ChatData / callbacks /arxiv_callbacks.py
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import streamlit as st
import json
import textwrap
from typing import Dict, Any, List
from sql_formatter.core import format_sql
from langchain.callbacks.streamlit.streamlit_callback_handler import (
LLMThought,
StreamlitCallbackHandler,
)
from langchain.schema.output import LLMResult
class ChatDataSelfSearchCallBackHandler(StreamlitCallbackHandler):
def __init__(self) -> None:
self.progress_bar = st.progress(value=0.0, text="Working...")
self.tokens_stream = ""
def on_llm_start(self, serialized, prompts, **kwargs) -> None:
pass
def on_text(self, text: str, **kwargs) -> None:
self.progress_bar.progress(value=0.2, text="Asking LLM...")
def on_chain_end(self, outputs, **kwargs) -> None:
self.progress_bar.progress(value=0.6, text="Searching in DB...")
if "repr" in outputs:
st.markdown("### Generated Filter")
st.markdown(
f"```python\n{outputs['repr']}\n```", unsafe_allow_html=True)
def on_chain_start(self, serialized, inputs, **kwargs) -> None:
pass
class ChatDataSelfAskCallBackHandler(StreamlitCallbackHandler):
def __init__(self) -> None:
self.progress_bar = st.progress(value=0.0, text="Searching DB...")
self.status_bar = st.empty()
self.prog_value = 0.0
self.prog_map = {
"langchain.chains.qa_with_sources.retrieval.RetrievalQAWithSourcesChain": 0.2,
"langchain.chains.combine_documents.map_reduce.MapReduceDocumentsChain": 0.4,
"langchain.chains.combine_documents.stuff.StuffDocumentsChain": 0.8,
}
def on_llm_start(self, serialized, prompts, **kwargs) -> None:
pass
def on_text(self, text: str, **kwargs) -> None:
pass
def on_chain_start(self, serialized, inputs, **kwargs) -> None:
cid = ".".join(serialized["id"])
if cid != "langchain.chains.llm.LLMChain":
self.progress_bar.progress(
value=self.prog_map[cid], text=f"Running Chain `{cid}`..."
)
self.prog_value = self.prog_map[cid]
else:
self.prog_value += 0.1
self.progress_bar.progress(
value=self.prog_value, text=f"Running Chain `{cid}`..."
)
def on_chain_end(self, outputs, **kwargs) -> None:
pass
class ChatDataSQLSearchCallBackHandler(StreamlitCallbackHandler):
def __init__(self) -> None:
self.progress_bar = st.progress(value=0.0, text="Writing SQL...")
self.status_bar = st.empty()
self.prog_value = 0
self.prog_interval = 0.2
def on_llm_start(self, serialized, prompts, **kwargs) -> None:
pass
def on_llm_end(
self,
response: LLMResult,
*args,
**kwargs,
):
text = response.generations[0][0].text
if text.replace(" ", "").upper().startswith("SELECT"):
st.write("We generated Vector SQL for you:")
st.markdown(f"""```sql\n{format_sql(text, max_len=80)}\n```""")
print(f"Vector SQL: {text}")
self.prog_value += self.prog_interval
self.progress_bar.progress(
value=self.prog_value, text="Searching in DB...")
def on_chain_start(self, serialized, inputs, **kwargs) -> None:
cid = ".".join(serialized["id"])
self.prog_value += self.prog_interval
self.progress_bar.progress(
value=self.prog_value, text=f"Running Chain `{cid}`..."
)
def on_chain_end(self, outputs, **kwargs) -> None:
pass
class ChatDataSQLAskCallBackHandler(ChatDataSQLSearchCallBackHandler):
def __init__(self) -> None:
self.progress_bar = st.progress(value=0.0, text="Writing SQL...")
self.status_bar = st.empty()
self.prog_value = 0
self.prog_interval = 0.1
class LLMThoughtWithKB(LLMThought):
def on_tool_end(
self,
output: str,
color=None,
observation_prefix=None,
llm_prefix=None,
**kwargs: Any,
) -> None:
try:
self._container.markdown(
"\n\n".join(
["### Retrieved Documents:"]
+ [
f"**{i+1}**: {textwrap.shorten(r['page_content'], width=80)}"
for i, r in enumerate(json.loads(output))
]
)
)
except Exception as e:
super().on_tool_end(output, color, observation_prefix, llm_prefix, **kwargs)
class ChatDataAgentCallBackHandler(StreamlitCallbackHandler):
def on_llm_start(
self, serialized: Dict[str, Any], prompts: List[str], **kwargs: Any
) -> None:
if self._current_thought is None:
self._current_thought = LLMThoughtWithKB(
parent_container=self._parent_container,
expanded=self._expand_new_thoughts,
collapse_on_complete=self._collapse_completed_thoughts,
labeler=self._thought_labeler,
)
self._current_thought.on_llm_start(serialized, prompts)