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moved skills database to the new system
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parent
0e176402e3
commit
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@ -263,7 +263,7 @@ class LollmsApplication(LoLLMsCom):
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def _generate_text(self, prompt):
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max_tokens = self.config.ctx_size - self.model.get_nb_tokens(prompt)
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max_tokens = min(self.config.ctx_size - self.model.get_nb_tokens(prompt),self.config.max_n_predict)
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generated_text = self.model.generate(prompt, max_tokens)
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return generated_text.strip()
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@ -1,11 +1,15 @@
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import sqlite3
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from safe_store.text_vectorizer import TextVectorizer, VectorizationMethod, VisualizationMethod
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from lollmsvectordb import VectorDatabase, BERTVectorizer
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from lollmsvectordb.lollms_tokenizers.tiktoken_tokenizer import TikTokenTokenizer
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import numpy as np
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from ascii_colors import ASCIIColors
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class SkillsLibrary:
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def __init__(self, db_path):
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def __init__(self, db_path, model_name: str = 'bert-base-nli-mean-tokens', chunk_size:int=512, overlap:int=0, n_neighbors:int=5):
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self.db_path =db_path
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self._initialize_db()
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self.vectorizer = VectorDatabase("", BERTVectorizer(), TikTokenTokenizer(),chunk_size, overlap, n_neighbors)
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ASCIIColors.green("Vecorizer ready")
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def _initialize_db(self):
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@ -121,37 +125,38 @@ class SkillsLibrary:
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return res
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def query_vector_db(self, query_, top_k=3, max_dist=1000):
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vectorizer = TextVectorizer(VectorizationMethod.TFIDF_VECTORIZER)
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conn = sqlite3.connect(self.db_path)
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cursor = conn.cursor()
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# Use direct string concatenation for the MATCH expression.
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# Ensure text is safely escaped to avoid SQL injection.
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query = "SELECT id, title FROM skills_library"
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query = "SELECT id, title, content FROM skills_library"
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cursor.execute(query)
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res = cursor.fetchall()
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cursor.close()
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conn.close()
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skills = []
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skill_titles = []
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if len(res)>0:
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for entry in res:
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vectorizer.add_document(entry[0],entry[1])
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vectorizer.index()
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self.vectorizer.add_document(entry[0],"Title:"+entry[1]+"\n"+entry[2])
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self.vectorizer.build_index()
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skill_titles, sorted_similarities, document_ids = vectorizer.recover_text(query_, top_k)
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for skill_title, sim, id in zip(skill_titles, sorted_similarities, document_ids):
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if np.linalg.norm(sim[1])<max_dist:
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conn = sqlite3.connect(self.db_path)
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cursor = conn.cursor()
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chunks = self.vectorizer.search(query_, top_k)
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for chunk in chunks:
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if chunk.distance<max_dist:
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skills.append(chunk.text)
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skill_titles.append(chunk.doc.title)
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# conn = sqlite3.connect(self.db_path)
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# cursor = conn.cursor()
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# Use direct string concatenation for the MATCH expression.
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# Ensure text is safely escaped to avoid SQL injection.
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query = "SELECT content FROM skills_library WHERE id = ?"
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cursor.execute(query, (id,))
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res = cursor.fetchall()
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skills.append(res[0])
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cursor.close()
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conn.close()
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else:
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skill_titles = []
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#query = "SELECT content FROM skills_library WHERE id = ?"
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#cursor.execute(query, (chunk.chunk_id,))
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#res = cursor.fetchall()
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#skills.append(res[0])
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#cursor.close()
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#conn.close()
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return skill_titles, skills
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