Difference between revisions of "AI Solver"

From
Jump to: navigation, search
m
m
 
(3 intermediate revisions by the same user not shown)
Line 21: Line 21:
 
Lets get going?  I want to...
 
Lets get going?  I want to...
  
* ...detect patterns...
+
* ...detect patterns or relationships ... [[Causation vs. Correlation|Correlation analysis]] or [[Forecasting|Time series analysis]]
 
** [[...predict values]]/quantity/outcomes
 
** [[...predict values]]/quantity/outcomes
 
** [[...predict categories]] so I can classify each data point into a specific groups
 
** [[...predict categories]] so I can classify each data point into a specific groups
Line 31: Line 31:
 
** [https://hbr.org/2023/03/a-framework-for-picking-the-right-generative-ai-project A Framework for Picking the Right Generative AI Project | A Framework for Picking the Right Generative AI Project | M. Zao-Sanders & M. Ramos - Harvard Business Review]
 
** [https://hbr.org/2023/03/a-framework-for-picking-the-right-generative-ai-project A Framework for Picking the Right Generative AI Project | A Framework for Picking the Right Generative AI Project | M. Zao-Sanders & M. Ramos - Harvard Business Review]
 
* ... automate processes; understand (semantic parsing) complete sentences, understanding synonyms of matching words, [[Sentiment Analysis]], or [[Speech Recognition]], (speech) translation ...[[Natural Language Processing (NLP)]]
 
* ... automate processes; understand (semantic parsing) complete sentences, understanding synonyms of matching words, [[Sentiment Analysis]], or [[Speech Recognition]], (speech) translation ...[[Natural Language Processing (NLP)]]
* ... [[Reinforcement Learning (RL) |pathfinding]]; learn a series of actions; find the best/shortest route to an objective; win a game, traveling salesman problem
+
* ... [[Reinforcement Learning (RL) |pathfinding]]; learn a series of actions; find the best/shortest route to an objective; win a game, traveling salesman problem ... [[Q Learning]], [[Deep Q Network (DQN)]]
* ... train [[Assistants]], [[Personal Companions]], or [[Agents]] to make optimal decisions or sequences of actions in an environment; use [[Reinforcement Learning (RL)]] algorithms (e.g., [[Q Learning]], [[Deep Q Network (DQN)]])
+
* ... train [[Assistants]], [[Personal Companions]], or [[Agents]]  
 
   
 
   
 
_____________________________________________________________________________________
 
_____________________________________________________________________________________

Latest revision as of 07:00, 6 March 2024


Aids in selecting a starting algorithm for your solution; at that point discover similar algorithms to see which works best for your task (and data) at hand.

Lets get going? I want to...

_____________________________________________________________________________________


1*iPIGiJIcQjzZheEgTzOnhA.png

Microsoft Azure Studio Cheatsheet



AlgoDecisionTree-2.png

Scikit Machine Learning Map

SAS

machine-learning-cheet-sheet.png

Notes

1*PzeV89iMXPxGMShh6bhwHQ.png 1*xlLV8XBECmBTv0dBZKFoyg.png 1*qhp867ZtHsO2nPeMdDh4Gw.png 1*dgd9vqD96NhUoxUZLMnF_A.png