Today in Edworking News we want to talk about Pavel has found a 3-state 4-symbol TM (Turing Machine) which can compute an “Ackermann-level” function and halts with exactly non-zero symbols on the tape. With a number this large, Knuth up-arrow format is becoming a bit awkward, so we can approximate this bound as: where \(Ack(14)\) is the 14th Ackermann number defined as: As far as I know, this is the first TM found “in the wild” that is able to simulate an Ackermann-level function.
The Machine
Discovery and Validation
The Turing Machine (TM), discovered by Pavel Kropitz and shared on Discord on 25 Apr 2024, can calculate an incredibly large number, necessitating a new form of approximation. This particular TM, labeled `1RB3LB1RZ2RA_2LC3RB1LC2RA_3RB1LB3LC2RC`, halts with a final configuration, leaving precisely non-zero symbols on the tape.
Collaboration and Results
Pavel’s code was limited in specifying a human-readable bound on the TM score and was indicated simply as `Halt(SuperPowers(13))`. This meant that 13 layers of inductive rules were needed for validation. Using an Inductive Proof Validator, a collaborative validation concluded with the team, including Matthew House (@LegionMammal978), who found a simplified closed form evaluation which contributed to rewriting the results with exact values.
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Analysis and Proof
Behavioral Description
The TM operates remarkably simply, governed by a rule requiring double induction for proof. It represents a unique scenario where its behavior can effectively simulate the Ackermann function.
Key Lemmas and Theorems
Lemma 1: For all \(k \ge 1\):
Corollary 2: For all \(k \ge 1, m \ge 0\):
Theorem 3: For all \(k \ge 1, n \ge 0, m \ge 0\):
Proofs involve rigorous induction methods, which affirm the behavior and termination properties of the TM.
Inductive Proof Validator & Insights
Significance
The TM serves as an ideal test case for an "inductive proof" validator. The aim of this project is to develop standardized certificates for various forward-reasoning, rule-based analyses. This validator could be a game-changer moving forward, allowing those in computational fields to verify complex TMs accurately.
A fascinating aspect is the simplicity of the TM. Despite being Ackermann-level, it does not rely on Collatz-like rules, which might bias current trends in discovering similar TMs. This simplicity could signal a wider array of potential discoveries, transcending current modular arithmetic implementations on function simulations.
Exact Values and Simplifications
Remarkable Coincidences
Remarkably, there's a simple closed form evaluation using only Knuth up-arrows and arithmetic, making the initially complex TM comprehensibly easier to understand and implement.
Permutations validated that the TM’s configurations are optimized and effective, revealing their equivalence with state-of-the-art computational models, bringing forth new perspectives on minimal state-symbol TMs operating at high computational levels.
Description: A visualization of the 3-state 4-symbol Turing Machine in action.
Remember these 3 key ideas for your startup:
Validation and Collaboration Are Critical: Just like how Pavel Kropitz’s TM discovery underwent a rigorous validation process, startups should ensure their products and services are robustly tested and validated in collaboration with experts and the community.
Embrace Simplified Solutions: The simplicity of Pavel’s TM, despite its complexity, underscores the importance of streamlined and efficient solutions. Focus on creating user-friendly and straightforward products that deliver high value with minimal complexity. Check out these productivity hacks for more tips.
Forward-Thinking Tools Add Value: The development of the Inductive Proof Validator is akin to innovative tools that streamline complex processes. Invest in or develop such tools to enhance your productivity and efficiency, allowing your team to focus on core business activities. For some interesting tools, consider these top PM tools.
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In conclusion, Pavel Kropitz’s discovery of the 3-state 4-symbol TM that computes an Ackermann-level function represents a monumental leap in computational theory. Startups and SMEs can draw valuable lessons from this breakthrough in terms of validation, simplicity, and the use of innovative tools for more efficient operations.
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