Accelerating Artificial Intelligence Initiatives
Image Source : facebook Regularized Deep Learning Memes for Backpropagated Teens

Accelerating Artificial Intelligence Initiatives

There are 2 places in the world that has most wait time

  1. Airport where people are transiting or waiting for their loved ones 
  2. Organizations where Data Scientist are waiting for their model training to complete

Data scientist typically have to go through 100's of training iteration for each hypothesis to narrow down on feature and model selection, hyperparameter configuration among others. Data in many cases are way beyond what a single node or GPU can fit in. For large datasets each iteration can go upward of days.

Enterprises hiring artificial intelligence and machine learning expert without right infrastructure and tools is like

Hiring astronauts to drive a bullock cart

Building data science capability within enterprise must be thought ground up right from selection of silicon chip. 

Below is bare minimum necessity for AI driven organization to accelerate cycle of Hypothesis to production

  • Infrastructure with right kind of hardware (GPU, CPU, HPC etc), technologies (Hadoop, Kubernetes etc.) and tools (Spark ML, Tensorflow, scikit etc.) that can distribute ML/DL pipelines
  • Centralize data, build key pre-engineered features and provide functionality for feature sharing across use cases
Be Data First before thinking of being AI First
  • Improve agility with self-service access to data and tools that enable seamless data exploration and data preparation
  • Capabilities that can rapidly operationalize models, automate data engineering (to extent possible), monitor models and Identify data drifts


Pierre-Yves Pau, P.Eng, CPA, MBA

Wireless Strategy, Costs Modeling, Business Case Development, Project Management, Capital Planning. Retired

6 年

Music to my (experimental) ears... have you published more material on this specific technique of segmented regression?

Sam Raj Anand

Data & Analytics Practice Leader | Trusted Advisor | Senior Partner Specialist at AWS

6 年

Hilarious but couldn't agree.more..

Sankaranarayanan CM

Platforms & Solutions at Data, Analytics & Artificial Intelligence | Chief Cloud Data Architect| 2x Google Certified| AWS /AZURE - Certified Architect

6 年

Think Data first ... rightly said. Srivatsan...

Daniel Dinesh

Data and Analytics Insights Practice Lead at PwC

6 年

100 % agree with your thoughts- Think Data first that includes providing rich data catalog to your analyts .

要查看或添加评论,请登录

Srivatsan Srinivasan的更多文章

社区洞察

其他会员也浏览了