laverdes commited on
Commit
e6e4c0a
1 Parent(s): 39b197f

feat: new col1 and 2

Browse files
Files changed (1) hide show
  1. pages/1_📈_Plotting.py +10 -8
pages/1_📈_Plotting.py CHANGED
@@ -2,8 +2,8 @@ import streamlit as st
2
  import pandas as pd
3
 
4
  st. set_page_config(layout="wide")
5
- st.header("Plotting Time-Series Data")
6
- st.markdown("Users can load their time-series data in **.csv** format and select a particular feature and plot-type to visualize it.\
7
  Go ahead and use the sidebar on the left to upload your data files and to start visualizing it!")
8
 
9
 
@@ -45,12 +45,14 @@ else:
45
 
46
  df_base = st.session_state.df if 'df' in list(st.session_state.keys()) else pd.DataFrame()
47
  n = len(df_base)
48
- if n:
49
- st.info(f"Your data has {n} samples.")
50
- slider_range = list(range(n))
51
- n_plot = st.slider("How many samples do you want to plot in the same graph", slider_range[0]+1, slider_range[-1]+1, 5)
52
- st.write(f"Action: {plot} using {n_plot} samples")
53
- st.button("Plot now! 📊")
 
 
54
 
55
  if not df_base.empty:
56
  st.warning("Consider running outlier detection to clean your data!", icon="⚠️")
 
2
  import pandas as pd
3
 
4
  st. set_page_config(layout="wide")
5
+ st.header("Plotting Time Series Data")
6
+ st.markdown("Users can load their time-series data in **.csv** format and select a particular feature and plot-type.\
7
  Go ahead and use the sidebar on the left to upload your data files and to start visualizing it!")
8
 
9
 
 
45
 
46
  df_base = st.session_state.df if 'df' in list(st.session_state.keys()) else pd.DataFrame()
47
  n = len(df_base)
48
+ col1, col2 = st.columns(2)
49
+ with col1:
50
+ if n:
51
+ st.info(f"Your data has {n} samples.")
52
+ slider_range = list(range(n))
53
+ n_plot = st.slider("How many samples do you want to plot in the same graph", slider_range[0]+1, slider_range[-1]+1, 5)
54
+ st.write(f"Action: {plot} using {n_plot} samples")
55
+ st.button("Plot now! 📊")
56
 
57
  if not df_base.empty:
58
  st.warning("Consider running outlier detection to clean your data!", icon="⚠️")