AI For Engagement

Gametize

21 Mar 2024

Vivek Kalyan

hello@vivekkalyan.com 

@vivekkalyansk

 

 

About Me

  • Frontend Intern @ Gametize
  • Founder @ Computer Vision + Augmented Reality startup
  • AI Research @ Handshakes
  • Interests: Making small-ish models do cool things

Agenda

  • What can AI do?
  • How to use AI?
  • How to use AI better?
  • How to keep up with AI trends?

What can AI do?

Text

  • Make decisions on text (BERT, T5, etc)
    • Classification
  • Generate text (LLMs)
    • Chat
    • Content Generation
    • Natural Language Interface
    • Agents (with tools access)

Classification

  • Positive/Negative Sentiment for feedback
    • "I really enjoyed this activity" -> positive
  • Grading open ended quiz answers
    • "What is phishing?"
      • Some reasonable answer -> correct
      • Some wrong/nonsense answer -> wrong
  • Classify users into groups
    • Personality/Skill levels

Chat

  • Make the entire experience chat
    • Chat adventure game with quiz/challenges
  • Personalized learning
    • Focus on difficult concepts
  • Answer questions
    • Help users clarify concepts
    • Point to the right documentation

Content Generation

  • Generate reading material
  • Generate question + answer pairs from material
  • Dynamic reading material + challenges/quizes
    • adapt to skill/interests
  • Provide real time feedback on answers

Natural Langauge Interface

  • Convert natural language query to SQL/DSL
    • "Find users with the most number of badges collected in the past X days"
  • Convert natural language into programmatic API
    • "I want to use the app in dark mode" -> set_darkmode(True)

Agents

  • Model chooses the sequence of actions to take
  • Planning, reflection, self-critique, tools
  • Access to tools (model decides when and how to use)
    • Wolfram Alpha
    • Google
    • Database
    • ... your internal tool
  • Enabling complex, generalized behaviour
  • ... this is at the bleeding edge now, libraries for this are not mature

Other Modalities

  • Image
    • Object Detection, Facial Recognition
    • Text + Image -> QA on Images
    • Generate Images
  • Sound
    • Speech to Text
    • Text to Speech
  • Video
    • Treat as Sequence of Images
    • Text to Video

Difficulty (for model):

Generating >> Making decisions

 

Just like speaking a new language is harder than understanding it

What can AI NOT do?

What can AI NOT do?

  • It cannot read your mind
    • It cannot work with vague instructions
    • It cannot figure out why you want to do something
  • It cannot replace you/your job
    • ... but it will drastically change the way you work
    • it will change the economics of what is valuable

How to use AI?

Glossary

  • Size of model: Number of parameters
    • 100M - 3B - 7B - 175B - 1.8T
  • Token: Represent text with numbers
    • 1 word ~ 1.3 token
  • Context Length: Number of tokens (input + output)
    • 512 - 4096 - 32k - 1M
    • Able to use doesn't mean able to use well

Choose your model

Proprietary Models

  • GPT-4 by OpenAI
  • Claude Opus by Anthrophic
  • Gemini Pro by Google

Open Models

  • Mixtral/Mistral by Mistral
  • Llama2 by Meta
  • Gemma by Google
  • ... community finetunes

Recommendation

  • Start with the best models to validate and prototype
  • General usecases
    • Claude Opus > GPT4 > Gemini Pro
  • Long Inputs (RAG)
    • Gemini Pro 1.5 (~1M context length)
      • Text (700k words), code (30k), sound (11 hrs), video (1hr),
      • Not available yet
      • ... but I've tested it and it works very well

 

Retrieval Augmented Generation

  • Ground AI outputs with external information
  • Dealing with long documents is tricky
    • Longer context length models should help
  • query -> retrieve relevant context -> input: query + context
  • LlamaIndex is a good place to start

Proprietary Models

  • Easy to get started
  • Higher capabilities (but pricier)
  • Questionable privacy practices
  • Might be too "woke"
  • No control over deprecation schedules

Open Models

  • More complex to use, train, deploy
  • Use smaller models -> lower capabilities but faster/cheaper
  • Finetune for your usecase
  • More expensive at low volumes (pay by GPU/h, not API call)
  • Stable

 

Choose your model

Newer models might not always be better (for you)

  • "Is ChatGPT getting worse?"
  • ChatGPT updates regularly
  • OpenAI API models are stable
    • ... as long as they are available
    • generally deprecated after 1 year

Newer models might not always be better (for you)

Proprietary Models

  • Easy to get started
  • Higher capabilities
  • Questionable privacy practices
  • Might be too "woke"
  • No control over deprecation schedules

Open Models

  • Finetune for your usecase
  • Use smaller models -> might be cheaper
  • More complex to use, train, deploy

 

Choose your model

Open Models as an API

  • TogetherAI
  • HuggingFace
  • Anyscale
  • Easy for Developers (just a API call)
  • Cheap (pay per use)
  • Stable
  • Can easily change providers

Choose your model

Recommendation

  • No code
    • Proprietary models products
  • Prototyping/Need high capabilities (reasoning/planning etc)
    • Claude Opus, GPT4, Gemini Pro
  • Need long context length
    • Gemini Pro 1.5 (not available publically yet)
  • Integrate AI into software products
    • Open models as a service
  • Train custom AI models & high volume
    • Finetune open models

How to use AI better?

aka Prompt Engineering

Glossary

  • Prompt: Input to model
  • System Prompt: Meta instructions on how to respond
  • User Prompt: User input to the model
  • Assistant Prompt: Model's previous output (useful for conversation style)
  • Prompt Template: Special way to arrange the above prompts in a way that is understandable by the model
    • Check your model, but taken care of in APIs

Prompts

  • System Prompt: You are a helpful assistant
  • User Prompt: Hi!
  • Assistant Prompt: Hello, how many I help you?
  • User Prompt: Can you tell me the temperature in Singapore
  • Assistant Prompt: The average temperature in Singapore is 25°C to 31°C
  • User Prompt: What about rainfall?
  • Assistant Prompt: The average annual rainfall in Singapore is 2340 mm.

Prompts

  • System Prompt: Only reply in emojis
  • User Prompt: Hi!
  • Assistant Prompt: 👋
  • User Prompt: I want to know the recipe to make cookies
  • Assistant Prompt: 🧈🥚🥄🍚🧂🍫🔪🥄🧑‍🍳👩‍🍳🤲🧈📦🕒🌡️🔥🆒🍪

How to Prompt

  • Setup model to not fail
    • How you would give instructions to an intern
  • Mimic how a human will complete the task
  • Create structure, show examples

Teach a bot to fish

aka Few shot Learning

  • Show examples in the prompt of how to answer
System Prompt: You are a helpful assistant
Human Prompt: Classify if this sentence is positive/negative: "I really enjoyed this activity"
Assistant Prompt: Positive
Human Prompt: Classify if this sentence is positive/negative: "This was a great waste of time"
Assistant Prompt: Negative
Human Prompt: Classify if this sentence is positive/negative: "I learnt many new things today"
Assistant Prompt:

Tell the model who to be

  • System Prompt: `You are a world class programmer`
  • System Prompt: `Assume that I have Javascript experience but no Python experience`

Create an Internal Monologue

"Lets think step by step before answering."

  • Summarise this story into the key plot points.
  1. Outline the key players in the story. Who are the characters?
  2. List the major plot points are who was involved?
  3. For each plot point, what were the consequences?
  4. For each of the consequences, see if any are missing from the plot points, and list them
  5. Resummarise the story using the plot points

Ask the model to prompt itself

  • Works unreasonably well

Domain Knowledge >> AI Knowledge

How to keep up with AI trends?

How to keep up with AI trends?

Thank you!

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