Table of Contents |
---|
Key Points
- 2 contexts: in-process analytics and stand alone analytics
Learning Roadmap
Free AI course list
data-science-4-dummies-v3-2022.pdf. link. << good beginner concepts on data science engineering / solutions./ concepts
https://objectcomputing.com/files/5715/6095/8662/Slide_Deck_Groovy_for_Data_Science_Webinar.pdf - Groovy for Data Science - migrate v3x
http://glaforge.appspot.com/article/machine-learning-apis-with-apache-groovy - article on Groovy ML
https://www.udemy.com/course/python-for-data-science-and-machine-learning-bootcamp/ - basic ML and Python programming course covers Spark etc as well
http://ciml.info/ - ML algorithms
More Advanced
https://www.udemy.com/course/pytorch-for-deep-learning-with-python-bootcamp/
ML use cases & Models > Descriptive, Predictive, Prescriptive
_ml-use-cases-The Big Book of Machine Learning Use Case.pdf
Executive Guide to AI Best Practices - Snowflake
AI and Digital Transformation Competencies for Civil Servants
ai-skills-Artificial Intelligence and Digital Transformation Competencies-study-2022,pdf. link
ai-skills-Artificial Intelligence and Digital Transformation Competencies-study-2022.pdf. file
...
Table of Contents |
---|
Key Points
- 2 contexts: in-process analytics and stand alone analytics
Learning Roadmap
Stanford ML AI Basics Course With Labs. GDF
Free AI course list
data-science-4-dummies-v3-2022.pdf. link. << good beginner concepts on data science engineering / solutions./ concepts
https://objectcomputing.com/files/5715/6095/8662/Slide_Deck_Groovy_for_Data_Science_Webinar.pdf - Groovy for Data Science - migrate v3x
http://glaforge.appspot.com/article/machine-learning-apis-with-apache-groovy - article on Groovy ML
https://www.udemy.com/course/python-for-data-science-and-machine-learning-bootcamp/ - basic ML and Python programming course covers Spark etc as well
http://ciml.info/ - ML algorithms
More Advanced
https://www.udemy.com/course/pytorch-for-deep-learning-with-python-bootcamp/
ML and AI use cases & Models > Analytic, Descriptive, Predictive, Prescriptive, Reactive, Responsible, Smart
SWT custom definitions for >> Reactive, Responsible, Smart
_ml-use-cases-The Big Book of Machine Learning Use Case.pdf
Executive Guide to AI Best Practices - Snowflake
AI and Digital Transformation Competencies for Civil Servants
ai-skills-Artificial Intelligence and Digital Transformation Competencies-study-2022,pdf. link
ai-skills-Artificial Intelligence and Digital Transformation Competencies-study-2022.pdf. file
there is an unmet need to develop comprehensive digital competency frameworks that can:
1. Clearly identify the internal challenges a government faces in its digital transformation journey;
2. Propose specific competencies that can address those challenges,
...
Reference_description_with_linked_URLs_________________________ | Notes_________________________________________________________ | |||
---|---|---|---|---|
http://ciml.info/ | Machine Learning overview focused on algorithms for different problem types | |||
Math Foundations for AI ML | ||||
Statistics Foundations for AI ML | ||||
ML Course 1 | ||||
https://www.datacamp.com/courses/preparing-for-statistics-interview- questions-in-python?fbclid=IwAR29QSzZqoJEaarVtOoSRimPGOFbPbVYGLQ3 j2nyqt4PZ74AmkcJqILip94 | Interview questions for statistics in python | |||
https://courses.edx.org/dashboard | edX courses for ML | |||
https://thenextweb.com/podium/2019/11/11/machine-learning-algorithms-and-the-art-of-hyperparameter-selection/ | ML Algorithm concepts | |||
https://www.linkedin.com/feed/update/urn:li:activity:6617271768493191168/ | ML Intro Concepts links - Linkedin | |||
Guide_to_Open_Source_AI.pdf | Guide_to_Open_Source_AI.pdf | |||
machine-learning-for-dummies-w_wile255.pdf | machine-learning-for-dummies-w_wile255.pdf | |||
ML use cases | ||||
The Big Book of Data Science Use Cases.pdf | The Big Book of Data Science Use Cases.pdf | |||
https://www.gartner.com/smarterwithgartner/top-3-benefits-of-ai-projects/ | Gartner - 3 key AI benefits | |||
https://alyce.ai/application/files/7615/6933/9987/ALYCE_Survey_.pdf | Alyce.AI - object computing survey with use cases | |||
AI_2019-news-from-the-batch-includes-AV-info-jmason.pdf | AI status - 2019 - The Batch | |||
https://www.forbes.com/sites/janakirammsv/2019/01/01/an-executives-guide-to- understanding-cloud- based-machine-learning-services/#6e7c6c043e3e | Forbes - overview of cloud machine learning services | |||
https://hbr.org/2020/10/a-practical-guide-to-building-ethical-ai | Practical Guide to Building Ethical AI ** HBR | |||
Machine Learning Basics | ||||
Machine Learning Basics | ||||
https://www.techrepublic.com/article/machine-learning-the-smart-persons-guide/ | Executive summary 1 on ML | |||
Linux Foundation Open AI Deep Learning Solutions | ||||
Machine Learning Math Course free *** | ||||
https://www.udemy.com/hands-on-introduction-to-artificial-intelligenceai/learn/lecture/12130906#overview | Udemy free ML course ** | |||
file:///C:/Users/Jim%20Mason/Google%20Drive/_docs/howto/data/mlearn/Guide_to_Open_Source_AI.pdf | Linux F Guide to OS AI frameworks - good starting point | |||
https://objectcomputing.com/files/5715/6095/8662/Slide_Deck_Groovy_for_Data_Science_Webinar.pdf | Groovy for Data Science | |||
http://glaforge.appspot.com/article/machine-learning-apis-with-apache-groovy | ML apis from Groovy ( Java ) integrating Google AI - ML services ** | |||
machine-learning-with-python-v2-2024.pdf. link | machine-learning-with-python-v2-2024 ** | |||
DataCamp course - Python for Algorithmic Trading | ||||
https://www.datasciencecentral.com/profiles/blogs/new-books-and-resources-for-dsc-members | datasciencecentral.com free ebooks | |||
https://drive.google.com/open?id=1oa3bMB6KHDbo6ftgZMWSfnj8FpwQWCrm | ||||
https://drive.google.com/open?id=1sPBXhjtvEt54BlyAcW_Mz1PMETzCTLdv | machine learning for dummies ebook | |||
https://d2wvfoqc9gyqzf.cloudfront.net/content/uploads/2018/09/Ng-MLY01-13.pdf https://drive.google.com/open?id=1wDgmF9V3A7zeBXslgmRube2_cQ0XzxrM | Deep Learning Strategies and Project mgt - Andrew Ng | |||
https://drive.google.com/open?id=1H3ivxDSLUxsw2CQAXUhdyzMPGZdnAj6j | Python Tensorflow Tutorial - datacamp 2018 | |||
python-tensorflow-tutorial1-datacamp-Convolutional Neural Networks with TensorFlow | python-tensorflow-tutorial1-datacamp-Convolutional Neural Networks with TensorFlow | |||
https://www.datacamp.com/community/tutorials/cnn-tensorflow-python https://drive.google.com/open?id=1H3ivxDSLUxsw2CQAXUhdyzMPGZdnAj6j | Tutorial: Tensorflow neural network example in Python: Datacamp | |||
https://www.datacamp.com/community/tutorials/tensorflow-tutorial https://drive.google.com/open?id=1pC1805LpYe4el3mCT7qw0wzqV-vP3sv4 | Tutorial: Tensorflow basics : Datacamp | |||
https://drive.google.com/open?id=1b2bh7XJ_MkVG0C1kx7IITOqK0XfFh8WK | Containers for ML workloads | |||
billable courses | ||||
https://www.udemy.com/course/python-for-data-science-and-machine-learning-bootcamp/ | Python ML covers Python basics - $12 - RECOMMENDED first course | |||
https://university.cloudera.com/instructor-led-training/cloudera-data-scientist-training | Cloudera - $3200 - 4 days - pyspark - sparklr - spark2 env | |||
https://www.udemy.com/course/pytorch-for-deep-learning-with-python-bootcamp/ | Pytorch bootcamp - Udemy - $12 - sharp focus on Pytorch -requires Python | |||
https://www.udemy.com/course/python-for-data-science-and-machine-learning-bootcamp/ | Python ML covers Python basics - $12 | |||
https://www.udemy.com/course/the-complete-neural-networks-bootcamp-theory-applications/ | Complete Neural Networks bootcamp - $12 - more ML models, examples - requires Python, math | |||
Google ML | ||||
GCP platform - free account | ||||
Google Kaggle - free ML test account | ||||
Kaggle learning resources | ||||
Link Kaggle notebook to BigQuery results | ||||
https://www.datacamp.com/community/blog/keras-cheat-sheet?fbclid=IwAR2x0PgQEjsALKSIrlC_ZkADzXgqUyG9dJ_zAeh7h1c VFrQQzcEjRxtWB98 | Keras cheat sheet | https://keras.io/ | Keras Basics/blog/keras-cheat-sheet?fbclid=IwAR2x0PgQEjsALKSIrlC_ZkADzXgqUyG9dJ_zAeh7h1c VFrQQzcEjRxtWB98 | Keras cheat sheet |
https://keras.io/ | Keras Basics | |||
https://drive.google.com/open?id=1Y5jf0CLBlhieO85Er0n8bsYnScnXEIvG | Tf.keras - tensor flow Keras gen 2 | |||
https://medium.com/sciforce/understanding-tensor-processing-units-10ff41f50e78 https://drive.google.com/open?id=1lFzNJcXvyuD41vkB1K_Gkftgz9o4DHaJ | Tensorflow concepts | |||
https://cloud.google.com/blog/products/gcp/understanding-neural-networks-with-tensorflow-playground https://drive.google.com/open?id=13_fj-IB2jwKIdBHquGm43gpYq4GhsCnl | Tensorflow exampe overview - playground - 2015 | |||
Tensorflow Tutorial | ||||
https://cloud.google.com/tpu/ | Google TPU AI processor overview | |||
https://drive.google.com/open?id=1Y5jf0CLBlhieO85Er0n8bsYnScnXEIvGTf.keras - tensor flow Keras gen 21UWwyoHEJZi1f6mQo3SvpxgQz8WBDjuIm | AI hardware- GPU or TPU? | |||
https://cloud.google.com/products/ai/building-blocks/ | Google AI building blocks | |||
https://mediumcloud.google.com/sciforce/understanding-tensor-processing-units-10ff41f50e78automl/ | Google auto translation bots | |||
MLFlow - Linux Foundation - open source platform for the machine learning lifecycle | open source platform for the machine learning lifecycle | |||
https://drive.google.com/open?id=1lFzNJcXvyuD41vkB1K_Gkftgz9o4DHaJTensorflow conceptsmlflow.org | MLFlow | |||
https://mlflow.org/#:~:text=MLflow%20is%20an%20open%20source, and%20a%20central%20model%20registry. | MLFlow model registry | |||
https://cloud.googledatabricks.com/blog/products2018/06/gcp05/understandingintroducing-neuralmlflow-networksan-withopen-tensorflow-playground https://drive.google.com/open?id=13_fj-IB2jwKIdBHquGm43gpYq4GhsCnl | Tensorflow exampe overview - playground - 2015 | Tensorflow Tutorialsource-machine-learning-platform.html | Overview | |
https://cloudmlflow.google.comorg/tpu/ | Google TPU AI processor overview | https://drive.google.com/open?id=1UWwyoHEJZi1f6mQo3SvpxgQz8WBDjuIm | AI hardware- GPU or TPU?docs/latest/quickstart.html | Quickstart |
https://cloud.googletowardsdatascience.com/products/ai/building-blocks/Google AI building blocksgetting-started-with-mlflow-52eff8c09c61 | Getting Started article | |||
https://cloud.googlegithub.com/automlmlflow/mlflow | Google auto translation bots | MLFlow - Linux Foundation - open source platform for the machine learning lifecycle | open source platform for the machine learning lifecycleMLFlow on github | |
AWS ML | ||||
https://mlflow.org | MLFlow | https://mlflow.org/#:~:text=MLflow%20is%20an%20open%20source, and%20a%20central%20model%20registry. | MLFlow model registryaws.amazon.com/machine-learning/e-guide/?trk=FB_AI_DeepLens_eGuide_v3&sc _channel=PSM&sc_campaign=field&sc_publisher= FB&sc_category=DeepLens&sc_country=US&sc_geo=NAMER&sc_outcome=aware&sc_ medium=FIELD-P%7CFB%7CSocial-P%7CAll%7CAW%7CMachine+Learning%7CDeepLens%7CUS%7CEN%7CImage&fbclid= IwAR2h6I83BZsUuK0quB2bgT1uz6ux229cEDCQtlNpLwNQfvgpSybvuskc5p4 | Business View of AI services on AWS |
ML Training | ||||
https://databricksaws.amazon.com/blog/2018/06/05/introducing-mlflow-an-open-source-machine-learning-platform.html/ | ML Overview | |||
https://mlflow.org/docs/latest/quickstart.html | Quickstart | |||
https://towardsdatascience.com/getting-started-with-mlflow-52eff8c09c61 | Getting Started article | |||
https://github.com/mlflow/mlflow | MLFlow on github | |||
AWS ML Apps, Services | ||||
ML Sagemaker - Deep Learning Utility | ||||
ML Tools - Keras, Tensorflow, Kubeflow | ||||
Azure ML | ||||
IBM ML | ||||
awsamazonmachine-learningeguidetrkFBAI_DeepLens_eGuide_v3&sc _channel=PSM&sc_campaign=field&sc_publisher= FB&sc_category=DeepLens&sc_country=US&sc_geo=NAMER&sc_outcome=aware&sc_ medium=FIELD-P%7CFB%7CSocial-P%7CAll%7CAW%7CMachine+Learning%7CDeepLens%7CUS%7CEN%7CImage&fbclid= IwAR2h6I83BZsUuK0quB2bgT1uz6ux229cEDCQtlNpLwNQfvgpSybvuskc5p4 | Business View of AI services on AWS | ML Training | ||
https://aws.amazon.com/machine-learning/ | ML Overview | ML Apps, Services | ML Sagemaker - Deep Learning Utility | ML Tools - Keras, Tensorflow, Kubeflow | Azure ML | IBM ML |
ibm watson free access, ar | Facebook ML | |||
https://ai.facebook.com/blog/dlrm-an-advanced-open-source-deep-learning-recommendation-model/ | ML Recommendation Mgr open sourced | |||
ML Tutorials | https://github.com/cloud-annotations/training https://www.linkedin.com/feed/update/urn:li:activity:6496499508409561088 | real-time image object recognition customizable in your browser with TensorFlow.js and Python demo real-time image recognition | ibm watson free access, ar | |
Facebook ML | ||||
https://ai.facebook.com/blog/dlrm-an-advanced-open-source-deep-learning-recommendation-model/ | ML Recommendation Mgr open sourced | |||
ML Tutorials | ||||
https://github.com/cloud-annotations/training https://www.linkedin.com/feed/update/urn:li:activity:6496499508409561088 | real-time image object recognition customizable in your browser with TensorFlow.js and Python demo real-time image recognition | |||
open source framework to build smart chatbots in python w RNN, NLU, NLP | ||||
http://ciml.info/ | Machine Learning overview focused on algorithms for different problem types | |||
Data Science Tools | ||||
https://drive.google.com/drive/u/0/folders/1e5WecKq_87ahkcL3UM7EdOz73qviLyhW https://objectcomputing.com/files/5715/6095/8662/Slide_Deck_Groovy_for_Data_Science_Webinar.pdf | Groovy Data Science - Paul King - OCI | |||
https://campus.datacamp.com/courses/building-chatbots-in-python/chatbots-101?ex=1 | DataCamp - Python Chatbots course | |||
https://www.cloudera.com/products/data-science-and-engineering/data-science-workbench.html | Cloudera DS workbench | |||
Other ML providers and services | ||||
https://www.h2o.ai/products/h2o-driverless-ai/ | H2O AI services - platform with consulting services | |||
rasadocs | Data Science Tools | Rasa - open-source framework to build smart chatbots in python w RNN, NLU, NLP | ||
http://ciml.info/ | Machine Learning overview focused on algorithms for different problem types | |||
smart assistant framework for chatbots see Smart Assistant Integration for more on bulding assistants for NLP domains | ||||
https://drivewww.googlenextplatform.com/drive2019/u03/0/folders/1e5WecKq_87ahkcL3UM7EdOz73qviLyhW05/one-step-closer-to-deep-learning-on-neuromorphic-hardware/ | Deep Learning neural networks have a software training environment ( Whetstone ) that can work on multiple neural network platforms when ported. Efficient, mimics human neuron behavior. Goal of this work to be able to leverage standard deep learning technologies to produce inferencing software capable of running in a much lower power envelope when deployed. | |||
https://objectcomputingwww.sage.com/files/5715/6095/8662/Slide_Deck_Groovy_for_Data_Science_Webinar.pdfGroovy Data Science - Paul King - OCIen-us/blog/wp-content/uploads/sites/2/2018/09/Artificial_Intelligence_In_2019_Sage_Handbook.pdf | AI business concepts handbook | |||
https://campuswww.datacampforbes.com/courses/building-chatbots-in-python/chatbots-101?ex=1DataCamp - Python Chatbots courseinsights-intelai/ | Very good series of articles on AI impacts across many industries including AI concepts as well | |||
https://wwwblockchain.clouderaieee.com/products/data-science-and-engineering/data-science-workbench.html | Cloudera DS workbench | Other ML providers and services | ||
https://www.h2o.ai/products/h2o-driverless-ai/ | H2O AI services - platform with consulting services | |||
Rasa - open-source smart assistant framework for chatbots see Smart Assistant Integration for more on bulding assistants for NLP domains | ||||
https://www.nextplatform.com/2019/03/05/one-step-closer-to-deep-learning-on-neuromorphic-hardware/ | Deep Learning neural networks have a software training environment ( Whetstone ) that can work on multiple neural network platforms when ported. Efficient, mimics human neuron behavior. Goal of this work to be able to leverage standard deep learning technologies to produce inferencing software capable of running in a much lower power envelope when deployed. | |||
https://www.sage.com/en-us/blog/wp-content/uploads/sites/2/2018/09/Artificial_Intelligence_In_2019_Sage_Handbook.pdf | AI business concepts handbook org/technicalbriefs/march-2019/towards-advanced-artificial-intelligence-using-blockchain-technologies | AI and blockchain together article | ||
AI Regulation Concepts | ||||
EU Regulatory Framework Proposal on AI - 2021 url | ||||
UK AI Regulation Approach doc - 2022 url UK-AI-regulation-approach-2022-faegredrinker.com-AI Regulation in the UK New Government Approach.pdf file | U.K. Government intends to “regulate the use of AI rather than the technology itself,” | |||
UK establishing an approach to regulating AI - 2022 url | ||||
UK on EU AI regulations as risky 2022 url | ||||
ai-governance-for-citiies-2023-UN-MILA.pdf. link | ||||
AI-goverenance-2021-The_ghost_of_AI_governance_past_present_and_future.pdf file | ||||
EU AI Regulation flawed - 2022 article | ||||
Key Concepts
AI Terms
...
...
AI Regulation Concepts
...
EUBOF on convergence of AI and Blockchain report - 2021 url
EUBOF on convergence of AI and Blockchain meeting recording
...
EU AI Regulatory Concepts today - 2022 url
EU AI Regulatory Concepts today - 2022 url.pdf file
...
US AI Bill of Rights Proposal 2022 url
US-2022-Blueprint-for-an-AI-Bill-of-Rights.pdf file
...
UK AI Regulation Approach doc - 2022 url
UK-AI-regulation-approach-2022-faegredrinker.com-AI Regulation in the UK New Government Approach.pdf file
...
G7 2023 Statement on AI Governance. url
G7 2023 Statement on AI Governance. linkj
Key Concepts
AI Terms
...
AI platforms
...
Recent hardware investments from Amazon, Google, Microsoft and Facebook, made ML infrastructure cheaper and efficient. Cloud providers are now offering custom hardware that’s highly optimized for running ML workloads in the cloud. Google’s TPU and Microsoft’s FPGA offerings are examples of custom hardware accelerators exclusively meant for ML jobs. When combined with the recent computing trends such as Kubernetes, ML infrastructure becomes an attractive choice for enterprises.
...
Key Questions
- what is data science?
- how is it different from data analysis?
- what questions do data scientists answer?
- what questions do data analysts answer?
- how are both different from data architects and engineers?
- what are key AI use cases by industry?
- what are key benefits for AI and ML ? VCR3S
ML / AI Operations Models
User Type - Human or Automated System for decision making ( eg a vehicle recognizing people crossing a road )
Operations Type - Standalone research ( which stock to buy long term ) or Embedded Operations ( decide when to buy power on a grid automatically )
4 Types of AI
govtech.com-Understanding the Four Types of Artificial Intelligence.pdf link
Generative AI creates novel content
https://finance.yahoo.com/news/china-building-parallel-generative-ai-150129822.html
After text-to-image tools from Stability AI and OpenAI became the talk of the town, ChatGPT's ability to hold intelligent conversations is the new obsession in sectors across the board.
Generative AI has trust and quality issues: needs better trust, transparency, verifications with SLT
https://www.cnet.com/tech/google-lets-people-start-trying-bard-its-own-ai-chatbot/
SLT - Shared Ledger Technology - can make Generative AI better
...
Don't miss the Essential Concepts:
- 𝗔𝗜: The overarching world of Artificial Intelligence, transforming industries.
- 𝗠𝗟: Machine Learning's role in shaping intelligent systems.
- 𝗗𝗲𝗲𝗽 𝗟𝗲𝗮𝗿𝗻𝗶𝗻𝗴: Neural networks for human-like thinking.
- 𝗡𝗲𝘂𝗿𝗮𝗹 𝗡𝗲𝘁𝘄𝗼𝗿𝗸: Mimicking human brain functions for learning.
- 𝗦𝘂𝗽𝗲𝗿𝘃𝗶𝘀𝗲𝗱 𝗟𝗲𝗮𝗿𝗻𝗶𝗻𝗴: Teaching computers with labelled examples.
- 𝗨𝗻𝘀𝘂𝗽𝗲𝗿𝘃𝗶𝘀𝗲𝗱 𝗟𝗲𝗮𝗿𝗻𝗶𝗻𝗴: Machines finding patterns without labels.
- 𝗥𝗲𝗶𝗻𝗳𝗼𝗿𝗰𝗲𝗺𝗲𝗻𝘁 𝗟𝗲𝗮𝗿𝗻𝗶𝗻𝗴: Trial-and-error learning for machines.
- 𝗡𝗟𝗣: Tech enabling computers to understand human language.
- 𝗖𝗼𝗺𝗽𝘂𝘁𝗲𝗿 𝗩𝗶𝘀𝗶𝗼𝗻: Machines interpreting visual information.
- 𝗖𝗵𝗮𝘁𝗯𝗼𝘁: Conversational AI for customer support and more.
- Hallucination - when Gen AI produces the wrong answer but is convinced it's correct
- 𝗜𝗢𝗧: Devices connected, sharing data for smart applications.
- 𝗖𝗹𝗼𝘂𝗱 𝗖𝗼𝗺𝗽𝘂𝘁𝗶𝗻𝗴: Remote storage, management, and data processing.
- 𝗕𝗶𝗮𝘀 𝗶𝗻 𝗔𝗜: Addressing unintentional biases in algorithms.
- 𝗔𝗹𝗴𝗼𝗿𝗶𝘁𝗵𝗺: Core of AI, the building block for intelligent systems.
- 𝗗𝗮𝘁𝗮 𝗠𝗶𝗻𝗶𝗻𝗴: Extracting patterns and insights from vast datasets.
- 𝗕𝗶𝗴 𝗗𝗮𝘁𝗮:Navigating challenges with massive and diverse data.
- 𝗥𝗼𝗯𝗼𝘁𝗶𝗰𝘀: Merging AI with physical machines for automation.
- 𝗔𝗹𝗴𝗼𝗿𝗶𝘁𝗵𝗺𝗶𝗰 𝗙𝗮𝗶𝗿𝗻𝗲𝘀𝘀: Ensuring fairness and avoiding bias in AI.
- 𝗧𝗿𝗮𝗻𝘀𝗳𝗲𝗿 𝗟𝗲𝗮𝗿𝗻𝗶𝗻𝗴: Applying knowledge for enhanced AI efficiency.
- 𝗘𝗱𝗴𝗲 𝗖𝗼𝗺𝗽𝘂𝘁𝗶𝗻𝗴: Localised AI implementation for efficiency.
- 𝗘𝘅𝗽𝗹𝗮𝗶𝗻𝗮𝗯𝗹𝗲 𝗔𝗜: Making AI decisions transparent and understandable.
- 𝗚𝗔𝗡𝘀: AI creating realistic data through adversarial networks.
- 𝗘𝗱𝗴𝗲 𝗔𝗜: Localised AI for reduced reliance on centralised servers.
- 𝗔𝗜 𝗘𝘁𝗵𝗶𝗰𝘀: Guiding principles for responsible AI development.
AI platforms
- Cloud ML platforms engineered for ML performance
Recent hardware investments from Amazon, Google, Microsoft and Facebook, made ML infrastructure cheaper and efficient. Cloud providers are now offering custom hardware that’s highly optimized for running ML workloads in the cloud. Google’s TPU and Microsoft’s FPGA offerings are examples of custom hardware accelerators exclusively meant for ML jobs. When combined with the recent computing trends such as Kubernetes, ML infrastructure becomes an attractive choice for enterprises.
Amazon EC2 Deep Learning AMI backed by NVIDIA GPU, Google Cloud TPU, Microsoft Azure Deep Learning VM based on NVIDIA GPU, and IBM GPU-based Bare Metal Servers are examples of niche IaaS for ML.
- Deep learning systems can learn new information, improve their own performance
The complexity of the steps needed in a given decision making process all depend on the skills of the person or system making the decision. Just like we teach people basic skills before advanced, we teach systems the same way. Extending the metaphor, just like people, systems can also learn on their own: for a given goal, collect relevant data and update their understanding ( the model ) of how best to solve a problem.
In a driving example, once the system knows how to brake, how to steer, how to follow a digital map, how to sense objects within a range, asking the system to drive me to work is not a complex set of instructions and decisions. Systems, just like people, can build skills, knowledge and decision making capability leveraging what they already know. (edited)
Gen AI Platforms
Generative AI: ChatGPT and more
Google AI: Gemini, Vertex, ai studio
LLMS >>
Meta LLama
Claude.ai - Anthropic
Openai
Gemini and Vertex
SLMs >>
Granite LLMS
AI Commercial Construction Tools Cheatsheet
ai-architecture-cheatsheet_aifi150.pdf link
ai-architecture-cheatsheet_aifi150.pdf. file
Key Questions
- what is data science?
- how is it different from data analysis?
- what questions do data scientists answer?
- what questions do data analysts answer?
- how are both different from data architects and engineers?
- what are key AI use cases by industry?
- what are key benefits for AI and ML ? VCR3S
ML / AI Operations Models
User Type - Human or Automated System for decision making ( eg a vehicle recognizing people crossing a road )
Operations Type - Standalone research ( which stock to buy long term ) or Embedded Operations ( decide when to buy power on a grid automatically )
4 Types of AI
govtech.com-Understanding the Four Types of Artificial Intelligence.pdf link
Generative AI creates novel content
https://finance.yahoo.com/news/china-building-parallel-generative-ai-150129822.html
After text-to-image tools from Stability AI and OpenAI became the talk of the town, ChatGPT's ability to hold intelligent conversations is the new obsession in sectors across the board.
Generative AI has trust and quality issues: needs better trust, transparency, verifications with SLT
https://www.cnet.com/tech/google-lets-people-start-trying-bard-its-own-ai-chatbot/
SLT - Shared Ledger Technology - can make Generative AI better
It can add better: trust, transparency and verifications
AI Agents vs Agentic AI article
AI Agents
AI Agents are typically built to do specific tasks. They’re designed to help you with something — like answering questions, organizing your calendar, or even managing your email inbox. AI Agents are great at automating simple, repetitive tasks but don’t have the autonomy or decision-making abilities that Agentic AI does. Think of them as virtual helpers that do exactly what you tell them to do, without thinking for themselves.
Agentic AI
At its core, Agentic AI is a type of AI that’s all about autonomy. This means that it can make decisions, take actions, and even learn on its own to achieve specific goals. It’s kind of like having a virtual assistant that can think, reason, and adapt to changing circumstances without needing constant direction. Agentic AI operates in four key stages:
- Perception: It gathers data from the world around it.
- Reasoning: It processes this data to understand what’s going on.
- Action: It decides what to do based on its understanding.
- Learning: It improves and adapts over time, learning from feedback and experience.
Difference between AI Agents and Agentic AI
Agentic AI use cases
- Tesla, Waymo - self driving cars
- Supply Chain Management: Agentic AI is also helping companies optimize their supply chains. By autonomously managing inventory, predicting demand, and adjusting delivery routes in real-time, AI can ensure smoother, more efficient operations. Amazon’s Warehouse Robots, powered by AI, are an example — these robots navigate complex environments, adapt to different conditions, and autonomously move goods around warehouses.
- Agentic AI can detect threats and vulnerabilities by analyzing network activity and automatically responding to potential breaches. Darktrace, an AI cybersecurity company
- IBM’s Watson Health uses AI to analyze massive amounts of healthcare data, learning from new information to offer insights that help doctors and healthcare professionals.
AI Agent use cases
- Simple Chatbots that don't give good answers to most questions - Zendesk etc
- Phone assistants
- Google email response composer
- Github Co-Pilot
Keys to AI success
- Good Use Cases >> GAPS can create well defined use cases with metrics for clear value-add opportunities ( see VCRST )
- DATES focus >> Data, Decisions, Automations, Trusts, Events, Security engineering model focus including ( AI Security )
- STEAR Goverannce framework >> Automated Governance and Regulatory Compliance using the STEAR solution architecture governance framework and VITAC
Enterprise AI Solutions & Operations in the Cloud
ai-devops-ENTERPRISE AI in the Cloud-2024.pdf
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More on Gen AI and LLM resources
Open LLMs: Llama, Anthropic, Claude and more
Governance and Ethical AI
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“Mitigating the risk of extinction from AI should be a global priority alongside other societal-scale risks such as pandemics and nuclear war.” The Center for AI Safety published this single statement as an open letter on May 30, 2023.
OWASP and AI Governance of LLM ( current technology )
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The architecture of an emerging startup, Modguard, in the accompanying diagram, gives us a path towards compliance with these laws
EU AI Regulations
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Secretary of Commerce has a lead role in defining rules for AI model and service management
" The Secretary of Commerce, in consultation with the Secretary of State, the Secretary of Defense, the Secretary of Energy, and the Director of National Intelligence, shall define,"
Assignments > Objectives with normal time limits less than 1 year for reporting on impacts, goals, strategies by agency
Identifies responsibity concepts for businesses in building, using AI in commerce
Fact Sheet on Executive Order for Responsible AI
New Standards for AI Safety and Security
developers of the most powerful AI systems share their safety test results and other critical information with the U.S. government
standards, tools, and tests to help ensure that AI systems are safe, secure, and trustworthy
Protect against risks to people, organizations, ecosystems, systems
Reduce fraud, deception, misinformation
Protect Privacy and Rights
Promote Innovation
Promote American Leadership ( or better partnerships ?? )
Effective governance for Responsible AI
NIST Proposed AI Risk Mgt Framework
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AI Notes including Governance
AI-notes1 gdoc
DeepSeek R1 - LLM - 2025 - notes
DeepSeek’s R1, the new Chinese large-language model that’s more powerful and incurred 95% less development costs than its American competitors, is the best thing to happen to artificial intelligence in a decade
flaws in framing this with Cold War-era militarist logic. << a problem since BOTH sides do this now and common governance is the only real solution to mistrust
previous Trump Administration’s hostility led Beijing to double-down on developing strategically important technologies. << probably was on their roadmap anyway
difficult to keep these ideas locked down when they are constantly being shared << yes technology advantages have a short life
Potential Value Opportunities
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