5 Commits

Author SHA1 Message Date
William Jeynes 1ac94441c5 Why no tool use? 2026-04-04 23:50:57 +01:00
William Jeynes f3e2897806 switch to 5.4 nano 2026-04-04 23:10:06 +01:00
William Jeynes f821e9643d Add url validity metrics 2026-04-04 20:02:25 +01:00
William Jeynes 43ecd04135 add multithreading 2026-04-04 19:42:02 +01:00
William Jeynes 8c0921057b start on work to calculate % if valid URLS 2026-04-04 18:52:47 +01:00
18 changed files with 581 additions and 465 deletions
-1
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@@ -4,4 +4,3 @@ LANGSMITH_API_KEY=123456
LANGSMITH_ENDPOINT=https://eu.api.smith.langchain.com
SCRAPER_INSTANCE=https://example.com
SCRAPER_PARAM_ANYTHING=else
RANKING_URL=http://localhost:8000/evaluate
+26 -1
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@@ -1,3 +1,28 @@
## Refining the agent output
TODO: Table and document experiments
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 | 33 | 0 |
| gpt-5.4-mini | 32.4 | -0.02 |
| llama3.1:8b-instruct-q4_K_M | ? | ? |
| qwen3.5:9b | 0 | -100 |
%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 |
+7 -10
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@@ -1,28 +1,25 @@
import { SystemMessage } from "@langchain/core/messages";
import { HumanMessage, SystemMessage } from "@langchain/core/messages";
import { GraphNode } from "@langchain/langgraph";
import { MessagesState } from "../state";
import { ChatOllama } from "@langchain/ollama";
import { ChatOpenAI } from "@langchain/openai"
import { hydratePrompt } from "../prompts/hydratePrompt";
import { logger } from "../utils/logger";
export function createModelNode(tools: any, promptPath: string): GraphNode<typeof MessagesState> {
return async (state) => {
const sysPrompt = await hydratePrompt(promptPath, state);
const model = new ChatOllama({
model: "llama3.1:8b-instruct-q4_K_M",
temperature: 0.3
const model = new ChatOpenAI({
model: "gpt-5.4-nano"
});
const modelWithTools = model.bindTools(Object.values(tools));
const response = await modelWithTools.invoke([
new SystemMessage(sysPrompt),
new SystemMessage(
sysPrompt
),
...state.messages,
]);
logger.error(response);
return {
messages: [response]
};
+1 -9
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@@ -3,16 +3,8 @@ import { MessagesState } from "../state";
import { AIMessage, BaseMessage } from "@langchain/core/messages";
import { rankExampleTriggerEvents } from "../tools/retreiveExamples";
function extractTE(text: string) {
const match = text.match(/<norm>([\s\S]*?)<\/norm>/);
if (!match) throw new Error("Nothing found between <norm> tags");
return match[1].trim();
}
export const triggerEventSetup: GraphNode<typeof MessagesState> = async (state) => {
let raw = state?.messages?.at(-1)?.content ?? "" //keep a copy of normalized trigger event. Again two things, womp womp
let nc = extractTE(raw.toString())
let nc = state?.messages?.at(-1)?.content ?? "" //keep a copy of normalized trigger event. Again two things, womp womp
//Now give in-context examples. hopwfully we can self-teach?
let similarityResults = await rankExampleTriggerEvents(state.disinformationTitle)
+15 -30
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@@ -1,31 +1,20 @@
import { GraphNode } from "@langchain/langgraph";
import { MessagesState, ProposedTriggerEventArray } from "../state";
import { logger } from "../utils/logger";
import { jsonrepair } from 'jsonrepair';
function extractJSON(text: string) {
const match = text.match(/<json>([\s\S]*?)<\/json>/);
if (!match) throw new Error("No JSON found between <json> tags");
return match[1].trim();
}
import { jsonrepair } from 'jsonrepair'
export const verificationSetup: GraphNode<typeof MessagesState> = async (state) => {
//this is kinda doing two things, but having two nodes for it seems overkill
if (state.proposedTriggerEvent == undefined) {
logger.warn("No trigger events in memory, parsing");
logger.warn("No trigger events in memory, parsing")
const genResponse = state.messages.at(-1)?.content.toString() ?? "";
let genResponse = state.messages.at(-1)?.content.toString() ?? "";
let repaired: string;
try {
let extracted = extractJSON(genResponse)
repaired = jsonrepair(extracted);
} catch (repairErr: any) {
logger.error("Failed to repair JSON from LLM response.");
logger.error("Original LLM response:\n%s", genResponse);
throw new Error(`JSON repair failed: ${repairErr.message}`);
}
const repaired = jsonrepair(genResponse);
let parsed;
try {
const json = JSON.parse(repaired);
@@ -38,23 +27,19 @@ export const verificationSetup: GraphNode<typeof MessagesState> = async (state)
if (Array.isArray(firstValue)) {
parsed = ProposedTriggerEventArray.parse(firstValue);
} else {
logger.error("No array found in JSON after parsing.");
logger.error("Repaired JSON:\n%s", repaired);
logger.error("Original LLM response:\n%s", genResponse);
throw new Error("No array found in JSON structure");
throw new Error("No array found in JSON");
}
}
} catch (parseErr: any) {
logger.error("Failed to parse LLM response to JSON or validate array.");
logger.error("Repaired JSON:\n%s", repaired);
logger.error("Original LLM response:\n%s", genResponse);
throw new Error(`Parsing failed: ${parseErr.message}`);
} catch (err: any) {
logger.error(`Failed to parse LLM response: ${err.message}`);
throw new Error(`Failed to parse LLM response: ${err}`);
}
return { proposedTriggerEvent: parsed, proposedTriggerEventIndex: 0 };
} else {
logger.info("Trigger event index %s", state.proposedTriggerEventIndex + 1);
}
else {
logger.info("Trigger event index %s", state.proposedTriggerEventIndex+1)
return { proposedTriggerEvent: state.proposedTriggerEvent, proposedTriggerEventIndex: state.proposedTriggerEventIndex + 1 };
return { proposedTriggerEvent: state.proposedTriggerEvent, proposedTriggerEventIndex: state.proposedTriggerEventIndex+1 };
}
};
+354 -379
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-1
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@@ -17,7 +17,6 @@
"@langchain/core": "^1.1.17",
"@langchain/langgraph": "^1.1.2",
"@langchain/langgraph-sdk": "^1.5.5",
"@langchain/ollama": "^1.2.6",
"@langchain/openai": "^1.2.3",
"axios": "^1.13.5",
"compute-cosine-similarity": "^1.1.0",
+1 -4
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@@ -16,7 +16,4 @@ Relevent examples are included in preceeding messages, use these as exact inspir
The claim to normalize is:
###TITLE###
Produce no other text other than the condensed claim, surrounded <norm></norm>
For example: BREAKING: the sky is green!
Becomes: <norm>The sky is green</norm>
Produce no other text other than the condensed claim.
+9
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@@ -0,0 +1,9 @@
Could the following real-world event:
###TECLAIM###
Be a trigger for the following disinformation:
###TITLE###
Respond with "RELATION", followed by : followed by a confidence score (VERYHIGH, HIGH, MEDIUM, LOW, VERYLOW) followed by : followed by the reason. Use no other words, just return the score and reason in format.
Ignore wether the event happened or not, purely consider the likiness of causation
+8 -12
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@@ -8,6 +8,10 @@ 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.
@@ -17,15 +21,6 @@ Include a url to a source for your trigger event (not a web search, a specific u
Include the date that the event happened ("March 2022" for exmaple)
Use a JSON format with each entry containing "Event,ReasoningWhyRelevant,SearchQuery,Url,Date".
Return ONLY JSON, no extra text. Wrap it like this:
<json>
[
{
"Event": "Example"
...
}
]
</json>
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.
@@ -35,8 +30,9 @@ 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
Since URLs change frequently, use tools to retreive up to date informaiton everytime, provided examples or existing knowledge will be wrong or out of date.
Remember to return just json enclosed by <json></json>
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
+8
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@@ -0,0 +1,8 @@
Do the search results cited below
###TESEARCH###
Support the idea that the following happened:
###TECLAIM###
Respond with "CONFIDENCE", followed by : followed by a confidence score (VERYHIGH, HIGH, MEDIUM, LOW, VERYLOW) followed by : followed by the reason. Use no other words, just return the score and reason in format.
Dates can be off by a few days, that would still be valid
+4 -8
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@@ -7,7 +7,7 @@ export async function evaluateWithEnsemble({
answer: string;
method: string
}): Promise<{ validProb: number; invalidProb: number; }> {
const res = await axios.post(process.env.RANKING_URL ?? "http://localhost:8000/evaluate", {
const res = await axios.post("http://localhost:8000/evaluate", {
answer,
method
}, {timeout: 0});
@@ -18,15 +18,11 @@ export async function evaluateWithEnsemble({
return {validProb, invalidProb};
}
// import dotenv from "dotenv";
// dotenv.config();
// let res = await evaluateWithEnsemble({method:"flan" ,answer: "High-profile political downplaying of COVID-19 (examples: President Trump saying 'it will go away' in MarchAugust 2020)"});
// let res = await evaluateWithRoberta({answer: "High-profile political downplaying of COVID-19 (examples: President Trump saying 'it will go away' in MarchAugust 2020)"});
// console.log(res)
// res = await evaluateWithEnsemble({method:"roberta" ,answer: "Multiple mirrored reuploads (20202023) put the clip on other channels with titles implying it was a genuine 1970s public information film."});
// res = await evaluateWithRoberta({answer: "Multiple mirrored reuploads (20202023) put the clip on other channels with titles implying it was a genuine 1970s public information film."});
// console.log(res)
// res = await evaluateWithEnsemble({method:"logreg" ,answer: "The COVID-19 Pandemic"});
// res = await evaluateWithRoberta({answer: "The COVID-19 Pandemic"});
// console.log(res)
+22
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@@ -0,0 +1,22 @@
import axios from "axios";
export async function evaluateWithRagas({
question,
answer,
contexts,
}: {
question: string;
answer: string;
contexts: string[];
}) {
const res = await axios.post("http://localhost:8001/evaluate", {
question,
answer,
contexts,
});
return res.data;
}
// let res = await evaluateWithRagas({question: "Who was Bill Nye", answer: "Bill Nye was a Scientist", contexts: ["Bill nye was a Scientist"]});
// console.log(res)
-3
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@@ -26,9 +26,6 @@ async function extractWebpageContentWorker(url: string): Promise<string[]> {
try {
const options = new firefox.Options();
options.addArguments("--headless");
options.addArguments("--disable-gpu");
options.addArguments("--no-sandbox"); // Linux sandbox issues
options.addArguments("--disable-dev-shm-usage"); // /dev/shm issues
driver = await new Builder()
.forBrowser(Browser.FIREFOX)
.setFirefoxOptions(options)
+1 -1
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@@ -5,7 +5,7 @@ set -e
run_agent () {
echo "Starting LangGraph agent..."
cd agent
npx @langchain/langgraph-cli dev
npx @langchain/langgraph-cli dev --host 127.0.0.1
}
run_ensemble_service () {
+1 -1
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@@ -92,7 +92,7 @@ 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("cpu")
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
flan_model.to(device)
flan_model.eval()
+1 -1
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@@ -17,7 +17,7 @@ const AGENT_NAME = process.env.AGENT ?? "agent";
*/
const MODE = process.env.MODE ?? "claim";
const MAX_CONCURRENCY = 1;
const MAX_CONCURRENCY = 5;
const client = new Client({ apiUrl: API_URL });
+119
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@@ -0,0 +1,119 @@
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)