Master · Public Health
Belgium- writing time vs prior draft
- −68%
- citations verified on Crossref
- 94%
- method/result contradictions at submission
- 0
Mixed-methods thesis, 142 pages, Vancouver. Defended with distinction.
Three specialized agents — research, writing, validation — chained around a permanent memory of your project.Every paragraph sourced. Every chapter coherent with the last. Every word at the exact altitude of your degree.
Not a single prompt asked to do everything. A pipeline — where each stage has one job, and every output is auditable.
Every transition between layers is logged. You can replay the trace of any chapter, citation by citation.
Generic LLMs were designed to sound right. Academia rewards what can be sourced, what stays coherent across chapters, and what survives peer review. Different goal — different machine.
Every chapter is built like a small research paper — investigated, drafted, then audited by a separate agent. Not vomited out of a single prompt.
Mines your project memory, queries Crossref and Semantic Scholar, identifies references, angles, gaps — for this exact chapter.
Drafts in the exact register of your degree. Respects architecture, academic tone, disciplinary conventions.
Cross-checks coherence with previous chapters, verifies citations, flags contradictions, audits register.
And before any of that: Diagnostic → Brief → Architecture → chapter-by-chapter orchestration. A real workflow — not a chat window.
Generic LLMs are horizontal toys. ScholarMind is a vertical instrument — every component sharpened around one job: a thesis that holds up in a defense room.
Every figure below is computed from anonymized project logs (generation time, citation pass-rate, coherence audits). Updated monthly.
Mixed-methods thesis, 142 pages, Vancouver. Defended with distinction.
Qualitative-dominant, 286 pages, APA 7. 2 contradictions auto-rewritten, 1 manually fixed.
Comparative-law dissertation, 78 pages, McGill style. Top 5% of cohort.
Methodology: each metric is computed on signed-off, defended works only. Self-reported numbers are excluded.
Same research question. Same target: a Master's chapter on remote-work effects on team cohesion. Read both. Decide.
Remote work has been widely studied since the pandemic. Many researchers agree it has both positive and negative effects on teams. Some studies, like Smith (2021) and Johnson et al. (2022), suggest cohesion may decrease, while others find no significant impact. Overall, it depends on context. Companies should adapt their policies accordingly.
Longitudinal evidence from European tech SMEs (50–500 FTE) suggests a non-monotonic relationship between remote-work intensity and team cohesion. Cohesion — operationalized via Carless & De Paola's (2000) Group Environment Questionnaire (task + social subscales) — declines significantly only beyond a ~60% remote threshold (β = −0.27, p < .01, n = 1,184; Wang et al., 2021, doi:10.1002/job.2484). Below that threshold, hybrid arrangements show no significant erosion and, in cross-functional teams, a small positive effect on task cohesion (d = 0.18; Bloom et al., 2022, doi:10.1093/qje/qjab041). The mechanism — reduced informal exchange volume — is partially offset by structured async rituals (Larson et al., 2020, doi:10.1287/orsc.2020.1409). Implication: cohesion loss is a dosage problem, not a remote-work problem.
Every DOI above resolves on Crossref. Try one — that's the whole point.
ScholarMind refuses to dumb down for a Bachelor or fake erudition for a PhD. It locks onto your level — tone, tools, depth, expectations — and stays there.
Final-year dissertation. Five-chapter outline, descriptive methodology, base statistics, glossary embedded.
IMRAD research thesis in seven chapters. Operationalized hypotheses, inferential tests, validity defended.
Scientific thesis, 10+ chapters. Epistemological framework, identified gap, original contribution, advanced methods.
ScholarMind doesn't just generate paragraphs — it forces your reasoning through the standards your discipline actually grades on.
Topic, research question, objectives, theoretical framework — pinned before any line is written.
Quantitative, qualitative, mixed. ScholarMind justifies the chosen design and anticipates objections.
Variables, indicators, scales, testable H0/H1 hypotheses. Concrete, measurable, falsifiable.
Internal, external, construct validity. Cronbach's α, sensitivity analyses, biases discussed openly.
Hypotheses your own results contradict. Methods incompatible with the analysis you ran. Conclusions that overshoot your data.
Project memory cross-reads every section continuously and flags each inconsistency — with textual evidence and a concrete rewrite already drafted.
You conclude no effect, but H1 predicted a positive effect — observed at p = .03.
Sample described as random, but recruited via social networks (selection bias).
Correlation r = .18 described as “strong” — rephrase as weak-to-moderate.
No invented DOIs. No phantom authors. Every reference traceable, every citation defendable, every format submission-ready.
DOI lookup, verified metadata, publisher-grade accuracy.
Peer-reviewed papers, citation graphs, impact signals.
One-click import of your library and researcher identity.
Native Overleaf and reference-manager compatibility.
ScholarMind applique les standards de sécurité exigés par les institutions de recherche, avec une transparence totale sur le fonctionnement.
Toutes les communications entre votre navigateur et nos serveurs sont chiffrées en TLS 1.3 (suites AEAD modernes uniquement). Les sauvegardes et le stockage sont chiffrés au repos.
Chaque ligne de la base est protégée par des règles d'accès vérifiées côté serveur (RLS). Même en cas d'erreur applicative, personne ne peut lire ni modifier les données d'un autre chercheur.
Authentification forte (mots de passe hachés bcrypt, vérification d'email obligatoire, sessions JWT signées). Pour vos collaborateur·rice·s : rôles Lecteur / Éditeur / Propriétaire avec invitation par jeton à durée limitée.
Vos chapitres, données et bibliographies ne sont jamais utilisés pour entraîner des modèles externes. Vous restez propriétaire intégral·e de vos travaux et pouvez les exporter ou les supprimer à tout moment.
Bachelor, Master, PhD — what they say once the jury closes the door.
No. The research agent only proposes references that resolve against Crossref or Semantic Scholar APIs — every DOI is checked before insertion. Anything unverifiable is dropped, not paraphrased into plausibility. The validation agent re-audits the final chapter and removes any citation that no longer resolves. We log the verification trace per chapter so you can audit it yourself.
Three layers. (1) Ingestion: DOI lookup via Crossref + metadata cross-check against Semantic Scholar. (2) Drafting: the writing agent can only cite from the verified pool the research agent built for that chapter. (3) Post-write audit: the validation agent re-resolves every in-text citation and checks author/year/title alignment with the bibliography entry. Mismatch = automatic correction or removal.
Yes, and it is the core of the engine. Level (Bachelor / Master / PhD) drives: vocabulary register, methodological depth (descriptive → inferential → SEM/Bayesian/meta-analysis), expected chapter count, citation density, hedging style, and the validation agent's grading rubric. A Bachelor chapter explains its terms inline; a PhD chapter assumes them and pushes a contribution. Same engine, different altitude — locked at project setup, enforced at every chapter.
Yes. We do not template-print citations; we serialize them from structured metadata (authors, year, title, journal, volume, issue, pages, DOI) through deterministic style adapters: APA 7th, MLA 9th, Vancouver (ICMJE), Chicago (Author-Date and Notes-Bibliography). Switching styles is a one-click re-serialization — the bibliography is regenerated, not search-and-replaced. Export to .docx, PDF, Markdown, LaTeX (BibTeX/BibLaTeX) preserves formatting.
Your content is yours. EU hosting, TLS 1.3 in transit, AES-256 at rest, database-level isolation via Row-Level Security (you can only ever read your own projects). Your content is never used to train any model — third-party or ours. One-click full export (.zip with .docx + bibliography + raw markdown) and one-click full deletion (hard delete, including embeddings). GDPR Art. 15, 17, 20 covered by design.
No — and that is the point. ScholarMind is a methodological co-pilot. It structures your reasoning, proposes phrasings, defends every claim with sources, and surfaces contradictions before your committee does. You stay the author, the editor, the defender. We make you faster and harder to dismantle, not absent.
Generic LLMs are single-prompt text generators. ScholarMind is a 3-agent pipeline (research → writing → validation) running on a persistent project memory that keeps chapter 7 coherent with chapter 2, with vocabulary calibrated to your degree, contradiction detection backed by textual evidence, and a bibliography that survives peer review. It is engineered around how a thesis actually gets defended — not around how a chat looks.
Each generated chapter costs 500 credits. You receive 10,000 free credits on signup — that is 20 full chapters, more than enough to draft a complete Master's thesis before paying a cent. No card required, no trial expiration.
10,000 credits. Twenty defendable chapters. An entire Master's thesis — fully sourced, fully coherent — before you decide whether we deserve a euro.
10,000 free credits · No card · Cancel in one click · 30-day money-back guarantee