Comprehensive Reading Resources in Generative AI, ML, NLP, and Various Domains

Aakash Goel
3 min readMar 6, 2024

--

I will consistently incorporate valuable reading materials for reference. Therefore, I encourage you to regularly check or stay tuned for updates.

Newsletter to get updates on AI

  1. https://aiweekly.co/
  2. The Neuron — https://www.theneurondaily.com/ by Noah Edelman & Pete Huang
  3. Superhuman — https://www.superhuman.ai/ by Zain Kahn
  4. Ben’s Bites — https://www.bensbites.co/ by Ben Tossell
  5. Last Week in AI — https://lastweekin.ai/ by Andrey Kurenkov
  6. Guide to AI — https://nathanbenaich.substack.com/ by Nathan Benaich

Use cases of Generative AI in Automotive Industry

https://aakashgoel12.medium.com/driving-innovation-the-role-of-generative-ai-in-the-automotive-sector-dc765d5a84b2

Use cases of Generative AI in Supply Chain

https://aakashgoel12.medium.com/from-algorithms-to-warehouses-how-generative-ai-is-transforming-supply-chains-27542e53adde

Generative AI — Security Concerns

1. Overview

A. https://www.cio.com/article/656917/top-overlooked-genai-security-risks-for-businesses.html

B. https://medium.com/@akitrablog/how-to-manage-generative-ai-genai-security-risks-05345cb0662f

2. Risk and Mitigation

A. 3 Biggest GenAI Threats — https://www.tanium.com/blog/the-3-biggest-genai-threats-plus-1-other-risk-and-how-to-fend-them-off/

B. https://securiti.ai/generative-ai-security/

C. Managing the risks of generative AI (Report) — https://explore.pwc.com/generativeai?_pfses=w1zdoudzc78Ycge8rXvKAdep

3. News

A. https://www.deccanherald.com/technology/one-in-four-entities-banned-genai-use-due-to-privacy-data-security-risks-study-2869126

B. https://cradlepoint.com/resources/blog/generative-ai-security-risks-and-responses-for-enterprise-it-and-networking/

C. Video — https://www.helpnetsecurity.com/2023/11/27/genai-concerned-security-leaders-video/

D. https://www.forbes.com/sites/waynerash/2024/02/07/generative-ai-exposes-users-to-new-security-risks/?sh=1d4da2942dfe

Prompt Engineering

1. https://www.analyticsvidhya.com/blog/2023/05/what-is-prompt-engineering-guide/

2. https://www.datacamp.com/blog/what-is-prompt-engineering-the-future-of-ai-communication

3. Prompt Engineering for Medical Professionals — https://www.jmir.org/2023/1/e50638/PDF

Natural Language Processing (NLP)

  1. Evolution of Word Vectors in NLP — https://www.youtube.com/watch?v=0zaXiqzmr7w
  2. How to handle OOV

A. https://blog.marketmuse.com/glossary/out-of-vocabulary-oov-definition/

B. https://ychai.uk/notes/2019/03/08/NLP/How-to-handle-Out-Of-Vocabulary-words/

LLM

  1. https://huyenchip.com/2023/04/11/llm-engineering.html

Setting up Vector DB

  1. https://github.com/openai/chatgpt-retrieval-plugin

Machine Learning (ML)

  1. https://www.analyticsvidhya.com/blog/2015/06/machine-learning-basics/
  2. ML Basic concepts PDF — https://courses.edx.org/asset-v1:ColumbiaX+CSMM.101x+1T2017+type@asset+block@AI_edx_ml_5.1intro.pdf
  3. https://knowledge.dataiku.com/latest/ml-analytics/ml-concepts/concept-machine-learning-introduction.html
  4. https://www.mygreatlearning.com/blog/what-is-machine-learning/
  5. Google’s Quick introductory course — https://developers.google.com/machine-learning/intro-to-ml
  6. XGBoost — https://medium.com/@prathameshsonawane/xgboost-how-does-this-work-e1cae7c5b6cb#:~:text=XGBoost%20has%20gained%20fame%20for,errors%20made%20by%20previous%20models. , https://www.analyticsvidhya.com/blog/2018/09/an-end-to-end-guide-to-understand-the-math-behind-xgboost/
  7. Detailed study links summary

A. https://serokell.io/blog/top-resources-to-learn-ml

B. Very structured and detailed learning links — https://medium.com/machine-learning-for-humans/how-to-learn-machine-learning-24d53bb64aa1

C. Google’s List of courses — https://developers.google.com/machine-learning

D. https://www.kdnuggets.com/2018/06/30-free-resources-machine-learning-deep-learning-nlp-ai.html

E. The famous Andrew NG course — https://www.youtube.com/playlist?list=PLoROMvodv4rMiGQp3WXShtMGgzqpfVfbU

Lasso Regression + Regularization

  1. Why Lasso led to sparsity ?https://www.analyticsvidhya.com/blog/2020/11/lasso-regression-causes-sparsity-while-ridge-regression-doesnt-unfolding-the-math/
  2. Regularization of polynomial regression — https://ardianumam.wordpress.com/2017/09/22/deriving-polynomial-regression-with-regularization-to-avoid-overfitting/
  3. Code — https://notebook.community/albahnsen/PracticalMachineLearningClass/notebooks/07-regularization

Polynomial Regression

  1. https://www.geeksforgeeks.org/python-implementation-of-polynomial-regression/
  2. https://jashrathod.github.io/2021-06-03-diving-deep-into-linear-regression-and-polynomial-regression/
  3. Code — https://github.com/KonuTech/Machine-Learning-with-Python/blob/master/ML0101EN-Reg-Polynomial-Regression-Co2-py-v1.ipynb

Data Transformation

  1. code — Data Transformation: https://www.statology.org/transform-data-in-python/

Curse of Dimensionality

1. https://www.analyticsvidhya.com/blog/2021/04/the-curse-of-dimensionality-in-machine-learning/

2. https://www.mygreatlearning.com/blog/understanding-curse-of-dimensionality/

3. Some code given — https://medium.com/analytics-vidhya/the-curse-of-dimensionality-and-its-cure-f9891ab72e5c

**** END ****

Please give a clap to this article if it has helped you. I also welcome your feedback in the Comments section below.

Feel free to share this wealth of knowledge with others on their learning journey. Together, let’s empower more minds in the exciting realms of AI, ML, and NLP.

--

--

No responses yet