3 Commits

Author SHA1 Message Date
William Jeynes 00e1596be0 tuned parameters for roberta_distilled? 2026-03-23 15:45:18 +00:00
William Jeynes 070aab6a5c Actually we need to go the other way 2026-03-23 14:03:06 +00:00
William Jeynes bff5423f3d testing code for deberta, need to run on GPU 2026-03-22 16:55:21 +00:00
34 changed files with 167 additions and 1355 deletions
-1
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@@ -1,3 +1,2 @@
# TEMP
literature/
backup.tar.gz
-9
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@@ -7,15 +7,6 @@ Final Dissertation Submission Repository
## Solution Diagram
-- todo --
## Classifier Refinement
[See RAGAS_Service](/supporting/RAGAS_Service/)
## Agent Refinement
[See agent](/agent/)
## Generated Database Link and Usage Experiments
-- todo --
## Repository Structure
```
├── run.sh # Bash script to run project elements from one place
-31
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@@ -1,31 +0,0 @@
## Refining the agent output
Experiments modifying pipeline
| Model | % Correct | % Change |
|------------------|----------:|---------:|
| BASELINE | 33 | 0 |
| Improv Prompt | 39.96 | 0.21 |
| Add Examples | 44.67 | 0.35 |
| Date | 45.51 | 0.38 |
| Chain of Thought | 43.38 | 0.31 |
| Self-Critique | 44.36 | 0.34 |
Experiments with different model types:
| Model | % Correct | % Change |
|-------------------------------|----------:|---------:|
| gpt-5-mini | 45.51 | |
| gpt-5.4-mini | 32.4 | |
| gpt-5.4-nano | 23.28 | |
| gpt-4.1-mini | 27.85 | |
| gpt-4o-mini | 32.47 | |
| llama3.1:8b-instruct-q4_K_M | ? | |
| qwen3.5:9b | 0 | |
%age valid URLS
| Model | Number | % Age |
|-------------------------------|----------:|---------:|
| gpt-5-mini | 22/405 | 5.43 |
| gpt-5.4-mini | 29/278 | 10.43 |
| llama3.1:8b-instruct-q4_K_M | ? | ? |
| qwen3.5:9b | 0 | 0 |
+4 -15
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@@ -10,7 +10,7 @@ import { createModelNode } from "./nodes/model";
import { loopEndConditional } from "./conditionals/loop_end";
import { sort } from "./nodes/sort";
import { triggerEventSetup } from "./nodes/triggerEventSetup";
import { createEnsembleNode } from "./nodes/ensembleNode";
import { robertaMetrics } from "./nodes/robertaMetrics";
const triggerEventToolNode = createToolNode(triggerEventToolsByName);
@@ -19,10 +19,6 @@ const triggerEventModel = createModelNode(triggerEventToolsByName, "trigger.txt"
const triggerEventToolConditional = createToolConditional("triggerEventToolNode", verificationSetup.name);
const roNode = createEnsembleNode("ROBERTA", "roberta");
const flNode = createEnsembleNode("FLAN", "flan");
const lrNode = createEnsembleNode("REGRESSION", "logreg");
const agent = new StateGraph(MessagesState)
//NODES
@@ -34,10 +30,7 @@ const agent = new StateGraph(MessagesState)
.addNode("triggerEventModel", triggerEventModel)
.addNode(verificationSetup.name, verificationSetup)
.addNode("roNode", roNode)
.addNode("flNode", flNode)
.addNode("lrNode", lrNode)
.addNode(robertaMetrics.name, robertaMetrics)
.addNode(produceRanking.name, produceRanking)
.addNode(sort.name, sort)
@@ -52,13 +45,9 @@ const agent = new StateGraph(MessagesState)
.addConditionalEdges("triggerEventModel", triggerEventToolConditional, ["triggerEventToolNode", verificationSetup.name])
.addEdge("triggerEventToolNode", "triggerEventModel")
.addEdge(verificationSetup.name, "roNode")
.addEdge(verificationSetup.name, "flNode")
.addEdge(verificationSetup.name, "lrNode")
.addEdge(verificationSetup.name, robertaMetrics.name)
.addEdge("roNode", produceRanking.name)
.addEdge("flNode", produceRanking.name)
.addEdge("lrNode", produceRanking.name)
.addEdge(robertaMetrics.name, produceRanking.name)
// @ts-expect-error
.addConditionalEdges(produceRanking.name, loopEndConditional, [verificationSetup.name, sort.name])
-17
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@@ -1,17 +0,0 @@
import { GraphNode } from "@langchain/langgraph";
import { MessagesState } from "../state";
import { AIMessage } from "@langchain/core/messages";
import { evaluateWithEnsemble } from "../tools/ensembleCall";
export function createEnsembleNode(title: string, method: string): GraphNode<typeof MessagesState> {
return async (state) => {
const answer = state.proposedTriggerEvent[state.proposedTriggerEventIndex].Event
const result = await evaluateWithEnsemble({ answer, method })
const score = result.validProb - result.invalidProb;
return {
messages: [new AIMessage(title + ":" + score)]
};
};
};
+1 -1
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@@ -9,7 +9,7 @@ export function createModelNode(tools: any, promptPath: string): GraphNode<typeo
const sysPrompt = await hydratePrompt(promptPath, state);
const model = new ChatOpenAI({
model: "gpt-4o-mini"
model: "gpt-5-mini"
});
const modelWithTools = model.bindTools(Object.values(tools));
+22 -16
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@@ -2,25 +2,31 @@ import { GraphNode } from "@langchain/langgraph";
import { MessagesState } from "../state";
import { BaseMessage } from "@langchain/core/messages";
const models = {
REGRESSION: 0.3,
ROBERTA: 0.5,
FLAN: 0.3,
//TODO: Each of these might need different weights
const keys = ["CONFIDENCE", "RELATION", "RAGAS", "ROBERTA"];
const mapping = {
VERYHIGH: 1.0,
HIGH: 0.75,
MEDIUM: 0.5,
LOW: 0.25,
VERYLOW: 0.0,
} as const;
type ModelKey = keyof typeof models;
type Priority = keyof typeof mapping;
function mapResponse(value: string | undefined | null): number {
if (!value) return 0;
if (!value) return 1;
const trimmed = value.trim();
const num = parseFloat(trimmed);
if (!isNaN(num)) {
return num;
} else {
return 0;
}
// If number, return it
if (!isNaN(num)) return num;
// Otherwise, map to value
const upper = trimmed.toUpperCase() as Priority;
return mapping[upper] ?? 0;
}
function getLastMessageContaining(
@@ -37,15 +43,15 @@ function getLastMessageContaining(
}
export const produceRanking: GraphNode<typeof MessagesState> = async (state) => {
const values = (Object.keys(models) as ModelKey[]).map((key) => {
// Extract and map values
const values = keys.map((key) => {
const msg = getLastMessageContaining(state.messages, key);
const part = msg?.split(":").at(1);
const baseValue = mapResponse(part);
return baseValue * models[key];
return mapResponse(part);
});
const result = values.reduce((acc, val) => acc + val, 0);
// Multiply!
const result = values.reduce((acc, val) => acc * val, 1);
const current = state.proposedTriggerEvent;
current[state.proposedTriggerEventIndex].score = result;
+16
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@@ -0,0 +1,16 @@
import { GraphNode } from "@langchain/langgraph";
import { MessagesState } from "../state";
import { AIMessage, HumanMessage } from "@langchain/core/messages";
import { evaluateWithRagas } from "../tools/ragasCall";
export const ragasMetrics: GraphNode<typeof MessagesState> = async (state) => {
const question = "A possible trigger event for: " + state.disinformationTitle //Should it be raw, or normalized?
const answer = state.proposedTriggerEvent[state.proposedTriggerEventIndex].Event
const contexts = state.proposedTriggerEvent[state.proposedTriggerEventIndex].context?.split("^^^") ?? []
const results = await evaluateWithRagas({question, answer, contexts})
return {
messages: [ new AIMessage("RAGAS:" + results.faithfulness)]
};
};
+18
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@@ -0,0 +1,18 @@
import { GraphNode } from "@langchain/langgraph";
import { MessagesState } from "../state";
import { AIMessage } from "@langchain/core/messages";
import { evaluateWithRoberta } from "../tools/robertaCall";
export const robertaMetrics: GraphNode<typeof MessagesState> = async (state) => {
const answer = state.proposedTriggerEvent[state.proposedTriggerEventIndex].Event
const result = await evaluateWithRoberta({answer})
const score = result.validProb - result.invalidProb;
return {
messages: [ new AIMessage("ROBERTA:" + score)]
};
};
+8 -22
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@@ -1,7 +1,8 @@
import { GraphNode } from "@langchain/langgraph";
import { MessagesState, ProposedTriggerEventArray } from "../state";
import { logger } from "../utils/logger";
import { jsonrepair } from 'jsonrepair'
import { queryScraper } from "../tools/webSearch";
import { rankAndDisplayData } from "../tools/triggerEventTools";
export const verificationSetup: GraphNode<typeof MessagesState> = async (state) => {
//this is kinda doing two things, but having two nodes for it seems overkill
@@ -10,29 +11,14 @@ export const verificationSetup: GraphNode<typeof MessagesState> = async (state)
logger.warn("No trigger events in memory, parsing")
let genResponse = state.messages.at(-1)?.content.toString() ?? "";
const parsed = ProposedTriggerEventArray.parse(JSON.parse(genResponse));
const repaired = jsonrepair(genResponse);
for (let i = 0; i < parsed.length; i++) {
const search = parsed[i].SearchQuery
const data = await queryScraper(search);
const output = await rankAndDisplayData(data, search);
let parsed;
try {
const json = JSON.parse(repaired);
if (Array.isArray(json)) {
parsed = ProposedTriggerEventArray.parse(json);
} else {
// try grab first value
const firstValue = Object.values(json)[0];
if (Array.isArray(firstValue)) {
parsed = ProposedTriggerEventArray.parse(firstValue);
} else {
throw new Error("No array found in JSON");
}
}
} catch (err: any) {
logger.error(`Failed to parse LLM response: ${err.message}`);
throw new Error(`Failed to parse LLM response: ${err}`);
parsed[i].context = output;
}
return { proposedTriggerEvent: parsed, proposedTriggerEventIndex: 0 };
-10
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@@ -20,7 +20,6 @@
"dotenv": "^17.2.3",
"exponential-backoff": "^3.1.3",
"fs": "^0.0.1-security",
"jsonrepair": "^3.13.3",
"langchain": "^1.2.14",
"selenium-webdriver": "^4.40.0",
"tldts": "^7.0.23",
@@ -2076,15 +2075,6 @@
"integrity": "sha512-ZClg6AaYvamvYEE82d3Iyd3vSSIjQ+odgjaTzRuO3s7toCdFKczob2i0zCh7JE8kWn17yvAWhUVxvqGwUalsRA==",
"license": "ISC"
},
"node_modules/jsonrepair": {
"version": "3.13.3",
"resolved": "https://registry.npmjs.org/jsonrepair/-/jsonrepair-3.13.3.tgz",
"integrity": "sha512-BTznj0owIt2CBAH/LTo7+1I5pMvl1e1033LRl/HUowlZmJOIhzC0zbX5bxMngLkfT4WnzPP26QnW5wMr2g9tsQ==",
"license": "ISC",
"bin": {
"jsonrepair": "bin/cli.js"
}
},
"node_modules/jszip": {
"version": "3.10.1",
"resolved": "https://registry.npmjs.org/jszip/-/jszip-3.10.1.tgz",
-1
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@@ -24,7 +24,6 @@
"dotenv": "^17.2.3",
"exponential-backoff": "^3.1.3",
"fs": "^0.0.1-security",
"jsonrepair": "^3.13.3",
"langchain": "^1.2.14",
"selenium-webdriver": "^4.40.0",
"tldts": "^7.0.23",
+1 -12
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@@ -8,19 +8,13 @@ Produce up-to 5 specific "trigger events" that happened that could have led to t
Remember the time frame of the disinformation campaign: ###CDATE###
Include no information or events that would not have been available at the time.
You MEED TO use the tools available to you in order to produce up to date information on URL and search query, else you will be wrong and the analysis invalid.
You NEED TO use the web search and open URL tools to ensure page validity or else all work upto this point will have to be discarded.
Produce no more text other than the json.
Include a concise but specific search query that can be looked up on a search engine in order to allow for the verification.
Include a url to a source for your trigger event (not a web search, a specific url from a reputuable source). Do not use OAI cite, include url as text in response.
Include the date that the event happened ("March 2022" for exmaple)
Use a JSON format with each entry containing "Event,ReasoningWhyRelevant,SearchQuery,Url,Date".
Use a JSON format with each entry containing "Event,ReasoningWhyRelevant,SearchQuery,Url".
Multiple tool invocations should be requested at once, if applicable.
Use your abilities to look between the lines and produce some insightful analysis, thinking both short and long term.
@@ -30,9 +24,4 @@ Events will be reordered as part of processing, each statement must stand alone
The preceeding messages act as examples of previous responses to potentially ficitonal events and scores given.
Analysis should only be completed for proposed events that would graner >0.7 points
This pipeline is running well pasy your knowledge cutoff.
Any URLs will change signigicantly over time.
You MEED TO use the tools available to you in order to produce up to date information on URL and search query, else you will be wrong and the analysis invalid.
You NEED TO use the web search and open URL tools to ensure page validity or else all work upto this point will have to be discarded.
Lets go through it step by step
-1
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@@ -9,7 +9,6 @@ export const ProposedTriggerEvent = z.object({
ReasoningWhyRelevant: z.string(),
SearchQuery: z.string(),
Url: z.url(),
Date: z.string(),
context: z.string().optional(),
score: z.number().optional()
})
+2 -16
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@@ -15,8 +15,6 @@ const CACHE_PATH = "../data/csv.cache.json";
const JSONL_PATH = "../data/input.jsonl"
const BM25_MIN_DOCS = 3;
type EmbeddingCache = {
rawtexts: string[];
cleantexts: string[];
@@ -289,20 +287,8 @@ async function embedText(text: string): Promise<number[]> {
}
function buildBM25(texts: string[]) {
let paddedTexts = texts;
logger.info("Building BM25 index (%s docs)...", texts.length);
if (texts.length < BM25_MIN_DOCS) {
const needed = BM25_MIN_DOCS - texts.length;
logger.error(
"Corpus too small for BM25 (%s docs, need %s+), padding with %s dummy doc(s)",
texts.length,
BM25_MIN_DOCS,
needed
);
paddedTexts = [...texts, ...Array(needed).fill("placeholder dummy document")];
}
logger.info("Building BM25 index (%s docs)...", paddedTexts.length);
const bm25 = bm25Factory();
bm25.defineConfig({
@@ -316,7 +302,7 @@ function buildBM25(texts: string[]) {
nlp.tokens.removeWords,
]);
paddedTexts.forEach((text, i) => {
texts.forEach((text, i) => {
bm25.addDoc({ text }, i);
});
@@ -1,16 +1,13 @@
import axios from "axios";
export async function evaluateWithEnsemble({
answer,
method
export async function evaluateWithRoberta({
answer
}: {
answer: string;
method: string
}): Promise<{ validProb: number; invalidProb: number; }> {
const res = await axios.post("http://localhost:8000/evaluate", {
answer,
method
}, {timeout: 0});
answer
});
// console.log(res.data)
const validProb = res.data["probabilities"][0][0]
const invalidProb = res.data["probabilities"][0][1] + res.data["probabilities"][0][2]
+4 -64
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@@ -1,92 +1,32 @@
import { Builder, Browser } from "selenium-webdriver";
import firefox from "selenium-webdriver/firefox";
import { backOff } from "exponential-backoff";
import { logger } from "../utils/logger";
export async function extractWebpageContent(url: string) : Promise<string[]>{
try {
const response = await backOff(async () => {
return await extractWebpageContentWorker(url);
}, {
numOfAttempts: 10,
startingDelay: 500,
timeMultiple: 2,
jitter: "full",
maxDelay: 50000,
});
return response;
} catch (err: any) {
logger.error(`Failed out of retry loop for URL "${url}", returning placeholder to pipeline`);
return ["API EXCEPTION"];
}
}
async function extractWebpageContentWorker(url: string): Promise<string[]> {
let driver;
try {
const options = new firefox.Options();
options.addArguments("--headless");
driver = await new Builder()
.forBrowser(Browser.FIREFOX)
.setFirefoxOptions(options)
.build();
} catch (err: any) {
const desc = `Failed to launch Firefox driver: ${err.message}`;
logger.error(desc);
throw new Error(desc);
}
try {
try {
await driver.get(url);
} catch (err: any) {
const desc = `Failed to navigate to URL "${url}": ${err.message}`;
logger.error(desc);
throw new Error(desc);
}
let driver = await new Builder().forBrowser(Browser.FIREFOX).setFirefoxOptions(options).build()
try {
await driver.get(url)
await driver.wait(async () => {
return await driver.executeScript(
"return document.readyState === 'complete'"
);
}, 5000);
} catch (err: any) {
logger.error(`Page load timed out for "${url}", attempting to read partial content: ${err.message}`);
// do not throw, attempt to read
}
let readableText: string;
try {
readableText = await driver.executeScript(
const readableText = await driver.executeScript(
"return document.body.innerText;"
) as string;
} catch (err: any) {
const desc = `Failed to extract page text from "${url}": ${err.message}`;
logger.error(desc);
throw new Error(desc);
}
const filteredLines = readableText
.split(/\r?\n/)
.map(line => line.trim())
.filter(line => line.split(/\s+/).length > 1);
if (filteredLines.length === 0) {
const desc = `No content extracted from "${url}"`;
logger.error(desc);
throw new Error(desc);
}
return filteredLines;
} finally {
try {
await driver.quit();
} catch (err: any) {
logger.error(`Failed to quit Firefox driver cleanly: ${err.message}`);
}
await driver.quit()
}
}
//console.log(await extractWebpageContent("https://www.bbc.co.uk/news/live/c74wd01egvyt"))
// console.log(await extractWebpageContent("https://badcertificate.int.jeynes.uk/"))
+17 -14
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@@ -1,35 +1,38 @@
import { END, START, StateGraph } from "@langchain/langgraph";
import { MessagesState } from "./state";
import { verificationSetup } from "./nodes/verificationSetup";
import { ragasMetrics } from "./nodes/ragasMetrics";
import { produceRanking } from "./nodes/produceRanking";
import { createModelNode } from "./nodes/model";
import { loopEndConditional } from "./conditionals/loop_end";
import { sort } from "./nodes/sort";
import { createEnsembleNode } from "./nodes/ensembleNode";
import { robertaMetrics } from "./nodes/robertaMetrics";
const roNode = createEnsembleNode("ROBERTA", "roberta");
const flNode = createEnsembleNode("FLAN", "flan");
const lrNode = createEnsembleNode("REGRESSION", "logreg");
const verificationModel = createModelNode([], "verify.txt");
const relationModel = createModelNode([], "relation.txt");
const agent = new StateGraph(MessagesState)
//NODES
.addNode(verificationSetup.name, verificationSetup)
.addNode("roNode", roNode)
.addNode("flNode", flNode)
.addNode("lrNode", lrNode)
// .addNode("verificationModel", verificationModel)
// .addNode(ragasMetrics.name, ragasMetrics)
.addNode(robertaMetrics.name, robertaMetrics)
// .addNode("relationModel", relationModel)
.addNode(produceRanking.name, produceRanking)
.addNode(sort.name, sort)
.addEdge(START, verificationSetup.name)
// .addEdge(verificationSetup.name, "verificationModel")
// .addEdge(verificationSetup.name, ragasMetrics.name)
.addEdge(verificationSetup.name, robertaMetrics.name)
// .addEdge(verificationSetup.name, "relationModel")
.addEdge(verificationSetup.name, "roNode")
.addEdge(verificationSetup.name, "flNode")
.addEdge(verificationSetup.name, "lrNode")
.addEdge("roNode", produceRanking.name)
.addEdge("flNode", produceRanking.name)
.addEdge("lrNode", produceRanking.name)
// .addEdge(ragasMetrics.name, produceRanking.name)
.addEdge(robertaMetrics.name, produceRanking.name)
// .addEdge("verificationModel", produceRanking.name)
// .addEdge("relationModel", produceRanking.name)
// @ts-expect-error
.addConditionalEdges(produceRanking.name, loopEndConditional, [verificationSetup.name, sort.name])
+6 -6
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@@ -5,13 +5,13 @@ set -e
run_agent () {
echo "Starting LangGraph agent..."
cd agent
npx @langchain/langgraph-cli dev --host 127.0.0.1
npx @langchain/langgraph-cli dev
}
run_ensemble_service () {
echo "Starting Ensemble service..."
run_ragas_service () {
echo "Starting RAGAS service..."
cd "supporting/RAGAS_Service"
.venv/bin/uvicorn ensemble_service:app --timeout-keep-alive 300
.venv/bin/uvicorn ragas_service:app --port 8001
}
run_frontend () {
@@ -34,13 +34,13 @@ run_wrapper () {
case "$1" in
agent) run_agent ;;
ensemble_service) run_ensemble_service ;;
ragas_service) run_ragas_service ;;
frontend) run_frontend ;;
fetch) run_fetch ;;
wrapper) run_wrapper ;;
*)
echo "Unknown command: $1"
echo "Usage: ./runproject [agent|ensemble_service|frontend|fetch|wrapper]"
echo "Usage: ./runproject [agent|ragas_service|frontend|fetch|wrapper]"
exit 1
;;
esac
-2
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@@ -1,9 +1,7 @@
# -- OURS --
results/
roberta_classifier/
roberta_distilled_classifier/
roberta_classifier*/
*.pt
output*
# -- THEIRS --
-25
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@@ -1,25 +0,0 @@
# Classifier work for evaluating model quality
Made using a dataset of 1000 labeled claims from MVP pipeline.
Roberta model trained on an augmented dataset with LLM generated adversarial examples for low frequency labels.
Flan model trained using raw labelled claims, inherrent natural language ability allows for pattern recognition without the need for fake data.
Regression model trained using the roberta dataset.
Used ensemble model in the final version, with the component models available on Hugging Face.
| Model | % Correct | % Valid taken forward|Used in ensemble|Link
|------------------------------------------------------------|-----------|----------------------|----------------|-
| Original | 53.22 | 61.72 |
| Original (RAGAS) | 56.01 | 57.73 |
| Roberta (base) | 75 | 70 |
| Roberta (Generated Data) | 76 | 71 |
| Roberta (Generated Data + Back Translation) | 74 | 71 |
| Roberta (Generated Data + Back Translation + Thresholding) | 77 | 90 |Y|[Here](https://huggingface.co/WillJeynes/LLMsForDisinformationAnalysis)
| Distilled Roberta | 72.73 | 69.57 |
| Flan | 79.17 | 85.71 |Y|[Here](https://huggingface.co/WillJeynes/LLMsForDisinformationAnalysis-Flan)
| Simple Regression Model | 74.77 | 85.71 |Y|[Here](https://huggingface.co/WillJeynes/LLMsForDisinformationAnalysis-Regression)
| Ensemble Model (weighted confidence score sum) | 84.21 | 83.33 |
| Ensemble Model (majority voting) | 80.2 | 95.12 |
@@ -1,224 +0,0 @@
from pydantic import BaseModel
from fastapi import FastAPI
import torch
import torch.nn as nn
import os
from sentence_transformers import SentenceTransformer
from huggingface_hub import hf_hub_download
from transformers import RobertaTokenizer, RobertaForSequenceClassification
from transformers import AutoTokenizer, AutoModelForSeq2SeqLM
app = FastAPI()
############################################
# SCHEMA
############################################
class EvalRequest(BaseModel):
answer: str
method: str # "logreg", "roberta", "flan"
############################################
# REGRESSION MODEL
############################################
HF_REPO_ID = "WillJeynes/LLMsForDisinformationAnalysis-Regression"
MODEL_FILENAME = "logreg_classifier.pt"
CACHE_DIR = "./model_cache"
def load_checkpoint(repo_id: str, filename: str, cache_dir: str) -> dict:
local_path = os.path.join(cache_dir, filename)
if not os.path.exists(local_path):
os.makedirs(cache_dir, exist_ok=True)
hf_hub_download(repo_id=repo_id, filename=filename, local_dir=cache_dir)
return torch.load(local_path, map_location="cpu")
class LogisticNet(nn.Module):
def __init__(self, input_dim, hidden_dim, num_classes, dropout):
super().__init__()
self.net = nn.Sequential(
nn.Linear(input_dim, hidden_dim),
nn.BatchNorm1d(hidden_dim),
nn.ReLU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, num_classes),
)
def forward(self, x):
return self.net(x)
checkpoint = load_checkpoint(HF_REPO_ID, MODEL_FILENAME, CACHE_DIR)
encoder = SentenceTransformer(checkpoint["embedding_model"])
logreg_model = LogisticNet(
checkpoint["input_dim"],
checkpoint["hidden_dim"],
checkpoint["num_classes"],
checkpoint["dropout"],
)
logreg_model.load_state_dict(checkpoint["model_state"])
logreg_model.eval()
############################################
# ROBERTA
############################################
ROBERTA_PATH = "WillJeynes/LLMsForDisinformationAnalysis"
roberta_tokenizer = RobertaTokenizer.from_pretrained(ROBERTA_PATH)
roberta_model = RobertaForSequenceClassification.from_pretrained(ROBERTA_PATH)
roberta_model.eval()
############################################
# FLAN
############################################
FLAN_PATH = "WillJeynes/LLMsForDisinformationAnalysis-Flan"
INT_TO_LABEL = {
0: "perfect",
1: "story",
2: "not specific",
}
LABEL_TO_INT = {v: k for k, v in INT_TO_LABEL.items()}
flan_tokenizer = AutoTokenizer.from_pretrained(FLAN_PATH)
flan_model = AutoModelForSeq2SeqLM.from_pretrained(FLAN_PATH)
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
flan_model.to(device)
flan_model.eval()
label_token_ids = {
label: flan_tokenizer(label, add_special_tokens=False).input_ids[0]
for label in LABEL_TO_INT.keys()
}
def format_prompt(text: str) -> str:
return (
"Classify the following event into one of these categories: "
"perfect, story, not specific.\n\n"
f"Event: {text}\n\n"
"Category:"
)
def parse_generated_label(generated: str):
generated = generated.strip().lower()
for label_text, label_int in LABEL_TO_INT.items():
if label_text in generated:
return label_int
return None
############################################
# ENDPOINT
############################################
@app.post("/evaluate")
def evaluate(req: EvalRequest):
method = req.method.lower()
########################################
# LOGREG
########################################
if method == "logreg":
embedding = encoder.encode(
[req.answer],
normalize_embeddings=True,
show_progress_bar=False,
)
x = torch.tensor(embedding, dtype=torch.float32)
with torch.no_grad():
logits = logreg_model(x)
probs = torch.softmax(logits, dim=1)
return {
"method": "logreg",
"probabilities": probs.cpu().numpy().tolist()
}
########################################
# ROBERTA
########################################
elif method == "roberta":
inputs = roberta_tokenizer(
req.answer,
return_tensors="pt",
truncation=True,
padding=True
)
with torch.no_grad():
logits = roberta_model(**inputs).logits
probs = torch.softmax(logits, dim=1)
return {
"method": "roberta",
"probabilities": probs.cpu().numpy().tolist()
}
########################################
# FLAN
########################################
elif method == "flan":
prompt = format_prompt(req.answer)
inputs = flan_tokenizer(
prompt,
return_tensors="pt",
truncation=True,
padding=True,
max_length=256,
).to(device)
with torch.no_grad():
outputs = flan_model.generate(**inputs, max_new_tokens=8)
decoder_input_ids = torch.tensor(
[[flan_model.config.decoder_start_token_id]]
).to(device)
logits_output = flan_model(
**inputs,
decoder_input_ids=decoder_input_ids
)
logits = logits_output.logits[:, 0, :]
generated_text = flan_tokenizer.decode(
outputs[0],
skip_special_tokens=True
)
label_logits = torch.tensor(
[logits[0, tid].item() for tid in label_token_ids.values()]
)
label_probs = torch.softmax(label_logits, dim=0).tolist()
return {
"method": "flan",
"generated": generated_text,
"probabilities": [label_probs],
}
########################################
# INVALID METHOD
########################################
else:
return {
"error": "Invalid method. Use 'logreg', 'roberta', or 'flan'."
}
-89
View File
@@ -1,89 +0,0 @@
from pydantic import BaseModel
from transformers import AutoTokenizer, AutoModelForSeq2SeqLM
import torch
from fastapi import FastAPI
app = FastAPI()
MODEL_PATH = "WillJeynes/LLMsForDisinformationAnalysis-Flan"
INT_TO_LABEL = {
0: "perfect",
1: "story",
2: "not specific",
}
LABEL_TO_INT = {v: k for k, v in INT_TO_LABEL.items()}
tokenizer = AutoTokenizer.from_pretrained(MODEL_PATH)
model = AutoModelForSeq2SeqLM.from_pretrained(MODEL_PATH)
model.eval()
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
model.to(device)
def format_prompt(text: str) -> str:
return (
"Classify the following event into one of these categories: "
"perfect, story, not specific.\n\n"
f"Event: {text}\n\n"
"Category:"
)
def parse_generated_label(generated: str) -> int | None:
generated = generated.strip().lower()
for label_text, label_int in LABEL_TO_INT.items():
if label_text in generated:
return label_int
return None
class EvalRequest(BaseModel):
answer: str
@app.post("/evaluate")
def evaluate(req: EvalRequest):
prompt = format_prompt(req.answer)
inputs = tokenizer(
prompt,
return_tensors="pt",
truncation=True,
padding=True,
max_length=256,
).to(device)
with torch.no_grad():
# Get the generated label
outputs = model.generate(
**inputs,
max_new_tokens=8,
)
# Produce a confidence score
decoder_input_ids = torch.tensor([[model.config.decoder_start_token_id]]).to(device)
logits_output = model(**inputs, decoder_input_ids=decoder_input_ids)
logits = logits_output.logits[:, 0, :]
# Decode the generated text label
generated_text = tokenizer.decode(outputs[0], skip_special_tokens=True)
predicted_int = parse_generated_label(generated_text)
# Extract probabilities
label_token_ids = {
label: tokenizer(label, add_special_tokens=False).input_ids[0]
for label in LABEL_TO_INT.keys()
}
label_logits = torch.tensor(
[logits[0, tid].item() for tid in label_token_ids.values()]
)
label_probs = torch.softmax(label_logits, dim=0).tolist()
return {
"generated": generated_text,
"probabilities": [label_probs],
}
@@ -1,82 +0,0 @@
from pydantic import BaseModel
from sentence_transformers import SentenceTransformer
from fastapi import FastAPI
import torch
import torch.nn as nn
from huggingface_hub import hf_hub_download
import os
app = FastAPI()
HF_REPO_ID = "WillJeynes/LLMsForDisinformationAnalysis-Regression"
MODEL_FILENAME = "logreg_classifier.pt"
CACHE_DIR = "./model_cache"
def load_checkpoint(repo_id: str, filename: str, cache_dir: str) -> dict:
local_path = os.path.join(cache_dir, filename)
if not os.path.exists(local_path):
print(f"Downloading {filename} from {repo_id}...")
os.makedirs(cache_dir, exist_ok=True)
downloaded = hf_hub_download(
repo_id=repo_id,
filename=filename,
local_dir=cache_dir,
)
print(f"Saved to {downloaded}")
else:
print(f"Using cached model at {local_path}")
return torch.load(local_path, map_location="cpu")
class LogisticNet(nn.Module):
def __init__(self, input_dim: int, hidden_dim: int, num_classes: int, dropout: float):
super().__init__()
self.net = nn.Sequential(
nn.Linear(input_dim, hidden_dim),
nn.BatchNorm1d(hidden_dim),
nn.ReLU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, num_classes),
)
def forward(self, x):
return self.net(x)
checkpoint = load_checkpoint(HF_REPO_ID, MODEL_FILENAME, CACHE_DIR)
encoder = SentenceTransformer(checkpoint["embedding_model"])
model = LogisticNet(
input_dim = checkpoint["input_dim"],
hidden_dim = checkpoint["hidden_dim"],
num_classes = checkpoint["num_classes"],
dropout = checkpoint["dropout"],
)
model.load_state_dict(checkpoint["model_state"])
model.eval()
class EvalRequest(BaseModel):
answer: str
@app.post("/evaluate")
def evaluate(req: EvalRequest):
embedding = encoder.encode(
[req.answer],
normalize_embeddings=True,
show_progress_bar=False,
)
x = torch.tensor(embedding, dtype=torch.float32)
with torch.no_grad():
logits = model(x)
probs = torch.softmax(logits, dim=1)
return {
"probabilities": probs.cpu().numpy().tolist()
}
@@ -9,7 +9,6 @@ datasets
# ROBERTA
scikit-learn
transformers[torch]
sentence_transformers
# Utils
numpy
+1 -1
View File
@@ -5,7 +5,7 @@ from fastapi import FastAPI
app = FastAPI()
MODEL_PATH = "WillJeynes/LLMsForDisinformationAnalysis"
MODEL_PATH = "./roberta_classifier"
tokenizer = RobertaTokenizer.from_pretrained(MODEL_PATH)
model = RobertaForSequenceClassification.from_pretrained(MODEL_PATH)
-227
View File
@@ -1,227 +0,0 @@
from sklearn.utils import compute_class_weight
from transformers import AutoTokenizer, AutoModelForSeq2SeqLM, Seq2SeqTrainer, Seq2SeqTrainingArguments, DataCollatorForSeq2Seq
import torch
from sklearn.model_selection import train_test_split
from sklearn.metrics import accuracy_score, f1_score, precision_score, recall_score
from collections import Counter
import sys
import csv
import numpy as np
NUM_CLASSES = 3
model_name = "google/flan-t5-base"
INT_TO_LABEL = {
0: "perfect",
1: "story",
2: "not specific",
}
LABEL_TO_INT = {v: k for k, v in INT_TO_LABEL.items()}
LABEL_PRIORITY = [
("PERFECT", 0),
("STORY", 1),
("NSPECIFIC", 2),
("REWORDING", 1),
("TINCORRECT", -1),
("DUPLICATE", -1),
("", 0),
]
def label_to_int(extra_info: str) -> int:
if extra_info is None:
extra_info = ""
extra_info = extra_info.strip()
if extra_info == "":
for key, value in LABEL_PRIORITY:
if key == "":
return value
raise ValueError("Empty extra_info but no empty mapping defined")
tokens = set(extra_info.upper().split())
for key, value in LABEL_PRIORITY:
if key == "" :
continue
if key in tokens:
return value
raise ValueError(f"Unknown label content: '{extra_info}'")
def load_dataset_from_csv(path):
texts = []
labels = []
removed_rows = 0
with open(path, newline="", encoding="utf-8") as f:
reader = csv.DictReader(f)
for i, row in enumerate(reader, start=1):
text = row["event"]
label_str = row["extra_info"]
try:
label_int = label_to_int(label_str)
except Exception as e:
print(f"ERROR converting label on line {i}: {label_str}")
print(e)
sys.exit(1)
if label_int == -1:
removed_rows += 1
continue
texts.append(text)
labels.append(label_int)
print(f"Loaded {len(texts)} samples (removed {removed_rows})")
return texts, labels
def format_prompt(text: str) -> str:
return (
"Classify the following event into one of these categories: "
"perfect, story, not specific.\n\n"
f"Event: {text}\n\n"
"Category:"
)
def parse_generated_label(generated: str) -> int:
generated = generated.strip().lower()
for label_text, label_int in LABEL_TO_INT.items():
if label_text in generated:
return label_int
print("invlid label:" + generated)
return -1 # unknown / unparseable output
class GenerativeTextDataset(torch.utils.data.Dataset):
def __init__(self, texts, labels, tokenizer, max_input_length=256, max_target_length=8):
self.tokenizer = tokenizer
self.max_input_length = max_input_length
self.max_target_length = max_target_length
self.inputs = [format_prompt(t) for t in texts]
# Convert integer labels to their text equivalents for the target sequence
self.targets = [INT_TO_LABEL[l] for l in labels]
self.int_labels = labels # keep originals for metric computation
def __len__(self):
return len(self.inputs)
def __getitem__(self, idx):
model_inputs = self.tokenizer(
self.inputs[idx],
max_length=self.max_input_length,
truncation=True,
padding=False,
)
target_encoding = self.tokenizer(
self.targets[idx],
max_length=self.max_target_length,
truncation=True,
padding=False,
)
# Seq2Seq convention: labels use -100 to ignore padding tokens in loss
labels = target_encoding["input_ids"]
labels = [token if token != self.tokenizer.pad_token_id else -100 for token in labels]
model_inputs["labels"] = labels
return {k: torch.tensor(v) for k, v in model_inputs.items()}
def compute_metrics_generative(eval_pred, tokenizer):
predictions, label_ids = eval_pred
# Decode predictions
# Replace -100 in labels before decoding
label_ids = np.where(label_ids != -100, label_ids, tokenizer.pad_token_id)
decoded_preds = tokenizer.batch_decode(predictions, skip_special_tokens=True)
decoded_labels = tokenizer.batch_decode(label_ids, skip_special_tokens=True)
# Map decoded text back to integer labels
pred_ints = [parse_generated_label(p) for p in decoded_preds]
true_ints = [parse_generated_label(l) for l in decoded_labels]
# Filter out any rows where parsing failed
valid = [(p, t) for p, t in zip(pred_ints, true_ints) if t != -1]
if not valid:
return {"accuracy": 0.0, "f1": 0.0, "precision": 0.0, "recall": 0.0}
preds_filtered, true_filtered = zip(*valid)
return {
"accuracy": accuracy_score(true_filtered, preds_filtered),
"f1": f1_score(true_filtered, preds_filtered, average="weighted", zero_division=0),
"precision": precision_score(true_filtered, preds_filtered, average="weighted", zero_division=0),
"recall": recall_score(true_filtered, preds_filtered, average="weighted", zero_division=0),
}
def main():
torch.multiprocessing.set_start_method('spawn', force=True)
print("CUDA available:", torch.cuda.is_available())
print("CUDA device count:", torch.cuda.device_count())
texts, labels = load_dataset_from_csv("../../data/classify.csv")
print("Dataset size:", len(texts))
print("Label distribution:", Counter(labels))
tokenizer = AutoTokenizer.from_pretrained(model_name)
model = AutoModelForSeq2SeqLM.from_pretrained(model_name)
train_texts, val_texts, train_labels, val_labels = train_test_split(
texts, labels,
test_size=0.2,
random_state=42,
stratify=labels
)
train_dataset = GenerativeTextDataset(train_texts, train_labels, tokenizer)
val_dataset = GenerativeTextDataset(val_texts, val_labels, tokenizer)
data_collator = DataCollatorForSeq2Seq(
tokenizer=tokenizer,
model=model,
padding=True,
label_pad_token_id=-100,
)
training_args = Seq2SeqTrainingArguments(
output_dir="./results",
learning_rate=5e-5,
per_device_train_batch_size=16,
per_device_eval_batch_size=16,
num_train_epochs=10,
weight_decay=0.01,
eval_strategy="epoch",
save_strategy="epoch",
load_best_model_at_end=True,
metric_for_best_model="f1",
greater_is_better=True,
predict_with_generate=True,
generation_max_length=8,
dataloader_num_workers=0,
dataloader_pin_memory=False,
fp16=False,
max_grad_norm=1.0,
)
trainer = Seq2SeqTrainer(
model=model,
args=training_args,
train_dataset=train_dataset,
eval_dataset=val_dataset,
processing_class=tokenizer,
data_collator=data_collator,
compute_metrics=lambda ep: compute_metrics_generative(ep, tokenizer),
)
trainer.train()
metrics = trainer.evaluate()
print("\nFinal evaluation metrics:")
for k, v in metrics.items():
print(f" {k}: {v}")
trainer.save_model("./flan_classifier")
tokenizer.save_pretrained("./flan_classifier")
if __name__ == "__main__":
main()
@@ -1,209 +0,0 @@
from sentence_transformers import SentenceTransformer
from sklearn.model_selection import train_test_split
from sklearn.utils import compute_class_weight
from sklearn.metrics import accuracy_score, f1_score, precision_score, recall_score
from collections import Counter
import torch
import torch.nn as nn
import torch.optim as optim
from torch.utils.data import DataLoader, TensorDataset
import numpy as np
import csv
import sys
NUM_CLASSES = 3
EMBEDDING_MODEL = "all-mpnet-base-v2"
HIDDEN_DIM = 256
DROPOUT = 0.4
LEARNING_RATE = 2e-3
WEIGHT_DECAY = 1e-4
BATCH_SIZE = 64
NUM_EPOCHS = 30
PATIENCE = 5
LABEL_PRIORITY = [
("PERFECT", 0),
("STORY", 1),
("NSPECIFIC", 2),
("REWORDING", 1),
("TINCORRECT", -1),
("DUPLICATE", -1),
("", 0), # fallback to PERFECT
]
def label_to_int(extra_info: str) -> int:
if extra_info is None:
extra_info = ""
extra_info = extra_info.strip()
if extra_info == "":
for key, value in LABEL_PRIORITY:
if key == "":
return value
raise ValueError("No empty-string fallback defined in LABEL_PRIORITY")
tokens = set(extra_info.upper().split())
for key, value in LABEL_PRIORITY:
if key and key in tokens:
return value
raise ValueError(f"Unknown label content: '{extra_info}'")
def load_dataset_from_csv(path: str):
texts, labels = [], []
removed = 0
with open(path, newline="", encoding="utf-8") as f:
for i, row in enumerate(csv.DictReader(f), start=1):
try:
label_int = label_to_int(row["extra_info"])
except Exception as e:
print(f"ERROR on line {i}: {row['extra_info']!r}")
print(e)
sys.exit(1)
if label_int == -1:
removed += 1
continue
texts.append(row["event"])
labels.append(label_int)
print(f"Loaded {len(texts)} samples (removed {removed})")
return texts, labels
class LogisticNet(nn.Module):
def __init__(self, input_dim: int, hidden_dim: int, num_classes: int, dropout: float):
super().__init__()
self.net = nn.Sequential(
nn.Linear(input_dim, hidden_dim),
nn.BatchNorm1d(hidden_dim),
nn.ReLU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, num_classes), # raw logits loss handles softmax
)
def forward(self, x):
return self.net(x)
def evaluate(model, loader, device):
model.eval()
all_preds, all_labels = [], []
with torch.no_grad():
for xb, yb in loader:
xb, yb = xb.to(device), yb.to(device)
logits = model(xb)
preds = logits.argmax(dim=1).cpu().numpy()
all_preds.extend(preds)
all_labels.extend(yb.cpu().numpy())
return {
"accuracy": accuracy_score(all_labels, all_preds),
"f1": f1_score(all_labels, all_preds, average="weighted", zero_division=0),
"precision": precision_score(all_labels, all_preds, average="weighted", zero_division=0),
"recall": recall_score(all_labels, all_preds, average="weighted", zero_division=0),
}
def main():
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
print(f"Using device: {device}")
texts, labels = load_dataset_from_csv("../../data/classify.csv")
print("Label distribution:", Counter(labels))
print(f"\nEncoding with '{EMBEDDING_MODEL}'")
encoder = SentenceTransformer(EMBEDDING_MODEL)
embeddings = encoder.encode(texts, batch_size=64, show_progress_bar=True, normalize_embeddings=True)
input_dim = embeddings.shape[1]
print(f"Embedding dim: {input_dim}")
X_train, X_val, y_train, y_val = train_test_split(
embeddings, labels, test_size=0.2, random_state=42, stratify=labels
)
class_weights = compute_class_weight("balanced", classes=np.unique(y_train), y=y_train)
weight_tensor = torch.tensor(class_weights, dtype=torch.float).to(device)
print("Class weights:", class_weights)
def make_loader(X, y, shuffle=False):
ds = TensorDataset(
torch.tensor(X, dtype=torch.float32),
torch.tensor(y, dtype=torch.long),
)
return DataLoader(ds, batch_size=BATCH_SIZE, shuffle=shuffle)
train_loader = make_loader(X_train, y_train, shuffle=True)
val_loader = make_loader(X_val, y_val, shuffle=False)
model = LogisticNet(input_dim, HIDDEN_DIM, NUM_CLASSES, DROPOUT).to(device)
criterion = nn.CrossEntropyLoss(weight=weight_tensor)
optimizer = optim.AdamW(model.parameters(), lr=LEARNING_RATE, weight_decay=WEIGHT_DECAY)
scheduler = optim.lr_scheduler.CosineAnnealingLR(optimizer, T_max=NUM_EPOCHS)
best_f1 = 0.0
best_state = None
epochs_no_imp = 0
print("\n Training:")
for epoch in range(1, NUM_EPOCHS + 1):
model.train()
total_loss = 0.0
for xb, yb in train_loader:
xb, yb = xb.to(device), yb.to(device)
optimizer.zero_grad()
loss = criterion(model(xb), yb)
loss.backward()
optimizer.step()
total_loss += loss.item() * len(yb)
scheduler.step()
avg_loss = total_loss / len(train_loader.dataset)
val_metrics = evaluate(model, val_loader, device)
print(
f"Epoch {epoch:3d}/{NUM_EPOCHS} | "
f"loss {avg_loss:.4f} | "
f"val_acc {val_metrics['accuracy']:.4f} | "
f"val_f1 {val_metrics['f1']:.4f}"
)
# Early stopping on weighted F1
if val_metrics["f1"] > best_f1:
best_f1 = val_metrics["f1"]
best_state = {k: v.clone() for k, v in model.state_dict().items()}
epochs_no_imp = 0
else:
epochs_no_imp += 1
if epochs_no_imp >= PATIENCE:
print(f"Early stopping at epoch {epoch} (no improvement for {PATIENCE} epochs)")
break
print("\n Final evaluation:")
model.load_state_dict(best_state)
final = evaluate(model, val_loader, device)
for k, v in final.items():
print(f" {k}: {v:.4f}")
torch.save(
{
"model_state": best_state,
"input_dim": input_dim,
"hidden_dim": HIDDEN_DIM,
"num_classes": NUM_CLASSES,
"dropout": DROPOUT,
"embedding_model": EMBEDDING_MODEL,
},
"logreg_classifier.pt"
)
print("\n Model saved to logreg_classifier.pt")
if __name__ == "__main__":
main()
+34 -15
View File
@@ -1,6 +1,6 @@
from sklearn.utils import compute_class_weight
from torch.nn import CrossEntropyLoss
from transformers import RobertaTokenizer, RobertaForSequenceClassification, Trainer, TrainingArguments
from transformers import RobertaTokenizer, RobertaForSequenceClassification, Trainer, TrainingArguments, AutoTokenizer, AutoModelForSequenceClassification
import torch
from sklearn.model_selection import train_test_split
from sklearn.metrics import accuracy_score, f1_score, precision_score, recall_score
@@ -10,7 +10,7 @@ import csv
import numpy as np
NUM_CLASSES = 3
model_name = "roberta-base"
model_name = "distilbert/distilroberta-base"
LABEL_PRIORITY = [
("PERFECT", 0),
@@ -29,12 +29,21 @@ class WeightedTrainer(Trainer):
def compute_loss(self, model, inputs, return_outputs=False, **kwargs):
labels = inputs.get("labels")
# print("DBG: Before forward")
outputs = model(**inputs)
# print("DBG: After forward")
logits = outputs.get("logits")
loss_fct = CrossEntropyLoss(weight=self.class_weights.to(logits.device))
loss = loss_fct(logits, labels)
# loss_fct = CrossEntropyLoss(weight=self.class_weights.to(logits.device))
loss_fct = CrossEntropyLoss(
weight=self.class_weights.to(logits.device).to(logits.dtype)
)
# loss_fct = CrossEntropyLoss()
# print("DBG: Before loss")
loss = loss_fct(logits, labels)
# loss.backward()
# print("DBG: After loss")
return (loss, outputs) if return_outputs else loss
def label_to_int(extra_info: str) -> int:
@@ -120,17 +129,23 @@ def main():
print("Current device:", torch.cuda.current_device() if torch.cuda.is_available() else "CPU")
texts, labels = load_dataset_from_csv("../../data/classify.csv")
tokenizer = RobertaTokenizer.from_pretrained(model_name, hidden_dropout_prob=0.2,attention_probs_dropout_prob=0.2)
model = RobertaForSequenceClassification.from_pretrained(
# tokenizer = RobertaTokenizer.from_pretrained(model_name, hidden_dropout_prob=0.2,attention_probs_dropout_prob=0.2)
# model = RobertaForSequenceClassification.from_pretrained(
# model_name,
# num_labels=NUM_CLASSES
# )
tokenizer = AutoTokenizer.from_pretrained(model_name)
model = AutoModelForSequenceClassification.from_pretrained(
model_name,
num_labels=NUM_CLASSES
)
for param in model.roberta.parameters():
param.requires_grad = False
# for param in model.deberta.parameters():
# param.requires_grad = True
for param in model.roberta.encoder.layer[-6:].parameters():
param.requires_grad = True
# for param in model.deberta.encoder.layer[-6:].parameters():
# param.requires_grad = True
print("Dataset size:", len(texts))
print("Label distribution:")
@@ -140,7 +155,8 @@ def main():
texts,
labels,
test_size=0.2,
random_state=42
random_state=42,
stratify=labels
)
@@ -173,6 +189,7 @@ def main():
self.labels = labels
def __getitem__(self, idx):
# print(f"DBG: Loading item {idx}")
item = {
key: torch.tensor(val[idx])
for key, val in self.encodings.items()
@@ -187,7 +204,8 @@ def main():
output_dir="./results",
learning_rate=2e-5,
per_device_train_batch_size=32,
num_train_epochs=5,
# gradient_accumulation_steps=2,
num_train_epochs=15,
weight_decay=0.01,
load_best_model_at_end=True,
eval_strategy="epoch",
@@ -195,7 +213,8 @@ def main():
metric_for_best_model="f1",
greater_is_better=True,
dataloader_num_workers=4,
dataloader_pin_memory=True
dataloader_pin_memory=True,
# warmup_steps=100,
)
train_dataset = TextDataset(train_encodings, train_labels)
@@ -218,8 +237,8 @@ def main():
for k, v in metrics.items():
print(f"{k}: {v}")
trainer.save_model("./roberta_classifier")
tokenizer.save_pretrained("./roberta_classifier")
trainer.save_model("./roberta_distilled_classifier")
tokenizer.save_pretrained("./roberta_distilled_classifier")
+1 -1
View File
@@ -118,7 +118,7 @@ async function processRecord(record: any): Promise<ResultRecord> {
input: buildAgentInput(record),
streamMode: "values",
config: {
recursion_limit: 100
recursion_limit: 50
}
});
-119
View File
@@ -1,119 +0,0 @@
import json
import argparse
from urllib.parse import urlparse
from concurrent.futures import ThreadPoolExecutor, as_completed
from selenium import webdriver
from selenium.webdriver.chrome.options import Options
from selenium.common.exceptions import WebDriverException, TimeoutException, StaleElementReferenceException
from tqdm import tqdm
def init_driver():
options = Options()
options.headless = True
options.add_argument("--disable-gpu")
options.add_argument("--no-sandbox")
options.add_argument("--headless")
options.add_argument("--disable-blink-features=AutomationControlled")
options.add_argument("--window-size=1920,1080")
prefs = {
"profile.managed_default_content_settings.images": 2, # block images
"profile.default_content_setting_values.stylesheets": 2, # block CSS
"profile.managed_default_content_settings.cookies": 2, # optional
}
options.add_experimental_option("prefs", prefs)
driver = webdriver.Chrome(options=options)
driver.set_page_load_timeout(30)
return driver
def is_root_url(url):
parsed = urlparse(url)
return parsed.path in ("", "/")
def is_404_page(driver):
"""Safely check for 404, handling stale elements."""
try:
title = driver.title.lower()
body_text = driver.find_element("tag name", "body").text.lower()
return "404" in title or "404" in body_text
except StaleElementReferenceException:
return False
except Exception:
return False
def check_url_selenium(url):
driver = None
try:
driver = init_driver()
driver.get(url)
# 404 check
if is_404_page(driver):
return False, "404 page detected"
# Root URL after redirects
final_url = driver.current_url
if is_root_url(final_url):
return False, f"Redirected to root URL ({final_url})"
return True, None
except (WebDriverException, TimeoutException) as e:
return False, str(e)
finally:
if driver:
driver.quit()
def process_event(event):
"""Process an event only if score > 0.4."""
score = event.get("score", 0)
if score <= 0.4:
return None, False, "Score too low"
url = event.get("Url")
if not url:
return None, False, "No URL"
is_valid, error_msg = check_url_selenium(url)
event["url_valid"] = is_valid
return url, is_valid, error_msg
def process_jsonl_file(file_path, max_workers=4):
invalid_urls = []
valid_urls = 0
# Gather events with score > 0.4
urls_to_check = []
with open(file_path, "r", encoding="utf-8") as f:
for line in f:
line_data = json.loads(line)
if line_data.get("status") != "success":
continue
for event in line_data.get("events", []):
if event.get("score", 0) > 0.4:
urls_to_check.append(event)
total_urls = len(urls_to_check)
# ThreadPoolExecutor with tqdm progress bar
with ThreadPoolExecutor(max_workers=max_workers) as executor:
future_to_event = {executor.submit(process_event, e): e for e in urls_to_check}
for future in tqdm(as_completed(future_to_event), total=total_urls, desc="Checking URLs"):
url, is_valid, error_msg = future.result()
if not is_valid and url:
invalid_urls.append((url, error_msg))
else:
valid_urls += 1
# Summary
if invalid_urls:
print("\nList of invalid URLs and reasons:")
for url, err in invalid_urls:
print(f"{url} --> {err}")
print("\n=== URL Validation Summary ===")
print(f"Total URLs processed: {total_urls}")
print(f"Valid URLs (loaded successfully): {valid_urls}")
print(f"Invalid URLs: {len(invalid_urls)}")
if __name__ == "__main__":
parser = argparse.ArgumentParser(description="Validate URLs in JSONL file events using Selenium")
parser.add_argument("file_path", type=str, help="Path to the JSONL file")
parser.add_argument("--workers", type=int, default=4, help="Number of parallel Selenium workers")
args = parser.parse_args()
process_jsonl_file(args.file_path, max_workers=args.workers)
+4 -4
View File
@@ -16,18 +16,18 @@ BASE_URL = "https://dbkf.ontotext.com/rest-api/search/documents"
# "documentTypes": "http://schema.org/Claim",
DEFAULT_PARAMS = [
("documentTypes", "http://schema.org/Claim"),
("concept", "http://weverify.eu/resource/Concept/Q212"),
("from", "2000-01-01"),
("to", "2026-02-19"),
("lang", "en"),
("limit", 7000),
("limit", 5000),
("page", 1),
("orderBy", "date"),
("organization", "http://weverify.eu/resource/Organization/128573c5d49d37558706194e755f152d"), # Science Direct
("organization", "http://weverify.eu/resource/Organization/3727f7b2aa90ec0716693e5464b28d18"), # StopFake
("organization", "http://weverify.eu/resource/Organization/c71953fa6cf24ac4178f751c77862070"), # CheckYourFact
]
NUM_RANDOM_CLAIMS = 200
NUM_RANDOM_CLAIMS = 40
INPUT_FILE = "../../data/input.jsonl"
OUTPUT_FILE = "../../data/claims.json"
+5 -16
View File
@@ -5,6 +5,7 @@ import streamlit as st
import pandas as pd
import matplotlib.pyplot as plt
# THRESH = 0.4
THRESH = 0.6
def page_title() -> str:
@@ -60,18 +61,6 @@ def render():
return
for file_path in jsonl_files:
thresh = THRESH
if ("flan" in file_path.name):
thresh = 0.94
if ("regression" in file_path.name):
thresh = 0.75
if ("ensemble" in file_path.name):
thresh = 0.1
if ("ensemble" in file_path.name and "2" in file_path.name):
thresh = 0.4
if ("ensemble" in file_path.name and "vot" in file_path.name):
thresh = 0.7
st.subheader(f"File: {file_path.name}")
confidence_counter = Counter()
@@ -97,15 +86,15 @@ def render():
dup_counter += 1
elif "ranked" not in event:
"ignore for now"
elif score > thresh and extra_lower == "perfect":
elif score > THRESH and extra_lower == "perfect":
confidence_counter["Correct-PERFECT"] += 1
elif score > thresh and extra_lower == "":
elif score > THRESH and extra_lower == "":
confidence_counter["Correct-FINE"] += 1
elif score > thresh and extra_lower != "perfect" and extra_lower != "":
elif score > THRESH and extra_lower != "perfect" and extra_lower != "":
confidence_counter["Over-confident"] += 1
wrong_counter[extra_lower] += 1
overconfident_docs.append(doc_id)
elif score < thresh and (extra_lower == "perfect" or extra_lower == ""):
elif score < THRESH and (extra_lower == "perfect" or extra_lower == ""):
confidence_counter["Under-confident"] += 1
underconfident_docs.append(doc_id)
else:
-78
View File
@@ -1,78 +0,0 @@
from collections import Counter
from pathlib import Path
import json
import streamlit as st
import pandas as pd
import matplotlib.pyplot as plt
THRESH = 0.4
def page_title() -> str:
return "Statistics 2"
def render():
st.header("Statistics 2")
path = Path("../../data/refinement")
if not path.exists() or not path.is_dir():
st.error("Invalid folder path.")
return
jsonl_files = sorted(path.glob("*.jsonl"))
if not jsonl_files:
st.info("No .jsonl files found in this folder.")
return
for file_path in jsonl_files:
thresh = THRESH
st.subheader(f"File: {file_path.name}")
confidence_counter = Counter()
# ---- Read file line by line ----
with open(file_path, "r", encoding="utf-8") as f:
for line in f:
try:
entry = json.loads(line)
except json.JSONDecodeError:
continue
if (entry.get("status") != "success"):
confidence_counter["Crash"] += 1
for event in entry.get("events", []):
score = event.get("score", None)
if score is not None:
if score == -1:
confidence_counter["BAD-1"] += 1
elif score > thresh:
confidence_counter["PERFECT"] += 1
else:
confidence_counter["BAD"] += 1
if confidence_counter:
df_conf = pd.DataFrame(
confidence_counter.items(),
columns=["Category", "Count"]
)
fig, ax = plt.subplots()
ax.pie(
df_conf["Count"],
labels=df_conf["Category"],
autopct="%1.1f%%",
startangle=90
)
ax.axis("equal")
ax.set_title(file_path.name)
total = sum(confidence_counter.values())
correct = confidence_counter["PERFECT"]
corr_percent = (correct / total) * 100
st.markdown(f"**Correct: {corr_percent:.2f}% ({correct}/{total})**")
st.markdown(f"**Crash: {confidence_counter["Crash"]}**")
st.pyplot(fig, width=500)
else:
st.info("No score data available in this file.")