OpenAI’s o1 series employs advanced chain-of-thought for the first time

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Just a few days ago, OpenAI released its most sophisticated AI model to date: the o1 series. These models utilize reinforcement learning and chain-of-though reasoning to process complex reasoning and problem-solving tasks. Simply put, the o1 series is, in the words of OpenAI, “A new series of AI models designed to spend more time thinking before they respond.”

The o1 series is available to users as well as developers based on a variety of access tiers. ChatGPT Plus subscribers can use this model.

OpenAI’s o1 series highlights

Here are ten interesting facts about OpenAI’s o1 series that you might want to know.

  1. o1 series has two model variants: o1-Preview and o1-Mini

    Based on the wide range of its audience, OpenAI has released two variants of the o1 series: Preview and Mini. The o1-Preview model is the whole package. It can solve complex problems with equally complex reasoning in a jiffy. The o1-Mini model is a cost-effective version of the previous model. It is optimized for STEM fields like mathematics and coding.
  2. STEM benchmarks rank the o1 series high

    OpenAI tests its products at various benchmarks and competitions to gain accreditation. The o1 series ranked in the 89th percentile on Codeforces, which is a popular programming competition. Also, this model was within the top 500 students in the USA Math Olympiad qualifier.
  3. Better hallucination mitigation

    Just as humans hallucinate, so do large language models. This term is applied to AI models for the generation of wrong, unsupported, or nonsensical information. But the o1 series claims to tackle this issue. Using the aforementioned advanced reasoning and chain-of-thought processes, this model executes a command step-by-step.

    The statistics say that the o1 models have a reasonably lower rate of hallucination and a somewhat higher rate of accuracy as compared to the previous models.
  4. Affordability combined with cost efficiency

    Affordability is a key factor when ensuring widespread accessibility, especially in the case of educational institutions, and recent or small-scale businesses. OpenAI’s o1 series has a solution for this. It is the o1-mini model, which is 80% cheaper than the o1-preview model.
  5. Extensive and external red teaming for safety evaluations

    Until LLMs become autonomous, they are prone to malfunctioning. “Red teaming” is a measure to reduce this adverse outcome as much as possible. The term “red teaming” means to simulate attacks on AI models from third parties or to prompt them to do things that are biased, harmful, or basically bar their successful operation.

    The tests in red teaming occur in a variety of scenarios and sources. In the end, the LLM becomes more secure, robust, and ethical. The o1 series underwent meticulous safety checks like external red teaming and Prepared Framework testing.
  6. Advanced chain-of-thought reasoning

    Advanced chain-of-thought reasoning essentially means the o1 series models think twice before responding. They follow a step-by-step reasoning process to increase accuracy and break down complex problems. This is what makes these models different than models like GPT-4. The model’s ability for competitive programming, mathematics, and science shoots up while at the same time making it more transparent. The model becomes more human-like in its processing.

    But there is an apparent downside, which is really not one. Because the AI program is going one step at a time, the response is generated slower, at least compared to the GPT-4 family of models.
  7. Improved safety checks and parameters

    Jailbreaking describes the unethical bypassing of safety firewalls of AI models that have been put in place to stop harmful and unethical responses. OpenAI is particularly aware of this and has embedded advanced safety features into the o1 series, especially the o1-preview variant. Security tests that evaluate resistance against jailbreaking show a higher score for the o1 series compared to the GPT-4o models.
  8. Integration of diverse datasets

    LLMs’ lifeblood is datasets. The more extensive and in-depth they are, the better the models. The o1 series models have been trained on a variety of datasets including public, private, and custom ones. That means these models have huge amounts of general knowledge as well as domain-specific information. Due to this combination, the model’s conversational and reasoning capabilities are particularly high.
  9. Fairness and bias detection and mitigation

    AI models suffer from responding in stereotypical ways. The o1-preview model is much better at coping with this than the GPT-4 models. Due to the proper fairness evaluations in place, the o1 series selects the proper response and behaves much better in ambiguous situations.
  10. Chain-of-thought monitoring and deception detection

    OpenAI is aware that this new chain-of-thought methodology is subject to various pitfalls. That is why they have injected experimental safety and monitoring techniques. These take note of deceptive behavior by the o1 series models whenever they provide incorrect information. These techniques have been successful in detecting and reducing a multitude of risks of misinformation.

Basically, OpenAI has been at the helm of the AI revolution roughly since the beginning of 2023 when ChatGPT caught on fire and became super popular. The company is always plowing ahead, trying something new, because it must. And the latest offering is the o1 series. If not entirely successful in tackling them, these models at least acknowledge the multifaceted problems of privacy, misinformation, and ethics that face our modern world.

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