Close Menu
WithO2WithO2

    Subscribe to Updates

    Get the latest AI News Tools Updates in your Inbox

    What's Hot

    Bill Gates Predicts: AI to Replace Many Doctors and Teachers Within 10 Years — Humans May Not Be Needed for Most Tasks

    March 28, 2025

    Agentic AI Milestone: Manus AI’s Autonomous Agents Outpace Human Oversight in Complex Tasks

    March 14, 2025

    A Major Breakthrough in AI: New Models Generate Text 10 Times Faster

    March 7, 2025

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    Facebook X (Twitter) Instagram
    Facebook X (Twitter) Instagram
    WithO2WithO2
    • AI
    • Blog
    • Business Software
    • Trending News
    • Stories
    WithO2WithO2
    Home » Prompt
    Prompt

    Chain of Draft: A New Way to Make AI Think Faster

    By Amitabh SarkarMarch 3, 20253 Mins Read4
    Facebook Twitter Pinterest LinkedIn Tumblr Email
    Illustration of Chain of Draft (CoD) concept, showing a futuristic digital brain transitioning from a complex, verbose thought process on the left to a streamlined, efficient reasoning process on the right, connected by a glowing energy pathway. The background features a high-tech cybernetic interface with neon blue highlights.
    AI Generated
    Share
    Facebook Twitter LinkedIn Pinterest Email

    Introduction

    AI is advancing rapidly, solving increasingly complex problems. However, a new technique called Chain of Draft (CoD) is making AI both faster and more efficient by optimizing how it processes information.

    In this blog, we’ll explore what Chain of Draft is, how it works, and why AI engineers should consider using it. For more insights into AI trends, visit our AI blog.

    What is Chain of Thought (CoT)?

    Before we dive into Chain of Draft, let’s first understand Chain of Thought (CoT). CoT is a method that enables AI to break down problems into step-by-step solutions, similar to human reasoning.

    For example, consider this math problem:

    “Jason had 20 lollipops. He gave some to Denny and now has 12 left. How many did he give to Denny?”

    A basic AI response might simply be:

    Answer: 8.

    However, an AI using Chain of Thought would break it down like this:

    1. Jason had 20 lollipops.
    2. He gave some away and now has 12.
    3. To find out how many he gave away: 20 – 12 = 8.
    4. Answer: 8.

    While CoT improves transparency, it also requires more processing time and resources.

    What is Chain of Draft (CoD)?

    Chain of Draft is a faster and more efficient alternative to Chain of Thought. Instead of generating extensive reasoning, it focuses on the key steps required to reach a solution.

    Using Chain of Draft, the AI would respond to the same question like this:

    20 – x = 12 → x = 20 – 12 → x = 8.

    This approach maintains accuracy while reducing processing time and token usage, making AI responses:

    • Faster
    • More cost-effective
    • More efficient

    Performance Comparison: CoT vs. CoD

    To understand the benefits of Chain of Draft, let’s examine real-world data comparing CoT and CoD across different AI models and tasks.

    1. Date Understanding Evaluation

    ModelPromptAccuracyToken CountLatency
    GPT-4oStandard72.6%5.20.6 s
    CoT90.2%75.71.7 s
    CoD88.1%30.21.3 s
    Claude 3.5 SonnetStandard84.3%5.21.0 s
    CoT87.0%172.53.2 s
    CoD89.7%31.31.4 s

    2. Sports Understanding Evaluation

    ModelPromptAccuracyToken CountLatency
    GPT-4oStandard90.0%1.00.4 s
    CoT95.9%28.70.9 s
    CoD98.3%15.00.7 s
    Claude 3.5 SonnetStandard90.6%1.00.9 s
    CoT93.2%189.43.6 s
    CoD97.3%14.31.0 s

    3. Coin Flip Evaluation

    ModelPromptAccuracyToken CountLatency
    GPT-4oStandard73.2%1.00.4 s
    CoT100.0%52.41.4 s
    CoD100.0%16.80.8 s
    Claude 3.5 SonnetStandard85.2%1.01.2 s
    CoT100.0%135.33.1 s
    CoD100.0%18.91.6 s

    Key Insights

    • Accuracy: CoD maintains or even surpasses CoT in certain tasks.
    • Token Efficiency: CoD significantly reduces the number of tokens used, leading to cost savings.
    • Lower Latency: Shorter responses improve speed, making AI interactions more responsive.

    Why AI Engineers Should Adopt Chain of Draft

    If you are developing AI models, here’s why you should consider switching to Chain of Draft:

    1. Lower Computational Costs – Reduces token usage, saving money on processing power.
    2. Faster Processing Times – Ideal for real-time applications like chatbots and automation.
    3. Maintains Accuracy – Streamlined reasoning without compromising correctness.
    4. Easy to Implement – Requires only a simple change in prompt structure.

    To see how OpenAI’s latest advancements compare, check out GPT-4.5’s debut.

    Final Thoughts

    Chain of Draft is a major step forward in AI efficiency. By eliminating unnecessary verbosity, AI models can think faster, cost less to run, and perform better in real-world applications.

    If you’re working with AI, now is the time to try Chain of Draft and see how much more efficient your models can become!

    For further reading, check out the original research paper from Zoom Communications: Chain of Draft: Thinking Faster by Writing Less.

    AI Chain of Draft ChatGPT OpenAI prompt prompt engineering
    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Amitabh Sarkar
    • Website

    I am a software engineer, I have a passion for working with cutting-edge technologies and staying up-to-date with the latest developments in the field. In my articles, I share my knowledge and insights on a range of topics, including business software, how to set up tools, and the latest trends in the tech industry.

    Related Posts

    A Major Breakthrough in AI: New Models Generate Text 10 Times Faster

    March 7, 2025

    AI’s Big Shift: How Smaller, Smarter Language Models Are Taking Over

    March 4, 2025

    What Is Webllm?

    March 3, 2025

    Comments are closed.

    Don't Miss
    Trending News

    Bill Gates Predicts: AI to Replace Many Doctors and Teachers Within 10 Years — Humans May Not Be Needed for Most Tasks

    By Amitabh SarkarMarch 28, 2025

    Challenging Gates’s AI predictions, experts reveal why human doctors and teachers will remain essential in tomorrow’s technology-driven world.

    Agentic AI Milestone: Manus AI’s Autonomous Agents Outpace Human Oversight in Complex Tasks

    March 14, 2025

    A Major Breakthrough in AI: New Models Generate Text 10 Times Faster

    March 7, 2025

    AI’s Big Shift: How Smaller, Smarter Language Models Are Taking Over

    March 4, 2025

    Subscribe to Updates

    Get the latest creative news from SmartMag about art & design.

    Stay In Touch
    • Facebook
    • Twitter
    • Pinterest
    • Instagram
    Our Picks

    12 Best Deepfake app and software for 2023

    March 7, 2023

    Best long-form AI writer 2023 for writing full blog articles

    January 29, 2023

    Revolutionize Your Insurance Business with 2023’s Best CRM Software for Insurance

    January 26, 2023

    Elevate Your Filmmaking with the Best Video Editing editing software for Filmmakers on the Market in 2023

    January 23, 2023
    Editors Picks

    Bill Gates Predicts: AI to Replace Many Doctors and Teachers Within 10 Years — Humans May Not Be Needed for Most Tasks

    March 28, 2025

    Agentic AI Milestone: Manus AI’s Autonomous Agents Outpace Human Oversight in Complex Tasks

    March 14, 2025

    A Major Breakthrough in AI: New Models Generate Text 10 Times Faster

    March 7, 2025

    AI’s Big Shift: How Smaller, Smarter Language Models Are Taking Over

    March 4, 2025
    About Us
    About Us

    Your Source for Innovation: Discover in-depth guides, solutions, and tools tailored to modern business challenges.

    Links
    • Blog
    • Privacy Policy
    • Contact WithO2.com
    • Terms and Conditions
    Facebook X (Twitter) Instagram Pinterest
    © 2025 WITHO2.COM

    Type above and press Enter to search. Press Esc to cancel.