We're #hiring a new DevOps Early Hire Engineer in United States. Apply today or share this post with your network.
Subconscious AI
Research Services
New York, NY 1,207 followers
🧠 Behavior Change as a Service 🌞
About us
Conduct Research faster, with higher quality and more ethically. Our technology allows users to conduct causal experiments for any human behavior at a fraction of the cost and time of traditional methods. Get started today: https://docs.subconscious.ai/ Join our Discord here: https://discord.gg/3bgj4ZhABz
- Website
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https://www.subconscious.ai
External link for Subconscious AI
- Industry
- Research Services
- Company size
- 11-50 employees
- Headquarters
- New York, NY
- Type
- Privately Held
- Founded
- 2022
Locations
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Primary
33 W 60th St
New York, NY 10023, US
Employees at Subconscious AI
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Connor Joyce
Building Products That Make an Impact | Writer, Researcher, Advisor | Ex-Microsoft, Twilio, BetterUp, Deloitte
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Mohak Sunil Waghchaure
Frontend Engineering | Full Stack | React | Node | UI/UX | Python | Data Analytics | Project Management
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Mehul Gawde
Software Engineer @ Valley
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Subodh Dubey
PhD | Data Scientist | Economic choice behaviour | Mathematical Psychology | Applied Econometrics & AI
Updates
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We're #hiring a new Frontend Early Hire Engineer in United States. Apply today or share this post with your network.
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Why is Subconscious.ai different? - We combine economic models with Large Language Models (LLMs) to run behavioral experiments with unmatched accuracy. 🎯 - We have cracked the code on efficiency, delivering insights fast and affordable. ⚡️ - Our results are causal and actionable. 🌎
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We read this paper so you don't have to! 📝 "Scaling Synthetic Data Creation with 1,000,000,000 Personas" Here's the gist: 1. A collection of 1 billion diverse personas created from web data, representing 13% of the world’s population. These personas serve as distributed carriers of world knowledge, allowing for the creation of synthetic data from various perspectives. 2. The methodology leverages a large language model (LLM) to create high-quality synthetic data across domains, including math problems, logical reasoning, game NPCs, and more. 3. This process is adaptable to different data synthesis scenarios, potentially influencing how LLMs are developed and researched. 4. This approach in data creation can simulate diverse user behaviors, predict reactions to new products or policies, and support the development of virtual societies in the metaverse. 5. The paper emphasizes the importance of ethical and responsible application to avoid misuse and ensure the technology benefits society. Link to the full paper: https://lnkd.in/dneZe9Dt
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The 'why' behind decisions shouldn't take forever. Traditional market research often feels like a slow, costly process. But with Synthetic Respondents and Causal AI, there’s a better way: Conduct experiments in minutes, not months. Cut research costs by up to 100x. Gain reliable, human-like data. Use Cases: Market Research: Quickly understand consumer behavior. Policy Design: Simulate policy outcomes effectively. Product Development: Test new features efficiently. www.subconscious.ai
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🔍 Another successful replication! Check out our latest replication of the Bechtel, Scheve, and van Lieshout study on International Carbon Tax Policy for Environmental Mitigation, with a Spearman Correlation of 0.6711. The study assesses the preferences of residents in the U.S., U.K., Germany, and France for various aspects of carbon tax packages using a discrete choice experiment. Our replication confirms key insights, such as the importance of mitigation efforts, cost implications, and regional preferences. Interact with our data here: https://lnkd.in/d4X3QJfB Conduct causal market research: www.subconscious.ai
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Unpacking consumer preferences for bioplastic fabrics! 🌱 Our latest experiment delves into the factors influencing consumer choices in sustainable materials. The data reveals that a higher percentage of fabrics' bioplastic significantly enhances consumer preference. Biogenic resources such as sugar cane and corn also play a vital role, while factors like origin and certifications (e.g., climate protection, fair production) further shape consumer decisions. Interestingly, price remains a key determinant, with lower costs strongly preferred. This insight emphasizes the importance of affordability in driving sustainable consumer behavior. Check out the graph for a detailed breakdown of the findings. Let’s continue exploring how consumer preferences can guide sustainable innovation! https://lnkd.in/d3TxcMAu
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We Read This Paper So You Don't Have To!! We've dived into the groundbreaking study "MetaAgents: Simulating Interactions of Human Behaviors for LLM-Based Task-Oriented Coordination via Collaborative Generative Agents." Here's what you need to know: Researchers explored the innovative world of Large Language Models (LLMs) and their capabilities in social simulations. The study proposes a novel framework for generative agents, enhancing their ability to communicate and collaborate effectively. By simulating a job fair environment, these MetaAgents engaged in complex social interactions like interviewing and recruiting. 🌟 Key Takeaways: Collaborative Capabilities: Generative agents formed cohesive teams and dynamically created workflows tailored to individual expertise. Coordination Challenges: As complexity increased, agents faced coordination challenges, highlighting the need for further enhancement. Enhanced Reasoning: The reasoning module significantly improved agents' performance in task-oriented coordination. This research opens up exciting possibilities for the future of AI, particularly in understanding and mimicking human collaborative behaviors. Curious about the details? Read the full paper here - https://lnkd.in/eXt3Apwf
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Choosing between Traditional Market Research and AI-Driven Experiments? Traditional market research methods can be time-consuming and costly, often requiring extensive manual effort to recruit respondents, design experiments, and analyze data. AI-driven experiments, on the other hand, leverage advanced algorithms to conduct rapid, controlled studies. This approach offers several advantages: Speed: AI can process vast amounts of data quickly, providing insights in a fraction of the time required by traditional methods. Cost-Effective: Reducing the need for manual input and physical resources lowers overall research costs. Precision: Controlled AI experiments can pinpoint causal relationships, providing a deeper understanding of human behavior and preferences. As the market research landscape evolves, it's essential to consider the benefits of integrating AI-driven methodologies. Embrace innovation and make data-driven decisions faster and more efficiently. Try out experiments at http://subconscious.ai and discover how our platform can transform your research capabilities.