You cannot select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
gpt4free/g4f/Provider/Bing.py

503 lines
20 KiB
Python

from __future__ import annotations
import random
import json
import uuid
import time
import asyncio
from urllib import parse
from datetime import datetime
from aiohttp import ClientSession, ClientTimeout, BaseConnector, WSMsgType
from ..typing import AsyncResult, Messages, ImageType, Cookies
from ..image import ImageRequest
from ..errors import ResponseStatusError, RateLimitError
from .base_provider import AsyncGeneratorProvider, ProviderModelMixin
from .helper import get_connector, get_random_hex
from .bing.upload_image import upload_image
from .bing.conversation import Conversation, create_conversation, delete_conversation
from .BingCreateImages import BingCreateImages
from .. import debug
class Tones:
"""
Defines the different tone options for the Bing provider.
"""
creative = "Creative"
balanced = "Balanced"
precise = "Precise"
copilot = "Copilot"
class Bing(AsyncGeneratorProvider, ProviderModelMixin):
"""
Bing provider for generating responses using the Bing API.
"""
url = "https://bing.com/chat"
working = True
supports_message_history = True
supports_gpt_4 = True
default_model = "Balanced"
models = [getattr(Tones, key) for key in Tones.__dict__ if not key.startswith("__")]
@classmethod
def create_async_generator(
cls,
model: str,
messages: Messages,
proxy: str = None,
timeout: int = 900,
2 months ago
api_key: str = None,
cookies: Cookies = None,
connector: BaseConnector = None,
tone: str = None,
image: ImageType = None,
web_search: bool = False,
context: str = None,
**kwargs
) -> AsyncResult:
"""
Creates an asynchronous generator for producing responses from Bing.
:param model: The model to use.
:param messages: Messages to process.
:param proxy: Proxy to use for requests.
:param timeout: Timeout for requests.
:param cookies: Cookies for the session.
:param tone: The tone of the response.
:param image: The image type to be used.
:param web_search: Flag to enable or disable web search.
:return: An asynchronous result object.
"""
prompt = messages[-1]["content"]
2 months ago
if api_key is not None:
cookies["_U"] = api_key
if context is None:
context = create_context(messages[:-1]) if len(messages) > 1 else None
if tone is None:
tone = tone if model.startswith("gpt-4") else model
tone = cls.get_model("" if tone is None else tone)
6 months ago
gpt4_turbo = True if model.startswith("gpt-4-turbo") else False
return stream_generate(
prompt, tone, image, context, cookies,
get_connector(connector, proxy, True),
proxy, web_search, gpt4_turbo, timeout,
**kwargs
)
def create_context(messages: Messages) -> str:
"""
Creates a context string from a list of messages.
:param messages: A list of message dictionaries.
:return: A string representing the context created from the messages.
"""
return "".join(
f"[{message['role']}]" + ("(#message)"
if message['role'] != "system"
else "(#additional_instructions)") + f"\n{message['content']}"
for message in messages
) + "\n\n"
def get_ip_address() -> str:
return f"13.{random.randint(104, 107)}.{random.randint(0, 255)}.{random.randint(0, 255)}"
def get_default_cookies():
return {
'SRCHD' : 'AF=NOFORM',
'PPLState' : '1',
'KievRPSSecAuth': '',
'SUID' : '',
'SRCHUSR' : '',
'SRCHHPGUSR' : f'HV={int(time.time())}',
}
def create_headers(cookies: Cookies = None) -> dict:
if cookies is None:
cookies = get_default_cookies()
headers = Defaults.headers.copy()
headers["cookie"] = "; ".join(f"{k}={v}" for k, v in cookies.items())
headers["x-forwarded-for"] = get_ip_address()
return headers
class Defaults:
"""
Default settings and configurations for the Bing provider.
"""
delimiter = "\x1e"
# List of allowed message types for Bing responses
allowedMessageTypes = [
"ActionRequest","Chat",
"ConfirmationCard", "Context",
"InternalSearchQuery", #"InternalSearchResult",
#"Disengaged", "InternalLoaderMessage",
"Progress", "RenderCardRequest",
"RenderContentRequest", "AdsQuery",
"SemanticSerp", "GenerateContentQuery",
"SearchQuery", "GeneratedCode",
"InternalTasksMessage"
]
sliceIds = {
"balanced": [
"supllmnfe","archnewtf",
"stpstream", "stpsig", "vnextvoicecf", "scmcbase", "cmcpupsalltf", "sydtransctrl",
"thdnsrch", "220dcl1s0", "0215wcrwips0", "0305hrthrots0", "0130gpt4t",
"bingfc", "0225unsticky1", "0228scss0",
"defquerycf", "defcontrol", "3022tphpv"
],
"creative": [
"bgstream", "fltltst2c",
"stpstream", "stpsig", "vnextvoicecf", "cmcpupsalltf", "sydtransctrl",
"0301techgnd", "220dcl1bt15", "0215wcrwip", "0305hrthrot", "0130gpt4t",
"bingfccf", "0225unsticky1", "0228scss0",
"3022tpvs0"
],
"precise": [
"bgstream", "fltltst2c",
"stpstream", "stpsig", "vnextvoicecf", "cmcpupsalltf", "sydtransctrl",
"0301techgnd", "220dcl1bt15", "0215wcrwip", "0305hrthrot", "0130gpt4t",
"bingfccf", "0225unsticky1", "0228scss0",
"defquerycf", "3022tpvs0"
],
"copilot": []
}
optionsSets = {
"balanced": {
"default": [
"nlu_direct_response_filter", "deepleo",
"disable_emoji_spoken_text", "responsible_ai_policy_235",
"enablemm", "dv3sugg", "autosave",
"iyxapbing", "iycapbing",
"galileo", "saharagenconv5", "gldcl1p",
"gpt4tmncnp"
],
"nosearch": [
"nlu_direct_response_filter", "deepleo",
"disable_emoji_spoken_text", "responsible_ai_policy_235",
"enablemm", "dv3sugg", "autosave",
"iyxapbing", "iycapbing",
"galileo", "sunoupsell", "base64filter", "uprv4p1upd",
"hourthrot", "noctprf", "gndlogcf", "nosearchall"
]
},
"creative": {
"default": [
"nlu_direct_response_filter", "deepleo",
"disable_emoji_spoken_text", "responsible_ai_policy_235",
"enablemm", "dv3sugg",
"iyxapbing", "iycapbing",
"h3imaginative", "techinstgnd", "hourthrot", "clgalileo", "gencontentv3",
"gpt4tmncnp"
],
"nosearch": [
"nlu_direct_response_filter", "deepleo",
"disable_emoji_spoken_text", "responsible_ai_policy_235",
"enablemm", "dv3sugg", "autosave",
"iyxapbing", "iycapbing",
"h3imaginative", "sunoupsell", "base64filter", "uprv4p1upd",
"hourthrot", "noctprf", "gndlogcf", "nosearchall",
"clgalileo", "nocache", "up4rp14bstcst"
]
},
"precise": {
"default": [
"nlu_direct_response_filter", "deepleo",
"disable_emoji_spoken_text", "responsible_ai_policy_235",
"enablemm", "dv3sugg",
"iyxapbing", "iycapbing",
"h3precise", "techinstgnd", "hourthrot", "techinstgnd", "hourthrot",
"clgalileo", "gencontentv3"
],
"nosearch": [
"nlu_direct_response_filter", "deepleo",
"disable_emoji_spoken_text", "responsible_ai_policy_235",
"enablemm", "dv3sugg", "autosave",
"iyxapbing", "iycapbing",
"h3precise", "sunoupsell", "base64filter", "uprv4p1upd",
"hourthrot", "noctprf", "gndlogcf", "nosearchall",
"clgalileo", "nocache", "up4rp14bstcst"
]
},
"copilot": [
"nlu_direct_response_filter", "deepleo",
"disable_emoji_spoken_text", "responsible_ai_policy_235",
"enablemm", "dv3sugg",
"iyxapbing", "iycapbing",
"h3precise", "clgalileo", "gencontentv3", "prjupy"
],
}
# Default location settings
location = {
"locale": "en-US", "market": "en-US", "region": "US",
"location":"lat:34.0536909;long:-118.242766;re=1000m;",
"locationHints": [{
"country": "United States", "state": "California", "city": "Los Angeles",
"timezoneoffset": 8, "countryConfidence": 8,
"Center": {"Latitude": 34.0536909, "Longitude": -118.242766},
"RegionType": 2, "SourceType": 1
}],
}
# Default headers for requests
home = 'https://www.bing.com/chat?q=Bing+AI&FORM=hpcodx'
10 months ago
headers = {
'sec-ch-ua': '"Chromium";v="122", "Not(A:Brand";v="24", "Google Chrome";v="122"',
10 months ago
'sec-ch-ua-mobile': '?0',
'user-agent': 'Mozilla/5.0 (Windows NT 10.0; Win64; x64) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/122.0.0.0 Safari/537.36',
'sec-ch-ua-arch': '"x86"',
'sec-ch-ua-full-version': '"122.0.6261.69"',
'accept': 'application/json',
'sec-ch-ua-platform-version': '"15.0.0"',
"x-ms-client-request-id": str(uuid.uuid4()),
'sec-ch-ua-full-version-list': '"Chromium";v="122.0.6261.69", "Not(A:Brand";v="24.0.0.0", "Google Chrome";v="122.0.6261.69"',
'x-ms-useragent': 'azsdk-js-api-client-factory/1.0.0-beta.1 core-rest-pipeline/1.12.3 OS/Windows',
10 months ago
'sec-ch-ua-model': '""',
'sec-ch-ua-platform': '"Windows"',
'sec-fetch-site': 'same-origin',
'sec-fetch-mode': 'cors',
'sec-fetch-dest': 'empty',
'referer': home,
'accept-language': 'en-US,en;q=0.9',
}
10 months ago
def format_message(msg: dict) -> str:
"""
Formats a message dictionary into a JSON string with a delimiter.
:param msg: The message dictionary to format.
:return: A formatted string representation of the message.
"""
return json.dumps(msg, ensure_ascii=False) + Defaults.delimiter
10 months ago
def create_message(
conversation: Conversation,
prompt: str,
tone: str,
context: str = None,
image_request: ImageRequest = None,
web_search: bool = False,
gpt4_turbo: bool = False,
new_conversation: bool = True
) -> str:
"""
Creates a message for the Bing API with specified parameters.
:param conversation: The current conversation object.
:param prompt: The user's input prompt.
:param tone: The desired tone for the response.
:param context: Additional context for the prompt.
:param image_request: The image request with the url.
:param web_search: Flag to enable web search.
:param gpt4_turbo: Flag to enable GPT-4 Turbo.
:return: A formatted string message for the Bing API.
"""
options_sets = Defaults.optionsSets[tone.lower()]
if not web_search and "nosearch" in options_sets:
options_sets = options_sets["nosearch"]
elif "default" in options_sets:
options_sets = options_sets["default"]
options_sets = options_sets.copy()
6 months ago
if gpt4_turbo:
options_sets.append("dlgpt4t")
request_id = str(uuid.uuid4())
10 months ago
struct = {
"arguments":[{
"source": "cib",
"optionsSets": options_sets,
"allowedMessageTypes": Defaults.allowedMessageTypes,
"sliceIds": Defaults.sliceIds[tone.lower()],
"verbosity": "verbose",
"scenario": "CopilotMicrosoftCom" if tone == Tones.copilot else "SERP",
"plugins": [{"id": "c310c353-b9f0-4d76-ab0d-1dd5e979cf68", "category": 1}] if web_search else [],
"traceId": get_random_hex(40),
"conversationHistoryOptionsSets": ["autosave","savemem","uprofupd","uprofgen"],
"gptId": "copilot",
"isStartOfSession": new_conversation,
"requestId": request_id,
"message":{
**Defaults.location,
"userIpAddress": get_ip_address(),
"timestamp": datetime.now().isoformat(),
"author": "user",
"inputMethod": "Keyboard",
"text": prompt,
"messageType": "Chat",
"requestId": request_id,
"messageId": request_id
},
"tone": "Balanced" if tone == Tones.copilot else tone,
"spokenTextMode": "None",
"conversationId": conversation.conversationId,
"participant": {"id": conversation.clientId}
}],
"invocationId": "0",
"target": "chat",
"type": 4
10 months ago
}
if image_request and image_request.get('imageUrl') and image_request.get('originalImageUrl'):
struct['arguments'][0]['message']['originalImageUrl'] = image_request.get('originalImageUrl')
struct['arguments'][0]['message']['imageUrl'] = image_request.get('imageUrl')
Major Update for Bing - Supports latest bundle version and image analysis Here it is, a much-needed update to this service which offers numerous functionalities that the old code was unable to deliver to us. As you may know, ChatGPT Plus subscribers now have the opportunity to request image analysis directly from GPT within the chat bar. Bing has also integrated this feature into its chatbot. With this new code, you can now provide an image using a data URI, with all the following supported extensions: jpg, jpeg, png, and gif! **What is a data URI and how can I provide an image to Bing?** Just to clarify, a data URI is a method for encoding data directly into a URI (Uniform Resource Identifier). It is typically used for embedding small data objects like images, text, or other resources within web pages or documents. Data URIs are widely used in web applications. To provide an image from your desktop and retrieve it as a data URI, you can use this code: [GitHub link](https://gist.github.com/jsocol/1089733). Now, here is a code snippet you can use to provide images to Bing: ```python import g4f provider = g4f.Provider.Bing user_message = [{"role": "user", "content": "Hi, describe this image."}] response = g4f.ChatCompletion.create( model = g4f.models.gpt_4, provider = g4f.provider, # Corrected the provider value messages = user_message, stream = True, image = "data:image/jpeg;base64,/9j/4AAQSkZJRgABAQEASABIAAD/4RiSRXhpZgAASUkqAAg..." # Insert your full data URI image here ) for message in response: print(message, flush=True, end='') ``` If you don't want to analyze the image, just do not specify the image parameter. Regarding the implementation, the image is preprocessed within the Bing.py code, which can be resource-intensive for a server-side implementation. When using the Bing chatbot in your web browser, the image is preprocessed on your computer before being sent to the server. This preprocessing includes tasks like image rotation and compression. Although this implementation works, it would be more efficient to delegate image preprocessing to the client as it happens in reality. I will try to provide a JavaScript code for that at a later time. As you saw, I did mention in the title that it is in Beta. The way the code is written, Bing can sometimes mess up its answers. Indeed, Bing does not really stream its responses as the other providers do. Bing sends its answers like this on each iteration: "Hi," "Hi, this," "Hi, this is," "Hi, this is Bing." Instead of sending each segment one at a time, it already adds them on each iteration. So, to simulate a normal streaming response, other contributors made the code wait for the next iteration to retrieve the newer segments and yield them. However, this method ignores something that Bing does. Bing processes its responses in a markdown detector, which searches for links while the AI answers. If it finds a link, it saves it and waits until the AI finishes its answer to put all the found links at the very end of the answer. So if the AI is writing a link, but then on the next iteration, it finishes writing this link, it will then be deleted from the answer and appear later at the very end. Example: "Here is your link reference [" "Here is your link reference [^" "Here is your link reference [^1" "Here is your link reference [^1^" And then the response would get stuck there because the markdown detector would have deleted this link reference in the next response and waited until the AI is finished to put it at the very end. For this reason, I am working on an update to anticipate the markdown detector. So please, if you guys notice any bugs with this new implementation, I would greatly appreciate it if you could report them on the issue tab of this repo. Thanks in advance, and I hope that all these explanations were clear to you!
7 months ago
struct['arguments'][0]['experienceType'] = None
struct['arguments'][0]['attachedFileInfo'] = {"fileName": None, "fileType": None}
10 months ago
if context:
struct['arguments'][0]['previousMessages'] = [{
"author": "user",
"description": context,
"contextType": "ClientApp",
10 months ago
"messageType": "Context",
"messageId": "discover-web--page-ping-mriduna-----"
}]
10 months ago
return format_message(struct)
async def stream_generate(
prompt: str,
tone: str,
image: ImageType = None,
context: str = None,
cookies: dict = None,
connector: BaseConnector = None,
proxy: str = None,
web_search: bool = False,
gpt4_turbo: bool = False,
timeout: int = 900,
conversation: Conversation = None,
return_conversation: bool = False,
raise_apology: bool = False,
max_retries: int = None,
sleep_retry: int = 15,
**kwargs
):
"""
Asynchronously streams generated responses from the Bing API.
:param prompt: The user's input prompt.
:param tone: The desired tone for the response.
:param image: The image type involved in the response.
:param context: Additional context for the prompt.
:param cookies: Cookies for the session.
:param web_search: Flag to enable web search.
:param gpt4_turbo: Flag to enable GPT-4 Turbo.
:param timeout: Timeout for the request.
:return: An asynchronous generator yielding responses.
"""
headers = create_headers(cookies)
new_conversation = conversation is None
max_retries = (5 if new_conversation else 0) if max_retries is None else max_retries
10 months ago
async with ClientSession(
timeout=ClientTimeout(total=timeout), connector=connector
) as session:
first = True
while first or conversation is None:
first = False
do_read = True
try:
if conversation is None:
conversation = await create_conversation(session, headers, tone)
if return_conversation:
yield conversation
except ResponseStatusError as e:
max_retries -= 1
if max_retries < 1:
raise e
if debug.logging:
print(f"Bing: Retry: {e}")
headers = create_headers()
await asyncio.sleep(sleep_retry)
continue
image_request = await upload_image(
session,
image,
"Balanced" if tone == Tones.copilot else tone,
headers
) if image else None
async with session.ws_connect(
'wss://s.copilot.microsoft.com/sydney/ChatHub'
if tone == "Copilot" else
'wss://sydney.bing.com/sydney/ChatHub',
autoping=False,
params={'sec_access_token': conversation.conversationSignature},
headers=headers
) as wss:
10 months ago
await wss.send_str(format_message({'protocol': 'json', 'version': 1}))
await wss.send_str(format_message({"type": 6}))
await wss.receive(timeout=timeout)
await wss.send_str(create_message(
conversation, prompt, tone,
context if new_conversation else None,
image_request, web_search, gpt4_turbo,
new_conversation
))
10 months ago
response_txt = ''
returned_text = ''
message_id = None
while do_read:
msg = await wss.receive(timeout=timeout)
if msg.type == WSMsgType.CLOSED:
break
if msg.type != WSMsgType.TEXT or not msg.data:
continue
10 months ago
objects = msg.data.split(Defaults.delimiter)
for obj in objects:
if obj is None or not obj:
continue
response = json.loads(obj)
if response and response.get('type') == 1 and response['arguments'][0].get('messages'):
10 months ago
message = response['arguments'][0]['messages'][0]
if message_id is not None and message_id != message["messageId"]:
returned_text = ''
message_id = message["messageId"]
image_response = None
if (raise_apology and message['contentOrigin'] == 'Apology'):
raise RuntimeError("Apology Response Error")
if 'adaptiveCards' in message:
card = message['adaptiveCards'][0]['body'][0]
if "text" in card:
response_txt = card.get('text')
if message.get('messageType') and "inlines" in card:
inline_txt = card['inlines'][0].get('text')
response_txt += f"{inline_txt}\n"
elif message.get('contentType') == "IMAGE":
prompt = message.get('text')
try:
image_client = BingCreateImages(cookies, proxy)
image_response = await image_client.create_async(prompt)
except Exception as e:
if debug.logging:
print(f"Bing: Failed to create images: {e}")
image_response = f"\nhttps://www.bing.com/images/create?q={parse.quote(prompt)}"
10 months ago
if response_txt.startswith(returned_text):
new = response_txt[len(returned_text):]
if new not in ("", "\n"):
10 months ago
yield new
returned_text = response_txt
if image_response is not None:
yield image_response
10 months ago
elif response.get('type') == 2:
result = response['item']['result']
if result.get('error'):
max_retries -= 1
if max_retries < 1:
if result["value"] == "CaptchaChallenge":
raise RateLimitError(f"{result['value']}: Use other cookies or/and ip address")
else:
raise RuntimeError(f"{result['value']}: {result['message']}")
if debug.logging:
print(f"Bing: Retry: {result['value']}: {result['message']}")
headers = create_headers()
do_read = False
conversation = None
await asyncio.sleep(sleep_retry)
break
return
await delete_conversation(session, conversation, headers)