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Update app.py
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app.py
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@@ -4,18 +4,18 @@ from graphviz import Digraph
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st.markdown("""
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# Goals of Cognitive AI with Human Feedback (CAHF):
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""")
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st.markdown("""
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st.markdown("""
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# Goals of Cognitive AI with Human Feedback (CAHF):
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1. Use Models to predict __outcomes__
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2. Use AI to predict **conditions, disease, opportunities** using flavors of AI with **explainability**.
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3. **Cognitive AI** - Mimics how humans reason through decision making processes.
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4. **Reasoning cycles** - "Recommended for You" reasoners - what type of person, classification of users, recommend what products
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5. **High Acuity Reasoners** - Only make decisions on rules of **what it can and cannot do within human feedback** guidelines.
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-Emphasis on **explainability, transparency, removing administrative burden** and **protocolize** what staff is doing.
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-Vetted by SME's, adding value of **judgement and training** to pick up **skills from human feedback**.
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-**Alerts, Recommended Actions, and Clinical Terminology** per entity including LOINC, SNOMED, ICD10, RXNORM. SMILES, HCPCS and CPT codes,
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6. Non static multi agent cognitive approach - real time series - factors predictive of outcome.
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7. Cognitive models take form of Ontology - for some type of computable set - relationships stored in Ontology can be ingested by reasoner
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-Use models of world to build predictions and recommendations with answers that are cumulative with information we know
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8. Reasoners can standardize to make it easier as possible to do right thing with learned recommendation tools, questions and actions.
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""")
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st.markdown("""
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