DEV Community

Cover image for An area of research 🔬
grace
grace

Posted on

An area of research 🔬

Research

It is an art
Or is it?

Seems to be the
things I discover
questions I raise
evidence I present
context I find
tests I prove true
Theories which further augment
Curiosity satisfied
Developments pushed further

I’m not here to write a poem but I have a creative background and it’s about perspective sometimes not just 1+1=1

I believe this will reveal its self along the way interestingly and innovate somehow

But let me explain more about the rubix in time!

100+ fields of Ai exist - it’s continually expanding so I’m not upto date in it all - neither can you even be, so none of us know

ok! Now …

Some areas in Ai (which I’ve casually researched around other things since 2020) include:

• KRR
• CV
• Scene reconstruction
• Object detection
• Event detection
• Activity recognition
• Video tracking
• Object recognition
• 3D pose estimation
• Learning
• Indexing
• Motion estimation
• 3D scene modeling
• Image recognition
• NLP
• Automatic Reasoning
• Interdisciplinary Fields
• linguistics
• Automatic reasoning
• Expert Systems (ES)
• Fuzzy logic
• Apps in ctrl theory & AI
• Evolutionary Computation
• Speech Processing
• NLU/NLG
• AR/ VR
• Planning
• RL
• Swarm Intelligence
• Game AI

GenAI
• Content Gen
• Text gen
• Image gen
• Music gen
• Code gen

LLM
• Natural Language Generation (NLG)
• ChatGPT
• GPT
• GPT-4
• Advanced Topics
• Quantisation
• Reward mechanisms
• New LLM architectures
• Domain-specific models

Multimodal Gen Models
• Vision-Language Models (VLMs)

Advanced Retrieval-Augmented Generation (RAG)
• Effective Data Augmentation Techniques
• Large Knowledge Bases
• Refining Retrieval Mechanisms

ML
• Algorithms that Learn
• ANNs
• Predictive Analytics
• Business Analytics applying ML

DL
• Advanced ML Techniques Using ANNs
• Long Short-Term Networks (LSTN)
• Deep Belief Networks (DBN)
• Recurrent Attention Networks (RAN)
• Generative Adversarial Networks (GAN)
• Other

This structured breakdown organises the vast field of AI into specific disciplines & subsections

As mentioned it’s not fully comprehensive

Part of the exploration is Quantum Machine Learning: Exploration of how quantum computing can enhance machine learning algorithms and processes, potentially improving efficiency and performance in data analysis and pattern recognition.

  • Parts of my Folio will be linked eventually to better understand design, Ux, theories, test, build, ethics & audit etc

LLMs like GPT-4 and Claude are considered for deep contextual understanding because of their large training data, reinforcement learning from human feedback (RLHF).

They are often paired with multi-agent systems in CrewAI

Beyond this research check out the areas few venture:https://dev.to/gracerosen/off-the-beaten-track-1c4d

Top comments (0)