Manifund foxManifund
Home
Login
About
People
Categories
Newsletter
HomeAboutPeopleCategoriesLoginCreate

Funding requirements

Sign grant agreement
Reach min funding
Get Manifund approval
0

VSPE Flattery-Reduction Benchmark & Licensing Pilot

Technical AI safetyAI governance
Astelle-Kay avatar

Astelle Kay

ProposalGrant
Closes July 28th, 2025
$0raised
$6,000minimum funding
$9,800funding goal

Offer to donate

34 daysleft to contribute

You're pledging to donate if the project hits its minimum goal and gets approved. If not, your funds will be returned.

Sign in to donate

Project summary

The VSPE Framework, short for Validation, Submission, Positivity, and Empowerment, is a four-step framework for safer, more emotionally intelligent AI programming.

This pilot delivers two things that make VSPE easy for vendors to adopt:

  • Flattery-Reduction Benchmark – a proof-of-concept Colab notebook (20 Anthropic sycophancy prompts + 5 empowerment checks) that demonstrates ≥ 25 percentage-point drop in flattery responses.

  • Licensing kit – plain-English contract template, tiered pricing, and a short slide deck so companies can license VSPE without heavy legal lift.

Related work: Varma & Beitman (2025) recently proposed a CBT-style “therapy loop” prompt to curb hallucinations. VSPE targets the complementary issue of flattery; our benchmark will include the therapy loop as a baseline for comparison.

What are this project's goals? How will you achieve them?

  • Collaborate with a freelance ML engineer & licensing consultant; draft a 2-page benchmark/test plan (Aug 2025).

  • Pitch assets – publish investor-grade slide deck, one-page summary, and polished website (Sep 2025).

  • Benchmark demo – engineer ships the Colab; notebook shows ≥ 25 % flattery drop (Oct 2025).

  • Legal & pricing – paralegal drafts non-exclusive license, pricing tiers, optional VSPE™ trademark filing (Nov 2025).

  • Outreach & traction – contact 10 AI companies, run two user-feedback interviews, secure ≥ 2 expressions of interest by Jan 2026.

How will this funding be used?

Budget (total requested: $9,800)

  • PI stipend – $3,000
    Five milestone payments of $600 for coordination, writing, and overall project management.

  • Licensing consultant – $2,500
    Crafts plain-language contract and pricing tiers; includes Mia’s $1,200 advisor fee.

  • Freelance ML engineer – $2,000
    About 15 hours at ≈ $130/hour to build and document the benchmark notebook.

  • Legal & trademark search – $1,000
    Drafts the non-exclusive license and checks basic trademark availability for the VSPE Framework.

  • Design & web polish – $500
    Updates the slide deck and landing page.

  • User-feedback honoraria – $500
    Gift cards for two user-interview sessions / red-team reviews.

  • Contingency buffer – $300
    Covers extra probes or—if unused—anything above $200 will be refunded.

*If only the minimum $6k is raised, we’ll still ship the benchmark, draft license, and slide deck. Trademark work and user interviews will move to a Phase 2 budget.

Who is on your team? What's your track record on similar projects?

Team & track record

  • Astelle Kay (pen name for Kay Gwendolyn Astle) – Creator of the VSPE Framework. White paper found at my website: (https://www.vspeframework.com/p/vspe-a-psychologically-grounded-framework); provisional U.S. patent pending (#63/790,488 filed Apr 2025); advanced to Stage 2 of the 2025 MATS AI Alignment selection; graduate student with 4.0 GPA.

  • Sergei Smirnov – Research Engineer & PhD student, University of Helsinki (AI alignment, mechanistic interpretability, evaluations). IEEE-published; 3+ years ML‐engineering experience; selected for the Finnish Alignment Engineering Bootcamp. Contracted for ~15 hrs to build and document the benchmark notebook.

  • Licensing consultant / paralegal – to be recruited in Month 2; drafts license & pricing.

  • Mia Abromitis – Associate Business Consultant, HealthEdge; leads claims-software implementations for healthcare payers and completed BlueDot Impact’s “Future of AI” course. Will provide two 30-minute compliance/ops reviews for VSPE.

What are the most likely causes and outcomes if this project fails?

  • Benchmark effect < 25 % → iterate prompts, emphasize licensing narrative.

  • Prompt over-submits → empowerment probes track any loss of helpfulness.

  • API costs spike → switch to open-weights models (e.g., Mistral-7B).

  • No EOI by Dec → publish results open-source and apply to LTFF for extended runway.

How much money have you raised in the last 12 months, and from where?

$0 – This is our second external funding request; the first one is pending.

CommentsOffersSimilar6

No comments yet. Sign in to create one!