import re import torch import time import pinecone import pickle import os import numpy as np import hashlib import gradio as gr from transformers.generation.stopping_criteria import StoppingCriteria, StoppingCriteriaList from transformers import AutoTokenizer, AutoModelForCausalLM, BitsAndBytesConfig from torch import nn from sentence_transformers.cross_encoder import CrossEncoder from sentence_transformers import SentenceTransformer from peft import PeftModel from bs4 import BeautifulSoup import requests import logging logging.basicConfig(format='[%(asctime)s] %(message)s', datefmt='%d-%b-%y %H:%M:%S', level=logging.INFO) headers = { "User-Agent": "Mozilla/5.0 (Macintosh; Intel Mac OS X 10_9_5) AppleWebKit 537.36 (KHTML, like Gecko) Chrome", "Accept": "text/html,application/xhtml+xml,application/xml; q=0.9,image/webp,*/*;q=0.8", "Cookie": "CONSENT=YES+cb.20210418-17-p0.it+FX+917; ", } def google_search(text): logging.info(f"Google search on: {text}") try: site = requests.get(f"https://www.google.com/search?hl=en&q={text}", headers=headers) main = ( BeautifulSoup(site.text, features="html.parser").select_one("#main").select(".VwiC3b.lyLwlc.yDYNvb.W8l4ac") ) res = [] for m in main: t = m.get_text() if "—" in t: t = t[len("—") + t.index("—") :].strip() res.append(t) ans = " \n".join(res) except Exception as ex: logging.error(f"Error: {ex}") ans = "" logging.info(f"The result of the google search is: {ans}") return ans PINECONE_API_KEY = os.environ.get("PINECONE_API_KEY") pinecone.init(api_key=PINECONE_API_KEY, environment="gcp-starter") sentencetransformer_model = SentenceTransformer('sentence-transformers/multi-qa-mpnet-base-cos-v1') CACHE_DIR = "./.cache" INDEX_NAME = "k8s-semantic-search" if not os.path.exists(CACHE_DIR): os.makedirs(CACHE_DIR) def cached(func): def wrapper(*args, **kwargs): SEP = "$|$" cache_token = ( f"{func.__name__}{SEP}" f"{SEP.join(str(arg) for arg in args)}{SEP}" f"{SEP.join( str(key) + SEP * 2 + str(val) for key, val in kwargs.items())}" ) hex_hash = hashlib.sha256(cache_token.encode()).hexdigest() cache_filename: str = os.path.join(CACHE_DIR, f"{hex_hash}") if os.path.exists(cache_filename): with open(cache_filename, "rb") as cache_file: return pickle.load(cache_file) result = func(*args, **kwargs) with open(cache_filename, "wb") as cache_file: pickle.dump(result, cache_file) return result return wrapper @cached def create_embedding(text: str): embed_text = sentencetransformer_model.encode(text) return embed_text.tolist() index = pinecone.Index(INDEX_NAME) def query_from_pinecone(query, top_k=3): embedding = create_embedding(query) if not embedding: return None return index.query(vector=embedding, top_k=top_k, include_metadata=True).get("matches") # gets the metadata (text) cross_encoder = CrossEncoder("cross-encoder/ms-marco-MiniLM-L-12-v2") def get_results_from_pinecone(query, top_k=3, re_rank=True, verbose=True): results_from_pinecone = query_from_pinecone(query, top_k=top_k) if not results_from_pinecone: return [] if verbose: logging.info(f"Query: {query}") final_results = [] if re_rank: if verbose: logging.info("Document ID (Hash)\t\tRetrieval Score\tCE Score\tText") sentence_combinations = [ [query, result_from_pinecone["metadata"]["text"]] for result_from_pinecone in results_from_pinecone ] # Compute the similarity scores for these combinations similarity_scores = cross_encoder.predict(sentence_combinations, activation_fct=nn.Sigmoid()) # Sort the scores in decreasing order sim_scores_argsort = reversed(np.argsort(similarity_scores)) # Print the scores for idx in sim_scores_argsort: result_from_pinecone = results_from_pinecone[idx] final_results.append(result_from_pinecone) if verbose: logging.info( f"{result_from_pinecone['id']:<4}\t{result_from_pinecone['score']:.2f}\t{similarity_scores[idx]:.2f}\t{result_from_pinecone['metadata']['text'][:50]}" ) return final_results if verbose: logging.info("Document ID (Hash)\t\tRetrieval Score\tText") for result_from_pinecone in results_from_pinecone: final_results.append(result_from_pinecone) if verbose: logging.info( f"{result_from_pinecone['id']}\t{result_from_pinecone['score']:.2f}\t{result_from_pinecone['metadata']['text'][:50]}" ) return final_results def semantic_search(prompt): final_results = get_results_from_pinecone(prompt, top_k=9, re_rank=True, verbose=True) if not final_results: return "" return "\n\n".join(res["metadata"]["text"].strip() for res in final_results[:3]) base_model_id = "mistralai/Mistral-7B-Instruct-v0.1" lora_model_id = "ComponentSoft/mistral-kubectl-instruct" tokenizer = AutoTokenizer.from_pretrained( lora_model_id, padding_side="left", add_eos_token=False, add_bos_token=True, ) tokenizer.pad_token = tokenizer.eos_token bnb_config = BitsAndBytesConfig( load_in_4bit=True, bnb_4bit_use_double_quant=True, bnb_4bit_quant_type="nf4", bnb_4bit_compute_dtype=torch.bfloat16 ) base_model = AutoModelForCausalLM.from_pretrained( base_model_id, quantization_config=bnb_config, use_cache=True, trust_remote_code=True, ) model = PeftModel.from_pretrained(base_model, lora_model_id) model.eval() def create_stop_criterion(*args): term_tokens = [torch.tensor(tokenizer.encode(term, add_special_tokens=False)).to("cuda") for term in args] class CustomStopCriterion(StoppingCriteria): def __call__(self, input_ids: torch.LongTensor, score: torch.FloatTensor, **kwargs): return any(torch.equal(e, input_ids[0][-len(e) :]) for e in term_tokens) return CustomStopCriterion() eval_stop_criterion = create_stop_criterion("", "#End") category_stop_criterion = create_stop_criterion("", "\n") start_template = "### Answer:" command_template = "# Command:" end_template = "#End" def str_to_md(text): def escape_hash(line): i = 0 while i < len(line) and line[i] == ' ': i+=1 if i == len(line): return line if line[i] == '#': line = line[:i] + '\\' + line[i:] return line lines = text.split('\n') lines = [escape_hash(line) for line in lines] return ' \n'.join(l if not all(c == '-' for c in l) else '_'*len(l) for l in lines) def text_to_text_generation(verbose, prompt): prompt = prompt.strip() is_kubectl_prompt = ( f"You are a helpful assistant who classifies prompts into three categories. [INST] Respond with 0 if it pertains to a 'kubectl' operation. This is an instruction that can be answered with a 'kubectl' action. Look for keywords like 'get', 'list', 'create', 'show', 'view', and other command-like words. This category is an instruction instead of a question. Respond with 1 only if the prompt is a question, and is about a definition related to Kubernetes, or non-action inquiries. Respond with 2 every other scenario, for example if the question is a general question, not related to Kubernetes or 'kubectl'.\n" f"Here are some examples:\n" f"text: List all pods in Kubernetes\n" f"response (0/1/2): 0 \n" f"text: What is a headless service and how to create one?\n" f"response (0/1/2): 1 \n" f"text: What is the capital of Hungary?\n" f"response (0/1/2): 2 \n" f"text: Display detailed information about the pod 'web-app-pod-1'\n" f"response (0/1/2): 0 \n" f"text: What are some typical foods in Germany?\n" f"response (0/1/2): 2 \n" f"text: What is a LoadBalancer in Kubernetes?\n" f"response (0/1/2): 1 \n" f"text: How can I enhance the performance of a k8s cluster?\n" f"response (0/1/2): 1 \n" f'Classify the following: [/INST] \ntext: "{prompt}\n"' f"response (0/1/2): " ) model_input = tokenizer(is_kubectl_prompt, return_tensors="pt").to("cuda") with torch.no_grad(): response = tokenizer.decode( model.generate( **model_input, max_new_tokens=8, pad_token_id=tokenizer.eos_token_id, repetition_penalty=1.15, stopping_criteria=StoppingCriteriaList([category_stop_criterion]), )[0], skip_special_tokens=True, ) response = response[len(is_kubectl_prompt) :] response_num = 0 if "0" in response else (1 if "1" in response else 2) def create_generation_prompt(response_num, prompt, retriever): md = "" match response_num: case 0: prompt = f"[INST] {prompt}\n Lets think step by step. [/INST] {start_template}" logging.info('Kubectl command prompt:') logging.info(prompt) case 1: if retriever == "semantic_search": question = prompt logging.info('Semantic search prompt:') logging.info( ( f"You are a helpful kubernetes professional. [INST] Use the following documentation, if it is relevant to answer the question below. [/INST]\nDocumentation: [RETRIEVED_RESULTS_FROM_BOOK] [INST] Answer the following question: {question} [/INST]\nAnswer: \n") ) retrieved_results = semantic_search(prompt) prompt = f"You are a helpful kubernetes professional. [INST] Use the following documentation, if it is relevant to answer the question below. [/INST]\nDocumentation: {retrieved_results} \n [INST] Answer the following question: {prompt} [/INST]\nAnswer:\n\n" md = ( f"### Step 1: Preparing prompt for additional documentation \n\n" f"You are a helpful kubernetes professional. [INST] Use the following documentation, if it is relevant to answer the question below. [/INST]\nDocumentation: \n\n" f"### Step 2: Retrieving documentation from a book. \n\n" f"{str_to_md(retrieved_results)} \n\n" f"### Step 3: Creating full prompt given to model \n\n" f"You are a helpful kubernetes professional. [INST] Use the following documentation, if it is relevant to answer the question below. [/INST]\nDocumentation: [RETRIEVED_RESULTS_FROM_BOOK] [INST] Answer the following question: {question} [/INST]\nAnswer:" ) elif retriever == "google_search": retrieved_results = google_search(prompt) question = prompt prompt = f"You are a helpful kubernetes professional. [INST] Use the following documentation, if it is relevant to answer the question below. [/INST]\nDocumentation: {retrieved_results} \n [INST] Answer the following question: {prompt} [/INST]\nAnswer: " logging.info('Google search prompt:') logging.info( ( f"You are a helpful kubernetes professional. [INST] Use the following documentation, if it is relevant to answer the question below. [/INST]\nDocumentation: [RETRIEVED_RESULTS_FROM_GOOGLE] [INST] Answer the following question: {question} [/INST]\nAnswer:\n\n" ) ) md = ( f"### Step 1: Preparing prompt for additional documentation \n\n" f"You are a helpful kubernetes professional. [INST] Use the following documentation, if it is relevant to answer the question below. [/INST]\nDocumentation: \n\n" f"### Step 2: Retrieving documentation from Google. \n\n" f"{str_to_md(retrieved_results)} \n\n" f"### Step 3: Creating full prompt given to model \n\n" f"You are a helpful kubernetes professional. [INST] Use the following documentation, if it is relevant to answer the question below. [/INST]\nDocumentation: [RETRIEVED_RESULTS_FROM_GOOGLE] [INST] Answer the following question: {question} [/INST]\nAnswer:" ) else: prompt = f"[INST] Answer the following question: {prompt} [/INST]\nAnswer: " logging.info('No retriever question prompt:') logging.info(prompt) case _: prompt = f"[INST] {prompt} [/INST]" logging.info('Other question prompt:') logging.info(prompt) return prompt, md def generate_batch(*prompts): tokenized_inputs = tokenizer(prompts, return_tensors="pt", padding=True).to("cuda") with torch.no_grad(): responses = tokenizer.batch_decode( model.generate( **tokenized_inputs, max_new_tokens=256, pad_token_id=tokenizer.eos_token_id, repetition_penalty=1.15, stopping_criteria=StoppingCriteriaList([eval_stop_criterion]), ), skip_special_tokens=True, ) decoded_prompts = tokenizer.batch_decode(tokenized_inputs.input_ids, skip_special_tokens=True) return [(prompt, answer) for prompt, answer in zip(decoded_prompts, responses)] def cleanup(prompt, answer): start = answer.index(start_template) + len(start_template) if start_template in answer else len(prompt) start = answer.index(command_template) + len(command_template) if command_template in answer else start end = answer.index(end_template) if end_template in answer else len(answer) return (prompt, answer[start:end].strip()) modes = ["Kubectl command", "Kubernetes related", "Other"] logging.info(f'{" Query Start ":-^40}') logging.info(f"Classified as: {modes[response_num]}") modes[response_num] = f"**{modes[response_num]}**" modes = " / ".join(modes) if response_num == 2: prompt, md = create_generation_prompt(response_num, prompt, False) original, new = generate_batch(prompt)[0] prompt, response = cleanup(original, new) if verbose: return ( f"# 📚KubeWizard📚\n" f"#### A helpful Kubernetes Assistant powered by Component Soft\n" f"--------------------------------------------\n" f"# Classified your prompt as:\n" f"{modes}\n\n" f"# Prompt given to the model:\n" f"{str_to_md(prompt)}\n" f"# Model's answer:\n" f"{str_to_md(response)}\n" ) else: return ( f"# 📚KubeWizard📚\n" f"#### A helpful Kubernetes Assistant powered by Component Soft\n" f"--------------------------------------------\n" f"# Classified your prompt as:\n" f"{modes}\n\n" f"# Answer:\n" f"{str_to_md(response)}" ) if response_num == 0: prompt, md = create_generation_prompt(response_num, prompt, False) original, new = generate_batch(prompt)[0] prompt, response = cleanup(original, new) model_response = new[len(original):].strip() if verbose: return ( f"# 📚KubeWizard📚\n" f"#### A helpful Kubernetes Assistant powered by Component Soft\n" f"--------------------------------------------\n" f"# Classified your prompt as:\n" f"{modes}\n\n" f"# Prompt given to the model:\n" f"{str_to_md(prompt)}\n" f"# Model's answer:\n" f"{str_to_md(model_response)}\n" f"# Processed answer:\n" f"```bash\n{str_to_md(response)}\n```\n" ) else: return ( f"# 📚KubeWizard📚\n" f"#### A helpful Kubernetes Assistant powered by Component Soft\n" f"--------------------------------------------\n" f"# Classified your prompt as:\n" f"{modes}\n\n" f"# Answer:\n" f"```bash\n{str_to_md(response)}\n```\n" ) res_prompt, res_md = create_generation_prompt(response_num, prompt, False) res_semantic_search_prompt, res_semantic_search_md = create_generation_prompt(response_num, prompt, "semantic_search") res_google_search_prompt, res_google_search_md = create_generation_prompt(response_num, prompt, "google_search") gen_normal, gen_semantic_search, gen_google_search = generate_batch( res_prompt, res_semantic_search_prompt, res_google_search_prompt ) logging.info(f"SEMANTIC BEFORE CLEANUP: {str(gen_semantic_search)}") logging.info(f"GOOGLE BEFORE CLEANUP: {str(gen_google_search)}") res_prompt, res_normal = cleanup(*gen_normal) res_semantic_search_prompt, res_semantic_search = cleanup(*gen_semantic_search) res_google_search_prompt, res_google_search = cleanup(*gen_google_search) logging.info(f"SEMANTIC AFTER CLEANUP: {str(res_semantic_search)}") logging.info(f"GOOGLE AFTER CLEANUP: {str(res_google_search)}") if verbose: return ( f"# 📚KubeWizard📚\n" f"#### A helpful Kubernetes Assistant powered by Component Soft\n" f"--------------------------------------------\n" f"# Classified your prompt as:\n" f"{modes}\n\n" f"--------------------------------------------\n" f"# Answer with finetuned model\n" f"## Prompt given to the model:\n" f"{str_to_md(res_prompt)}\n\n" f"## Model's answer:\n" f"{str_to_md(res_normal)}\n\n" f"--------------------------------------------\n" f"# Answer with RAG\n" f"## Section 1: Preparing for generation \n\n{res_semantic_search_md} \n\n" f"## Section 2: Generating answer \n\n{str_to_md(res_semantic_search.strip())} \n\n" f"--------------------------------------------\n" f"# Answer with Google search\n" f"## Section 1: Preparing for generation \n\n{res_google_search_md} \n\n" f"## Section 2: Generating answer \n\n{str_to_md(res_google_search.strip())} \n\n" ) else: return ( f"# 📚KubeWizard📚\n" f"#### A helpful Kubernetes Assistant powered by Component Soft\n" f"--------------------------------------------\n" f"# Classified your prompt as:\n" f"{modes}\n\n" f"# Answer with finetuned model \n\n{str_to_md(res_normal)} \n\n" f"# Answer with RAG \n\n{str_to_md(res_semantic_search.strip())} \n\n" f"# Answer with Google search \n\n{str_to_md(res_google_search)} \n\n" ) iface = gr.Interface( fn=text_to_text_generation, inputs=[ gr.components.Checkbox(label="Verbose"), gr.components.Text(placeholder="prompt here ...", label="Prompt"), ], outputs=gr.components.Markdown(label="Answer"), allow_flagging="never", title="📚KubeWizard📚", ) iface.launch()