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Home » Archived » BIRT » How to define the scale of an X Axis (Chart Data)
How to define the scale of an X Axis (Chart Data) [message #73186] Mon, 12 September 2005 09:31 Go to next message
Eclipse UserFriend
Originally posted by: tobi.home.de

hi all,

i want to plot a graph with a lot of input-data and i don't want to group
the results. problem: the labels on my x-axis overlaps each other.

i need to define a scale for x-axis but it is not possible because the
responsible option-field is not active/grey, you can't enter a value
(under: chart dialog-> data -> x-axis -> scale).

this field is only active for the y-axis .. (like the screenshot in the
help-document: working with data on a chart axis -> defining the scale of
an axis). how can i enter data in this grey fields? the help-document
seems to be wrong in this section?

how can i define the scale for x axis??

please help, urgent!

thanks,
tobi
Re: How to define the scale of an X Axis (Chart Data) [message #73224 is a reply to message #73186] Mon, 12 September 2005 10:27 Go to previous messageGo to next message
Eclipse UserFriend
Originally posted by: tobi.home.de

This is a multi-part message in MIME format.
--------------070505020301090205030409
Content-Type: text/plain; charset=ISO-8859-15; format=flowed
Content-Transfer-Encoding: 7bit

additional information: the screenshot makes my problem clear (see
attachment)

> hi all,
> i want to plot a graph with a lot of input-data and i don't want to
> group the results. problem: the labels on my x-axis overlaps each other.
> i need to define a scale for x-axis but it is not possible because the
> responsible option-field is not active/grey, you can't enter a value
> (under: chart dialog-> data -> x-axis -> scale).
> this field is only active for the y-axis .. (like the screenshot in the
> help-document: working with data on a chart axis -> defining the scale
> of an axis). how can i enter data in this grey fields? the help-document
> seems to be wrong in this section?
>
> how can i define the scale for x axis??
>
> please help, urgent!
>
> thanks,
> tobi
>


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Re: How to define the scale of an X Axis (Chart Data) [message #73261 is a reply to message #73224] Mon, 12 September 2005 15:08 Go to previous messageGo to next message
Eclipse UserFriend
Originally posted by: statineni.xxxx.com

Hey Tobi,

I had similar problem with data overlapping on xaxis. what i did was to
just slide the angle so that data on the chart will be set in an angle.TO
do that go to Chart Dialog-> Attirbutes ->Font editor[click on the little
button]->Rotate it an angle which you like.

Thanks,
Sudha

Tobi wrote:

> additional information: the screenshot makes my problem clear (see
> attachment)

>> hi all,
>> i want to plot a graph with a lot of input-data and i don't want to
>> group the results. problem: the labels on my x-axis overlaps each other.
>> i need to define a scale for x-axis but it is not possible because the
>> responsible option-field is not active/grey, you can't enter a value
>> (under: chart dialog-> data -> x-axis -> scale).
>> this field is only active for the y-axis .. (like the screenshot in the
>> help-document: working with data on a chart axis -> defining the scale
>> of an axis). how can i enter data in this grey fields? the help-document
>> seems to be wrong in this section?
>>
>> how can i define the scale for x axis??
>>
>> please help, urgent!
>>
>> thanks,
>> tobi
>>
Re: How to define the scale of an X Axis (Chart Data) [message #73282 is a reply to message #73261] Mon, 12 September 2005 15:52 Go to previous messageGo to next message
Eclipse UserFriend
Originally posted by: tobi.home.de

hi sudha, hi all,

thanks for the quick reply!

i allready tryed this (maybe you can see it in my screenshot, the lables
are rotated -90). the problem is, that there are many values on x-axis,
for every value i get a label.

how can i skip most of the labels, so that i get only few labels (e.g.
30 labels on x-axis like on y-axis) for hundredreds of values?

thanks in advance,
felix


> Hey Tobi,
>
> I had similar problem with data overlapping on xaxis. what i did was to
> just slide the angle so that data on the chart will be set in an
> angle.TO do that go to Chart Dialog-> Attirbutes ->Font editor[click on
> the little button]->Rotate it an angle which you like.
>
> Thanks,
> Sudha
>
> Tobi wrote:
>
>> additional information: the screenshot makes my problem clear (see
>> attachment)
>
>
>>> hi all,
>>> i want to plot a graph with a lot of input-data and i don't want to
>>> group the results. problem: the labels on my x-axis overlaps each other.
>>> i need to define a scale for x-axis but it is not possible because
>>> the responsible option-field is not active/grey, you can't enter a
>>> value (under: chart dialog-> data -> x-axis -> scale).
>>> this field is only active for the y-axis .. (like the screenshot in
>>> the help-document: working with data on a chart axis -> defining the
>>> scale of an axis). how can i enter data in this grey fields? the
>>> help-document seems to be wrong in this section?
>>>
>>> how can i define the scale for x axis??
>>>
>>> please help, urgent!
>>>
>>> thanks,
>>> tobi
>>>
>
>
Re: How to define the scale of an X Axis (Chart Data) [message #73319 is a reply to message #73282] Mon, 12 September 2005 14:36 Go to previous messageGo to next message
Eclipse UserFriend
Originally posted by: mpadhye.actuate.com

Hi Tobi,

Unfortunately, in the current version of BIRT, there is no way to have
some of the labels not appear in the X Axis. This is something we are
looking at in v 2.0.

As for a Scale for X-Axis, this is possible, but only if the X-Axis is
a Numerical (linear) type. It is not possible to set a scale for a Text
axis.

One thing you might look into is using a script in the chart to set the
labels as trasnsparent for all except say every 20th entry. This way you
can still have the chart show up correctly. Of course, this is more of a
workaround, but it should work. Check the Chart FAQ and the BIRT help
for more info on scripting for charts.

Thanks,
Milind

Tobi wrote:
> hi sudha, hi all,
>
> thanks for the quick reply!
>
> i allready tryed this (maybe you can see it in my screenshot, the lables
> are rotated -90). the problem is, that there are many values on x-axis,
> for every value i get a label.
>
> how can i skip most of the labels, so that i get only few labels (e.g.
> 30 labels on x-axis like on y-axis) for hundredreds of values?
>
> thanks in advance,
> felix
>
>
>> Hey Tobi,
>>
>> I had similar problem with data overlapping on xaxis. what i did was
>> to just slide the angle so that data on the chart will be set in an
>> angle.TO do that go to Chart Dialog-> Attirbutes ->Font editor[click
>> on the little button]->Rotate it an angle which you like.
>>
>> Thanks,
>> Sudha
>>
>> Tobi wrote:
>>
>>> additional information: the screenshot makes my problem clear (see
>>> attachment)
>>
>>
>>
>>>> hi all,
>>>> i want to plot a graph with a lot of input-data and i don't want to
>>>> group the results. problem: the labels on my x-axis overlaps each
>>>> other.
>>>> i need to define a scale for x-axis but it is not possible because
>>>> the responsible option-field is not active/grey, you can't enter a
>>>> value (under: chart dialog-> data -> x-axis -> scale).
>>>> this field is only active for the y-axis .. (like the screenshot in
>>>> the help-document: working with data on a chart axis -> defining the
>>>> scale of an axis). how can i enter data in this grey fields? the
>>>> help-document seems to be wrong in this section?
>>>>
>>>> how can i define the scale for x axis??
>>>>
>>>> please help, urgent!
>>>>
>>>> thanks,
>>>> tobi
>>>>
>>
>>
Re: How to define the scale of an X Axis (Chart Data) [message #73472 is a reply to message #73319] Tue, 13 September 2005 14:10 Go to previous messageGo to next message
Eclipse UserFriend
Originally posted by: tobi.home.de

This is a multi-part message in MIME format.
--------------030100070704080205010807
Content-Type: text/plain; charset=ISO-8859-15; format=flowed
Content-Transfer-Encoding: 7bit

hi milind, hi all,

> As for a Scale for X-Axis, this is possible, but only if the X-Axis is
> a Numerical (linear) type. It is not possible to set a scale for a
> Text axis.

this is exactly what i need. how can i set the datatype to "numerical"?
the original db-data is oracle "number", the dataset-data in birt shows
"decimal".

pls look at my screenshot, the chart-data is set to linear but i can't
enter a scale, the fields are grey. where is my failure .. ?

thanks in advance,
tobi

>Hi Tobi,
>
> Unfortunately, in the current version of BIRT, there is no way to have some of the labels not appear in the X Axis. This is something we are looking at in v 2.0.
>
> As for a Scale for X-Axis, this is possible, but only if the X-Axis is a Numerical (linear) type. It is not possible to set a scale for a Text axis.
>
> One thing you might look into is using a script in the chart to set the labels as trasnsparent for all except say every 20th entry. This way you can still have the chart show up correctly. Of course, this is more of a workaround, but it should work. Check the Chart FAQ and the BIRT help for more info on scripting for charts.
>
>Thanks,
>Milind


>> Tobi wrote:
>>
>>> hi sudha, hi all,
>>>
>>> thanks for the quick reply!
>>>
>>> i allready tryed this (maybe you can see it in my screenshot, the
>>> lables are rotated -90). the problem is, that there are many values
>>> on x-axis, for every value i get a label.
>>>
>>> how can i skip most of the labels, so that i get only few labels
>>> (e.g. 30 labels on x-axis like on y-axis) for hundredreds of values?
>>>
>>> thanks in advance
>>>
>>>
>>>> Hey Tobi,
>>>>
>>>> I had similar problem with data overlapping on xaxis. what i did was
>>>> to just slide the angle so that data on the chart will be set in an
>>>> angle.TO do that go to Chart Dialog-> Attirbutes ->Font editor[click
>>>> on the little button]->Rotate it an angle which you like.
>>>>
>>>> Thanks,
>>>> Sudha
>>>>
>>>> Tobi wrote:
>>>>
>>>>> additional information: the screenshot makes my problem clear (see
>>>>> attachment)
>>>>
>>>>
>>>>
>>>>
>>>>
>>>>>> hi all,
>>>>>> i want to plot a graph with a lot of input-data and i don't want
>>>>>> to group the results. problem: the labels on my x-axis overlaps
>>>>>> each other.
>>>>>> i need to define a scale for x-axis but it is not possible because
>>>>>> the responsible option-field is not active/grey, you can't enter a
>>>>>> value (under: chart dialog-> data -> x-axis -> scale).
>>>>>> this field is only active for the y-axis .. (like the screenshot
>>>>>> in the help-document: working with data on a chart axis ->
>>>>>> defining the scale of an axis). how can i enter data in this grey
>>>>>> fields? the help-document seems to be wrong in this section?
>>>>>>
>>>>>> how can i define the scale for x axis??
>>>>>>
>>>>>> please help, urgent!
>>>>>>
>>>>>> thanks,
>>>>>> tobi
>>>>>>
>>>>
>>>>
>
>
> ------------------------------------------------------------ ------------
>
>
> ------------------------------------------------------------ ------------
>


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Re: How to define the scale of an X Axis (Chart Data) [message #73676 is a reply to message #73472] Tue, 13 September 2005 22:09 Go to previous messageGo to next message
Eclipse UserFriend
Originally posted by: mpadhye.actuate.com

Hi Tobi,

Um...sorry about that...the information in the previous email was
incomplete. The ability to specify a scale is dependent on the type of
the axis (Linear as you have specified) AND an option called 'Is
Category Axis' in the X Axis attributes page.

This will work if you specify the chart type as a scatter chart...since
that should be what you are looking for if you need to specify a scale.
Unfortunately, the screenshot you have attached does not indicate the
type of chart, so I cannot give any other suggestions.

Thanks,
Milind

Tobi wrote:
> hi milind, hi all,
>
>> As for a Scale for X-Axis, this is possible, but only if the X-Axis is
>> a Numerical (linear) type. It is not possible to set a scale for a
>> Text axis.
>
>
> this is exactly what i need. how can i set the datatype to "numerical"?
> the original db-data is oracle "number", the dataset-data in birt shows
> "decimal".
>
> pls look at my screenshot, the chart-data is set to linear but i can't
> enter a scale, the fields are grey. where is my failure .. ?
>
> thanks in advance,
> tobi
>
>> Hi Tobi,
>>
>> Unfortunately, in the current version of BIRT, there is no way to
>> have some of the labels not appear in the X Axis. This is something we
>> are looking at in v 2.0.
>>
>> As for a Scale for X-Axis, this is possible, but only if the X-Axis
>> is a Numerical (linear) type. It is not possible to set a scale for a
>> Text axis.
>>
>> One thing you might look into is using a script in the chart to set
>> the labels as trasnsparent for all except say every 20th entry. This
>> way you can still have the chart show up correctly. Of course, this is
>> more of a workaround, but it should work. Check the Chart FAQ and the
>> BIRT help for more info on scripting for charts.
>>
>> Thanks,
>> Milind
>
>
>
>>> Tobi wrote:
>>>
>>>> hi sudha, hi all,
>>>>
>>>> thanks for the quick reply!
>>>>
>>>> i allready tryed this (maybe you can see it in my screenshot, the
>>>> lables are rotated -90). the problem is, that there are many values
>>>> on x-axis, for every value i get a label.
>>>>
>>>> how can i skip most of the labels, so that i get only few labels
>>>> (e.g. 30 labels on x-axis like on y-axis) for hundredreds of values?
>>>>
>>>> thanks in advance
>>>>
>>>>
>>>>> Hey Tobi,
>>>>>
>>>>> I had similar problem with data overlapping on xaxis. what i did
>>>>> was to just slide the angle so that data on the chart will be set
>>>>> in an angle.TO do that go to Chart Dialog-> Attirbutes ->Font
>>>>> editor[click on the little button]->Rotate it an angle which you like.
>>>>>
>>>>> Thanks,
>>>>> Sudha
>>>>>
>>>>> Tobi wrote:
>>>>>
>>>>>> additional information: the screenshot makes my problem clear (see
>>>>>> attachment)
>>>>>
>>>>>
>>>>>
>>>>>
>>>>>
>>>>>
>>>>>>> hi all,
>>>>>>> i want to plot a graph with a lot of input-data and i don't want
>>>>>>> to group the results. problem: the labels on my x-axis overlaps
>>>>>>> each other.
>>>>>>> i need to define a scale for x-axis but it is not possible
>>>>>>> because the responsible option-field is not active/grey, you
>>>>>>> can't enter a value (under: chart dialog-> data -> x-axis -> scale).
>>>>>>> this field is only active for the y-axis .. (like the screenshot
>>>>>>> in the help-document: working with data on a chart axis ->
>>>>>>> defining the scale of an axis). how can i enter data in this grey
>>>>>>> fields? the help-document seems to be wrong in this section?
>>>>>>>
>>>>>>> how can i define the scale for x axis??
>>>>>>>
>>>>>>> please help, urgent!
>>>>>>>
>>>>>>> thanks,
>>>>>>> tobi
>>>>>>>
>>>>>
>>>>>
>>
>>
>> ------------------------------------------------------------ ------------
>>
>>
>> ------------------------------------------------------------ ------------
>>
>
>
> ------------------------------------------------------------ ------------
>
>
> ------------------------------------------------------------ ------------
>
Re: How to define the scale of an X Axis (Chart Data) [message #77261 is a reply to message #73319] Tue, 27 September 2005 03:16 Go to previous message
Alexander Staubo is currently offline Alexander StauboFriend
Messages: 2
Registered: July 2009
Junior Member
Same problem here. Do you have an ETA on the label-hiding fix, or at
least some hints as to where this ought to be plugged in, so I could
look at producing a patch?

While it's possible to manually omit labels (or as you suggest, setting
them as transparent), you obviously don't know which ones to omit, which
depends on the rendered size of the chart. So it's not a very
satisfactory workaround.

Alexander.

Milind Padhye wrote:
> Hi Tobi,
>
> Unfortunately, in the current version of BIRT, there is no way to
> have some of the labels not appear in the X Axis. This is something we
> are looking at in v 2.0.
>
> As for a Scale for X-Axis, this is possible, but only if the X-Axis
> is a Numerical (linear) type. It is not possible to set a scale for a
> Text axis.
>
> One thing you might look into is using a script in the chart to set
> the labels as trasnsparent for all except say every 20th entry. This way
> you can still have the chart show up correctly. Of course, this is more
> of a workaround, but it should work. Check the Chart FAQ and the BIRT
> help for more info on scripting for charts.
>
> Thanks,
> Milind
>
> Tobi wrote:
>> hi sudha, hi all,
>>
>> thanks for the quick reply!
>>
>> i allready tryed this (maybe you can see it in my screenshot, the
>> lables are rotated -90). the problem is, that there are many values on
>> x-axis, for every value i get a label.
>>
>> how can i skip most of the labels, so that i get only few labels (e.g.
>> 30 labels on x-axis like on y-axis) for hundredreds of values?
>>
>> thanks in advance,
>> felix
>>
>>
>>> Hey Tobi,
>>>
>>> I had similar problem with data overlapping on xaxis. what i did was
>>> to just slide the angle so that data on the chart will be set in an
>>> angle.TO do that go to Chart Dialog-> Attirbutes ->Font editor[click
>>> on the little button]->Rotate it an angle which you like.
>>>
>>> Thanks,
>>> Sudha
>>>
>>> Tobi wrote:
>>>
>>>> additional information: the screenshot makes my problem clear (see
>>>> attachment)
>>>
>>>
>>>
>>>>> hi all,
>>>>> i want to plot a graph with a lot of input-data and i don't want to
>>>>> group the results. problem: the labels on my x-axis overlaps each
>>>>> other.
>>>>> i need to define a scale for x-axis but it is not possible because
>>>>> the responsible option-field is not active/grey, you can't enter a
>>>>> value (under: chart dialog-> data -> x-axis -> scale).
>>>>> this field is only active for the y-axis .. (like the screenshot in
>>>>> the help-document: working with data on a chart axis -> defining
>>>>> the scale of an axis). how can i enter data in this grey fields?
>>>>> the help-document seems to be wrong in this section?
>>>>>
>>>>> how can i define the scale for x axis??
>>>>>
>>>>> please help, urgent!
>>>>>
>>>>> thanks,
>>>>> tobi
>>>>>
>>>
>>>
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