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import os
import html
import streamlit as st
import pandas as pd
from atlassian import Jira
import requests
from openai import OpenAI
from datetime import date, timedelta
# -------------------------
# Environment-based secrets
# -------------------------
JIRA_URL = os.getenv("JIRA_URL")
JIRA_USERNAME = os.getenv("JIRA_USERNAME")
JIRA_API_TOKEN = os.getenv("JIRA_API_TOKEN")
ZENDESK_EMAIL = os.getenv("ZENDESK_EMAIL")
ZENDESK_SUBDOMAIN = os.getenv("ZENDESK_SUBDOMAIN")
ZENDESK_API_KEY = os.getenv("ZENDESK_API_KEY")
OPENAI_API_KEY = os.getenv("OPENAI_API_KEY")
client = OpenAI(api_key=OPENAI_API_KEY)
# -------------------------
# JIRA Client
# -------------------------
jira = Jira(url=JIRA_URL, username=JIRA_USERNAME, password=JIRA_API_TOKEN)
# -------------------------
# OpenAI Summarization
# -------------------------
@st.cache_data(show_spinner=False)
def summarize_ticket(text: str) -> str:
if not text:
return "No description"
prompt = (
"Summarize this Zendesk ticket in 1–3 sentences:\n\n" + text + "\n\nSummary:"
)
resp = client.chat.completions.create(
model="gpt-4o-mini",
messages=[{"role": "user", "content": prompt}],
temperature=0.3,
max_tokens=150,
)
return resp.choices[0].message.content.strip()
# -------------------------
# Zendesk Search Function
# -------------------------
def search_zendesk_tickets(site_name: str, keyword: str) -> pd.DataFrame:
terms = []
if site_name:
terms.append(f'"{site_name}"')
if keyword:
terms.append(f'"{keyword}"')
query_str = " ".join(terms)
url = f"https://{ZENDESK_SUBDOMAIN}.zendesk.com/api/v2/search.json"
params = {"query": f"type:ticket {query_str}", "include": "users"}
auth = (f"{ZENDESK_EMAIL}/token", ZENDESK_API_KEY)
resp = requests.get(url, auth=auth, params=params)
if not resp.ok:
st.error(f"Zendesk error {resp.status_code}")
return pd.DataFrame()
tickets = resp.json().get("results", [])
rows = []
for t in tickets:
rows.append(
{
"ID": t["id"],
"Subject": html.escape(t.get("subject", "")),
"Status": html.escape(t.get("status", "")),
"Created At": t.get("created_at", ""),
"Updated At": t.get("updated_at", ""),
"Description": t.get("description", ""), # keep for summary
}
)
df = pd.DataFrame(rows)
# generate summaries and attach as new column
df["OpenAI Ticket Summary"] = df["Description"].apply(summarize_ticket)
return df
# -------------------------
# Jira Search Function
# -------------------------
@st.cache_data(show_spinner=False)
def search_jira_issues(
site_name: str, keyword: str, start_date: date, end_date: date
) -> pd.DataFrame:
# Build JQL clauses
clauses = []
if site_name:
clauses.append(f'text ~ "{site_name}"')
if keyword:
clauses.append(f'text ~ "{keyword}"')
clauses.append(f'created >= "{start_date.isoformat()}"')
clauses.append(f'created <= "{end_date.isoformat()}"')
jql = " AND ".join(clauses)
# Execute the JQL query, limiting to 100 issues
resp = jira.jql(jql, limit=100)
issues = resp.get("issues", [])
rows = []
for issue in issues:
f = issue["fields"]
rows.append(
{
"Key": issue["key"],
"Summary": html.escape(f.get("summary", "")),
"Status": html.escape(f.get("status", {}).get("name", "")),
"Created At": f.get("created", ""),
"Updated At": f.get("updated", ""),
}
)
return pd.DataFrame(rows)
# -------------------------
# App Config
# -------------------------
st.set_page_config(layout="wide")
st.title("Unified Support Dashboard")
if "zendesk_df" not in st.session_state:
st.session_state.zendesk_df = pd.DataFrame()
if "jira_df" not in st.session_state:
st.session_state.jira_df = pd.DataFrame()
# -------------------------
# Main: Tabs
# -------------------------
tabs = st.tabs(["Zendesk Lookup", "Jira Lookup"])
# ---- Tab 1: Zendesk ----
with tabs[0]:
st.header("Zendesk Lookup")
site_input = st.text_input(
"Site Name", placeholder="example.com", key="zendesk_site"
)
keyword_input = st.text_input(
"Keyword", placeholder="timeout", key="zendesk_keyword"
)
start_input = st.date_input(
"Created After", value=date.today() - timedelta(days=7), key="zendesk_start"
)
end_input = st.date_input("Created Before", value=date.today(), key="zendesk_end")
if st.button("Search Zendesk Tickets", key="zendesk_search"):
st.session_state.zendesk_df = search_zendesk_tickets(site_input, keyword_input)
df_z = st.session_state.zendesk_df.copy()
if not df_z.empty:
# parse & filter dates
df_z["Created At"] = pd.to_datetime(df_z["Created At"])
df_z["Updated At"] = pd.to_datetime(df_z["Updated At"])
mask = (df_z["Created At"].dt.date >= start_input) & (
df_z["Created At"].dt.date <= end_input
)
df_z = df_z.loc[mask]
# sort by Created At descending
df_z = df_z.sort_values("Created At", ascending=False)
# format timestamps 12-hour
df_z["Created At"] = (
df_z["Created At"].dt.strftime("%Y-%m-%d %I:%M %p").str.lower()
)
df_z["Updated At"] = (
df_z["Updated At"].dt.strftime("%Y-%m-%d %I:%M %p").str.lower()
)
# hyperlink ID
base_url = f"https://{ZENDESK_SUBDOMAIN}.zendesk.com/agent/tickets"
df_z["ID"] = df_z["ID"].apply(
lambda x: f'<a href="{base_url}/{x}" target="_blank">{x}</a>'
)
# render fixed-height table including the new summary column
html_tbl = df_z.to_html(
index=False,
escape=False,
columns=[
"ID",
"Subject",
"Status",
"Created At",
"Updated At",
"OpenAI Ticket Summary",
],
)
scrollable = f"""
<div style="height: 400px; overflow-y: auto; border: 1px solid #ddd; padding: 4px;">
{html_tbl}
</div>
"""
st.markdown(scrollable, unsafe_allow_html=True)
# ---- Tab 2: Jira ----
with tabs[1]:
st.header("Jira Lookup")
site_input = st.text_input("Site Name", placeholder="example.com", key="jira_site")
keyword_input = st.text_input("Keyword", placeholder="timeout", key="jira_keyword")
start_input = st.date_input(
"Created After", value=date.today() - timedelta(days=7), key="jira_start"
)
end_input = st.date_input("Created Before", value=date.today(), key="jira_end")
if st.button("Search Jira Issues", key="jira_search"):
st.session_state.jira_df = search_jira_issues(
site_input, keyword_input, start_input, end_input
)
df_j = st.session_state.jira_df.copy()
if not df_j.empty:
# parse & sort by Created At descending
df_j["Created At"] = pd.to_datetime(df_j["Created At"])
df_j["Updated At"] = pd.to_datetime(df_j["Updated At"])
df_j = df_j.sort_values("Created At", ascending=False)
# 12-hour fmt with am/pm
df_j["Created At"] = (
df_j["Created At"].dt.strftime("%Y-%m-%d %I:%M %p").str.lower()
)
df_j["Updated At"] = (
df_j["Updated At"].dt.strftime("%Y-%m-%d %I:%M %p").str.lower()
)
# hyperlink the key to the JIRA issue
base_jira = JIRA_URL.rstrip("/")
df_j["Key"] = df_j["Key"].apply(
lambda k: f'<a href="{base_jira}/browse/{k}" target="_blank">{k}</a>'
)
# render as fixed-height, scrollable HTML table
html_tbl = df_j.to_html(
index=False,
escape=False,
columns=["Key", "Summary", "Status", "Created At", "Updated At"],
)
scrollable = f"""
<div style="height: 400px; overflow-y: auto; border: 1px solid #ddd; padding: 4px;">
{html_tbl}
</div>
"""
st.markdown(scrollable, unsafe_allow_html=True)
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