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DSPy:
 A PROGRAMMATIC
PARADIGM FOR LLM
APPLICATION OPTIMIZATION
 OR: HOW I LEARNED TO
STOP PROMPTING AND LOVE
AI!
LARS BELL  LARSBELL@GMAIL.COM
Prompting is
Weird…
Strategies that “work”
• Threatening
• Emotional Blackmail
• Bribe
• Grovel
Do you version control your Prompts?
Prompting Can Be Fragile
• Results change by Check Point or Model
Prompting can be non predictive
Screw all that.
We live in world where LLMs
are good at writing words.
Let’s make AI write many
possible prompts.
Make your computer test every
prompt combination.
Then prove, with math, which is
the optimal combination of
prompts for your workflow
Welcome to DSPy!
Ok, the AI is writing the Prompts.
What is left for me to do?
Data. You still need
high quality input
data. The more the
better.
You still need to
design and improve
the program. The
architecture of the
logic.
Metrics. You define
the quality of the
output.
What does the code look like?
We now
have:
Systematic
Optimization
Modular Approach
Cross-LM
Compatibility
Confidence we
have the optimal
prompts for our
system.
“There is no difference between
Prompting and Fine Tuning
when you are doing neither.”
-- OMAR KHATTAB, HEAD CREATOR OF DSPY
Bonus: you can graduate to fine tuning with the same system.
Lars Bell  larsbell@gmail.com

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DSPy a system for AI to Write Prompts and Do Fine Tuning

  • 1. DSPy:  A PROGRAMMATIC PARADIGM FOR LLM APPLICATION OPTIMIZATION  OR: HOW I LEARNED TO STOP PROMPTING AND LOVE AI! LARS BELL  LARSBELL@GMAIL.COM
  • 2. Prompting is Weird… Strategies that “work” • Threatening • Emotional Blackmail • Bribe • Grovel Do you version control your Prompts? Prompting Can Be Fragile • Results change by Check Point or Model Prompting can be non predictive
  • 3. Screw all that. We live in world where LLMs are good at writing words. Let’s make AI write many possible prompts. Make your computer test every prompt combination. Then prove, with math, which is the optimal combination of prompts for your workflow Welcome to DSPy!
  • 4. Ok, the AI is writing the Prompts. What is left for me to do? Data. You still need high quality input data. The more the better. You still need to design and improve the program. The architecture of the logic. Metrics. You define the quality of the output.
  • 5. What does the code look like?
  • 7. “There is no difference between Prompting and Fine Tuning when you are doing neither.” -- OMAR KHATTAB, HEAD CREATOR OF DSPY Bonus: you can graduate to fine tuning with the same system.
  • 8. Lars Bell  larsbell@gmail.com