just in case you’ve missed any talking points or wish to view it again.
So that’s all for the introduction - now, we’ll get started with the webinar and I’ll hand over the session to Nisha
Exploring - Curious about it
Planning - Creating AI/ML strategy
Experimenting - Building proof of concepts
Scaling up - Some departments are using it
In production - Using it in product features
Transforming - AI/Ml driven business
user level personalization can improve similar product recommendations. On the left hand side, we have a query product. On the right hand side, the first row shows the non-personalized similar product recommendations. The second row shows how ideal ranking will look like if the user generally likes floral dresses. And the third row shows the ranking in case of a user who has affinity towards lighter colours
How
5 minutes intro - 10 industry awareness - 15 min demo - 20 minutes QnA
Define problem - Features model - How this model is built using skyl.ai
Add slide of Pneumonia detection
Not started yet, so no challenges
Data collection
Data Labeling
Data Bias
Large volumes of data
Identifying the right data set to train
Lack of knowledge of ML tools
Lack of end to end platform
Lack of expertise
Choosing the right algorithms
Monitoring the model performance
Benefit
Now, we
Thank you Nisha and Shruti, for the wonderful presentation and demo.
As mentioned earlier, the recording of the webinar will be sent to you by email afterwards. [pause]
Before we get to the Q&A, I want to mention some of the offers Skyl has for those of you that are curious about incorporating Machine Learning to your business.
Skyl offers a personalized demo as well as a 15 days free trial.
You’ll be able to interact with real data on the screen, just like we showed in the demo. You’ll experience the process of going from collecting & labeling the data… all the way to deploying a model!
Skyl also offers a complimentary consultation on a pilot project of your choice and an AI implementation playbook to go along.
This is a great opportunity to see how Skyl can provide Machine Learning solutions to the challenges that you or your company might have.
If you’re interested in finding out more, please visit the skyl.ai website or you can send an email directly to contact@skyl.ai as you see on the screen
Alright, now it’s Q&A time!
As a reminder, if you have any questions, go to the question box in your control panel - located on the bottom of your Zoom screen.
We’ll try to answer as many questions as possible in the time that we have left.
So let’s answer some questions.
Sample questions:
Me: 1. How much is the devops effort in building a model deployment pipeline in Skyl?
2. How can I know the fairness of a model?
3. Why is re-training required for ML models?
Nisha: 1. How can Skyl help me with my data labelling needs if I have data privacy issues?
2. If a create data collection jobs or data labeling jobs, would skyl be providing collaborators as well for those jobs?
Ok, that’s all the time we have for questions today, but feel free to contact us with your specific questions and we’ll make sure to get them answered.
All right, so we have reached the end of the webinar.
We hope you enjoyed it.
We have a lot more webinars coming up on different machine learning topics and how they can be implemented into different businesses and industries,
So don’t miss out and make sure you sign up for upcoming webinars as well
Thank you for joining and I hope you have a wonderful day.