cancel
Showing results for 
Show  only  | Search instead for 
Did you mean: 
Choose Language Hide Translation Bar
Interactive HTML Improvements in JMP 17 (2022-US-30MP-1162)

John Powell, Software Development Manager, JMP Statistical Discovery, LLC

 

Interactive HTML was introduced in JMP 11, and each succeeding version adds support for more interactive features and improves support for JMP Live. When used alone, Interactive HTML enables users to share JMP reports. JMP Live supports that sharing with collaboration, organization, security, automation, and significantly more interactivity. 

 

This paper explains the new features in JMP 17 Interactive HTML, both when it's used alone and as part of JMP Live.

 

 

The journal shown in the presentation contains Example buttons that link to Interactive HTML files hosted on an internal JMP Live server. I've attached a journal formatted similarly to the one shown in the video, but rather than launch files from a JMP Live server, the Example buttons produce JMP reports that can be exported to Interactive HTML or published to JMP Live or JMP Public (when it is upgraded to JMP 17) from JMP 17 to see the improvements in Interactive HTML yourself. 

 

Hi,  welcome  to  this  talk.

Interactive  HTML  is  a  format  for  sharing  JMP reports  and  dashboards  on  the  web

with  some  of   JMP's signature  interactivity.

It's  also  the  format  used  in   JMP Live  and   JMP Public.

My  name  is  John  Powell,  and  I'm the  Software D evelopment M anager

for  the  team  that  puts  this  feature  together  for  JMP.

With  every  release  of  JMP,

we  improve  and  add  more  of  this  capability.

In  this  talk,  I'm  going  to  show  you

what's  new  and  improved  in I nteractive  HTML  for  JMP  17.

Now,  I'm  not  going  to  cover  everything  that  we've  done,  just  the  highlights.

I've organized  this  into  three  categories:

new  functionality,  improved  functionality,  and  improved  appearance.

What  you're  going  to  see  are  examples  of  this  on  JMP  Live.

Let's  get  started.

I'm  going  to  move  this  out  of  the  way.

Sorry  about  that.

Move  this  out  of  the  way,

because  I'm  going  to  be  bringing  up  the  browser.

Starting  with  new  functionality.

We've  got  packed  bars,

which  is  a  feature  that's  been in  JMP  for  a  couple  of  releases  now.

I've  got  an  example.

I  just  need  to  bring  my  browser  window  over  here.

Here's  my  pack  bars  example  in  JMP  Live.

As  you  can  see,  it  looks  like  it  would  in  JMP.

It's  got  labels,

and  it's  got  the  bars  that  basically  are  the  most  important  ones  in  blue,

and  all  the  lesser  important  ones,  or  smaller  data,  are  in  gray.

It  looks  like  it  would in  JMP.

It  supports  a  little  bit  of  interactivity,

basically  these  tool  tips  that  you'll  see  for  each  bar,

and  even  for  the  gray items  as  well.

Then  you  also  have  some  interactivity,  which  is  selections,

and  it  works  with  the  local  data  filter.

Right  now,  I'm  sorting...

Or  I'm  looking  at  the  commodity  of  corn.

If  I  want  to  look  at  soybean,

I  can  click  on  that,  and  the  graph  updates .

That's  it  for  pack  bars.

Parallel  plots  [support in Interactive HTML]  is brand  new  in  JMP  17.

Here's  an  example  using  the  Iris  data set.

With  a  parallel  plot,

you  can  drop  in  different  types  of  variables.

In  this  case,

we're  looking  at  the  dimensions  of  the  petals

and  the  sepal  length  and width.

Basically,  they're  all  continuous  data,  and  continuous  data  is  drawn   as curves.

We've  made  this  available  in  JMP Live  now  and in  Interactive  HTML.

Basically,  it  supports  selection  and  tool  tips.

There's  a  tool  tip  for  one  of  the  lines,  and  this  is  continuous.

Then, one  thing  about  this  particular  example

is  that  it  has  a  common  axis.

All  the  variables  are  around  the  same  range.

They  share  an  axis.

The  next  example  is  using  categorical  variables.

Here's  the  Titanic  passenger  database,

and  I've  got  passenger  class,  sex,  and  survived.

When  you  use  categorical  variables,  they  display  very  differently.

You  see  these  curved  sections, and  they're  also  selectable.

You'll  notice  a  little  interactivity  with  the  legend.

I'll  talk  about  that  little  bit  more  later.

Now,  we  also  have  tool  tips  in  this  one.

Passenger  class,  sex,  male.

So  on this  side,

you  would  get  sex  is  female,  and   they  survived,  yes.

The  next  example.

This  one  is  actually  mixed  with  categorical  and  continuous,

the  same  data set,  Titanic  passengers,

but  I've  used  some  continuous  variables  on  the  left  here,

and  some  categorical  variables  on  the  right.

They  also  support  selection  and  tool  tips  on  both  sides.

Next,  a  new  functionality  is  categorical  response  profilers.

The  difference  between  a  categorical  response  profiler

and  a  continuous  report p rofiler  is  basically,  you'll  see  multiple  curves.

Here's  an  example.

That's  interactive n ow.

This  would  have  been  static in J MP  16.

You  see  these  curves  are  interacting, and  there  are  tool  tips  as  well.

These  appear  in  many different  platforms.

That  was  th e...

Sorry,  this  is,  yes,  the  ordinal  logistic.

The  next  one  is  general  regression.

Each platform  needed  some  work  from  my  team

in  order  to  get  them  interactive.

This  one  shows  down  at  the  bottom,  and  it's  the  same  thing.

It  has   categorical  responses,

and  it  shows  the  interactivity  and  tool  tips  as  well.

I'm  not  going  to  do  all  of  them.

Here's  one  more, P artition.

[ The profiler in ] Partition  also  is  down  below.

Here's  a  categorical  profiler.

You'll  see  it  responds  as  you  move   one  of  the  variables.

All  the  other  variables  respond  too.

Now,  the  next  one  actually  isn't  a  categorical  response profiler,

but  I  threw  it  in  here  because  it's  a  new  platform  in  JMP  17,

Naive Bayes,  and  it  has  a  profiler  in  it.

It  has  also  been  made  interactive  in   Interactive HTML  and  on  JMP L ive.

The  other  two  that  we  support  are B ootstrap F orest  and  Boosted T rees.

I'll  leave  that  up  to  you  to  try  when  you  get  JMP  17.

This,  we  hope,  is  going  to  be  an  interesting  feature  for  people,

that  we  can  resize  graphs  now  in JMP  Live  and  JMP  17.

One  of  the  first things  you  might  do  in  JMP,

if  somebody  sends  you  a  report,  and  it's  not  big  enough,

is you  go  to  the  [ bottom right ] corner  and  drag  it   to  resize  it.

We  now  support  that  on  the  web  as  well.

That's  a  distribution  example.

Some  examples  are a  little  tricky,  like  this  one  here.

I'm bringing  up  a  profiler.

What  makes  that  tricky  is  that  there  are  multiple  graphs

that  all  resize  together.

Of  course,  they  stay  interactive  when  they're  larger  as  well.

Let's  see,  the  scatter  plot  matrix  is  similar  too,

that  there  are  multiple.

I  don't  know  if  I  mentioned,

but  you  can  also  drag  on  the  side  to  make  them  bigger.

There  you  have  it.

Of  course,  these  are  still  interactive  with  tool  tips  and  so  on.

Now,  since  we  did  that,

we  felt  it  was  necessary  to  also  make  it  possible  to  resize  panels  and  dashboards.

Imagine if  I  took  this  graph  here  and  I  expanded  it  wider.

Now,  it's  getting  pretty  close  to  the  edge.

If  I  went  and  did  this  one,

now  we're  actually  cutting  off  a  little  bit  of  the  graph.

We  can  actually  resize  the  panel  to  give  more  room  to  that  one.

We  can  even  shrink  these

if  we  didn't  want  to  show  them  at  the  moment,

or  to  just  balance  between  the  two  panels.

That's  it  for  new  functionality.

I'm going to  move  on to  improved  functionality.

I'll just  take  a  drink  here.

All  right.

Now,  the  interactive  legend,  I  did  show  it  before,

but  I  wanted  to  show  that  it's  happening  in more  than  just  one  graph.

It's  actually  all  graphs.

I  have  an  example  here.

This  is  back  with  the  Titanic  passengers  database  again.

To  show  you  the  interactivity,

basically,  if  you  click  on  the  legend  in  JMP  17,

you  will  see  the  selection  in  the  graph  as  well.

That's  one  part  of  this  interactivity.

The  other  part  is  that  if  you  click  in  the  graph to  make  selections,

you'll  see  that  the  legend  highlights  as  well.

That's  behavior that  you  would  see  in  JMP.

We  tried  to  get  that  available  on  the  web  as  well.

Local  data  filter  has  been  in  Interactive  HTML  for  a  while,

but  there  are  a  few  additions  to  it,  modifications and  updates.

Here's  an  example  with  the  diamonds  data set.

As  you  can  see,  it's  got  a  pretty  busy- looking  local  data  filter  here.

You can  do  lots  with  it.

I'll  stick  with  this  example  for  a  while.

Imagine if  you  wanted  to  just  limit  what  you  see  in  terms  of  the  price.

I'm  looking  at  the  $4,900- $10,000  diamonds.

Then  you  go,  "Well,  maybe  I  don't  really  want  to  do  that.

I  want  to  do  the  inverse."

Now,  we  have  this  inverse,  that wasn't  there in  JMP  16,

that  when  you  click  on  it,  the  graph will  update.

Nothing  updates  in  the  local  data  filter  itself.

We  used  to  have  a  feature  in  this  menu  up  here  that  would  do  that.

It  would  invert  all  the  settings.

But  JMP  didn't  have  that.

We  prefer  to  stick  to  a  model  that's  closer  to  what  JMP  has

and  behaves  the  way  JMP  does  as  well.

Another  thing  that  you  might  see

with  a  big  local  data  filter  like  this  with  lots  of  options,

every  time  I  click  on  the  setting  here,  it  updates,  right?

But  what  if  you  want  to  make  a  lot  of  changes?

You  probably  don't  want  it  updating  every  single  change

that  you  make  in  the  local  data  filter.

Now,  we've  added  this  auto- update  feature.

Now,  if  we  disable  it,  as  you  add  more  settings,  nothing  changes.

That  gives  you  a  chance  to  make  lots  of  changes.

Maybe  I'll  even  change  something  down  here  as  well.

Let's  just  choose  Excellent  and  these  V  settings,

and  I'll  leave  these  sliders  where  they  were.

Now,  I'm  ready  to  update.

I  hit  the  update  button,  and  now  we've  got  an  updated  graph.

You  may  have  noticed,  or  maybe  you  didn't,

that  there's  a  bunch  of  information  being  added  to  this  URL

every  time  I  change  the  setting  or  I  updated.

Now,  the  purpose  of  that

is  so  that  people  can  share  these  settings.

If  you  actually  selected  all  of  this,  and  there's  multiple  ways  to  select.

You might  try  to  double  click.

Anyway,  once  they're  all  selected,  then  you  can  copy  it  or  use  Control  C.

Then  you  can  put  that  in  an  email  and  send  it  to  somebody.

When  they  see  this  graph  on  JMP  Live,

they're  going  to  get  the  settings  that  you  had,

not  the  original  settings  that  you  published  it with.

That's  really  going  to  be  useful.

Another  thing  about  that  is  that  the  saving  of  settings

is  also  done  for  column  switchers  now  too.

This  example  has  a  column  switcher  and  a  local  data  filter.

Of  course,  if  I  change  to  lead,

basically,  you would  see  those  settings  get  updated  on  the  top  as  well.

What's  interesting  about  that  is  you  can  grab   this  URL,

and  I  like  to  store  it  in  the  comments,

and  I've  annotated  what  I  stored  here  saying  what  the  settings  are  going  to  do.

This  top  link  is  with  the  column  switcher

set  to  the  pollutant equal  carbon  monoxide,

and  the  local  data  filter  regions  set  to  California.

believe  west  is  what  the  W  stands  for.

When  I  click  on  that,

or  if  I  send  that  to  somebody  and  they  click  on  it,

it would  load  the  post  with  this  pollution  map,

and  then  it  would  use  those  settings  and  update  it  right  away.

Another  thing  you  could  do  with  that  URL

is  you  can  embed  it  in  a  journal,  like  I've  done  here.

If  you  look  at  this  side  here,

I  say  I  have  a  link  with  stored  settings  with  the  lead  for  the  column  switcher.

The  regions  are  South  Texas,

which  is  different  than  what  you  see  right  now.

When  I  click  on  that  URL  or  that  link  in  my  journal,

it  will  do  the  same.

It  loads  up  this  posting,  and  then  it  applies  the  settings.

Isn't  that convenient?

All right.

Here's  a  feature  that  we  added,  at publish  time,

that  you  could  actually  choose

whether  you  want  to  have  interactivity  or  performance.

The  reason  for  that  is  that  it  takes  a  lot  of  data  to  store  in  the  file

to  be  able  to  provide  the  interactivity.

Sometimes  that  makes  loading  slower.

Or  if  you  have  a  really  big  data set

and  you  don't  really  want  to  load  all  the  data,

but  you  want  to  have  it  interactive,

well,  now  you  can  do  that with  the  performance  mode.

All  the  examples  I  showed  so  far  had  interactivity  mode  on

so  that  I  can  show  all  the  interactivity.

This  example  I  published,

it's  the  same  one  that  you  just  saw,  but  the  graph  is  not  interactive.

It's  a  static  image  of  the  graph.

But  you  also  get  to  interact  with  that  graph

by  using  the  column  switcher  and local  data  filter.

This  is  because  JMP L ive  rebuilds  the  graph.

That's  it  for  that  section.

I  hope  you're  going  to  like  those  improved  functionality  features.

The  final  section  is  things  that  affect  the  appearance.

We  hadn't  really  paid  attention  to  your  font  size  settings  in  JMP

when  you  exported  in  the  past

because  we  really  wanted  to  have

unique  font  sizes  across  our  web  offerings.

But  now,  we  wanted  to  support  this.

Basically,  this  is  everywhere  in   JMP that you  can  change  font  sizes.

It  was  big  effort,  basically,  to  go  through,  find  them  all,

and  then  make  sure  that  they  came  out  as  you  set  them  before  you  published.

I've  got  a  few  examples,

but  definitely  not  all  the  places  where  you  can  set  fonts.

Here's  an  example.

You  may  not  want  to  do  this,

but  I  did  it  in  a  way  that  you  could  see  what  the  font  differences  are.

In  this  case,  I  increased  the  carat  weight  title,

but  I  did  not  increase  the  labels  for  the  carat  weight.

Down  on  the  X-axis,

I  increased  the  axis  label's  font  size  and  kept  the  title  at  the  original  size.

Normally,  you'd  probably  do  a  little  bit  more,

but  this  is  just  for  demonstration,  so  you  could  see  the  difference

between  the  regular  size  and  the  increased  size.

Here's  another  example  where  font  size  shows  up.

Labels  and  graphs,  like  in  heat  maps.

In  heat  maps,  there's  a  label  that  you  can  apply,

and  this  one  has  been  increased  as  well.

You  can  tell  it's  much  larger  than  the  other  fonts  in  this  graph.

I've  also  increased  the  size

of  the  title  and  labels  in  the  legend  in  this  example.

Next  up,  I've  got  a  tree  map  that  also  has  labels.

This  is  back  with  the  diamonds  data set  again.

This  tree  map,

we  did  a  little  bit  more  than  just  font  size.

You  can  see  that  the  labels  are  made  larger,

not  in  the  legend  this  time.

But  the  group  labels,  in  JMP  17,  they've  added  the  ability

to  set  background  color  and  the  color  of  the  text  as  well.

We  felt  that  we  would  want  to  support  that  as  well

to  stick  with  the  customized  ability.

Of  course,  there's  many  other  places  where  fonts  can  be  customized  in JMP.

You  could  discover  that  as  you  get  JMP  17,  and  start  customizing  font  sizes,

and  then  see  them  respond  in  your  published  files

or  shared  with  exporting  to  Interactive HTML.

Here's  a  tabulate  example.

There's  a  new  feature  in  JMP

that  allows  you  to  combine  columns  like  cut  and  clarity.

This  is  also  the  diamonds  data set.

When  you  do   and  use  the  stack group  columns  feature,

the  items  in  the  cells  are  basically  indented

for  the  secondary  variable.

In  this  example,  I've  also  increased  the  titles

of  these  columns  in  tabulate,

increased  the  font  size  of  that,  so  easier  to  see  and  show that

yet  another  place  where  this  can  be  customized.

We  did  some  other  work  customizing  tables,  supporting  the  customization  of  tables,

and  this  shows  up  in  many  different  ways.

The  first one  that  I'm  going  to  show  you  is  color- coded  cells.  In  JMP  16,even  if  color  coding  is  used,  we  didn't  carry  that  through  to  the  web.

You  would  have  lost  the  different  colors  here  in  the  column

that  have  meaning  in  this  process  screening  example.

Another  place  where  color  coding  shows  up in  cell  background  colors

is  when  you  do  text  explorer.

As  you  see  in  this  graph  down  here,

there's  purple  and  orange  being  used  for  positive  and  negative  sentiment.

They  are  now  supported  in  the  table  as  well,

not  just  in  the  graph.

Of  course,  font  size  can  also  be  updated.

I  mentioned  that  we  supported  customizing  font  size.

If  that's  been  done  in  a  table  like  in  this  one,

where  the  cells  have  been  increased  in  size,

that  is  now  respected.

We  used  to  emphasize  small  p  values

when  it's  small  enough  to  indicate  it  with  just  bold  font.

But  what  JMP  did  was  use  this  color,  and  numbers  support  that  color,

so we're  looking  more  like  JMP.

This  final  table  example  will  show  not  cell -color  coding,

but  the  actual  text  in  the  cells  is  color  coded  for  the  correlation.

The  high  correlation,

or positive  one correlation  here  happens  to  be  blue,

and  here's  negative  correlation  that's  red.

I'm  going  to  use  this  example  for  the  next  feature,

which  is,  we  had  themes  before,  but  we've  added  the  dark  theme.

The  dark  theme  is  good  to  show  with  this  example,

and  I'll  show  you  how  you  do  that in  JMP  Live.

Let me  just  switch  to  dark  mode  this  way.

Now,  you  can  see  those  colors  pop  little  bit  more  with  a  black  background.

I  think  people  will like  this,  maybe  all  the  time.

Actually, if you  like  it  all  the  time, you  can  set  that  as  permanent  preference in  JMP  Live,

or  set  it  as  a  preference  when  you  export.

Here,  I'm  going  to  open  up  just  an  image  of  a  JMP  dialogue,

which  is  the  preferences  dialogue.

If  you  look  on  the  Styles  page  of  the  preferences  dialogue,

down  at  the  bottom,  there's  Interactive  HTML  Themes.

It used  to  have  light  and  gray.

Now,  we  have  this  dark  theme  as  well.

Then,  when  you  publish  or  export  to  Interactive  HTML,

that  theme  will  be  used.

Last  but  not  least,  we  think  this  will  be  really  important.

If  you  zoomed  in  on  graphs   [ exported to Interactive HTML ] from JMP  16,  they  would  start  to  get  blurry.

I  want  to  talk  about  two  different  types  of  zooming  in  here.

In  16,  we  did  have  this  magnifier.

Let's  say  I'm  zooming  in  this  way.

That  hasn't  changed.

But  what's  changed  is  that  this  graph  here

is   at a  higher  resolution  than  it  used  to  be.

If  you  use  your  browser  zoom,

which  is  usually  C ontrol  Plus, and  zoom  in  this  way,

this  is  when  things  would  start  to  get  blurry.

But  now  that  we've  used  double  resolution,

you  can  go  pretty  high  without  seeing  any  blurriness.

We  think  that  will  be  a  good  feature.

You  don't  have  to  turn  it  on.

It's  just  the  default  that it's  going  to  be  a  higher  resolution.

Make  all  your  graphs  look  a  little  bit  better.

That's  it  for  the  things  I  have  to  show.

Like  I  said,  these  are  just  the  highlights.

There's  so  many  other  things  that  my  team  did,

and  I'm  really  proud  of  the  work  that  they  did.

We  had  a  lot  of  contributors,  some  of  them  part  time,

some  of  them  full  time.

Here's  the  names  of  the  contributors.

We  had  Josh  Mark wardt,  Bryan  Fricke,  Mayowa  Sogbein,

Praveena  Panineerkandy,  Paul   Spychala, and  Tommy  Odom.

Of  course,  we'd  like  to  thank  all  the  JMP  developers  themselves

that  do  the  desktop  product  to  help  us  figure  out

how  to  share  these  creations  on  the  web.

We get  a  lot  of  help  from  them.

Of  course,  we  also  get  a  lot  of  help  from  our  quality  assurance  team.

I'd  like  to  thank  them  as  well,  and  anybody  else  in  the  JMP  team

that  helps  us  make our  contribution  look  good,

Also,  the  JMP  Live  team

who  hosts  our  content  when  we  publish  to  JMP  Live.

That's  it  for  my  presentation.

I thank  you  for  your  interest  in  this  topic,

and  I'll  see  you  at  the  conference.