Distributed in-memory machine
learning platform with linear scalability
Cloud-based ML Delivery platform
How does it work?
Based on Supervised Learning - a
bunch of models (with either random initialization
and/or different subsets of the training set), and
taking their average as the result." Training
Data (based on extensive data attribution) | Multiple
Training Data Sets | Multiple
Classifiers | Combine
Classifiers | Evaluate (and
iterate)
Based on Supervised Learning - a
bunch of models (with either random initialization
and/or different subsets of the training set), and
taking their average as the result." Training
Data (based on extensive data attribution) | Multiple
Training Data Sets | Multiple
Classifiers | Combine
Classifiers | Evaluate (and
iterate)
Resources Required
Data Scientist Team DevOps
/ IT team Multi-node clusters / Dedicated Hardware
None None None
Typical Prep time
3-6 months
1 month
Typical Implementation time
6-9 months modeling (WFH extends
time)
2-5 months
Best use-case
Want best-available
classification, not worried about time
Fastest ROI and turn-around time,
with no false starts or experiments
Performance Tradeoff
(Accuracy) N models : (speed)
roughly N times slower
Cost vs Time
Key Advantages
Multiple components across teams
Customized approach In-house teams, tighter control
"White-box" AI - focus on seeing
and understanding rather than hiring and retaining
Proven methodology, get regular, reliable updates Single
Integrated platform for descriptive + predictive analytics +
prescriptive analytics
Key Success Criteria
Data Scientist Team dynamics
Methodology Integrated processes
Wider and deeper knowledge-base
4Cs Methodology Systems integration
Empowering Business Insights from those who understand it best!
Fill in the form to request the comparative on how you can
drastically empower business by getting Business Insights from
those who understand it best by using JetFerry.ai.